Modeling Dynamic Patterns From Covid-19 Data Using Randomized Dynamic Mode Decomposition In Predictive Mode And Arima

APPLICATION OF MATHEMATICS IN TECHNICAL AND NATURAL SCIENCES (AMITANS 2020)(2020)

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摘要
The aim of this paper is to gain a deeper understanding of the new Corona virus (Covid-19) dynamics directly from the raw data reported by World Health Organization. We provide a high fidelity mathematical model, fast and computationally inexpensive for modeling the evolution of the pandemic worldwide and we develop an efficient tool for medium term prediction of pandemic dynamics, including infection spreading. We illustrate the excellent behavior of the non-intrusive reduced order model by performing a qualitative analysis.
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关键词
dynamic modeling decomposition,predictive modeling,dynamic patterns,arima
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