Ensemble Differential Evolution with Simulation-Based Hybridization and Self-Adaptation for Inventory Management Under Uncertainty

Sarit Maitra, Vivek Mishra, Sukanya Kundu
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Abstract

This study proposes an Ensemble Differential Evolution with Simula-tion-Based Hybridization and Self-Adaptation (EDESH-SA) approach for inven-tory management (IM) under uncertainty. In this study, DE with multiple runs is combined with a simulation-based hybridization method that includes a self-adaptive mechanism that dynamically alters mutation and crossover rates based on the success or failure of each iteration. Due to its adaptability, the algorithm is able to handle the complexity and uncertainty present in IM. Utilizing Monte Carlo Simulation (MCS), the continuous review (CR) inventory strategy is ex-amined while accounting for stochasticity and various demand scenarios. This simulation-based approach enables a realistic assessment of the proposed algo-rithm's applicability in resolving the challenges faced by IM in practical settings. The empirical findings demonstrate the potential of the proposed method to im-prove the financial performance of IM and optimize large search spaces. The study makes use of performance testing with the Ackley function and Sensitivity Analysis with Perturbations to investigate how changes in variables affect the objective value. This analysis provides valuable insights into the behavior and robustness of the algorithm.
不确定条件下基于仿真杂交的集成差分进化与自适应库存管理
针对不确定条件下的库存管理问题,提出了一种基于仿真杂交自适应的集成差分进化方法(EDESH-SA)。在本研究中,多次运行的DE与基于模拟的杂交方法相结合,该方法包括一个自适应机制,该机制根据每次迭代的成功或失败动态改变突变和交叉率。该算法具有较强的适应性,能够处理即时通信中存在的复杂性和不确定性。利用蒙特卡罗模拟(MCS),在考虑随机性和各种需求情景的情况下,研究了连续评审(CR)库存策略。这种基于模拟的方法可以对所提出的算法在解决IM在实际环境中面临的挑战时的适用性进行现实评估。实证结果表明,本文提出的方法在提高即时通讯的财务绩效和优化大型搜索空间方面具有潜力。本研究利用Ackley函数的性能测试和扰动敏感性分析来研究变量的变化对目标值的影响。这种分析为算法的行为和鲁棒性提供了有价值的见解。
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