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Structure optimization of neural networks for evolutionary design optimization

机译:用于进化设计优化的神经网络结构优化

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摘要

We study the use of neural networks as approximate models for the fitness evaluation in evolutionary design optimization. To improve the quality of the neural network models, structure optimization of these networks is performed with respect to two different criteria: One is the commonly used approximation error with respect to all available data, and the other is the ability of the networks to learn different problems of a common class of problems fast and with high accuracy. Simulation results from turbine blade optimizations using the structurally optimized neural network models are presented to show that the performance of the models can be improved significantly through structure optimization.
机译:我们研究了在进化设计优化中将神经网络用作适应性评估的近似模型。为了提高神经网络模型的质量,针对两个不同的标准对这些网络进行了结构优化:一个是相对于所有可用数据的常用近似误差,另一个是网络学习不同数据的能力常见问题类别中的问题快速且准确。提出了使用结构优化的神经网络模型进行的涡轮叶片优化的仿真结果,表明通过结构优化可以显着改善模型的性能。

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