一种解决流水车间系统面向可靠性与成本的双目标机器配置问题的混合方法

A hybrid method to solve reliability-cost-oriented bi-objective machine configuration problem for a flow shop system

Annals of Operations Research · 2024
被引 5
ABS 3

中文导读

提出一种混合方法,结合NSGA-II和理想点法,解决流水车间系统中平衡生产可靠性与购买成本的机器配置问题,并通过太阳能电池制造案例验证有效性。

Abstract

Abstract Machine configuration is a crucial strategic decision in designing a flow shop system (FSS) and directly affects its performance. This involves selecting device suppliers and determining the number of machines to be configured. This study addresses a bi-objective optimization problem for an FSS that considers repair actions and aims to determine the most suitable machine configuration that balances the production reliability and purchase cost. A nondominated sorting genetic algorithm II (NSGA-II) is used to determine all the Pareto solutions. The technique for order preference by similarity to an ideal solution is then used to identify a compromise alternative. It is necessary to assess the production reliability of any machine configuration identified by the NSGA-II. The FSS under the machine configuration is modeled as a multistate flow shop network, and Absorbing Markov Chain and Recursive Sum of Disjoint Products are integrated into the NSGA-II for reliability evaluation. The experimental results of solar cell manufacturing demonstrate the applicability of the proposed hybrid method and validate the efficiency of the NSGA-II compared with an improved strength Pareto evolutionary algorithm.

生产系统设计多目标优化可靠性工程流水车间