17 results
Search Results
2. Multi-Objective Topology Optimization of Rotating Machines Using Deep Learning.
- Author
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Doi, Shuhei, Sasaki, Hidenori, and Igarashi, Hajime
- Subjects
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DEEP learning , *TOPOLOGY , *FINITE element method , *ELECTRIC motors , *GENETIC algorithms , *CROSS-sectional imaging - Abstract
This paper presents the fast topology optimization methods for rotating machines based on deep learning. The cross-sectional image of electric motors and their performances obtained during a multi-objective topology optimization based on the finite-element method and genetic algorithm (GA) is used for training of the convolutional neural network (CNN). Two different approaches are proposed: 1) CNN trained by preliminary optimization with a small population for GA is used for the main optimization with a large population and 2) CNN is used for screening of torque performances in the optimization with respect to the motor efficiency. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
3. Moving Least Square-Based Hybrid Genetic Algorithm for Optimal Design of ${W}$ -Band Dual-Reflector Antenna.
- Author
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Lee, Kang-In, Oh, Hyun-Su, Jung, Sang-Hoon, and Chung, Young-Seek
- Subjects
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GENETIC algorithms , *LIGHTING reflectors , *ANTENNAS (Electronics) , *LEAST squares , *INTERPOLATION , *SIGNAL processing - Abstract
In this paper, we propose a hybrid genetic algorithm (GA) for the optimal shape design of an axially symmetric dual-reflector antenna by combining the GA with the moving least square (MLS), which enhances the convergence rate and the global search performance. The MLS is used to construct local interpolation functions from non-uniform sample data and to estimate new superior positions. By combining these superior positions in the next generation, the MLS-GA shows better search performance for the global optimum and a faster convergence rate than those of the conventional GA. To verify the proposed MLS-GA, we applied it to the optimal shape design of the DRA at the W-band. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
4. Hybrid Algorithm Combing Genetic Algorithm With Evolution Strategy for Antenna Design.
- Author
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Choi, Kyung, Jang, Dong-Hyeok, Kang, Seong-In, Lee, Jeong-Hyeok, Chung, Tae-Kyung, and Kim, Hyeong-Seok
- Subjects
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HYBRID systems , *GENETIC algorithms , *ELECTROMAGNETISM , *COMBINATORIAL optimization , *STOCHASTIC convergence - Abstract
This paper proposes a hybrid algorithm based on the genetic algorithm (GA) and the evolution strategy (ES) for the electromagnetic optimization problem. The GA is not good enough at times in searching the optimal solution from the view point of the convergence speed and the solution quality, while the ES has the risk of being trapped in a local minimum. The hybrid algorithm is composed of GA and ES in order to make up for these defects. First, we reached the vicinity of optimal solution using the GA. Then, the ES is used to find the accurate optimal solution. The switching point can be a main issue, which is also resolved in this paper. First, the performance of the convergence speed and the solution accuracy are comparatively tested using the known functions. In addition, the optimized design of the 2.45 GHz coplanar waveguide-fed circularly polarized antenna is carried out as a practical application. Only the GA and the hybrid algorithm reach the satisfactory value, and the more rapid convergence can be shown by the ES in this hybrid method after 380 iterations. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
5. A Real Coded Population-Based Incremental Learning for Inverse Problems in Continuous Space.
- Author
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Ho, Siu Lau, Zhu, Linhang, Yang, Shiyou, and Huang, Jin
- Subjects
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EVOLUTIONARY algorithms , *MACHINE learning , *INVERSE problems , *TOPOLOGICAL spaces , *PROBLEM solving , *NUMERICAL analysis - Abstract
Evolutionary algorithms (EAs) have become the standards and paradigms for solving inverse problems. However, their two inherited operations, namely, the crossover and mutation operations, are complicated and difficult, both in theory and in numerical implementations. In this regard, increasing efforts have been devoted to EAs which are based on probabilistic models (EAPMs) to overcome the shortcomings of available EAs. The population-based incremental learning (PBIL) is an EAPM; moreover, it can bridge the gap between machine learning and the EAs, hence enjoying several merits compared with other EAs. However, lukewarm efforts have been devoted to PBILs, especially the real coded PBILs, in the study of inverse problems in electromagnetics. In this regard, a novel real coded PBIL is being proposed in this paper. In the proposed real coded PBIL, a probability matrix is proposed to randomly generate a population, and the updating formulas for this probability matrix using the so far searched best solution and the best solution of the current population are introduced to strike a balance between convergence performance and solution quality. The proposed real coded PBIL algorithm is numerically experimented on several case studies and promising results are reported in this paper. [ABSTRACT FROM PUBLISHER]
- Published
- 2015
- Full Text
- View/download PDF
6. Designing Loudspeaker by Ensemble of Composite Differential Evolution Ingredients.
- Author
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Zhang, Xin, Zhang, Xiu, Ho, S. L., and Fu, W. N.
