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Dive into the research topics where Ervin Zsoter is active.

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Featured researches published by Ervin Zsoter.


Nature Communications | 2014

Extending medium-range predictability of extreme hydrological events in Europe

David A. Lavers; Florian Pappenberger; Ervin Zsoter

Widespread flooding occurred across northwest Europe during the winter of 2013/14, resulting in large socioeconomic damages. In the historical record, extreme hydrological events have been connected with intense water vapour transport. Here we show that water vapour transport has higher medium-range predictability compared with precipitation in the winter 2013/14 forecasts from the European Centre for Medium-Range Weather Forecasts. Applying the concept of potential predictability, the transport is found to extend the forecast horizon by 3 days in some European regions. Our results suggest that the breakdown in precipitation predictability is due to uncertainty in the horizontal mass convergence location, an essential mechanism for precipitation generation. Furthermore, the predictability increases with larger spatial averages. Given the strong association between precipitation and water vapour transport, especially for extreme events, we conclude that the higher transport predictability could be used as a model diagnostic to increase preparedness for extreme hydrological events.


Monthly Weather Review | 2009

“Jumpiness” of the ECMWF and Met Office EPS Control and Ensemble-Mean Forecasts

Ervin Zsoter; Roberto Buizza; David E. Richardson

Abstract This work investigates the inconsistency between forecasts issued at different times but valid for the same time, and shows that ensemble-mean forecasts are less inconsistent than corresponding control forecasts. The “jumpiness” index, the concepts of different forecast jumps—the “flip,” “flip-flop,” and “flip-flop-flip”—and the inconsistency correlation between time series of inconsistency indices are introduced to measure the consistency/inconsistency of consecutive forecasts. These new measures are used to compare the behavior of the ECMWF and the Met Office control and ensemble-mean forecasts for an 18-month period over Europe. Results indicate that for both the ECMWF and the Met Office ensembles, the ensemble-mean forecast is less inconsistent than the control forecast. However, they also indicate that the ensemble mean follows its corresponding control forecast more closely than the controls (or the ensemble means) of the two ensemble systems following each other, thus suggesting weaknesses...


Nature Communications | 2017

Complex picture for likelihood of ENSO-driven flood hazard

Rebecca E. Emerton; Hannah L. Cloke; Elisabeth Stephens; Ervin Zsoter; Steven J. Woolnough; Florian Pappenberger

El Niño and La Niña events, the extremes of ENSO climate variability, influence river flow and flooding at the global scale. Estimates of the historical probability of extreme (high or low) precipitation are used to provide vital information on the likelihood of adverse impacts during extreme ENSO events. However, the nonlinearity between precipitation and flood magnitude motivates the need for estimation of historical probabilities using analysis of hydrological data sets. Here, this analysis is undertaken using the ERA-20CM-R river flow reconstruction for the twentieth century. Our results show that the likelihood of increased or decreased flood hazard during ENSO events is much more complex than is often perceived and reported; probabilities vary greatly across the globe, with large uncertainties inherent in the data and clear differences when comparing the hydrological analysis to precipitation.


Journal of Hydrometeorology | 2016

The Effect of Reference Climatology on Global Flood Forecasting

Feyera A. Hirpa; Peter Salamon; Lorenzo Alfieri; Jutta Thielen-del Pozo; Ervin Zsoter; Florian Pappenberger

AbstractThe Global Flood Awareness System (GloFAS) is a preoperational suite performing daily streamflow simulations to detect severe floods in large river basins. GloFAS defines the severity of a flood event with respect to thresholds estimated based on model-simulated streamflow climatology. Hence, determining accurate and consistent critical thresholds is important for its skillful flood forecasting. In this work, streamflow climatologies derived from two global meteorological inputs were compared, and their impacts on global flood forecasting were assessed. The first climatology is based on precipitation-corrected reanalysis data (ERA-Interim), which is currently used in the operational GloFAS forecast, while the second is derived from reforecasts that are routinely produced using the latest weather model. The results of the comparison indicate that 1) flood thresholds derived from the two datasets have substantial dissimilarities with varying characteristics across different regions of the globe; 2) ...


Journal of The American Water Resources Association | 2016

A High-Resolution National-Scale Hydrologic Forecast System from a Global Ensemble Land Surface Model†

Alan D. Snow; Scott D. Christensen; Nathan Swain; E. James Nelson; Daniel P. Ames; Norman L. Jones; Deng Ding; Nawajish Sayeed Noman; Cédric H. David; Florian Pappenberger; Ervin Zsoter

Abstract Warning systems with the ability to predict floods several days in advance have the potential to benefit tens of millions of people. Accordingly, large‐scale streamflow prediction systems such as the Advanced Hydrologic Prediction Service or the Global Flood Awareness System are limited to coarse resolutions. This article presents a method for routing global runoff ensemble forecasts and global historical runoff generated by the European Centre for Medium‐Range Weather Forecasts model using the Routing Application for Parallel computatIon of Discharge to produce high spatial resolution 15‐day stream forecasts, approximate recurrence intervals, and warning points at locations where streamflow is predicted to exceed the recurrence interval thresholds. The processing method involves distributing the computations using computer clusters to facilitate processing of large watersheds with high‐density stream networks. In addition, the Streamflow Prediction Tool web application was developed for visualizing analyzed results at both the regional level and at the reach level of high‐density stream networks. The application formed part of the base hydrologic forecasting service available to the National Flood Interoperability Experiment and can potentially transform the nations forecast ability by incorporating ensemble predictions at the nearly 2.7 million reaches of the National Hydrography Plus Version 2 Dataset into the national forecasting system.


