Distributed optimization for joint peer-to-peer electricity and carbon trading among multi-energy microgrids considering renewable generation uncertainty

Hui Hou, Zhuo Wang, Bo Zhao, Leiqi Zhang, Ying Shi, Changjun Xie, ZhaoYang Dong, Keren Yu
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Abstract

The increasing penetration of renewable energy and the further coupling of the electricity and carbon markets have hindered the realization of efficient and low-carbon transformation processes in new power systems. This study addresses the optimization problems of joint peer-to-peer (P2P) electricity and carbon trading in multi-energy microgrids (MEMGs), taking into account the risks associated with renewable generation in a distributed manner. First, a coordinated operation model is developed to describe the joint P2P electricity and carbon trading issues among MEMGs, aiming to minimize operating costs, mitigate potential risk losses, and reduce renewable energy wastage. Second, the conditional value-at-risk technique, paired with stochastic programming, is employed to quantify potential risk losses arising from uncertainties. Finally, a distributed optimization approach is developed based on the alternating direction method of multipliers to maintain the privacy and independence of decision-making in individual MEMGs. During the trading processes, the Lagrangian multipliers are used as price signals to ensure fairness in optimal trading schemes among MEMGs. Moreover, a parallel solution mechanism is implemented to improve overall operational efficiency with minimal calculation expenditure. The simulation results demonstrate that the proposed method can reduce operation costs and carbon emissions while also preventing a significant amount of renewable energy abandonment.

Abstract Image

考虑到可再生能源发电的不确定性,在多能源微电网间进行点对点电力和碳交易的分布式优化
可再生能源渗透率的不断提高以及电力和碳市场的进一步耦合,阻碍了新电力系统实现高效、低碳的转型过程。考虑到分布式可再生能源发电的相关风险,本研究探讨了多能源微电网(MEMGs)中点对点(P2P)电力和碳联合交易的优化问题。首先,建立了一个协调运行模型来描述多能源微电网(MEMGs)中的 P2P 联合电力和碳交易问题,旨在最大限度地降低运营成本、减轻潜在风险损失并减少可再生能源浪费。其次,采用条件风险值技术与随机编程相结合,量化不确定性带来的潜在风险损失。最后,基于乘数交替法开发了一种分布式优化方法,以保持单个 MEMG 决策的私密性和独立性。在交易过程中,拉格朗日乘数被用作价格信号,以确保 MEMG 之间最优交易方案的公平性。此外,还实施了并行求解机制,以最小的计算支出提高整体运行效率。模拟结果表明,所提出的方法可以降低运营成本和碳排放,同时还能防止大量可再生能源被废弃。
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