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Assessment of Climate Change Impacts on Reservoir Storage Reliability, Resilience, and Vulnerability Using a Multivariate Frequency Bias Correction Approach
Author(s) -
Nguyen Ha,
Mehrotra Rajeshwar,
Sharma Ashish
Publication year - 2020
Publication title -
water resources research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.863
H-Index - 217
eISSN - 1944-7973
pISSN - 0043-1397
DOI - 10.1029/2019wr026022
Subject(s) - environmental science , quantile , climate change , streamflow , vulnerability (computing) , downscaling , surface runoff , climate model , multivariate statistics , vulnerability assessment , water resources , hydrology (agriculture) , climatology , drainage basin , psychological resilience , statistics , computer science , geography , mathematics , geology , ecology , cartography , computer security , geotechnical engineering , biology , psychology , oceanography , psychotherapist
Raw simulations of global or regional climate models are rarely used in catchment scale hydrological impact assessment or subsequent reservoir storage change assessment studies. Keeping this in mind, this study uses a frequency bias correction alternative for multiple variables to evaluate the impact of climate change on reservoir storage reliability, resilience, and vulnerability across Australia. The bias‐corrected time series of daily rainfall and temperature are used as inputs to a hydrological model to derive flows and assess change to reservoir storage attributes. A total of six fifth phase of the Coupled Model Intercomparison Project climate models dynamically downscaled using the Conformal Cubic Atmospheric Model are used. Streamflow data of 222 high‐quality catchments in near‐natural conditions across Australia are used and change ascertained. The results for the historical climate show that the multivariate frequency bias correction approach outperforms the traditional quantile matching alternative in representing the runoff characteristics related to reservoir storage. For the future climate, the results suggest decrease in the annual mean runoff for most catchments. The proposed approach leads to a smaller decrease in the standard deviation of annual runoff and a reduction in the water supply capability, as indicated by a reduction in reliability and resilience and an increase in vulnerability, to meet the demand in comparison to both raw and quantile matching ‐ based climate simulations across for most catchments. Overall, a reduction in water supply capability to meet a given demand in the future for most regional climate models and catchments is projected.