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Regression and Artificial Neural Network Models with Data Classifications for Building Energy Predictions

机译:数据分类的回归和人工神经网络模型用于建筑能耗预测

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摘要

As energy concerns continue to grow, the need to create more efficient building systems using accurate modeling techniques has increased. Most modern buildings are equipped with electric power meters that record electric power data that can be used for model accuracy improvements. This paper discuses typical data-based building energy models and proposes new improvements by using data classifications. Six different data-based models for estimating subhourly and hourly electric energy consumption are presented and discussed. These models are three typical single to multiple regression models, two proposed regression models, and one artificial neural network (ANN) model with recommended classifications. Power data collected from existing buildings at 15 min intervals are used to build and test the models. Additional hourly energy data obtained from a well-known energy simulation program are also used for detailed analysis. The results show that the proposed regression models and ANN model with recommended data classifications can provide very accurate results compared to traditional modeling techniques. Significant improvements in statistic index R-squared values are a result of using the proposed regression and ANN models for all tested buildings.
机译:随着能源问题的持续增长,使用精确的建模技术来创建更高效​​的建筑系统的需求日益增加。大多数现代建筑都配备有电表,用于记录可用于改善模型精度的电数据。本文讨论了典型的基于数据的建筑能源模型,并提出了使用数据分类的新改进。提出并讨论了六个不同的基于数据的模型,用于估算每小时和每小时的电能消耗。这些模型是三个典型的单对多回归模型,两个建议的回归模型和一个具有推荐分类的人工神经网络(ANN)模型。每隔15分钟从现有建筑物收集一次的电力数据将用于构建和测试模型。从著名的能源模拟程序获得的每小时额外能源数据也用于详细分析。结果表明,与传统建模技术相比,所提出的回归模型和具有推荐数据分类的ANN模型可以提供非常准确的结果。统计指数R平方值的显着改善是对所有测试建筑物使用建议的回归和ANN模型的结果。

著录项

  • 来源
    《ASHRAE Transactions》 |2018年第2期|52-60|共9页
  • 作者

    Nabil Nassif;

  • 作者单位

    Department of Civil and Architectural Engineering at the University of Cincinnati, Cincinnati, OH, USA;

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  • 原文格式 PDF
  • 正文语种 eng
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