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A data-driven predictive model of city-scale energy use in buildings

机译:数据驱动的建筑物中城市规模能源使用的预测模型

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摘要

Many cities across the United States have turned to building energy disclosure (or benchmarldng) laws to encourage transparency in energy efficiency markets and to support sustainability and carbon reduction plans. In addition to direct peer-to-peer comparisons, the benchmarking data published under these laws have been used as a tool by researchers and policy-makers to study the distribution and determinants of energy use in large buildings. However, these policies only cover a small subset of the building stock in a given city, and thus capture only a fraction of energy use at the urban scale. To overcome this limitation, we develop a predictive model of energy use at the building, district, and city scales using training data from energy disclosure policies and predictors from widely-available property and zoning information. We use statistical models to predict the energy use of 1.1 million buildings in New York City using the physical, spatial, and energy use attributes of a subset derived from 23,000 buildings required to report energy use data each year. Linear regression (OLS), random forest, and support vector regression (SVM) algorithms are fit to the city's energy benchmarking data and then used to predict electricity and natural gas use for every property in the city. Model accuracy is assessed and validated at the building level and zip code level using actual consumption data from calendar year 2014. We find the OLS model performs best when generalizing to the City as a whole, and SVM results in the lowest mean absolute error for predicting energy use within the LL84 sample. Our median predicted electric energy use intensity for office buildings is 71.2 kbtuisf and for residential buildings is 31.2 kbtu/sf with mean absolute log accuracy ratio of 0.17. Building age is found to be a significant predictor of energy use, with newer buildings (particularly those built since 1991) found to have higher consumption levels than those constructed before 1930. We also find higher electric consumption in office and retail buildings, although the sign is reversed for natural gas. In general, larger buildings use less energy per square foot, while taller buildings with more stories, controlling for floor area, use more energy per square foot. Attached buildings- those with adjacent buildings and a shared party wall- are found to have lower natural gas use intensity. The results demonstrate that electricity consumption can be reliably predicted using actual data from a relatively small subset of buildings, while natural gas use presents a more complicated problem given the bimodal distribution of consumption and infrastructure availability. (C) 2017 Elsevier Ltd. All rights reserved.
机译:美国许多城市已经转向建立能源公开(或Benchmarldng)法律,以鼓励提高能源效率市场的透明度并支持可持续性和减碳计划。除了直接进行点对点比较外,根据这些法律发布的基准数据还被研究人员和政策制定者用作研究大型建筑能耗分布和决定因素的工具。但是,这些政策仅覆盖给定城市中一小部分建筑,因此仅捕获了城市规模能源使用的一小部分。为了克服此限制,我们使用能源披露政策中的训练数据以及广泛使用的房地产和分区信息中的预测因子,开发了建筑物,地区和城市规模的能源使用预测模型。我们使用统计模型来预测纽约市110万幢建筑物的能源使用,该数据来自每年报告能源使用数据所需的23,000座建筑物的子集的物理,空间和能源使用属性。线性回归(OLS),随机森林和支持向量回归(SVM)算法适合城市的能源基准数据,然后用于预测城市中每个物业的电力和天然气使用量。使用2014日历年的实际消耗数据在建筑物级别和邮政编码级别评估和验证模型的准确性。我们发现,将OLS模型推广到整个城市时,其性能最佳,而SVM预测的平均绝对误差最低LL84样品中的能源消耗。我们对办公楼和住宅楼的平均预测电能使用强度为71.2 kbtuisf,平均绝对对数准确度比为0.17。人们发现,建筑年龄是能源使用的重要预测指标,较新的建筑(尤其是1991年以后建造的建筑)的能耗水平要高于1930年之前建造的建筑。我们也发现办公和零售建筑的电耗较高,天然气则相反。通常,较大的建筑物每平方英尺使用较少的能量,而高层建筑较多且控制了建筑面积的建筑物每平方英尺使用更多的能量。已发现附属建筑物(具有相邻建筑物和共用方墙的建筑物)的天然气使用强度较低。结果表明,可以使用相对较小的建筑物子集的实际数据来可靠地预测用电量,而考虑到用电量和基础设施可用性的双峰分布,天然气的使用则存在一个更为复杂的问题。 (C)2017 Elsevier Ltd.保留所有权利。

著录项

  • 来源
    《Applied Energy》 |2017年第1期|303-317|共15页
  • 作者单位

    NYU, Ctr Urban Sci & Progress, Metrotech Ctr 1, 19th Floor, Brooklyn, NY 11201 USA|New York Univ, Tandon Sch Engn, Metrotech Ctr 1, 19th Floor, Brooklyn, NY 11201 USA;

    NYU, Ctr Urban Sci & Progress, Metrotech Ctr 1, 19th Floor, Brooklyn, NY 11201 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning; Building energy; Energy efficiency; Urban dynamics; Energy prediction;

    机译:机器学习;建筑能源;能源效率;城市动力学;能源预测;
  • 入库时间 2022-08-18 00:07:51

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