Department of Earth and Atmospheric Sciences, University of Houston, TX, 77204, USA.
Department of Occupational Health Engineering, School of Public Health, Tehran University of Medical Sciences, Tehran, 1416634793, Iran.
Environ Pollut. 2023 Dec 1;338:122623. doi: 10.1016/j.envpol.2023.122623. Epub 2023 Oct 6.
Air pollution is one of the major concerns for the population and the environment due to its hazardous effects. PM has affected significant scientific and regulatory interest because of its strong correlation with chronic health such as respiratory illnesses, lung cancer, and asthma. Forcasting air quality and assessing the health impacts of the air pollutants like particulate matter is crucial for protecting public health.This study incorporated weather, traffic, green space information, and time parameters, to forcst the AQI and PM. Traffic data plays a critical role in predicting air pollution, as it significantly influences them. Therefore, including traffic data in the ANN model is necessary and valuable. Green spaces also affect air quality, and their inclusion in neural network models can improve predictive accuracy. The key factors influencing the AQI are the two-day lag time, the proximity of a park to the AQI monitoring station, the average distance between each park and AQI monitoring stations, and the air temperature. In addition, the average distance between each park, the number of parks, seasonal variations, and the total number of vehicles are the primary determinants affecting PM.The straightforward effective Multilayer Perceptron Artificial Neural Network (MLP-ANN) demonstrated correlation coefficients (R) of 0.82 and 0.93 when forcasting AQI and PM, respectively. This study also used the forcasted PM values from the ANN model to assess the health effects of elevated air pollution. The results indicate that elevated levels of PM can increase the likelihood of respiratory symptoms. Among children, there is a higher prevalence of bronchitis, while among adults, the incidence of chronic bronchitis is higher. It was estimated that the attributable proportions for children and adults were 6.87% and 9.72%, respectively. These results underscore the importance of monitoring air quality and taking action to reduce pollution to safeguard public health.
空气污染对人类和环境构成了重大威胁,因为它会带来有害影响。由于与慢性健康问题(如呼吸道疾病、肺癌和哮喘)密切相关,细颗粒物(PM)引起了科学界和监管部门的极大关注。预测空气质量并评估空气污染物(如颗粒物)对健康的影响,对于保护公众健康至关重要。
本研究结合了天气、交通、绿地信息和时间参数,以预测空气质量指数(AQI)和 PM。交通数据在预测空气污染方面起着至关重要的作用,因为它会显著影响空气质量。因此,将交通数据纳入 ANN 模型是必要且有价值的。绿地也会影响空气质量,将其纳入神经网络模型可以提高预测精度。影响 AQI 的关键因素包括两天的滞后时间、公园与 AQI 监测站的距离、每个公园与 AQI 监测站之间的平均距离以及空气温度。此外,每个公园之间的平均距离、公园数量、季节性变化以及车辆总数是影响 PM 的主要因素。
简单有效的多层感知器人工神经网络(MLP-ANN)分别在预测 AQI 和 PM 时显示出 0.82 和 0.93 的相关系数(R)。本研究还使用 ANN 模型预测的 PM 值来评估空气污染升高对健康的影响。结果表明,PM 水平升高会增加呼吸道症状的可能性。在儿童中,支气管炎更为普遍,而在成人中,慢性支气管炎的发病率更高。据估计,儿童和成人的归因比例分别为 6.87%和 9.72%。这些结果强调了监测空气质量和采取行动减少污染以保护公众健康的重要性。