Data-driven energy management of virtual power plants: A review

IF 13 Q1 ENERGY & FUELS Advances in Applied Energy Pub Date : 2024-03-05 DOI:10.1016/j.adapen.2024.100170
Guangchun Ruan , Dawei Qiu , S. Sivaranjani , Ahmed S.A. Awad , Goran Strbac
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Abstract

A virtual power plant (VPP) refers to an active aggregator of heterogeneous distributed energy resources (DERs), which creates a promising pathway to expand renewable energy and demand-side electrification for deep decarbonization. The VPP market is projected to have a significant growth potential, with the global investment surging from $6.47 billion in 2022 to $16.90 billion by 2030. Up to now, VPPs still face technical challenges in dealing with the inherent uncertainty of DERs, and data emerge as a promising and essential resource to handle this issue. This paper makes the first effort to review the development of VPP technologies from a data-centric perspective, and then analyze the major role of data within every decision phase of VPPs. We examine the VPP energy management through a data lifecycle lens, and extensively survey the progress in data creation, data communication, data-driven decision support, data sharing and privacy, as well as technical solutions stemming from reinforcement learning, peer-to-peer sharing, blockchain, and market participation. In addition, we offer a unique overview of open data and recent real-world projects around the world to showcase the latest VPP practices. We finally discuss the major challenges and future opportunities in detail, with a focus on topics such as public benchmarks, internet of things, 5G, explainable artificial intelligence, and federated learning. We highlight the need for technical advances in data management and support systems for the growing scale of future VPP systems, and suggest VPPs delivering more ancillary grid services in the future.

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虚拟发电厂的数据驱动能源管理:综述
虚拟发电厂(VPP)是指异构分布式能源资源(DER)的主动聚合器,它为扩大可再生能源和需求侧电气化以实现深度脱碳创造了一条前景广阔的途径。预计 VPP 市场具有巨大的增长潜力,全球投资将从 2022 年的 64.7 亿美元激增至 2030 年的 169.0 亿美元。迄今为止,VPP 在应对 DER 固有的不确定性方面仍面临技术挑战,而数据则是解决这一问题的大有可为的重要资源。本文首次从以数据为中心的角度回顾了 VPP 技术的发展,然后分析了数据在 VPP 各决策阶段中的重要作用。我们从数据生命周期的视角审视 VPP 能源管理,广泛考察了数据创建、数据通信、数据驱动的决策支持、数据共享和隐私等方面的进展,以及源自强化学习、点对点共享、区块链和市场参与的技术解决方案。此外,我们还对世界各地的开放数据和最近的实际项目进行了独特的概述,以展示最新的 VPP 实践。最后,我们详细讨论了主要挑战和未来机遇,重点关注公共基准、物联网、5G、可解释人工智能和联合学习等主题。我们强调了数据管理和支持系统技术进步的必要性,以应对未来 VPP 系统规模的不断扩大,并建议 VPP 在未来提供更多辅助电网服务。
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
Advances in Applied Energy
Advances in Applied Energy Energy-General Energy
CiteScore
23.90
自引率
0.00%
发文量
36
审稿时长
21 days
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