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Air quality index assessment prelude to mitigate environmental hazards

机译:空气质量指标评估前期降低环境危害

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摘要

Air pollution has been a major transboundary problem and a matter of global concern for decades. Climate change and air pollution are closely coupled. Just as air pollution can have adverse effects on human health and ecosystems, it can also impact the earth's climate. As we enter an era of rapid climate change, the implications for air quality need to be better understood, both for the purpose of air quality management and as one of the societal consequences of climate change. In this study, an attempt has been made to estimate the current air quality to forecast the air quality index of an urban station Kolkata (22.65A degrees N, 88.45A degrees E), India for the next 5 years with neural network models. The annual and seasonal variability in the air quality indicates that the winter season is mostly affected by the pollutants. Air quality index (AQI) is estimated as a geometric mean of the pollutants considered. Different neural network models are attempted to select the best model to forecast the AQI of Kolkata. The meteorological parameters and AQI of the previous day are utilized to train the models to forecast the AQI of the next day during the period from 2003 to 2012. The selection of the best model is made after validation with observation from 2013 to 2015. The radial basis functional (RBF) model is found to be the best network model for the purpose. The RBF model with various architectures is tried to obtain precise forecast with minimum error. RBF of 5:5-91-1:1 structure is found to be the best fit for forecasting the AQI of Kolkata.
机译:空气污染一直是一个主要的跨界问题,几十年来全球关注问题。气候变化和空气污染密切联系。正如空气污染可能对人类健康和生态系统产生不利影响时,它也会影响地球的气候。随着我们进入快速气候变化的时代,对于空气质量管理的目的,需要更好地了解空气质量的影响,并作为气候变化的社会后果之一。在这项研究中,已经尝试估算当前的空气质量,以预测城市站Kolkata的空气质量指数(22.65A,88.45A度e),在未来5年与神经网络模型。空气质量的年度和季节变异表明冬季主要受污染物的影响。空气质量指数(AQI)估计是污染物考虑的几何平均值。尝试不同的神经网络模型选择最佳模型以预测加尔各答的AQI。前一天的气象参数和AQI用于培训模型预测第二天期间的第二天的AQI从2003年至2012年期间。在2013年至2015年的观察中验证后,制定了最佳模型。径向基础函数(RBF)模型被发现为目的是最好的网络模型。尝试具有各种架构的RBF模型以获得最小误差的精确预测。 RBF为5:5-91-1:1结构是最适合预测加尔各答的AQI。

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