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Wavelets, self-organizing maps and artificial neural nets for predicting energy use and estimating uncertainties in energy savings in commercial buildings.

机译:小波,自组织图和人工神经网络,用于预测能源消耗并估算商业建筑节能的不确定性。

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摘要

This dissertation develops a "neighborhood" based neural network model utilizing wavelet analysis and Self-organizing Map (SOM) to predict building baseline energy use. Wavelet analysis was used for feature extraction of the daily weather profiles. The resulting few significant wavelet coefficients represent not only average but also variation of the weather components. A SOM is used for clustering and projecting high-dimensional data into usually a one or two dimensional map to reveal the data structure which is not clear by visual inspection. In this study, neighborhoods that contain days with similar meteorological conditions are classified by a SOM using significant wavelet coefficients; a baseline model is then developed for each neighborhood. In each neighborhood, modeling is more robust without unnecessary compromises that occur in global predictor regression models.;This method was applied to the Energy Predictor Shootout II dataset and compared with the winning entries for hourly energy use predictions. A comparison between the "neighborhood" based linear regression model and the change-point model for daily energy use prediction was also performed.;We also studied the application of the non-parametric nearest neighborhood points approach in determining the uncertainty of energy use prediction. The uncertainty from "local" system behavior rather than from global statistical indices such as root mean square error and other measures is shown to be more realistic and credible than the statistical approaches currently used.;In general, a baseline model developed by local system behavior is more reliable than a global baseline model. The "neighborhood" based neural network model was found to predict building baseline energy use more accurately and achieve more reliable estimation of energy savings as well as the associated uncertainties in energy savings from building retrofits.
机译:本文利用小波分析和自组织图(SOM)预测建筑物的基线能耗,建立了基于“邻域”的神经网络模型。小波分析用于每日天气概况的特征提取。产生的极少的小波系数不仅代表平均值,而且代表天气分量的变化。 SOM用于将高维数据聚类并投影到通常的一维或二维地图中,以显示通过目视检查无法清楚的数据结构。在这项研究中,通过使用显着小波系数的SOM对包含具有相似气象条件的日的邻域进行分类。然后为每个邻域开发一个基线模型。在每个邻域中,建模都更加稳健,不会在全局预测变量回归模型中发生不必要的折衷。该方法已应用于Energy Predictor Shootout II数据集,并与获胜条目进行了小时能耗预测。还比较了基于“邻域”的线性回归模型和用于日常能源使用预测的变化点模型。;我们还研究了非参数最近邻点方法在确定能源使用预测的不确定性中的应用。与当前使用的统计方法相比,来自“本地”系统行为的不确定性而不是诸如均方根误差和其他度量之类的全局统计指标的不确定性更现实,更可信。通常,由本地系统行为开发的基线模型比全局基准模型更可靠。发现基于“邻域”的神经网络模型可以更准确地预测建筑物的基准能耗,并实现对节能量以及因建筑物改造而导致的节能量相关不确定性的更可靠估计。

著录项

  • 作者

    Lei, Yafeng.;

  • 作者单位

    Texas A&M University.;

  • 授予单位 Texas A&M University.;
  • 学科 Engineering Mechanical.;Energy.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 179 p.
  • 总页数 179
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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