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Dive into the research topics where Marzena Osuch is active.

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Featured researches published by Marzena Osuch.


Science | 2017

Changing climate shifts timing of European floods

Günter Blöschl; Julia Hall; Juraj Parajka; Rui A. P. Perdigão; Bruno Merz; Berit Arheimer; Giuseppe T. Aronica; Ardian Bilibashi; Ognjen Bonacci; Marco Borga; Ivan Čanjevac; Attilio Castellarin; Giovanni Battista Chirico; Pierluigi Claps; Károly Fiala; N. A. Frolova; Liudmyla Gorbachova; Ali Gül; Jamie Hannaford; Shaun Harrigan; M. B. Kireeva; Andrea Kiss; Thomas R. Kjeldsen; Silvia Kohnová; Jarkko Koskela; Ondrej Ledvinka; Neil Macdonald; Maria Mavrova-Guirguinova; Luis Mediero; Ralf Merz

Flooding along the river Will a warming climate affect river floods? The prevailing sentiment is yes, but a consistent signal in flood magnitudes has not been found. Blöschl et al. analyzed the timing of river floods in Europe over the past 50 years and found clear patterns of changes in flood timing that can be ascribed to climate effects (see the Perspective by Slater and Wilby). These variations include earlier spring snowmelt floods in northeastern Europe, later winter floods around the North Sea and parts of the Mediterranean coast owing to delayed winter storms, and earlier winter floods in western Europe caused by earlier soil moisture maxima. Science, this issue p. 588 see also p. 552 Climate change is affecting the timing of river flooding across Europe. A warming climate is expected to have an impact on the magnitude and timing of river floods; however, no consistent large-scale climate change signal in observed flood magnitudes has been identified so far. We analyzed the timing of river floods in Europe over the past five decades, using a pan-European database from 4262 observational hydrometric stations, and found clear patterns of change in flood timing. Warmer temperatures have led to earlier spring snowmelt floods throughout northeastern Europe; delayed winter storms associated with polar warming have led to later winter floods around the North Sea and some sectors of the Mediterranean coast; and earlier soil moisture maxima have led to earlier winter floods in western Europe. Our results highlight the existence of a clear climate signal in flood observations at the continental scale.


Hydrological Sciences Journal-journal Des Sciences Hydrologiques | 2015

The influence of parametric uncertainty on the relationships between HBV model parameters and climatic characteristics

Marzena Osuch; Renata J. Romanowicz; Martijn J. Booij

Abstract An HBV rainfall–runoff model was applied to test the influence of climatic characteristics on model parameter values. The methodology consisted of the calibration and cross-validation of the HBV model on a series of 5-year periods for four selected catchments (Axe, Kamp, Wieprz and Wimmera). The model parameters were optimized using the SCEM-UA method which allowed for their uncertainty also to be assessed. Nine climatic indices were selected for the analysis of their influence on model parameters, and divided into water-related and temperature-related indices. This allowed the dependence of HBV model parameters on climate characteristics to be explored following their response to climate change conditioned on the catchment’s physical characteristics. The Pearson correlation coefficient and weighted Pearson correlation coefficient were used to test the dependence. Most parameters showed a statistically significant dependence on several climatic indices in all catchments. The study shows that the results of the correlation analysis with and without parametric uncertainty taken into account differ significantly.


Acta Geophysica | 2016

Climate Change Impact on Hydrological Extremes: Preliminary Results from the Polish-Norwegian Project

Renata J. Romanowicz; Ewa Bogdanowicz; Sisay E. Debele; Joanna Doroszkiewicz; Hege Hisdal; Deborah Lawrence; Hadush K. Meresa; Jaroslaw J. Napiorkowski; Marzena Osuch; Witold G. Strupczewski; Donna Wilson; Wai Kwok Wong

This paper presents the background, objectives, and preliminary outcomes from the first year of activities of the Polish–Norwegian project CHIHE (Climate Change Impact on Hydrological Extremes). The project aims to estimate the influence of climate changes on extreme river flows (low and high) and to evaluate the impact on the frequency of occurrence of hydrological extremes. Eight “twinned” catchments in Poland and Norway serve as case studies. We present the procedures of the catchment selection applied in Norway and Poland and a database consisting of near-natural ten Polish and eight Norwegian catchments constructed for the purpose of climate impact assessment. Climate projections for selected catchments are described and compared with observations of temperature and precipitation available for the reference period. Future changes based on those projections are analysed and assessed for two periods, the near future (2021–2050) and the far-future (2071–2100). The results indicate increases in precipitation and temperature in the periods and regions studied both in Poland and Norway.


