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Partial opposition-based adaptive differential evolution algorithms: Evaluation on the CEC 2014 benchmark set for real-parameter optimization

机译:基于局部对立的自适应差分进化算法:对CEC 2014基准集的评估,用于实参优化

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Opposition-based Learning (OBL) has been reported with an increased performance in enhancing various optimization approaches. Instead of investigating the opposite point of a candidate in OBL, this study proposed a partial opposition-based learning (POBL) schema that focuses a set of partial opposite points (or partial opposite population) of an estimate. Furthermore, a POBL-based adaptive differential evolution algorithm (POBL-ADE) is proposed to improve the effectiveness of ADE. The proposed algorithm is evaluated on the CEC2014's test suite in the special session and competition for real parameter single objective optimization in IEEE CEC 2014. Simulation results over the benchmark functions demonstrate the effectiveness and improvement of the POBL-ADE compared with ADE.
机译:据报道,基于对立的学习(OBL)在增强各种优化方法方面具有更高的性能。这项研究没有研究OBL中候选人的对立点,而是提出了一种基于偏向的局部学习(POBL)模式,该模式着重评估的一组偏向的相对点(或偏向的总体)。此外,提出了一种基于POBL的自适应差分进化算法(POBL-ADE),以提高ADE的有效性。该算法在特别会议上针对CEC2014的测试套件进行了评估,并在IEEE CEC 2014中争夺实参单目标优化。在基准功能上的仿真结果证明了POBL-ADE与ADE相比的有效性和改进之处。

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