Prediction model for peninsular Indian summer monsoon rainfall using data mining and statistical approaches
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Date
2017
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Publisher
Elsevier Ltd
Abstract
In this paper we discuss a data mining application for predicting peninsular Indian summer monsoon rainfall, and propose an algorithm that combine data mining and statistical techniques. We select likely predictors based on association rules that have the highest confidence levels. We then cluster the selected predictors to reduce their dimensions and use cluster membership values for classification. We derive the predictors from local conditions in southern India, including mean sea level pressure, wind speed, and maximum and minimum temperatures. The global condition variables include southern oscillation and Indian Ocean dipole conditions. The algorithm predicts rainfall in five categories: Flood, Excess, Normal, Deficit and Drought. We use closed itemset mining, cluster membership calculations and a multilayer perceptron function in the algorithm to predict monsoon rainfall in peninsular India. Using Indian Institute of Tropical Meteorology data, we found the prediction accuracy of our proposed approach to be exceptionally good. © 2016 Elsevier Ltd
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Keywords
Association rules, Atmospheric pressure, Atmospheric thermodynamics, Clustering algorithms, Data mining, Forecasting, Sea level, Wind, Closed itemsets, Cluster memberships, Data mining applications, Dense datasets, Indian summer monsoon rainfall, Maximum and minimum temperatures, Mean sea level pressures, Statistical techniques, Rain, algorithm, data mining, data set, Indian Ocean Dipole, monsoon, prediction, rainfall, Southern Oscillation, statistical analysis, India, Indian Ocean
Citation
Computers and Geosciences, 2017, 98, , pp. 55-63
