Abstract


 District level rice yield forecast models were developed for 13 districts of the Brahmaputra valley of Assam using yield data and weekly weather data during 1990-2012 at vegetative (F1) and mid-season (F2) stages of rice crop through modified Hendrick and Scholl technique. The models were validated using independent data set of three years (2013-15). Stepwise regression technique was used for fitting the model and decided best by highest R2 and lowest percent error. The coefficient of determination (R2) ranged from 0.32 (Jorhat) to 0.88 (Kamrup) in F1 stage and 0.29 (Sonitpur) to 0.92 (Kamrup) in F2 forecast. In general, F2 forecast models were found comparatively better in forecasting rice yields than F1 models. Inclusion of BSSH along with temperature (maximum and minimum), rainfall and relative humidity (morning and afternoon) increased the accuracy of the yield forecast models, compared to the model developed without BSSH. Maximum temperature and relative humidity were the major weather parameters in determining rice yields in most of the districts located in central and upper part of the valley. On the other hand, rainfall in combination with maximum temperature and relative humidity were found relatively more important in the districts located in the lower part of the Brahmaputra valley.

Highlights

  • The rice yield forecast models developed for 14 different districts of Brahmaputra valley at F1 and F2 were presented in Table 2 and 3.The forecast models were developed for three districts (Jorhat, Golaghat and Sonitpur) using bright sunshine hours (BSSH) data in addition to the other five weather parameters

  • The results indicated that maximum temperature and RH were the major parameters in determining winter rice yields in most of the selected districts of Upper Brahmaputra valley (UBV), Central Brahmaputra valley (CBV) and North Bank Plains (NBP) zones

  • Using modified Hendrick and Scholl model, yield forecast models were developed at early season (F1) and mid-season (F2) stage of winter rice for 14 districts of the Brahmaputra valley of Assam

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Summary

Introduction

Rice is the most important cereal crop of Assam and contributes 5.7 per cent of rice area and 4.9 per cent of rice production at national level. Development of yield forecast models based on weather variables for timely rice yield forecasts is utmost necessary for future planning, policy making as well as to undertake in-season management decisions during the production process for attaining optimum yield. There are two main approaches to forecast crop yield based on weather parameters viz. Due to its simplicity and less input requirement, statistical models using crop yield and weather data by means of regression techniques have been widely used in crop yield forecasting as a common alternative to simulation models (Lobell and Burke, 2010; Kumar et al, 2019). The Hendricks and Scholl model was further modified in India where the effects of changes in

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