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Virtual models of indoor-air-quality sensors

机译:室内空气质量传感器的虚拟模型

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摘要

A data-driven approach for modeling indoor-air-quality (IAQ) sensors used in heating, ventilation, and air conditioning (HVAC) systems is presented. The IAQ sensors considered in the paper measure three basic parameters, temperature, CO_2, and relative humidity. Three models predicting values of IAQ parameters are built with various data mining algorithms. Four data mining algorithms have been tested on the HVAC data set collected at an office-type facility. The computational results produced by models built with different data mining algorithms are discussed. The neural network (NN) with multi-layer percep-tron (MLP) algorithms produced the best results for all three IAQ sensors among all algorithms tested. The models built with data mining algorithms can serve as virtual IAQ sensors in buildings and be used for on-line monitoring and calibration of the IAQ sensors. The approach presented in this paper can be applied to HVAC systems in buildings beyond the type considered in this paper.
机译:提出了一种用于模拟供暖,通风和空调(HVAC)系统中使用的室内空气质量(IAQ)传感器的数据驱动方法。本文中考虑的IAQ传感器测量三个基本参数:温度,CO_2和相对湿度。使用各种数据挖掘算法构建了三个预测IAQ参数值的模型。已经对在办公室类型的设施中收集的HVAC数据集测试了四种数据挖掘算法。讨论了使用不同数据挖掘算法构建的模型所产生的计算结果。在所有测试算法中,带有多层感知器(MLP)算法的神经网络(NN)对于所有三个IAQ传感器产生了最佳结果。使用数据挖掘算法构建的模型可以用作建筑物中的虚拟IAQ传感器,并可以用于IAQ传感器的在线监视和校准。本文介绍的方法可以应用于本文所考虑类型之外的建筑物中的HVAC系统。

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