Journal of Agrometeorology (Dec 2022)

Multistage wheat yield prediction using hybrid machine learning techniques

  • SHREYA GUPTA,
  • ANANTA VASHISTH,
  • P. KRISHNAN,
  • ACHAL LAMA,
  • SHIV PRASAD,
  • ARAVIND K. S.

DOI
https://doi.org/10.54386/jam.v24i4.1835
Journal volume & issue
Vol. 24, no. 4

Abstract

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Wheat being highly affected by the weather, adverse weather drastically reduces the wheat yield. Model was developed for multi stage wheat yield prediction by stepwise multi linear regression (SMLR), support vector regression (SVR), least absolute shrinkage and selection operator (LASSO) and hybrid machine learning LASSO-SVR and SMLR-SVR techniques. Wheat yield data and weather parameter for generating thermal and weather indices during different growth stage for more than 30 years were collected for study area. Analysis was carried out by fixing 70 % of the data for calibration and remaining 30 % dataset for validation in R software. Results showed that LASSO performed best having nRMSE value between 1.22 % at grain filling stage for IARI, New Delhi to 8.36 % for Hisar at flowering stage. The model performance of SVR is increased if a hybrid model in combination with LASSO and SMLR is applied. The hybrid model LASSO-SVR has shown more improvement than SVR model compared with SMLR-SVR.

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