Selection of Best Subset of Weather Input through Step-wise Regression Method for Preharvest Cotton Yield Prediction in Western Agro-climate Zone of Haryana
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Keywords:
Keywords: Maximum temperature, Minimum temperature, Rainfall, Sun shine hours and relative humidity, Trend yield, Crop condition term.Abstract
Zonal-yield models incorporating a linear time trend and agro-meteorological (agromet) variables each spanning successive fortnights within the growth period of the cotton crop are developed within the framework of multiple linear regression analysis. These models have been used to predict the cotton yields in four cotton growing districts namely; Hisar, Bhiwani, Sirsa, Fatehabad covering more than 90% of cotton production of the Haryana State. Linear time-trend has been obtained using cotton yield data of the period 1980-81 to 2011-12. The fortnightly weather data along with trend yield have been utilized for the same period for building the zonal weather-yield models. Models have been validated for subsequent years i.e. 2012-13 to 2017-18, not included in the development of the models. The zonal models were fitted by taking DOA yield as dependent variable and fortnightly weather variables along with trend field/CCT/dummy variables as regressors. The predictive performance(s) of the contending models were observed in terms of average absolute percent deviations of cotton yield forecasts in relation to the observed yield(s) and root mean square error(s). The adequacy of the fitted models was examined through histogram, normal-probability plot for the residuals and residual plot against fitted values for the selected models. Although, the weather variables were found statistically significant as predictors and gave predictions with reasonably high coefficients of determination (R2) but the predictions had too high percent deviations to be acceptable and hence were deemed unsuitable for routine crop yield forecasting. To improve the predictive accuracy of the agromet yield models, a dummy regressor variable in the form of Crop Condition Term (CCT), was added to the weather models. The addition of CCT to the weather models significantly improved the accuracies of the district-level yield predictions in the State. The predictive performance of the zonal agromet models was assessed using multiple metrics, including the adjusted R2, the percent deviations of the forecast yields from the Department of Agriculture (DOA) yield estimates and the root mean square errors (RMSEs).
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References
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