Agronomy (Dec 2021)

Two-Stage Spatiotemporal Time Series Modelling Approach for Rice Yield Prediction & Advanced Agroecosystem Management

  • Santosha Rathod,
  • Amit Saha,
  • Rahul Patil,
  • Gabrijel Ondrasek,
  • Channappa Gireesh,
  • Madhyavenkatapura Siddaiah Anantha,
  • Dhumannatarao Venkata Krishna Nageswara Rao,
  • Nirmala Bandumula,
  • Ponnuvel Senguttuvel,
  • Arun Kumar Swarnaraj,
  • Shaik N. Meera,
  • Amtul Waris,
  • Ponnuraj Jeyakumar,
  • Brajendra Parmar,
  • Pitchiahpillai Muthuraman,
  • Raman Meenakshi Sundaram

DOI
https://doi.org/10.3390/agronomy11122502
Journal volume & issue
Vol. 11, no. 12
p. 2502

Abstract

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A robust forecast of rice yields is of great importance for medium-to-long-term planning and decision-making in cereal production, from regional to national level. Incorporation of spatially correlated adjacent effects in forecasting models in general, results in accurate forecast. The Space Time Autoregressive Moving Average (STARMA) is the most popular class of model in linear spatiotemporal time series modelling. However, STARMA cannot process nonlinear spatiotemporal relationships in datasets. Alternately, Time Delay Neural Network (TDNN) is a most popular machine learning algorithm to model the nonlinear pattern in data. To overcome these limitations, two-stage STARMA approach was developed to predict rice yield in some of the most intensive national rice agroecosystems in India. The Mean Absolute Percentage Errors value of proposed STARMA-II approach is lower compared to Autoregressive Moving Average (ARIMA) and STARMA model in all examined districts, while the Diebold-Mariano test confirmed that STARMA-II model is significantly different from classical approaches. The proposed STARMA-II approach is promising alternative to classical linear and nonlinear spatiotemporal time series models for estimating mixed linear and nonlinear patterns and can be advanced tool for mid-to-long-term sustainable planning and management of crop yields and patterns in agroecosystems, i.e., food supply and demand from local to regional levels.

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