A Sequential Approximation Method Using Neural Networks for Nonlinear Discrete-Variable Optimization with Implicit Constraints
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概要
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This paper presents a sequential approximation method that combines a backpropagation neural network with a search algorithm for nonlinear discrete-variable engineering optimization problems with implicit constraints. This is an iteration process. A back-propagation neural network is trained to simulate the feasible domain formed by the implicit constraints. A search algorithm then searches for the "optimal point" in the feasible domain simulated by the neural network. This new design point is checked against the true constraints to see whether it is feasible, and is added to the training set. Then the neural network is trained again. With more design points in the training set, information about the whole search domain is accumulated to progressively form a better approximation for the feasible domain. This iteration process continues until the approximate model insists the same "optimal" point in consecutive iterations. In each iteration, only one evaluation of the implicit constraints is needed to see whether the current design point is feasible. No precise function value or sensitivity calculation is required. Several engineering design examples are used to demonstrate the practicality of this approach.
- 一般社団法人日本機械学会の論文
- 2001-03-15
著者
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Hsu Yeh-liang
Department Of Mechanical Engineering Yuan-ze Institute Of Technology
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Hsu Mingsho
Department Of Mechanical Engineering Yuan Ze University
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HSU YehLiang
Department of Mechanical Engineering, Yuan Ze University
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DONG YuHsin
Department of Mechanical Engineering, Yuan Ze University
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Hsu Yehliang
Department Of Mechanical Engineering Yuan Ze University
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Dong Yuhsin
Department Of Mechanical Engineering Yuan Ze University
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Dong Yu-Hsin
Department of Mechanical Engineering, Yuan Ze University
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Hsu Ming-Sho
Department of Mechanical Engineering, Yuan Ze University
関連論文
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- A Sequential Approximation Method Using Neural Networks for Nonlinear Discrete-Variable Optimization with Implicit Constraints