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2021 | OriginalPaper | Chapter

Time Series Forecasting for Coronavirus (COVID-19)

Authors : Priyal Sobti, Anand Nayyar, Preeti Nagrath

Published in: Futuristic Trends in Network and Communication Technologies

Publisher: Springer Singapore

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Abstract

The upsurge of the novel coronavirus has spread to many countries and has been declared a pandemic by WHO. It has shaken the most powerful countries across the world like the USA, UK, and has affected economies of various countries. The coronavirus or the 2019-nCoV causes the disease that has been named COVID-19. This disease transmits by inhaling droplets that are expelled by an infected person. It has been affecting people in different ways and has been found to be threatening for the older population or people with comorbidities. It has been seen that the virus 2019-nCoV spreads faster than the two of its antecedents namely severe acute respiratory syndrome coronavirus (SARS-CoV) and Middle East respiratory syndrome coronavirus (MERS-CoV). No cure or vaccine has been discovered as of now and taking precautions like staying at home are the only possible solutions.
Our study analyzes the current trend of the disease in India and predicts future trends using time series forecasting. The official dataset provided by John Hopkins University through a GitHub repository has been used for the research for the time period of 22 January 2020 to 31 May 2020. The trend in cases, fatalities, and the people who have recovered until the date of 31 May 2020 has been discussed in the paper. It has been seen through the findings that the total number of cases is expected to rise to 2,15,000 by the end of May 2020 i.e. 31 May 2020 as per the AR (Autoregression) model. ARIMA (Autoregressive Integrated Moving Average) model predicts the number of cases to be 2,05,000 until the same date. Actual data has shown that the number of confirmed cases is 1,90,609 as on 31 May 2020 giving a percentage error of 7.57% and 12.85% for ARIMA and AR model respectively. Comparison between the findings of the two models has been shown later in the paper.

