Abstract

BackgroundTime-series forecasting has a critical role during pandemics as it provides essential information that can lead to abstaining from the spread of the disease. The novel coronavirus disease, COVID-19, is spreading rapidly all over the world. The countries with dense populations, in particular, such as India, await imminent risk in tackling the epidemic. Different forecasting models are being used to predict future cases of COVID-19. The predicament for most of them is that they are not able to capture both the linear and nonlinear features of the data solely. MethodsWe propose an ensemble model integrating an autoregressive integrated moving average model (ARIMA) and a nonlinear autoregressive neural network (NAR). ARIMA models are used to extract the linear correlations and the NAR neural network for modeling the residuals of ARIMA containing nonlinear components of the data.Comparison: Single ARIMA model, ARIMA-NAR model and few other existing models which have been applied on the COVID-19 data in different countries are compared based on performance evaluation parameters. ResultThe hybrid combination displayed significant reduction in RMSE (16.23%), MAE (37.89%) and MAPE (39.53%) values when compared with single ARIMA model for daily observed cases. Similar results with reduced error percentages were found for daily reported deaths and cases of recovery as well. RMSE value of our hybrid model was lesser in comparison to other models used for forecasting COVID-19 in different countries. ConclusionResults suggested the effectiveness of the new hybrid model over a single ARIMA model in capturing the linear as well as nonlinear patterns of the COVID-19 data.

Highlights

  • The novel coronavirus, COVID-19 (SARS-CoV-2), which was first reported in Wuhan, China, after the outbreak of exceptional pneumonia in late 2019, has already infected over 5.6 million people and caused more than three fifty thousand deaths worldwide [1]

  • Results suggested the effectiveness of the new hybrid model over a single autoregressive integrated moving average model (ARIMA) model in capturing the linear as well as nonlinear patterns of the COVID-19 data

  • We presented a new hybrid model for COVID-19 time-series forecasting by combining an Auto-Regressive Integrated Moving Average (ARIMA) model with a Nonlinear Auto-Regressive (NAR) neural network

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Summary

Introduction

The novel coronavirus, COVID-19 (SARS-CoV-2), which was first reported in Wuhan, China, after the outbreak of exceptional pneumonia in late 2019, has already infected over 5.6 million people and caused more than three fifty thousand deaths worldwide [1]. Surpassing the fatalities caused by previous outbreaks such as severe acute respiratory syndrome coronavirus (SARS) [2,3], and middle east respiratory syndrome (MERS) [4,5], COVID-19 has been characterized by the world health organization (WHO) as a global pandemic [6]. To curb the outbreak, the nationwide lockdown has been observed in more than two hundred countries and in India. The novel coronavirus disease, COVID-19, is spreading rapidly all over the world. The predicament for most of them is that they are not able to capture both the linear and nonlinear features of the data solely

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