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Hybrid particle swarm optimization and differential evolution algorithm for bi-level programming problem and its application to pricing and lot-sizing decisions

机译:求解双层规划问题的混合粒子群优化与差分进化算法及其在定价和批量决策中的应用

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摘要

This paper proposes a hierarchical hybrid particle swarm optimization (PSO) and differential evolution (DE) based algorithm (HHPSODE) to deal with bi-level programming problem (BLPP). To overcome the shortcomings of basic PSO and basic DE, this paper improves PSO and DE, respectively by using a velocity and position modulation method in PSO and a modified mutation strategy in DE. HHPSODE employs the modified PSO as a main program and the modified DE as a subprogram. According to the interactive iterations of modified PSO and DE, HHPSODE is independent of some restrictive conditions of BLPP. The results based on eight typical bi-level problems demonstrate that the proposed algorithm HHPSODE exhibits a better performance than other algorithms. HHPSODE is then adopted to solve a bi-level pricing and lot-sizing model proposed in this paper, and the data is used to analyze the features of the proposed bi-level model. Further tests based on the proposed bi-level model also exhibit good performance of HHPSODE in dealing with BLPP.
机译:提出了一种基于分层混合粒子群算法(PSO)和基于差分进化(DE)的算法(HHPSODE)来解决双层规划问题(BLPP)。为了克服基本PSO和基本DE的缺点,本文分别通过在PSO中使用速度和位置调制方法以及在DE中使用改进的变异策略来分别改进PSO和DE。 HHPSODE将修改后的PSO用作主程序,将修改后的DE用作子程序。根据修改后的PSO和DE的交互迭代,HHPSODE独立于BLPP的某些限制性条件。基于八个典型的双层问题的结果表明,所提出的算法HHPSODE具有比其他算法更好的性能。然后采用HHPSODE求解本文提出的双层定价和批量确定模型,并使用数据分析所提出的双层模型的特征。基于所提出的双层模型的进一步测试也显示了HHPSODE在处理BLPP方面的良好性能。

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