基于深度强化学习的记忆算法,用于多AGV能源感知灵活作业车间调度

IF 6.7 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Fangyong Zhang , Rui Li , Wenyin Gong
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引用次数: 0

摘要

在车间作业中整合制造和物流调度问题已引起广泛关注。与此同时,人们对全球变暖的担忧不断升级,推动绿色制造成为一项重要挑战。值得注意的是,该领域的现有研究缺乏将绿色指标纳入制造和物流集成调度框架的内容。此外,关键区块的确定仍然是一个具有挑战性的方面,缺乏对建立在关键区块基础上的邻域结构的考虑。此外,之前的研究主要依赖 Q-learning 来增强进化算法,这种策略因其有限的学习能力而备受诟病。因此,本研究针对这些不足,提出了一种使用多自主导航车辆的高能效灵活作业车间调度(EFJS-AGV)。其主要目标是同时最小化作业间隔和总能耗。为解决这一 NP 难问题,提出了一种基于深度 Q 网络的记忆算法。所设计的算法具有几个显著特点。首先,采用强度帕累托进化算法(SPEA2)快速探索目标空间,提高收敛性和多样性。其次,设计了基于关键路径和区块的四种不同的局部搜索算子,以有效地减少时间跨度。第三,利用深度强化学习来理解解决方案和行动选择之间的相互作用。这种理解有助于进化算法选择最优算子。通过与五种最先进算法的对比分析,对所提算法的功效进行了严格评估。评估在包含 20 个实例的两个基准数据集上进行。数值实验结果证实了所提改进和算法的有效性。此外,所提出的算法在解决 EFJS-AGV 方面的卓越性能也证明了其稳健性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep reinforcement learning-based memetic algorithm for energy-aware flexible job shop scheduling with multi-AGV

The integration of manufacturing and logistics scheduling issues in shop operations has garnered considerable attention. Concurrently, escalating concerns about global warming have propelled the emergence of green manufacturing as a critical challenge. Notably, extant research in this domain lacks an incorporation of green metrics within the framework of manufacturing and logistics-integrated scheduling. Furthermore, the determination of a critical block remains a challenging aspect, with an absence of consideration for a neighborhood structure founded on the critical block. Moreover, prior endeavors have predominantly relied on Q-learning to augment evolutionary algorithms, a strategy criticized for its limited learning capacity. Consequently, this study addresses these gaps by presenting an energy-efficient flexible job Shop scheduling with multi-autonomous guided vehicles (EFJS-AGV). The primary objectives are the simultaneous minimization of makespan and total energy consumption. To tackle this NP-hard problem, a deep Q-network-based memetic algorithm is proposed. The devised algorithm incorporates several distinctive features. Firstly, the strength Pareto evolutionary algorithm (SPEA2) is employed to swiftly explore the objective space, enhancing convergence and diversity. Secondly, four distinct local search operators based on critical paths and blocks are devised to efficiently reduce makespan. Thirdly, deep reinforcement learning is harnessed to understand the interplay between solutions and action selection. This understanding aids the evolutionary algorithm in selecting the most optimal operator. The efficacy of the proposed algorithm is rigorously evaluated through a comparative analysis with five state-of-the-art algorithms. The assessment is conducted on two benchmark datasets encompassing 20 instances. The numerical experimental results affirm the effectiveness of the proposed enhancements and algorithms. Furthermore, the superior performance of the proposed algorithm in addressing the EFJS-AGV substantiates its robustness and applicability.

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来源期刊
Computers & Industrial Engineering
Computers & Industrial Engineering 工程技术-工程:工业
CiteScore
12.70
自引率
12.70%
发文量
794
审稿时长
10.6 months
期刊介绍: Computers & Industrial Engineering (CAIE) is dedicated to researchers, educators, and practitioners in industrial engineering and related fields. Pioneering the integration of computers in research, education, and practice, industrial engineering has evolved to make computers and electronic communication integral to its domain. CAIE publishes original contributions focusing on the development of novel computerized methodologies to address industrial engineering problems. It also highlights the applications of these methodologies to issues within the broader industrial engineering and associated communities. The journal actively encourages submissions that push the boundaries of fundamental theories and concepts in industrial engineering techniques.
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