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Optimizing the Joint Replenishment and Delivery Scheduling Problem under Fuzzy Environment Using Inverse Weight Fuzzy Nonlinear Programming Method

机译:使用反重重量模糊非线性规划方法优化模糊环境下的联合补充和交付调度问题

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摘要

In reality, decision-makers are always in front of imprecise and vague operational conditions. We propose a practical multiobjective joint replenishment and delivery scheduling (JRD) model with deterministic demand and fuzzy cost. This model minimizes the total cost defuzzified by the signed distance method and maximizes the credibility that the total cost does not exceed the budget level. Then, an inverse weight fuzzy nonlinear programming (IWFNLP) method is adopted to formulate the proposed model. This method embeds the idea of inverse weights into the Max-Min fuzzy model. Thirdly, the fuzzy simulation approach and differential evolution algorithm (DE) are utilized to solve this problem. Results show that solutions derived from the IWFNLP method satisfy the decision-maker’s desirable achievement level of the cost objective and credibility objective. It is an effective decision tool since it can really reflect the relative importance of each fuzzy component. Our study also shows that the improved DE outperforms DE with a faster convergence speed.
机译:实际上,决策者总是在不精确和模糊的运营条件前面。我们提出了一种具有确定性需求和模糊成本的实用多目标联合补充和交付调度(JRD)模型。该模型最大限度地减少了符号距离方法的总成本,并最大限度地提高了总成本不超过预算水平的可信度。然后,采用逆重量模糊非线性编程(IWFNLP)方法来制定所提出的模型。该方法将逆权重的想法嵌入到MAX-MIN模糊模型中。第三,利用模糊仿真方法和差分演进算法(de)来解决这个问题。结果表明,源自IWFNLP方法的解决方案满足了决策者的成本目标和可信度目标的理想成果水平。它是一个有效的决策工具,因为它可以真正反映每个模糊组件的相对重要性。我们的研究还表明,改进的DE优于更快的收敛速度。

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