Retrieval of Coloured Dissolved Organic Matter with Machine Learning Methods

01/07/2021
by   Ana B. Ruescas, et al.
0

The coloured dissolved organic matter (CDOM) concentration is the standard measure of humic substance in natural waters. CDOM measurements by remote sensing is calculated using the absorption coefficient (a) at a certain wavelength (e.g. 440nm). This paper presents a comparison of four machine learning methods for the retrieval of CDOM from remote sensing signals: regularized linear regression (RLR), random forest (RF), kernel ridge regression (KRR) and Gaussian process regression (GPR). Results are compared with the established polynomial regression algorithms. RLR is revealed as the simplest and most efficient method, followed closely by its nonlinear counterpart KRR.

READ FULL TEXT
research
12/08/2020

Retrieval of Case 2 Water Quality Parameters with Machine Learning

Water quality parameters are derived applying several machine learning r...
research
04/03/2019

Estimating Chlorophyll a Concentrations of Several Inland Waters with Hyperspectral Data and Machine Learning Models

Water is a key component of life, the natural environment and human heal...
research
03/01/2022

Results Merging in the Patent Domain

In this paper, we test machine learning methods for results merging in p...
research
09/30/2021

Mulberry Leaf Yield Prediction Using Machine Learning Techniques

Soil nutrients are essential for the growth of healthy crops. India prod...
research
05/08/2022

Joint Study of Above Ground Biomass and Soil Organic Carbon for Total Carbon Estimation using Satellite Imagery in Scotland

Land Carbon verification has long been a challenge in the carbon credit ...
research
11/23/2018

Nonlinear Regression without i.i.d. Assumption

In this paper, we consider a class of nonlinear regression problems with...
research
12/11/2020

A Methodology to Derive Global Maps of Leaf Traits Using Remote Sensing and Climate Data

This paper introduces a modular processing chain to derive global high-r...

Please sign up or login with your details

Forgot password? Click here to reset