首页> 外文OA文献 >Particle swarm optimization applied to job shop scheduling udud
【2h】

Particle swarm optimization applied to job shop scheduling udud

机译:粒子群算法在车间调度中的应用 out

摘要

In this project we have to apply the particle swarm optimization algorithm to job shop scheduling problem. Job shop scheduling is a combinatorial optimization problem where we have to arrange the jobs which may or may not be processed in every machine in a particular sequence and each machine has a different sequence of jobs. Job shop scheduling is a complex extended version of flow shop scheduling which is a problem where each job is processed through each and every machine and each machine has a same sequence of jobs. Our main objective in both kind of problem is to arrange the jobs in a sequence which gives minimum value of make span. PSO (Particle swarm optimization) helps us to find a combination of job sequence which has the least make span. In PSO a swarm of particles which have definite position and velocity for each job. In PSO, to find the combinations we use a heuristic rule called Smallest Position Value (SPV). According to smallest position value rule jobs are arranged in ascending order of their positions i.e. job having least position value is put first in sequence. In this project PSO is first applied to flow shop scheduling problem. This is done to understand how PSO algorithm can be applied to scheduling problem as flow shop scheduling problem is a simple problem. After Understanding the PSO algorithm, the algorithm is extended to apply in job shop scheduling problem for n jobs and m machines.
机译:在这个项目中,我们必须将粒子群优化算法应用于车间调度问题。作业车间调度是一个组合优化问题,我们必须按特定的顺序安排在每台机器上可能处理或可能不会处理的作业,并且每台机器都有不同的作业序列。作业车间调度是流程车间调度的复杂扩展版本,这是一个问题,其中每个作业都通过每台机器进行处理,并且每台机器具有相同的作业序列。在这两种问题中,我们的主要目标是按顺序排列作业,以使制造跨度的最小值最小。 PSO(粒子群优化)可帮助我们找到具有最小跨度的作业序列组合。在PSO中,一群粒子对每个作业都有确定的位置和速度。在PSO中,要找到组合,我们使用一种称为最小位置值(SPV)的启发式规则。根据最小位置值规则,作业以其位置的升序排列,即,具有最小位置值的作业被顺序放在第一位。在该项目中,PSO首先应用于流水车间调度问题。这样做是为了了解如何将PSO算法应用于调度问题,因为流水车间调度问题是一个简单的问题。在理解了PSO算法之后,该算法被扩展以应用于n个作业和m台机器的作业车间调度问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号