基于伊朗马什哈德新冠肺炎疫情预测空气质量数据的混合深度学习模型

Shahne Maryam Zare, Sezavar Amir, Najibi Fatemeh
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摘要

SARS-CoV-2 (COVID-19)大流行的爆发导致了一些封锁,并改变了这个国家的人员流动和生活方式。马什哈德是伊朗污染最严重的城市之一,近年来经历了严重的空气污染状况。本研究在伊朗马什哈德调查了空气质量状况(如流行指数和标准空气污染物浓度)与COVID-19病例和死亡之间的潜在关系。为此,在2019年3月至2022年3月期间,对马什哈德的空气质量、气象数据(如温度、海平面压力、露点和风速)、交通指数和影响死亡人数以及COVID-19活跃病例实施了基于长短期记忆(LSTM)的混合深度学习架构。结果表明,LSTM模型能较准确地预测空气质量。包括MSE、MSLE和MAE在内的实际AQI与预测AQI的最小误差分别为0.0153、0.0058和0.1043。同样,预测的空气质量指数和实际的空气质量指数之间的余弦相似度是1。此外,在大流行的第一个高峰(2021年8月),我们的AQI最小。同时,通过增加活跃病例数和死亡人数以及开始封锁,由于交通减少,空气质量良好,与PM2.5相关的AQI值为54.68。此外,大流行中活跃病例和死亡人数的减少导致AQI显著上升,2021年11月为123.52,这是由于封锁减少、人类活动恢复以及可能出现的逆温。
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A hybrid deep learning model to forecast air quality data based on COVID-19 outbreak in Mashhad, Iran
The SARS-CoV-2 (COVID-19) pandemic outbreak has led to some lockdowns and changed human mobility and lifestyle in this country. Mashhad, one of the most polluted cities in Iran has experienced critical air pollution conditions in recent years. In the present study, the potential relationships between air quality conditions (such as popular index and criteria air pollutant concentration) and COVID-19 cases and deaths were investigated in Mashhad, Iran. To do that, the Long Short-Term Memory (LSTM) based hybrid deep learning architecture was implemented on AQI, meteorological data (such as temperature, sea level pressure, dew points, and wind speed), traffic index and impact number of death, and active cases COVID-19 from March 2019 to March 2022 in Mashhad. The results reveal the LSTM model could predict the AQI accurately. The lower error between the real and predicted AQI, including MSE, MSLE, and MAE is 0.0153, 0.0058, and 0.1043, respectively. Also, the cosine similarity between predicted AQI and real amounts of it is 1. Moreover, in the first peak of the pandemic (Aug 2021), we have the minimum amount of AQI. Meanwhile, by increasing the number of active cases and death and by starting lockdown, because the traffic is decreased, the air quality is good and the amount of AQI related to PM2.5 is 54.68. Furthermore, the decrease the active cases and death in pandemic causes a significant increase in AQI, which is 123.52 in Nov 2021, due to a decline in lockdowns, resumption of human activities, and probable temperature inversions.
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