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Regression Tree-Based Methodology for Customizing Building Energy Benchmarks to Individual Commercial Buildings.

机译:基于回归树的方法,可为各个商业建筑定制建筑能耗基准。

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摘要

According to the U.S. Energy Information Administration, commercial buildings represent about 40% of the United State's energy consumption of which office buildings consume a major portion. Gauging the extent to which an individual building consumes energy in excess of its peers is the first step in initiating energy efficiency improvement. Energy Benchmarking offers initial building energy performance assessment without rigorous evaluation. Energy benchmarking tools based on the Commercial Buildings Energy Consumption Survey (CBECS) database are investigated in this thesis.;This study proposes a new benchmarking methodology based on decision trees, where a relationship between the energy use intensities (EUI) and building parameters (continuous and categorical) is developed for different building types. This methodology was applied to medium office and school building types contained in the CBECS database. The Random Forest technique was used to find the most influential parameters that impact building energy use intensities. Subsequently, correlations which were significant were identified between EUIs and CBECS variables. Other than floor area, some of the important variables were number of workers, location, number of PCs and main cooling equipment. The coefficient of variation was used to evaluate the effectiveness of the new model.;The customization technique proposed in this thesis was compared with another benchmarking model that is widely used by building owners and designers namely, the ENERGY STAR's Portfolio Manager. This tool relies on the standard Linear Regression methods which is only able to handle continuous variables. The model proposed uses data mining technique and was found to perform slightly better than the Portfolio Manager. The broader impacts of the new benchmarking methodology proposed is that it allows for identifying important categorical variables, and then incorporating them in a local, as against a global, model framework for EUI pertinent to the building type. The ability to identify and rank the important variables is of great importance in practical implementation of the benchmarking tools which rely on query-based building and HVAC variable filters specified by the user.
机译:根据美国能源信息署(US Energy Information Administration)的数据,商业建筑约占美国能源消耗的40%,其中办公楼消耗了大部分能源。衡量单个建筑物消耗的能量超过同等建筑物的程度是启动提高能源效率的第一步。能源基准测试无需进行严格的评估即可提供初始建筑能源性能评估。本文研究了基于商业建筑能耗调查(CBECS)数据库的能源基准测试工具。本研究提出了一种基于决策树的新基准测试方法,其中能耗强度(EUI)与建筑参数之间的关系(连续和类别)针对不同的建筑类型开发。该方法适用于CBECS数据库中包含的中型办公室和学校建筑类型。随机森林技术用于查找影响建筑物能源使用强度的最具影响力的参数。随后,在EUI和CBECS变量之间发现了重要的相关性。除建筑面积外,一些重要的变量是工人数量,位置,PC数量和主要冷却设备。将变异系数用于评估新模型的有效性。将本文提出的定制技术与另一种基准模型进行了比较,该基准模型被建筑所有者和设计师广泛使用,即能源之星的投资组合经理。该工具依赖于只能处理连续变量的标准线性回归方法。提出的模型使用数据挖掘技术,并且发现其性能比Portfolio Manager略好。提出的新基准测试方法的广泛影响是,它可以识别重要的分类变量,然后将其合并到与建筑物类型相关的EUI的全球模型框架中,而不是在全球范围内。识别和排序重要变量的能力在基准工具的实际实施中非常重要,该工具依赖于用户指定的基于查询的建筑物和HVAC变量过滤器。

著录项

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Engineering Architectural.;Energy.;Architecture.
  • 学位 M.S.
  • 年度 2013
  • 页码 154 p.
  • 总页数 154
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:18

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