Prediction of pulse suitability in rice fallow areas using fuzzy AHP-based machine learning methods 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.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.date.embargo-end-dateTimelessen_US
cg.identifier.doihttps://dx.doi.org/10.1007/s10333-024-00970-0en_US
cg.isijournalISI Journalen_US
cg.issn1611-2490en_US
cg.journalPaddy and Water Environmenten_US
cg.subject.agrovocmachine learningen_US
cg.volume22en_US
dc.contributorSingha, Chiranjiten_US
dc.contributorGovind, Ajiten_US
dc.creatorSahoo, Satiprasaden_US
dc.date.accessioned2024-08-19T19:54:26Z
dc.date.available2024-08-19T19:54:26Z
dc.description.abstractIn Eastern India, a widespread practice known as “rice fallow pulse” (RFP) involves using the soil’s remaining moisture to grow a short-duration pulse crop. For rainfed systems, it is an excellent practice of climate adaptation. To help farmers make informed decisions about where to plant what and to help policymakers create favorable conditions for timely seed distribution, it is imperative to forecast the appropriateness of pulse crops both geographically and temporally. Using fuzzy AHP (FAHP)-based machine learning methods, we tried to detect pulse appropriateness both geographically and temporally while considering fifteen natural, climatic, environment, and soil health-related characteristics in the Western Lateritic Zone of the Indian State of West Bengal. According to the findings, all machine learning (ML) techniques identified high-suitability zones in the districts of Murshidabad, Birbhum, Paschim Bardhaman, Paschim Medinipur, and Jhargram. By using machine learning techniques such as shrinkage discriminant analysis (SDA), neural network (nnet), random forest (RF), Naive Bayes (NB), rule-based C5.0, genetic algorithm (GA), and particle swarm optimization (PSO), it was found that moderate suitability zones were visible in some areas of Murshidabad, Birbhum, Paschim Bardhaman, Paschim Medinipur, and Purulia. Additionally, it was noted that all ML approaches revealed maximum low suitability zones in certain areas of Birbhum, Bankura, Purba Bardhaman, Purulia, and Murshidabad. Finally, district-level yearly pulse yields of minor, chickpea, and pigeonpea verified the precision of the ML-based models. We have devised a structure to assess pulse suitability analysis to improve crop and land productivity. One of the world’s most populous regions can use the data to inform policy decisions that will improve food and nutritional security in the face of shifting economic and environmental conditions.en_US
dc.identifierhttps://mel.cgiar.org/dspace/limiteden_US
dc.identifier.citationSatiprasad Sahoo, Chiranjit Singha, Ajit Govind. (1/7/2024). Prediction of pulse suitability in rice fallow areas using fuzzy AHP-based machine learning methods in Eastern India. Paddy and Water Environment, 22, pp. 341-359.en_US
dc.identifier.statusTimeless limited accessen_US
dc.identifier.urihttps://hdl.handle.net/20.500.11766/69489
dc.languageenen_US
dc.publisherSpringer (part of Springer Nature)en_US
dc.sourcePaddy and Water Environment;22,(2024) Pagination 341-359en_US
dc.subjectrice fallow areasen_US
dc.subjectpulse suitabilityen_US
dc.subjectfuzzy-ahpen_US
dc.titlePrediction of pulse suitability in rice fallow areas using fuzzy AHP-based machine learning methods in Eastern Indiaen_US
dc.typeJournal Articleen_US
dcterms.available2024-03-08en_US
dcterms.extent341-359en_US
dcterms.issued2024-07-01en_US
mel.impact-factor1.9en_US

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