Prediction of Air Pollution Utilizing an Adaptive Network Fuzzy Inference System with the Aid of Genetic Algorithm
Dr.J. PraveenchandarAssistant Professor, Department Artificial Intelligence and Machine Learning, School of Computer Science and Technology, Karunya Institute of Technology and Sciences (Deemed to be University) Karunya Nagar, Coimbatore, India. praveenjpc@gmail.com0000-0002-5735-8316
K. VenkateshAssistant Professor, Department of CSE, Kalasalingam Academy of Research and Education, India. venkiur@gmail.com0000-0002-5966-013X
B. MohanrajAssistant Professor, Information Technology, Sona College of Technology, Salem, India. bmohanrajcse@gmail.com0000-0001-5153-7359
M. PrasadController of Examinations, KS Rangasamy College of Arts and Science (Autonomous), India. mprasadkrishna@gmail.com0000-0002-9628-2190
Dr.R. UdayakumarDean, CS & IT, Kalinga University, India. rsukumar2007@gmail.com0000-0002-1395-583X
Keywords: Air pollution, prediction, genetic algorithm, adaptive network fuzzy inference system, anfis tree, root mean square error.
Abstract
With the growth of modern lifestyles and the growing urbanization and reliance on fossil fuels, the need for tracking and monitoring air pollution has become more significant. This research used existing information on significant pollutants to forecast their future condition using time-series modeling. Most studies have used Autoregressive Integrated Moving Average (ARIMA) and Logistic Regression (LR) methods to analyze time-series data. Still, employing an Adaptive Neuro Fuzzy Inference System (ANFIS) for this purpose has been infrequent. Conventional time-series prediction approaches use the assumption that there is a linear connection among variables. However, in air pollution modeling, there are non-linear and intricate factors. This paper used an Adaptive Network Fuzzy Inference System with the help of Improved Genetic Algorithm (ANFIS-IGA) to predict air pollution. This work aimed to address this constraint by enhancing the precision of everyday air pollutant prediction via the analysis of time-series data using ANFIS modeling. Air pollution data, including Fine Particulate Matter (FPM), CO, SO2, O3, and NO2, is gathered from the Air Quality Open Data Platform. This research examines the surveillance and prediction of air pollution concentration in indoor and outdoor situations using the ANFIS-IGA model. The model's effectiveness was enhanced and optimized for using IGA. The results indicate that the proposed ANFIS-IGA framework achieved superior performance compared to other models, as shown by the Root Mean Square Error (RMSE) value of 0.052658.