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A conservative method of wavelet neural network based meta-modeling in constrained approximate optimization

机译:约束近似优化中基于小波神经网络元模型的保守方法

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摘要

The paper aims at the development of the wavelet neural network (WNN) based conservative meta-model that satisfies the constraint feasibility of approximate optimal solution. The WNN based constraint-feasible meta-model is formulated via exterior penalty method to optimally determine interconnection weights and dilation and translation coefficients in the network. Using Ackley's path function, the approximation performance of WNN is first tested in comparison with BPN. The proposed approach of constraint feasibility is then verified through a ten-bar planar truss problem. For constrained approximate optimization, the structural design of a composite rotor blade is explored to support the proposed strategies.
机译:本文旨在发展基于小波神经网络(WNN)的保守元模型,该模型满足近似最优解的约束可行性。通过外部罚分法建立了基于WNN的约束可行元模型,以最优地确定网络中的互连权重以及膨胀和转换系数。使用Ackley的路径函数,首先将WNN的近似性能与BPN进行了测试。然后通过十杆平面桁架问题验证了所提出的约束可行性方法。为了约束近似优化,研究了复合转子叶片的结构设计以支持所提出的策略。

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