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Acharya N G Ranga Agricultural University, Guntur

The Andhra Pradesh Agricultural University (APAU) was established on 12th June 1964 at Hyderabad. The University was formally inaugurated on 20th March 1965 by Late Shri. Lal Bahadur Shastri, the then Hon`ble Prime Minister of India. Another significant milestone was the inauguration of the building programme of the university by Late Smt. Indira Gandhi,the then Hon`ble Prime Minister of India on 23rd June 1966. The University was renamed as Acharya N. G. Ranga Agricultural University on 7th November 1996 in honour and memory of an outstanding parliamentarian Acharya Nayukulu Gogineni Ranga, who rendered remarkable selfless service for the cause of farmers and is regarded as an outstanding educationist, kisan leader and freedom fighter. HISTORICAL MILESTONE Acharya N. G. Ranga Agricultural University (ANGRAU) was established under the name of Andhra Pradesh Agricultural University (APAU) on the 12th of June 1964 through the APAU Act 1963. Later, it was renamed as Acharya N. G. Ranga Agricultural University on the 7th of November, 1996 in honour and memory of the noted Parliamentarian and Kisan Leader, Acharya N. G. Ranga. At the verge of completion of Golden Jubilee Year of the ANGRAU, it has given birth to a new State Agricultural University namely Prof. Jayashankar Telangana State Agricultural University with the bifurcation of the state of Andhra Pradesh as per the Andhra Pradesh Reorganization Act 2014. The ANGRAU at LAM, Guntur is serving the students and the farmers of 13 districts of new State of Andhra Pradesh with renewed interest and dedication. Genesis of ANGRAU in service of the farmers 1926: The Royal Commission emphasized the need for a strong research base for agricultural development in the country... 1949: The Radhakrishnan Commission (1949) on University Education led to the establishment of Rural Universities for the overall development of agriculture and rural life in the country... 1955: First Joint Indo-American Team studied the status and future needs of agricultural education in the country... 1960: Second Joint Indo-American Team (1960) headed by Dr. M. S. Randhawa, the then Vice-President of Indian Council of Agricultural Research recommended specifically the establishment of Farm Universities and spelt out the basic objectives of these Universities as Institutional Autonomy, inclusion of Agriculture, Veterinary / Animal Husbandry and Home Science, Integration of Teaching, Research and Extension... 1963: The Andhra Pradesh Agricultural University (APAU) Act enacted... June 12th 1964: Andhra Pradesh Agricultural University (APAU) was established at Hyderabad with Shri. O. Pulla Reddi, I.C.S. (Retired) was the first founder Vice-Chancellor of the University... June 1964: Re-affilitation of Colleges of Agriculture and Veterinary Science, Hyderabad (estt. in 1961, affiliated to Osmania University), Agricultural College, Bapatla (estt. in 1945, affiliated to Andhra University), Sri Venkateswara Agricultural College, Tirupati and Andhra Veterinary College, Tirupati (estt. in 1961, affiliated to Sri Venkateswara University)... 20th March 1965: Formal inauguration of APAU by Late Shri. Lal Bahadur Shastri, the then Hon`ble Prime Minister of India... 1964-66: The report of the Second National Education Commission headed by Dr. D.S. Kothari, Chairman of the University Grants Commission stressed the need for establishing at least one Agricultural University in each Indian State... 23, June 1966: Inauguration of the Administrative building of the university by Late Smt. Indira Gandhi, the then Hon`ble Prime Minister of India... July, 1966: Transfer of 41 Agricultural Research Stations, functioning under the Department of Agriculture... May, 1967: Transfer of Four Research Stations of the Animal Husbandry Department... 7th November 1996: Renaming of University as Acharya N. G. Ranga Agricultural University in honour and memory of an outstanding parliamentarian Acharya Nayukulu Gogineni Ranga... 15th July 2005: Establishment of Sri Venkateswara Veterinary University (SVVU) bifurcating ANGRAU by Act 18 of 2005... 26th June 2007: Establishment of Andhra Pradesh Horticultural University (APHU) bifurcating ANGRAU by the Act 30 of 2007... 2nd June 2014 As per the Andhra Pradesh Reorganization Act 2014, ANGRAU is now... serving the students and the farmers of 13 districts of new State of Andhra Pradesh with renewed interest and dedication...

