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A Hybrid Algorithm Based on Bat-Inspired Algorithm and Differential Evolution for Constrained Optimization Problems

机译:基于蝙蝠启发算法和差分进化的约束优化问题混合算法

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摘要

How to solve constrained optimization problems (COPs) is a significant research issue and we combine the bat-inspired algorithm (BA) with differential evolution (DE) into a new hybrid algorithm called BA-DE for solving the COPs. Traditional BAs are prone to sink into stagnation or local optima when no bat individual founds a better location than the past locations for several generations. DE is adopted for updating the past location of bat individuals to force BA to jump out of stagnation or local optima, since it has a great local searching capability. The performance of BA-DE algorithm is improved by the proposed hybrid mechanism. We use 24 well-known benchmark functions to verify the overall performance of our proposed algorithm. Comparisons show that BA-DE outperforms most advanced methods in terms of the final solution's quality.
机译:如何解决约束优化问题(COPs)是一个重要的研究问题,我们将蝙蝠启发式算法(BA)与微分进化(DE)相结合,形成了一种新的称为BA-DE的混合算法来解决COPs。当没有蝙蝠个体找到比过去几代人更好的位置时,传统的BA容易陷入停滞或局部最优状态。采用DE来更新蝙蝠个体的过去位置,以迫使BA摆脱停滞或局部最优,因为它具有强大的局部搜索能力。提出的混合机制提高了BA-DE算法的性能。我们使用24个著名的基准函数来验证所提出算法的整体性能。比较表明,就最终解决方案的质量而言,BA-DE的性能优于最先进的方法。

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