582 results on '"nature inspired"'
Search Results
2. Introduction to Nature‐Inspired Computing
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K. Hariprasath, A. Kavinya, N.M. Saravana Kumar, and N. Kaviyavarshini
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Cognitive science ,Computer science ,Nature inspired - Published
- 2021
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3. Faster Synchronization of Triple Layer Neural Network Using Nature Inspired Whale Optimization: A Key Exchange Protocol
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Arindam Sarkar
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Artificial neural network ,biology ,business.industry ,Triple layer ,Whale ,Computer science ,Computer Science Applications ,biology.animal ,Synchronization (computer science) ,Electrical and Electronic Engineering ,Nature inspired ,business ,Protocol (object-oriented programming) ,Key exchange ,Computer network - Published
- 2021
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4. High sub-zero organ preservation: A paradigm of nature-inspired strategies
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Nishaka William and Jason P. Acker
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Cryopreservation ,Machine perfusion ,030219 obstetrics & reproductive medicine ,Computer science ,Organ Preservation Solutions ,0402 animal and dairy science ,Cold storage ,Economic shortage ,Organ Preservation ,04 agricultural and veterinary sciences ,General Medicine ,040201 dairy & animal science ,General Biochemistry, Genetics and Molecular Biology ,Cold Temperature ,Perfusion ,03 medical and health sciences ,0302 clinical medicine ,Risk analysis (engineering) ,Mammalian cell ,Ex vivo perfusion ,Animals ,Nature inspired ,General Agricultural and Biological Sciences ,Metabolic demand - Abstract
In recent years there have been several advancements in organ preservation that have yet to see widespread clinical translation. While static cold storage (SCS) at 2 °C–4 °C continues to be the state-of-the-art strategy, it contributes to the current shortage of transplantable organs due to the limited preservation times it affords combined with the limited ability of marginal grafts to tolerate SCS. The era of optimizing storage solutions to minimize SCS-induced hypothermic injury has largely plateaued in its improvements, resulting in a shift towards the use of machine perfusion systems to provide continuous metabolic support, or the use of sub-zero storage temperatures to leverage the protection brought forth by a reduction in metabolic demand. Many of the rigors that organs are subjected to at low sub-zero temperatures (−80 °C to −196 °C) commonly used for mammalian cell preservation have yet to be surmounted, and therefore the focus of this article lies on an intermediate range of storage temperatures (0 °C to −20 °C) where much success has been seen in the past two decades. Numerous mechanisms leveraged by organisms capable of withstanding prolonged periods at these temperatures through either avoiding or tolerating the formation of ice has provided a foundation for some of the more promising efforts, and thus we aim to contextualize the translation of these nature-derived strategies to mammalian organ preservation.
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- 2021
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5. A comprehensive survey on nature‐inspired algorithms and their applications in edge computing: Challenges and future directions
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Tarachand Amgoth, Satish Narayana Srirama, and Mainak Adhikari
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Theoretical computer science ,Computer science ,Nature inspired ,Software ,Edge computing - Published
- 2021
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6. Advances in spam detection for email spam, web spam, social network spam, and review spam: ML-based and nature-inspired-based techniques
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Andronicus Ayobami Akinyelu
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Spamdexing ,World Wide Web ,Social network ,Computer Networks and Communications ,Hardware and Architecture ,business.industry ,Email spam ,Computer science ,Nature inspired ,Safety, Risk, Reliability and Quality ,business ,Software - Abstract
Despite the great advances in spam detection, spam remains a major problem that has affected the global economy enormously. Spam attacks are popularly perpetrated through different digital platforms with a large electronic audience, such as emails, microblogging websites (e.g. Twitter), social networks (e.g. Facebook), and review sites (e.g. Amazon). Different spam detection solutions have been proposed in the literature, however, Machine Learning (ML) based solutions are one of the most effective. Nevertheless, most ML algorithms have computational complexity problem, thus some studies introduced Nature Inspired (NI) algorithms to further improve the speed and generalization performance of ML algorithms. This study presents a survey of recent ML-based and NI-based spam detection techniques to empower the research community with information that is suitable for designing effective spam filtering systems for emails, social networks, microblogging, and review websites. The recent success and prevalence of deep learning show that it can be used to solve spam detection problems. Moreover, the availability of large-scale spam datasets makes deep learning and big data solutions (such as Mahout) very suitable for spam detection. Few studies explored deep learning algorithms and big data solutions for spam detection. Besides, most of the datasets used in the literature are either small or synthetically created. Therefore, future studies can consider exploring big data solutions, big datasets, and deep learning algorithms for building efficient spam detection techniques.
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- 2021
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7. Nature-inspired metaheuristic scheduling algorithms in cloud: a systematic review
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Sandeep Kumar Bothra and Sunita Singhal
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nature inspired algorithm ,literature review ,swarm intelligence ,Computer science ,business.industry ,Mechanical Engineering ,Nature inspired algorithm ,Cloud computing ,QC350-467 ,QA75.5-76.95 ,Optics. Light ,Swarm intelligence ,Atomic and Molecular Physics, and Optics ,Computer Science Applications ,Electronic, Optical and Magnetic Materials ,metaheuristic scheduling algorithm ,Electronic computers. Computer science ,Genetic algorithm ,genetic algorithm ,Artificial intelligence ,Nature inspired ,business ,Metaheuristic ,Information Systems - Abstract
Complex huge-scale scientific applications are simplified by workflow to execute in the cloud environment. The cloud is an emerging concept that effectively executes workflows, but it has a range of issues that must be addressed for it to progress. Workflow scheduling using a nature-inspired metaheuristic algorithm is a recent central theme in the cloud computing paradigm. It is an NP-complete problem that fascinates researchers to explore the optimum solution using swarm intelligence. This is a wide area where researchers work for a long time to find an optimum solution but due to the lack of actual research direction, their objectives become faint. Our systematic and extensive analysis of scheduling approaches involves recently high-cited metaheuristic algorithms like Genetic Algorithms (GA), Whale Search Algorithm (WSA), Ant Colony Optimization (ACO), Bat Algorithm, Artificial Bee Colony (ABC), Cuckoo Algorithm, Firefly Algorithm and Particle Swarm Optimization (PSO). Based on various parameters, we do not only classify them but also furnish a comprehensive striking comparison among them with the hope that our efforts will assist recent researchers to select an appropriate technique for further undiscovered issues. We also draw the attention of present researchers towards some open issues to dig out unexplored areas like energy consumption, reliability and security for considering them as future research work.
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- 2021
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8. Exploration and exploitation analysis for the sonar inspired optimization algorithm
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Alexandros Tzanetos and Georgios Dounias
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Optimization algorithm ,Work (electrical) ,Artificial Intelligence ,business.industry ,Computer science ,Applied Mathematics ,Complex system ,Artificial intelligence ,State (computer science) ,Nature inspired ,business ,Quality performance ,Sonar - Abstract
In the recent years, extensive discussion takes place in literature, on the effectiveness of meta-heuristics, and especially Nature Inspired Algorithms. Usually, authors state that such an approach should embody a well-balanced exploration and exploitation strategy. Sonar Inspired Optimization (SIO) is a recently presented algorithm, which counts already a number of successful real-world applications. Its novel mechanisms provide this equilibrium between exploration and exploitation, as it has been stated in previous studies. In this work, authors prove that this equilibrium exists and also, it is one of the main reasons behind the high quality performance of SIO.
