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Forecasting electric demand of supply fan using data mining techniques

机译:使用数据挖掘技术预测供应风扇的电力需求

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摘要

This paper presents the application of the process of KDD (knowledge discovery in databases) for the forecasting of the electrical power demand of a supply fan of an AHU (air handling unit). The case study uses trend data from the BAS (Building Automation System), which is recorded every 15 min in an office building. Data mining techniques are used as a preprocessing step in the development of the forecasting model. A clustering analysis detects atypical operations and then partitions the whole dataset into three subsets of typical daily profiles of the supply fan modulation. A hybrid model, combining a closed-loop nonlinear ANN (autoregressive neural network) model and a physical model, forecasts the electric power demand over a horizon of up to 6 h. The optimum architecture of ANN, found by using a Simple Genetic Algorithm, is composed of 13 input neurons, I hidden neuron and 23-day training set size, for the cluster corresponding to working days except Mondays. The results show good agreement between the forecasts and measurements of fan modulation, and electric demand, respectively. The fan modulation was forecasted over the testing period with RMSE (Root Mean Squared Error) of 5.5% and CV(RMSE) of 17.6%. The fan electric demand was forecasted with a RMSE of 1.4 kW, CV(RMSE) of 30% over a 6-h time horizon. The sensitivity analysis indicated that the reduction of training data set size from 23 days to 4 or 8 days does not have a negative impact of the value of RMSE. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文介绍了KDD(数据库中的知识发现)过程在预测AHU(空气处理单元)供应风扇的电力需求中的应用。案例研究使用来自BAS(楼宇自动化系统)的趋势数据,该数据每15分钟记录在一栋办公楼中。数据挖掘技术被用作预测模型开发中的预处理步骤。聚类分析可检测到非典型操作,然后将整个数据集划分为三个典型的每日典型送风风扇调节子集。混合模型结合了闭环非线性ANN(自回归神经网络)模型和物理模型,可预测长达6小时的电力需求。通过使用简单遗传算法发现的ANN的最佳体系结构,由13个输入神经元(隐藏神经元和23天训练集大小)组成,其集群对应于除星期一以外的工作日。结果表明,分别在风扇调制和电力需求的预测和测量之间具有良好的一致性。在测试期间预测了风扇调制,RMSE(均方根误差)为5.5%,CV(RMSE)为17.6%。预测风扇电力需求在6小时内的平均RMSE为1.4 kW,CV(RMSE)为30%。敏感性分析表明,训练数据集大小从23天减少到4或8天不会对RMSE值产生负面影响。 (C)2016 Elsevier Ltd.保留所有权利。

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  • 来源
    《Energy》 |2016年第15期|541-557|共17页
  • 作者单位

    Concordia Univ, Dept Bldg Civil & Environm Engn, Ctr Zero Energy Bldg Studies, 1515 St Catherine W, Montreal, PQ H3G 1M8, Canada;

    Inst Rech Hydro Quebec, Lab Technol Energie, 600 Ave Montagne, Shawinigan, PQ G9N 7N5, Canada;

    Concordia Univ, Dept Bldg Civil & Environm Engn, Ctr Zero Energy Bldg Studies, 1515 St Catherine W, Montreal, PQ H3G 1M8, Canada;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Electric demand; Forecast; Data mining; Building Automation System; Clustering analysis;

    机译:电力需求;预测;数据挖掘;楼宇自动化系统;聚类分析;

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