Sustainable Supply Chain (SSC) management aims at integrating economic, environmental and social goals to assist in the long-term planning of a company and its supply chains. There is no consensus in the literature as to whether social and environmental responsibilities are profit-compatible. However, the conflicting nature of these goals is explicit when considering specific assessment measures and, in this scenario, multi-objective optimization is a way to represent problems that simultaneously optimize the goals. This paper proposes a Lagrangian matheuristic method, called $AugMathLagr$, to solve a hard and relevant multi-objective problem found in the literature. $AugMathLagr$ was extensively tested using artificial instances defined by a generator presented in this paper. The results show a competitive performance of $AugMathLagr$ when compared with an exact multi-objective method limited by time and a matheuristic recently proposed in the literature and adapted here to address the studied problem. In addition, computational results on a case study are presented and analyzed, and demonstrate the outstanding performance of $AugMathLagr$.
翻译:可持续供应链(SSC)管理旨在整合经济、环境和社会目标,以协助公司及其供应链的长期规划,文献中对于社会和环境责任是否与利润相容没有共识,然而,在考虑具体评估措施时,这些目标的矛盾性质是明确的,在这一设想中,多目标优化是代表同时优化目标问题的一种方式,本文件建议采用拉格朗格亚数学方法,称为$AugMathLagr$,以解决文献中发现的一个困难和相关的多目标问题。 $AugMathLagr$在本文中用一个生成者界定的人工实例进行广泛测试,结果显示,与文献中最近提出的一个数学方法相比,美元AugmathLagr$具有竞争性,后者受时间和最近一个数学方法的限制,并在此进行调整,以解决所研究的问题。此外,还介绍并分析了一项案例研究的计算结果,并展示了美元AugLagrgr$的杰出表现。