Computers & Geosciences | 2014

Comparing large number of metaheuristics for artificial neural networks training to predict water temperature in a natural river

Adam P. Piotrowski; Marzena Osuch; Maciej J. Napiorkowski; Paweł M. Rowiński; Jaroslaw J. Napiorkowski

Nature-inspired metaheuristics found various applications in different fields of science, including the problem of artificial neural networks (ANN) training. However, very versatile opinions regarding the performance of metaheuristics applied to ANN training may be found in the literature.Both nature-inspired metaheuristics and ANNs are widely applied to various geophysical and environmental problems. Among them the water temperature forecasting in a natural river, especially in colder climate zones where the seasonality plays important role, is of great importance, as water temperature has strong impact on aquatic life and chemistry. As the impact of possible future climate change on water temperature is not trivial, models are needed to allow projection of streamwater temperature based on simple hydro-meteorological variables.In this paper the detailed comparison of the performance of nature-inspired optimization methods and Levenberg-Marquardt (LM) algorithm in ANNs training is performed, based on the case study of water temperature forecasting in a natural stream, namely Biala Tarnowska river in southern Poland. Over 50 variants of 22 various metaheuristics, including a large number of Differential Evolution, as well as some Particle Swarm Optimization, Evolution Strategies, multialgorithms and Direct Search methods are compared with LM algorithm on ANN training for the described case study. The impact of population size and some control parameters of particular metaheuristics on the ANN training performance are verified. It is found that despite widely claimed large improvement in nature-inspired methods during last years, the vast majority of them are still outperformed by LM algorithm on the selected problem. The only methods that, based on this case study, seem competitive to LM algorithm in terms of the final performance (but not speed) are Differential Evolution algorithms that benefit from the concept of Global and Local neighborhood-based mutation operators. The streamwater forecasting performance of the neural networks is adequate, the major prediction errors are related to the river freezing and melting processes that occur during winter in the mountainous catchment under study. The applicability of metaheuristics to neural networks training is verified.Levenberg-Marquardt and DEGL algorithms outperform other training methods.In case of Differential Evolution methods population size is crucial.Neural networks appear to be useful for water temperature predictions in rivers.


Acta Geophysica | 2013

On the choice of calibration periods and objective functions: A practical guide to model parameter identification

Renata J. Romanowicz; Marzena Osuch; Magdalena Grabowiecka

Despite the development of new measuring techniques, monitoring systems and advances in computer technology, rainfall-flow modelling is still a challenge. The reasons are multiple and fairly well known. They include the distributed, heterogeneous nature of the environmental variables affecting flow from the catchment. These are precipitation, evapotranspiration and in some seasons and catchments in Poland, snow melt also. This paper presents a review of work done on the calibration and validation of rainfall-runoff modelling, with a focus on the conceptual HBV model. We give a synthesis of the problems and propose a practical guide to the calibration and validation of rainfall-runoff models.


Stochastic Environmental Research and Risk Assessment | 2017

Projected changes in flood indices in selected catchments in Poland in the 21st century

Marzena Osuch; Deborah Lawrence; Hadush K. Meresa; Jaroslaw J. Napiorkowski; Renata J. Romanowicz

The aim of this study is to estimate likely changes in flood indices under a future climate and to assess the uncertainty in these estimates for selected catchments in Poland. Precipitation and temperature time series from climate simulations from the EURO-CORDEX initiative for the periods 1971–2000, 2021–2050 and 2071–2100 following the RCP4.5 and RCP8.5 emission scenarios have been used to produce hydrological simulations based on the HBV hydrological model. As the climate model outputs for Poland are highly biased, post processing in the form of bias correction was first performed so that the climate time series could be applied in hydrological simulations at a catchment-scale. The results indicate that bias correction significantly improves flow simulations and estimated flood indices based on comparisons with simulations from observed climate data for the control period. The estimated changes in the mean annual flood and in flood quantiles under a future climate indicate a large spread in the estimates both within and between the catchments. An ANOVA analysis was used to assess the relative contributions of the 2 emission scenarios, the 7 climate models and the 4 bias correction methods to the total spread in the projected changes in extreme river flow indices for each catchment. The analysis indicates that the differences between climate models generally make the largest contribution to the spread in the ensemble of the three factors considered. The results for bias corrected data show small differences between the four bias correction methods considered, and, in contrast with the results for uncorrected simulations, project increases in flood indices for most catchments under a future climate.


Acta Geophysica | 2013

Modelling of Solute Transport in Rivers Under Different Flow Rates: A Case Study Without Transient Storage

Renata J. Romanowicz; Marzena Osuch; Stephen George Wallis

A methodology to derive solute transport models at any flow rate is presented. The novelty of the proposed approach lies in the assessment of uncertainty of predictions that incorporate parameterisation based on flow rate. A simple treatment of uncertainty takes into account heteroscedastic modelling errors related to tracer experiments performed over a range of flow rates, as well as the uncertainty of the observed flow rates themselves. The proposed approach is illustrated using two models for the transport of a conservative solute: a physically based, deterministic, advection-dispersion model (ADE), and a stochastic, transfer function based, active mixing volume model (AMV). For both models the uncertainty of any parameter increases with increasing flow rate (reflecting the heteroscedastic treatment of modelling errors at different observed flow rates), but in contrast the uncertainty of travel time, computed from the predicted model parameters, was found to decrease with increasing flow rate.


