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Measurement and verification of energy conservation measures using whole-building electricity data from four identical office towers

机译:使用来自四个相同办公大楼的整栋建筑的电力数据来测量和验证节能措施

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Reliable measurement and verification (M&V) of the energy savings associated with energy conservation measures (ECMs) is critical for financial settlement of utility incentives and energy performance contracts. With the proliferation of advanced metering infrastructure, there is increasing interest in using whole-building data for M&V, as a cost-effective alternative to sub-metering or installing equipment-specific data loggers. Commonly observed protocols provide a framework for regression-based M&V analysis of whole-building data. This paper leverages seven years of whole-building electricity data from four geometrically-identical multi-storey multi-tenant co-located office towers, which underwent a series of very similar ECMs, to explore the application and validity of straightforward, regression-based models. Results showed the models met the criteria for goodness of fit and statistical uncertainty (R-2 above 0.75; coefficient of variation of the root-mean-square error, CV(RMSE) below 25%; normalized mean bias error, NMBE below 0.005%; standard error in the unstandardized regression coefficient estimating an ECM effect less than 50% of the regression coefficient itself). Further, these regression models were (in the large majority of cases) able to differentiate between multiple ECMs applied sequentially, and that, in some cases, effects as low as 5% were reported. Effect estimates of similar ECMs were similar across the buildings, but were generally substantially larger than the pre-retrofit engineering predictions of savings. ECM effect estimates using monthly and hourly data with equivalent regression formulations gave very similar estimates, differences in coefficients ranged between approximately 0-15%, with a mean of 7%. Estimates of ECM effects made using the full timespan of data were more sensitive, and generally larger, than estimates using only a single year of pre- and post-ECM data. However, visually identifying ECM effects in time-series data was challenging, which highlights the many sources of error in such an analysis.
机译:与节能措施(ECM)相关的节能的可靠度量和验证(M&V)对于公用事业激励和能源绩效合同的财务结算至关重要。随着先进计量基础设施的激增,越来越多的兴趣将整栋建筑数据用于M&V,作为子计量或安装特定于设备的数据记录器的经济有效的替代方法。常用的协议为整个建筑数据的基于回归的M&V分析提供了一个框架。本文利用来自四个几何形状相同的多层多租户共置办公楼的七年整栋建筑的电力数据,这些办公楼经历了一系列非常相似的ECM,以探索基于回归的简单模型的应用和有效性。结果表明模型满足拟合优度和统计不确定性的标准(R-2大于0.75;均方根误差的变异系数,CV(RMSE)小于25%;归一化平均偏差误差,NMBE小于0.005% ;未标准化回归系数中的标准误差,估计ECM效应小于回归系数本身的50%。此外,这些回归模型(在大多数情况下)能够区分顺序应用的多个ECM,并且在某些情况下,据报道其影响低至5%。建筑物中类似ECM的效果估算值相似,但通常比改造前的工程节能量要大得多。使用每月和每小时数据以及等效回归公式得出的ECM效果估算值非常相似,系数差异约为0-15%,平均值为7%。与仅使用一年的ECM前后数据进行估算相比,使用整个数据时间跨度进行的ECM效果估算更为敏感,而且通常更大。但是,在视觉上识别时间序列数据中的ECM效果具有挑战性,这突出了这种分析中的许多错误来源。

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