Change point-driven interrupted time series and machine learning models for forecasting Indian food grain production

cg.authorship.typesCGIAR and developing country instituteen
cg.contributor.affiliationJayashankar Telangana Agricultural Universityen
cg.contributor.affiliationICAR-Indian Institute of Rice Researchen
cg.contributor.affiliationInternational Rice Research Instituteen
cg.coverage.countryIndia
cg.coverage.iso3166-alpha2IN
cg.coverage.regionSouthern Asia
cg.howPublishedFormally Publisheden
cg.identifier.doihttps://doi.org/10.1007/s44187-025-00350-5en
cg.identifier.urlhttps://link.springer.com/article/10.1007/s44187-025-00350-5en
cg.isijournalISI Journalen
cg.issn2731-4286en
cg.issue1en
cg.journalDiscover Fooden
cg.reviewStatusPeer Reviewen
cg.volume5en
dc.contributor.authorChitikela, Gayathrien
dc.contributor.authorRathod, Santoshaen
dc.contributor.authorVijayakumar, S.en
dc.date.accessioned2025-04-30T06:48:27Zen
dc.date.available2025-04-30T06:48:27Zen
dc.identifier.urihttps://hdl.handle.net/10568/174392
dc.titleChange point-driven interrupted time series and machine learning models for forecasting Indian food grain productionen
dcterms.abstractThis study develops interrupted models to forecast Indian food grain production under the influence of an intervention event. A Pettitt test identified 1987 as a significant change point (p < 0.0001), indicating a structural shift in the agricultural production system. The study employs interrupted time series and machine learning models, including autoregressive integrated moving average (ARIMA), interrupted ARIMA, artificial neural network (ANN), and interrupted ANN, to forecast key food grains such as rice, wheat, coarse cereals, total cereals, pulses, and total food grains. The intervention effect was significant for most commodities, with 1987 coded as 1 and other years as 0. The interrupted models particularly interrupted ANN, achieved superior accuracy in both training and testing datasets and the highest error reductions, with up to 96.45% for pulses and 99.06% for total food grains in the training dataset and 99.05% for pulses and 91.45% for total food grains in the testing dataset. Despite a negative production effect in 1987, the overall trend remained positive, with average annual production increases of 14.54, 15.28, 3.73, 33.65, 1.63, and 35.18 lakh tons for rice, wheat, coarse cereals, total cereals, pulses, and total food grains, respectively. While interrupted ARIMA models capture linear patterns, they often fail to address nonlinearities. This study addresses this gap by developing interrupted ANN models to capture nonlinearities in Indian food grain production data. This approach offers valuable insights into addressing structural shifts in agricultural systems, improving production forecasting, and supporting evidence-based policy-making in developing economies.en
dcterms.accessRightsOpen Access
dcterms.audienceAcademicsen
dcterms.audienceCGIARen
dcterms.audienceDevelopment Practitionersen
dcterms.audienceDonorsen
dcterms.audienceFarmersen
dcterms.audiencePolicy Makersen
dcterms.audienceScientistsen
dcterms.bibliographicCitationChitikela, Gayathri, Santosha Rathod, and S. Vijayakumar. "Change point-driven interrupted time series and machine learning models for forecasting indian food grain production." Discover Food 5, no. 1 (2025): 1-17.en
dcterms.extentp. 1-17.en
dcterms.issued2024-03-21
dcterms.languageen
dcterms.licenseCC-BY-NC-ND-4.0
dcterms.publisherSpringer Science and Business Media LLCen
dcterms.subjectriceen
dcterms.subjectwheaten
dcterms.subjectcerealsen
dcterms.subjecttime seriesen
dcterms.subjectdata analysisen
dcterms.subjectdeveloping countriesen
dcterms.subjectfarming systemsen
dcterms.subjectforecastingen
dcterms.subjectartificial intelligenceen
dcterms.typeJournal Article

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