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Automated Data Mining Methods for Identifying Energy Efficiency Opportunities Using Whole-Building Electricity Data

机译:使用整栋建筑的电力数据识别能源效率机会的自动数据挖掘方法

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摘要

Automated detection of schedule- and operation-related energy savings opportunities in commercial buildings can help building owners lower operating expenses while also reducing adverse societal impacts such as global greenhouse gas emissions. We propose automated methods of identifying certain energy-efficiency opportunities (EEOs) in commercial buildings using only whole-building electricity consumption and local climate data. Our two-step approach uses piecewise linear regression and density-based robust regression model residual clustering to detect both schedule- and operation-related electricity consumption faults. This paper discusses results obtainedfrom applying this approach to two all-electric office buildings meant to demonstrate our model's effectiveness in identifying such EEOs. Ways by which the analysis results can be conveniently and succinctly presented to building managers and operators are also suggested.
机译:自动检测商业建筑中与时间表和运营相关的节能机会,可以帮助建筑业主降低运营支出,同时还减少诸如全球温室气体排放等不利的社会影响。我们提出了仅使用整栋建筑的耗电量和当地气候数据来识别商业建筑中某些节能机会(EEO)的自动化方法。我们的两步方法使用分段线性回归和基于密度的鲁棒回归模型残差聚类来检测与计划和操作相关的用电故障。本文讨论了将此方法应用于两座全电气办公楼所获得的结果,旨在证明我们的模型在识别此类EEO方面的有效性。还建议了将分析结果方便,简洁地呈现给建筑物管理人员和操作人员的方法。

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  • 来源
    《ASHRAE Transactions》 |2016年第1期|422-433|共12页
  • 作者单位

    Design School and the School of Sustainable Engineering and the Built Environment at Arizona State University, Tempe, AZ;

    Pacific Northwest National Laboratory, Richland, WA;

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  • 原文格式 PDF
  • 正文语种 eng
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  • 入库时间 2022-08-18 00:41:40

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