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  • ThesisItemOpen Access
    TIME SERIES ANALYSIS OF AREA, PRODUCTION AND PRODUCTIVITY OF MAJOR PULSES IN ANDHRA PRADESH
    (ACHARYA N G RANGA AGRICULTURAL UNIVERSITY, GUNTUR, 2019) BINDUMADHAVI, N; NAFEEZ UMAR, SHAIK
    The present study entitled “Time series analysis of area, production and productivity of major pulses in Andhra Pradesh” has been undertaken to fit different linear, non-linear growth models and Auto Regressive Integrated Moving Average (ARIMA) models for the area, production and productivity of major pulses such as Bengalgram, Redgram, Greengram, Blackgram and Horsegram as well as to provide forecasts up to the year 2022 AD. The study was carried out for the state of Andhra Pradesh using time series data from 1971 to 2017. Different growth models such as linear, logarithmic, quadratic, cubic, power, exponential models and time series models such as ARIMA were applied for the data on area, production and productivity of respective pulses and the best fitted model was chosen on the basis of diagnostic criteria like highest R2 and lowest MSE, RMSE, MAPE and BIC. The best fitted models were used to obtain the future projections upto 2022 AD. In order to study the percentage contribution of area, productivity and their interaction effects towards the growth in the production of pulse crop, decomposition analysis has been carried out. It was observed that the area, production and productivity of Bengalgram showed an increasing trend during the study period. Redgram as well as Blackgram area, production and productivity also showed an increasing trend during the study period. Greengram area and production exhibited a decreasing trend whereas, productivity showed an increasing trend during the study period. Area and production of Horsegram showed a declining trend whereas, productivity showed an increasing trend during the study period. xiii The study revealed that ARIMA (1, 1, 1) model was the best fitted model for area and productivity of Bengalgram, area and production of Redgram as well as production and productivity of Blackgram respectively. Cubic model was the best fitted model for productivity of Redgram, production and productivity of Greengram as well as production and productivity of Horsegram respectively. ARIMA (1, 2, 1) was the best fitted model for Bengalgram production and Blackgram area respectively. ARIMA (2, 2, 1) was the best fitted model for Greengram area and Horsegram area respectively. The future projections of area, production and productivity of Bengalgram, Redgram and Blackgram showed an increasing trend up to the year 2022 AD. Area and production projections of Greengram showed a decreasing trend whereas, productivity forecast showed an increasing trend. Projections of Horsegram area showed an increasing trend whereas, production and productivity seem to be stable in the upcoming years. Overall decomposition analysis revealed that the percentage contribution of area was more dominant in all the crops.
  • ThesisItemOpen Access
    EFFECT OF NATIONAL FOOD SECURITY MISSION ON FOOD GRAIN PRODUCTION IN INDIA
    (ACHARYA N G RANGA AGRICULTURAL UNIVERSITY, GUNTUR, 2019) AJITH, S; SRINIVASA RAO, V
    The present study entitled “Effect of National Food Security Mission on Food Grain Production in India” has been undertaken to study the effect on National Food Security Mission (NFSM) on major food grain crops in India as well as in the leading producing states and to forecast the area, production and productivity major food grain crops in India. This present study is based on the time series data of area, production and productivity of major food grain crops such as rice, wheat, total pulses and total coarse cereals as well as the total food grain crops from the year 1951-51 to 2016-17. To study the effect of NFSM the total study period was divided into four time periods viz., 1951-1965 (pre-green revolution period), 1966-1988 (green revolution period), 1988-2006 (post-green revolution period) and 2007-2017 (National Food Security Mission-NFSM period). The Compound Growth Rate (CGR) and Cuddy-Della instability index were calculated for each time period as well as for the total period. The growth rate and instability in the area, production and productivity of major food grain crops during National Food Security Mission period were compared with other periods. Linear, non-linear and time series models such as Autoregressive Integrated Moving Average (ARIMA) and Holt‟s double exponential smoothing models were fitted to the area, production and productivity of rice, wheat, total pulses, total coarse cereals and total food grain crops in India The best fitted models have been selected based on the model selection criteria such as R2, RMSE, MAE, AIC and BIC values. Forecasting of area, production and productivity of major food grains crops in India was done up to the year 2021-22 by using the respective best fitted models. This study revealed that there was positive growth rate in the production of major food grain crops during NFSM period in all the six leading states as well as in India. Noticeably the huge growth rate was obtained in the production of wheat (36.14 per cent), pulses (16.41 per cent) and coarse cereals (21.62 per cent) as well as in the total food grain production (29.42 per cent) in Madhya Pradesh during NFSM period. Similarly there was high growth rate in the rice production (17.49 per cent) in Bihar during the NFSM period. This study also revealed there will be an increasing trend in the area, production and productivity of rice, wheat, total pulses, total coarse cereals and total food grain crops in India in the next five years except the cultivated area of rice and coarse cereals. The forecasted area, production and productivity of food grain crops in India would be 1,28,009 thousand hectares, 2,90,744 thousand tonnes and 2,350 kg ha-1 respectively in the year 2021-22.
