https://nova.newcastle.edu.au/vital/access/ /manager/Index en-au 5 Regionalisation of the parameters of the log-Pearson 3 distribution: a case study for New South Wales, Australia https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:16369 Wed 11 Apr 2018 17:21:07 AEST ]]> Nonhomogeneity in Eastern Australian flood frequency data: identification and regionalisation https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:12530 Wed 11 Apr 2018 16:17:54 AEST ]]> Flood frequency censoring errors associated with daily-read flood observations https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:3008 Wed 11 Apr 2018 10:56:24 AEST ]]> Multidecadal variability in coastal eastern Australian flood data https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:2255 Sat 24 Mar 2018 10:42:00 AEDT ]]> Assessment of the impacts of rating curve uncertainty on at-site flood frequency analysis: a case study for New South Wales, Australia https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:17831 Sat 24 Mar 2018 08:03:32 AEDT ]]> An overview of preparation of streamflow database for ARR Project 5 regional flood method https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:17822 Sat 24 Mar 2018 08:03:27 AEDT ]]> An overview of the development of the New Regional Flood Frequency Estimation (RFFE) model for Australia https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:17824 2 anywhere in Australia. This paper gives an overview of the progress of the finalisation of the ARR RFFE Model. In the development of the model, a database of 877 catchments from the data-rich regions and 66 catchments from the data-poor arid regions have been selected. Australia has been divided into six regions and five fringe zones to apply the ARR RFFE Model. In the data-rich regions, a region-of-influence (ROI) approach has been adopted to form sub-regions, provided there are a good number of geographically contiguous stations. In developing the prediction equations, a Bayesian generalised least squares (GLS) regression technique has been adopted for the data-rich regions, which considers the inter-station correlation and variation in record lengths from site to site in developing regional prediction equations. A regionalised Log Pearson Type 3 (LP3) distribution is adopted to derive design flood estimates for ungauged catchments in the range of AEPs of 50% to 1%. For the data-poor arid region, a simplified index type regional flood frequency method has been adopted. For easy application by the industry, the RFFE Model software will automate the application of the model. The user will be required to provide simple input data to obtain design flood quantiles and associated uncertainty estimates with 90% confidence limits. It is expected that the new ARR RFFE Model 2014 will have a wide application in estimating design floods for small and medium sized ungauged catchments as well as to provide prior information in the at-site flood frequency analysis using ARR-FLIKE. Furthermore, the results from ARR RFFE Model will present a useful means of benchmarking other flood estimation methods in Australia.]]> Sat 24 Mar 2018 08:03:27 AEDT ]]> ARR, hinc quo? https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:30436 Sat 24 Mar 2018 07:38:11 AEDT ]]> Detecting and taking into account possible impacts of climate change on hydrological extremes https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:4902 Sat 24 Mar 2018 07:22:59 AEDT ]]> Modelling multidecadal variability in flood frequency using the Two-Component Extreme Value distribution https://nova.newcastle.edu.au/vital/access/ /manager/Repository/uon:55770 Sat 22 Jun 2024 12:04:21 AEST ]]>