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To reduce maximum tardiness by Seru Production: model, cooperative algorithm combining reinforcement learning and insights

Guanghui Fu, Yang Yu, Wei Sun, Ikou Kaku

2022International Journal of Industrial Engineering Computations12 citationsDOIOpen Access PDF

Abstract

The maximum tardiness reflects the worst level of service associated with customer needs; thus, the principle that seru production reduces the maximum tardiness is investigated, and a model to minimize the maximum tardiness of the seru production system is established. In order to obtain the exact solution, the non-linear seru production model with minimizing the maximum tardiness is split into a seru formation model and a linear seru scheduling model. We propose an efficient cooperative algorithm using a genetic algorithm and an innovative reinforcement learning algorithm (CAGARL) for large-scale problems. Specifically, the GA is designed for the seru formation problem. Moreover, the QL-seru algorithm (QLSA) is designed for the seru scheduling problem by combining the features of meta-heuristics and reinforcement learning. In the QLSA, we design an innovative QL-seru table and two state trimming rules to save computational time. After extensive experiments, compared with the previous algorithm, CAGARL improved by an average of 56.6%. Finally, several managerial insights on reducing maximum tardiness are proposed.

Topics & Concepts

TardinessHeuristicsComputer scienceReinforcement learningAlgorithmMathematical optimizationTrimmingScheduling (production processes)MathematicsJob shop schedulingArtificial intelligenceScheduleOperating systemHealthcare Operations and Scheduling Optimization