Krati Rastogi, Anurag Barthwal, Divya Lohani, D. Acharya
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引用次数: 7
摘要
人类大部分时间都在室内度过,因此,拥有良好的室内空气质量(IAQ)及其实时信息对维持人类健康和生产力至关重要。根据美国环境保护署(United States Environmental Protection Agency)的数据,即使在中央空调建筑中,室内空气的污染程度也比室外空气严重几倍,主要原因是居住模式的变化、通风系统陈旧或维护不良,以及建筑物的裂缝。在这项工作中,我们提出了一个基于物联网(IoT)的离散时间马尔可夫链(DTMC)模型,用于分析和预测室内空气质量。用于收集室内空气质量数据的物联网架构由部署在大学大楼不同房间的传感节点组成。这些感知到的数据被传输并存储在物联网云中,用于生成室内空气质量状态转换矩阵,并计算每个状态的返回周期。将模型的预测周期与实际周期进行了比较,发现模型的预测精度较好,平均绝对预测误差为4.75%。
An IoT-based Discrete Time Markov Chain Model for Analysis and Prediction of Indoor Air Quality Index
Humans generally spend most of their time indoors, therefore, having good Indoor Air Quality (IAQ) and its real time information is critical for maintaining human health and productivity. According to United States Environmental Protection Agency, indoor air even in centrally air-conditioned buildings is several times more polluted than outdoor air, primarily due to change in occupancy pattern, old or ill maintained ventilation systems, and cracks in buildings. In this work, we have proposed an Internet of Things (IoT) based Discrete Time Markov Chain (DTMC) model for analysis and forecasting of IAQ. The IoT architecture used for collecting IAQ data consists of sensing nodes deployed in different rooms of the University building. This sensed data is transferred and stored in IoT cloud and used to generate the IAQ state transition matrix and compute return periods for each state. The predicted and actual return periods have been compared and the accuracy of the proposed model is found to be satisfactory with a low average absolute prediction error of 4.75%.