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A Spectral Transfer Function to Harmonize Existing Soil Spectral Libraries Generated by Different Protocols

Authors :
Nicolas Francos
Daniela Heller-Pearlshtien
José A. M. Demattê
Bas Van Wesemael
Robert Milewski
Sabine Chabrillat
Nikolaos Tziolas
Adrian Sanz Diaz
María Julia Yagüe Ballester
Asa Gholizadeh
Eyal Ben-Dor
Source :
Applied and Environmental Soil Science, Vol 2023 (2023)
Publication Year :
2023
Publisher :
Hindawi Limited, 2023.

Abstract

Soil spectral libraries (SSLs) are important big-data archives (spectra associated with soil properties) that are analyzed via machine-learning algorithms to estimate soil attributes. Since different spectral measurement protocols are applied when constructing SSLs, it is necessary to examine harmonization techniques to merge the data. In recent years, several techniques for harmonization have been proposed, among which the internal soil standard (ISS) protocol is the most largely applied and has demonstrated its capacity to rectify systematic effects during spectral measurements. Here, we postulate that a spectral transfer function (TF) can be extracted between existing (old) SSLs if a subset of samples from two (or more) different SSLs are remeasured using the ISS protocol. A machine-learning TF strategy was developed, assembling random forest (RF) spectral-based models to predict the ISS spectral condition using soil samples from two existing SSLs. These SSLs had already been measured using different protocols without any ISS treatment the Brazilian (BSSL, generated in 2019) and the European (LUCAS, generated in 2009–2012) SSLs. To verify the TF’s ability to improve the spectral assessment of soil attributes after harmonizing the different SSLs’ protocols, RF spectral-based models for estimating organic carbon (OC) in soil were developed. The results showed high spectral similarities between the ISS and the ISS–TF spectral observations, indicating that post-ISS rectification is possible. Furthermore, after merging the SSLs with the TFs, the spectral-based assessment of OC was considerably improved, from R2 = 0.61, RMSE (g/kg) = 12.46 to R2 = 0.69, RMSE (g/kg) = 11.13. Given our results, this paper enhances the importance of soil spectroscopy by contributing to analyses in remote sensing, soil surveys, and digital soil mapping.

Details

Language :
English
ISSN :
16877675
Volume :
2023
Database :
Directory of Open Access Journals
Journal :
Applied and Environmental Soil Science
Publication Type :
Academic Journal
Accession number :
edsdoj.fc8c5a02b104b24bdeccdd722280ad9
Document Type :
article
Full Text :
https://doi.org/10.1155/2023/4155390