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Literature
go back to reference Ansuj, A.P., Camargo, M., Radharamanan, R., Petry, D.: Sales forecasting using time series and neural networks. Comput. Ind. Eng. 31(1–2), 421–424 (1996)CrossRef Ansuj, A.P., Camargo, M., Radharamanan, R., Petry, D.: Sales forecasting using time series and neural networks. Comput. Ind. Eng. 31(1–2), 421–424 (1996)CrossRef
go back to reference Arti, M., Bhatnagar, K.: Modeling and predictions for covid 19 spread in India. ResearchGate (2020) Arti, M., Bhatnagar, K.: Modeling and predictions for covid 19 spread in India. ResearchGate (2020)
go back to reference Baud, D., Qi, X., Nielsen-Saines, K., Musso, D., Pomar, L., Favre, G.: Real estimates of mortality following COVID-19 infection. The Lancet Infectious Diseases (2020) Baud, D., Qi, X., Nielsen-Saines, K., Musso, D., Pomar, L., Favre, G.: Real estimates of mortality following COVID-19 infection. The Lancet Infectious Diseases (2020)
go back to reference Benvenuto, D., Giovanetti, M., Vassallo, L., Angeletti, S., Ciccozzi, M.: Application of the arima model on the Covid-2019 epidemic dataset. Data Brief, 105340 (2020) Benvenuto, D., Giovanetti, M., Vassallo, L., Angeletti, S., Ciccozzi, M.: Application of the arima model on the Covid-2019 epidemic dataset. Data Brief, 105340 (2020)
go back to reference Chatterjee, K., Chatterjee, K., Kumar, A., Shankar, S.: Healthcare impact of Covid-19 epidemic in India: a stochastic mathematical model. Med. J. Armed Forces India (2020) Chatterjee, K., Chatterjee, K., Kumar, A., Shankar, S.: Healthcare impact of Covid-19 epidemic in India: a stochastic mathematical model. Med. J. Armed Forces India (2020)
go back to reference Contreras, J., Espinola, R., Nogales, F.J., Conejo, A.J.: Arima models to predict next-day electricity prices. IEEE Trans. Power Syst. 18(3), 1014–1020 (2003) Contreras, J., Espinola, R., Nogales, F.J., Conejo, A.J.: Arima models to predict next-day electricity prices. IEEE Trans. Power Syst. 18(3), 1014–1020 (2003)
go back to reference Deb, S., Majumdar, M.: A time series method to analyze incidence pattern and estimate reproduction number of covid-19. arXiv preprint arXiv:2003.10655 (2020) Deb, S., Majumdar, M.: A time series method to analyze incidence pattern and estimate reproduction number of covid-19. arXiv preprint arXiv:​2003.​10655 (2020)
go back to reference De Gooijer, J.G., Hyndman, R.J.: 25 years of time series forecasting. Int. J. Forecast. 22(3), 443–473 (2006) De Gooijer, J.G., Hyndman, R.J.: 25 years of time series forecasting. Int. J. Forecast. 22(3), 443–473 (2006)
go back to reference Dehesh, T., Mardani-Fard, H., Dehesh, P.: Forecasting of covid-19 confirmed cases in different countries with arima models. medRxiv (2020) Dehesh, T., Mardani-Fard, H., Dehesh, P.: Forecasting of covid-19 confirmed cases in different countries with arima models. medRxiv (2020)
go back to reference Gupta, R., Pal, S.K.: Trend analysis and forecasting of covid19 outbreak in India. medRxiv (2020) Gupta, R., Pal, S.K.: Trend analysis and forecasting of covid19 outbreak in India. medRxiv (2020)
go back to reference Muralidharan, N., Sakthivel, R., Velmurugan, D., Gromiha, M.M.: Computational studies of drug repurposing and synergism of lopinavir, oseltamivir and ritonavir binding with sars-cov-2 protease against covid-19. J. Biomolecular Struct. Dyn. 56 1–6 (2020) Muralidharan, N., Sakthivel, R., Velmurugan, D., Gromiha, M.M.: Computational studies of drug repurposing and synergism of lopinavir, oseltamivir and ritonavir binding with sars-cov-2 protease against covid-19. J. Biomolecular Struct. Dyn. 56 1–6 (2020)
go back to reference Pandey, G., Chaudhary, P., Gupta, R., Pal, S.: Seir and regression model based covid-19 outbreak predictions in India. arXiv preprint arXiv:2004.00958 (2020) Pandey, G., Chaudhary, P., Gupta, R., Pal, S.: Seir and regression model based covid-19 outbreak predictions in India. arXiv preprint arXiv:​2004.​00958 (2020)
go back to reference Petropoulos, F., Makridakis, S.: Forecasting the novel coronavirus covid-19. PLoS ONE 15(3), (2020)CrossRef Petropoulos, F., Makridakis, S.: Forecasting the novel coronavirus covid-19. PLoS ONE 15(3), (2020)CrossRef
go back to reference Ranjan, R.: Predictions for covid-19 outbreak in India using epidemiological models. medRxiv (2020) Ranjan, R.: Predictions for covid-19 outbreak in India using epidemiological models. medRxiv (2020)
go back to reference Roy, D., Tripathy, S., Kar, S.K., Sharma, N., Verma, S.K., Kaushal, V.: Study of knowledge, attitude, anxiety & perceived mental healthcare need in Indian population during covid-19 pandemic. Asian J. Psychiatry, 102083 (2020) Roy, D., Tripathy, S., Kar, S.K., Sharma, N., Verma, S.K., Kaushal, V.: Study of knowledge, attitude, anxiety & perceived mental healthcare need in Indian population during covid-19 pandemic. Asian J. Psychiatry, 102083 (2020)
go back to reference Sahoo, S., et al.: Self-harm and covid-19 pandemic: an emerging concern–a report of 2 cases from India. Asian J. Psychiatry (2020) Sahoo, S., et al.: Self-harm and covid-19 pandemic: an emerging concern–a report of 2 cases from India. Asian J. Psychiatry (2020)
go back to reference Singh, R., Adhikari, R.: Age-structured impact of social distancing on the covid-19 epidemic in India. arXiv preprint arXiv:2003.12055 (2020) Singh, R., Adhikari, R.: Age-structured impact of social distancing on the covid-19 epidemic in India. arXiv preprint arXiv:​2003.​12055 (2020)
go back to reference Singhal, T.: A review of coronavirus disease-2019 (covid-19). The Indian J. Pediatrics, 1–6 (2020) Singhal, T.: A review of coronavirus disease-2019 (covid-19). The Indian J. Pediatrics, 1–6 (2020)
go back to reference Tanne, J.H., Hayasaki, E., Zastrow, M., Pulla, P., Smith, P., Rada, A.G.: Covid-19: how doctors and healthcare systems are tackling coronavirus worldwide. BMJ, 368 (2020) Tanne, J.H., Hayasaki, E., Zastrow, M., Pulla, P., Smith, P., Rada, A.G.: Covid-19: how doctors and healthcare systems are tackling coronavirus worldwide. BMJ, 368 (2020)
go back to reference Tay, F.E., Cao, L.: Application of support vector machines in financial time series forecasting. Omega, 29(4), 309–317 (2001) Tay, F.E., Cao, L.: Application of support vector machines in financial time series forecasting. Omega, 29(4), 309–317 (2001)
go back to reference Tomar, A., Gupta, N.: Prediction for the spread of covid-19 in India and effectiveness of preventive measures. Sci. Total Environ. 138762 (2020) Tomar, A., Gupta, N.: Prediction for the spread of covid-19 in India and effectiveness of preventive measures. Sci. Total Environ. 138762 (2020)
go back to reference Vellingiri, B., et al.: Covid-19: a promising cure for the global panic. Sci. Total Environ. 138277 (2020) Vellingiri, B., et al.: Covid-19: a promising cure for the global panic. Sci. Total Environ. 138277 (2020)
go back to reference W.H.O.: Coronavirus disease 2019 (Covid19): situation report (2020) W.H.O.: Coronavirus disease 2019 (Covid19): situation report (2020)
Metadata
Title
Time Series Forecasting for Coronavirus (COVID-19)
Authors
Priyal Sobti
Anand Nayyar
Preeti Nagrath
Copyright Year
2021
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-16-1480-4_27

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