An Improved Particle Swarm Optimization-Based Approach for Production Scheduling Problems

Job-shop scheduling problem (JSSP) is very common in a discrete manufacturing environment. It deals with multi-operation models, which are different from the flow shop models. It is usually very hard to find its optimal solution. In this paper, a new hybrid approach in dealing with this job-shop scheduling problem based on particle swarm optimization (PSO) and simulated annealing (SA) technique is presented. PSO employs a collaborative population-based search, which is inspired by the social behavior of bird flocking. It combines local search (by self experience) and global search (by neighboring experience), possessing high search efficiency. SA employs certain probability to avoid becoming trapped in a local optimum and the search process can be controlled by the cooling schedule. The hybrid algorithm combines the high speed of PSO with the powerful ability to avoid being trapped in local minimum of SA. We compare the hybrid algorithm to both the standard PSO and SA models, computer simulations have shown that the proposed hybrid approach is of high speed and efficiency

[1]  Klaus H. Ecker,et al.  Scheduling Computer and Manufacturing Processes , 2001 .

[2]  Yu Haibin,et al.  GA-Based Approach to Single Machine Scheduling with General Early Tardy Penalty Weights , 2000 .

[3]  MuDer Jeng,et al.  A neural network model for the job-shop scheduling problem with the consideration of lot sizes , 1995, Proceedings of 1995 IEEE International Conference on Robotics and Automation.

[4]  Damien Trentesaux,et al.  Hybrid approach to decision-making for job-shop scheduling , 1999 .

[5]  Didier Dubois,et al.  Fuzzy constraints in job-shop scheduling , 1995, J. Intell. Manuf..

[6]  Yoshiyasu Takefuji,et al.  Integer linear programming neural networks for job-shop scheduling , 1988, IEEE 1988 International Conference on Neural Networks.

[7]  Fatima Ghedjati,et al.  Genetic algorithms for the job-shop scheduling problem with unrelated parallel constraints: heuristic mixing method machines and precedence , 1999 .

[8]  Jing Xu,et al.  An early warning system for loan risk assessment using artificial neural networks , 2001, Knowl. Based Syst..

[9]  Michael J. Shaw,et al.  Intelligent Scheduling with Machine Learning Capabilities: The Induction of Scheduling Knowledge§ , 1992 .

[10]  David E. Goldberg,et al.  Genetic Algorithms in Search Optimization and Machine Learning , 1988 .

[11]  Shengxiang Yang,et al.  A new adaptive neural network and heuristics hybrid approach for job-shop scheduling , 2001, Comput. Oper. Res..

[12]  Yasuhiro Tsujimura,et al.  A tutorial survey of job-shop scheduling problems using genetic algorithms, part II: hybrid genetic search strategies , 1999 .

[13]  Chih-Ming Liu,et al.  Intelligent scheduling of FMSs with inductive learning capability using neural networks , 1995 .

[14]  A. S. Jain,et al.  Job-shop scheduling using neural networks , 1998 .

[15]  C Zhang NEURAL NETWORK METHOD OF SOLVING JOB-SHOP SCHEDULING PROBLEM , 1995 .

[16]  Kenji Onaga,et al.  An Evolutionary Scheduling Scheme Based on gkGA Approach to the job Shop Scheduling Problem(Special Section of Papers Selected from ITC-CSCC'97) , 1998 .