一种求解模糊随机多人装配线平衡问题的多目标遗传算法

A new multi-objective genetic algorithm for solving the fuzzy stochastic multi-manned assembly line balancing problem

International Journal of Production Research · 2025
被引 2
ABS 3

中文导读

针对多人装配线平衡问题,引入模糊随机任务时间,提出一种多目标遗传算法,同时优化工站数、工人总数和负载平滑度,仿真验证了算法有效性。

Abstract

By incorporating the uncertainty and imprecision inherent in real-world production systems, this paper introduces the multi-manned assembly line balancing problem (MMALBP) with fuzzy stochastic task processing times. MMALBP has recently emerged as a key challenge in flow-line production systems manufacturing large-scale products (e.g. the automotive industry), where multiple workers collaborate at the same station to perform different operations simultaneously on a single product. MMALBP is a decision problem that involves partitioning assembly tasks among stations and scheduling them across multiple workers while optimising key operational objectives related to capacity and/or operational cost of the line. To enhance realism and decision-making, a new problem termed fs-MMALBP is introduced, which models task time uncertainties as fuzzy stochastic variables. The objective is to optimise three conflicting criteria: (1) minimising the number of the stations, (2) minimising the total number of the workers employed along all the stations and (3) maximising the workload smoothness across the line. Given the NP-hard nature of the problem, a new robust multi-objective genetic algorithm (MOGA) is developed to identify the Pareto-optimal set. Simulation results show that MOGA effectively produces well-distributed Pareto-optimal solutions under fuzzy-stochastic uncertainty, with improved hypervolume and competitive CPU times across benchmark instances.

装配线平衡多目标优化遗传算法模糊随机变量生产系统