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Using neural network function approximation for optimal design of continuous-state parallel-series systems

机译:使用神经网络函数逼近进行连续状态并联系统的优化设计

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This paper presents a novel continuous-state system model for optimal design of parallel-series systems when both cost and reliability are considered. The advantage of a continuous-state system model is that it represents realities more accurately than discrete-state system models. However, using conventional optimization algorithms to solve the optimal design problem for continuous-state systems becomes very complex. Under general cases, it is impossible to obtain an explicit expression of the objective function to be optimized. In this paper, we propose a neural network (NN) approach to approximate the objective function. Once the approximate optimization model is obtained with the NN approach, the subsequent optimization methods and procedures are the same and straightforward. A 2-stage example is given to compare the analytical approach with the proposed NN approach. A complicated 4-stage example is given to illustrate that it is easy to use the NN approach while it is too difficult to solve the problem analytically.
机译:本文提出了一种新颖的连续状态系统模型,用于在考虑成本和可靠性的情况下优化并联系统的设计。连续状态系统模型的优点是它比离散状态系统模型更准确地表示现实。但是,使用常规的优化算法来解决连续状态系统的最佳设计问题变得非常复杂。在一般情况下,不可能获得要优化的目标函数的明确表示。在本文中,我们提出了一种神经网络(NN)方法来近似目标函数。使用NN方法获得近似优化模型后,后续的优化方法和过程将相同且直接。给出了一个两阶段的示例,以将分析方法与建议的NN方法进行比较。给出了一个复杂的4阶段示例,以说明使用NN方法很容易,而通过解析来解决问题太困难。

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