Liu X, Zhai Z
Department of Civil, Environmental and Architectural Engineering, University of Colorado, Boulder, CO 80309-0428, USA.
Indoor Air. 2008 Feb;18(1):2-11. doi: 10.1111/j.1600-0668.2007.00499.x.
Indoor pollutions jeopardize human health and welfare and may even cause serious morbidity and mortality under extreme conditions. To effectively control and improve indoor environment quality requires immediate interpretation of pollutant sensor readings and accurate identification of indoor pollution history and source characteristics (e.g. source location and release time). This procedure is complicated by non-uniform and dynamic contaminant indoor dispersion behaviors as well as diverse sensor network distributions. This paper introduces a probability concept based inverse modeling method that is able to identify the source location for an instantaneous point source placed in an enclosed environment with known source release time. The study presents the mathematical models that address three different sensing scenarios: sensors without concentration readings, sensors with spatial concentration readings, and sensors with temporal concentration readings. The paper demonstrates the inverse modeling method and algorithm with two case studies: air pollution in an office space and in an aircraft cabin. The predictions were successfully verified against the forward simulation settings, indicating good capability of the method in finding indoor pollutant sources. The research lays a solid ground for further study of the method for more complicated indoor contamination problems.
The method developed can help track indoor contaminant source location with limited sensor outputs. This will ensure an effective and prompt execution of building control strategies and thus achieve a healthy and safe indoor environment. The method can also assist the design of optimal sensor networks.
室内污染危害人类健康和福祉,在极端情况下甚至可能导致严重的发病和死亡。要有效控制和改善室内环境质量,需要立即解读污染物传感器读数,并准确识别室内污染历史和源特征(例如源位置和释放时间)。由于污染物在室内的扩散行为不均匀且动态,以及传感器网络分布多样,这一过程变得复杂。本文介绍了一种基于概率概念的反演建模方法,该方法能够识别放置在已知源释放时间的封闭环境中的瞬时点源的源位置。该研究提出了针对三种不同传感场景的数学模型:无浓度读数的传感器、有空间浓度读数的传感器和有时间浓度读数的传感器。本文通过两个案例研究展示了反演建模方法和算法:办公空间和飞机机舱内的空气污染。预测结果与正向模拟设置成功验证,表明该方法在寻找室内污染物源方面具有良好的能力。该研究为进一步研究更复杂的室内污染问题的方法奠定了坚实基础。
所开发的方法可以帮助利用有限的传感器输出追踪室内污染物源位置。这将确保有效且迅速地执行建筑控制策略,从而实现健康安全的室内环境。该方法还可以协助优化传感器网络的设计。