Journal of Novel Engineering Science and Technology
Vol. 2 No. 01 (2023): Journal of Novel Engineering Science and Technology

AI Big Data System to Predict Air Quality for Environmental Toxicology Monitoring

Adi Jufriansah (IKIP Muhammadiyah Maumere)
Azmi Khusnani (IKIP Muhammadiyah Maumere)
Yudhiakto Pramudya (Universitas Ahmad Dahlan)
Nursina Sya’bania (IKIP Muhammadiyah Maumere)
Kristina Theresia Leto (IKIP Muhammadiyah Maumere)
Hamzarudin Hikmatiar (IKIP Muhammadiyah Maumere)
Sabarudin Saputra (Universitas Ahmad Dahlan)



Article Info

Publish Date
04 Apr 2023

Abstract

Pollutants in the air have a detrimental effect on both human existence and the environment. Because it is closely linked to climate change and the effects of global warming, research on air quality is currently receiving attention from a variety of disciplines. The science of forecasting air quality has evolved over time, and the actions of different gases (hazardous elements) and other components directly affect the health of the ecosystem. This study aims to present the development of a prediction system based on artificial intelligence models using a database of air quality sensors.This study develops a prediction model using machine learning (ML) and a Decision Tree (DT) algorithm that can enable decision harmonization across different industries with high accuracy. Based on pollutant levels and the classification outcomes from each cluster's analysis, statistical forecasting findings with a model accuracy of 0.95 have been achieved. This may act as a guiding factor in the development of air quality policies that address global consequences, international rescue efforts, and the preservation of the gap in air quality index standardization.

Copyrights © 2023






Journal Info

Abbrev

JNEST

Publisher

Subject

Computer Science & IT Control & Systems Engineering Decision Sciences, Operations Research & Management Environmental Science Mechanical Engineering

Description

Journal of Novel Engineering Science and Technology is a multi-disciplinary international open-access journal dedicated to natural science, technology, and engineering, as well as its derived applications in various fields. JNEST publishes high-quality original research articles and reviews in all ...