6,230 results on '"SMART homes"'
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152. Research Trends and Key Themes in the Intersection of Renewable Energy and Smart Homes
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Singh, Sneh, Walia, Siddhant, Howlett, Robert J., Series Editor, Jain, Lakhmi C., Series Editor, Somani, Arun K., editor, Mundra, Ankit, editor, Gupta, Rohit Kumar, editor, Bhattacharya, Subhajit, editor, and Mazumdar, Arka Prokash, editor
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- 2024
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153. A Complex Intersection and Sustainable Solution of Smart Cities and Smart Homes: Building a Connected Habitat
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Thakur, Yash, Gupta, Varuna, Alapatt, Bosco Paul, Chakravorty, Antorweep, Series Editor, Verma, Ajit Kumar, Series Editor, Bhattacharya, Pushpak, Series Editor, Pant, Millie, Series Editor, Ghosh, Shubha, Series Editor, Arya, Rajeev, editor, Sharma, Subhash Chander, editor, and Iyer, Brijesh, editor
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- 2024
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154. Harnessing the Capabilities of IoHT-Based Remote Monitoring Systems for Decision Making in Elderly Healthcare
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Alexandru, Adriana, Ianculescu, Marilena, Paraschiv, Elena Anca, Kacprzyk, Janusz, Series Editor, Novikov, Dmitry A., Editorial Board Member, Shi, Peng, Editorial Board Member, Cao, Jinde, Editorial Board Member, Polycarpou, Marios, Editorial Board Member, Pedrycz, Witold, Editorial Board Member, Balas, Valentina Emilia, editor, Dzemyda, Gintautas, editor, and Belciug, Smaranda, editor
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- 2024
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155. An IoT-Based Framework for Smart Homes
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Bastos, André, Silva, Carlos, Pais, Luís, Henriques, João, Caldeira, Filipe, Wanzeller, Cristina, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, de la Iglesia, Daniel H., editor, de Paz Santana, Juan F., editor, and López Rivero, Alfonso J., editor
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- 2024
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156. Post Proceedings of the Interacting with Assistive Technology (IATech) Workshop
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Whittington, Paul, Dogan, Huseyin, Jiang, Nan, Wang, Ruijie, Porter, Chris, Hartmanis, Juris, Founding Editor, van Leeuwen, Jan, Series Editor, Hutchison, David, Editorial Board Member, Kanade, Takeo, Editorial Board Member, Kittler, Josef, Editorial Board Member, Kleinberg, Jon M., Editorial Board Member, Kobsa, Alfred, Series Editor, Mattern, Friedemann, Editorial Board Member, Mitchell, John C., Editorial Board Member, Naor, Moni, Editorial Board Member, Nierstrasz, Oscar, Series Editor, Pandu Rangan, C., Editorial Board Member, Sudan, Madhu, Series Editor, Terzopoulos, Demetri, Editorial Board Member, Tygar, Doug, Editorial Board Member, Weikum, Gerhard, Series Editor, Vardi, Moshe Y, Series Editor, Goos, Gerhard, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, Bramwell-Dicks, Anna, editor, Evans, Abigail, editor, Winckler, Marco, editor, Petrie, Helen, editor, and Abdelnour-Nocera, José, editor
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- 2024
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157. Spectrum-Efficient Backscatter for Smart Homes
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Gong, Wei, Liu, Jiangchuan, Wu, Weiqi, Gong, Wei, Liu, Jiangchuan, and Wu, Weiqi
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- 2024
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158. Profiling and Classification of IoT Devices for Smart Home Environments
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Das, Sudhir Kumar, Bebortta, Sujit, Pati, Bibudhendu, Panigrahi, Chhabi Rani, Senapati, Dilip, Kacprzyk, Janusz, Series Editor, Jain, Lakhmi C., Series Editor, Nayak, Janmenjoy, editor, Naik, Bighnaraj, editor, S, Vimal, editor, and Favorskaya, Margarita, editor
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- 2024
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159. Dynamic Offloading Based on Meta Deep Reinforcement Learning and Load Prediction in Smart Home Edge Computing
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Li, Mingchu, Li, Shuai, Qi, Wanying, Akan, Ozgur, Editorial Board Member, Bellavista, Paolo, Editorial Board Member, Cao, Jiannong, Editorial Board Member, Coulson, Geoffrey, Editorial Board Member, Dressler, Falko, Editorial Board Member, Ferrari, Domenico, Editorial Board Member, Gerla, Mario, Editorial Board Member, Kobayashi, Hisashi, Editorial Board Member, Palazzo, Sergio, Editorial Board Member, Sahni, Sartaj, Editorial Board Member, Shen, Xuemin, Editorial Board Member, Stan, Mircea, Editorial Board Member, Jia, Xiaohua, Editorial Board Member, Zomaya, Albert Y., Editorial Board Member, Gao, Honghao, editor, Wang, Xinheng, editor, and Voros, Nikolaos, editor
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- 2024
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160. Working in a smart home environment: examining the impact on productivity, well-being and future use intention
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Marikyan, Davit, Papagiannidis, Savvas, F. Rana, Omer, and Ranjan, Rajiv
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- 2024
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161. Centralized smart energy monitoring system for legacy home appliances
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Shahed S. Ahmad, Fadi Almasalha, Mahmoud H. Qutqut, and Mohammad Hijjawi
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Smart homes ,Energy monitoring ,Power monitoring ,Power consumption ,Energy consumption ,Legacy home appliance ,Energy industries. Energy policy. Fuel trade ,HD9502-9502.5 - Abstract
Abstract The increasing global population and reliance on electrical devices for daily life resulted in sharply rising energy consumption. Also, this leads to higher household electricity bills. As a result, there is a growing demand for energy monitoring systems that can accurately estimate energy usage to help save power, especially for older home appliances that are difficult or expensive to update with monitoring sensors. However, current energy monitoring systems have some drawbacks, such as the inability to detect different types of appliances and the deployment complexity. Moreover, such systems are too costly to use in older power infrastructures. To address this issue, we proposed a centralized smart energy monitoring system designed for legacy home appliances, aiming to address the limitations of current energy monitoring systems by avoiding costly infrastructure upgrades to calculate the power consumption of legacy home appliances. The proposed system employs a two-layered architecture comprising hardware (Emontx device, Analog-to-Digital Converters (ADC), and Current Transformer (CT) sensors) and a software layer that includes Artificial Intelligence (AI) predictors using a pre-defined set of rules and K Nearest Neighbours (KNN) algorithms. We conducted three experiments on real home appliances to evaluate the proposed work. The accuracy of the proposed system showed positive results after several modifications and hard tuning of several parameters in devices, specifically for Jordanian power plants.
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- 2024
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162. Grünes Puzzle mit vielen Teilen.
