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Immune Multi-Population Firefly Algorithm and its Application in Multimodal Function Optimization

机译:免疫多种群萤火虫算法及其在多峰函数优化中的应用

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In this paper, a novel immune multi-population firefly algorithm (IMPFA)is presented to solve multimodal function optimization problems. The proposed algorithm integrates multi-population firefly algorithm (MPFA)with non-uniform mutation clonal selection algorithm (NUMCSA). In each loop iteration, firstly, the MPFA based on multi-population learning mechanism is used to search globally in the feasible region, and then the NUMCSA is utilized to search locally for improving the accuracy of the sub-optimal solutions obtained with MPFA. Simulation results show that the IMPFA is extremely effective and increases the precision of solutions.
机译:本文提出了一种新颖的免疫多种群萤火虫算法(IMPFA)来解决多峰函数优化问题。该算法将多种群萤火虫算法(MPFA)与非均匀突变克隆选择算法(NUMCSA)集成在一起。在每个循环迭代中,首先,使用基于多种群学习机制的MPFA在可行区域内进行全局搜索,然后使用NUMCSA在本地进行搜索,以提高使用MPFA获得的次优解的准确性。仿真结果表明,IMFA非常有效,提高了求解精度。

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