  • ThesisItemOpen Access
    CLUSTERING OF RICE GENOTYPES -A MULTIVARIATE APPROACH
    (Acharya N.G. Ranga Agricultural University, 2018) DEVADASU CHINNI; NAFEEZ UMAR, SK
    Secondary data on 17 yield and yield contributing characters was collected from Agricultural Research Station (ARS), Nellore, Andhra Pradesh, at which experiment was carried out on 60 rice genotypes, during early kharif, 2016 to evaluate, categorize and classify them and for computation of Principal Components to determine the relative importance of Principal Components and characters involved in them. Studies based on genetic divergence utilizing D2 analysis revealed that, the genotypes were grouped into 8 clusters of which clusters II was the largest cluster consisting of 21 genotypes while cluster III, IV, VII and VIII are the smallest clusters with only single genotype in each of them. The maximum intra cluster distance was found in cluster VI (D = 371.74) consisting of 8 genotypes. From the inter cluster D2 values of eight clusters, it can be seen that the highest divergence occurred between cluster V and cluster VI (1651.37) While the minimum inter cluster distance was noticed between cluster IV and cluster VII (94.06). It is observed that cluster III as well as cluster VIII had recorded highest means values for most of the characters. Out of 17 characters studied the maximum contribution (79.66 %) towards total divergence is by 5 characters only viz., days to maturity, test weight, flag leaf width, flag leaf length, days to 50% flowering. To know the relative importance and usefulness of variables and genotypes, principal component analysis was done which explained 76% variability through first six principal components. Data were further analyzed using principal factor analysis to offset the limitation of principal component analysis. All the variables exhibited high loading on different factors. Principal factor scores were obtained to know the performance of different genotypes in different factors that ascribed to a particular set of characters. Thus, the genotypes JGL 11118, WHITE PONNI, NLR 33671, NLR 33057 and TN 1 were having high principal factor score in PF I. Similarly, genotypes IR 109A235, IR 64, MTU1010, BG63672, NLR3217, NLR33359 and IR10C172 having high scores in PF II. Likewise, genotypes NLR 3042, NLR 40065, NLR 3296, ADT 37, NLR3350, NLR3407 and NLR30491 in PF III; NLR 3241, JGL 1798, NLR 40058, NLR40024 in PF IV; IR 11C208, IR 11C208, MDT 10, IR 11C228, ADT 43, IR64197, IR11C219 in PF V and IR 64197, IR11C186 in PF VI were found to be having high principal factor scores.
  • ThesisItemOpen Access
    FORECASTING OF ARRIVALS AND PRICES OF RED CHIILIES IN GUNTUR AND KHAMMAM MARKET YARDS
    (Acharya N.G. Ranga Agricultural University, 2018) VENKATAVISWATEJA, B; SRINIVASA RAO, V
    The present study entitled “Forecasting of Arrivals and Prices of Red Chillies in Guntur and Khammam Market Yards” has been undertaken to fit different time series models on arrivals and prices data of red chillies of selected market yards and to forecast the arrivals and prices by best fitted model up to 2019. The time series monthly secondary data was collected from April, 2002 to December, 2017 (189 months) for the study. Different time series models like Exponential Smoothing, ARIMA, ARCH, GARCH models were fitted to the arrivals and prices data and the best fitted model was selected based on highest R2, least MAPE, MAE, RMSE and BIC values for future projections. The study revealed that the arrivals of red chillies in Guntur market yard showed an increasing trend during the study period and the predicted values indicate that the highest arrivals observed in the month of March every year including the years 2018 and 2019 and followed same seasonality. As per the prices is concerned, the prices of red chillies in Guntur market yard showed an increasing trend during the study period and the predicted values indicate that the highest prices observed in the month of October every year including the years 2018 and 2019 and followed same seasonality. In Khammam market yard, the arrivals of red chillies showed an increasing trend during the study period and the predicted values indicate that the highest arrivals observed in the month of March every year including the years 2018 and 2019 and followed same seasonality. As per the prices is concerned, the prices of red chillies in Khammam market yard showed an increasing trend during the study period and the predicted values indicate that the highest prices observed in the month of January every year including the years 2018 and 2019 and followed same seasonality. It was observed that the arrivals and prices are positive non-significantly correlated in the both market yards. Hence to get good price for red chillies in both market yards the farmers are suggested to bring their produce to the market yards during the month showing highest prices.