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Koch, Christoph
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ELECTRIC vehicle charging stations ,SUSTAINABILITY ,CARBON offsetting ,CLEAN energy ,SMART homes ,PLASTICS in packaging ,ELECTRIC vehicle industry ,SUPPLY chain management ,SUPPLY chains - Abstract
Copyright of brand eins is the property of brand eins Medien AG and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
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- 2024
163. Ferienhäuser mit Luft/Luft-Wärmepumpen kühlen und heizen.
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ELECTRIC pumps ,ELECTRONIC equipment ,SMART homes ,MANUFACTURING industries ,RENEWABLE energy sources ,HEAT pumps - Abstract
Copyright of KI - Kälte Luft Klimatechnik is the property of Hüthig GmbH and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
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- 2024
164. JBL Authentics 300: A bilingual portable smart speaker.
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TAKIFF, JONATHAN
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SMART speakers , *HOME computer networks , *DIGITAL music , *GOOGLE Home , *INTERNET radio , *SOUND pressure , *SMART homes - Abstract
The JBL Authentics 300 is a portable smart speaker that can operate on either battery or AC power. It responds to both "Alexa" and "Hey Google" wake words interchangeably, making it unique among smart speakers. The speaker has a retro design with a distinctively retro enclosure wrapped in chocolate-brown faux leather. It offers flexible wireless connectivity and delivers big sound. However, placement is critical for optimal sound performance, and it is heavier than rival Wi-Fi portables. The speaker has not been given an IP rating for protection from the elements. Overall, the JBL Authentics 300 is a versatile and stylish smart speaker that merges the past, present, and future. [Extracted from the article]
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- 2024
165. SLASH YOUR BILLS BUILD YOUR OWN SMART HOME GRID.
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Collins, Barry
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SMART homes ,SMART television devices ,SMART devices ,METEOROLOGICAL services - Abstract
The article discusses the potential for significant energy bill savings by optimizing one's home grid. It highlights a reader who reduced their electricity price by over two-thirds by using solar panels and batteries, along with self-coded software to determine when to draw power from the grid and when to charge the batteries. The article suggests that open-source software like Home Assistant can help automate energy optimization and mentions its compatibility with various smart home devices. It also mentions the adoption of the Matter standard by major companies, supporting the growth and interoperability of Home Assistant. The software can be installed on different hardware and used with AI tools like ChatGPT to analyze energy consumption data. [Extracted from the article]
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- 2024
166. Approaching IT Security & Avoiding Threats in the Smart Home Context.
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Nehme, Alaa and George, Joey F.
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PROTECTION motivation theory ,SMART homes ,INFORMATION-seeking behavior ,SMART devices ,CYBERSPACE ,HOME wireless technology ,INFORMATION technology - Abstract
Not securing smart home devices has proven a threat to cyberspace. This has underscored the importance of using fear appeals to promote users' information security behavior. We practiced context-specific theorization to enhance fear appeal theory and design. Particularly, we extended Protection Motivation Theory to include avoidant-focused motivation (i.e., users' intent to avoid using their devices), the positive emotion of hope, and information technology (IT)-self extension. Our hypotheses include that fear engenders both protection and avoidant-focused motivations, hope mediates coping appraisal to engender (reduce) protection (avoidant-focused) motivation, and IT-self-extension acts as an antecedent. We conducted four studies, including two surveys and two experiments, and validated our extensions. Our main theoretical contributions include showing that hope is critical in determining which coping mechanism occurs and that it improves the theory's predictive power. In terms of practice, we demonstrate that a fear appeal message with a self-extension component and a strong coping component is more effective. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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167. Systematic analysis of smart homes: Current trends and future recommendations
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Sulaiman Khan, Hazrat Ali, and Zubair Shah
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Systematic literature review ,smart homes ,proactive approaches ,IoT ,smart living environment ,Chen Peng, Shanghai University, China ,Engineering (General). Civil engineering (General) ,TA1-2040 - Abstract
With the maturity of information and communication technology (ICT), numerous innovative applications are proposed in different arenas including smart living environments. Technology-enabled smart living has transformed the traditional living system to an enhanced user satisfaction model by providing a balanced environment, thus, securing the residents from disruptions and risks. Besides these magnified advantages, it is found almost full of faints in emergency situations. The researchers and architects put their full potential towards the development of new applications, but no significant attention is paid to analyze the existing designs to identify flaws and suggest enhanced solutions accordingly. To bridge this gap in the literature, this paper presents a comprehensive review to evaluate the capabilities of available smart home designs to counter any emergency situations. Along with highlighting safety, healthcare, and many other unwanted challenges, we also discussed the key problems that obfuscate the trustworthiness of smart homes for its residents. Moreover, the design limitations to present an early alarming and automatic evacuation mechanism especially for deaf, blind, and other visually impaired people is another big challenge to tackle. Finally, we elaborate on the limitations of available smart home solutions and suggest various open research problems that require further development.
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- 2024
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168. A Smart Technology Intervention in the Homes of People with Mental Illness and Physical Comorbidities
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Forchuk, Cheryl, Rudnick, Abraham, Corring, Deborah, Lizotte, Daniel, Hoch, Jeffrey S, Booth, Richard, Frampton, Barbara, Mann, Rupinder, and Serrato, Jonathan
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Engineering ,Information and Computing Sciences ,Electrical Engineering ,Electronics ,Sensors and Digital Hardware ,Distributed Computing and Systems Software ,Prevention ,Behavioral and Social Science ,Mental Health ,Health Services ,Rehabilitation ,Clinical Research ,Clinical Trials and Supportive Activities ,7.1 Individual care needs ,Management of diseases and conditions ,Generic health relevance ,Mental health ,Good Health and Well Being ,Humans ,Mental Disorders ,Technology ,Smartphone ,Focus Groups ,smart technology ,smart homes ,mental health ,eHealth ,physical health ,Analytical Chemistry ,Environmental Science and Management ,Ecology ,Distributed Computing ,Electrical and Electronic Engineering ,Electrical engineering ,Electronics ,sensors and digital hardware ,Environmental management ,Distributed computing and systems software - Abstract
Appropriate support in the home may not be readily available for people living in the community with mental illness and physical comorbidities. This mixed-method study evaluated a smart home technology intervention for individuals within this population as well as providing health care providers with health monitoring capabilities. The study recruited 13 participants who were offered a smartphone, a touchscreen monitor, and health devices, including smartwatches, weigh scales, and automated medication dispensers. Healthcare providers were able to track health device data, which were synchronized with the Lawson Integrated DataBase. Participants completed interviews at baseline as well as at 6-month and 12-month follow-ups. Focus groups with participants and care providers were conducted separately at 6-month and 12-month time points. As the sample size was too small for meaningful statistical inference, only descriptive statistics were presented. However, the qualitative analyses revealed improvements in physical and mental health, as well as enhanced communication with care providers and friends/family. Technical difficulties and considerations are addressed. Ethics analyses revealed advancement in equity and fairness, while policy analyses revealed plentiful opportunities for informing policymakers. The economic costs are also discussed. Further studies and technological interventions are recommended to explore and expand upon in-home technologies that can be easily implemented into the living environment.
