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Short and medium-term forecasting of cooling and heating load demand in building environment with data-mining based approaches

机译:基于数据挖掘的方法对建筑环境中的冷热负荷需求的短期和中期预测

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This paper depicted the novel data mining based methods that consist of six models for predicting accurate future heating and cooling load demand of water source heat pump, with the objective of enhancing the prediction accuracy and the management of future load. The proposed model was developed to ease generalization to other buildings, by making use of readily available measurements of a comparatively small number of variables related to water source heat pump operation in the building environment. The six models are - tree bagger, Gaussian process regression, multiple linear regression, bagged tree, boosted tree and neural network. The input parameter comprised the prescribed period, external climate data and the diverse load conditions of water source heat pump. The output was electrical power consumption of water source heat pump. In this study, simulations were conducted in three sessions - 7-day, 14-day and 1-month from 8th July to 7th August 2016. The forecast precisions of data mining models were measured by diverse indices. The performance indices which were used in assessing the prediction performance were - mean absolute error, coefficient of correlation, coefficient of variation, root mean square error, mean square error and mean absolute percentage error. The mean absolute percentage error results for 7-day future energy demand forecasting from tree bagger, Gaussian process regression, bagged tree, boosted tree, neural network and multiple linear regression were 3.544%, 0.405%, 1.703%, 1.928%, 2.592% and 13.053%, respectively. Moreover, when the proposed data mining model performance was compared with the existing studies, the mean absolute percentage error of 2.515% was found out for the first session, 7-day. The results also showed that the six models were efficient in foreseeing the abnormal behavior and future cooling and heating load demand in the building environment. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文描述了一种新颖的基于数据挖掘的方法,该方法由六个模型组成,用于预测水源热泵的准确未来供热和制冷负荷需求,目的是提高预测精度和管理未来负荷。通过利用对与建筑物环境中的水源热泵运行有关的相对少量变量的易于获得的测量结果,开发了建议的模型以简化对其他建筑物的泛化。六个模型是-树装袋机,高斯过程回归,多元线性回归,装袋树,增强树和神经网络。输入参数包括规定的时间段,外部气候数据以及水源热泵的各种负​​载条件。输出为水源热泵的电力消耗。在这项研究中,从2016年7月8日至8月7日,在7天,14天和1个月三个阶段进行了模拟。数据挖掘模型的预测精度通过不同的指标来衡量。用于评估预测性能的性能指标为-平均绝对误差,相关系数,变异系数,均方根误差,均方误差和平均绝对百分比误差。根据装袋机,高斯过程回归,袋装树,增强树,神经网络和多元线性回归进行的7天未来能源需求预测的平均绝对百分比误差结果分别为3.544%,0.405%,1.703%,1.928%,2.592%和分别为13.053%。此外,将拟议的数据挖掘模型性能与现有研究进行比较时,发现第一天(7天)的平均绝对百分比误差为2.515%。结果还表明,这六个模型可以有效地预测建筑环境中的异常行为以及将来的制冷和热负荷需求。 (C)2018 Elsevier B.V.保留所有权利。

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