利用环境信号反卷积估计建筑物占用水平

A. Ebadat, Giulio Bottegal, Damiano Varagnolo, B. Wahlberg, K. Johansson
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引用次数: 79

摘要

我们使用标准暖通空调系统中提供的信息来估计房间的占用水平。为了确定一个动态模型,我们利用了占用水平与二氧化碳浓度、室温和通风驱动信号之间的显著统计相关性,而不是使用专用设备。建筑物占用估计问题被表述为一个正则化的反卷积问题,其中估计的占用是输入,当注入到确定的模型中时,最好地解释当前测量的二氧化碳水平。由于占用水平是分段常数,因此将占用的零范数插入成本函数以惩罚非分段常数输入。然后,通过将零范数松弛为l1范数,将该问题视为融合-套索估计的一个特殊情况。我们提出了在线和离线估计器;与其他基于数据的建筑物占用估算器相比,后者表现良好。在一个真实的测试平台上的结果表明,在一个长达一周的数据集上训练的该方案的MSE是等效神经网络(NN)或支持向量机(SVM)估计策略的MSE的一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of building occupancy levels through environmental signals deconvolution
We address the problem of estimating the occupancy levels in rooms using the information available in standard HVAC systems. Instead of employing dedicated devices, we exploit the significant statistical correlations between the occupancy levels and the CO2 concentration, room temperature, and ventilation actuation signals in order to identify a dynamic model. The building occupancy estimation problem is formulated as a regularized deconvolution problem, where the estimated occupancy is the input that, when injected into the identified model, best explains the currently measured CO2 levels. Since occupancy levels are piecewise constant, the zero norm of occupancy is plugged into the cost function to penalize non-piecewise constant inputs. The problem then is seen as a particular case of fused-lasso estimator by relaxing the zero norm into the ℓ1 norm. We propose both online and offline estimators; the latter is shown to perform favorably compared to other data-based building occupancy estimators. Results on a real testbed show that the MSE of the proposed scheme, trained on a one-week-long dataset, is half the MSE of equivalent Neural Network (NN) or Support Vector Machine (SVM) estimation strategies.
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