Air Pollutant Severity Prediction Using Bi-Directional LSTM Network

Ishan Verma, Rahul Ahuja, Hardik Meisheri, Lipika Dey
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引用次数: 29

Abstract

Air pollution has emerged as a universal concern across the globe affecting human health. This increasing danger motivates the study of systems for predicting air pollutant severities ahead of time. In this paper, we have proposed the use of a bi-directional LSTM model to predict air pollutant severity levels ahead of time. We have shown that the predictions can be significantly improved using an ensemble of three Bi-Directional LSTMs (BiLSTM) that model the long-term, short-term and immediate effects of PM2.5 (the key air pollutant) severity levels. Further, weather information data has been taken into account while modelling, since they are found to boost prediction accuracies. Experimental results for multiple locations in New Delhi, India are presented to demonstrate model superiority over earlier techniques.
基于双向LSTM网络的大气污染物严重程度预测
空气污染已成为全球普遍关注的问题,影响着人类健康。这种日益增加的危险促使人们研究能够提前预测空气污染严重程度的系统。在本文中,我们提出了使用双向LSTM模型来提前预测空气污染物的严重程度。我们已经证明,使用三个双向lstm (BiLSTM)的集合可以显著改善预测,这些模型可以模拟PM2.5(主要空气污染物)严重程度的长期、短期和即时影响。此外,在建模时考虑了天气信息数据,因为它们被发现可以提高预测的准确性。在印度新德里的多个地点的实验结果表明,模型优于早期的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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