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- 2023
169. Smart home energy management systems in India: a socio-economic commitment towards a green future.
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George, Thomas and Selvakumar, A. Immanuel
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ENERGY management ,SMART homes ,CLEAN energy ,ELECTRONIC billing ,CONSUMPTION (Economics) ,ENERGY harvesting - Abstract
A smart home energy management system plays an important role in improving the efficiency of an energy distribution system and also helps to reduce the carbon footprint of the power utility company. For a developing country like India, one of the main challenges faced while integrating an energy management system and renewable energy technology is the migration cost faced by the user from the existing system. The existing energy policy of the nation or the community should be reformed in such a way that the user who is willing to adapt to an energy management system should be properly rewarded. Smart appliances and IoT-enabled devices reduce wiring complexity in any conventional home and the smart metering facility aids in the bidirectional communication between consumers and utility companies. But how does it take care of user privacy? What are the reasons behind the user's negligence on-demand response schemes in India? Through a case study, it was observed that the power consumption of domestic consumers in India increased over the years. It was also observed through an energy survey of 200 low-tension domestic consumers that a simple reengineering of lighting loads can save up to 4.68 Megawatt-hour of energy in a year. The paper also identified the negative impact of the inclining block rate billing scheme by comparing the bimonthly energy consumption pattern of consumers and also proposed a new billing scheme. The paper also reviews the types of optimization methods available for load scheduling. This paper is an attempt to enlighten readers on the importance of adopting a sustainable home energy management system, as a socio-economic commitment towards a green future. Highlights: The connected loads in Indian homes are increasing day by day and so the electricity bill A smart green HEM system helps to reduce the carbon footprint Novel demand response programs policies should be formulated Harvesting renewable energy will have multiple applications in a home Dimming lighting loads considerably reduces usage cost [ABSTRACT FROM AUTHOR]
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- 2024
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170. Smart device interest, perceived usefulness, and preferences in rural Alabama seniors.
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Anderson, Monica
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SMART devices ,SMART homes ,RURAL Americans ,OLDER people ,CITIES & towns - Abstract
Limited data exist on the preferences for smart home devices in rural Americans. We examined the interest, usefulness, and pleasantness of various smart home interfaces and determined whether they differed by ethnicity, rurality, age, and gender. A total of 118 older adults living in the rural Deep South completed a survey instrument that assessed interest in various smart home applications and was queried about the perceived usefulness and perceived ease of use of screen, voice, and robot interfaces in 7 distinct scenarios. Personality data was collected via the Big Five Inventory. Technology readiness was measured using a technological readiness instrument. Participants were primarily female (81%), rural (76%), African American (69%), and aged 65-74 years old (51%). Participants were recruited from a total of 5 cities in West Alabama within the Black Belt. Data was collected before COVID-19 (July 2018 through July 2019). [ABSTRACT FROM AUTHOR]
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- 2024
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171. Resilient data-driven non-intrusive load monitoring for efficient energy management using machine learning techniques.
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Nutakki, Mounica and Mandava, Srihari
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ENERGY management ,RECURRENT neural networks ,ENERGY consumption ,POWER resources ,ENERGY demand management ,SMART homes ,MACHINE learning - Abstract
The integration of smart homes into smart grids presents numerous challenges, particularly in managing energy consumption efficiently. Non-intrusive load management (NILM) has emerged as a viable solution for optimizing energy usage. However, as smart grids incorporate more distributed energy resources, the complexity of demand-side management and energy optimization escalates. Various techniques have been proposed to address these challenges, but the evolving grid necessitates intelligent optimization strategies. This article explores the potential of data-driven NILM (DNILM) by leveraging multiple machine learning algorithms and neural network architectures for appliance state monitoring and predicting future energy consumption. It underscores the significance of intelligent optimization techniques in enhancing prediction accuracy. The article compares several data-driven mechanisms, including decision trees, sequence-to-point models, denoising autoencoders, recurrent neural networks, long short-term memory, and gated recurrent unit models. Furthermore, the article categorizes different forms of NILM and discusses the impact of calibration and load division. A detailed comparative analysis is conducted using evaluation metrics such as root-mean-square error, mean absolute error, and accuracy for each method. The proposed DNILM approach is implemented using Python 3.10.5 on the REDD dataset, demonstrating its effectiveness in addressing the complexities of energy optimization in smart grid environments. [ABSTRACT FROM AUTHOR]
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- 2024
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172. Wireless Power Transfer Efficiency Optimization Tracking Method Based on Full Current Mode Impedance Matching.
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Xu, Yuanzhong, Zhang, Yuxuan, and Wu, Tiezhou
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WIRELESS power transmission , *IMPEDANCE matching , *SMART homes , *ENERGY transfer , *INTERNET of things , *ARTIFICIAL satellite tracking - Abstract
Wireless power transfer (WPT) technology is a contactless wireless energy transfer method with wide-ranging applications in fields such as smart homes, the Internet of Things (IoT), and electric vehicles. Achieving optimal efficiency in wireless power transfer systems has been a key research focus. In this paper, we propose a tracking method based on full current mode impedance matching for optimizing wireless power transfer efficiency. This method enables efficiency tracking in WPT systems and seamless switching between continuous conduction mode and discontinuous mode, expanding the detection capabilities of the wireless power transfer system. MATLAB was used to simulate the proposed method and validate its feasibility and effectiveness. Based on the simulation results, the proposed method ensures optimal efficiency tracking in wireless power transfer systems while extending detection capabilities, offering practical value and potential for widespread applications. [ABSTRACT FROM AUTHOR]
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- 2024
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173. HomeOSD: Appliance Operating-Status Detection Using mmWave Radar.
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Sheng, Yinhe, Li, Jiao, Ma, Yongyu, and Zhang, Jin
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RADAR , *ULTRA-wideband radar , *ELECTRIC meters , *SMART homes , *ELECTRIC connectors - Abstract
Within the context of a smart home, detecting the operating status of appliances in the environment plays a pivotal role, estimating power consumption, issuing overuse reminders, and identifying faults. The traditional contact-based approaches require equipment updates such as incorporating smart sockets or high-precision electric meters. Non-constant approaches involve the use of technologies like laser and Ultra-Wideband (UWB) radar. The former can only monitor one appliance at a time, and the latter is unable to detect appliances with extremely tiny vibrations and tends to be susceptible to interference from human activities. To address these challenges, we introduce HomeOSD, an advanced appliance status-detection system that uses mmWave radar. This innovative solution simultaneously tracks multiple appliances without human activity interference by measuring their extremely tiny vibrations. To reduce interference from other moving objects, like people, we introduce a Vibration-Intensity Metric based on periodic signal characteristics. We present the Adaptive Weighted Minimum Distance Classifier (AWMDC) to counteract appliance vibration fluctuations. Finally, we develop a system using a common mmWave radar and carry out real-world experiments to evaluate HomeOSD's performance. The detection accuracy is 95.58%, and the promising results demonstrate the feasibility and reliability of our proposed system. [ABSTRACT FROM AUTHOR]
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- 2024
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174. Enhancing Healthcare through Sensor-Enabled Digital Twins in Smart Environments: A Comprehensive Analysis.