Hydrological Sciences Journal-journal Des Sciences Hydrologiques | 2017

Are modern metaheuristics successful in calibrating simple conceptual rainfall–runoff models?

Adam P. Piotrowski; Maciej J. Napiorkowski; Jaroslaw J. Napiorkowski; Marzena Osuch; Zbigniew W. Kundzewicz

ABSTRACT In recent years sampling approaches have been used more widely than optimization algorithms to find parameters of conceptual rainfall–runoff models, but the difficulty of calibration of such models remains in dispute. The problem of finding a set of optimal parameters for conceptual rainfall–runoff models is interpreted differently in various studies, ranging from simple to relatively complex and difficult. In many papers, it is claimed that novel calibration approaches, so-called metaheuristics, outperform the older ones when applied to this task, but contradictory opinions are also plentiful. The present study aims at calibration of two simple lumped conceptual hydrological models, HBV and GR4J, by means of a large number of metaheuristic algorithms. The tests are performed on four catchments located in regions with relatively similar climatic conditions, but on different continents. The comparison shows that, although parameters found may somehow differ, the performance criteria achieved with simple lumped models calibrated by various metaheuristics are very similar and differences are insignificant from the hydrological point of view. However, occasionally some algorithms find slightly better solutions than those found by the vast majority of methods. This means that the problem of calibration of simple lumped HBV or GR4J models may be deceptive from the optimization perspective, as the vast majority of algorithms that follow a common evolutionary principle of survival of the fittest lead to sub-optimal solutions.


Acta Geophysica | 2017

What can we learn from the projections of changes of flow patterns? Results from Polish case studies

Mikołaj Piniewski; Hadush K. Meresa; Renata J. Romanowicz; Marzena Osuch; Mateusz Szcześniak; Ignacy Kardel; Tomasz Okruszko; Abdelkader Mezghani; Zbigniew W. Kundzewicz

River flow projections for two future time horizons and RCP 8.5 scenario, generated by two projects (CHASE-PL and CHIHE) in the Polish-Norwegian Research Programme, were compared. The projects employed different hydrological models over different spatial domains. The semi-distributed, process-based, SWAT model was used in the CHASE-PL project for the entire Vistula and Odra basins area, whilst the lumped, conceptual, HBV model was used in the CHIHE project for eight Polish catchments, for which the comparison study was made. Climate projections in both studies originated from the common EURO-CORDEX dataset, but they were different, e.g. due to different bias correction approaches. Increases in mean annual and seasonal flows were projected in both studies, yet the magnitudes of changes were largely different, in particular for the lowland catchments in the far future. The HBV-based increases were significantly higher in the latter case than the SWAT-based increases in all seasons except winter. Uncertainty in projections is high and creates a problem for practitioners.


Hydrological Sciences Journal-journal Des Sciences Hydrologiques | 2016

On the importance of training methods and ensemble aggregation for runoff prediction by means of artificial neural networks

Adam P. Piotrowski; Jaroslaw J. Napiorkowski; Marzena Osuch; Maciej J. Napiorkowski

ABSTRACT Artificial neural networks (ANNs) become widely used for runoff forecasting in numerous studies. Usually classical gradient-based methods are applied in ANN training and a single ANN model is used. To improve the modelling performance, in some papers ensemble aggregation approaches are used whilst in others, novel training methods are proposed. In this study, the usefulness of both concepts is analysed. First, the applicability of a large number of population-based metaheuristics to ANN training for runoff forecasting is tested on data collected from four catchments, namely upper Annapolis (Nova Scotia, Canada), Biala Tarnowska (Poland), upper Allier (France) and Axe Creek (Victoria, Australia). Then, the importance of the search for novel training methods is compared with the importance of the use of a very simple ANN ensemble aggregation approach. It is shown that although some metaheuristics may slightly outperform the classical gradient-based Levenberg-Marquardt algorithm for a specific catchment, none performs better for the majority of the tested ones. One may also point out a few metaheuristics that do not suit ANN training at all. On the other hand, application of even the simplest ensemble aggregation approach clearly improves the results when the ensemble members are trained by any suitable algorithms. EDITOR D. Koutsoyiannis; ASSOCIATE EDITOR E. Toth

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Deborah Lawrence

Norwegian Water Resources and Energy Directorate

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Adam Kiczko

Warsaw University of Life Sciences

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Emilia Karamuz

Polish Academy of Sciences

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Maciej J. Napiorkowski

Warsaw University of Technology

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Tomasz Wawrzyniak

Polish Academy of Sciences

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Hadush K. Meresa

Polish Academy of Sciences

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