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- 2021
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9. Hazelnut tree search algorithm: a nature-inspired method for solving numerical and engineering problems
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Hojjat Emami
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Root (linguistics) ,Mathematical optimization ,Computer science ,Process (engineering) ,0211 other engineering and technologies ,General Engineering ,02 engineering and technology ,Computer Science Applications ,Engineering optimization ,Constraint (information theory) ,020303 mechanical engineering & transports ,0203 mechanical engineering ,Search algorithm ,Modeling and Simulation ,Benchmark (computing) ,Nature inspired ,Hazelnut tree ,Software ,021106 design practice & management - Abstract
In this paper, a novel nature-inspired optimization algorithm, hazelnut tree search (HST) is proposed for solving numerical and engineering optimization problems. HST is a multi-agent algorithm that simulates the search process for finding the best hazelnut tree in a forest. The algorithm is composed of three main actuators: growth, fruit scattering, and root spreading. In the growth phase, trees compete with each other on shared resources to grow up and improve their fitness. In the fruit scattering phase, HTS performs exploration by simulating the movement of hazelnuts around the forest with the help of animals and rodents. In the root spreading, HTS performs exploitation by modeling the root spreading mechanism of trees around themselves. The performance of the proposed algorithm is evaluated on multi-variable unconstraint numerical optimization benchmarks and constraint engineering problems. Comparing the proposed algorithm with a few other optimization algorithms shows the superiority of the HTS in terms of problem-solving success and finding the global optimum on most benchmark problems.
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- 2021
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10. Assessment of novel nature-inspired fuzzy models for predicting long contraction scouring and related uncertainties
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Mohammadamin Torabi, Zaher Mundher Yaseen, Masoud Haghbin, and Ahmad Sharafati
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Mathematical optimization ,Hydraulic structure ,Mean squared error ,Computer science ,Ant colony optimization algorithms ,Architecture ,Genetic algorithm ,Inference ,Nature inspired ,Contraction (operator theory) ,Fuzzy logic ,Civil and Structural Engineering - Abstract
The scouring phenomenon is one of the major problems experienced in hydraulic engineering. In this study, an adaptive neuro-fuzzy inference system is hybridized with several evolutionary approaches, including the ant colony optimization, genetic algorithm, teaching-learning-based optimization, biogeographical-based optimization, and invasive weed optimization for estimating the long contraction scour depth. The proposed hybrid models are built using non-dimensional information collected from previous studies. The proposed hybrid intelligent models are evaluated using several statistical performance metrics and graphical presentations. Besides, the uncertainty of models, variables, and data are inspected. Based on the achieved modeling results, adaptive neuro-fuzzy inference system-biogeographic based optimization (ANFIS-BBO) provides superior prediction accuracy compared to others, with a maximum correlation coefficient (Rtest = 0.923) and minimum root mean square error value (RMSEtest = 0.0193). Thus, the proposed ANFIS-BBO is a capable cost-effective method for predicting long contraction scouring, thus, contributing to the base knowledge of hydraulic structure sustainability.
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- 2021
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11. Chaosin metaheuristic based artificial intelligence algorithms:a short review
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Gökhan Atali, Halil İbrahim Şeker, Bilal Gürevin, and Ihsan Pehlivan
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CHAOS (operating system) ,General Computer Science ,business.industry ,Computer science ,Chaotic map ,Evolutionary algorithm ,Swarm behaviour ,Artificial intelligence ,Electrical and Electronic Engineering ,Nature inspired ,business ,Metaheuristic - Published
- 2021
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12. Does Topology Optimization Exist in Nature?
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M. V. A. Raju Bahubalendruni, Ashok Dara, and A. Johnney Mertens
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0106 biological sciences ,Constructal law ,Computer science ,Isotropy ,Topology optimization ,Mechanical engineering ,02 engineering and technology ,Network topology ,01 natural sciences ,Software design pattern ,0202 electrical engineering, electronic engineering, information engineering ,Ansys software ,020201 artificial intelligence & image processing ,Boundary value problem ,Nature inspired ,Engineering (miscellaneous) ,010606 plant biology & botany - Abstract
Manufacturing industries are aiming to reduce weight of the products at uncompromised structural performance. Topology optimization is a reliable technique to achieve the improved topologies at minimum material utilization. Nature is known as best manufacturer to bring complex structures with the existed materials. The present research is aimed to identify the constructal design patterns that existed in nature through topology optimization. Structures with different boundary conditions are modeled and optimized using Solid Isotropic Material Penalization (SIMP) method through ANSYS software under structural and thermal loading conditions. The performed case studies revealed that the optimized topologies are very close to the nature inspired patterns.
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- 2021
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13. Comprehensive Survey for Cloud Computing Based Nature-Inspired Algorithms Optimization Scheduling
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Helat Ahmed Hussein, Shakir Fattah Kak, Hazha Saeed Yahia, Azar Abid Salih, Mohammed A. M. Sadeeq, Adel AL-Zebari, Nareen O. M. Salim, and Subhi R. M. Zeebaree
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business.industry ,Computer science ,Distributed computing ,Scheduling (production processes) ,Cloud computing ,General Medicine ,Nature inspired ,business - Abstract
Many applications in the real world include optimizing specific targets, such as cost minimization, energy conservation, climate, and maximizing production, efficiency, and sustainability. The optimization problem is strongly non-linear with multifunctional landscapes under several dynamic, non-linear constraints in some instances. It is challenging to address those issues. Also, with the increasing strength of modern computers, simplistic brute force methods are still inefficient and unwanted. Practical algorithms are also vital for these implementations whenever possible. Cloud computing has become an essential and popular emerging computing environment that supports on-demand services and provides internet-based services. Cloud computing allows a range of services and tools to be easily accessed from anywhere in the world. Since cloud computing has global access to its services, there will always be threats and challenges facing its servers and services, such as; task scheduling, security, energy efficiency, network load, and other challenges. In the research area, many algorithms have been addressed to solve these problems. This paper investigates relevant analysis and surveys on the above topics, threats, and outlooks. This paper offers an overview of nature-inspired algorithms, their applications, and valuation, emphasizing cloud computing problems. Many problems in science and engineering can be viewed as optimization problems with complex non-linear constraints. Highly nonlinear solutions typically need advanced optimization algorithms, and conventional algorithms can have difficulty addressing these issues. Because of its simplicity and usefulness, nature-inspired algorithms are currently being used. There are nevertheless some significant concerns with computing and swarming intelligence influenced by evolution.