- Subjects
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DIFFERENTIAL evolution , *LOUDSPEAKERS , *ELECTROMAGNETIC devices , *METAHEURISTIC algorithms , *PROBLEM solving - Abstract
Design of electromagnetic devices has multimodal, multidimensional, and constrained characteristics. Metaheuristic approaches are good choices for tackling these design problems owing to their simulation-based property. As many electromagnetic design problems require a long computing time to solve (even on modern computers) and many heuristic approaches have been created, the major goal of this paper is to improve the effectiveness and robustness of existing approaches. This paper proposes an algorithm with the ensemble of two composite differential evolution (DE) ingredients. One ingredient is biased toward exploration and the other is biased toward exploitation. The probability of choosing which ingredient to search for new solutions is adaptively updated based on the previous performance of each ingredient. The algorithm is applied to solve a loudspeaker design problem with promising performance when compared with DE, artificial bee colony, two improved artificial bee colony algorithms, and a randomly choosing ingredients algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
7. A Wind Driven Optimization Algorithm for Global Optimization of Electromagnetic Devices.
- Author
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Ho, S. L. and Yang, Shiyou
- Subjects
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GLOBAL optimization , *ELECTROMAGNETIC devices , *WIND speed measurement , *PROBLEM solving , *STOCHASTIC processes , *HEURISTIC algorithms - Abstract
Improvements to overcome premature convergence of existing wind driven optimization algorithms are proposed. The specific measures being proposed include: 1) selection of the origin point of every parcel using dynamic and random tournament selection mechanisms to guarantee that there is a good balance between exploration and exploitation searches. In this paper, the “so far searched best solution” will be exploited to guide the movement of the randomly initialized parcels by introducing a newly designed mechanism; and a probabilistic mutation is designed; and 2) full utilization of the latest information accumulated from the searched history in order to guide the search toward the potential solutions to enhance convergences, and the “so far searched worst parcel” is used to shift the new parcel away from the parcel in issue. Numerical results on three case studies are reported to showcase the feasibility and the merit of the proposed method in solving both practical engineering design problems and mathematical test functions. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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8. Multiobjective Symbiotic Search Algorithm Approaches for Electromagnetic Optimization.
- Author
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Ayala, Helon Vicente Hultmann, Klein, Carlos Eduardo, Mariani, Viviana Cocco, and Coelho, Leandro Dos Santos
- Subjects
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SEARCH algorithms , *METAHEURISTIC algorithms , *ELECTROMAGNETISM , *MATHEMATICAL optimization , *NUMERICAL analysis - Abstract
Optimization metaheuristics is a powerful way to deal with many electromagnetic optimization problems. Their main advantages are that they don’t require gradient computation, they are more likely to give a global optimum solution and have a higher degree of exploration and exploitation ability. Recently, the symbiotic organisms search (SOS) algorithm was proposed to solve single-objective optimization problems. SOS mimics the symbiotic relationship among the living beings. In order to extend the classical mono-objective SOS algorithm approach, this paper proposes a new multiobjective SOS (MOSOS) based on nondominance and crowding distance criterion. Furthermore, an improved MOSOS (IMOSOS) based on normal (Gaussian) probability distribution function also was proposed and evaluated. Results on a multiobjective constrained brushless direct current (dc) motor design show that the MOSOS and IMOSOS present promising performance. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
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9. Hybrid Multiobjective Optimization Algorithm for PM Motor Design.
- Author
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Krasopoulos, Christos T., Armouti, Ioanna P., and Kladas, Antonios G.
