2014
DOI: 10.1007/s11269-014-0626-y
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Equidistance Quantile Matching Method for Updating IDFCurves under Climate Change

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Cited by 104 publications
(71 citation statements)
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“…These climate variables are extracted from four GCMs ( Table 1) The ANUSPLIN and GCM data sets used in this study have different spatial resolutions. For climate change impact assessment at the catchment scale, all the data sets are spatially interpolated to the ten locations of interest (Table 2) using the inverse distance square method [24].…”
Section: Study Area and Data Usedmentioning
confidence: 99%
“…These climate variables are extracted from four GCMs ( Table 1) The ANUSPLIN and GCM data sets used in this study have different spatial resolutions. For climate change impact assessment at the catchment scale, all the data sets are spatially interpolated to the ten locations of interest (Table 2) using the inverse distance square method [24].…”
Section: Study Area and Data Usedmentioning
confidence: 99%
“…Alam and Elshorbagy (2015) used the K-nearest neighbour technique to disaggregate daily precipitation generated with a stochastic rainfall generator to hourly and sub-hourly scales, and thus evaluate the climate induced changes on DDF curves. Srivastav, Schardong, and Simonovic (2014) proposed the use of the Equidistance Quantile Matching methodology (also known as quantile-quantile mapping) as a downscaling method for GCM data (Lehmann, Phatak, Stephenson, & Lau, 2016;Simonovic, Schardong, Sandink, & Srivastav, 2016;Singh, Arya, Taxak, & Vojinovic, 2016). The idea of this method is to apply a bias correction derived from the differences between observed data and GCM/RCM outputs for a baseline period (quantile mapping functions), which are then used to modify the GCM/RCM outputs in future periods, from which DDF curves are then calculated.…”
Section: Introductionmentioning
confidence: 99%
“…Apart from trend analysis methods, which develop IDF curves by modeling historical rainfall time series data, researchers have incorporated outputs from General Circulation Models (GCMs) or Regional Circulation Models (RCMs) using bias correction and downscaling to simulate non-stationary IDF curves [10,13,14]. Lehmann [10] integrated RCM outputs into spatial Bayesian hierarchical models to investigate the characteristics of future extreme rainfall events stemming from numerous climate change scenarios.…”
Section: Introductionmentioning
confidence: 99%
“…Lehmann [10] integrated RCM outputs into spatial Bayesian hierarchical models to investigate the characteristics of future extreme rainfall events stemming from numerous climate change scenarios. Srivastav [14] updated the IDF curves using spatial and temporal downscaling, combining the changes in the distributional characteristics of the GCM/RCM between the baseline period and future period to assess the impact of climate change on future extreme precipitation. Lima [13] proposed a Bayesian beta distribution model to estimate IDF curves based on observed rainfall series and daily rainfall outputs under climate change scenarios provided by the GCM/RCM.…”
Section: Introductionmentioning
confidence: 99%