Litcius/Paper detail

COVID-19 Time Series Forecast Using Transmission Rate and Meteorological Parameters as Features

Mohsen Mousavi, Rohit Salgotra, Damien Holloway, Amir H. Gandomi

2020IEEE Computational Intelligence Magazine28 citationsDOI

Abstract

The number of confirmed cases of COVID-19 has been ever increasing worldwide since its outbreak in Wuhan, China. As such, many researchers have sought to predict the dynamics of the virus spread in different parts of the globe. In this paper, a novel systematic platform for prediction of the future number of confirmed cases of COVID-19 is proposed, based on several factors such as transmission rate, temperature, and humidity. The proposed strategy derives systematically a set of appropriate features for training Recurrent Neural Networks (RNN). To that end, the number of confirmed cases (CC) of COVID-19 in three states of India (Maharashtra, Tamil Nadu and Gujarat) is taken as a case study. It has been noted that stationary and nonstationary parts of the features improved the prediction of the stationary and non-stationary trends of the number of confirmed cases, respectively. The new platform has general application and can be used for pandemic time series forecasting.

Topics & Concepts

Coronavirus disease 2019 (COVID-19)Transmission rateComputer scienceTransmission (telecommunications)Time seriesTamilSeries (stratigraphy)Artificial neural networkPandemicMeteorologyArtificial intelligenceData miningStatisticsMachine learningTelecommunicationsMathematicsGeographyBiologyLinguisticsMedicinePhilosophyPathologyInfectious disease (medical specialty)DiseasePaleontologyCOVID-19 diagnosis using AICOVID-19 epidemiological studiesAnomaly Detection Techniques and Applications