Abstract

Air pollution has been a looming issue of the 21st century that has also significantly impacted the surrounding environment and societal health. Recently, previous studies have conducted extensive research on air pollution and air quality monitoring. Despite this, the fields of air pollution and air quality monitoring remain plagued with unsolved problems. In this study, the Pollution Weather Prediction System (PWP) is proposed to perform air pollution prediction for outdoor sites for various pollution parameters. In the presented research work, we introduced a PWP system configured with pollution-sensing units, such as SDS021, MQ07-CO, NO2-B43F, and Aeroqual Ozone (O3). These sensing units were utilized to collect and measure various pollutant levels, such as PM2.5, PM10, CO, NO2, and O3, for 90 days at Symbiosis International University, Pune, Maharashtra, India. The data collection was carried out between the duration of December 2019 to February 2020 during the winter. The investigation results validate the success of the presented PWP system. In the conducted experiments, linear regression and artificial neural network (ANN)-based AQI (air quality index) predictions were performed. Furthermore, the presented study also found that the customized linear regression methodology outperformed other machine-learning methods, such as linear, ridge, Lasso, Bayes, Huber, Lars, Lasso-lars, stochastic gradient descent (SGD), and ElasticNet regression methodologies, and the customized ANN regression methodology used in the conducted experiments. The overall AQI values of the air pollutants were calculated based on the summation of the AQI values of all the presented air pollutants. In the end, the web and mobile interfaces were developed to display air pollution prediction values of a variety of air pollutants.

Highlights

  • Introduction and Related WorksThe high-paced economy, moving onwards because of construction, agricultural activities, industrial plants, and many other factors, enables development and poses risks to the human race.In such scenarios, it is essential to maintain a healthy life quality that includes some necessary activities, such as having a balanced diet and keeping the body moving

  • Regression methodologies, and the customized artificial neural network (ANN) regression methodology used in the conducted experiments. (iv) In the end, the web and mobile interface was developed to display the air pollution prediction values of a variety of air pollutants

  • We presented two approaches to predict a variety of air pollutants, such as PM2.5, Particulate matter 10 (PM10), carbon monoxide (CO), NO2, and O3: (i) the linear regression-based approach (ii) ANN-based approach

Read more

Summary

Introduction and Related Works

The high-paced economy, moving onwards because of construction, agricultural activities, industrial plants, and many other factors, enables development and poses risks to the human race. The presented approach did not discuss anything about air pollution prediction [6]. Reche et al discussed an air quality monitoring approach for European cities They did not discuss any ideas related to air pollution prediction [9]. Jiang et al discussed various air quality monitoring approaches using social media They did not research the area of air pollution prediction [16]. The proposed approach did not facilitate air pollutants’ air pollution prediction using artificial intelligence (A.I.)-based technologies. According to NAMP reports, India’s government proposed a program called “National Air Quality Monitoring,” which provided data about various pollutants via the www.aqi.in the portal via 779 networking stations. The proposed paper is organized as follows: Section 2 presents the pollution weather prediction system’s necessity and discusses the detailed PWPS workflow. The Appendix A describes the essential concepts such as air quality monitoring, air quality index (AQI), air monitoring stations, and a list of terminologies used in the experiments

The Necessity of the PWP System
Details of the Controller and Sensors
86 KPa to 110 KPa
NO2 -B43F Nitrogen Dioxide Sensing Unit
Layered Architecture of an IoT-Based Air Quality Monitoring System
Physical Sensing Layer
Communication and Networking Layer
20 November
Data Analysis Layer
Data Prediction Layer
Data preprocessing
To build a customized
Results and Discussion
Air Pollution Prediction Using a Linear Regression Methodology
Linear regression
Air Pollution Prediction Using Artificial Neural Networks
PWPS Web and Mobile Interface
Discussion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call