主动配电网中储能系统优化调度的高性能深度强化学习环境

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Shengren Hou , Shuyi Gao , Weijie Xia , Edgar Mauricio Salazar Duque , Peter Palensky , Pedro P. Vergara
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引用次数: 0

摘要

深度强化学习(DRL)为优化配电网储能系统(ess)调度提供了一条有前途的途径。本文介绍了一个创新的开源库RL-ADN,它是专门为解决有源配电网中ess的最优调度而设计的。RL-ADN在建模分销网络和ess方面提供了无与伦比的灵活性,适应了广泛的研究目标。RL-ADN的一个突出特点是其基于高斯混合模型和Copula (GMC)函数的数据增强模块,提高了DRL智能体的性能上限,通过增强5年、1年和3个月的数据,其平均性能提升分别达到21.43%、1.08%和2.76%。此外,RL-ADN结合了张量潮流求解器,在不牺牲精度的情况下显著减少了训练过程中潮流计算的计算负担,保持了平均误差不超过0.0001%的电压幅度。RL-ADN的有效性在规模变化的配电网络中得到了证明,表明DRL算法对ESS调度任务的适应性有了显著的性能提高。此外,RL-ADN在训练过程中的计算效率提高了十倍,非常适合大规模网络应用。该库为配电网络中基于DRL的ess调度树立了新的标杆,为DRL在配电网络运行中的应用奠定了坚实的基础。RL-ADN可在https://github.com/ShengrenHou/RL-ADN和https://github.com/distributionnetworksTUDelft/RL-ADN上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

RL-ADN: A high-performance Deep Reinforcement Learning environment for optimal Energy Storage Systems dispatch in active distribution networks

RL-ADN: A high-performance Deep Reinforcement Learning environment for optimal Energy Storage Systems dispatch in active distribution networks
Deep Reinforcement Learning (DRL) presents a promising avenue for optimizing Energy Storage Systems (ESSs) dispatch in distribution networks. This paper introduces RL-ADN, an innovative open-source library specifically designed for solving the optimal ESSs dispatch in active distribution networks. RL-ADN offers unparalleled flexibility in modeling distribution networks, and ESSs, accommodating a wide range of research goals. A standout feature of RL-ADN is its data augmentation module, based on Gaussian Mixture Model and Copula (GMC) functions, which elevates the performance ceiling of DRL agents, achieving an average performance improvement of 21.43%, 1.08%, 2.76%, by augmenting five-year, one-year and three-month data, respectively. Additionally, RL-ADN incorporates the Tensor Power Flow solver, significantly reducing the computational burden of power flow calculations during training without sacrificing accuracy, maintaining voltage magnitude with an average error not exceeding 0.0001%. The effectiveness of RL-ADN is demonstrated using distribution networks with size varying, showing marked performance improvements in the adaptability of DRL algorithms for ESS dispatch tasks. Furthermore, RL-ADN achieves a tenfold increase in computational efficiency during training, making it highly suitable for large-scale network applications. The library sets a new benchmark in DRL-based ESSs dispatch in distribution networks and it is poised to advance DRL applications in distribution network operations significantly. RL-ADN is available at: https://github.com/ShengrenHou/RL-ADN and https://github.com/distributionnetworksTUDelft/RL-ADN.
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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