- Subjects
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MATHEMATICAL optimization , *PERMANENT magnet motors , *TRACTION motors , *ELECTRIC vehicles , *FINITE element method - Abstract
This paper proposes a hybrid, multiobjective optimization algorithm enabling global optimum tracking in permanent-magnet (PM) traction motor design. The methodology developed is based on the Artificial Bee Colony technique, strength Pareto evolutionary algorithm, and differential evolution strategy ensuring fast and reliable convergence to the optimal Pareto front. The effectiveness of the derived methodology is compared with other well-established and powerful algorithms from the literature through both appropriate test functions and an application example concerning an unequal teeth surface-mounted PM wheel motor design. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
10. CQICO and Multiobjective Thermal Optimization for High-Speed PM Generator.
- Author
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Zhang, Xiaochen, Li, Weili, Gerada, Chris, Zhang, He, Li, Jing, Galea, Michael, Gerada, David, and Cao, Junci
- Subjects
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INDUSTRIAL efficiency , *QUANTUM computing , *OPTICAL quantum computing , *QUANTUM fluctuations , *COOLING systems , *ELECTRIC machines - Abstract
This paper proposes a novel Continuous Quantum Immune Clonal Optimization algorithm for thermal optimization on a 117 kW high-speed permanent-magnet generator (HSPMG). The proposed algorithm mixes the Quantum-Computation into the Immune-Cloning-Algorithm and causes better population diversity, higher global searching ability, and faster convergence which is approved by simulation results. Then, the improved algorithm is applied to seek an optimized slot groove and improve HSPMG thermal performance, where the 3-D fluid-thermal coupling analyses are processed with a multiobjective optimal group composed of the highest temperature and temperature difference. Both the proposed algorithm and the obtained conclusions are of significances in the design and optimization of the cooling system in electric machines. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
11. Reduction of Optimization Problem by Combination of Optimization Algorithm and Sensitivity Analysis.
- Author
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Mach, F.
- Subjects
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MATHEMATICAL optimization , *SENSITIVITY analysis , *PROBLEM solving , *SPACETIME , *PARAMETERS (Statistics) , *NUMERICAL analysis - Abstract
An optimization technique based on the combination of optimization algorithm and sensitivity analysis is discussed. The technique allows reducing the number of optimized parameters during the optimization process, which consequently reduces the search space and time of optimization. This paper explains the principle, benefits, and future challenges of this technique and illustrates its utilization with numerical experiments and a typical example. The algorithm is implemented in the framework OptiLab that represents a part of the application Agros2D developed by me. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
12. An Improved Multi-Objective Genetic Algorithm for Large Planar Array Thinning.
- Author
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Cheng, You-Feng, Shao, Wei, Zhang, Sheng-Jun, and Li, Ya-Peng
- Subjects
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GENETIC algorithms , *FAST Fourier transforms , *ITERATIVE methods (Mathematics) , *STOCHASTIC convergence , *MATHEMATICAL optimization - Abstract
In this paper, a novel hybrid multi-objective optimization algorithm based on the nondominated sorting genetic algorithm II for large array thinning is presented. The iterative fast Fourier transform (IFFT) technique with a judge factor is introduced into the optimizer to accelerate the convergence. The global characteristics of a genetic algorithm show its optimization capability in the early phase of the optimization process and the powerful local search ability of IFFT works in the late phase. Thus, this proposed algorithm can not only effectively avoid being trapped into the local optimum but also possess a fast convergence for large array thinning. Several representative examples of large planar thinned arrays validate the good performance of the proposed algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
13. Mass Ionized Particle Optimization Algorithm Applied to Optimal FEA-Based Design of Electric Machine.
- Author
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Han, Wonseok, Tran, Trung Tin, Kim, Jong-Wook, Kim, Yong-Jae, and Jung, Sang-Yong
- Subjects
- *
ELECTRIC machinery -- Design & construction , *PARTICLES , *FINITE element method , *OPTIMAL designs (Statistics) , *STOCHASTIC convergence , *SYNCHRONOUS electric motors - Abstract
A finite-element analysis-based optimal design of an electric machine takes considerable time for its objective evaluation and has many local minima. Thus, selecting an appropriate global convergence optimization with fast convergence speed is necessary in the optimal design of an electric machine. In this paper, a novel global search optimization algorithm, mass ionized particle optimization (MIPO), is newly proposed. The MIPO is the population-based algorithm, which reflects the interactive force between the ionized particles. The global convergence and the convergence speed are validated by comparison with the particle swarm optimization, which have already been proved for its global convergence when applied to a well-known Goldstein–Price function as a benchmark function. In addition, the algorithm has been applied to the optimal design of an interior permanent magnet synchronous machine aiming for its torque ripple reduction. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
