You Meng, Xiao Yiyong, Zhang Siyue, Zhou Shenghan, Yang Pei, Pan Xing
School of Reliability and System Engineering, Beihang University, Beijing 100191, China.
Entropy (Basel). 2019 Apr 7;21(4):377. doi: 10.3390/e21040377.
In this study, we investigated the time-varying capacitated lot-sizing problem under a fast-changing production environment, where production factors such as the setup costs, inventory-holding costs, production capacities, or even material prices may be subject to continuous changes during the entire planning horizon. Traditional lot-sizing theorems and algorithms, which often assume a constant production environment, are no longer fit for this situation. We analyzed the time-varying environment of today's agile enterprises and modeled the time-varying setup costs and the time-varying production capacities. Based on these, we presented two mixed-integer linear programming models for the time-varying capacitated single-level lot-sizing problem and the time-varying capacitated multi-level lot-sizing problem, respectively, with considerations on the impact of time-varying environments and dynamic capacity constraints. New properties of these models were analyzed on the solution's feasibility and optimality. The solution quality was evaluated in terms of the entropy which indicated that the optimized production system had a lower value than that of the unoptimized one. A number of computational experiments were conducted on well-known benchmark problem instances using the AMPL/CPLEX to verify the proposed models and to test the computational effectiveness and efficiency, which showed that the new models are applicable to the time-varying environment. Two of the benchmark problems were updated with new best-known solutions in the experiments.
在本研究中,我们调查了快速变化的生产环境下的时变有容量批量问题,在整个规划期内,诸如设置成本、库存持有成本、生产能力甚至材料价格等生产因素可能会持续变化。传统的批量定理和算法通常假设生产环境恒定,已不再适用于这种情况。我们分析了当今敏捷企业的时变环境,并对时变设置成本和时变生产能力进行了建模。在此基础上,我们分别针对时变有容量单级批量问题和时变有容量多级批量问题提出了两个混合整数线性规划模型,同时考虑了时变环境的影响和动态容量约束。分析了这些模型在解的可行性和最优性方面的新特性。根据熵对解的质量进行了评估,结果表明优化后的生产系统的值低于未优化的生产系统。使用AMPL/CPLEX对一些著名的基准问题实例进行了大量计算实验,以验证所提出的模型并测试计算有效性和效率,结果表明新模型适用于时变环境。在实验中,其中两个基准问题更新了新的已知最优解。