TERI, The Energy and Resources Institute, IHC Complex, Lodi Road, New Delhi 110003, India.
TERI, The Energy and Resources Institute, IHC Complex, Lodi Road, New Delhi 110003, India.
Sci Total Environ. 2020 Sep 15;735:139454. doi: 10.1016/j.scitotenv.2020.139454. Epub 2020 May 15.
Air pollution is an important issue, especially in megacities across the world. There are emission sources within and also in the regions around these cities, which cause fluctuations in air quality based on prevailing meteorological conditions. Short term air quality forecasting is used not to just possibly mitigate forthcoming high air pollution episodes, but also to plan for reduced exposures of residents. In this study, a model using Artificial Neural Networks (ANN) has been developed to forecast pollutant concentration of PM, PM, NO, and O for the current day and subsequent 4 days in a highly polluted region (32 different locations in Delhi). The model has been trained using meteorological parameters and hourly pollution concentration data for the year 2018 and then used for generating air quality forecasts in real-time. It has also been equipped with Real Time Correction (RTC), to improve the quality of the forecasts by dynamically adjusting the forecasts based on the model performance during the past few days. The model without RTC performs decently, but with RTC the errors are further reduced in forecasted values. The utility of the model has been demonstrated in real-time and model validations were performed for the whole year of 2018 and also independently for 2019. The model shows very good performance for all the pollutants on several evaluation metrics. Coefficient of correlations for various pollutants varies from 0.79-0.88 to 0.49-0.68 between the Day0 to Day4 forecasts. Lowest deterioration of performance was observed for ozone over the four days of forecasts. Use of RTC further improves the model performance for all pollutants.
空气污染是一个重要的问题,尤其是在世界各大城市。这些城市内部和周围地区都有排放源,根据当时的气象条件,这些排放源会导致空气质量波动。短期空气质量预测不仅是为了减轻即将到来的高空气污染事件,也是为了减少居民的暴露风险。在这项研究中,开发了一种使用人工神经网络(ANN)的模型,用于预测高度污染地区(德里的 32 个不同地点)当天和随后 4 天的 PM、PM、NO 和 O 污染物浓度。该模型使用气象参数和 2018 年每小时污染浓度数据进行训练,然后用于实时生成空气质量预测。它还配备了实时校正(RTC),通过根据过去几天的模型性能动态调整预测来提高预测质量。没有 RTC 的模型表现相当不错,但有 RTC 的模型预测值的误差进一步降低。该模型的实用性已经在实时中得到了证明,并对 2018 年全年和 2019 年分别进行了模型验证。该模型在几个评估指标上对所有污染物都表现出非常好的性能。在从第 0 天到第 4 天的预测中,各种污染物的相关系数从 0.79-0.88 到 0.49-0.68 不等。在四天的预测中,臭氧的性能恶化最小。RTC 的使用进一步提高了所有污染物的模型性能。