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Long Term Forecasting of Ambient Air Quality Using Deep Learning Approach

机译:深入学习方法的长期预测环境空气质量

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With the rapid development of urbanization, ambient air pollution has become one of the most serious issues in the worldwide. Particulate matter particles have been found as one of the critical risk factors of several lung diseases and respiratory problems. Numerous countries worldwide are paying their close attention to these risk factors as it became more challenging day by day. Therefore, air quality assessment and forecasting is a major step to mitigate the environmental hazard. This paper proposes a time series based CNN-LSTM-SVR forecasting model, which can deal with the temporal dependency of the massive air pollution dataset and forecast air quality level over the next two weeks. It works better, approximately 91-96% than the baseline models. This model proved a better long term forecasting model, which is very reliable in the field of air quality modeling.
机译:随着城市化的快速发展,环境空气污染已成为全球最严重的问题之一。已发现颗粒物质颗粒作为几种肺病和呼吸问题的临界风险因素之一。全球许多国家正在密切关注这些风险因素,因为它在一天中变得更具挑战性。因此,空气质量评估和预测是减轻环境危害的重要步骤。本文提出基于时间序列的CNN-LSTM-SVR预测模型,可以在未来两周内处理大规模空气污染数据集的时间依赖性和预测空气质量水平。它更好地,比基线模型更好,大约91-96%。该模型证明了更好的长期预测模型,在空气质量建模领域非常可靠。

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