Forecasting Rice Production in West Bengal State in India: Statistical vs. Computational Intelligence Techniques

Forecasting rice production is a challenging problem in agricultural statistics. The inherent difficulty lies in demand and supply affected by many uncertain factors viz. economic policies, agricultural factors, credit measures, foreign trade etc. which interact in a complex manner. Since last few decades, Statistical techniques are used for developing predictive models to estimate required parameters. Determination of nature of rice production time series data is difficult, expensive, time consuming and involves tedious tests. In this paper, we use Interval Type Fuzzy Auto Regressive Integrated Moving Average (ITnARIMA), Adaptive Neuro Fuzzy Inference System (ANFIS) and Modified Regularized Least Squares Fuzzy Support Vector Regression (MRLSFSVR) for prediction of Productivity Index percent (PI %) of rice production time series data and compare it with traditional Statistical tool of Multiple Regression. The accuracies of ITnARIMA and ANFIS techniques are evaluated as relatively similar. It is found that ANFIS exhibits high performance than ITnARIMA, MRLSFSVR and Multiple Regression for predicting PI %. The performance comparison shows that Computational Intelligence paradigm is a promising tool for minimizing uncertainties in rice production data. Further Computational Intelligence techniques also minimize potential inconsistency of correlations.

[1]  Lotfi A. Zadeh,et al.  Fuzzy logic, neural networks, and soft computing , 1993, CACM.

[2]  Alexander Gammerman,et al.  Ridge Regression Learning Algorithm in Dual Variables , 1998, ICML.

[3]  Pradipta Kishore Dash,et al.  Time sequence data mining using time-frequency analysis and soft computing techniques , 2008, Appl. Soft Comput..

[4]  Chuen-Tsai Sun,et al.  Neuro-fuzzy modeling and control , 1995, Proc. IEEE.

[5]  Chuen-Chien Lee FUZZY LOGIC CONTROL SYSTEMS: FUZZY LOGIC CONTROLLER - PART I , 1990 .

[6]  Kostas Metaxiotis Intelligent Information Systems and Knowledge Management for Energy: Applications for Decision Support, Usage, and Environmental Protection , 2009 .

[7]  Arindam Chaudhuri,et al.  Fuzzy Support Vector Machine for bankruptcy prediction , 2011, Appl. Soft Comput..

[8]  Hércules Antonio do Prado,et al.  Computational Methods for Agricultural Research: Advances and Applications , 2010 .

[9]  George E. P. Box,et al.  Time Series Analysis: Box/Time Series Analysis , 2008 .

[10]  George-Christopher Vosniakos,et al.  Optimizing feedforward artificial neural network architecture , 2007, Eng. Appl. Artif. Intell..

[11]  William H. McAnally,et al.  A Strategy for Estimating Nutrient Concentrations Using Remote Sensing Datasets and Hydrological Modeling , 2012, Int. J. Agric. Environ. Inf. Syst..

[12]  Chuen-Chien Lee,et al.  Fuzzy logic in control systems: fuzzy logic controller. II , 1990, IEEE Trans. Syst. Man Cybern..

[13]  Shyi-Ming Chen,et al.  FORECASTING ENROLLMENTS BASED ON HIGH-ORDER FUZZY TIME SERIES , 2002, Cybern. Syst..

[14]  J. Scott Armstrong,et al.  Principles of forecasting : a handbook for researchers and practitioners , 2001 .

[15]  Jyh-Shing Roger Jang,et al.  ANFIS: adaptive-network-based fuzzy inference system , 1993, IEEE Trans. Syst. Man Cybern..

[16]  Guoqiang Peter Zhang,et al.  Neural network forecasting for seasonal and trend time series , 2005, Eur. J. Oper. Res..

[17]  F. Windmeijer,et al.  An R-squared measure of goodness of fit for some common nonlinear regression models , 1997 .

[18]  John T. Rickard,et al.  Fuzzy Subsethood for Fuzzy Sets of Type-2 and Generalized Type- ${n}$ , 2009, IEEE Transactions on Fuzzy Systems.

[19]  J. Evans,et al.  Modeling Species Distribution and Change Using Random Forest , 2011 .

[20]  R. Fisher,et al.  The Influence of Rainfall on the Yield of Wheat at Rothamsted , 1925 .

[21]  Michael D. Bordo,et al.  Is the crisis problem growing more severe , 2001 .

[22]  Yongyut Trisurat,et al.  Land Use, Climate Change and Biodiversity Modeling: Perspectives and Applications , 2011 .

[23]  Arindam Chaudhuri,et al.  Time Series Forecasting Using Hybrid Neuro-Fuzzy Regression Model , 2009, RSFDGrC.

[24]  Jerry M. Mendel,et al.  Type-2 fuzzy sets made simple , 2002, IEEE Trans. Fuzzy Syst..

[25]  Reshma Khemchandani,et al.  Regularized least squares fuzzy support vector regression for financial time series forecasting , 2009, Expert Syst. Appl..

[26]  W. Baier Crop-weather models and their use in yield assessments , 1977 .

[27]  Erasmo Cadenas,et al.  Wind speed forecasting in three different regions of Mexico, using a hybrid ARIMA–ANN model , 2010 .

[28]  J. Scott Armstrong,et al.  Principles of forecasting , 2001 .

[29]  Yuh-Jye Lee,et al.  RSVM: Reduced Support Vector Machines , 2001, SDM.

[30]  Johan A. K. Suykens,et al.  Weighted least squares support vector machines: robustness and sparse approximation , 2002, Neurocomputing.