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A machine learning algorithm for scheduling a burn-in oven problem

Author

Listed:
  • M. Mathirajan
  • Reddy Sujan
  • M. Vimala Rani
  • Pujara Dhaval

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.

Suggested Citation

  • M. Mathirajan & Reddy Sujan & M. Vimala Rani & Pujara Dhaval, 2023. "A machine learning algorithm for scheduling a burn-in oven problem," International Journal of Industrial and Systems Engineering, Inderscience Enterprises Ltd, vol. 43(1), pages 20-58.
  • Handle: RePEc:ids:ijisen:v:43:y:2023:i:1:p:20-58
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