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Prediction of indoor temperature and relative humidity using neural network models: model comparison

机译:使用神经网络模型预测室内温度和相对湿度:模型比较

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摘要

The use of neural networks grows great popularity in various building applications such as prediction of indoor temperature, heating load and ventilation rate. But few papers detail indoor relative humidity prediction which is an important indicator of indoor air quality, service life and energy efficiency of buildings. In this paper, the design of indoor temperature and relative humidity predictive neural networks in our test house was developed. The test house presented complicated physical features which are difficult to simulate with physical models. The work presented in this paper aimed to show the suitability of neural networks to perform predictions. Nonlinear AutoRegressive with eXternal input (NNARX) model and genetic algorithm were employed to construct networks and were detailed. The comparison between the two methods was also made. Applicability of some important mathematical validation criteria to practical reality was examined. Satisfactory results with correlation coefficients 0.998 and 0.997 for indoor temperature and relative humidity were obtained in the testing stage.
机译:神经网络的使用在各种建筑应用中越来越受欢迎,例如预测室内温度,供暖负荷和通风率。但是很少有论文详细介绍室内相对湿度的预测,这是建筑物室内空气质量,使用寿命和能源效率的重要指标。本文开发了我们测试室内的室内温度和相对湿度预测神经网络的设计。测试室呈现出复杂的物理特征,这些特征很难用物理模型来模拟。本文提出的工作旨在证明神经网络执行预测的适用性。运用非线性外部输入自回归模型(NNARX)和遗传算法构建网络,并进行了详细的描述。还对两种方法进行了比较。研究了一些重要的数学验证标准对实际情况的适用性。在测试阶段,室内温度和相对湿度的相关系数分别为0.998和0.997,结果令人满意。

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