14. Harmony Search Approach Based on Ricker Map for Multi-Objective Transformer Design Optimization.
- Author
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Ayala, Helon Vicente Hultmann, Coelho, Leandro dos Santos, Mariani, Viviana Cocco, Luz, Mauricio Valencia Ferreira da, and Leite, Jean Vianei
- Subjects
- *
SEARCH algorithms , *STRUCTURAL optimization , *EVOLUTIONARY algorithms , *PROBLEM solving , *ELECTRIC windings - Abstract
Harmony search (HS) algorithm is an evolutionary optimization algorithm developed in an analogy with an improvisation process where musicians try to polish their pitches to obtain a better harmony. In this paper, a modified HS (MHS) algorithm is adapted to multi-objective optimization using external archiving, ranking with crowding distance, and control parameters tuning based on Ricker map to solve a transformer design optimization (TDO) problem with two competing objectives. Simulations applied to a TDO problem demonstrate the effectiveness of the proposed multi-objective MHS algorithm. Results indicate that, compared with other multi-objective HS algorithm, in terms of output quality, the proposed MHS is able to find competitive solutions with a good tradeoff between the design objectives. [ABSTRACT FROM PUBLISHER]
- Published
- 2015
- Full Text
- View/download PDF
15. Quantum-Behaved Brain Storm Optimization Approach to Solving Loney’s Solenoid Problem.
- Author
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Duan, Haibin and Li, Cong
- Subjects
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QUANTUM theory , *BRAINSTORMING , *PROBLEM solving , *SWARM intelligence , *COMPUTER algorithms , *MATHEMATICAL proofs , *SOLENOIDS - Abstract
Brain storm optimization (BSO) is a novel population-based swarm intelligence algorithm based on the human brainstorming process. BSO has been proven feasible and has been successfully applied to benchmark problems in the electromagnetic field. In this paper, inspired by the mechanism of quantum theories, a novel variant of BSO algorithm, called quantum-behaved BSO (QBSO), is proposed to solve an optimization problem modeled for Loney’s solenoid problem. The new mechanism improves the diversity of population and also utilizes the global information to generate the new individual. Simulation results show that QBSO has better ability to jump out of local optima and perform better compared with the basic BSO. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
16. Adaptive Backtracking Search Algorithm for Induction Magnetometer Optimization.
- Author
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Duan, Haibin and Luo, Qinan
- Subjects
- *
SEARCH algorithms , *ADAPTIVE computing systems , *ELECTROMAGNETIC induction , *MAGNETOMETERS , *MATHEMATICAL optimization - Abstract
Backtracking search algorithm (BSA) is a novel evolutionary algorithm (EA) for solving real-valued numerical optimization problems. In this paper, an adaptive BSA (ABSA) is proposed to solve the optimization problem of an induction magnetometer (IM). In the adaptive algorithm, the probabilities of crossover and mutation are varied depending on the fitness values of the solutions to refine the convergence performance. The proposed ABSA will also be compared with basic BSA and other widely used EA algorithms. Simulation results show that ABSA is better able to solving the IM optimization problems. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
17. Design Optimization of Air-Cored PMLSM With Overlapping Windings by Multiple Population Genetic Algorithm.
- Author
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Li, Liyi, Tang, Yongbin, and Pan, Donghua
- Subjects
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STRUCTURAL optimization , *ELECTRIC potential , *ELECTRIC windings , *GENETIC algorithms , *FINITE element method - Abstract
This paper deals with design optimization of air-cored permanent magnet linear synchronous motors with overlapping windings to achieve high thrust per volume, high thrust per coils quantity, high motor constant, and low thrust ripple simultaneously for ultra-precise positioning stage with air-bearing. Based on accurate magnetic field model, motor parameters such as flux density, inductive electromotive force (EMF), thrust per volume, thrust per coils quantity, and thrust ripple are analyzed. A multiobjective optimization method with weight coefficients is proposed by applying the multiple population genetic algorithm. The design optimization is verified by 3-D finite element analysis and experimental results. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
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