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Adibi, Sasan, Rajabifard, Abbas, Shojaei, Davood, and Wickramasinghe, Nilmini
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DIGITAL twins , *MEDICAL care , *TELEMEDICINE , *DIGITAL health , *ARTIFICIAL intelligence , *LOCATION-based services , *LANDSCAPE assessment , *SMART structures - Abstract
This comprehensive review investigates the transformative potential of sensor-driven digital twin technology in enhancing healthcare delivery within smart environments. We explore the integration of smart environments with sensor technologies, digital health capabilities, and location-based services, focusing on their impacts on healthcare objectives and outcomes. This work analyzes the foundational technologies, encompassing the Internet of Things (IoT), Internet of Medical Things (IoMT), machine learning (ML), and artificial intelligence (AI), that underpin the functionalities within smart environments. We also examine the unique characteristics of smart homes and smart hospitals, highlighting their potential to revolutionize healthcare delivery through remote patient monitoring, telemedicine, and real-time data sharing. The review presents a novel solution framework leveraging sensor-driven digital twins to address both healthcare needs and user requirements. This framework incorporates wearable health devices, AI-driven health analytics, and a proof-of-concept digital twin application. Furthermore, we explore the role of location-based services (LBS) in smart environments, emphasizing their potential to enhance personalized healthcare interventions and emergency response capabilities. By analyzing the technical advancements in sensor technologies and digital twin applications, this review contributes valuable insights to the evolving landscape of smart environments for healthcare. We identify the opportunities and challenges associated with this emerging field and highlight the need for further research to fully realize its potential to improve healthcare delivery and patient well-being. [ABSTRACT FROM AUTHOR]
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- 2024
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175. Efficient Connectivity in Smart Homes: Enhancing Living Comfort through IoT Infrastructure.
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Youssef, Hamdy M., Osman, Radwa Ahmed, and El-Bary, Alaa A.
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SMART homes , *SMART devices , *INTERNET of things , *MATHEMATICAL optimization , *SYSTEMS design , *POWER transmission , *DEEP learning , *TRANSMISSION of sound - Abstract
Modern homes are experiencing unprecedented levels of convenience because of the proliferation of smart devices. In order to improve communication between smart home devices, this paper presents a novel approach that particularly addresses interference caused by different transmission systems. The core of the suggested framework is an intelligent Internet of Things (IoT) system designed to reduce interference. By using adaptive communication protocols and sophisticated interference management algorithms, the framework minimizes interference caused by overlapping transmissions and guarantees effective data sharing. This can be accomplished by creating an optimization model that takes into account the dynamic nature of the smart home environment and intelligently allocates resources. By maximizing the signal quality at the destination and optimizing the distribution of frequency channels and transmission power levels, the model seeks to minimize interference. A deep learning technique is used to augment the optimization model by adaptively learning and predicting interference patterns from real-time observations and historical data. The experimental results show how effective the suggested hybrid strategy is. While the deep learning model adjusts to shifting interference dynamics, the optimization model efficiently controls resource allocation, leading to better data reception performance at the destination. The system's robustness is assessed in various kinds of situations to demonstrate its flexibility in responding to changing smart home settings. This work not only offers a thorough framework for interference reduction but also clarifies how deep learning and mathematical optimization can work together to improve the dependability of data reception in smart homes. [ABSTRACT FROM AUTHOR]
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- 2024
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176. Integration of Smart Home and Building Automation Systems in Virtual Reality and Robotics-Based Technological Environment for Neurorehabilitation: A Pilot Study Protocol.
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Federico, Sara, Zitti, Mirko, Regazzetti, Martina, Dal Pozzo, Enrico, Cieślik, Błażej, Pomella, Alberto, Stival, Francesca, Pirini, Marco, Pregnolato, Giorgia, and Kiper, Pawel
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SMART homes , *HOME automation , *VIRTUAL reality , *NEUROREHABILITATION , *VIRTUAL reality therapy , *INTELLIGENT buildings - Abstract
Technological innovation has revolutionized healthcare, particularly in neurological rehabilitation, where it has been used to address chronic conditions. Smart home and building automation (SH&BA) technologies offer promising solutions for managing chronic disabilities associated with such conditions. This single group, pre-post longitudinal pilot study, part of the H2020 HosmartAI project, aims to explore the integration of smart home technologies into neurorehabilitation. Eighty subjects will be enrolled from IRCCS San Camillo Hospital (Venice, Italy) and will receive rehabilitation treatment through virtual reality (VR) and robotics devices for 15 h per day, 5 days a week for 3 weeks in the HosmartAI Room (HR), equipped with SH&BA devices measuring the environment. The study seeks to optimize patient outcomes and refine rehabilitation practices. Findings will be disseminated through peer-reviewed publications and scientific meetings, contributing to advancements in neurological rehabilitation and guiding future research. [ABSTRACT FROM AUTHOR]
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- 2024
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177. A Survey on Conflict Detection in IoT-based Smart Homes.
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Huang, Bing, Chaki, Dipankar, Bouguettaya, Athman, and Lam, Kwok-Yan
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- 2024
- Full Text
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178. An Optimized Hybrid Deep Learning Model for Appliance Energy Prediction in Smart Homes.
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Vidhya, S., Balaji, M., and Kamaraj, V.
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CONVOLUTIONAL neural networks , *CLEAN energy , *INDUSTRIAL energy consumption , *SUSTAINABILITY , *DEEP learning - Abstract
The increased energy consumption due to industrial machines and household appliances affectenergy sustainability as well as economic stability. To meet the energy demand various practices are followed worldwide. Research on sustainable energy production is at peak meanwhile research towards reducing the cost of energy generation is gaining more interest in recent times. one of the key points considered to reduce the power generation cost is energy consumption prediction. Future demands can be predicted, and necessary power can be generated or delivered to meet the demand. Specifically, prediction model is essentially required for smart homes as they utilize multiple devices for smart connectivity. Machine learning algorithms are widely used for energy prediction applications. However, the performance of machine learning models needs manual selection of features and is still complex in data analysis and decision-making process. Recently deep learning (DL) techniques are used in various classification and prediction applications. DL superior performance is incorporated for energy prediction for smart home appliances. This research work presents a hybrid optimized DL model using Convolutional Neural Network (CNN) and Bidirectional Long Short-Term Memory (BiLSTM) network. Additionally, to improve the prediction performances, the parameters of the hybrid DL model is fine-tuned using canonical particle swarm optimization algorithm. Experiments of the proposed model utilizes UCI Household power consumption dataset to evaluate the performances in terms of RMSE, MAPE, MAE and R2-score. The proposed model attained RMSE of 26.2154W, MAPE of 2.965%, MAE of 18.65W and R2-Score of 0.9989 which is much better than existing linear regression, extreme learning machine and diverse LSTM models. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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179. USING THE UTAUT2 COMPONENTS AND TRUST TO PREDICT CONSUMER ACCEPTANCE OF SMART HOME TECHNOLOGY: A SYSTEMATIC REVIEW.
