Litcius/Paper detail

Identification and prediction of time-varying parameters of COVID-19 model: a data-driven deep learning approach

Jie Long, A.Q.M. Khaliq, Khaled M. Furati

2021International Journal of Computer Mathematics53 citationsDOI

Abstract

Data-driven deep learning provides efficient algorithms for parameter identification of epidemiology models. Unlike the constant parameters, the complexity of identifying time-varying parameters is largely increased. In this paper, a variant of physics-informed neural network is adopted to identify the time-varying parameters of the Susceptible-Infectious-Recovered-Deceased model for the spread of COVID-19 by fitting daily reported cases. The learned parameters are verified by utilizing an ordinary differential equation solver to compute the corresponding solutions of this compartmental model. The effective reproduction number based on these parameters is calculated. Long Short-Term Memory neural network is employed to predict the future weekly time-varying parameters. The numerical simulations demonstrate that PINN combined with LSTM yields accurate and effective results.

Topics & Concepts

Artificial neural networkCoronavirus disease 2019 (COVID-19)Ordinary differential equationIdentification (biology)SolverComputer scienceDeep learningConstant (computer programming)Applied mathematicsEpidemic modelArtificial intelligenceAlgorithmDifferential equationTerm (time)Machine learningMathematicsMathematical optimizationInfectious disease (medical specialty)PhysicsMathematical analysisBiologyPathologyMedicineSociologyPopulationDiseaseQuantum mechanicsProgramming languageBotanyDemographyModel Reduction and Neural NetworksCOVID-19 epidemiological studiesFractional Differential Equations Solutions