Statistical interpretation of environmental influencing parameters on COVID-19 during the lockdown in Delhi, India
Awasthi, Amit1; Sharma, Aditi1; Kaur, Prabhjot1; Gugamsetty, Balakrishnaiah2; Kumar, Akshay3
2020-09
发表期刊ENVIRONMENT DEVELOPMENT AND SUSTAINABILITY
ISSN1387-585X
EISSN1573-2975
摘要The novel coronavirus disease is known as COVID-19, which is declared as a pandemic by the World Health Organization during March 2020. In this study, the COVID-19 connection with various weather parameters like temperature, wind speed, and relative humidity is investigated and the future scenario of COVID-19 is predicted based on the Gaussian model (GM). This study is conducted in Delhi, the capital city of India, during the lowest mobility rate due to strict lockdown nationwide for about two months from March 15 to May 17, 2020. Spearman correlation is applied to obtain the interconnection of COVID-19 cases with weather parameters. Based on statistical analysis, this has been observed that the temperature parameter shows a significant positive trend during the period of study. The number of confirmed cases of COVID-19 is fitted with respect to the number of days by using the Gaussian curve and it is estimated on the basis of the model that maximum cases will go up to 123,886 in number. The maximum number of cases will be observed during the range of 166 +/- 36 days. It is also estimated by using the width of the fitted GM that it will take minimum of 10 months for the complete recovery from COVID-19. Additionally, the linear regression technique is used to find the trend of COVID-19 cases with temperature and it is estimated that with an increase in temperature by 1 degrees C, 30 new COVID-19 cases on daily basis will be expected to observe. This study is believed to be a preliminary study and to better understand the concrete relationship of coronavirus, at least one complete cycle is essential to investigate. The laboratory-based study is essential to be done to support the present field-based study. Henceforth, based on preliminary studies, significant inputs are put forth to the research community and government to formulate thoughtful strategies like medical facilities such as ventilators, beds, testing centers, quarantine centers, etc., to curb the effects of COVID-19.
关键词Coronavirus COVID-19 Exposure studies Gaussian model Pandemic Weather parameters
DOI10.1007/s10668-020-01000-9
WOS关键词AIR-QUALITY ; IMPACT ; EVENT ; SARS
WOS研究方向Science & Technology - Other Topics ; Environmental Sciences & Ecology
WOS类目Green & Sustainable Science & Technology ; Environmental Sciences
出版者SPRINGER
引用统计
文献类型期刊论文
专题新冠肺炎
循证社会科学证据集成
作者单位1.Univ Petr & Energy Studies;
2.Sri Krishnadevaraya Univ;
3.Sri Guru Granth Sahib World Univ Fatehgarh Sahib
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GB/T 7714
Awasthi, Amit,Sharma, Aditi,Kaur, Prabhjot,et al. Statistical interpretation of environmental influencing parameters on COVID-19 during the lockdown in Delhi, India[J]. ENVIRONMENT DEVELOPMENT AND SUSTAINABILITY,2020.
APA Awasthi, Amit,Sharma, Aditi,Kaur, Prabhjot,Gugamsetty, Balakrishnaiah,&Kumar, Akshay.(2020).Statistical interpretation of environmental influencing parameters on COVID-19 during the lockdown in Delhi, India.ENVIRONMENT DEVELOPMENT AND SUSTAINABILITY.
MLA Awasthi, Amit,et al."Statistical interpretation of environmental influencing parameters on COVID-19 during the lockdown in Delhi, India".ENVIRONMENT DEVELOPMENT AND SUSTAINABILITY (2020).
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