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Continuous Population-Based Incremental Learning with Mixture Probability Modeling for Dynamic Optimization Problems

机译:基于连续种群的增量学习及其混合概率建模的动态优化问题

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摘要

This paper proposes a multimodal extension of PBILc based on Gaussian mixture models for solving dynamic optimization problems. By tracking multiple optima, the algorithm is able to follow the changes in objective functions more efficiently than in the unimodal case. The approach was validated on a set of synthetic benchmarks including Moving Peaks, dynamization of the Rosenbrock function and compositions of functions from the IEEE CEC'2009 competition. The results obtained in the experiments proved the efficiency of the approach in solving dynamic problems with a number of competing peaks.
机译:本文提出了一种基于高斯混合模型的PBILc多模态扩展,以解决动态优化问题。通过跟踪多个最优值,该算法能够比单峰情况更有效地跟踪目标函数的变化。该方法已在一系列综合基准中得到验证,包括移动峰,Rosenbrock函数的动态化以及IEEE CEC'2009竞赛中的函数组成。实验中获得的结果证明了该方法在解决具有多个竞争峰的动态问题方面的效率。

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