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Data-Driven, Multi-metric, and Time-Varying (DMT) Building Energy Benchmarking Using Smart Meter Data

机译:数据驱动,多度量和时变(DMT)使用智能仪表数据构建能量基准测试

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New and emerging data streams, from public databases to smart meter infrastructure, contain valuable information that presents an opportunity to develop more robust data-driven models for benchmarking energy use in buildings. In this paper, we propose a new Data-driven, Multi-metric, and Time-varying (DMT) energy benchmarking framework that utilizes these new data streams to benchmark building energy use across multiple metrics at the daily time scale. High fidelity data from smart meters enables the DMT benchmarking framework to produce daily benchmarking scores and use daily weather data to understand seasonally adjusted performance. Intra-day building efficiency is also investigated by benchmarking buildings across several metrics (e.g., total energy usage, operational energy usage, non-operational energy usage) thereby enabling deeper insights into building operations than traditional yearly benchmarking models. By using quantile regression modeling, the DMT framework can differentiate and understand the main drivers of energy consumption between low and high performing buildings and between building operational states. To illustrate the insights that can be gleaned from the proposed DMT framework, we apply the framework to understand building performance for over 500 schools throughout the state of California. The DMT framework provided insights into how various drivers impacted energy usage for both high and low performing buildings, and results indicated that schools had consistent drivers of energy usage. Overall the DMT framework was designed to be highly interpretable such that it could help bridge the gap between data science and engineering methods thus enabling better decision-making in respect to energy efficiency.
机译:从公共数据库到智能仪表基础架构的新和新兴数据流包含有价值的信息,这些信息提供了开发更强大的数据驱动模型,以便在建筑物中使用能源使用的基准。在本文中,我们提出了一种新的数据驱动,多度量和时变(DMT)能量基准测试框架,其利用这些新数据流利用日常时间尺度跨多个度量的基准构建能源使用。来自智能仪表的高保真数据使DMT基准测试框架能够生产日常基准分数,并使用日常天气数据来了解季节性调整性能。还通过跨越几个指标(例如,总能源使用,运营能源使用,非运营能源使用)基准建筑物进行了日内建筑效率,从而使建筑运营更深入地了解了比传统的年基准测试模型更深入的洞察力。通过使用量级回归建模,DMT框架可以区分,并了解低于高性能建筑物和建筑运营状态之间的能量消耗的主要驱动因素。为了说明可以从拟议的DMT框架中收集的见解,我们将框架应用于在整个加利福尼亚州的500多所学校的建筑物绩效。 DMT框架提供了有关各种驱动因素对高低业绩建筑的能源使用的洞察力的见解,而结果表明学校有一致的能源使用驱动因素。总的来说,DMT框架被设计为高度解释,因此它可以帮助弥合数据科学和工程方法之间的差距,从而能够更好地决策能效。

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