Prediction of Monthly Summer Monsoon Rainfall Using Global Climate Models Through Artificial Neural Network Technique

被引:0
作者
Archana Nair
Gurjeet Singh
U. C. Mohanty
机构
[1] Indian Institute of Technology Bhubaneswar,School of Earth Ocean and Climate Sciences
[2] Indian Institute of Technology Bhubaneswar,Department of Civil Engineering, School of Infrastructure
来源
Pure and Applied Geophysics | 2018年 / 175卷
关键词
Modelling; artificial neural network; monthly; prediction; global climate models;
D O I
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中图分类号
学科分类号
摘要
The monthly prediction of summer monsoon rainfall is very challenging because of its complex and chaotic nature. In this study, a non-linear technique known as Artificial Neural Network (ANN) has been employed on the outputs of Global Climate Models (GCMs) to bring out the vagaries inherent in monthly rainfall prediction. The GCMs that are considered in the study are from the International Research Institute (IRI) (2-tier CCM3v6) and the National Centre for Environmental Prediction (Coupled-CFSv2). The ANN technique is applied on different ensemble members of the individual GCMs to obtain monthly scale prediction over India as a whole and over its spatial grid points. In the present study, a double-cross-validation and simple randomization technique was used to avoid the over-fitting during training process of the ANN model. The performance of the ANN-predicted rainfall from GCMs is judged by analysing the absolute error, box plots, percentile and difference in linear error in probability space. Results suggest that there is significant improvement in prediction skill of these GCMs after applying the ANN technique. The performance analysis reveals that the ANN model is able to capture the year to year variations in monsoon months with fairly good accuracy in extreme years as well. ANN model is also able to simulate the correct signs of rainfall anomalies over different spatial points of the Indian domain .
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页码:403 / 419
页数:16
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