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Multi-objective sustainable process plan generation in a reconfigurable manufacturing environment: exact and adapted evolutionary approaches

机译:可重构制造环境中的多目标可持续过程计划生成:精确且适应性的进化方法

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摘要

Achieving competitiveness in nowadays manufacturing market goes through being cost and time-efficient as well as environmentally harmless. Reconfigurable manufacturing system (RMS) is a paradigm that is able to meet these challenges due to its scalability and integrability. In this paper, we aim to solve the multi-objective sustainable process plan generation problem in a reconfigurable environment. In addition to the total production cost and the completion time, we use the amount of greenhouse gases (GHG) emitted during the manufacturing process as a sustainability criterion. We propose an iterative multi-objective integer linear programming (I-MOILP) approach and its comparison with adapted versions of the two well-known evolutionary algorithms, respectively, the Archived Multi-Objective Simulated Annealing (AMOSA) and the Non-dominated Sorting Genetic Algorithm (NSGA-II). Moreover, we study the influence of the probabilities of genetic operators on the convergence of the adapted NSGA-II. To illustrate the applicability of the three approaches, an example is presented and obtained numerical results analysed.
机译:在当今的制造业市场中,要获得竞争力,不仅要节省成本和时间,而且对环境无害。可重构制造系统(RMS)是一种范例,由于其可伸缩性和可集成性,因此能够应对这些挑战。本文旨在解决可重构环境中的多目标可持续过程计划生成问题。除了总生产成本和完成时间外,我们还将制造过程中排放的温室气体(GHG)量用作可持续性标准。我们提出了一种迭代的多目标整数线性规划(I-MOILP)方法,并将其与两种著名的进化算法的适应版本进行了比较,这两种算法分别是存档多目标模拟退火(AMOSA)和非支配排序遗传算法(NSGA-II)。此外,我们研究了遗传算子的概率对适应的NSGA-II收敛性的影响。为了说明这三种方法的适用性,给出了一个例子并分析了获得的数值结果。

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