Title
Toward evolving dispatching rules for dynamic job shop scheduling under uncertainty.
Abstract
Dynamic job shop scheduling (DJSS) is a complex problem which is an important aspect of manufacturing systems. Even though the manufacturing environment is uncertain, most of the existing research works consider deterministic scheduling problems where the time required for processing any job is known in advance and never changes. In this work, we consider DJSS problems with varied uncertainty configurations of machines in terms of processing times and the total flow time as scheduling objective. With the varying levels of uncertainty many machines become bottlenecks of the job shop. It is essential to identify these bottleneck machines and schedule the jobs to be performed by them carefully. Driven by this idea, we develop a new effective method to evolve pairs of dispatching rules each for a different bottleneck level of the machines. A clustering approach to classifying the bottleneck level of the machines arising in the system due to uncertain processing times is proposed. Then, a cooperative co-evolution technique to evolve pairs of dispatching rules which generalize well across different uncertainty configurations is presented. We perform empirical analysis to show its generalization characteristic over the different uncertainty configurations and show that the proposed method outperforms the current approaches.
Year
DOI
Venue
2017
10.1145/3071178.3071202
GECCO
Keywords
Field
DocType
job shop scheduling, uncertainty, genetic programming
Bottleneck,Mathematical optimization,Job shop scheduling,Effective method,Scheduling (computing),Computer science,Flow shop scheduling,Job shop,Genetic programming,Cluster analysis
Conference
Citations 
PageRank 
References 
1
0.36
18
Authors
4
Name
Order
Citations
PageRank
Deepak Karunakaran110.36
Mei Yi294153.85
Gang Chen34816.42
Mengjie Zhang43777300.33