JOURNAL ARTICLE

An improved deep reinforcement learning-based scheduling approach for dynamic task scheduling in cloud manufacturing

Xiaohan WangLin ZhangYongkui LiuYuanjun Laili

Year: 2023 Journal:   International Journal of Production Research Vol: 62 (11)Pages: 4014-4030   Publisher: Taylor & Francis

Abstract

Dynamic task scheduling problem in cloud manufacturing (CMfg) is always challenging because of changing manufacturing requirements and services. To make instant decisions for task requirements, deep reinforcement learning-based (DRL-based) methods have been broadly applied to learn the scheduling policies of service providers. However, the current DRL-based scheduling methods struggle to fine-tune a pre-trained policy effectively. The resulting training from scratch takes more time and may easily overfit the environment. Additionally, most DRL-based methods with uneven action distribution and inefficient output masks largely reduce the training efficiency, thus degrading the solution quality. To this end, this paper proposes an improved DRL-based approach for dynamic task scheduling in CMfg. First, the paper uncovers the causes behind the inadequate fine-tuning ability and low training efficiency observed in existing DRL-based scheduling methods. Subsequently, a novel approach is proposed to address these issues by updating the scheduling policy while considering the distribution distance between the pre-training dataset and the in-training policy. Uncertainty weights are introduced to the loss function, and the output mask is extended to the updating procedures. Numerical experiments on thirty actual scheduling instances validate that the solution quality and generalization of the proposed approach surpass other DRL-based methods at most by 32.8% and 28.6%, respectively. Additionally, our method can effectively fine-tune a pre-trained scheduling policy, resulting in an average reward increase of up to 23.8%.

Keywords:
Reinforcement learning Computer science Scheduling (production processes) Overfitting Dynamic priority scheduling Two-level scheduling Job shop scheduling Artificial intelligence Quality of service Engineering Artificial neural network Operations management Embedded system Computer network

Metrics

20
Cited By
5.71
FWCI (Field Weighted Citation Impact)
41
Refs
0.94
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Scheduling and Optimization Algorithms
Physical Sciences →  Engineering →  Industrial and Manufacturing Engineering
Digital Transformation in Industry
Physical Sciences →  Engineering →  Industrial and Manufacturing Engineering
IoT and Edge/Fog Computing
Physical Sciences →  Computer Science →  Computer Networks and Communications
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