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A novel multi-objective co-evolutionary approach for supply chain gap analysis with consideration of uncertainties

机译:考虑不确定性的供应链差距分析的新型多目标共同进化方法

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Supply chain gap analysis is a practical method for quantitatively measuring the gap between the current state and a desired/ideal state in a supply chain, and generating a list of corrective actions to eliminate this gap and reach a desired/ideal level in supply chain goals. We propose a novel multi-objective co-evolutionary approach for supply chain gap analysis by hybridizing two well-known algorithms of non-dominated sorting genetic algorithm II (NSGAII) and multiple objective particle swarm optimization (MOPSO). The proposed algorithm considers the best solution of NSGAII at each iteration and uses it as the initial population in MOPSO. We consider three objective functions, including the expected costs, the total time, and customer satisfaction. The house of quality and quality function deployment is used to transform customer requirements into product characteristics. We also use a response surface methodology with multi-objective decision making for tuning the parameters since metaheuristic methods are generally sensitive to input parameters. We finally generate several random problems with different scenarios to compare the performance of our hybrid approach with singular methods. Five performance measures (i.e., mean ideal distance, diversification metric, quality metric, data envelopment analysis, and hypervolume metric) are used for this comparison. The results show the hybrid approach proposed in this study outperforms singular NSGAII and MOPSO metaheuristics in most scenarios.
机译:供应链隙分析是用于定量测量供应链中的当前状态和所需/理想状态之间的间隙的实用方法,并产生纠正措施列表以消除这种间隙并达到供应链目标中的期望/理想水平。我们提出了一种新的多目标共同进化方法,用于通过杂交两种已知的非主导分类遗传算法II(NSGAII)和多目标粒子群优化(MOPSO)的众所周知的算法来分析供应链差距分析。该算法认为NSGaii在每次迭代的最佳解决方案,并将其用作MOPSO中的初始群体。我们考虑三项客观职能,包括预期成本,总时间和客户满意度。质量和质量部署的房屋用于将客户要求转换为产品特性。我们还使用具有多目标决策的响应曲面方法,以便调整参数,因为成群化方法通常对输入参数敏感。我们终于在不同的场景中生成了几个随机问题,以比较我们的混合方法与奇异方法的性能。该比较使用五种性能措施(即,平均理想距离,多样化度量,质量指标,数据包络分析和超级智能度量。结果表明,在大多数情况下,本研究提出的混合方法优于单数NSGaii和MoPSO型遗传学。

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