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Application of Machine Learning Techniques to Delineate Homogeneous Climate Zones in River Basins of Pakistan for Hydro-Climatic Change Impact Studies
Resource type
Journal Article
Authors/contributors
- Nusrat, Ammara (Author)
- Gabriel, Hamza Farooq (Author)
- Haider, Sajjad (Author)
- Ahmad, Shakil (Author)
- Shahid, Muhammad (Author)
- Jamal, Saad Ahmed (Author)
Title
Application of Machine Learning Techniques to Delineate Homogeneous Climate Zones in River Basins of Pakistan for Hydro-Climatic Change Impact Studies
Abstract
Climatic data archives, including grid-based remote-sensing and general circulation model (GCM) data, are used to identify future climate change trends. The performances of climate models vary in regions with spatio-temporal climatic heterogeneities because of uncertainties in model equations, anthropogenic forcing or climate variability. Hence, GCMs should be selected from climatically homogeneous zones. This study presents a framework for selecting GCMs and detecting future climate change trends after regionalizing the Indus river sub-basins in three basic steps: (1) regionalization of large river basins, based on spatial climate homogeneities, for four seasons using different machine learning algorithms and daily gridded precipitation data for 1975–2004; (2) selection of GCMs in each homogeneous climate region based on performance to simulate past climate and its temporal distribution pattern; (3) detecting future precipitation change trends using projected data (2006–2099) from the selected model for two future scenarios. The comprehensive framework, subject to some limitations and assumptions, provides divisional boundaries for the climatic zones in the study area, suitable GCMs for climate change impact projections for adaptation studies and spatially mapped precipitation change trend projections for four seasons. Thus, the importance of machine learning techniques for different types of analyses and managing long-term data is highlighted.
Publication
Applied sciences
Volume
10
Issue
19
Pages
6878-6878
Date
2020-10-01
ISSN
2076-3417
Call Number
openalex: W3090569372
Extra
openalex: W3090569372
mag: 3090569372
Citation
Nusrat, A., Gabriel, H. F., Haider, S., Ahmad, S., Shahid, M., & Jamal, S. A. (2020). Application of Machine Learning Techniques to Delineate Homogeneous Climate Zones in River Basins of Pakistan for Hydro-Climatic Change Impact Studies. Applied Sciences, 10(19), 6878–6878. https://doi.org/10.3390/app10196878
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