Semi-empirical models for remote estimating colored dissolved organic matter (CDOM) in a productive tropical estuary

Environ Monit Assess. 2023 Jun 15;195(7):846. doi: 10.1007/s10661-023-11449-6.

Abstract

Inland waters are important components of the global carbon cycle as they regulate the flow of terrestrial carbon to the oceans. In this context, remote monitoring of Colored Dissolved Organic Matter (CDOM) allows for analyzing the carbon content in aquatic systems. In this study, we develop semi-empirical models for remote estimation of the CDOM absorption coefficient at 400 nm (aCDOM) in a tropical estuarine-lagunar productive system using spectral reflectance data. Two-band ratio models usually work well for this task, but studies have added more bands to the models to reduce interfering signals, so in addition to the two-band ratio models, we tested three- and four-band ratios. We used a genetic algorithm (GA) to search for the best combination of bands, and found that adding more bands did not provide performance gains, showing that the proper choice of bands is more important. NIR-Green models outperformed Red-Blue models. A two-band NIR-Green model showed the best results (R2 = 0.82, RMSE = 0.22 m-1, and MAPE = 5.85%) using field hyperspectral data. Furthermore, we evaluated the potential application for Sentinel-2 bands, especially using the B5/B3, Log(B5/B3) and Log(B6/B2) band ratios. However, it is still necessary to further explore the influence of atmospheric correction (AC) to estimate the aCDOM using satellite data.

Keywords: CDOM; Genetic Algorithm; Productive Estuary; Remote Sensing; Sentinel-2.

MeSH terms

  • Carbon
  • Dissolved Organic Matter*
  • Environmental Monitoring / methods
  • Estuaries*
  • Oceans and Seas

Substances

  • Dissolved Organic Matter
  • Carbon