National Institute of Technical Teacher's Training and Research, Chandigarh 160019, India.
ESTGOH, Polytechnic of Coimbra, Rua General Santos Costa, 3400-124 Oliveira do Hospital, Portugal.
Sensors (Basel). 2022 Jan 28;22(3):1008. doi: 10.3390/s22031008.
Air quality levels do not just affect climate change; rather, it leaves a significant impact on public health and wellbeing. Indoor air pollution is the major contributor to increased mortality and morbidity rates. This paper is focused on the assessment of indoor air quality based on several important pollutants (PM, PM, CO, CO, tVOC, and NO). These pollutants are responsible for potential health issues, including respiratory disease, central nervous system dysfunction, cardiovascular disease, and cancer. The pollutant concentrations were measured from a rural site in India using an Internet of Things-based sensor system. An Adaptive Dynamic Fuzzy Inference System Tree was implemented to process the field variables. The knowledge base for the proposed model was designed using a global optimization algorithm. However, the model was tuned using a local search algorithm to achieve enhanced prediction performance. The proposed model gives normalized root mean square error of 0.6679, 0.6218, 0.1077, 0.2585, 0.0667 and 0.0635 for PM, PM, CO, CO, tVOC, and NO, respectively. This approach was compared with the existing studies in the literature, and the approach was also validated against the online benchmark dataset.
空气质量水平不仅影响气候变化,对公众健康和福祉也有重大影响。室内空气污染是导致死亡率和发病率上升的主要原因。本文主要关注基于几种重要污染物(PM、PM、CO、CO、总挥发性有机化合物和 NO)的室内空气质量评估。这些污染物可能导致健康问题,包括呼吸道疾病、中枢神经系统功能障碍、心血管疾病和癌症。该研究使用基于物联网的传感器系统从印度的一个农村地点测量了污染物浓度。实施了自适应动态模糊推理系统树来处理现场变量。使用全局优化算法设计了拟议模型的知识库。然而,该模型使用局部搜索算法进行了调整,以实现增强的预测性能。所提出的模型分别为 PM、PM、CO、CO、总挥发性有机化合物和 NO 提供归一化均方根误差 0.6679、0.6218、0.1077、0.2585、0.0667 和 0.0635。该方法与文献中的现有研究进行了比较,并使用在线基准数据集进行了验证。