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Chaudhary Charan Singh Haryana Agricultural University, Hisar

Chaudhary Charan Singh Haryana Agricultural University popularly known as HAU, is one of Asia's biggest agricultural universities, located at Hisar in the Indian state of Haryana. It is named after India's seventh Prime Minister, Chaudhary Charan Singh. It is a leader in agricultural research in India and contributed significantly to Green Revolution and White Revolution in India in the 1960s and 70s. It has a very large campus and has several research centres throughout the state. It won the Indian Council of Agricultural Research's Award for the Best Institute in 1997. HAU was initially a campus of Punjab Agricultural University, Ludhiana. After the formation of Haryana in 1966, it became an autonomous institution on February 2, 1970 through a Presidential Ordinance, later ratified as Haryana and Punjab Agricultural Universities Act, 1970, passed by the Lok Sabha on March 29, 1970. A. L. Fletcher, the first Vice-Chancellor of the university, was instrumental in its initial growth.

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  • ThesisItemOpen Access
    Random walk and ARIMAX modeling for cotton yield in western zone of Haryana
    (CCSHAU, 2018) Alisha; Verma, Urmil
    Crop yield models are abstract presentation of interaction of the crop with its environment and can range from simple correlation of yield with a finite number of variables to the complex statistical models with predictive end. The pre-harvest forecasts are useful to farmers to decide in advance their future prospects and course of action. The study has been categorized into three parts i.e. the fitting of Random Walk, ARIMA and ARIMAX models for cotton yield forecasting in Hisar, Fatehabad, Sirsa and Bhiwani districts of Haryana. The Random Walk and ARIMA models have been fitted using the time-series cotton yield data for the period 1980-81 to 2010-11 of Hisar and Sirsa districts and 1997-98 to 2010-11 of Fatehabad district. The fortnightly weather data have been utilized as input series from 1980-81 to 2016-17 for fitting/testing the Random walk/ARIMA with weather input i.e. ARIMAX models. Models have been validated using the data on subsequent years i.e. 2011-12 to 2016- 17, not included in the development of the models.The multiple linear regression models with crop condition term as dummy regressor were fitted for Bhiwani district as the cotton yield data being stationary in nature and showing non-significant autocorrelations was not suitable for ARIMA modeling. Though, the MA models were tried but the yield forecasts were beyond acceptable limits. Random Walk i.e. I(1) and ARIMA(0,1,1) for Hisar, Fatehabad and Sirsa districts have been fitted for pre-harvest cotton yield forecasting. Alternatively, the Random Walk models with exogenous input were tried by utilizing the fortnightly weather variables (viz., TMIN1, RF11, SSH3 and SSH4 over the crop growth period). Lastly, the ARIMA models with alternative combinations of weather variables were tried for fitting the ARIMAX models. Following the steps required in SPSS; ARIMA(2,1,0) for Hisar and Fatehabad and ARIMA(0,1,1) for Sirsa districts along with fortnightly weather variables (viz., TMAX5, RF7, SSH4 and RH4 over the crop growth period) as input were finalized as ARIMAX models for district-level cotton yield forecasting. The predictive performance(s) of the contending models i.e. Random Walk, ARIMA and ARIMAX models were observed in terms of the percent deviations of cotton yield forecasts in relation to the observed yield(s) and root mean square error(s) as well. The level of accuracy achieved by ARIMA model(s) with weather input was considered adequate for estimating the cotton yield(s) i.e. the ARIMAX models consistently showed the superiority over Random Walk and ARIMA models in capturing the percent relative deviations pertaining to cotton yield forecasts. The ARIMAX models performed well with lower error metrics as compared to the Random Walk and ARIMA models in all time regimes.