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- 2021
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14. Optimize Task Scheduling and Resource Allocation Using Nature Inspired Algorithms in Cloud based BDA
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Amitkumar Manekar and Pradeepini Gera
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Human-Computer Interaction ,Information Systems and Management ,business.industry ,Computer science ,Distributed computing ,Resource allocation ,Cloud computing ,Library and Information Sciences ,Nature inspired ,business ,Software ,Task (project management) ,Scheduling (computing) - Abstract
Task Scheduling and Resource allocation is a prominent research topic in cloud computing. There are several objectives associated with Optimize Task Scheduling and Resource allocation as cloud computing systems are more complex than the traditional distributed system. There are several challenges like resolving the task mapped to the node on which task to be executed. A simplified but near optimal proposed nature inspired algorithms are focus in this paper. In this paper basic idea about optimization, reliability and complexity is considered while design a solution for modern BDA (Big Data Application). Detailed analysis of experimental results, it is shown that the proposed algorithm has better optimization effect on the fair share policies which are presently available in most of the BDA. In this paper we focused on Dragonfly algorithm and Sea lion algorithms which are nature inspired algorithms. These algorithms are efficient for optimization purpose for solving task scheduling and resource allocation problem. Finally performance of the hybrid DA algorithm and Sea lion is compared with traditional techniques used for modern BDA using Hadoop MapReduce. Simulation results prove the efficacy of the suggested algorithms.
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- 2021
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15. Load balancing for software-defined network: a review
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Ravi Shankar Pandey and Vivek Srivastava
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OpenFlow ,Computer science ,Distributed computing ,020206 networking & telecommunications ,02 engineering and technology ,Load balancing (computing) ,Computer Graphics and Computer-Aided Design ,Decentralization ,Popularity ,Computer Science Applications ,Hardware and Architecture ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Nature inspired ,Software-defined networking ,Software - Abstract
Software Defined Networks (SDN) concept reduces the complexity of the traditional network. The decentralization of controlling issues of the traditional networks in SDN increases the popularity of ...
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- 2021
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16. Solution for Optimal Power Flow Problem Using WDO Algorithm
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Ranjani Senthilkumara
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education.field_of_study ,Computer science ,General Mathematics ,Population ,Wind driven optimization ,Education ,Power (physics) ,Domain (software engineering) ,Computational Mathematics ,Power flow ,Computational Theory and Mathematics ,Fuel cost ,Nature inspired ,education ,Global optimization ,Algorithm - Abstract
Wind driven optimization (WDO) algorithm is a best optimization method based on atmospherically motion, global optimization nature inspired method. The method is based on population iterative analytical global optimization for multifaceted and multi prototype in the search domain for constraints to implement. In this paper, WDO algorithm is accustomed to find optimal power flow solution. To find the efficacy of the technique, it is applied to IEEE 30 bus systems to find fuel cost for generation of power as a main objective. Obtained results were compared with other techniques shows the better solution for optimal power flow problem.
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- 2021
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17. Modeling and Scheduling Home Appliances using Nature Inspired Algorithms for Demand Response Purpose
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Isra Haroun
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Demand response ,Computer science ,Distributed computing ,Scheduling (production processes) ,Electrical and Electronic Engineering ,Nature inspired - Published
- 2021
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18. Intrusion Detection using Nature‐Inspired Algorithms and Automated Machine Learning
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Pooja Gupta and Vasudev Awatramani
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Feature engineering ,business.industry ,Computer science ,Deep learning ,Hyperparameter optimization ,Artificial intelligence ,Intrusion detection system ,Information security ,Nature inspired ,business ,Machine learning ,computer.software_genre ,computer - Published
- 2021
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19. Nature-Inspired-Based Approach for Automated Cyberbullying Classification on Multimedia Social Networking
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Mohammed A. AlZain, K. Srihari, K. Somasundaram, Mehedi Masud, Ashutosh Sharma, Gurjot Singh Gaba, S. Rajeskannan, Gaurav Dhiman, Mukesh Soni, and N. Yuvaraj
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Article Subject ,Computer science ,General Mathematics ,Feature extraction ,Context (language use) ,02 engineering and technology ,Machine learning ,computer.software_genre ,020204 information systems ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Reinforcement learning ,Social media ,Nature inspired ,Artificial neural network ,Social network ,business.industry ,General Engineering ,Electronic media ,Engineering (General). Civil engineering (General) ,ComputingMethodologies_PATTERNRECOGNITION ,Action (philosophy) ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics - Abstract
In the modern era, the cyberbullying (CB) is an intentional and aggressive action of an individual or a group against a victim via electronic media. The consequence of CB is increasing alarmingly, affecting the victim either physically or psychologically. This allows the use of automated detection tools, but research on such automated tools is limited due to poor datasets or elimination of wide features during the CB detection. In this paper, an integrated model is proposed that combines both the feature extraction engine and classification engine from the input raw text datasets from a social media engine. The feature extraction engine extracts the psychological features, user comments, and the context into consideration for CB detection. The classification engine using artificial neural network (ANN) classifies the results, and it is provided with an evaluation system that either rewards or penalizes the classified output. The evaluation is carried out using Deep Reinforcement Learning (DRL) that improves the performance of classification. The simulation is carried out to validate the efficacy of the ANN-DRL model against various metrics that include accuracy, precision, recall, and f-measure. The results of the simulation show that the ANN-DRL has higher classification results than conventional machine learning classifiers.
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- 2021
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20. Artificial lizard search optimization (ALSO): a novel nature-inspired meta-heuristic algorithm
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Neetesh Kumar, Navjot Singh, and Deo Prakash Vidyarthi
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0209 industrial biotechnology ,Optimization problem ,biology ,Lizard ,Computer science ,Foraging ,Agama ,Swarm behaviour ,Computational intelligence ,02 engineering and technology ,biology.organism_classification ,Object detection ,Theoretical Computer Science ,Predation ,020901 industrial engineering & automation ,biology.animal ,0202 electrical engineering, electronic engineering, information engineering ,Benchmark (computing) ,020201 artificial intelligence & image processing ,Geometry and Topology ,Nature inspired ,Algorithm ,Software - Abstract
Redheaded Agama lizards attack their prey in a well-organized manner. This work models the dynamic foraging behaviour of Agama lizards and their effective way of capturing prey into a mathematical model named as artificial lizard search optimization (ALSO) algorithm. The idea is based on a recent study in which the researchers reported that the lizards control the swing of their tails in a measured manner to redirect angular momentum from their bodies to their tails, stabilizing body attitude in the sagittal plane. A balanced lumping (between body and tail angles) plays a significant role in capturing the prey in a shot. In formulating the optimization problem, a swarm of lizard are considered that are hunting for the prey. To study the performance of the proposed ALSO, it has been simulated. A comparative study is done with some well-known nature-inspired optimization techniques on classical unimodal, multimodal and other benchmark functions. Further, the algorithm is also tested on an object detection application. The result proves the effectiveness of the proposed ALSO algorithm over other nature-inspired state of the art.
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- 2021
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21. The Applications of Nature-Inspired Algorithms in Logistic Domains: A Comprehensive and Systematic Review
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Chen Wang, Yuhao Qian, and Seid Shaic
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Scheme (programming language) ,Multidisciplinary ,Computer science ,Ant colony optimization algorithms ,010102 general mathematics ,Particle swarm optimization ,01 natural sciences ,Domain (software engineering) ,Distribution system ,Genetic algorithm ,Memetic algorithm ,0101 mathematics ,Nature inspired ,Algorithm ,computer ,computer.programming_language - Abstract
The utilization of nature-inspired algorithms for logistic domains and its potential to manage uncertainty evolve solutions and conduct optimization leftovers to be an antecedent research domain. The present article has considered primary bio-inspired processes to solve the logistics problem systematically until Feb 2020. We have opted 36 articles to summarize and review. The significant algorithm has been ranked into five primary categories: ant colony optimization, particle swarm optimization, memetic algorithm, genetic algorithm, and artificial bee colony. It is evident from the outcomes that within the past 10 years, bio-inspired procedures have experienced fast progress. They have prosperously been applied for optimization and design of particularly intricate systems like logistics distribution systems. It can be deducted from the outcomes that the other algorithms in the logistics distribution’s optimization have to be enhanced, leading to the elevation of the effectiveness of logistics enterprises. Also, the policy assistance for the logistics organization has been empowered to boost the efficient and healthy progress of it. We can observe that the genetic algorithm and its hybrids have indicated the best efficiency until now. So, it is essential to investigate the logistics distribution route optimization by recent nature-inspired algorithms for optimizing the logistics and selecting a rational distribution scheme.
