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Prediction of occupancy level and energy consumption in office building using blind system identification and neural networks

机译:用盲系统识别和神经网络预测办公楼中的占用水平与能耗

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摘要

Occupancy behaviour plays an important role in energy consumption in buildings. Currently, the shallow understanding of occupancy has led to a considerable performance gap between predicted and measured energy use. This paper presents an approach to estimate the occupancy based on blind system identification (BSI), and a prediction model of electricity consumption by an air-conditioning system is developed and reported based on an artificial neural network with the BSI estimation of the number of occupants as an input. This starts from the identification of indoor CO2 dynamics derived from the mass-conservation law and venting levels. The unknown parameters, including the occupancy and model parameters, are estimated by using a frequentist maximum-likelihood algorithm and Bayesian estimation. The second phase is to establish the prediction model of the electricity consumption of the air-conditioning system by using a feed-forward neural network (FFNN) and extreme learning machine (ELM), as well as ensemble models. To analyse some aspects of the benchmark test for identifying the effect of structure parameters and input-selection alternatives, three studies are conducted on (1) the effect of predictor selection based on principal component analysis, (2) the effect of the estimated occupancy as the supplementary input, and (3) the effect of the neural network ensemble. The result shows that the occupancy number, as the input, is able to improve the accuracy in predicting energy consumption using a neural network model.
机译:占用行为在建筑物中的能源消耗中发挥着重要作用。目前,对占用率的浅薄理解导致预测和测量能源之间具有相当大的性能差距。本文提出了一种基于盲系统识别(BSI)估计占用率的方法,并且基于人工神经网络,基于人工神经网络的BSI估计的乘员数量的人工神经网络开发和报告了一种方法作为一个输入。这从识别来自大规模保护法和通风水平的室内二氧化碳动态开始。通过使用频繁的最大似然算法和贝叶斯估计来估计包括占用和模型参数的未知参数。第二阶段是通过使用前馈神经网络(FFNN)和极端学习机(ELM)以及集合模型来建立空调系统的电力消耗的预测模型。为了分析用于识别结构参数和输入选择替代方案的效果的基准测试的一些方面,在(1)基于主成分分析的预测器选择的效果,(2)估计占用效果为补充输入,(3)神经网络集合的效果。结果表明,作为输入的占用号是能够通过神经网络模型提高预测能量消耗的准确性。

著录项

  • 来源
    《Applied Energy》 |2019年第15期|276-294|共19页
  • 作者单位

    Univ Nottingham Ningbo China Dept Architectural & Built Environm Res Ctr Fluids & Thermal Engn Ningbo 315100 Zhejiang Peoples R China;

    Univ Nottingham Ningbo China Dept Architectural & Built Environm Res Ctr Fluids & Thermal Engn Ningbo 315100 Zhejiang Peoples R China;

    Beijing Univ Technol Beijing Key Lab Green Built Environm & Energy Eff Beijing 100124 Peoples R China|Minist Educ Engn Res Ctr Digital Community Beiing 100124 Peoples R China|Beijing Lab Urban Mass Transit Beiing 100044 Peoples R China;

    North China Inst Sci & Technol Coll Architecture & Civil Engn Langfang 065201 Hebei Peoples R China;

    Dalarna Univ Sch Energy Forest & Built Environm S-79188 Falun Sweden;

    Dalarna Univ Sch Energy Forest & Built Environm S-79188 Falun Sweden;

    North China Inst Sci & Technol Coll Architecture & Civil Engn Langfang 065201 Hebei Peoples R China;

    Beijing Univ Technol Beijing Key Lab Green Built Environm & Energy Eff Beijing 100124 Peoples R China;

    Beijing Inst Residential Bldg Design & Res Co LTD Beijing 100005 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Occupancy estimation; Blind system identification (BSI); Prediction model for energy consumption; Feedforward neural network; Extreme learning machine;

    机译:占用估计;盲系统识别(BSI);能耗预测模型;前馈神经网络;极端学习机;

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