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首页> 外文期刊>International Journal of Bio-Inspired Computation >Multi-agent simulated annealing algorithm based on differential evolution algorithm
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Multi-agent simulated annealing algorithm based on differential evolution algorithm

机译:基于差分进化算法的多智能体模拟退火算法

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摘要

Simulated annealing (SA) algorithm is extremely slow in convergence, and the implementation and efficiency of parallel SA algorithms are typically problem-dependent. To overcome such intrinsic limitations, this paper presents a multi-agent simulated annealing (MSA) algorithm to address continuous function optimisation problems. In MSA, a population of agents run SA algorithm collaboratively, exploiting the mutation operator formulas of differential evolution (DE) algorithm for candidate solution generation. Our MSA algorithm can achieve significantly better intensification ability by taking advantage of the learning ability from DE algorithm; meanwhile the probability acceptation rule of SA algorithm can keep MSA from premature stagnation. The MSA algorithm is population based, so it can be paralleled problem-independently and easily. Simulation experiments were carried on four typical benchmark functions, and the results show that MSA algorithm has good performance in terms of convergence speed and solution accuracy.
机译:模拟退火(SA)算法收敛速度极慢,并且并行SA算法的实现和效率通常取决于问题。为了克服这种固有的局限性,本文提出了一种多代理模拟退火(MSA)算法来解决连续函数优化问题。在MSA中,一组代理协同运行SA算法,利用差分进化(DE)算法的变异算子公式生成候选解决方案。通过利用DE算法的学习能力,我们的MSA算法可以获得更好的增强能力。同时,SA算法的概率接受规则可以防止MSA过早停滞。 MSA算法基于总体,因此可以独立且轻松地并行解决问题。对四个典型的基准函数进行了仿真实验,结果表明,MSA算法在收敛速度和求解精度上均具有良好的性能。

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