Frontiers in Environmental Science (Feb 2020)

Hyperspectral Satellite Remote Sensing of Water Quality in Lake Atitlán, Guatemala

  • Africa I. Flores-Anderson,
  • Africa I. Flores-Anderson,
  • Robert Griffin,
  • Robert Griffin,
  • Margaret Dix,
  • Claudia S. Romero-Oliva,
  • Gerson Ochaeta,
  • Juan Skinner-Alvarado,
  • Maria Violeta Ramirez Moran,
  • Betzy Hernandez,
  • Betzy Hernandez,
  • Emil Cherrington,
  • Emil Cherrington,
  • Benjamin Page,
  • Flor Barreno

DOI
https://doi.org/10.3389/fenvs.2020.00007
Journal volume & issue
Vol. 8

Abstract

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In this study we evaluated the applicability of a space-borne hyperspectral sensor, Hyperion, to resolve for chlorophyll a (Chl a) concentration in Lake Atitlan, a tropical mountain lake in Guatemala. In situ water quality samples of Chl a concentration were collected and correlated with water surface reflectance derived from Hyperion images, to develop a semi-empirical algorithm. Existing operational algorithms were tested and the continuous bands of Hyperion were evaluated in an iterative manner. A third order polynomial regression provided a good fit to model Chl a. The final algorithm uses a blue (467 nm) to green (559 nm) band ratio to successfully model Chl a concentrations in Lake Atitlán during the dry season, with a relative error of 33%. This analysis confirmed the suitability of hyperspetral-imagers like Hyperion, to model Chl a concentrations in Lake Atitlán. This study also highlights the need to test and update this algorithm with operational multispectral sensors such as Landsat and Sentinel-2.

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