Abstract

In this study, a mobile air pollution sensing unit based on the Internet of Things framework was designed for monitoring the concentration of fine particulate matter in three urban areas. This unit was developed using the NodeMCU-32S microcontroller, PMS5003-G5 (particulate matter sensing module), and Ublox NEO-6M V2 (GPS positioning module). The sensing unit transmits data of the particulate matter concentration and coordinates of a polluted location to the backend server through 3G and 4G telecommunication networks for data collection. This system will complement the government’s PM2.5 data acquisition system. Mobile monitoring stations meet the air pollution monitoring needs of some areas that require special observation. For example, an AIoT development system will be installed. At intersections with intensive traffic, it can be used as a reference for government transportation departments or environmental inspection departments for environmental quality monitoring or evacuation of traffic flow. Furthermore, the particulate matter distributions in three areas, namely Xinzhuang, Sanchong, and Luzhou Districts, which are all in New Taipei City of Taiwan, were estimated using machine learning models, the data of stationary monitoring stations, and the measurements of the mobile sensing system proposed in this study. Four types of learning models were trained, namely the decision tree, random forest, multilayer perceptron, and radial basis function neural network, and their prediction results were evaluated. The root mean square error was used as the performance indicator, and the learning results indicate that the random forest model outperforms the other models for both the training and testing sets. To examine the generalizability of the learning models, the models were verified in relation to data measured on three days: 15 February, 28 February, and 1 March 2019. A comparison between the model predicted and the measured data indicates that the random forest model provides the most stable and accurate prediction values and could clearly present the distribution of highly polluted areas. The results of these models are visualized in the form of maps by using a web application. The maps allow users to understand the distribution of polluted areas intuitively.

Highlights

  • Air pollution is the byproduct of human activities

  • Changes distribution in the PM2.5maps concentration in urban areas predicted in real time,up and pollution maps were generated usingwere a web application

  • Through the Internet of Things, the PM2.5 pollution values of the area can be obtained from the alleys and streets, which can compensate for the insufficient number of fixed monitoring stations and the time consuming nature of manual collection

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Summary

Introduction

Air pollution is the byproduct of human activities. the traditional method of collection fails to classify the pollution and cannot produce objective results. Detailed can be installed on in streets These devices are relatively unstable and facilitate monitoring each area, have the advantages of low cost and portability, prone incomplete data collection. Machine models were used to design a predicadvantages of both mobile sensing deviceslearning and regional monitoring stations for pollutant tion system for the PM2.5 concentration in urban areas. Changes distribution in the PM2.5maps concentration in urban areas predicted in real time,up and pollution maps were generated usingwere a web application. To sum these studiesdistribution mentioned above, combining generated using a web application.

System
PM sensing a power and Internet connection
Figure
IoT for Fine Suspended Particulate Monitoring
Design of of the the PM
33. The road section at the upper left
Mobile
Machine Learning Methods
Model Training
Model Training Process
Comparison of the Model
Comparison of the Model Output Results
Measurement Data
Model Predicted Data
March 2019
23. Prediction results for 07:30
6.Conclusions
Full Text
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