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Plohl, Nejc and Babič, Nenad Čuš
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SMART homes ,TRUST ,CONSUMERS ,VALUE (Economics) ,HOME sales ,INTELLIGENT buildings - Abstract
While sales of smart home technology are increasing, some are still hesitant to use such products. These differences in smart home technology acceptance could potentially be explained with the extended Unified theory of acceptance and use of technology (UTAUT2). However, the explanatory power of UTAUT2 in this context is still relatively unclear, and additional extensions, such as the inclusion of trust, have been proposed recently. In this systematic review, we address this issue by synthetizing evidence from 32 articles dealing with the relationship between the UTAUT2 components, trust, and smart home technology acceptance. Our results reveal that the UTAUT2 components and trust are all consistently correlated with behavioral intentions. In contrast, multivariate results show that only performance expectancy, hedonic motivation, and price value are consistent predictors of technology acceptance. In the discussion, we outline possible explanations for such results and highlight the limitations of our review.. [ABSTRACT FROM AUTHOR]
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- 2024
- Full Text
- View/download PDF
180. SensorGAN: A Novel Data Recovery Approach for Wearable Human Activity Recognition.
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Hussein, Dina and Bhat, Ganapati
- Subjects
DATA recovery ,HUMAN activity recognition ,MOBILE health ,MISSING data (Statistics) ,SMART homes - Abstract
Human activity recognition (HAR) and, more broadly, activities of daily life recognition using wearable devices have the potential to transform a number of applications, including mobile healthcare, smart homes, and fitness monitoring. Recent approaches for HAR use multiple sensors on various locations on the body to achieve higher accuracy for complex activities. While multiple sensors increase the accuracy, they are also susceptible to reliability issues when one or more sensors are unable to provide data to the application due to sensor malfunction, user error, or energy limitations. Training multiple activity classifiers that use a subset of sensors is not desirable, since it may lead to reduced accuracy for applications. To handle these limitations, we propose a novel generative approach that recovers the missing data of sensors using data available from other sensors. The recovered data are then used to seamlessly classify activities. Experiments using three publicly available activity datasets show that with data missing from one sensor, the proposed approach achieves accuracy that is within 10% of the accuracy with no missing data. Moreover, implementation on a wearable device prototype shows that the proposed approach takes about 1.5 ms for recovering data in the w-HAR dataset, which results in an energy consumption of 606 μJ. The low-energy consumption ensures that SensorGAN is suitable for effectively recovering data in tinyML applications on energy-constrained devices. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
181. Development design of an IoT-based smart home monitoring system with security features.
- Author
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Fitriyan, Rahmawati and Syafii
- Subjects
SMART homes ,HOME security measures ,HOME wireless technology ,ELECTRONIC equipment ,RASPBERRY Pi ,ELECTRONIC control - Abstract
A smart home is a system that has been programmed and can work automatically by utilizing internet of things (IoT) technology, this system can control various electronic devices in the home. This paper presents a design for developing an IoT-based smart home monitoring system with the addition of security features. This research aims to design and develop a smart home monitoring system that uses the IoT which operates via the web and improves the security aspects of the system. This research includes the development of hardware and software that enables efficient and safe monitoring and control of various aspects of the home via smartphone or computer-based devices using resources from solar power plants. This system relies on the use of a Raspberry Pi as a microcontroller and several sensors. In this context has important value in maintaining user security, and privacy and supports the growing development of the smart home technology industry. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
182. DESIGN OF SMART HOME SYSTEM BASED ON WIRELESS SENSOR NETWORK LINK STATUS AWARENESS ALGORITHM.
- Author
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RONG XU
- Subjects
INTELLIGENT sensors ,WIRELESS sensor networks ,SMART homes ,DOMESTIC architecture ,ROUTING algorithms ,ALGORITHMS - Abstract
When wireless sensor networks are used in smart homes, the connection state will be unstable due to signal masking attenuation. This will cause low packet rate, high time delay and high cost in the network. In this paper, a network routing algorithm for wireless sensing based on connection conditions is designed. Secondly, the expected number of sends is proposed to evaluate the stability of links. Based on this, the following network signal delivery situation is forecasted in real time and quickly. According to the estimated expected number of transmissions, the path is dynamically corrected to effectively avoid attenuation in the channel and achieve optimal system performance. Experimental results show that the method proposed in this paper can improve the efficiency of message sending and reduce the routing cost under the condition of masking effect. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
183. Who Should We Blame for Android App Crashes? An In-Depth Study at Scale and Practical Resolutions.
- Author
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Gong, Liangyi, Lin, Hao, Liu, Daibo, Yang, Lanqi, Wang, Hongyi, Qiu, Jiaxing, Li, Zhenhua, and Qian, Feng
- Subjects
SMART devices ,MOBILE apps ,SMARTPHONES ,SMART homes - Abstract
Android system has been widely deployed in energy-constrained IoT devices for many practical applications, such as smart phone, smart home, healthcare, fitness, and beacons. However, Android users oftentimes suffer from app crashes, which directly disrupt user experience and could lead to data loss. Till now, the community have limited understanding of their prevalence, characteristics, and root causes. In this article, we make an in-depth study of the crash events regarding ten very popular apps of different genres, based on fine-grained system-level traces crowd-sourced from 93 million Android devices. We find that app crashes occur prevalently on the various hardware models studied, and better hardware does not seem to essentially relieve the problem. Most importantly, we unravel multi-fold root causes of app crashes, and pinpoint that the most crashes stem from the subtle yet crucial inconsistency between app developers' supposed memory/process management model and Android's actual implementations. We design practical approaches to addressing the inconsistency; after large-scale deployment, they reduce 40.4% of the app crashes with negligible system overhead. In addition, we summarize important lessons learned from this study, and have released our measurement code/data to the community. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
184. Room-scale Location Trace Tracking via Continuous Acoustic Waves.
- Author
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Lian, Jie, Yuan, Xu, Lou, Jiadong, Chen, Li, Wang, Hao, and Tzeng, Nianfeng
- Subjects
SOUND waves ,SMART devices ,SMART speakers ,MICROPHONE arrays ,BASEBAND ,SMART homes - Abstract
The increasing prevalence of smart devices spurs the development of emerging indoor localization technologies for supporting diverse personalized applications at home. Given marked drawbacks of popular chirp signal-based approaches, we aim at developing a novel device-free localization system via the continuous wave of the inaudible frequency. To achieve this goal, solutions are developed for fine-grained analyses, able to precisely locate moving human traces in the room-scale environment. In particular, a smart speaker is controlled to emit continuous waves at inaudible 20kHz, with a co-located microphone array to record their Doppler reflections for localization. We first develop solutions to remove potential noises and then propose a novel idea by slicing signals into a set of narrowband signals, each of which is likely to include at most one body segment's reflection. Different from previous studies, which take original signals themselves as the baseband, our solutions employ the Doppler frequency of a narrowband signal to estimate the velocity first and apply it to get the accurate baseband frequency, which permits a precise phase measurement after I-Q (i.e., in-phase and quadrature) decomposition. A signal model is then developed, able to formulate the phase with body segment's velocity, range, and angle. We next develop novel solutions to estimate the motion state in each narrowband signal, cluster the motion states for different body segments corresponding to the same person, and locate the moving traces while mitigating multi-path effects. Our system is implemented with commodity devices in room environments for performance evaluation. The experimental results exhibit that our system can conduct effective localization for up to three persons in a room, with the average errors of 7.49cm for a single person, with 24.06cm for two persons, with 51.15cm for three persons. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