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- 2021
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22. Selected Nature-Inspired Algorithms in Function of PM Synchronous Motor Cogging Torque Minimisation
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Goga Cvetkovski and L. Petkovska
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Minimisation (psychology) ,TK7800-8360 ,Permanent magnet synchronous motor ,Computer science ,finite element method ,Cogging torque ,Function (mathematics) ,Finite element method ,optimisation methods ,Quantitative Biology::Subcellular Processes ,cogging torque ,Control theory ,permanent magnet synchronous motor ,Genetic algorithm ,genetic algorithm ,Electronics ,Nature inspired ,Pm synchronous motor - Abstract
Both permanent magnet brushless DC motors and permanent magnet synchronous motors have attracted wide attention and are increasingly used in industrial high-performance applications in recent years. Those motors are known for their good electrical, magnetic and performance characteristics, but there is one parameter known as cogging torque that has a negative influence on the performance characteristics of the motor. This pulsating torque is generated as a result of the interaction between the stator teeth and the permanent magnets. The minimisation of the ripple of this torque in those permanent magnet motors is of great importance and is generally achieved by a special motor design which in the design process involves a variety of many geometrical motor parameters. In this research work, a novel approach will be introduced where two different nature-inspired algorithms, such as genetic algorithm (GA) and cuckoo search (CS) algorithm are used as an optimisation tool, in which the defined equation for the maximum value of the cogging torque is applied as an objective function. Therefore, a proper mathematical presentation of the maximum value of the cogging torque for the analysed synchronous motor is developed and implemented in the research work. For a detailed analysis of the three different motor models, the initial motor and the two optimised motor models are modelled and analysed using a finite element method approach. The cogging torque is analytically and numerically calculated and the results for all the models are presented.
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- 2021
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23. Metaheuristic algorithms for one-dimensional bin-packing problems: A survey of recent advances and applications
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Absalom E. Ezugwu and Chanaleä Munien
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one-dimensional ,Mathematical optimization ,021103 operations research ,bin-packing problem ,Computer science ,Bin packing problem ,Science ,0211 other engineering and technologies ,metaheuristic ,QA75.5-76.95 ,02 engineering and technology ,nature-inspired ,Artificial Intelligence ,Metaheuristic algorithms ,Electronic computers. Computer science ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Nature inspired ,Metaheuristic ,Software ,Information Systems - Abstract
The bin-packing problem (BPP) is an age-old NP-hard combinatorial optimization problem, which is defined as the placement of a set of different-sized items into identical bins such that the number of containers used is optimally minimized. Besides, different variations of the problem do exist in practice depending on the bins dimension, placement constraints, and priority. More so, there are several important real-world applications of the BPP, especially in cutting industries, transportation, warehousing, and supply chain management. Due to the practical relevance of this problem, researchers are consistently investigating new and improved techniques to solve the problem optimally. Nature-inspired metaheuristics are powerful algorithms that have proven their incredible capability of solving challenging and complex optimization problems, including several variants of BPPs. However, no comprehensive literature review exists on the applications of the metaheuristic approaches to solve the BPPs. Therefore, to fill this gap, this article presents a survey of the recent advances achieved for the one-dimensional BPP, with specific emphasis on population-based metaheuristic algorithms. We believe that this article can serve as a reference guide for researchers to explore and develop more robust state-of-the-art metaheuristics algorithms for solving the emerging variants of the bin-parking problems.
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- 2021
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24. Survey on five nature-Inspired Optimization Algorithms
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Zsolt Csaba Johanyák and Ahmad Reda
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Firefly protocol ,Optimization algorithm ,business.industry ,Search algorithm ,Computer science ,Benchmark (computing) ,Particle swarm optimization ,Artificial intelligence ,Nature inspired ,business ,Cuckoo search - Abstract
This paper presents a literature review about Particle Swarm Optimization (PSO), Firework, Firefly, Clonal Selection, and Cuckoo Search algorithms, which are among the most common natural-inspired optimization algorithms. These algorithms were tried on different benchmark functions. The obtained results were analyzed, and the performance was compared. The results showed that PSO and Firefly Search algorithms provided the best performance in the studied cases.
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- 2021
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25. Nature-Inspired Level Set Segmentation Model for 3D-MRI Brain Tumor Detection
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Sarmad Omar Abter, Saad M. Darwish, Oday A. Hassen, Yasmine Mahmoud Ibrahim, Walaa M. Sheta, and Ansam A. Abdulhussein
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Computer science ,business.industry ,Brain tumor ,Pattern recognition ,Level set segmentation ,medicine.disease ,Computer Science Applications ,Biomaterials ,Mechanics of Materials ,Modeling and Simulation ,medicine ,Artificial intelligence ,Electrical and Electronic Engineering ,Nature inspired ,business - Published
- 2021
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26. Stimuli-responsive polydopamine-based smart materials
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Yiwen Li, Yiyun Cheng, Fang Zhu, Zhao Wang, Peng Yang, and Zhengbiao Zhang
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Stimuli responsive ,Coating ,Computer science ,education ,engineering ,Nanotechnology ,General Chemistry ,Nature inspired ,engineering.material ,Mechanical force ,Smart material ,humanities - Abstract
Stimuli responsiveness has long been a fascinating feature of smart material design. Polydopamine (PDA), a nature inspired polymeric pigment, exhibits excellent photo-responsive properties and has active surface functionality for loading various responsive motifs, making it a promising candidate for the construction of stimuli-responsive smart functional materials. PDA has long been considered as a robust coating material, but its responsive feature has rarely been emphasized in the past reviews. Herein, we present the first effort to summarize recent advances in the design strategies, responsive mechanisms, and diverse applications of stimuli-responsive PDA-based smart materials; the stimuli include light, pH, chemicals, temperature, humidity, electric fields, mechanical force, magnetic fields, and ultrasound. Moreover, the current trends, challenges, and future directions of stimuli-responsive PDA-based materials are also elaborated.
