智能建筑的时空环境监测

Linh V. Nguyen, G. Hu, C. Spanos
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引用次数: 10

摘要

本文解决了通过使用无线噪声传感器网络有效监测智能建筑中环境场的问题,该网络在其位置随时间进行离散预定义测量。提出了利用时空非参数高斯过程对室内环境场进行统计建模的方法。所提出的模型能够有效地预测和估计任何时间、任何地点的室内气候参数,并利用这些参数及时创建室内环境地图。更重要的是,监测结果对建筑管理系统有效控制能耗,最大限度地提高建筑中的人体舒适度至关重要。所提出的方法在大学建筑的实际测试空间中实施,获得的结果非常有希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-temporal environmental monitoring for smart buildings
The paper addresses the problem of efficiently monitoring environmental fields in a smart building by the use of a network of wireless noisy sensors that take discretely-predefined measurements at their locations through time. It is proposed that the indoor environmental fields are statistically modeled by spatio-temporal non-parametric Gaussian processes. The proposed models are able to effectively predict and estimate the indoor climate parameters at any time and at any locations of interest, which can be utilized to create timely maps of indoor environments. More importantly, the monitoring results are practically crucial for building management systems to efficiently control energy consumption and maximally improve human comfort in the building. The proposed approach was implemented in a real tested space in a university building, where the obtained results are highly promising.
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