Title of article :
Integrating PSO-GA with ANFIS for predictive analytics of confirmed cases of COVID-19 in Iran
Author/Authors :
Eshaghi Chaleshtori, Amir Department of Industrial Engineering - K.N Toosi University of Technology - Tehran, Iran , Aghaie, Abdollah Department of Industrial Engineering - K.N Toosi University of Technology - Tehran, Iran
Abstract :
The first case of the unknown coronavirus, referred to as COVID-19, was detected
in Wuhan, China, in late December 2019, and spread throughout China and globally.
The total confirmed cases globally are rising day by day. This study proposes a novel
prediction model to estimate and predict the total confirmed cases of COVID-19 in
the next two days, according to Iran’s confirmed cases reported before. The proposed
model is an improved adaptive neuro-fuzzy inference system (ANFIS) using a coevolutionary
PSO-GA algorithm. PSO-GA is generally used to strike a balance
between exploration and exploitation capabilities enhanced further by integrating the
genetic operators, i.e., mutation and crossover in the PSO algorithm. The proposed
model (i.e., PSO-GA-ANFIS) thus aims to enhance the efficiency of the ANFIS
model by determining ANFIS parameters using PSO-GA. The model is assessed by
utilizing epidemiological data provided by John Hopkins University to forecast the
COVID-19 epidemic prevalence trend of Iran in 02.20.2020-06.10.2020-time
window. A comparison was also made between the proposed model and a couple of
available models. The results indicated that the proposed model outperforms the
other models regarding MSE, RMSE, MAPE, and 𝑅2 .
Keywords :
ANFIS , PSO-GA , COVID-19 , prediction model , time series
Journal title :
Journal of Industrial and Systems Engineering (JISE)