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An Improved Grey Prediction Evolution Algorithm Based on Topological Opposition-Based Learning

机译:一种基于拓扑反对派学习的改进灰色预测演化算法

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摘要

The grey prediction evolution algorithm based on the even grey model (GPEAe) proposed by Z.B.Hu et al. in 2019 is a competitively stochastic real-parameter optimization algorithm with characters of simple code, less parameters and strong exploration capability. To improve the algorithmic overall performance, a topological opposition-based learning strategy (TOBL) is first developed to enhance its exploitation capability in this paper. The TOBL determines offsprings by calculating the Manhattan distances between the current best individual and all the vertices of the hypercube inspired by the opposition-based learning strategy. An improved grey prediction evolutionary algorithm based on the TOBL (TOGPEAe) is then proposed. The performance of the TOGPEAe is tested on CEC2005, CEC2014 benchmark functions and a test suite composed of six engineering design problems. The experimental results of the TOGPEAe are very competitive compared with those of the original GPEAe and other state-of-the-art algorithms.
机译:基于Z.B.Hu等人提出的基于均匀灰色模型(GPEAE)的灰色预测演化算法。 2019年是一种竞争性的随机实际参数优化算法,具有简单代码的特征,参数较少,勘探能力强。为了提高算法的整体性能,首先开发出基于拓扑反对的学习策略(TOBL),以提高本文的开发能力。 ToBL通过计算当前最佳个人和由基于对立的学习策略启发的HyperCube的所有顶点之间的曼哈顿距离来确定后代。然后提出了一种基于TOBL(TOGPEAE)的改进的灰度预测进化算法。 Togpeae的性能在CEC2005,CEC2014基准功能和由六个工程设计问题组成的测试套件上进行了测试。与原始GPEAE和其他最先进的算法相比,Togpeae的实验结果非常有竞争力。

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