Calibration of a low-cost PM2.5 monitor using a random forest model

Environ Int. 2019 Dec;133(Pt A):105161. doi: 10.1016/j.envint.2019.105161. Epub 2019 Oct 11.

Abstract

Background: Particle air pollution has adverse health effects, and low-cost monitoring among a large population group is an effective method for performing environmental health studies. However, concern about the accuracy of low-cost monitors has affected their popularization in monitoring projects.

Objective: To calibrate a low-cost particle monitor (HK-B3, Hike, China) through a controlled exposure experiment.

Methods: Our study used a MicroPEM monitor (RTI, America) as a standard particle concentration measurement device to calibrate the Hike monitors. A machine learning model was established to calibrate the particle concentration obtained by the low-cost PM2.5 monitors, and ten-fold validation was used to test the model. In addition, we used a linear regression model to compare the results of the machine learning model. A calibration method was established for the low-cost monitors, and it can be used to apply the monitors in future air pollution monitoring projects.

Results: The values of the random forest model calibration results and observations were more condensed around the regression line y = 0.99x + 0.05, and the R squared value (R2 = 0.98) was higher than that for the linear regression (R2 = 0.87). The random forest model showed better performance than the traditional linear regression model.

Conclusions: Our study provided an effective calibration method to support the accuracy of low-cost monitors. The machine learning method based on the calibration model established in our study can increase the effectiveness of future air pollution and health studies.

Keywords: Calibration; Low-cost; Monitor; PM(2.5); Random forest model.

Publication types

  • Evaluation Study
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Air Pollutants / analysis*
  • Calibration
  • China
  • Environmental Monitoring / economics
  • Environmental Monitoring / instrumentation*
  • Environmental Monitoring / methods
  • Humans
  • Linear Models
  • Machine Learning
  • Particulate Matter / analysis*

Substances

  • Air Pollutants
  • Particulate Matter