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Evolutionary Optimization for Computationally expensive problems using Gaussian Processes

机译:高斯过程计算昂贵问题的进化优化

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The use of statistical models to approximate detailed analysis codes for evolutionary optimization has attracted some attention. However, those early methodologies do suffer from some limitations, the most serious of which being the extra tuning parameter introduceds. Also the question of when to include more data points to the approximation model during the search remains unresolved. Those limitations might seriously impede their successful application. We present here an approach that makes use of the extra information provided by a Gaussian processes (GP) approximation model to guide the crucial model update step. We present here the advantages of using GP over other neural-net biologically inspired approaches. Results are presented for a real world-engineering problem involving the structural optimization of a satellite boom.
机译:使用统计模型来近似进化优化的详细分析代码引起了一些关注。然而,那些早期的方法确实受到一些限制,其中最严重的是额外的调整参数引入。此外,何时包括在搜索期间将更多数据点包含到近似模型的问题仍未得到解决。这些限制可能会严重阻碍他们的成功申请。我们在这里介绍一种方法,它利用高斯过程(GP)近似模型提供的额外信息来指导关键模型更新步骤。我们在此提出使用GP在其他神经网络生物启发方法中使用GP的优点。涉及卫星繁荣的结构优化的真实世界工程问题,提出了结果。

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