Tuesday, June 28 |
07:30 - 08:15 |
Breakfast (Tim Hortons) |
08:15 - 08:45 |
Gabi Hegerl: Past and future changes in the probability of extreme temperature events ↓ This talk considers changes in temperature extremes over the historical period and into the future. Historical regional temperature extremes show strong variability in the past that link to past impacts, even though the frequency and intensity has clearly increased with the warming signal. Over many regions, climate model simulated future changes in extreme temperature events seem to most clearly show a shift towards warmer extremes without much evidence for a change in other aspects of the distribution, yet there appear to be some exceptions. The first is in high latitudes, with a substantial change in annual maximum temperature distribution near ice covered regions. Perhaps more interestingly, there appear also some regions where the distribution is expected to widen in several climate models, among these the Amazon region and Central and Eastern Europe. These regions show diverse changes across different climate models, with clear differences between some models and climatology and a diverse response into the future. We have experimented with observational constraints on changes in extremes and results suggest that selecting more realistic models can influence simulated future changes, particularly in the tropics. Use of observational constraints both from performance in simulating climatology and processes, as well as in simulating trends will be important to better predict future extremes. Furthermore, historical examples highlight the potential for strong change in extremes due to compound events or human induced changes in the land surface. (Arts Building room 386 (ZOOM)) |
08:45 - 09:15 |
Manuela Brunner: Classification reveals varying drivers of severe and moderate hydrological droughts in Europe ↓ Streamflow droughts are generated by a variety of processes including rainfall deficits and anomalous snow availability or evapotranspiration. The importance of different driver sequences may vary with event severity, however, it is yet unclear how. To study the variation of driver importance with event severity, we propose a formal classification scheme for streamflow droughts and apply it to a large sample of catchments in Europe. The scheme assigns events to one of eight drought types – each characterized by a set of compounding drivers - using information about seasonality, precipitation deficits, and snow availability. Our findings show that drought driver importance varies regionally, seasonally, and by event severity. More specifically, we show that rainfall deficit droughts are the dominant drought type in western Europe while northern Europe is most often affected by cold snow season droughts. Second, we show that rainfall deficit and cold snow season droughts are important from autumn to spring, while snowmelt and wet to dry season droughts are important in summer. Last, we demonstrate that moderate droughts are mainly driven by rainfall deficits while severe events are mainly driven by snowmelt deficits in colder climates and by streamflow deficits transitioning from the wet to the dry season in warmer climates. This high importance of snow-influenced and evapotranspiration-influenced droughts for severe events suggests that these potentially high-impact events might undergo the strongest changes in a warming climate because of their close relationship to temperature. The proposed classification scheme provides a template that can be expanded to include other climatic regions and human influences. (Arts Building room 386 (ZOOM)) |
09:15 - 09:30 |
Break (ART 218) |
09:30 - 10:00 |
Maud Thomas: Non-asymptotic bounds for probability weighted moment estimators ↓ In hydrology and other applied fields, Probability weighted moments (PWM) have been frequently used to estimate the parameters of classical extreme value distributions (see [de Haan and Ferreira, 2006]). This method-of-moment technique can be applied when second moments are finite, a reasonable assumption in hydrology. Two advantages of PWM estimators are their ease of implementation and their close connection to the well-studied class of U-statistics. Consequently, precise asymptotic properties can be deduced. In practice, sample sizes are always finite and, depending on the application at hand, the sample length can be small, e.g. a sample of only 30 years of maxima of daily precipitation is quite common in some regions of the globe. In such a context, asymptotic theory is on a shaky ground and it is desirable to get non-asymptotic bounds. Deriving such bounds from off-the-shelf techniques (Chernoff method) requires exponential moment assumptions, which are unrealistic in many settings. To bypass this hurdle, we propose a new estimator for PWM, inspired by the median-of-means framework of Devroye et al. [2016]. This estimator is then shown to satisfy a sub- Gaussian inequality, with only second moment assumptions. This allows us to derive non-asymptotic bounds for the estimation of the parameters of extreme value distributions, and of extreme quantiles. This is a joint work with Anna Ben-Hamou and Philippe Naveau . (Arts Building room 386 (ZOOM)) |
10:00 - 10:30 |
