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首页> 外文期刊>IEEE transactions on automation science and engineering: a publication of the IEEE Robotics and Automation Society >Stochastic Hybrid Discrete Grey Wolf Optimizer for Multi-Objective Disassembly Sequencing and Line Balancing Planning in Disassembling Multiple Products
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Stochastic Hybrid Discrete Grey Wolf Optimizer for Multi-Objective Disassembly Sequencing and Line Balancing Planning in Disassembling Multiple Products

机译:Stochastic Hybrid Discrete Grey Wolf Optimizer,用于拆解多产品中的多目标拆解排序和线路平衡规划

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Recycling, reusing, and remanufacturing of end-of-life (EOL) products have been receiving increasing attention. They effectively preserve the ecological environment and promote the development of economy. Disassembly sequencing and line balancing problems are indispensable to recycling and remanufacturing EOL products. A set of subassemblies can be obtained by disassembling an EOL product. In practice, there are many different types of EOL products that can be disassembled on a disassembly line, and a high-level uncertainty exists in the disassembly process of those EOL products. Hence, this paper proposes a stochastic multi-product multi-objective disassembly-sequencing-line-balancing problem aiming at maximizing disassembly profit and minimizing energy consumption and carbon emission. A simulated annealing and multi-objective discrete grey wolf optimizer with a stochastic simulation approach is proposed. Furthermore, real cases are used to examine the efficiency and feasibility of the proposed algorithm. Comparisons with multi-objective discrete grey wolf optimization, non-dominated sorting genetic algorithm II, Multi-population multi-objective evolutionary algorithm, and multi-objective evolutionary algorithm demonstrate the superiority of the proposed approach. Note to Practitioners—Disassembly line balancing has been widely recognized as the most ecological way of retrieving EOL products. Through in-depth research, we present a Stochastic Multi-product Multi-objective Disassembly-sequencing-line-balancing Problem. Furthermore, we consider that the uncertainty of products might cause disassembly failure. To solve this problem effectively and quickly, we combine the simulated annealing algorithm with the Grey Wolf Optimizer. The results show that the algorithm can effectively solve the proposed problem. The disassembly scheme provided by the obtained solution set offers a variety of options for decision-makers.
机译:报废 (EOL) 产品的回收、再利用和再制造越来越受到关注。有效保护生态环境,促进经济发展。拆卸顺序和生产线平衡问题对于回收和再制造 EOL 产品是必不可少的。通过拆卸 EOL 产品可以获得一组子组件。在实践中,可以在拆卸线上拆卸的EOL产品有很多种,这些EOL产品的拆卸过程存在高度的不确定性。因此,该文提出了一种随机多产品多目标拆解-排序-生产线平衡问题,旨在实现拆解利润最大化,能耗和碳排放最小化。该文提出一种采用随机仿真方法的仿真退火多目标离散灰狼优化器。此外,利用真实案例验证了所提算法的有效性和可行性。与多目标离散灰狼优化、非支配排序遗传算法II、多种群多目标进化算法和多目标进化算法的对比证明了所提方法的优越性。从业者须知 — 拆卸线平衡已被广泛认为是检索 EOL 产品的最生态方式。通过深入研究,我们提出了一个随机多乘积多目标分解-排序-线平衡问题。此外,我们认为产品的不确定性可能会导致拆卸失败。为了有效、快速地解决这个问题,我们将模拟退火算法与灰狼优化器相结合。结果表明,该算法能够有效地解决所提出的问题。所获得的解决方案集提供的拆解方案为决策者提供了多种选择。

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