Transaction selection policy in tier-to-tier SBSRS by using Deep Q-Learning
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Date
2023
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Taylor and Francis Ltd.
Open Access Color
HYBRID
Green Open Access
Yes
OpenAIRE Downloads
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Publicly Funded
No
Abstract
This paper studies a Deep Q-Learning (DQL) method for transaction sequencing problems in an automated warehousing system Shuttle-based Storage and Retrieval System (SBSRS) in which shuttles can move between tiers flexibly. Here the system is referred to as tier-to-tier SBSRS (t-SBSRS) developed as an alternative design to tier-captive SBSRS (c-SBSRS). By the flexible travel of shuttles between tiers in t-SBSRS the number of shuttles in the system may be reduced compared to its simulant c-SBSRS design. The flexible travel of shuttles makes the operation decisions more complex in that system motivating us to explore whether integration of a machine learning approach would help to improve the system performance. We apply the DQL method for the transaction selection of shuttles in the system to attain process time advantage. The outcomes of the DQN are confronted with the well-applied heuristic approaches: first-come-first-serve (FIFO) and shortest process time (SPT) rules under different racking and numbers of shuttles scenarios. The results show that DQL outperforms the FIFO and SPT rules promising for the future of smart industry applications. Especially compared to the well-applied SPT rule in industries DQL improves the average cycle time per transaction by roughly 43% on average. © 2023 Elsevier B.V. All rights reserved.
Description
Keywords
Agent-based Simulation, Automated Warehousing, Deep Reinforcement Learning, Dqn, Logistics, Sbsrs, Deep Learning, Heuristic Methods, Warehouses, Agent Based Simulation, Automated Warehousing, Deep Reinforcement Learning, Dqn, Q-learning, Reinforcement Learnings, Retrieval Systems, Shuttle-based Storage And Retrieval System, Storage And Retrievals, Storage Systems, Reinforcement Learning, Deep learning, Heuristic methods, Warehouses, Agent based simulation, Automated warehousing, Deep reinforcement learning, DQN, Q-learning, Reinforcement learnings, Retrieval systems, Shuttle-based storage and retrieval system, Storage and retrievals, Storage systems, Reinforcement learning, DQN, Agent-Based Simulation, Logistics, Deep Reinforcement Learning, Automated Warehousing, SBSRS, Automated Warehousing, deep reinforcement learning, Deep Reinforcement Learning, SBSRS, logistics, 006, Logistics, Agent-based Simulation, automated warehousing, DQN, agent-based simulation
Fields of Science
0209 industrial biotechnology, 0211 other engineering and technologies, 02 engineering and technology
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
14
Source
International Journal of Production Research
Volume
61
Issue
21
Start Page
7353
End Page
7366
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Citations
CrossRef : 4
Scopus : 19
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Mendeley Readers : 26
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