Jenny Wadsworth: Statistical inference for multivariate extremes via a geometric approach ↓ A geometric representation for multivariate extremes, based on the shapes of sample clouds in light-tailed margins and their limit sets, has recently been shown to connect several existing extremal dependence concepts. However, these results are purely probabilistic, and the geometric approach itself has not been exploited for statistical inference. We outline a method for parametric estimation of the limit set shape, which includes a useful non/semi-parametric estimate as a pre-processing step. More fundamentally, our approach allows for extrapolation further into the tail of the distribution via simulation from the fitted model, and such models can accommodate any combination of simultaneous / non-simultaneous extremes through appropriate parametric forms for the limit set. (Arts Building room 386 (ZOOM)) |
10:30 - 11:00 |
Thordis Thorarinsdottir: Consistent estimation of extreme precipitation and flooding across multiple durations ↓ Infrastructure design commonly requires assessments of extreme quantiles of precipitation and flooding, with different types of infrastructure requiring estimates for different durations. This requires consistent estimates across multiple durations to ensure that e.g. the 0.99 quantile of annual maxima of 2 hour precipitation is larger than that for 1 hour precipitation. We discuss alternative approaches to ensure this consistency, both parametric and semi-parametric, which all assume that the annual maxima of a given duration follow a generalized extreme value (GEV) distribution. (Arts Building room 386 (ZOOM)) |
11:00 - 11:15 |
Break (ART 218) |
11:15 - 11:45 |
Gloria Buriticá: Assessing time dependencies for heavy rainfall modeling ↓ Heavy rainfall distributional modeling is essential in any impact studies linked to the water cycle, e.g., flood risks. Still, statistical analyses taking into account extreme rainfall's temporal and multivariate nature are rare, and often, a complex de-clustering step is needed to make extreme rainfall temporally independent. A natural question is how to bypass this de-clustering step in a multivariate context. To address this issue, we introduce the stable sums method. Our goal is to thoughtfully incorporate the temporal and spatial dependencies in the analysis of heavy tails. To reach our goal, we build on large deviations of regularly varying stationary time series. Our novel approach enhances return levels inference and is robust concerning time dependencies. We implement it alike on independent and dependent observations to obtain accurate return levels confidence intervals. (Arts Building room 386 (ZOOM)) |
11:45 - 12:15 |
Jonathan Jalbert: Frequency analysis of projected discharges on ungauged river sections using a large set of hydrological simulations ↓ Following the exceptional floods of 2017 and 2019 in the province of Québec, the provincial Government has launched a vast project to update the mapping of flood zones for more than 13,000 river sections in southern Quebec. For almost all of these sections, no discharge measurements are available, but discharge simulated by several configurations of a hydrological model are available. A model was developed to study the extreme values of this set of simulations in order to take into account the uncertainty associated with the fact that discharge are not directly measured. In addition to allowing the estimation of extreme value, the developed model also allows the estimation of the true series of annual maxima that would have been observed by combining the information from the different hydrological simulations. This model is then used in a statistical post-processing procedure to estimate future extreme flows for all river sections. (Arts Building room 386 (ZOOM)) |
12:15 - 12:45 |
Dáithí Stone: The effect of experiment conditioning on estimates of human influence on extreme weather ↓ There a many experiment designs for assessing the role of anthropogenic emissions in specific extreme weather events, ranging from methods based on free-running atmosphere-ocean climate models through to methods based on highly constrained numerical weather forecasts. While technically these different experiment designs are each addressing different particular questions, in practice some methods may be more feasible or scientifically defensible than others. It would be helpful then if one experiment design could be substituted for another without much loss of potential accuracy. How transferable are conclusions based on different experiments designs, allowing substitution of one experiment design for another? Here we examine event attribution metrics for five different extreme events occurring over Aotearoa New Zealand during the past four years, using atmosphere-ocean climate model experiments, atmosphere-only model experiments, numerical weather forecast experiments, and reanalysis experiments. We conclude that there is a strong dependence on experiment design for extreme hot events, but that any dependence for extreme wet events is small in relation to various sampling uncertainties. This is joint work with Suzanne Rosier, Sapna Rana, Steven Stuart, Luke Harrington, Sam Dean. (Arts Building room 386 (IN PERSON)) |
12:45 - 14:00 |
Lunch (Sunshine Café) |
14:00 - 16:00 |
Brainstorming Session on Site (ART 386 / ASC 301A / ASC 307) |