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A novel model based on multi-grained cascade forests with wavelet denoising for indoor occupancy estimation

机译:基于小波去噪的多粒级联森林的室内占用率估计新模型

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Reliable occupancy estimation is the key to balancing energy use and comfort as well as promoting energy efficiency in buildings. In this study, a novel occupancy estimation model based on CO2 concentration data was proposed. A wavelet denoising method was applied to remove the random noise of the CO2 sensory data, and then a multi-grained scanning cascade forests (GcForest) method was used to estimate the number of occupants. The GcForest model incorporated three different tree-based classifiers in each level, enabling the estimation performance to be enhanced by exploiting the complementarity among the different learning algorithms. To evaluate the effectiveness of the proposed model, in this study a validation experiment was conducted in a university lab office and its results were compared with the support vector machines (SVM), classification and regression trees (CART), and inhomogeneous hidden Markov (IHMM) algorithms. The experimental results show that the wavelet denoising method could filter the noise and preserve the data features of the CO2 concentration. Moreover, the proposed model could achieve higher estimation accuracy, lower mean absolute error, and higher detection accuracy of the occupant presence/absence. Additionally, this model could capture both the first arrival time and the last departure time. Since the maximum depths of the classifiers affected the GcForest model's performance, the results also show that a proper selection of the maximum depth combination could lead to a significant improvement of the model estimation accuracy.
机译:可靠的占用率估算是平衡能源使用和舒适度以及提高建筑物能源效率的关键。在这项研究中,提出了一种基于CO2浓度数据的新型占用估算模型。应用小波去噪方法去除CO2感官数据的随机噪声,然后使用多粒度扫描级联森林(GcForest)方法估计乘员数。 GcForest模型在每个级别包含三个不同的基于树的分类器,从而可以通过利用不同学习算法之间的互补性来提高估计性能。为了评估所提出模型的有效性,本研究在大学实验室办公室进行了一项验证实验,并将其结果与支持向量机(SVM),分类树和回归树(CART)以及不均匀隐马尔可夫(IHMM)进行了比较。 )算法。实验结果表明,小波去噪方法能够滤除噪声并保留CO2浓度的数据特征。此外,所提出的模型可以实现较高的估计精度,较低的平均绝对误差和较高的乘员存在/不存在检测精度。此外,此模型可以捕获第一个到达时间和最后一个离开时间。由于分类器的最大深度影响了GcForest模型的性能,结果还表明,适当选择最大深度组合可以显着提高模型估计的准确性。

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