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Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity

Inland waters are of great importance for scientists as well as authorities since they are essential ecosystems and well known for their biodiversity. When monitoring their respective water quality, in situ measurements of water quality parameters are spatially limited, costly and time-consuming. In...

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Autores principales: Keller, Sina, Maier, Philipp M., Riese, Felix M., Norra, Stefan, Holbach, Andreas, Börsig, Nicolas, Wilhelms, Andre, Moldaenke, Christian, Zaake, André, Hinz, Stefan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6164519/
https://www.ncbi.nlm.nih.gov/pubmed/30200256
http://dx.doi.org/10.3390/ijerph15091881
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author Keller, Sina
Maier, Philipp M.
Riese, Felix M.
Norra, Stefan
Holbach, Andreas
Börsig, Nicolas
Wilhelms, Andre
Moldaenke, Christian
Zaake, André
Hinz, Stefan
author_facet Keller, Sina
Maier, Philipp M.
Riese, Felix M.
Norra, Stefan
Holbach, Andreas
Börsig, Nicolas
Wilhelms, Andre
Moldaenke, Christian
Zaake, André
Hinz, Stefan
author_sort Keller, Sina
collection PubMed
description Inland waters are of great importance for scientists as well as authorities since they are essential ecosystems and well known for their biodiversity. When monitoring their respective water quality, in situ measurements of water quality parameters are spatially limited, costly and time-consuming. In this paper, we propose a combination of hyperspectral data and machine learning methods to estimate and therefore to monitor different parameters for water quality. In contrast to commonly-applied techniques such as band ratios, this approach is data-driven and does not rely on any domain knowledge. We focus on CDOM, chlorophyll a and turbidity as well as the concentrations of the two algae types, diatoms and green algae. In order to investigate the potential of our proposal, we rely on measured data, which we sampled with three different sensors on the river Elbe in Germany from 24 June–12 July 2017. The measurement setup with two probe sensors and a hyperspectral sensor is described in detail. To estimate the five mentioned variables, we present an appropriate regression framework involving ten machine learning models and two preprocessing methods. This allows the regression performance of each model and variable to be evaluated. The best performing model for each variable results in a coefficient of determination [Formula: see text] in the range of 89.9% to 94.6%. That clearly reveals the potential of the machine learning approaches with hyperspectral data. In further investigations, we focus on the generalization of the regression framework to prepare its application to different types of inland waters.
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spelling pubmed-61645192018-10-12 Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity Keller, Sina Maier, Philipp M. Riese, Felix M. Norra, Stefan Holbach, Andreas Börsig, Nicolas Wilhelms, Andre Moldaenke, Christian Zaake, André Hinz, Stefan Int J Environ Res Public Health Article Inland waters are of great importance for scientists as well as authorities since they are essential ecosystems and well known for their biodiversity. When monitoring their respective water quality, in situ measurements of water quality parameters are spatially limited, costly and time-consuming. In this paper, we propose a combination of hyperspectral data and machine learning methods to estimate and therefore to monitor different parameters for water quality. In contrast to commonly-applied techniques such as band ratios, this approach is data-driven and does not rely on any domain knowledge. We focus on CDOM, chlorophyll a and turbidity as well as the concentrations of the two algae types, diatoms and green algae. In order to investigate the potential of our proposal, we rely on measured data, which we sampled with three different sensors on the river Elbe in Germany from 24 June–12 July 2017. The measurement setup with two probe sensors and a hyperspectral sensor is described in detail. To estimate the five mentioned variables, we present an appropriate regression framework involving ten machine learning models and two preprocessing methods. This allows the regression performance of each model and variable to be evaluated. The best performing model for each variable results in a coefficient of determination [Formula: see text] in the range of 89.9% to 94.6%. That clearly reveals the potential of the machine learning approaches with hyperspectral data. In further investigations, we focus on the generalization of the regression framework to prepare its application to different types of inland waters. MDPI 2018-08-30 2018-09 /pmc/articles/PMC6164519/ /pubmed/30200256 http://dx.doi.org/10.3390/ijerph15091881 Text en © 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Keller, Sina
Maier, Philipp M.
Riese, Felix M.
Norra, Stefan
Holbach, Andreas
Börsig, Nicolas
Wilhelms, Andre
Moldaenke, Christian
Zaake, André
Hinz, Stefan
Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity
title Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity
title_full Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity
title_fullStr Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity
title_full_unstemmed Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity
title_short Hyperspectral Data and Machine Learning for Estimating CDOM, Chlorophyll a, Diatoms, Green Algae and Turbidity
title_sort hyperspectral data and machine learning for estimating cdom, chlorophyll a, diatoms, green algae and turbidity
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6164519/
https://www.ncbi.nlm.nih.gov/pubmed/30200256
http://dx.doi.org/10.3390/ijerph15091881
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