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A Framework for Multi-fidelity Modeling in Global Optimization Approaches

机译:全球优化方法中多保真建模的框架

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Optimization of complex systems often involves running a detailed simulation model that requires large computational time per function evaluation. Many methods have been researched to use a few detailed, high-fidelity, function evaluations to construct a low-fidelity model, or surrogate, including Kriging, Gaussian processes, response surface approximation, and meta-modeling. We present a framework for global optimization of a high-fidelity model that takes advantage of low-fidelity models by iteratively evaluating the low-fidelity model and providing a mechanism to decide when and where to evaluate the high-fidelity model. This is achieved by sequentially refining the prediction of the computationally expensive high-fidelity model based on observed values in both high- and low-fidelity. The proposed multi-fidelity algorithm combines Probabilistic Branch and Bound, that uses a partitioning scheme to estimate subregions with near-optimal performance, with Gaussian processes, that provide predictive capability for the high-fidelity function. The output of the multi-fidelity algorithm is a set of subregions that approximates a target level set of best solutions in the feasible region. We present the algorithm for the first time and an analysis that characterizes the finite-time performance in terms of incorrect elimination of subregions of the solution space.
机译:复杂系统的优化通常涉及运行详细的仿真模型,该模型需要每个函数评估的大计算时间。已经研究了许多方法来使用一些详细的高保真度,功能评估来构建低保真模型,包括克里格,高斯过程,响应表面近似和元建模。我们提出了一种全球优化的框架,用于通过迭代地评估低保真模型并提供决定何时以及在何处来评估高保真模型的机制来利用低保真模型的高保真模型。这是通过顺序地改进基于高保真和低保真度的观察值的计算昂贵的高保真模型的预测来实现的。所提出的多保真算法结合了概率分支和绑定,它使用分区方案来估计具有近最佳性能的子区域,具有高斯过程,为高保真功能提供预测能力。多保真算法的输出是一组近似于可行区域中最佳解决方案的目标级别集合的子区域。我们首次介绍了算法的第一次和分析,其在溶液空间的子区域的错误消除中表征了有限时间性能。

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