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A cross-entropy algorithm based on Quasi-Monte Carlo estimation and its application in hull form optimization

机译:一种基于准蒙特卡罗估计的跨熵算法及其在船体形式优化中的应用

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Simulation-based hull form optimization is a typical HEB (high-dimensional, expensive computationally, black-box) problem. Conventional optimization algorithms easily fall into the “curse of dimensionality” when dealing with HEB problems. A recently proposed Cross-Entropy (CE) optimization algorithm is an advanced stochastic optimization algorithm based on a probability model, which has the potential to deal with high-dimensional optimization problems. Currently, the CE algorithm is still in the theoretical research stage and rarely applied to actual engineering optimization. One reason is that the Monte Carlo (MC) method is used to estimate the high-dimensional integrals in parameter update, leading to a large sample size. This paper proposes an improved CE algorithm based on quasi-Monte Carlo (QMC) estimation using high-dimensional truncated Sobol subsequence, referred to as the QMC-CE algorithm. The optimization performance of the proposed algorithm is better than that of the original CE algorithm. With a set of identical control parameters, the tests on six standard test functions and a hull form optimization problem show that the proposed algorithm not only has faster convergence but can also apply to complex simulation optimization problems.
机译:基于仿真的船体形式优化是一种典型的HEB(高维,昂贵的计算地,黑匣子)问题。在处理HEB问题时,常规优化算法很容易进入“维度的诅咒”。最近提出的跨熵(CE)优化算法是一种基于概率模型的高级随机优化算法,具有处理高维优化问题的可能性。目前,CE算法仍处于理论研究阶段,很少应用于实际工程优化。一个原因是Monte Carlo(MC)方法用于估计参数更新中的高维积分,导致大的样本大小。本文提出了一种基于Quasi-Monte Carlo(QMC)估计的改进的CE算法,使用高维截短的SOBOL子升文,称为QMC-CE算法。所提出的算法的优化性能优于原始CE算法的优化性能。使用一组相同的控制参数,对六个标准测试功能和船体形式优化问题的测试表明,所提出的算法不仅具有更快的收敛性,而且还可以应用于复杂的模拟优化问题。

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