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A model for particulate matter (PM 2.5) prediction for Delhi based on machine learning approaches

机译:基于机器学习方法的德里的颗粒物质(PM 2.5 )预测

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Particulate matter (PM2.5) remains one of the most dominant contributors to air pollution in Delhi and its acute or chronic exposures have exerted serious health implications. Hence, it is necessary to accurately predict the magnitude of PM2.5concentrations in order to develop emission reduction strategies for air quality management. In regard to this, few machine learning techniques have been applied to predict daily PM2.5concentrations in Delhi. Two Different models i.e. SVM and ANN, were built on the inputs of various meteorological and pollutant parameters corresponding to 2-year period from 2016-18. Performance evaluation of the models for PM2.5prediction has been executed and the results have been discussed. The results of this simulation exercise indicate that the ANN shows better prediction accuracy than SVM for PM2.5prediction.
机译:颗粒物质(PM2.5)仍然是德里空气污染最多的贡献者之一,其急性或慢性暴露施加严重的健康影响。因此,有必要准确地预测PM2.5中厚度的大小,以便为空气质量管理产生排放策略。关于此,已经应用了很少的机器学习技术以预测Delhi中的每日PM2.5集中。两种不同的模型I.Svm和Ann,建立在2016 - 18年的各种气象和污染物参数的投入。已经执行了PM2.5PREDITIC模型的性能评估,并讨论了结果。该仿真练习的结果表明,ANN显示比PM2.5预测的SVM更好的预测精度。

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