A genetic algorithm based approach to solve process plan selection problems

M. K. Tiwari, S. K. Tiwari, D. Roy, N. Vidyarthi, S. Kameshwaran
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引用次数: 5

Abstract

Selection of a process plan is a crucial decision making problem in manufacturing systems due to the presence of alternative plans arising from the availability of several machines, tools, fixtures, etc. Because of its impact on the performance of a manufacturing system, several researchers have addressed the plan selection problem in recent years. Selecting an optimal set of plans for a given set of parts becomes an NP complete problem under multiobjective and fairly restrictive conditions. In this paper, a genetic algorithm (GA) is used to obtain a set of feasible plans, for given part types and production volume, to minimize the processing time, setup time and materials handling time constrained by not overloading the machines. Obtaining near optimal solutions by using different weights for different objectives in GA, is also studied.
一种基于遗传算法的工艺方案选择方法
在制造系统中,工艺方案的选择是一个至关重要的决策问题,因为存在由几种机器、工具、夹具等的可用性引起的备选方案。由于计划选择对制造系统性能的影响,近年来一些研究者对计划选择问题进行了研究。对于给定的一组零件,选择一组最优方案是一个多目标和相当受限条件下的NP完全问题。本文采用遗传算法,针对给定的零件类型和产量,在不超载的条件下,获得一组可行的方案,以使加工时间、安装时间和物料搬运时间最小化。研究了遗传算法中对不同目标使用不同权值获得近似最优解的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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