Please use this identifier to cite or link to this item: https://hdl.handle.net/1959.11/59729
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dc.contributor.authorJoshi, Abhashaen
dc.contributor.authorPradhan, Biswajeeten
dc.contributor.authorChakraborty, Subrataen
dc.contributor.authorBehera, Mukunda Deven
dc.date.accessioned2024-05-23T00:38:04Z-
dc.date.available2024-05-23T00:38:04Z-
dc.date.issued2023-11-
dc.identifier.citationEcological Informatics, v.77, p. 1-12en
dc.identifier.issn1878-0512en
dc.identifier.issn1574-9541en
dc.identifier.urihttps://hdl.handle.net/1959.11/59729-
dc.description.abstract<p>Predicting crop yield before harvest and understanding the factors determining yield at a regional scale is vital for global food security, supply chain management in agribusiness, crop and insurance pricing and optimising crop production. Often satellite remote sensing data, environmental data or their combinations are used to model crop yield at a regional scale. However, their contribution, including that of recently developed remote sensing data like solar-induced chlorophyll fluorescence (SIF) and near-infrared reflectance of vegetation (NIRv), are not explored sufficiently. This study aims to assess the contribution of weather, soil and remote sensing data to estimate wheat yield prediction at a regional scale. For this, we employed four types of remote sensing data, thirteen climatic variables, four soil variables, and nationwide yield data of 14 years combined with statistical learning methods to predict winter wheat yield in the Conterminous United States (CONUS) and access the role of predicting variables. Machine-learning algorithms were used to build yield prediction models in different experimental settings, and predictive performance was evaluated. Further, the relative importance of predictor variables for the models was assessed to gain insight into the model’s behaviour. NIRv and SIF data are found to be promising for crop yield prediction. The model with only NIRv data explained up to 64% of the variability in yield, and adding SIF data improved it to 69%. We also found that vegetation indices, SIF, climate and soil data all contribute unique and overlapping information to crop yield prediction. The study also identified important variables and the time of the growing period when these variables have higher explanatory power for winter wheat yield prediction. This study enhanced our knowledge of yield-predicting variables, which will contribute to optimising the yield and developing better yield prediction models.</p>en
dc.languageenen
dc.publisherElsevier BVen
dc.relation.ispartofEcological Informaticsen
dc.titleWinter wheat yield prediction in the conterminous United States using solar-induced chlorophyll fluorescence data and XGBoost and random forest algorithmen
dc.typeJournal Articleen
dc.identifier.doi10.1016/J.ECOINF.2023.102194en
local.contributor.firstnameAbhashaen
local.contributor.firstnameBiswajeeten
local.contributor.firstnameSubrataen
local.contributor.firstnameMukunda Deven
local.profile.schoolSchool of Science and Technologyen
local.profile.emailschakra3@une.edu.auen
local.output.categoryC1en
local.record.placeauen
local.record.institutionUniversity of New Englanden
local.publisher.placeThe Netherlandsen
local.identifier.runningnumber102194en
local.format.startpage1en
local.format.endpage12en
local.peerreviewedYesen
local.identifier.volume77en
local.contributor.lastnameJoshien
local.contributor.lastnamePradhanen
local.contributor.lastnameChakrabortyen
local.contributor.lastnameBeheraen
dc.identifier.staffune-id:schakra3en
local.profile.orcid0000-0002-0102-5424en
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.identifier.unepublicationidune:1959.11/59729en
local.date.onlineversion2023-07-06-
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
local.title.maintitleWinter wheat yield prediction in the conterminous United States using solar-induced chlorophyll fluorescence data and XGBoost and random forest algorithmen
local.relation.fundingsourcenoteThis study was supported by the Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS), University of Technology Sydney. The research was supported by an Australian Government Research Training Program Scholarship.en
local.output.categorydescriptionC1 Refereed Article in a Scholarly Journalen
local.search.authorJoshi, Abhashaen
local.search.authorPradhan, Biswajeeten
local.search.authorChakraborty, Subrataen
local.search.authorBehera, Mukunda Deven
local.open.fileurlhttps://rune.une.edu.au/web/retrieve/4dc3a805-781d-4de7-b6bb-70486a7eaf16en
local.uneassociationYesen
local.atsiresearchNoen
local.sensitive.culturalNoen
local.year.available2023en
local.year.published2023en
local.fileurl.openhttps://rune.une.edu.au/web/retrieve/4dc3a805-781d-4de7-b6bb-70486a7eaf16en
local.fileurl.closedpublishedhttps://rune.une.edu.au/web/retrieve/4dc3a805-781d-4de7-b6bb-70486a7eaf16en
local.subject.for20204601 Applied computingen
local.profile.affiliationtypeExternal Affiliationen
local.profile.affiliationtypeExternal Affiliationen
local.profile.affiliationtypeUNE Affiliationen
local.profile.affiliationtypeExternal Affiliationen
local.date.moved2024-05-23en
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School of Science and Technology
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