A Study on the Association Between Climate and Corona Virus Outspread in South Indian States

IF 0.7 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Climate Change Pub Date : 2022-12-05 DOI:10.3233/jcc220029
Yoganandan Veeran, Monisha Balasubramaniyan, S. Kandasamy
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Abstract

In this study, we objectively focus on the relationship between the number of coronavirus (COVID-19) cases and key climate variables. We found that the risk of COVID-19 was approximately doubled during warm summer months when the aerosol molecules are likely stimulated by temperature and rainfall. Given that India is currently emerging as the new epicenter for the third and fourth outbreaks of COVID-19, we selected four key hotspot states-Maharashtra, Andhra Pradesh, Kerala, and Tamil Nadu - to closely look into the impact of climate variables on the spread of COVID-19 infected cases during 2020 and 2021. We found that COVID-19 is most active in temperature between 27°C and 32°C, while it is active in monthly average rainfall between 250 mm and 350 mm. This study further confirms that, although temperature and rainfall are not the initial triggers of COVID-19, both variables seem to play significant roles in spreading COVID-19 in India, especially during the summer season of 2020 and 2021, when the Indian summer monsoon was stronger in these four states.
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气候与冠状病毒在南印度各州蔓延之间关系的研究
在本研究中,我们客观地关注了COVID-19病例数与关键气候变量之间的关系。我们发现,在温暖的夏季,当气溶胶分子可能受到温度和降雨的刺激时,COVID-19的风险大约增加了一倍。鉴于印度目前正在成为第三次和第四次COVID-19疫情的新中心,我们选择了马哈拉施特拉邦、安得拉邦、喀拉拉邦和泰米尔纳德邦四个关键热点州,仔细研究2020年和2021年气候变量对COVID-19感染病例传播的影响。我们发现,COVID-19在温度为27°C至32°C之间最活跃,而在月平均降雨量为250毫米至350毫米之间最活跃。这项研究进一步证实,尽管温度和降雨不是COVID-19的初始触发因素,但这两个变量似乎在COVID-19在印度的传播中发挥了重要作用,特别是在2020年和2021年的夏季,当时印度夏季风在这四个邦更为强烈。
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来源期刊
Journal of Climate Change
Journal of Climate Change METEOROLOGY & ATMOSPHERIC SCIENCES-
自引率
16.70%
发文量
18
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