185. Barriers to Older Adults Adapting Smart Homes: Perceived Risk Scale Development.
- Author
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Liu, Yuqi, Tamura, Ryoichi, and Xiao, Liang
- Subjects
SMART homes ,OLDER people ,EXPLORATORY factor analysis ,CONFIRMATORY factor analysis ,LITERATURE reviews ,FRAIL elderly - Abstract
The 21st century has marked the dawn of an aging population. China's aging process ranks first worldwide. The country has recognized the gravity of this demographic shift and implemented strategies to address it at the national level. A vast majority of elderly Chinese individuals (approximately 90%) aspire to age in their own homes. Smart homes, endowed with cutting-edge digital technologies, such as AI, the Internet of Things, and big data, hold vast potential for enabling this vision. However, acceptance of smart home products and services among elderly individuals in China remains low. The main reason is that the related products and services fail to effectively alleviate the perceived risk of this population in the R&D process of related products and services, and there is a lack of effective measurement methods. To holistically assess the potential obstacles faced by elderly individuals using smart home products and services, this study targeted individuals aged 45–60 years in China. This study aimed to develop a comprehensive perceived risk scale specific to smart homes for this demographic. Initially, this study identified key risk dimensions and corresponding measurement items through a rigorous literature review, user interviews, and expert consultations. Subsequently, it ensured the reliability and validity of each dimension and its corresponding observation variables through preliminary research, exploratory factor analysis, and confirmatory factor analysis. This approach allowed for a comprehensive understanding of the challenges faced by future elderly individuals when utilizing smart home products and services, thus enabling the development of more effective solutions. The scale encompassed ten factors and seventy measurement items, including Privacy and Security Risk (seven items), Physical Risk (seven items), Technological Risk (nine items), Performance Risk (seven items), Service Risk (nine items), Financial Risk (five items), Psychological Risk (seven items), Industry and Market Risk (six items), Social Support Risk (six items), and Policy and Legal risk (seven items). The measurement scale developed in this study represents a groundbreaking first attempt to create a systematic scale for assessing the perceived risks associated with smart homes for the elderly in China. It not only enables professionals, businesses, and manufacturers to avoid or reduce barriers in the R&D process of related products and services, facilitating smart home industry growth and enhancing user adoption, but also serves as a universal reference for the potential obstacles that digital technology may encounter in addressing aging-related issues, which has significant theoretical value and practical importance. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
186. »Transformative Change in the Contested Fields of Care and Housing in Europe« Internationale Konferenz an der Johannes Kepler Universität Linz, 4.bis 6.12.2023.
- Author
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Wurm, Julia and Eigner, Alexander
- Subjects
HOUSING ,HOUSEKEEPING ,SMART homes ,HOMELESSNESS ,CONFERENCES & conventions ,DIGITAL technology ,DOMESTIC violence - Abstract
Copyright of Feministische Studien is the property of De Gruyter and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
187. BOTSH: Towards aligning semantic web of things with building ontologies.
- Author
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Muppavarapu, Vamsee and Ramesh, Gowtham
- Abstract
The W3C linked building data group is working on modeling the information for integrating building information with building life cycle data using Semantic Web technologies. The community has proposed a set of semantic models such as ifcOWL and Building Topology Ontology (BOT), to model various applications across Architecture, Engineering, Construction, and Operation (AECO) domain. On the other hand, the Semantic Web of Things (SWoT) group proposed standard semantic models such as M3-lite and BOSH ontologies for describing the sensor networks, observations, and sensor measurements. Both the aforementioned domains have their own siloed applications and with the evolution of the smart home domain, there is a need to combine the knowledge of building information with the sensor knowledge to develop cross-domain applications. However, in order to develop such downstream applications leveraging advantages from both domains requires interoperable knowledge. This paper proposes an interoperable ontology, Building Topology Ontology for Smart Homes (BOTSH), with the aim of aligning the building domain with sensors domain semantic models. The BOTSH ontology facilitates capturing knowledge from both domains and helps in developing cross-domain applications. The potential of the proposed model was demonstrated using a real-life building model based on the competency questions framed by the domain experts. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
188. Centralized smart energy monitoring system for legacy home appliances.
- Author
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Ahmad, Shahed S., Almasalha, Fadi, Qutqut, Mahmoud H., and Hijjawi, Mohammad
- Subjects
HOUSEHOLD appliances ,LEGACY systems ,ENERGY consumption ,ARTIFICIAL intelligence ,CURRENT transformers (Instrument transformer) ,ANALOG-to-digital converters ,HOME wireless technology - Abstract
The increasing global population and reliance on electrical devices for daily life resulted in sharply rising energy consumption. Also, this leads to higher household electricity bills. As a result, there is a growing demand for energy monitoring systems that can accurately estimate energy usage to help save power, especially for older home appliances that are difficult or expensive to update with monitoring sensors. However, current energy monitoring systems have some drawbacks, such as the inability to detect different types of appliances and the deployment complexity. Moreover, such systems are too costly to use in older power infrastructures. To address this issue, we proposed a centralized smart energy monitoring system designed for legacy home appliances, aiming to address the limitations of current energy monitoring systems by avoiding costly infrastructure upgrades to calculate the power consumption of legacy home appliances. The proposed system employs a two-layered architecture comprising hardware (Emontx device, Analog-to-Digital Converters (ADC), and Current Transformer (CT) sensors) and a software layer that includes Artificial Intelligence (AI) predictors using a pre-defined set of rules and K Nearest Neighbours (KNN) algorithms. We conducted three experiments on real home appliances to evaluate the proposed work. The accuracy of the proposed system showed positive results after several modifications and hard tuning of several parameters in devices, specifically for Jordanian power plants. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
189. optimHome: A Shrinking Horizon Control Architecture for Bidirectional Smart Charging in Home Energy Management Systems.
- Author
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Caminiti, Corrado Maria, Merlo, Marco, Fotouhi Ghazvini, Mohammad Ali, and Edvinsson, Jacob
- Subjects
- *
ELECTRIC charge , *ENERGY management , *HORIZON , *SMART homes , *ELECTRIC networks , *OPERATING costs , *ELECTRIC discharges - Abstract
This study aims to develop an adaptable home energy management system capable of integrating the bidirectional smart charging of electric vehicles. The final goal is to achieve a user-defined objectives such as cost minimization or maximizing renewable self-consumption. Industrialwise, the present work yields valuable outcomes in identifying operational frameworks and boundary conditions. Optimal scheduling benefits both users and the electric network, thus enhancing grid utilization and increasing renewable energy integration. By coordinating power interactions with dynamic time-of-use tariffs, the energy management system minimizes user costs and aids the grid by cutting peak hour energy consumption. Charging and discharging operations in electric vehicles comply with energy level constraints outlined by bidirectional charging protocols. The proposed approach ensures the scheduling of cycles that minimize detrimental effects on battery health when evaluating an economically ageing mechanism. Compared to uncontrolled charging, optimal scheduling resulted in a significant reduction in the total operational cost of the dwelling. Trade-off conditions between renewable integration and potential savings are identified and numerically evaluated by means of multiobjective optimization. In contrast to scheduling-based models, the proposed architecture possesses the ability to iteratively adapt decision variables in response to system changes, thus responding effectively to external stochastic uncertainty. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
