Department of Computer Science and Mathematics, Bangladesh Agricultural University, Mymensingh, 2202, Bangladesh.
Environ Sci Pollut Res Int. 2022 Sep;29(44):67103-67114. doi: 10.1007/s11356-022-20196-z. Epub 2022 May 6.
Coronavirus (COVID-19) is a highly contagious virus (SARS-CoV-2) that has caused a global pandemic since January 2020. Scientists around the world are doing extensive research to control this disease. They are working tirelessly to find out the origin and causes of the disease. Several studies and experiments mentioned that there are some meteorological parameters which are highly correlated with COVID-19 transmission. In this work, we studied the effects of 11 meteorological parameters on the transmission of COVID-19 in Bangladesh. We first applied statistical analysis and observed that there is no significant effect of these parameters. Therefore, we proposed a novel technique to analyze the insight effects of these parameters by using a combination of Random Forest, CART, and Lasso feature selection techniques. We observed that 4 parameters are highly influential for COVID-19 where [Formula: see text] and Cloud have positive association whereas WS and AQ have negative impact. Among them, Cloud has the highest positive impact which is 0.063 and WS has the highest negative association which is [Formula: see text]. Moreover, we have validated our performance using DLNM technique. The result of this investigation can be used to develop an alert system that will assist the policymakers to know the characteristics of COVID-19 against meteorological parameters and can impose different policies based on the weather conditions.
冠状病毒(COVID-19)是一种高传染性病毒(SARS-CoV-2),自 2020 年 1 月以来已在全球范围内引发大流行。世界各地的科学家正在进行广泛的研究以控制这种疾病。他们正在不懈地努力,以了解疾病的起源和原因。有几项研究和实验提到,有一些气象参数与 COVID-19 的传播高度相关。在这项工作中,我们研究了 11 种气象参数对孟加拉国 COVID-19 传播的影响。我们首先应用了统计分析,发现这些参数没有显著影响。因此,我们提出了一种新的技术,通过使用随机森林、CART 和 Lasso 特征选择技术的组合来分析这些参数的洞察效果。我们观察到 4 个参数对 COVID-19 有很大影响,其中[公式:见正文]和云有正相关,而 WS 和 AQ 有负影响。其中,云的正影响最高,为 0.063,而 WS 的负影响最高,为[公式:见正文]。此外,我们使用 DLNM 技术验证了我们的性能。这项研究的结果可用于开发一个警报系统,帮助决策者了解 COVID-19 对气象参数的特征,并可根据天气条件实施不同的政策。