Forecasting Area, Yield And Production of Groundnut Crop In Ceded Region Using–R

  IJMTT-book-cover
 
International Journal of Mathematics Trends and Technology (IJMTT)
 
© 2019 by IJMTT Journal
Volume-65 Issue-11
Year of Publication : 2019
Authors : Ginka. Ananda kumar, Dr P. Mohammed akhtar. , S. Dhanunjaya
  10.14445/22315373/IJMTT-V65I11P515

MLA

MLA Style:Ginka. Ananda kumar, Dr P. Mohammed akhtar., S. Dhanunjaya  "Forecasting Area, Yield And Production of Groundnut Crop In Ceded Region Using–R" International Journal of Mathematics Trends and Technology 65.11 (2019):144-156.

APA Style: Ginka. Ananda kumar, Dr P. Mohammed akhtar., S. Dhanunjaya (2019). Forecasting Area, Yield And Production of Groundnut Crop In Ceded Region Using–R ” International Journal of Mathematics Trends and Technology,144-156.

Abstract
Groundnut is an important crop in India. Groundnut is king of oilseeds . Groundnut is also called wonder nut as well as poor men’s cashew nut too. This study focuses on forecasting the cultivated area yield and production of groundnut in Ceded region using Auto Regressive Integrated Moving Average(ARIMA) using Rsoftware. Time series data covering the period of 2003-2018 was used of Ceded districts (Rayalaseema) of Andhrapradesh was used for the study. The study is to identify the best ARIMA model, which is for fitting and forecasting of Groundnut Area, Yield, Production in Ceded region respectively. Conclusions are drawn and found the forecasting for the future. The R-Software is used to analyse and graphical representation of the results.

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Keywords
ARIMA, Forecasting, Auto Correlation Function, Akaike Information Criterion, R-software.