改进的深度强化学习方法:散货码头泊位和堆场调度优化案例研究

T. Ai, L. Huang, R.J. Song, H.F. Huang, F. Jiao, W.G. Ma
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引用次数: 0

摘要

港口生产运营的基石是船舶装卸,因此需要合理分配各种生产资源,以提高装卸作业的效率。本文介绍了一种基于深度强化学习的优化方法,用于调度散货码头的泊位和堆场。通过分析散货港口进口业务中的调度流程和卸货操作,建立了马尔可夫决策过程模型。研究提出了一种名为 PS-D3QN(基于优先经验重放和软最大策略的决斗双深度 Q 网络)的增强型强化学习算法,该算法融合了双深度 Q 网络和决斗深度 Q 网络算法的优点。本文利用实际港口数据对所提出的解决方案进行了评估,并以本文提到的其他两种算法为基准进行了比较。数值实验和对比分析证明,PS-D3QN 算法显著提高了散货码头泊位和堆场调度的效率,降低了港口运营成本,并消除了人工调度带来的误差。本文介绍的算法经过适当调整后,可用于解决生产和制造领域的调度问题,包括作业车间调度问题及其扩展问题。
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An improved deep reinforcement learning approach: A case study for optimisation of berth and yard scheduling for bulk cargo terminal
The cornerstone of port production operations is ship handling, necessitating judicious allocation of diverse production resources to enhance the efficiency of loading and unloading operations. This paper introduces an optimisation method based on deep reinforcement learning to schedule berths and yards at a bulk cargo terminal. A Markov Decision Process model is formulated by analysing scheduling processes and unloading operations in bulk port imports business. The study presents an enhanced reinforcement learning algorithm called PS-D3QN (Prioritised Experience Replay and Softmax strategy-based Dueling Double Deep Q-Network), amalgamating the strengths of the Double DQN and Dueling DQN algorithms. The proposed solution is evaluated using actual port data and benchmarked against the other two algorithms mentioned in this paper. The numerical experiments and comparative analysis substantiate that the PS-D3QN algorithm significantly enhances the efficiency of berth and yard scheduling in bulk terminals, reduces the cost of port operation, and eliminates errors associated with manual scheduling. The algorithm presented in this paper can be tailored to address scheduling issues in the fields of production and manufacturing with suitable adjustments, including problems like the job shop scheduling problem and its extensions.
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