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Cooperative Coevolution Hierarchical Self-Configuring Algorithm for Solving the Scheduling Problem

Authors: Semenkina O.E., Stanovov V.V, Popov E.A. Published: 22.01.2024
Published in issue: #4(145)/2023  
DOI: 10.18698/0236-3933-2023-4-131-148

 
Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control, and Information Processing  
Keywords: scheduling problem, operational production planning, self-configuration method, cooperative coevolution

Abstract

To solve the problem of scheduling during operational production planning, the paper proposes to introduce a cooperative coevolution hierarchical self-configuring method based on the combinatorial and material bionic optimization algorithms. Combinatorial optimization was performed using the ant colony algorithm and the genetic algorithm, as well as their self-configuring versions. Similarly, classical and self-configuring well-known versions of the differential evolution algorithm and of the flocking and material genetic algorithms were used in material optimization. For comparison with the classical combinatorial algorithms, the smart drop algorithm and the Lin --- Kernighan heuristic were included. A corresponding hierarchical formulation of the scheduling problem was proposed, where at the top level, the combinatorial problem of finding the batch launching order was set, and the attached task consisted in finding the equipment priorities to increase the problem formulation flexibility while maintaining the approach universality. Three problem formulations were also considered. They included finding the batch launching order, selecting the operation priority order and finding material values of the operation priorities. In addition, production simulation model was introduced to include necessary nuances of the technological process. Effectiveness of using this methodology was demonstrated in comparison with other problem formulations and classical algorithms of combinatorial and material optimization. The proposed formulation of the problem provides significant possibilities for application in complex industries with technological processes requiring non-standard methods of description

The work was supported by the Ministry of Science and Higher Education of the Russian Federation (project no. FEFE-202300-0004)

Please cite this article in English as:

Semenkina O.E., Stanovov V.V., Popov E.A. Cooperative coevolution hierarchical self-сonfiguring algorithm for solving the scheduling problem. Herald of the Bauman Moscow State Technical University, Series Instrument Engineering, 2023, no. 4 (145), pp. 131--148 (in Russ.). DOI: https://doi.org/10.18698/0236-3933-2023-4-131-148

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