Advanced prediction of rice yield gaps under climate uncertainty using machine learning techniques in Eastern India

cg.contactsatispss@gmail.comen_US
cg.contributor.centerInternational Center for Agricultural Research in the Dry Areas - ICARDAen_US
cg.contributor.centerPalli Siksha Bhavana (Institute of Agriculture) - PSBVBen_US
cg.contributor.centerPrajukti Research Private Limiteden_US
cg.contributor.funderInternational Center for Agricultural Research in the Dry Areas - ICARDAen_US
cg.contributor.projectCommunication and Documentation Information Services (CODIS)en_US
cg.contributor.project-lead-instituteInternational Center for Agricultural Research in the Dry Areas - ICARDAen_US
cg.coverage.countryINen_US
cg.coverage.regionSouthern Asiaen_US
cg.creator.idGovind, Ajit: 0000-0002-0656-0004en_US
cg.identifier.doihttps://dx.doi.org/10.1016/j.jafr.2024.101424en_US
cg.isijournalISI Journalen_US
cg.issn2666-1543en_US
cg.journalJournal of agriculture and food researchen_US
cg.subject.agrovocfood securityen_US
cg.subject.agrovocremote sensingen_US
cg.subject.agrovocmachine learningen_US
cg.subject.impactAreaClimate adaptation and mitigationen_US
cg.subject.sdgSDG 13 - Climate actionen_US
cg.volume18en_US
dc.contributorSingha, Chiranjiten_US
dc.contributorGovind, Ajiten_US
dc.creatorSahoo, Satiprasaden_US
dc.date.accessioned2025-02-10T21:45:06Z
dc.date.available2025-02-10T21:45:06Z
dc.description.abstractThe current study focuses on applying machine learning approaches to forecast future Kharif rice yield gaps in eastern India while accounting for climate change implications. To achieve the United Nations Sustainable Development Goals (SDGs), food security must be prioritized. Rice yield has been predicted using Cubist, GBM, MARS, RF, SVM, and XGB machine learning methods, considering six factors: elevation, soil moisture, precipitation, temperature, soil temperature, and actual evapotranspiration. Climatic change scenarios were generated using the latest climatic Coupled Model Intercomparison Project Phase 6 (CMIP6 MIROC6) Shared Socioeconomic Pathways (SSP) 2–4.5 and SSP5-8.5 datasets between 1990 and 2030. Finally, machine learning algorithms were used to identify rice yield gaps to achieve sustainable agricultural intensification. The rice yield validation was completed with 1889 field-based farmer observation records. The results suggest that Murshidabad and Purba Bardhaman districts had very high rice yields (5.60–3.45 t/ha) when using the Cubist model compared to another model. The findings also reveal a poor rice-yielding zone (1.44–0.39 t/ha) in the western region (Purulia) and a northwestern region (half of the west of Birbhum). The Cubist and RF models' maximum and minimum R2 values were 0.73 and 0.72, respectively. The R2 values were also negligible for the XGB, GBM, SVM, and MARS, machine learning models. Projections for rice production in 2030 indicate that the northern and north-eastern regions (Murshidabad and Purba Bardhaman) as well as the southeastern areas (Jhargram and Paschim Medinipur) have the highest yields, categorized as extremely very high (5.56–3.49 t/ha) and high (3.49–2.49 t/ha). A significant rice yield gap (50-40 %) was found in the center and south-east areas (Bankura, Jhargram, and Paschim Medinipur), the northern region (Murshidabad and Birbhum), and the western region (Purulia). In 2030, the north-western region (Birbhum), as well as the middle and south-eastern regions (Bankura, Jhargram, and Paschim Medinipur districts), had the highest proportion of high (50%–40 %) and very high (60%–50 %) rice yield gap. Our findings can contribute to a new viewpoint on agricultural planning and management for sustainable growth in the face of changing climate circumstances.en_US
dc.formatPDFen_US
dc.identifierhttps://mel.cgiar.org/reporting/downloadmelspace/hash/e6b4d2197411078b0da2ae5d0b6f836cen_US
dc.identifier.citationSatiprasad Sahoo, Chiranjit Singha, Ajit Govind. (1/12/2024). Advanced prediction of rice yield gaps under climate uncertainty using machine learning techniques in Eastern India. Journal of agriculture and food research, 18.en_US
dc.identifier.statusOpen accessen_US
dc.identifier.urihttps://hdl.handle.net/20.500.11766/69885
dc.languageenen_US
dc.publisherElsevieren_US
dc.rightsCC-BY-NC-ND-4.0en_US
dc.sourceJournal of agriculture and food research;18,(2024)en_US
dc.subjectrice yield gapen_US
dc.titleAdvanced prediction of rice yield gaps under climate uncertainty using machine learning techniques in Eastern Indiaen_US
dc.typeJournal Articleen_US
dcterms.available2024-09-17en_US
dcterms.issued2024-12-01en_US
mel.impact-factor4.8en_US

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