This paper presents a new algorithm based on integrating Genetic Algorithms and Tabu Search methods to solve the Job Shop Scheduling problem. The idea of the proposed algorithm is derived from Genetic Algorithms. Most of the scheduling problems require either exponential time or space to generate an optimal answer. Job Shop scheduling (JSS) is the general scheduling problem and it is a NP-complete problem, but it is difficult to find the optimal solution. This paper applies Genetic Algorithms and Tabu Search for Job Shop Scheduling problem and compares the results obtained by each. With the implementation of our approach the JSS problems reaches optimal solution and minimize the makespan.
翻译:本文介绍了一种基于整合遗传算术和塔布搜索方法的新算法,以解决职业介绍所时间安排问题,拟议算法的构想来自遗传分析法,大多数时间安排问题需要指数时间或空间才能产生最佳答案。工作介绍所(JSS)是一个总体的时间安排问题,是一个NP问题,但很难找到最佳解决办法。本文应用遗传算法和塔布搜索职业介绍所时间安排问题,比较每个工作介绍所安排问题的结果。随着我们方法的实施,工作介绍所的问题可以找到最佳解决办法,并尽可能缩小其范围。