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首页> 外文期刊>Journal of Global Optimization >Optimization of black-box problems using Smolyak grids and polynomial approximations
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Optimization of black-box problems using Smolyak grids and polynomial approximations

机译:使用Smolyak网格和多项式逼近优化黑盒问题

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摘要

A surrogate-based optimization method is presented, which aims to locate the global optimum of box-constrained problems using input–output data. The method starts with a global search of the n -dimensional space, using a Smolyak (Sparse) grid which is constructed using Chebyshev extrema in the one-dimensional space. The collected samples are used to fit polynomial interpolants, which are used as surrogates towards the search for the global optimum. The proposed algorithm adaptively refines the grid by collecting new points in promising regions, and iteratively refines the search space around the incumbent sample until the search domain reaches a minimum hyper-volume and convergence has been attained. The algorithm is tested on a large set of benchmark problems with up to thirty dimensions and its performance is compared to a recent algorithm for global optimization of grey-box problems using quadratic, kriging and radial basis functions. It is shown that the proposed algorithm has a consistently reliable performance for the vast majority of test problems, and this is attributed to the use of Chebyshev-based Sparse Grids and polynomial interpolants, which have not gained significant attention in surrogate-based optimization thus far.
机译:提出了一种基于代理的优化方法,该方法旨在使用输入输出数据来定位箱约束问题的全局最优值。该方法开始于使用Smolyak(稀疏)网格对n维空间进行全局搜索,该网格由一维空间中的Chebyshev极值构造而成。所收集的样本用于拟合多项式内插值,这些多项式内插值用作对全局最优搜索的替代。所提出的算法通过在有希望的区域中收集新点来自适应地优化网格,并迭代地优化在位样本周围的搜索空间,直到搜索域达到最小超容量并达到收敛。该算法在多达30个维度的大量基准问题上进行了测试,并将其性能与使用二次函数,克里金法和径向基函数对灰盒问题进行全局优化的最新算法进行了比较。结果表明,所提出的算法在绝大多数测试问题上具有一致可靠的性能,这归因于基于Chebyshev的稀疏网格和多项式插值的使用,到目前为止,这些算法在基于代理的优化中并未得到足够的重视。 。

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