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Low-Carbon Flexible Job Shop Scheduling Problem Based on Deep Reinforcement Learning

Yimin Tang, Lihong Shen, Shuguang Han

2024Sustainability20 citationsDOIOpen Access PDF

Abstract

As the focus on environmental sustainability sharpens, the significance of low-carbon manufacturing and energy conservation continues to rise. While traditional flexible job shop scheduling strategies are primarily concerned with minimizing completion times, they often overlook the energy consumption of machines. To address this gap, this paper introduces a novel solution utilizing deep reinforcement learning. The study begins by defining the Low-carbon Flexible Job Shop Scheduling problem (LC-FJSP) and constructing a disjunctive graph model. A sophisticated representation, based on the Markov Decision Process (MDP), incorporates a low-carbon graph attention network featuring multi-head attention modules and graph pooling techniques, aimed at boosting the model’s generalization capabilities. Additionally, Bayesian optimization is employed to enhance the solution refinement process, and the method is benchmarked against conventional models. The empirical results indicate that our algorithm markedly enhances scheduling efficiency by 5% to 12% and reduces carbon emissions by 3% to 8%. This work not only contributes new insights and methods to the realm of low-carbon manufacturing and green production but also underscores its considerable theoretical and practical implications.

Topics & Concepts

Reinforcement learningReinforcementJob shopJob shop schedulingScheduling (production processes)Computer scienceIndustrial engineeringFlow shop schedulingArtificial intelligenceOperations managementEngineeringStructural engineeringScheduleOperating systemScheduling and Optimization AlgorithmsAdvanced Manufacturing and Logistics OptimizationOptimization and Search Problems