4.7 Article

Kd(PAR) and a Depth Based Model to Estimate the Height of Submerged Aquatic Vegetation in an Oligotrophic Reservoir: A Case Study at Nova Avanhandava

Journal

REMOTE SENSING
Volume 11, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/rs11030317

Keywords

remote sensing; water quality; inland waters; Boolean classification; echosounder data

Funding

  1. Sao Paulo Research Foundation-FAPESP [2012/19821-1, 2013/09045-7, 15/21586-9]
  2. National Counsel of Technological and Scientific Development-CNPq [400881/2013-6, 472131/2012-5, 482605/2013-8]
  3. Fundacao de Amparo a Pesquisa do Estado de Sao Paulo (FAPESP) [15/21586-9] Funding Source: FAPESP

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Submerged aquatic vegetation (SAV) carry out important biological functions in freshwater systems, however, uncontrolled growth can lead to many negative ecologic and economic impacts. Radiation availability is the primary limiting factor for SAV and it is a function of water transparency measured by K-d(PAR) (downwelling attenuation coefficient of Photosynthetically Active Radiation) and depth. The aim of this study was to develop a K-d(PAR) and depth based model to estimate the height of submerged aquatic vegetation in a tropical oligotrophic reservoir. This work proposed a new graphical model to represent the SAV height in relation to K-d(PAR) and depth. Based on the visual analysis of the model, it was possible to establish a set of Boolean rules to classify the SAV height and identify regions where SAV can grow with greater or lesser vigor. K-d(PAR) was estimated using a model based on satellite data. Overall, the occurrence and height of SAV were directly influenced by the K-d(PAR), depending on the depth. This study highlights the importance of optical parameters in examining the occurrence and status of SAV in Brazilian Reservoirs. It was concluded that the digital model and its graphical representation overcomes the limitations found by other researchers to understand the SAV behavior in relation to those independent variables: depth and K-d(PAR).

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