190. Non-Intrusive Load Monitoring Based on Multiscale Attention Mechanisms.
- Author
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Yao, Lei, Wang, Jinhao, and Zhao, Chen
- Subjects
- *
ARTIFICIAL neural networks , *RECURRENT neural networks , *SMART power grids , *HOME computer networks , *MACHINE learning , *SMART homes , *ENERGY dissipation - Abstract
With the development of smart grids and new power systems, the combination of non-intrusive load identification technology and smart home technology can provide users with the operating conditions of home appliances and equipment, thus reducing home energy loss and improving users' ability to demand a response. This paper proposes a non-intrusive load decomposition model with a parallel multiscale attention mechanism (PMAM). The model can extract both local and global feature information and fuse it through a parallel multiscale network. This improves the attention mechanism's ability to capture feature information over long time periods. To validate the model's decomposition ability, we combined the PMAM model with four benchmark models: the Long Short-Term Memory (LSTM) recurrent neural network model, the Time Pooling-based Load Disaggregation Model (TPNILM), the Extreme Learning Machine (ELM), and the Load Disaggregation Model without Parallel Multi-scalar Attention Mechanisms (UNPMAM). The model was trained on the publicly available UK-DALE dataset and tested. The models' test results were quantitatively evaluated using a confusion matrix. This involved calculating the F1 score of the load decomposition. A higher F1 score indicates better model decomposition performance. The results indicate that the PMAM model proposed in this paper maintains an F1 score above 0.9 for the decomposition of three types of electrical equipment under the same household user, which is 3% higher than that of the other benchmark models on average. In the cross-household test, the PMAM also demonstrated a better decomposition ability, with the F1 score maintained above 0.85, and the mean absolute error (MAE) decreased by 5.3% on average compared with that of the UNPMAM. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
191. Adopting Graph Neural Networks to Analyze Human–Object Interactions for Inferring Activities of Daily Living.
- Author
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Su, Peng and Chen, Dejiu
- Subjects
- *
GRAPH neural networks , *ACTIVITIES of daily living , *HUMAN activity recognition , *SMART homes , *WEARABLE technology - Abstract
Human Activity Recognition (HAR) refers to a field that aims to identify human activities by adopting multiple techniques. In this field, different applications, such as smart homes and assistive robots, are introduced to support individuals in their Activities of Daily Living (ADL) by analyzing data collected from various sensors. Apart from wearable sensors, the adoption of camera frames to analyze and classify ADL has emerged as a promising trend for achieving the identification and classification of ADL. To accomplish this, the existing approaches typically rely on object classification with pose estimation using the image frames collected from cameras. Given the existence of inherent correlations between human–object interactions and ADL, further efforts are often needed to leverage these correlations for more effective and well justified decisions. To this end, this work proposes a framework where Graph Neural Networks (GNN) are adopted to explicitly analyze human–object interactions for more effectively recognizing daily activities. By automatically encoding the correlations among various interactions detected through some collected relational data, the framework infers the existence of different activities alongside their corresponding environmental objects. As a case study, we use the Toyota Smart Home dataset to evaluate the proposed framework. Compared with conventional feed-forward neural networks, the results demonstrate significantly superior performance in identifying ADL, allowing for the classification of different daily activities with an accuracy of 0.88. Furthermore, the incorporation of encoded information from relational data enhances object-inference performance compared to the GNN without joint prediction, increasing accuracy from 0.71 to 0.77. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
192. Respiration and Heart Rate Monitoring in Smart Homes: An Angular-Free Approach with an FMCW Radar.
- Author
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Mehrjouseresht, Pouya, Hail, Reda El, Karsmakers, Peter, and Schreurs, Dominique M. M.-P.
- Subjects
- *
HEART rate monitors , *HEART rate monitoring , *SMART homes , *RESPIRATION , *RADAR , *BLAND-Altman plot - Abstract
This paper proposes a new approach for wide angle monitoring of vital signs in smart home applications. The person is tracked using an indoor radar. Upon detecting the person to be static, the radar automatically focuses its beam on that location, and subsequently breathing and heart rates are extracted from the reflected signals using continuous wavelet transform ( C W T ) analysis. In this way, leveraging the radar's on-chip processor enables real-time monitoring of vital signs across varying angles. In our experiment, we employ a commercial multi-input multi-output (MIMO) millimeter-wave FMCW radar to monitor vital signs within a range of 1.15 to 2.3 m and an angular span of − 44.8 to + 44.8 deg. In the Bland–Altman plot, the measured results indicate the average difference of − 1.5 and 0.06 beats per minute (BPM) relative to the reference for heart rate and breathing rate, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
193. Internet of Things (IoT) of Smart Homes: Privacy and Security.
- Author
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Magara, Tinashe and Zhou, Yousheng
- Subjects
- *
HUMAN activity recognition , *SMART homes , *INTERNET of things , *HOME security measures , *DATA protection laws , *SECURITY systems - Abstract
The Internet of Things (IoT) constitutes a sophisticated network that interconnects devices, optimizing functionality across various domains of human activity. Recent literature projections anticipate a significant increase, with estimates exceeding 50 billion connected devices by 2025. Despite its transformative potential, the IoT landscape confronts formidable privacy and security challenges, encompassing intricate issues such as data acquisition, anonymization, retention, sharing practices, and behavioural profiling. Effectively addressing these challenges mandates the development of scalable solutions, innovative management strategies, and adaptable policy frameworks. In this paper, we conduct an exhaustive examination of major IoT applications, alongside associated privacy and security concerns. We systematically categorize prevalent privacy, security, and interoperability issues within the context of the IoT layered architecture. The review highlights current research initiatives focused on developing energy-efficient devices, optimizing microprocessors, and fostering interdisciplinary collaborations to address the challenges in the IoT landscape. To efficaciously manage risks in this dynamic landscape, stakeholders must implement comprehensive strategies that span stringent data protection legislation, extensive user education initiatives, and the deployment of robust authorization and authentication frameworks. This paper aims to empower industry leaders, policymakers, and researchers by providing actionable solutions, not just insights, to navigate the complexities of the IoT landscape effectively. Future research initiatives should prioritize the fortification of security measures for large-scale IoT deployments, the formulation of user-centric privacy solutions, and the standardization of interoperability protocols. By establishing a robust foundational framework, our paper endeavours to spearhead the discourse on IoT applications, privacy paradigms, and security frameworks, paving the way towards a resilient and interconnected future. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
194. Detection and Recognition of Voice Commands by a Distributed Acoustic Sensor Based on Phase-Sensitive OTDR in the Smart Home Concept.
- Author
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Gritsenko, Tatyana V., Orlova, Maria V., Zhirnov, Andrey A., Konstantinov, Yuri A., Turov, Artem T., Barkov, Fedor L., Khan, Roman I., Koshelev, Kirill I., Svelto, Cesare, and Pnev, Alexey B.
