Analysis of approaches to integrating microgrids into energy communities

E. V. Popova, N. V. Tomin
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Abstract

In this article, we set out to identify and analyze the key features of aggregating microgrids into energy communities, with a focus on the predominance of industrial or residential loads. Research methods included a literature review and meta-analysis in the field of planning, modelling and management of microenergy systems and their communities. In addition, a methodological approach combining multi-criteria decision-making methods and artificial intelligence was used. The efficiency of the approach was demonstrated by the establishment of two types of energy communities for remote settlements on the Sea of Japan coast, which integrated residential and industrial loads. The “Autonomous Operator” model, which involved a two-level optimization and reinforcement learning algorithm based on Monte Carlo tree search, was tested in order to determine the optimal economic management of operation modes of the potential energy community. At the lower level, the problem of finding market equilibrium was solved by minimizing the function of total operating costs. At the upper level, the management strategy that provides the optimal profit distribution among the community members was selected. Two scenarios of microgrid integration and operation in an energy community were studied: industrial and public types. The research demonstrated that operating settlements as energy communities is a more economically and ecologically advantageous approach than operating them individually. The results indicated that the levelized cost of electricity (LCOE) decreased more significantly when combining settlements in an industrial-type energy community (from 22 rub/kWh to 6 rub/kWh) compared to a public-type community (from 22 rub/kWh to 9 rub/kWh). The analysis of the above characteristics of different types of energy communities can help designers to determine the possibilities, features and consequences of aggregating microgrids of different types under various territorial and climatic conditions.
分析将微电网纳入能源社区的方法
在这篇文章中,我们着手确定和分析将微电网汇聚成能源社区的关键特征,重点关注工业或住宅负载的主导地位。研究方法包括微能源系统及其社区的规划、建模和管理领域的文献综述和荟萃分析。此外,还采用了多标准决策方法和人工智能相结合的方法。通过为日本海沿岸的偏远居民点建立两种类型的能源社区,将居民和工业负荷整合在一起,证明了该方法的效率。为了确定潜在能源社区运行模式的最佳经济管理,测试了 "自主经营者 "模型,该模型涉及基于蒙特卡洛树搜索的两级优化和强化学习算法。在下层,通过最小化总运营成本函数来解决寻找市场平衡的问题。在上层,选择在社区成员之间提供最佳利润分配的管理策略。研究了能源社区微电网集成和运营的两种情况:工业型和公共型。研究表明,将居民点作为能源社区运营比单独运营更具经济和生态优势。研究结果表明,与公共型社区(从 22 卢布/千瓦时降至 9 卢布/千瓦时)相比,在工业型能源社区中合并居民点时,平准化电力成本(LCOE)下降更为明显(从 22 卢布/千瓦时降至 6 卢布/千瓦时)。对不同类型能源小区的上述特点进行分析,有助于设计人员确定在不同地域和气候条件下将不同类型的微电网聚集在一起的可能性、特点和后果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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