基于个性化联合强化学习的低碳经济多微网协同优化调度

IF 10.1 1区 工程技术 Q1 ENERGY & FUELS
Ting Yang , Zheming Xu , Shijie Ji , Guoliang Liu , Xinhong Li , Haibo Kong
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引用次数: 0

摘要

互联多微网(MMG)系统的合作优化调度为高效利用大规模可再生能源资源提供了广阔的前景和重要的机遇。这些系统有助于优化能源资源配置,提高运营成本的经济效益。然而,在合作优化调度过程中,异构微电网(MG)实体之间的利益分歧会导致数据共享障碍和隐私泄露问题。此外,多能源耦合关系和高维决策也会使这一过程变得复杂,从而导致收敛困难和能源管理精度下降。此外,新成立的调度中心缺乏运行数据和调度经验,这也阻碍了快速 "冷启动 "调度任务的能力。为填补上述知识空白,本文提出了一种基于聚类的个性化联合多智能体强化学习(C-PFMARL)的 MMG 协同优化调度方法。该方法制定了一种优化的低碳经济调度策略,将电力和碳配额交易纳入多个多发电组系统中。首先,在联合强化学习的隐私保护下,构建了 MMG 的合作训练框架。该框架允许 MMG 基于异构多代理孪生延迟深度确定性策略梯度(HMATD3)训练优化调度模型。该方法通过联合聚合模型梯度参数而非传输隐私数据,实现了 "数据合作而不脱离本地 "的隐私保护效果。其次,以模型中间梯度参数为特征,提出了一种用于组内知识共享的双端动态聚类算法。它采用了基于神经网络分层的个性化联合传输策略,提高了局部优化调度模型最优策略下的收敛速度和调度精度。此外,还针对新建立的 MG 实体制定了 "冷启动 "调度策略,实现了优化调度经验的精确辅助和快速冷启动。最后,我们的案例分析验证了所构建调度模型的有效性和训练收敛性。MMG 系统的总体综合成本降低了 5.78%,碳排放量减少了 8.43%。新建多发电机组的调度冷启动速度提高了 42.83%,优化结果也显示出强劲的经济和低碳效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cooperative optimal dispatch of multi-microgrids for low carbon economy based on personalized federated reinforcement learning
The cooperative optimization dispatch of interconnected multi-microgrid (MMG) systems present broad prospects and significant opportunities for the efficient utilization of large-scale renewable energy resources. These systems facilitate the optimal allocation of energy resources and enhance economic efficiency in operational costs. Nevertheless, divergent interests among heterogeneous microgrid (MG) entities during the cooperative optimization dispatch process lead to obstacles in data sharing and issues with privacy breaches. Additionally, the process is complicated by multi-energy coupling relationships and high-dimensional decision-making, which can result in difficulties achieving convergence and a loss of accuracy in energy management. Furthermore, the lack of operational data and dispatch experience in newly established MGs hinders the ability to rapidly “cold start” dispatch tasks. To fill the above knowledge gap, a cooperative optimization dispatch method for MMG is proposed, which based on personalized federated multi-agent reinforcement learning with clustering (C-PFMARL). This method formulates an optimal low-carbon economic dispatch strategy that incorporates electricity and carbon allowance trading within multiple MG systems. Initially, a cooperative training framework for MMG is constructed under the privacy protection of federated reinforcement learning. This framework allows MMG to train optimization dispatch models based on heterogeneous multi-agent twin delayed deep deterministic policy gradient (HMATD3). With the federated aggregation of model gradient parameters instead of transferring private data, this approach achieves a privacy protection effect of “data cooperation without leaving locality “. Secondly, a dual-ended dynamic clustering algorithm for sharing knowledge within groups is proposed, characterized by model intermediate gradient parameters. It employs a personalized federated transfer strategy based on neural network layering, which enhances the convergence speed and dispatch precision under optimal strategies of the local optimization dispatch model. Moreover, a “cold start” transfer strategy aimed at newly established MG entities is formulated, achieving precise assistance and rapid cold start in optimization dispatch experience. Finally, our case analysis validates the effectiveness and training convergence of the constructed dispatch model. The overall integrated cost of the MMG system has been reduced by 5.78 %, and carbon emissions have decreased by 8.43 %. The dispatch cold-start speed for newly established MGs has improved by 42.83 %, with the optimization results also demonstrating robust economic and low-carbon benefits.
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来源期刊
Applied Energy
Applied Energy 工程技术-工程:化工
CiteScore
21.20
自引率
10.70%
发文量
1830
审稿时长
41 days
期刊介绍: Applied Energy serves as a platform for sharing innovations, research, development, and demonstrations in energy conversion, conservation, and sustainable energy systems. The journal covers topics such as optimal energy resource use, environmental pollutant mitigation, and energy process analysis. It welcomes original papers, review articles, technical notes, and letters to the editor. Authors are encouraged to submit manuscripts that bridge the gap between research, development, and implementation. The journal addresses a wide spectrum of topics, including fossil and renewable energy technologies, energy economics, and environmental impacts. Applied Energy also explores modeling and forecasting, conservation strategies, and the social and economic implications of energy policies, including climate change mitigation. It is complemented by the open-access journal Advances in Applied Energy.
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