为电网互动高效商业建筑定义和应用电力需求灵活性基准指标框架

IF 13 Q1 ENERGY & FUELS Advances in Applied Energy Pub Date : 2022-12-01 DOI:10.1016/j.adapen.2022.100107
Jingjing Liu , Rongxin Yin , Lili Yu , Mary Ann Piette , Marco Pritoni , Armando Casillas , Jiarong Xie , Tianzhen Hong , Monica Neukomm , Peter Schwartz
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引用次数: 9

摘要

建筑需求灵活性(DF)的研究近年来引起了人们的关注。为了将DF构建为可预测的网格资源,我们必须建立对资源大小、性能可变性和基于大型经验数据集的可预测性的定量理解。研究人员提出了各种理论指标来衡量这种表现。一些指标已经应用于模拟结果,但大多数都没有探索实际建筑应用中的复杂性。个别需求响应现场研究中使用了一些实用指标,但仅凭这些指标无法完成对不同建筑群体进行DF基准测试的工作。电网的地理多样性和不断变化的性质给比较在不同条件下测量的建筑DF性能(即基准DF)带来了挑战。为了解决这一挑战,提出了一种新颖的DF基准测试框架,重点关注减载和转移;基础是一组简单的、经过验证的单事件度量,其中包含描述事件条件的属性。这些特性支持在不同维度上进行基准测试和可视化,以确定表示这些属性如何影响DF的趋势。为了验证其可行性和可扩展性,将DF框架应用于11个办公楼和121个大型零售建筑的需求响应参与数据的两个案例研究。这些示例提供了使用构建级别基准测试和聚合的途径,以提取构建DF的大小、一致性和影响因素的见解。已经为网格和建筑利益相关者确定了框架的潜在应用和实际价值。
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Defining and applying an electricity demand flexibility benchmarking metrics framework for grid-interactive efficient commercial buildings

Building demand flexibility (DF) research has recently gained attention. To unlock building DF as a predictable grid resource, we must establish a quantitative understanding of the resource size, performance variability, and predictability based on large empirical datasets. Researchers have proposed various sets of theoretical metrics to measure this performance. Some metrics have been applied to simulation results, but most fall short of exploring the complexities in real building applications. There are practical metrics used in individual demand response field studies but they alone cannot fulfil the job of DF benchmarking across a diverse group of buildings. The electrical grid's geographically diverse and changing nature presents challenges to comparing building DF performance measured under different conditions (i.e., benchmarking DF). To address this challenge, a novel DF benchmarking framework focused on load shedding and shifting is presented; the foundation is a set of simple, proven single-event metrics with attributes describing event conditions. These enable benchmarking and visualization in different dimensions for identifying trends that represent how these attributes influence DF. To test its feasibility and scalability, the DF framework was applied to two case studies of 11 office buildings and 121 big-box retail buildings with demand response participation data. These examples provided a pathway for using both building level benchmarking and aggregation to extract insights into building DF about magnitude, consistency, and influential factors. Potential applications of the framework and real-world values have been identified for grid and building stakeholders.

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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
期刊最新文献
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