Assessment and evaluation of potential climate change impact on monsoon flows using machine learning technique over Wainganga River basin, India

Resource type
Journal Article
Authors/contributors
Title
Assessment and evaluation of potential climate change impact on monsoon flows using machine learning technique over Wainganga River basin, India
Abstract
In this study, classification- and regression-based statistical downscaling is used to project the monthly monsoon streamflow over the Wainganga basin, India, using 40 global climate model (GCM) outputs and four representative concentration pathways (RCP) scenarios. Support vector machine (SVM) and relevance vector machine (RVM) are considered to perform downscaling. The RVM outperforms SVM and is used to simulate future projections of monsoon flows for different periods. In addition, variability in water availability with uncertainty and change point (CP) detection are accomplished by flow–duration curve and Bayesian analysis, respectively. It is observed from the results that the upper extremes of monsoon flows are highly sensitive to increases in temperature and show a continuous decreasing trend. Medium and low flows are increasing in future projections for all the scenarios, and high uncertainty is noticed in the case of low flows. An early CP is detected in the case of high emissions scenarios.
Publication
Hydrological Sciences Journal
Volume
63
Issue
7
Pages
1020-1046
Date
2018-05-19
ISSN
0262-6667
Call Number
openalex: W2802879587
Extra
openalex: W2802879587 mag: 2802879587
Citation
Das, J., & Umamahesh, N. V. (2018). Assessment and evaluation of potential climate change impact on monsoon flows using machine learning technique over Wainganga River basin, India. Hydrological Sciences Journal, 63(7), 1020–1046. https://doi.org/10.1080/02626667.2018.1469757