Optimization of the composition of residential buildings in a renewable energy community based on monitored data

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Eva Schito, Lorenzo Taverni, Paolo Conti, Daniele Testi
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Abstract

Energy communities (ECs) are a promising solution to integrate renewable local production with buildings’ systems and services. To exploit renewable energy sources, ECs should be carefully designed, identifying an appropriate mix of prosumers and consumers. In this research, the electrical energy loads of eight dwellings have been monitored for a year. Then, each dwelling is evaluated either as a mere consumer, maintaining its monitored electrical consumption profile as it is, or as a prosumer, thus simulating a photovoltaic system on the roof, sized to provide a given fraction of its energy needs and sharing the surplus with other EC participants. Genetic optimization is employed to seek the optimal mix of consumers and prosumers within the community to optimize the shared energy within the EC. Results show that dwellings with night-time energy requirements are included as prosumers to maximize photovoltaic power sharing during daylight time, and dwellings with regular daily loads are included as consumers.

Abstract Image

根据监测数据优化可再生能源社区住宅楼的构成
能源社区(ECs)是将本地可再生能源生产与建筑系统和服务相结合的一种前景广阔的解决方案。为利用可再生能源,能源社区应精心设计,确定适当的消费者和消费者组合。在这项研究中,对八栋住宅的电能负荷进行了为期一年的监测。然后,对每栋住宅进行评估,要么将其视为单纯的消费者,保持监测到的电力消耗情况不变;要么将其视为准消费者,在屋顶上模拟光伏系统,按一定大小提供其所需的部分能源,并与其他 EC 参与者分享剩余能源。该系统采用遗传优化技术,寻求社区内消费者和准消费者的最佳组合,以优化 EC 内的能源共享。结果表明,将夜间有能源需求的住宅作为准消费者,可在白天最大限度地共享光伏发电,而将每天有固定负荷的住宅作为消费者。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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