DocumentCode
1266413
Title
A neural network approach to job-shop scheduling
Author
Zhou, D.N. ; Cherkassky, V. ; Baldwin, T.R. ; Olson, D.E.
Author_Institution
Dept. of Technol., Wisconsin Univ., Menomonie, WI, USA
Volume
2
Issue
1
fYear
1991
fDate
1/1/1991 12:00:00 AM
Firstpage
175
Lastpage
179
Abstract
A novel analog computational network is presented for solving NP-complete constraint satisfaction problems, i.e. job-shop scheduling. In contrast to most neural approaches to combinatorial optimization based on quadratic energy cost function, the authors propose to use linear cost functions. As a result, the network complexity (number of neurons and the number of resistive interconnections) grows only linearly with problem size, and large-scale implementations become possible. The proposed approach is related to the linear programming network described by D.W. Tank and J.J. Hopfield (1985), which also uses a linear cost function for a simple optimization problem. It is shown how to map a difficult constraint-satisfaction problem onto a simple neural net in which the number of neural processors equals the number of subjobs (operations) and the number of interconnections grows linearly with the total number of operations. Simulations show that the authors´ approach produces better solutions than existing neural approaches to job-shop scheduling, i.e. the traveling salesman problem-type Hopfield approach and integer linear programming approach of J.P.S. Foo and Y. Takefuji (1988), in terms of the quality of the solution and the network complexity
Keywords
computational complexity; neural nets; optimisation; scheduling; NP-complete constraint satisfaction problems; analog computational network; job-shop scheduling; linear cost functions; network complexity; neural network; resistive interconnections; Analog computers; Computer networks; Cost function; Integer linear programming; Large-scale systems; Linear programming; Neural networks; Neurons; Processor scheduling; Traveling salesman problems;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.80311
Filename
80311
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