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Fast calculation of multiobjective probability of improvement and expected improvement criteria for Pareto optimization

机译:快速计算多目标改善概率和帕累托优化的预期改善标准

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摘要

The use of surrogate based optimization (SBO) is widely spread in engineering design to reduce the number of computational expensive simulations. However, "real-world" problems often consist of multiple, conflicting objectives leading to a set of competitive solutions (the Pareto front). The objectives are often aggregated into a single cost function to reduce the computational cost, though a better approach is to use multiobjective optimization methods to directly identify a set of Pareto-optimal solutions, which can be used by the designer to make more efficient design decisions (instead of weighting and aggregating the costs upfront). Most of the work in multiobjective optimization is focused on multiobjective evolutionary algorithms (MOEAs). While MOEAs are well-suited to handle large, intractable design spaces, they typically require thousands of expensive simulations, which is prohibitively expensive for the problems under study. Therefore, the use of surrogate models in multiobjective optimization, denoted as multiobjective surrogate-based optimization, may prove to be even more worthwhile than SBO methods to expedite the optimization of computational expensive systems. In this paper, the authors propose the efficient multiobjective optimization (EMO) algorithm which uses Kriging models and multiobjective versions of the probability of improvement and expected improvement criteria to identify the Pareto front with a minimal number of expensive simulations. The EMO algorithm is applied on multiple standard benchmark problems and compared against the well-known NSGA-Ⅱ, SPEA2 and SMS-EMOA multiobjective optimization methods.
机译:在工程设计中广泛使用基于代理的优化(SBO),以减少计算量大的仿真次数。但是,“现实世界”问题通常由多个相互冲突的目标组成,从而导致了一系列竞争解决方案(帕累托阵线)。通常将目标汇总到单个成本函数中以减少计算成本,但是更好的方法是使用多目标优化方法直接识别一组帕累托最优解决方案,设计者可以使用这些解决方案来做出更有效的设计决策(而不是预先加权和汇总费用)。多目标优化中的大部分工作都集中在多目标进化算法(MOEA)上。尽管MOEA非常适合处理大型难处理的设计空间,但它们通常需要数千次昂贵的仿真,对于正在研究的问题而言,这是极其昂贵的。因此,在多目标优化中使用代理模型(表示为基于多目标代理的优化)可能比SBO方法更有价值,以加快计算昂贵的系统的优化。在本文中,作者提出了一种有效的多目标优化(EMO)算法,该算法使用Kriging模型以及改进概率和预期改进标准的多目标版本,以最少数量的昂贵模拟来识别Pareto前沿。 EMO算法应用于多个标准基准问题,并与著名的NSGA-Ⅱ,SPEA2和SMS-EMOA多目标优化方法进行了比较。

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