The Improved Draining Method and Its Application to Proper Benchmark Problems

T. Okamoto, E. Aiyoshi
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引用次数: 7

Abstract

We have proposed "draining method (DM)". DM is based on the discrete gradient chaos model (DGCM) and the objective function transformation which is developed by the analysis of DGCM. Applying DM to typical benchmark problems, we have confirmed its superior global optimization capability. Besides, DM has a problem that we need to set objective function value (OFV) of global minima (or desired value) at the start of the search. In this study, we propose to improve draining procedure so that OFV of the global minimum is not needed. Then, we apply the improved DM to more proper benchmark problems which are created by recommended methods. Through several numerical simulations, we confirm that improved DM is generally effective for proper benchmark problems. This result suggests that improved DM is effective in general situations
改进排水方法及其在适当基准问题中的应用
我们提出了“排水法(DM)”。离散梯度混沌模型(DGCM)是一种基于离散梯度混沌模型和目标函数变换的混沌模型。通过对典型基准问题的分析,证实了该算法具有优越的全局优化能力。此外,DM还存在一个问题,即我们需要在搜索开始时设置全局最小值(或期望值)的目标函数值(OFV)。在本研究中,我们建议改进排水程序,使其不需要全球最小OFV。然后,我们将改进的决策模型应用于由推荐方法生成的更合适的基准问题。通过几个数值模拟,我们证实了改进的DM通常对适当的基准问题是有效的。这一结果表明改进的DM在一般情况下是有效的
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