Trajectory Simulation and Prediction of COVID-19 via Compound Natural
Factor (CNF) Model in EDBF Algorithm
Abstract
Natural and non-natural factors have combined effects on the trajectory
of COVID-19 pandemic, but it is difficult to make them separate. To
address this problem, a two-stepped methodology is proposed. First, a
compound natural factor (CNF) model is developed via assigning weight to
each of seven investigated natural factors, i.e., temperature, humidity,
visibility, wind speed, barometric pressure, aerosol and vegetation in
order to show their coupling relationship with the COVID-19 trajectory.
Onward, the empirical distribution based framework (EDBF) is employed to
iteratively optimize the coupling relationship between trajectory and
CNF to express the real interaction. In addition, the collected data is
considered from the backdate, i.e., about 23 days—which contains
14-days incubation period and 9-days invalid human response time—due
to the non-availability of prior information about the natural spreading
of virus without any human intervention(s), and also lag effects of the
weather change and social interventions on the observed trajectory due
to the COVID-19 incubation period; Second, the optimized
CNF-plus-polynomial model is used to predict the future trajectory of
COVID-19.Results revealed that aerosol and visibility show the higher
contribution to transmission, wind speed to death, and humidity followed
by barometric pressure dominate the recovery rates, respectively.
Consequently, the average effect of environmental change to COVID-19
trajectory in China is minor in all variables, i.e., about -0.3%,
+0.3% and +0.1%, respectively. In this research, the response analysis
of COVID-19 trajectory to the compound natural interactions presents a
new prospect on the part of global pandemic trajectory to environmental
changes.