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Multi-objective optimal computing budget allocation for multi-objective particle swarm optimisation with particle-dependent weights

机译:具有粒子相关权重的多目标粒子群算法的多目标最优计算预算分配

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摘要

In this paper, we develop a multi-objective optimal computing budget allocation method with multiple weights (MOCBAmw) assigned to each particle in multi-objective particle swarm optimisation based on weighted scalarising functions (MPSOws) algorithm under the stochastic environment. By intelligently allocating computing budget among all particles instead of simple equal allocation (EA), we are able to improve the probability of correctly selecting the global best designs under limited computing budget. Improvement of correct leading particles identification in each generation of the MPSOws procedure helps to facilitate the convergence of the swarm to the Pareto front under the stochastic environment. Test results from bi-objective ZDT problems and tri-objective DTLZ problems have shown that MOCBAmw achieves a better convergence rate and a higher hypervolume than EA under the same noise setting.
机译:本文在随机环境下,基于加权标量函数(MPSOws)算法,在多目标粒子群算法中,开发了一种多目标最优计算预算分配方法,该算法将每个粒子分配多个权重(MOCBAmw)。通过在所有粒子之间智能地分配计算预算而不是简单的均等分配(EA),我们能够提高在有限的计算预算下正确选择全局最佳设计的可能性。在每一代MPSOws程序中,对正确的前导粒子识别的改进有助于在随机环境下促进群体向Pareto前沿的收敛。双目标ZDT问题和三目标DTLZ问题的测试结果表明,在相同的噪声设置下,MOCBAmw的收敛速度比EA高,并且超体积更大。

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