Approach to Job-Shop Scheduling Problem Using Rule Extraction Neural Network Model

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FQ024

Approach to Job-Shop Scheduling Problem Using Rule Extraction Neural Network Model

Dr. A. K. M. Masud
Dr. A. K. M. Masud
Mahmood Al Bashir
Mahmood Al Bashir Bangladesh University of Engineering and Technology
Md. Zahidul Islam
Md. Zahidul Islam University of Dhaka
DOI

Abstract

This thesis focuses on the development of a rule-based scheduler, based on production rules derived from an artificial neural network performing job shop scheduling. This study constructs a hybrid intelligent model utilizing genetic algorithms for optimization and neural networks as learning tools. Genetic algorithms are used for obtaining optimal schedules and the neural network is trained on these schedules. Knowledge is extracted from the trained network. The performance of this extracted rule set is analyzed in scheduling a test set of 3×3 scheduling instances. The capability of the rule-based scheduler in providing near optimal solutions is also discussed in this thesis.

Approach to Job-Shop Scheduling Problem Using Rule Extraction Neural Network Model

This thesis focuses on the development of a rule-based scheduler, based on production rules derived from an artificial neural network performing job shop scheduling. This study constructs a hybrid intelligent model utilizing genetic algorithms for optimization and neural networks as learning tools. Genetic algorithms are used for obtaining optimal schedules and the neural network is trained on these schedules. Knowledge is extracted from the trained network. The performance of this extracted rule set is analyzed in scheduling a test set of 3×3 scheduling instances. The capability of the rule-based scheduler in providing near optimal solutions is also discussed in this thesis.

Dr. A. K. M. Masud
Dr. A. K. M. Masud
Mahmood Al Bashir
Mahmood Al Bashir Bangladesh University of Engineering and Technology
Md. Zahidul Islam
Md. Zahidul Islam University of Dhaka

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Mahmood Al Bashir. 1970. “. Unknown Journal GJCST Volume 11 (GJCST Volume 11 Issue 7): .

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Approach to Job-Shop Scheduling Problem Using Rule Extraction Neural Network Model

Dr. A. K. M. Masud
Dr. A. K. M. Masud
Mahmood Al Bashir
Mahmood Al Bashir Bangladesh University of Engineering and Technology
Md. Zahidul Islam
Md. Zahidul Islam University of Dhaka

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