COVID-19 Epidemic Prediction Based on Deep Learning

Year:    2023

Author:    Rui Li, Zhihan Zhang, Peng Liu

Journal of Nonlinear Modeling and Analysis, Vol. 5 (2023), Iss. 2 : pp. 354–365

Abstract

In this paper, a multi-layer gated recurrent unit neural network (multi-head GRU) model is proposed to predict the confirmed cases of the new crown epidemic (COVID-19). We extract the time series relationship in the data, and the rolling prediction method is adopted to ensure the simple structure of the model and achieve higher precision and interpretability. The prediction results of this model are compared with the LSTM model, the Transformer model and the infectious disease model (SIR). The results show that the proposed model has higher prediction accuracy. The mean absolute error (MAE) of epidemic prediction in most countries (the United States, Brazil, India, the United Kingdom and Russia) is respectively 197.52, 68.02, 200.67, 24.78 and 123.50, which is much smaller than the prediction error of the SIR model, LSTM model and Transformer model. For the spread of the COVID-19 epidemic, traditional infectious disease models and machine learning models cannot achieve more accurate predictions. In this paper, we use a GRU model to predict the real-time spread of COVID-19, which has fewer parameters so that it can reduce the risk of overfitting to train faster. Meanwhile, it can compensate for the transformer model’s shortcomings to capture local features.

Journal Article Details

Publisher Name:    Global Science Press

Language:    English

DOI:    https://doi.org/10.12150/jnma.2023.354

Journal of Nonlinear Modeling and Analysis, Vol. 5 (2023), Iss. 2 : pp. 354–365

Published online:    2023-01

AMS Subject Headings:   

Copyright:    COPYRIGHT: © Global Science Press

Pages:    12

Keywords:    COVID-19 deep learning time series forecasting gated recurrent unit neural network.

Author Details

Rui Li

Zhihan Zhang

Peng Liu