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Modelling hydrological responses under climate change using machine learning algorithms – semi-arid river basin of peninsular India
Resource type
Journal Article
Authors/contributors
- Naidu, G. Sireesha (Author)
- Pratik, M. (Author)
- Rehana, S. (Author)
Title
Modelling hydrological responses under climate change using machine learning algorithms – semi-arid river basin of peninsular India
Abstract
Abstract Catchment scale conceptual hydrological models apply calibration parameters entirely based on observed historical data in the climate change impact assessment. The study used the most advanced machine learning algorithms based on Ensemble Regression and Random Forest models to develop dynamically calibrated factors which can form as a basis for the analysis of hydrological responses under climate change. The Random Forest algorithm was identified as a robust method to model the calibration factors with limited data for training and testing with precipitation, evapotranspiration and uncalibrated runoff based on various performance measures. The developed model was further used to study the runoff response under climate change variability of precipitation and temperatures. A statistical downscaling model based on K-means clustering, Classification and Regression Trees and Support Vector Regression was used to develop the precipitation and temperature projections based on MIROC GCM outputs with the RCP 4.5 scenario. The proposed modelling framework has been demonstrated on a semi-arid river basin of peninsular India, Krishna River Basin (KRB). The basin outlet runoff was predicted to decrease (13.26%) for future scenarios under climate change due to an increase in temperature (0.6 °C), compared to a precipitation increase (13.12%), resulting in an overall reduction in water availability over KRB.
Publication
H2Open journal
Volume
3
Issue
1
Pages
481-498
Date
2020-01-01
ISSN
2616-6518
Call Number
openalex: W3103227824
Extra
openalex: W3103227824
mag: 3103227824
Citation
Naidu, G. S., Pratik, M., & Rehana, S. (2020). Modelling hydrological responses under climate change using machine learning algorithms – semi-arid river basin of peninsular India. H2Open Journal, 3(1), 481–498. https://doi.org/10.2166/h2oj.2020.034
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