A machine learning algorithm for scheduling a burn-in oven problem
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Date
2023
Journal Title
Journal ISSN
Volume Title
Publisher
Inderscience Publishers
Abstract
This study applies artificial neural network (ANN) to achieve more accurate parameter estimations in calculating job-priority-data of jobs and the same is applied in a proposed dispatching rule-based greedy heuristic algorithm (DR-GHA) for efficiently scheduling a burn-in oven (BO) problem. The integration of ANN and DR-GHA is called as a hybrid neural network (HNN) algorithm. Accordingly, this study proposed eight variants of HNN algorithms by proposing eight variants of DR-GHA for scheduling a BO. The series of computational analyses (empirical and statistical) indicated that each of the variants of proposed HNN is significantly enhancing the performance of the respective proposed variants of DR-GHA for scheduling a BO. That is, more accurate parameter estimations in calculating job-priority-data for DR-GHA via back-propagation ANN leads to high-quality schedules w.r.t. total weighted tardiness. Further, proposed HNN variant: HNN-ODD is outperforming relatively with other HNN variants and provides very near optimal/estimated solution. © © 2023 Inderscience Enterprises Ltd.
Description
Keywords
Backpropagation, Job shop scheduling, Neural networks, Optimal systems, Ovens, Parameter estimation, Scheduling algorithms, Semiconductor device manufacture, Dispatching rule-based greedy heuristic algorithm, Dispatching rules, Estimated optimal solution, GHA, Greedy heuristic algorithm, Greedy heuristics, Heuristics algorithm, Hybrid neural networks, Optimal solutions, Rule based, Semiconductor manufacturing, Heuristic algorithms
Citation
International Journal of Industrial and Systems Engineering, 2023, 43, 1, pp. 20-58
