Dbouk Talib, Drikakis Dimitris
University of Nicosia, Nicosia CY-2417, Cyprus.
Phys Fluids (1994). 2021 Feb 1;33(2):021901. doi: 10.1063/5.0037640. Epub 2021 Feb 2.
Epidemic models do not account for the effects of climate conditions on the transmission dynamics of viruses. This study presents the vital relationship between weather seasonality, airborne virus transmission, and pandemic outbreaks over a whole year. Using the data obtained from high-fidelity multi-phase, fluid dynamics simulations, we calculate the concentration rate of Coronavirus particles in contaminated saliva droplets and use it to derive a new Airborne Infection Rate (AIR) index. Combining the simplest form of an epidemiological model, the susceptible-infected-recovered, and the AIR index, we show through data evidence how weather seasonality induces two outbreaks per year, as it is observed with the COVID-19 pandemic worldwide. We present the results for the number of cases and transmission rates for three cities, New York, Paris, and Rio de Janeiro. The results suggest that two pandemic outbreaks per year are inevitable because they are directly linked to what we call weather seasonality. The pandemic outbreaks are associated with changes in temperature, relative humidity, and wind speed independently of the particular season. We propose that epidemiological models must incorporate climate effects through the AIR index.
流行疾病模型并未考虑气候条件对病毒传播动态的影响。本研究揭示了全年天气季节性、空气传播病毒以及大流行爆发之间的重要关系。利用从高保真多相流体动力学模拟获得的数据,我们计算了受污染唾液飞沫中冠状病毒颗粒的浓度率,并据此推导出一个新的空气传播感染率(AIR)指数。结合最简单形式的流行病学模型——易感-感染-康复模型以及AIR指数,我们通过数据证据表明,正如在全球范围内观察到的新冠疫情那样,天气季节性如何每年引发两次疫情爆发。我们展示了纽约、巴黎和里约热内卢三个城市的病例数和传播率结果。结果表明,每年两次大流行爆发是不可避免的,因为它们与我们所说的天气季节性直接相关。大流行爆发与温度、相对湿度和风速的变化相关,与特定季节无关。我们建议流行病学模型必须通过AIR指数纳入气候影响。