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- 2021
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27. Application of nature inspired algorithms for multi-objective inventory control scenarios
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Mahjabin Rahman, Mushaer Ahmed, and Ferdous Sarwar
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Inventory control ,Mathematical optimization ,lcsh:T55.4-60.8 ,Heuristic (computer science) ,Computer science ,Swarm behaviour ,Space (commercial competition) ,Multi-objective optimization ,Industrial and Manufacturing Engineering ,Taguchi methods ,lcsh:Industrial engineering. Management engineering ,lcsh:Production management. Operations management ,lcsh:TS155-194 ,Nature inspired - Abstract
An inventory control system having multiple items in stock is developed in this paper to optimize total cost of inventory and space requirement. Inventory modeling for both the raw material storage and work in process (WIP) is designed considering independent demand rate of items and no volume discount. To make the model environmentally aware, the equivalent carbon emission cost is also incorporated as a cost function in the formulation. The purpose of this study is to minimize the cost of inventories and minimize the storage space needed. The inventory models are shown here as a multi-objective programming problem with a few nonlinear constraints which has been solved by proposing a meta-heuristic algorithm called multi-objective particle swarm optimization (MOPSO). A further meta-heuristic algorithm called multi-objective bat algorithm (MOBA) is used to determine the efficacy of the result obtained from MOPSO. Taguchi method is followed to tune necessary response variables and compare both algorithm's output. At the end, several test problems are generated to evaluate the performances of both algorithms in terms of six performance metrics and analyze them statistically and graphically.
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- 2021
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28. Rock Hyraxes Swarm Optimization: A New Nature-Inspired Metaheuristic Optimization Algorithm
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Kawther Ahmed, Dac-Nhuong Le, Maha Mahmood, and Belal Al-Khateeb
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Biomaterials ,Mathematical optimization ,Mechanics of Materials ,Computer science ,Metaheuristic optimization ,Modeling and Simulation ,Swarm behaviour ,Electrical and Electronic Engineering ,Nature inspired ,Computer Science Applications - Published
- 2021
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29. Nature-Inspired Techniques for Dynamic Constraint Satisfaction Problems
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Malek Mouhoub and Mehdi Bidar
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Mathematical optimization ,Control and Optimization ,Computer science ,Applied Mathematics ,Economics, Econometrics and Finance (miscellaneous) ,Nature inspired ,Constraint satisfaction problem ,Computer Science Applications - Abstract
Combinatorial applications such as configuration, transportation and resource allocation, often operate under highly dynamic and unpredictable environments. In this regard, one of the main challenges is to maintain a consistent solution anytime constraints are (dynamically) added. While many solvers have been developed to tackle these applications, they often work under idealized assumptions of environmental stability. In order to address limitation, we propose a methodology, relying on nature-inspired techniques, for solving constraint problems when constraints are added dynamically. The choice for nature-inspired techniques is motivated by the fact that these are iterative algorithms, capable of maintaining a set of promising solutions, at each iteration. Our methodology takes advantage of these two properties, as follows. We first solve the initial constraint problem and save the final state (and the related population) after obtaining a consistent solution. This saved context will then be used as a resume point for finding, in an incremental manner, new solutions to subsequent variants of the problem, anytime new constraints are added. More precisely, once a solution is found, we resume from the current state to search for a new one (if the old solution is no longer feasible), when new constraints are added. This can be seen as an optimization problem where we look for a new feasible solution satisfying old and new constraints, while minimizing the differences with the solution of the previous problem, in sequence. This latter objective ensures to find the least disruptive solution, as this is very important in many applications including scheduling, planning and timetabling. Following on our proposed methodology, we have developed the dynamic variant of several nature-inspired techniques to tackle dynamic constraint problems. Constraint problems are represented using the well-known Constraint Satisfaction Problem (CSP) paradigm. Dealing with constraint additions in a dynamic environment can then be expressed as a series of static CSPs, each resulting from a change in the previous one by adding new constraints. This sequence of CSPs is called the Dynamic CSP (DCSP). To assess the performance of our proposed methodology, we conducted several experiments on randomly generated DCSP instances, following the RB model. The results of the experiments are reported and discussed.
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- 2022
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30. New perspectives and designs into nature-inspired flexible electronics: status and applications
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Huimin Gong, Huimin Li, Song Luo, and Song Liu
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Interface (Java) ,Computer science ,business.industry ,Mechanical Engineering ,Electrical engineering ,02 engineering and technology ,010402 general chemistry ,021001 nanoscience & nanotechnology ,Condensed Matter Physics ,01 natural sciences ,Biological materials ,Flexible electronics ,0104 chemical sciences ,Mechanics of Materials ,General Materials Science ,Nature inspired ,0210 nano-technology ,business - Abstract
Flexible electronics has received growing attention due to its intriguing properties in many fields, including health monitoring, human-machine interface etc. However, the narrow working range, dis...
- Published
- 2020
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31. A survey of Type-2 fuzzy logic controller design using nature inspired optimization
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Patricia Melin, Prometeo Cortés-Antonio, Fevrier Valdez, and Oscar Castillo
- Subjects
Statistics and Probability ,0209 industrial biotechnology ,business.industry ,Computer science ,General Engineering ,02 engineering and technology ,Type (model theory) ,Fuzzy logic controller ,020901 industrial engineering & automation ,Artificial Intelligence ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,Nature inspired ,business - Abstract
In this paper, we are presenting a survey of research works dealing with Type-2 fuzzy logic controllers designed using optimization algorithms inspired on natural phenomena. Also, in this review, we analyze the most popular optimization methods used to find the important parameters on Type-1 and Type-2 fuzzy logic controllers to improve on previously obtained results. To this end have included a summary of the results obtained from the web of science database to observe the recent trend of using optimization methods in the area of optimal type-2 fuzzy logic control design. Also, we have made a comparison among countries of the network of researchers using optimization methods to analyze the distribution and impact of the papers.
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- 2020
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32. Performance analysis of an evolutionary recurrent Legendre Polynomial Neural Network in application to FOREX prediction
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Rajashree Dash
- Subjects
0209 industrial biotechnology ,General Computer Science ,Artificial neural network ,Computer science ,02 engineering and technology ,Neural network ,lcsh:QA75.5-76.95 ,Set (abstract data type) ,Nonlinear system ,020901 industrial engineering & automation ,FOREX prediction ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,lcsh:Electronic computers. Computer science ,Nature inspired ,Predictability ,Legendre polynomials ,Algorithm ,Foreign exchange market ,Shuffled frog leaping algorithm ,Block (data storage) - Abstract
In this paper, a hybrid FOREX predictor model is developed by using a recurrent Legendre polynomial neural network (RLPNN) with an improved shuffled frog leaping (ISFL) based learning strategy. The recurrent network used in this study is a high order single layer neural network, structured using Legendre polynomials with feedback paths. The new recurrent network assembled integrating a functional expansion block with a delay block helps to map the internal nonlinearity associated with the input and output samples. Further a nature inspired learning strategy based on the memetic evolution of a team of frogs in search of their food locations is set forth to estimate the unrevealed parameters of the network. Empirically the model validation is realized over three currency exchange data sets accumulated within same period of time. Result investigation clearly illustrates the higher predictability of the proposed model compared to other models included in the study.
- Published
- 2020
33. Squirrel Search Optimizer: Nature Inspired Metaheuristic Strategy for Solving Disparate Economic Dispatch Problems
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P. D. Sathya, Murugesan Suman, and V. P. Sakthivel
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Mathematical optimization ,General Computer Science ,Computer science ,General Engineering ,Economic dispatch ,Nature inspired ,Metaheuristic - Published
- 2020
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34. Reversible computation in nature inspired rule-based systems
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Bogdan Aman and Gabriel Ciobanu
- Subjects
Property (philosophy) ,Theoretical computer science ,Computational Theory and Mathematics ,Computer science ,Natural computing ,Applied Mathematics ,Computation ,Theory of computation ,Natural (music) ,Rule-based system ,Nature inspired - Abstract
Since reversibility is an inherent property of many natural phenomena, it makes sense to investigate reversibility in natural computing. More exactly, to study reversible computation in rule-based systems inspired by living cells. Thus, we consider systems working with rules over multisets of objects which are evolving in a maximal parallel manner. After defining what reversibility means in these rule-based systems, we explore their properties that are fully reversible. Some specific properties for reversible computation are presented.