- Subjects
- *
DISTRIBUTED sensors , *HOME (The concept) , *SMART homes , *SPEECH perception , *INTELLIGENT sensors , *SIGNAL processing - Abstract
In recent years, attention to the realization of a distributed fiber-optic microphone for the detection and recognition of the human voice has increased, whereby the most popular schemes are based on φ-OTDR. Many issues related to the selection of optimal system parameters and the recognition of registered signals, however, are still unresolved. In this research, we conducted theoretical studies of these issues based on the φ-OTDR mathematical model and verified them with experiments. We designed an algorithm for fiber sensor signal processing, applied a testing kit, and designed a method for the quantitative evaluation of our obtained results. We also proposed a new setup model for lab tests of φ-OTDR single coordinate sensors, which allows for the quick variation of their parameters. As a result, it was possible to define requirements for the best quality of speech recognition; estimation using the percentage of recognized words yielded a value of 96.3%, and estimation with Levenshtein distance provided a value of 15. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
195. Exercise Promotion System for Single Households Based on Agent-Oriented IoT Architecture.
- Author
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Yamazaki, Taku, Fan, Tianyu, and Miyoshi, Takumi
- Subjects
- *
LIVING alone , *INTERNET of things , *HOUSEHOLDS , *SMART homes , *SATISFACTION - Abstract
People living alone encounter well-being challenges due to unnoticed personal situations. Thus, it is essential to monitor their activities and encourage them to adopt healthy lifestyle habits without imposing a mental burden, aiming to enhance their overall well-being. To realize such a support system, its components should be simple and loosely coupled to handle various internet of things (IoT)-based smart home applications. In this study, we propose an exercise promotion system for individuals living alone to encourage them to adopt good lifestyle habits. The system comprises autonomous IoT devices as agents and is realized using an agent-oriented IoT architecture. It estimates user activity via sensors and offers exercise advice based on recognized conditions, surroundings, and preferences. The proposed system accepts user feedback to improve status estimation accuracy and offers better advice. The proposed system was evaluated from three perspectives through experiments with subjects. Initially, we demonstrated the system's operation through agent cooperation. Then, we showed it adapts to user preferences within two weeks. Third, the users expressed satisfaction with the detection accuracy regarding their stay-at-home status and the relevance of the advice provided. They were also motivated to engage in exercise based on a subjective evaluation, as indicated by preliminary results. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
196. GLOBAL PRODUCT LIABILITY FOR DUMB 'SMART' HOME DEVICES.
- Author
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Rustad, Michael L. and Hert, Layth
- Subjects
- *
SMART homes , *HOME wireless technology , *PRODUCT liability , *CYBERCRIMINALS - Abstract
The number of smart homes globally has increased to 300 million, and the smart home market is expected to reach approximately $181.4 billion by 2025. These new developments, however, are accompanied by related security risks. The attack surface for smart home devices poses latent dangers because of inadequate security that enables cybercriminals to gain access to such devices. This Article proposes extending product liability to address security vulnerabilities in smart home devices. Part I examines the ubiquity of smart home devices. Part II sets forth the breadth of security vulnerabilities in connected devices, confirming the need to clarify that product liability applies to software and to create a global standard that reduces compliance costs for smart home device makers. Part III develops a detailed global standard for smart home device product liability, aligning U.S. product liability law with the proposed revision of the European Union's Product Liability Directive 85/374/EEC. [ABSTRACT FROM AUTHOR]
- Published
- 2024
197. Integrated Narrow Band (NB) and UWB MIMO Antenna for IoT Applications.
- Author
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Thiruvenkadam, Saminathan and Parthasarathy, Eswaran
- Subjects
- *
ANTENNA design , *ANTENNAS (Electronics) , *ULTRA-wideband antennas , *SMART homes , *INTERNET of things - Abstract
In this work, we integrated narrow band (NB) and Ultra-Wide Band (UWB) four-port MIMO antennas designed and implemented in IoT applications. The designed antenna consists of two quarter-wavelength asymmetrical NB radiators and a reverse P-shaped UWB radiator. The two NBs are generated by two quarter-wavelength non-identical radiators, and the UWB is generated by a semi-circle-shaped monopole radiator. Further, the NB radiators and UWB radiators are connected in a 3-mm-wide feed line. The antenna is designed to operate at 1.8 GHz (3G), 2.4 GHz (WLAN), and 3.1–12 GHz (UWB) for IoT applications. In this designed four-port MIMO antenna, two proposed NB and UWB radiators are mounted on the front side of the FR4 substrate and the other two on the rear side of the FR4 substrate. The proposed MIMO antenna has a dimension of $ 65 \times 65 \times 1.6\,{\rm mm}^3 $ 65 × 65 × 1.6 mm 3 . The antenna performance and MIMO performance are analyzed. The diversity metrics such as ECC, DG, TARC, MEG, and CCL are computed, and their values are 0.26, 9.87 dB, −22 dB, −6 dB, and 0.27 bits/Hz/s, respectively, within the bounds. The real-time implementation of the designed antenna is demonstrated at 2.4 GHz for smart home applications. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
198. Smart home energy management systems: Research challenges and survey.
- Author
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Raza, Ali, Jingzhao, Li, Ghadi, Yazeed, Adnan, Muhammad, and Ali, Mansoor
- Subjects
ENERGY management ,SMART homes ,EVIDENCE gaps ,ENERGY consumption - Abstract
Electricity is establishing ground as a means of energy, and its proportion will continue to rise in the next generations. Home energy usage is expected to increase by more than 40% in the next 20 years. Therefore, to compensate for demand requirements, proper planning and strategies are needed to improve home energy management systems (HEMs). One of the crucial aspects of HEMS are proper load forecasting and scheduling of energy utilization. Energy management systems depend heavily on precise forecasting and scheduling. Considering this scenario, this article was divided into two parts. Firstly, this article gives a thorough analysis of forecasting models in HEMs with the primary goal of determining whichever model is most appropriate in a given situation. Moreover, for optimal utilization of scheduling strategies in HEMs, the current literature has discussed a number of scheduling optimization approaches. Therefore, secondly in this article, these approaches will be examined thoroughly to develop effective operating scheduling and to make wise judgments regarding usage of these techniques in HEMs. Finally, this paper also presents the future technical advancements and research gaps in load forecasting and scheduling and how they affect HEMs activities in the near future. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
199. A Distributed Software Architecture for IoT: Container Orchestration Impact and Evaluation.
- Author
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Freire, Gustavo M., Curasma, Herminio Paucar, and Estrella, Julio Cezar
- Subjects
INTERNET of things ,DISTRIBUTED computing ,SMART cities ,DESIGN science ,SMART homes - Abstract
This paper proposes a Distributed Software Architecture (DSA) for Smart Building (SB) based on the Reactive Manifesto (RM) principles. To follow the RM principles, we analyze the usage of different deployment approaches, particularly the impact of using a container orchestrator on the application layer. After running performance tests on the different configurations, the container orchestrator usage led to enhanced distributed processing, lowering the latency, increasing flexibility, enhancing security, and providing cost-effectiveness and scalability. We introduce the implementation of a modern DSA, developed following state-of-the-art cloud patterns and compliant with the RM for the SB context. Furthermore, we have ensured the reproducibility of this implementation by making the initial tests and overall architecture code available in public repositories. The research follows the Design Science Research (DSR) methodology for elaborating each phase until we get the artifact (DSA) and, with this, contribute to the Knowledge Base. The architecture was properly tested, considering the performance as the principal test layer. This solution is tailored for application in domains of the Internet of Things (IoT), focusing on the SB and a case study involving the Laboratory of Distributed Systems and Concurrent Programming (LaSDPC) at São Paulo University. Moreover, its applicability extends to IoT domains like smart home, smart campus, smart city, and health-related applications. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
200. Comparative analysis of smart home management systems.
- Author
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Bąk, Patryk and Kozieł, Grzegorz
- Subjects
SMART homes ,GOOGLE Home ,AUTOMATIC timers ,INTERNET of things ,COMPARATIVE studies - Abstract
Copyright of Journal of Computer Sciences Institute is the property of Lublin University of Technology and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
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