Non-stationarity in extreme precipitation at sub-daily and daily timescales is assessed using a spatial extreme value model based on max-stable process theory. This approach, which was developed to simulate spatial fields comprising observations from multiple point locations, significantly increases the precision of a statistical inference compared to standard univariate methods. Applying the technique to a field of annual maxima derived from 30 sub-daily gauges in east Australia from 1965 to 2005, we find a statistically significant increase of 18% for 6-min rainfall over this period, with smaller increases for longer duration events. We also find an increase of 5.6% and 22.5% per degree of Australian land surface temperature and global se...
Global warming is expected to intensify the hydrologic cycle. Documenting whether significant change...
Open access articleExtreme value theory is used as a diagnostic for two high-resolution (12-km param...
A common existing approach to modeling rainfall extremes employs a spatial Bayesian hierarchical mod...
PhD ThesisThe aim of this study has been to gain a greater understanding of the accuracy and levels ...
© 2018 Dr. Kate SaundersIn this thesis, we use extreme value theory to fit statistical models to obs...
This work is licensed under a Creative Commons Attribution 3.0 License. http://creativecommons.org/l...
This paper presents an analysis of the temporary variation of the area-orientated annual maximum dai...
Water infrastructure and flood mitigation projects are currently designed assuming a stationary clim...
This study investigates the presence of trends in annual maximum daily precipitation time series obt...
Observed trends, theory and modelling results all suggest increases in future extreme precipitation ...
Extreme rainfall does not occur in spatial isolation. Rainfall occurs in a region, and within that r...
The increased frequency and magnitude of extreme rainfall events due to anthropogenic climate change...
Over the last decade, observational and modelling studies have both indicated that the intensity and...
We propose an approach to spatial modeling of extreme rainfall, based on max-stable processes fitted...
This paper describes a statistical modelling framework for the characterisation of rainfall extremes...
Global warming is expected to intensify the hydrologic cycle. Documenting whether significant change...
Open access articleExtreme value theory is used as a diagnostic for two high-resolution (12-km param...
A common existing approach to modeling rainfall extremes employs a spatial Bayesian hierarchical mod...
PhD ThesisThe aim of this study has been to gain a greater understanding of the accuracy and levels ...
© 2018 Dr. Kate SaundersIn this thesis, we use extreme value theory to fit statistical models to obs...
This work is licensed under a Creative Commons Attribution 3.0 License. http://creativecommons.org/l...
This paper presents an analysis of the temporary variation of the area-orientated annual maximum dai...
Water infrastructure and flood mitigation projects are currently designed assuming a stationary clim...
This study investigates the presence of trends in annual maximum daily precipitation time series obt...
Observed trends, theory and modelling results all suggest increases in future extreme precipitation ...
Extreme rainfall does not occur in spatial isolation. Rainfall occurs in a region, and within that r...
The increased frequency and magnitude of extreme rainfall events due to anthropogenic climate change...
Over the last decade, observational and modelling studies have both indicated that the intensity and...
We propose an approach to spatial modeling of extreme rainfall, based on max-stable processes fitted...
This paper describes a statistical modelling framework for the characterisation of rainfall extremes...
Global warming is expected to intensify the hydrologic cycle. Documenting whether significant change...
Open access articleExtreme value theory is used as a diagnostic for two high-resolution (12-km param...
A common existing approach to modeling rainfall extremes employs a spatial Bayesian hierarchical mod...