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- 2020
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35. Nature-Inspired and Sustainable Synthesis of Sulfur-Bearing Fe-Rich Nanoparticles
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Deyi Hou, David O'Connor, Rajender S. Varma, Martin R. Palmer, and Qingsong Liu
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High energy ,Renewable Energy, Sustainability and the Environment ,Computer science ,General Chemical Engineering ,Synthesis methods ,Sustainable practices ,Environmental Chemistry ,Nanoparticle ,Nanotechnology ,General Chemistry ,Nature inspired - Abstract
Sulfur-bearing Fe-rich nanoparticles (SINPs) have been subject to increased levels of interest because of their catalytic properties and other features. However, with increasing interest in greener and sustainable practice, traditional engineered routes to SINP synthesis have become a concern owing to their high energy and resource demand as well as the use of potentially hazardous or environmentally harmful reagents. Here, we aim to bring attention to emerging and burgeoning research across a wide range of disciplines on the formation of both naturally occurring and synthetic SINPs. Firstly, various SINP types are described, and their most important characteristics are outlined. Second, the natural mechanisms of SINP formation are evaluated and their environmental significance explained, predominantly in hydrothermal vents and lithogenic environments, in order to help inspire new approaches to engineered synthesis. Third, an appraisal of various synthetic approaches for SINP assembly is presented, with a focus on green synthesis methods. One exemplar is the use of nature-inspired biosynthesis, which has been increasingly explored for the fabrication of cost-effective and environmentally friendlier SINPs. Finally, potential future research directions leading to more sustainable SINP synthesis are put forward.
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- 2020
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36. Nature Inspired and Transform Based Image Encryption Techniques: A Comparative Study
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Bhagyashri I. Pandurangi R, Meenakshi R. Patil, and Chaitra Bhat
- Subjects
Physics and Astronomy (miscellaneous) ,business.industry ,Computer science ,Management of Technology and Innovation ,Computer vision ,Artificial intelligence ,Nature inspired ,business ,Encryption ,Engineering (miscellaneous) ,Image (mathematics) - Published
- 2020
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37. Application of recent nature‐inspired meta‐heuristic optimisation techniques to small permanent magnet DC motor parameters identification problem
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Yannis L. Karnavas
- Subjects
0209 industrial biotechnology ,optimisation ,Computer science ,ise criterion ,grey wolf optimiser ,Energy Engineering and Power Technology ,interaction strategy ,02 engineering and technology ,DC motor ,Square (algebra) ,permanent magnet dc motor parameters identification problem ,020901 industrial engineering & automation ,speed step responses ,Approximation error ,Permanent magnet dc motor ,gwo algorithms ,0202 electrical engineering, electronic engineering, information engineering ,square of the error ,ant-lion optimisation ,Nature inspired ,stochastic nature-inspired techniques ,alo ,search problems ,dc motor model ,Interaction strategy ,General Engineering ,direct current motor ,dc motors ,Integral square error ,Parameter identification problem ,evolutionary computation ,lcsh:TA1-2040 ,ocean salps ,integral absolute error ,nature-inspired meta-heuristic optimisation techniques ,020201 artificial intelligence & image processing ,parameter estimation ,lcsh:Engineering (General). Civil engineering (General) ,permanent magnet motors ,ssa ,Algorithm ,Software - Abstract
In this study, an attempt is made to find an effective solution on the small direct current (DC) motor's parameters identification problem by employing two recently introduced stochastic nature-inspired techniques. The first one is called ‘salp swarm algorithm’ (SSA) while the second one is called ‘ant-lion optimiser’ (ALO). These algorithms have been inspired by the interaction strategy between the ocean salps and the ants and ant-lions, respectively, in nature. To appraise the effectiveness of these algorithms, a DC motor model has been appropriately implemented and its performance is evaluated by using speed step responses, while all model's parameters are considered unknown and therefore search variables. Integral of the square of the error (ISE), integral absolute error and integral in time of absolute error have been adopted as objective functions for the algorithms’ evaluation. In order to judge the acceptability of these algorithms, the simulation results are compared with those of another one similar technique, namely the ‘grey wolf optimiser’ (GWO). The obtained results reveal very satisfactory performance and confirm that the examined SSA, ALO and GWO algorithms can identify accurately the DC motor parameters and can be applied effectively to the specific problem. Another finding is that SSA combined with ISE criterion seems to be the most appropriate technique among the three algorithms.
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- 2020
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38. Rise of nature-inspired solar photovoltaic energy convertors
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Najiba Soudi, Navid M. S. Jahed, Sama Nanayakkara, and Sheva Naahidi
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Renewable Energy, Sustainability and the Environment ,Computer science ,business.industry ,020209 energy ,Photovoltaic system ,Energy conversion efficiency ,02 engineering and technology ,021001 nanoscience & nanotechnology ,Solar energy ,Engineering physics ,law.invention ,Sustainable energy ,Resource (project management) ,law ,Solar cell ,0202 electrical engineering, electronic engineering, information engineering ,General Materials Science ,Nature inspired ,0210 nano-technology ,business ,Energy (signal processing) - Abstract
Novel strategies based on nature-inspired design will play a major role in future photovoltaic solar cells as a sustainable energy resource. Biomimetic photovoltaic solar cells attracted great interest during the last few decades and have shown remarkable enhancements in power conversion efficiency. In this prospective article, we provide a description of the most significant and recent advances in solar energy conversion strategies inspired by nature. This review highlights light-harvesting techniques and utilization of bio-inspired electron transfer pathways used to enhance power conversion efficiency in different types of photovoltaic solar cells. Exceptional efforts are needed to overcome some major fabrication and performance concerns of some bio-inspired solar cell technology. However, solar energy will remain a viable resource to sustain human energy demands and current devices could be greatly improved by bio-inspiration.
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- 2020
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39. Nature Inspired Techniques and Applications in Intrusion Detection Systems: Recent Progress and Updated Perspective
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Gulshan Kumar and Kutub Thakur
- Subjects
Flexibility (engineering) ,Computer science ,Applied Mathematics ,Perspective (graphical) ,02 engineering and technology ,Intrusion detection system ,Computer security ,computer.software_genre ,01 natural sciences ,Field (computer science) ,Computer Science Applications ,Variety (cybernetics) ,010101 applied mathematics ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Natural phenomenon ,0101 mathematics ,Detection rate ,Nature inspired ,computer - Abstract
Nowadays, it has become a necessity for operational and reliable operation of networks due to our increased dependency over the network services. However, intruders are continuously attempting to break into the networks and disturbing the network services using a variety of attack vectors and technologies. This motivates us to develop the techniques that ensure operational and reliable network, even in changing scenarios. Recently, most of the researchers have focused on the employment of techniques inspired by a natural phenomenon to detect the intrusions effectively. Nature-Inspired Techniques (NITs) have the ability to adapt to a constantly changing environment. Thus, they help to provide in-built resiliency to failures and damages, collaborative, survivable, self-organizing and self-healing capabilities to IDSs. The paper presents an analysis of NITs, and their classification based on the source of their inspiration. A comprehensive review of various NITs employed in intrusion detection is presented. Analysis of prominent research indicates that NITs based IDSs offers high detection rate and low false positive rate in comparison to the conventional IDSs. The NITs enables more flexibility in IDSs because of their employability into hybrid IDSs leading to detection on the basis of anomalies as well as signatures, leading in improving detection results of known and unknown attacks. The paper attempts to identify NITs’ advantages, disadvantages and significant challenges to the successful implementation of NITs in the intrusion detection area. The main intention of this paper is to explore and present a comprehensive review of the application of NITs in intrusion detection, covering a variety of NITs, study of the techniques and architectures used and further the contribution of NITs in the field of intrusion detection. Finally, the paper ends with the conclusion and future aspects.
