Forecasting of crop yield using weather parameters - two step nonlinear regression model approach

Authors

  • SANJEEV PANWAR Principal Scientist, ICAR HQ, Indian Council of Agricultural Research, Krishi Bhavan, New Delhi 110 001
  • ANIL KUMAR Principal Scientist, ICAR-IASRI, New Delhi
  • K N SINGH Scientist, ICAR-IASRI, New Delhi
  • RANJIT KUMAR PAUL Principal Scientist, ICAR-IASRI, New Delhi
  • BISHAL GURUNG Scientist, ICAR-IASRI, New Delhi
  • RAJEEV RANJAN Scientist, ICAR-IASRI, New Delhi
  • N M ALAM Scientist, IISWC, Dehradun
  • ABHISHEK RATHORE Principal Scientist, ICRISAT, Hyderabad

DOI:

https://doi.org/10.56093/ijas.v88i10.84230

Keywords:

Detrended yield, Forecasting, Nonlinear regression model, Weather Indices Approach

Abstract

Concept of the paper is firstly to remove the trend of crop yield and then to develop the forecasting models using detrended yield. Not much work is available or development of forecast models or modelling due to their non-linear behaviour. For that, in this paper, methodology developed for forecasting using nonlinear growth models, which will help in forecasting yield, pest and disease incidences etc with high accuracy. Crop yield forecast models for wheat crop have been developed (using non-linear growth models, linear models and weather indices approach with weekly weather data) for different districts of Uttar Pradesh (UP). Weather Indices (WI) were obtained using above two approaches. Weather indices based regression models were developed using weather indices as independent variables while character under study such as crop yield was used as dependent variable for wheat crop, i.e. two step non-linear forecast model. Technique of forecasting using non-linear approach and using weather indices will enrich the knowledge in developing customized models on forecasting for different types of crops and for different locations. The approach provided reliable yield forecast about two months before harvest.

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References

Agrawal, Ranjana, Jain R C, Jha M P and Singh D. 1980. Forecasting of wheat yield using climatic variables. Indian Journal of Agricultural Sciences 50(9): 680–4.

Gurung Bishal, Panwar Sanjeev, Singh K N, Banerjee Rahul, Gurung Sisir Raj and Rathore Abhishek. 2017. Wheat yield forecast using detrended yield over a sub-humid climatic environment in five districts of Uttar Pradesh, India. Indian Journal of Agricultural Sciences 87 (1): 87–91. DOI: https://doi.org/10.56093/ijas.v87i1.67047

Panwar S, Singh K N, Kumar A, Paul R K, Sarkar S K, Gurung B and Rathore A. 2016. Performance evaluation of yield crop forecasting models using weather index regression analysis. Indian Journal of Agricultural Sciences 87 (2): 270–2. DOI: https://doi.org/10.56093/ijas.v87i2.67673

Panwar S, Sharma S C and Kumar A. 2009. A critical study of Onion (Allium cepa) export of India: Nonlinear approach. Indian Journal of Agriculture Sciences 78 (2): 178–80.

Paul R K, Prajneshu and Ghosh H. 2013. Statistical modelling for forecasting of wheat yield based on weather variables. Indian Journal of Agricultural Sciences 83 (2): 180–3.

Paul R K, Ghosh H and Prajneshu. 2014. Development of out-of-sample forecast formulae for ARIMAX-GARCH model and their application. Journal of the Indian Society of Agricultural Statistics 68(1): 85–92.

Seber G A F and Wild C J. 1989. Non-linear Regression. John Wiley and Sons, New York. DOI: https://doi.org/10.1002/0471725315

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Published

2018-10-24

Issue

Section

Articles

How to Cite

PANWAR, S., KUMAR, A., SINGH, K. N., PAUL, R. K., GURUNG, B., RANJAN, R., ALAM, N. M., & RATHORE, A. (2018). Forecasting of crop yield using weather parameters - two step nonlinear regression model approach. The Indian Journal of Agricultural Sciences, 88(10), 1597-1599. https://doi.org/10.56093/ijas.v88i10.84230