Title of article :
Neural network and genetic algorithm-based hybrid approach to expanded job-shop scheduling
Author/Authors :
Haibin Yu، نويسنده , , Wei Liang، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2001
Pages :
20
From page :
337
To page :
356
Abstract :
The expanded job-shop scheduling problem (EJSSP) is a practical production scheduling problem with processing constraints that are more restrictive and a scheduling objective that is more general than those of the standard job-shop scheduling problem (JSSP). A hybrid approach involving neural networks and genetic algorithm (GA) is presented to solve the problem in this paper. The GA is used for optimization of sequence and a neural network (NN) is used for optimization of operation start times with a fixed sequence. After detailed analysis of an expanded job shop, new types of neurons are defined to construct a constraint neural network (CNN). The neurons can represent processing restrictions and resolve constraint conflicts. CNN with a gradient search algorithm, gradient CNN in short, is applied to the optimization of operation start times with a fixed processing sequence. It is shown that CNN is a general framework representing scheduling problems and gradient CNN can work in parallel for optimization of operation start times of the expanded job shop. Combining gradient CNN with a GA for sequence optimization, a hybrid approach is put forward. The approach has been tested by a large number of simulation cases and practical applications. It has been shown that the hybrid approach is powerful for complex EJSSP.
Keywords :
Job-shop scheduling , Genetic Algorithm , Neural network , Gradient search
Journal title :
Computers & Industrial Engineering
Serial Year :
2001
Journal title :
Computers & Industrial Engineering
Record number :
926277
Link To Document :
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