用于多路联网产业链能源管理的分层时空图注意强化学习

IF 6.6 1区 计算机科学 Q1 Multidisciplinary
Yuanshuang Jiang;Kai Di;Xingyu Wu;Zhongjian Hu;Fulin Chen;Pan Li;Yichuan Jiang
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引用次数: 0

摘要

需求响应已成为企业降低产业链生产成本的重要手段。同时,当前产业链结构也日趋复杂,形成了产业链多元化网络化的新特点。需求响应中的实时电价波动通过这些网络层内部和网络层之间的耦合和级联关系传播,对整体能源管理成本产生负面影响。然而,现有的基于强化学习的需求响应方法通常只关注个体,而没有考虑动态因素对网络内和网络间关系的影响。针对这一问题,提出了一种适用于多路网络产业链需求响应的分层时空图注意(LTSGA)强化学习算法。该算法首先利用长短期记忆(LSTM)学习电价的动态时间特征进行决策。然后,LTSGA结合分层空间图注意模型来评价动态因素对复杂多元网络化产业链结构的影响。实验表明,所提出的LTSGA方法有效地表征了动态因素对多路产业链内和网络间关系的影响,与现有的先进算法相比,提高了收敛速度和算法性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Layered Temporal Spatial Graph Attention Reinforcement Learning for Multiplex Networked Industrial Chains Energy Management
Demand response has recently become an essential means for businesses to reduce production costs in industrial chains. Meanwhile, the current industrial chain structure has also become increasingly complex, forming new characteristics of multiplex networked industrial chains. Fluctuations in real-time electricity prices in demand response propagate through the coupling and cascading relationships within and among these network layers, resulting in negative impacts on the overall energy management cost. However, existing demand response methods based on reinforcement learning typically focus only on individual agents without considering the influence of dynamic factors on intra and inter-network relationships. This paper proposes a Layered Temporal Spatial Graph Attention (LTSGA) reinforcement learning algorithm suitable for demand response in multiplex networked industrial chains to address this issue. The algorithm first uses Long Short-Term Memory (LSTM) to learn the dynamic temporal characteristics of electricity prices for decision-making. Then, LTSGA incorporates a layered spatial graph attention model to evaluate the impact of dynamic factors on the complex multiplex networked industrial chain structure. Experiments demonstrate that the proposed LTSGA approach effectively characterizes the influence of dynamic factors on intra- and inter-network relationships within the multiplex industrial chain, enhancing convergence speed and algorithm performance compared with existing state-of-the-art algorithms.
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来源期刊
Tsinghua Science and Technology
Tsinghua Science and Technology COMPUTER SCIENCE, INFORMATION SYSTEMSCOMPU-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
10.20
自引率
10.60%
发文量
2340
期刊介绍: Tsinghua Science and Technology (Tsinghua Sci Technol) started publication in 1996. It is an international academic journal sponsored by Tsinghua University and is published bimonthly. This journal aims at presenting the up-to-date scientific achievements in computer science, electronic engineering, and other IT fields. Contributions all over the world are welcome.
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