A Method for Chlorophyll-a and Suspended Solids Prediction through Remote Sensing and Machine Learning.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Total Suspended Solids (TSS) and chlorophyll-a concentration are two critical parameters to monitor water quality. Since directly collecting samples for laboratory analysis can be expensive, this paper presents a methodology to estimate this information through remote sensing and Machine Learning (ML) techniques. TSS and chlorophyll-a are optically active components, therefore enabling measurement by remote sensing. Two study cases in distinct water bodies are performed, and those cases use different spatial resolution data from Sentinel-2 spectral images and unmanned aerial vehicles together with laboratory analysis data. In consonance with the methodology, supervised ML algorithms are trained to predict the concentration of TSS and chlorophyll-a. The predictions are evaluated separately in both study areas, where both TSS and chlorophyll-a models achieved R-squared values above 0.8.

Authors

  • Lucas Silveira Kupssinskü
    Vizlab | X-Reality and Geoinformatics Lab, Graduate Programme in Applied Computing, Unisinos University, São Leopoldo 93022-750, Brazil.
  • Tainá Thomassim Guimarães
    Vizlab | X-Reality and Geoinformatics Lab, Graduate Programme in Applied Computing, Unisinos University, São Leopoldo 93022-750, Brazil.
  • Eniuce Menezes de Souza
    Department of Statistics, State University of Maringá-PR, Maringá 87020-900, Brazil.
  • Daniel C Zanotta
    Vizlab | X-Reality and Geoinformatics Lab, Graduate Programme in Applied Computing, Unisinos University, São Leopoldo 93022-750, Brazil.
  • Mauricio Roberto Veronez
    Vizlab | X-Reality and Geoinformatics Lab, Graduate Programme in Applied Computing, Unisinos University, São Leopoldo 93022-750, Brazil.
  • Luiz Gonzaga
    Vizlab | X-Reality and Geoinformatics Lab, Graduate Programme in Applied Computing, Unisinos University, São Leopoldo 93022-750, Brazil.
  • Frederico Fábio Mauad
    São Carlos Engineering School, São Carlos 13566-590, Brazil.