Journal of Hydrometeorology | 2016

Building a Multimodel Flood Prediction System with the TIGGE Archive

Ervin Zsoter; Florian Pappenberger; Paul Smith; Rebecca E. Emerton; Emanuel Dutra; Fredrik Wetterhall; David E. Richardson; Konrad Bogner; Gianpaolo Balsamo

AbstractIn the last decade operational probabilistic ensemble flood forecasts have become common in supporting decision-making processes leading to risk reduction. Ensemble forecasts can assess uncertainty, but they are limited to the uncertainty in a specific modeling system. Many of the current operational flood prediction systems use a multimodel approach to better represent the uncertainty arising from insufficient model structure. This study presents a multimodel approach to building a global flood prediction system using multiple atmospheric reanalysis datasets for river initial conditions and multiple TIGGE forcing inputs to the ECMWF land surface model. A sensitivity study is carried out to clarify the effect of using archive ensemble meteorological predictions and uncoupled land surface models. The probabilistic discharge forecasts derived from the different atmospheric models are compared with those from the multimodel combination. The potential for further improving forecast skill by bias corre...


Geophysical Research Letters | 2016

ECMWF Extreme Forecast Index for water vapor transport: A forecast tool for atmospheric rivers and extreme precipitation

David A. Lavers; Florian Pappenberger; David S. Richardson; Ervin Zsoter

In winter, heavy precipitation and floods along the west coasts of mid-latitude continents are largely caused by intense water vapour transport (integrated vapour transport IVT) within the atmospheric river of extratropical cyclones. This study builds on previous findings that showed that forecasts of IVT have higher predictability than precipitation, by applying and evaluating the European Centre for Medium-Range Weather Forecasts (ECMWF) Extreme Forecast Index (EFI) for IVT in ensemble forecasts during three winters across Europe. We show that the IVT EFI is more able (than the precipitation EFI) to capture extreme precipitation in forecast week 2 during forecasts initialised in a positive North Atlantic Oscillation (NAO) phase; conversely, the precipitation EFI is better during the negative NAO phase and at shorter leads. An IVT EFI example for storm Desmond in December 2015 highlights its potential to identify upcoming hydrometeorological extremes, which may prove useful to the user and forecasting communities.


Weather and Forecasting | 2017

An Assessment of the ECMWF Extreme Forecast Index for Water Vapor Transport during Boreal Winter

David A. Lavers; Ervin Zsoter; David S. Richardson; Florian Pappenberger

AbstractEarly awareness of extreme precipitation can provide the time necessary to make adequate event preparations. At the European Centre for Medium-Range Weather Forecasts (ECMWF), one tool that condenses the forecast information from the Integrated Forecasting System ensemble (ENS) is the extreme forecast index (EFI), an index that highlights regions that are forecast to have potentially anomalous weather conditions compared to the local climate. This paper builds on previous findings by undertaking a global verification throughout the medium-range forecast horizon (out to 15 days) on the ability of the EFI for water vapor transport [integrated vapor transport (IVT)] and precipitation to capture extreme observed precipitation. Using the ECMWF ENS for winters 2015/16 and 2016/17 and daily surface precipitation observations, the relative operating characteristic is used to show that the IVT EFI is more skillful than the precipitation EFI in forecast week 2 over Europe and western North America. It is th...


Geoscientific Model Development | 2018

Developing a global operational seasonal hydro-meteorological forecasting system: GloFAS-Seasonal v1.0

Rebecca E. Emerton; Ervin Zsoter; Louise Arnal; Hannah L. Cloke; Davide Muraro; Christel Prudhomme; Elisabeth Stephens; Peter Salamon; Florian Pappenberger

Global overviews of upcoming flood and drought events are key for many applications, including disaster risk 15 reduction initiatives. Seasonal forecasts are designed to provide early indications of such events weeks, or even months, in advance, but seasonal forecasts for hydrological variables at large or global scales are few and far between. Here, we present the first operational global scale seasonal hydro-meteorological forecasting system: GloFAS-Seasonal. Developed as an extension of the Global Flood Awareness System (GloFAS), GloFAS-Seasonal couples seasonal meteorological forecasts from ECMWF with a hydrological model, to provide openly available probabilistic forecasts of river flow out to 4 months ahead 20 for the global river network. This system has potential benefits not only for disaster risk reduction through early awareness of floods and droughts, but also for water-related sectors such as agriculture and water resources management, in particular for regions where no other forecasting system exists. We describe the key hydro-meteorological components and computational framework of GloFAS-Seasonal, alongside the forecast products available, before discussing initial evaluation results and next steps. 25


Meteorological Applications | 2008

Could a perfect model ever satisfy a naïve forecaster? On grid box mean versus point verification

Martin Göber; Ervin Zsoter; David S. Richardson

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Florian Pappenberger

European Centre for Medium-Range Weather Forecasts

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David S. Richardson

European Centre for Medium-Range Weather Forecasts

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Rebecca E. Emerton

European Centre for Medium-Range Weather Forecasts

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Feyera A. Hirpa

University of Connecticut

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Emanuel Dutra

European Centre for Medium-Range Weather Forecasts

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Fredrik Wetterhall

European Centre for Medium-Range Weather Forecasts

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Lorenzo Alfieri

European Centre for Medium-Range Weather Forecasts

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