Sensors (Sep 2021)

Machine Learning for Light Sensor Calibration

  • Yichao Zhang,
  • Lakitha O. H. Wijeratne,
  • Shawhin Talebi,
  • David J. Lary

DOI
https://doi.org/10.3390/s21186259
Journal volume & issue
Vol. 21, no. 18
p. 6259

Abstract

Read online

Sunlight incident on the Earth’s atmosphere is essential for life, and it is the driving force of a host of photo-chemical and environmental processes, such as the radiative heating of the atmosphere. We report the description and application of a physical methodology relative to how an ensemble of very low-cost sensors (with a total cost of R2> 0.99. Both the circuits used and the code have been made publicly available. By accurately calibrating the low-cost sensors, we are able to distribute a large number of low-cost sensors in a neighborhood scale area. It provides unprecedented spatial and temporal insights into the micro-scale variability of the wavelength resolved irradiance, which is relevant for air quality, environmental and agronomy applications.

Keywords