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- 2020
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40. Nature inspired optimization algorithms or simply variations of metaheuristics?
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Georgios Dounias and Alexandros Tzanetos
- Subjects
Linguistics and Language ,Optimization algorithm ,business.industry ,Computer science ,Novelty ,02 engineering and technology ,Variation (game tree) ,Language and Linguistics ,Field (computer science) ,Artificial Intelligence ,020204 information systems ,0202 electrical engineering, electronic engineering, information engineering ,Natural (music) ,020201 artificial intelligence & image processing ,Artificial intelligence ,Limit (mathematics) ,Nature inspired ,business ,Metaheuristic - Abstract
In the last decade, we observe an increasing number of nature-inspired optimization algorithms, with authors often claiming their novelty and their capabilities of acting as powerful optimization techniques. However, a considerable number of these algorithms do not seem to draw inspiration from nature or to incorporate successful tactics, laws, or practices existing in natural systems, while also some of them have never been applied in any optimization field, since their first appearance in literature. This paper presents some interesting findings that have emerged after the extensive study of most of the existing nature-inspired algorithms. The need for irrationally introducing new nature inspired intelligent (NII) algorithms in literature is also questioned and possible drawbacks of NII algorithms met in literature are discussed. In addition, guidelines for the development of new nature-inspired algorithms are proposed, in an attempt to limit the misleading appearance of variation of metaheuristics as nature inspired optimization algorithms.
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- 2020
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41. Comprehensive analysis of hybrid nature-inspired algorithms for software reliability analysis
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Sangeeta and Sitender
- Subjects
010104 statistics & probability ,Computer science ,business.industry ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,02 engineering and technology ,Artificial intelligence ,0101 mathematics ,Nature inspired ,business ,01 natural sciences ,Software quality - Published
- 2020
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42. Nature inspired chaotic squirrel search algorithm (CSSA) for multi objective task scheduling in an IAAS cloud computing atmosphere
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P M Joe Prathap and M.S. Sanaj
- Subjects
Computer Networks and Communications ,Computer science ,020209 energy ,Distributed computing ,Chaotic ,QoS ,Cloud computing ,02 engineering and technology ,IaaS cloud atmosphere ,Scheduling (computing) ,Biomaterials ,Search algorithm ,0202 electrical engineering, electronic engineering, information engineering ,Squirrel search algorithm ,Nature inspired ,Chaotic squirrel search algorithm ,Civil and Structural Engineering ,Fluid Flow and Transfer Processes ,business.industry ,Mechanical Engineering ,Quality of service ,020208 electrical & electronic engineering ,Metals and Alloys ,Service provider ,Multitask scheduling ,Electronic, Optical and Magnetic Materials ,Task scheduling ,Hardware and Architecture ,lcsh:TA1-2040 ,Profitability index ,business ,lcsh:Engineering (General). Civil engineering (General) - Abstract
Task scheduling in the cloud platform seems to be the most significant issue to guarantee that cloud connectivity adequately and efficiently meets the requirements of customers. Scheduling is basically the method of mapping or assigning tasks after taking into account job features to accessible funds. An effective scheduling protocol should comply with user needs and aids a service provider perform excellent quality of service (QoS) in order to boost general application efficiency. Cloud computing is an evolving computational paradigm with a broad range of self-reliant and economically diverse computational structures. Task scheduling is a significant move to enhance cloud computing general efficiency. Task scheduling is also important in order to decrease power utilization and enhance service providers ' profitability through a reduction in handling moment. In this paper we suggest a chaotic squirrel search algorithm (CSSA) to optimally multitask scheduling in an Infrastructure as a Service (IaaS) cloud atmosphere. The methods continuously generate job plans that render the current approaches more cost-effective. In order to guarantee greater global convergence, the early eco system was produced with messy optimisation for the efficient eco-system. The suggested chaotic squirrel search algorithm was ultimately synthesised with the messy local search to enable the exploring authority to complement Squirrel search algorithm (SSA) algorithms. Other QoS conditions such as compatibility and safety for very big cases can be expanded to cover the suggested technique. A cloud simulator toolkit takes into consideration the strategy and compares the outcomes with scheduling algorithms so that ideal outcomes for several goals are achieved.
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- 2020
43. An Overview of Few Nature Inspired Optimization Techniques and Its Reliability Applications
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Nitin Uniyal, Anuj Kumar, and Sangeeta Pant
- Subjects
metaheuristics ,0209 industrial biotechnology ,General Computer Science ,lcsh:T ,Computer science ,lcsh:Mathematics ,General Mathematics ,General Engineering ,02 engineering and technology ,lcsh:QA1-939 ,lcsh:Technology ,General Business, Management and Accounting ,grey wolf optimizer ,Reliability engineering ,020901 industrial engineering & automation ,multi-objective optimization ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,reliability optimization ,Nature inspired ,Reliability (statistics) - Abstract
Optimization has been a hot topic due to its inevitably in the development of new algorithms in almost every applied branch of Mathematics. Despite the broadness of optimization techniques in research fields, there is always an open scope of further refinement. We present here an overview of nature-inspired optimization with a subtle background of fundamentals and classification and their reliability applications. An attempt has been made to exhibit the contrast nature of multi objective optimization as compared to single objective optimization. Though there are various techniques to achieve the optimality in optimization problems but nature inspired algorithms have proved to be very efficient and gained special attention in modern research problems. The purpose of this article is to furnish the foundation of few nature inspired optimization techniques and their reliability applications to an interested researcher.
