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Time Series Analysis and Forecasting of Rainfall for Agricultural Crops in India: An Application of Artificial Neural Network
Author(s) -
Debasis Mithiya,
Kaushik Mandal,
Simanti Bandyopadhyay
Publication year - 2020
Publication title -
research in applied economics
Language(s) - English
Resource type - Journals
ISSN - 1948-5433
DOI - 10.5296/rae.v12i4.15967
Subject(s) - exponential smoothing , agriculture , cropping , artificial neural network , agricultural productivity , moving average , smoothing , mathematics , environmental science , production (economics) , series (stratigraphy) , econometrics , time series , autoregressive integrated moving average , statistics , computer science , economics , geography , geology , paleontology , archaeology , machine learning , macroeconomics
Indian agriculture depends heavily on rainfall. It not only influences agricultural production but also affects the prices of all agricultural commodities. Rainfall is an exogenous variable which is beyond farmers’ control. The outcome of rainfall fluctuation is quite natural. It has been observed that fluctuation in rainfall brings about fluctuation in output leading to price changes. Considering the importance of rainfall in determining agricultural production and prices, the study has attempted to forecast monthly rainfall in India with the help of time series analysis using monthly rainfall data. Both linear and non-linear models have been used. The value of diagnostic checking parameters (MAE, MSE, RMSE) is lower in a non-linear model compared to a linear one. The non-linear model - Artificial Neural Network (ANN) has been chosen instead of linear models, namely, simple seasonal exponential smoothing and Seasonal Auto-Regressive Integrated Moving Average to forecast rainfall. This will help to identify the proper cropping pattern.