Instance-based transfer learning for soil organic carbon estimation

Soil organic carbon (SOC) is a vital component for sustainable agricultural production. This research investigates the transfer learning-based neural network model to improve classical machine learning estimation of SOC values from other geochemical and physical soil parameters. The results on datas...

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Main Authors: Petar Bursać, Miloš Kovačević , Branislav Bajat
Format: Article
Language:English
Published: Frontiers Media S.A. 2022-09-01
Series:Frontiers in Environmental Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fenvs.2022.1003918/full
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author Petar Bursać
Miloš Kovačević 
Branislav Bajat
author_facet Petar Bursać
Miloš Kovačević 
Branislav Bajat
author_sort Petar Bursać
collection DOAJ
description Soil organic carbon (SOC) is a vital component for sustainable agricultural production. This research investigates the transfer learning-based neural network model to improve classical machine learning estimation of SOC values from other geochemical and physical soil parameters. The results on datasets based on LUCAS data from 2015 showed that the Instance-based transfer learning model captured the valuable information contained in different source domains (cropland and grassland) of soil samples when estimating the SOC values in arable cropland areas. The effects of using transfer learning are more pronounced in the case of different source (grassland) and target (cropland) domains. Obtained results indicate that the transfer learning (TL) approach provides better or at least equal output results compared to the classical machine learning procedure. The proposed TL methodology could be used to generate a pedotransfer function (PTF) for target domains with described samples and unknown related PTF outputs if the described samples with known related PTF outputs from a different geographic or similar land class source domain are available.
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spelling doaj.art-fb69205ddc1e4512a5e179ddd4497b0f2022-12-22T03:13:59ZengFrontiers Media S.A.Frontiers in Environmental Science2296-665X2022-09-011010.3389/fenvs.2022.10039181003918Instance-based transfer learning for soil organic carbon estimationPetar BursaćMiloš Kovačević Branislav BajatSoil organic carbon (SOC) is a vital component for sustainable agricultural production. This research investigates the transfer learning-based neural network model to improve classical machine learning estimation of SOC values from other geochemical and physical soil parameters. The results on datasets based on LUCAS data from 2015 showed that the Instance-based transfer learning model captured the valuable information contained in different source domains (cropland and grassland) of soil samples when estimating the SOC values in arable cropland areas. The effects of using transfer learning are more pronounced in the case of different source (grassland) and target (cropland) domains. Obtained results indicate that the transfer learning (TL) approach provides better or at least equal output results compared to the classical machine learning procedure. The proposed TL methodology could be used to generate a pedotransfer function (PTF) for target domains with described samples and unknown related PTF outputs if the described samples with known related PTF outputs from a different geographic or similar land class source domain are available.https://www.frontiersin.org/articles/10.3389/fenvs.2022.1003918/fullsoil organic carbonestimationLUCAS datatransfer learningBhattasharyya distancePTF
spellingShingle Petar Bursać
Miloš Kovačević 
Branislav Bajat
Instance-based transfer learning for soil organic carbon estimation
Frontiers in Environmental Science
soil organic carbon
estimation
LUCAS data
transfer learning
Bhattasharyya distance
PTF
title Instance-based transfer learning for soil organic carbon estimation
title_full Instance-based transfer learning for soil organic carbon estimation
title_fullStr Instance-based transfer learning for soil organic carbon estimation
title_full_unstemmed Instance-based transfer learning for soil organic carbon estimation
title_short Instance-based transfer learning for soil organic carbon estimation
title_sort instance based transfer learning for soil organic carbon estimation
topic soil organic carbon
estimation
LUCAS data
transfer learning
Bhattasharyya distance
PTF
url https://www.frontiersin.org/articles/10.3389/fenvs.2022.1003918/full
work_keys_str_mv AT petarbursac instancebasedtransferlearningforsoilorganiccarbonestimation
AT miloskovacevic instancebasedtransferlearningforsoilorganiccarbonestimation
AT branislavbajat instancebasedtransferlearningforsoilorganiccarbonestimation