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- 2020
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44. Novel nature-inspired autonomous guidance of aerial robots formation regarding honey bee artificial algorithm and fuzzy logic
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I. Shafieenejad
- Subjects
Computer science ,business.industry ,Mechanical Engineering ,Optimal trajectory ,Robot ,Honey bee ,Artificial intelligence ,Nature inspired ,business ,Fuzzy logic - Published
- 2020
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45. Group search optimizer: a nature-inspired meta-heuristic optimization algorithm with its results, variants, and applications
- Author
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Laith Abualigah
- Subjects
0209 industrial biotechnology ,Theoretical computer science ,Optimization problem ,Optimization algorithm ,Computer science ,Group (mathematics) ,02 engineering and technology ,Function (mathematics) ,Set (abstract data type) ,020901 industrial engineering & automation ,Artificial Intelligence ,0202 electrical engineering, electronic engineering, information engineering ,Benchmark (computing) ,Meta heuristic ,020201 artificial intelligence & image processing ,Nature inspired ,Software - Abstract
In this paper, to keep the researchers interested in nature-inspired algorithms and optimization problems, a comprehensive survey of the group search optimizer (GSO) algorithm is introduced with detailed discussions. GSO is a nature-inspired optimization algorithm introduced by He et al. (IEEE Trans Evol Comput 13:973–990, 2009) to solve several different optimization problems. It is inspired by animal searching behavior in real life. This survey focuses on the applications of the GSO algorithm and its variants and results from the year of its suggestion (2009) to now (2020). GSO algorithm is used to discover the best solution over a set of candidate solution to solve any optimization problem by determining the minimum or maximum objective function for a specific problem. Meta-heuristic optimizations, nature-inspired algorithms, have become an interesting area because of their rule in solving various decision-making problems. The general procedures of the GSO algorithm are explained alongside with the algorithm variants such as basic versions, discrete versions, and modified versions. Moreover, the applications of the GSO algorithm are given in detail such as benchmark function, classification, networking, engineering, and other problems. Finally, according to the analyzed papers published in the literature by the all publishers such as IEEE, Elsevier, and Springer, the GSO algorithm is mostly used in solving various optimization problems. In addition, it got comparative and promising results compared to other similar published optimization algorithm.
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- 2020
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46. Buyer Inspired Meta-Heuristic Optimization Algorithm
- Author
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Srimanta Baishya, Wasim Arif, and Sanjoy Debnath
- Subjects
Mathematical optimization ,General Computer Science ,Optimization algorithm ,Computer science ,swarm intelligence ,Electronic computers. Computer science ,Meta heuristic ,optimization algorithm ,QA75.5-76.95 ,nature inspired - Abstract
Nature inspired swarm based meta-heuristic optimization technique is getting considerable attention and established to be very competitive with evolution based and physical based algorithms. This paper proposes a novel Buyer Inspired Meta-heuristic optimization Algorithm (BIMA) inspired form the social behaviour of human being in searching and bargaining for products. In BIMA, exploration and exploitation are achieved through shop to shop hoping and bargaining for products to be purchased based on cost, quality of the product, choice and distance to the shop. Comprehensive simulations are performed on 23 standard mathematical and CEC2017 benchmark functions and 3 engineering problems. An exhaustive comparative analysis with other algorithms is done by performing 30 independent runs and comparing the mean, standard deviation as well as by performing statistical test. The results showed significant improvement in terms of optimum value, convergence speed, and is also statistically more significant in comparison to most of the reported popular algorithms.
- Published
- 2020
47. Nature Inspired Binary Grey Wolf Optimizer for Feature Selection in the DETECTION of NEURODEGENERATIVE (PARKINSON) DISEASE
- Author
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Vamsidhar Enireddy, Lakshmi Kalyani, and BHANU PRAKASH KOLLA
- Subjects
Computer science ,business.industry ,Computer Science (miscellaneous) ,Binary number ,Pattern recognition ,Feature selection ,Artificial intelligence ,Electrical and Electronic Engineering ,Nature inspired ,business - Published
- 2020
- Full Text
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48. Adaptive and Improved Multi-population Based Nature-inspired Optimization Algorithms for Water Pump Station Scheduling
- Author
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Ibrahim Brahmia, Luca de Oliveira Turci, and Jingcheng Wang
- Subjects
Mathematical optimization ,010504 meteorology & atmospheric sciences ,Optimization algorithm ,Computer science ,Ant colony optimization algorithms ,0208 environmental biotechnology ,Scheduling (production processes) ,Particle swarm optimization ,02 engineering and technology ,01 natural sciences ,020801 environmental engineering ,Power consumption ,Multi population ,Nature inspired ,0105 earth and related environmental sciences ,Water Science and Technology ,Civil and Structural Engineering - Abstract
A common problem that the world faces is the waste of energy. In water pump stations, the situation is not different. Employees still use the traditional, manual, and empirical operation of the water pumps. This process gradually generates unwanted losses of energy and money. To avoid such profligacy, this paper presents two Adaptive and one Improved Multi-population based nature-inspired optimization algorithms for water pump station scheduling. The main goal here is to obtain the optimal operational scheduling of each group of pumps, wasting the minimum amount of energy. Therefore, since the objective function relies on the shaft power consumption of all the pumps running together, our aim becomes feasible. We implemented and tested the algorithms in the main water pump station of Shanghai, in China. Based on traditional multi-population based nature-inspired optimization algorithms, such as Genetic Algorithm (GA), Ant Colony Optimization (ACO), and Particle Swarm Optimization (PSO), this work adapts and improves the models to fit the complex constraints and characteristics of the system. It also compares and analyses the performance of each method used in this case study, considering the obtained results. The method which demonstrated outperformance was chosen as the best solution for the present problem.
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- 2020
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49. Novel approach with nature-inspired and ensemble techniques for optimal text classification
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Om Prakash Verma and Anshu Khurana
- Subjects
Learning classifier system ,Computer Networks and Communications ,Computer science ,business.industry ,Process (computing) ,020207 software engineering ,Pattern recognition ,Feature selection ,02 engineering and technology ,Measure (mathematics) ,ComputingMethodologies_PATTERNRECOGNITION ,Hardware and Architecture ,Classifier (linguistics) ,0202 electrical engineering, electronic engineering, information engineering ,Media Technology ,Noise (video) ,Artificial intelligence ,Nature inspired ,business ,Time complexity ,Software - Abstract
Text classification reduces the time complexity and space complexity by dividing the complete task into the different classes. The main problem with text classification is a vast number of features extracted from the textual data. Pre-processed dataset have many features, some of which are not desirable and act only like noise. In this paper, a novel approach for optimal text classification based on nature-inspired algorithm and ensemble classifier is proposed. In the proposed model, feature selection was performed with Biogeography Based Optimization (BBO) algorithm along with ensemble classifiers (Bagging). The use of ensemble classifiers for classification delivers better performance for optimal text classification as compared to an individual classifier, and hence, improving the accuracy. Ensemble classifiers combines the weakness of individual classifiers. The individual classifiers are unable to improve the classification results when compared to ensemble classifier. The selected features, after feature selection using BBO algorithm, are classified into various classes using six machine learning classifier. The experimental results are computed on ten text classification datasets taken from UCI repository and one real-time dataset of an airlines. The four different measures namely; Accuracy, Precision, Recall and F- measure are used to validate performance of our model with ten-fold cross-validation. For feature selection process, a comparison is performed among state-of-the-art algorithms available in the literature. Results shows that BBO for feature selection outperforms the other similar nature-based optimization techniques. Our proposed approach of BBO with ensemble classifier is also compared with techniques proposed by other researchers and we analyzed the results quantitatively and qualitatively.
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- 2020
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50. Cluster Analysis of Health Care Data Using Hybrid Nature‐Inspired Algorithms
- Author
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Rishabh Agrawal and Ahmed P. Kauser
- Subjects
Computer science ,business.industry ,Davies–Bouldin index ,Health care ,k-means clustering ,Cluster (physics) ,Firefly algorithm ,Artificial intelligence ,Nature inspired ,business ,Cluster analysis ,Hybrid algorithm - Published
- 2020
- Full Text
- View/download PDF
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