将污染事件诊断与数据验证/重建相结合:在智能建筑中的应用

M. Cugueró, M. Christodoulou, J. Quevedo, V. Puig, D. García, M. Michaelides
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引用次数: 4

摘要

在这项工作中,提出了一种用于智能建筑系统的传感器数据验证/重建和污染事件诊断相结合的方法,作为两阶段方法实现。在第一阶段,检测传感器通信故障并估计缺失数据,为第二阶段进行污染事件诊断提供可靠的数据集。在第一阶段,传感器验证和重建技术是基于空间和时间序列模型的结合使用。一方面,空间模型利用了系统中不同变量之间的物理关系,另一方面,时间序列模型利用了被测变量的时间冗余,采用Holt-Winters时间序列模型。第二阶段,污染物事件诊断基于污染物检测和隔离估计方案,通过假设测量噪声和模型不确定性的一定界限,使用自适应阈值。为了应用这些诊断方案,考虑了状态空间模型来模拟室内建筑环境中的污染物扩散,其中污染物事件被建模为需要检测和隔离的过程中的故障。最后,提出的方法在福尔摩斯之家智能建筑场景中得到了成功的验证。
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Combining contaminant event diagnosis with data validation/reconstruction: Application to smart buildings
In this work, a combined sensor data validation/reconstruction and contaminant event diagnosis approach is proposed for Smart Building systems, implemented as a two-stage approach. In the first stage, sensor communication faults are detected and missing data is estimated, in order to provide a reliable dataset to perform contaminant event diagnosis in the second stage. For the first stage, the sensor validation and reconstruction technique is based on the combined use of spatial and time series models. On the one hand, spatial models take advantage of the physical relation between different variables in the system, whilst on the other hand, time series models take advantage of the temporal redundancy of the measured variables, using Holt-Winters time series models. For the second stage, contaminant event diagnosis is based on contaminant detection and isolation estimator schemes, using adaptive thresholds by assuming certain bounds on the measurement noise and the model uncertainty. In order to apply these diagnosis schemes, state-space models have been considered in order to model the contaminant dispersion over the indoor building environment, where the contaminant event is modelled as a fault in the process which needs to be detected and isolated. Finally, the proposed approach is successfully demonstrated for the Holmes House smart building scenario.
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