基于进化计算的局部能源市场最优竞价

F. Lezama, J. Soares, Z. Vale
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引用次数: 14

摘要

分布式资源和可再生能源在配电网络中的应用越来越多,这使得人们对能源供应链较低层次的本地能源交易产生了浓厚的兴趣。预计当地能源市场(LM)将在保证发电和消费之间的平衡方面发挥关键作用,并有助于减少碳排放。此外,LMs旨在增加小型终端用户对能源交易的参与,为可交易的能源系统奠定基础。在这项工作中,我们探索了使用进化算法(EAs)来解决在LM中交易能量时出现的双层优化问题。我们在一个现实的案例研究中比较了九个代理在前一天LM中交易能源的不同ea的表现。结果表明,ea可以提供所有代理商都能提高其利润的解决方案。在利润方面,LM可以为市场参与者带来优势,从而提高可再生资源的可容忍渗透率,促进能源转型。
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Optimal Bidding in Local Energy Markets using Evolutionary Computation
Increased adoption of distributed resources and renewables in distribution networks has led to a significant interest in local energy transactions at lower levels of the energy supply chain. Local energy markets (LM) are expected to play a crucial part in guaranteeing the balance between generation and consumption and contribute to the reduction of carbon emissions. Besides, LMs aim at increasing the participation of small end-users in energy transactions, setting the stage for transactive energy systems. In this work, we explore the use of evolutionary algorithms (EAs) to solve a bi-level optimization problem that arises when trading energy in an LM. We compare the performance of different EAs under a realistic case study with nine agents trading energy in the day-ahead LM. Results suggest that EAs can provide solutions in which all agents can improve their profits. It is shown the advantages in terms of profits that an LM can bring to market participants, thereby increasing the tolerable penetration of renewable resources and facilitating the energy transition.
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