Genetic algorithm and neural network hybrid approach for job-shop scheduling

Date

1998

Advisors

Journal Title

Journal ISSN

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DOI

Volume Title

Publisher

ACTA Press

Type

Conference

Peer reviewed

Yes

Abstract

This paper proposes a genetic algorithm (GA) and constraint satisfaction adaptive neural network (CSANN) hybrid approach for job-shop scheduling problems. In the hybrid approach, GA is used to iterate for searching optimal solutions, CSANN is used to obtain feasible solutions during the iteration of genetic algorithm. Simulations have shown the valid performance of the proposed hybrid approach for job-shop scheduling with respect to the quality of solutions and the speed of calculation.

Description

Keywords

Job-shop scheduling, Genetic algorithm, Neural network, Constraint satisfaction

Citation

Zhao, K., Yang, S. and Wang, D. (1998) Genetic algorithm and neural network hybrid approach for job-shop scheduling. Proceedings of the IASTED Int. Conf. on Applied Modelling and Simulation (AMS'98), pp. 110-114

Rights

Research Institute