TY - GEN A1 - Reusser, Dominik A1 - Blume, Theresa A1 - Schaefli, Bettina A1 - Zehe, Erwin T1 - Analysing the temporal dynamics of model performance for hydrological models N2 - The temporal dynamics of hydrological model performance gives insights into errors that cannot be obtained from global performance measures assigning a single number to the fit of a simulated time series to an observed reference series. These errors can include errors in data, model parameters, or model structure. Dealing with a set of performance measures evaluated at a high temporal resolution implies analyzing and interpreting a high dimensional data set. This paper presents a method for such a hydrological model performance assessment with a high temporal resolution and illustrates its application for two very different rainfall-runoff modeling case studies. The first is the Wilde Weisseritz case study, a headwater catchment in the eastern Ore Mountains, simulated with the conceptual model WaSiM-ETH. The second is the Malalcahuello case study, a headwater catchment in the Chilean Andes, simulated with the physicsbased model Catflow. The proposed time-resolved performance assessment starts with the computation of a large set of classically used performance measures for a moving window. The key of the developed approach is a data-reduction method based on self-organizing maps (SOMs) and cluster analysis to classify the high-dimensional performance matrix. Synthetic peak errors are used to interpret the resulting error classes. The final outcome of the proposed method is a time series of the occurrence of dominant error types. For the two case studies analyzed here, 6 such error types have been identified. They show clear temporal patterns, which can lead to the identification of model structural errors. T3 - Zweitveröffentlichungen der Universität Potsdam : Mathematisch-Naturwissenschaftliche Reihe - paper 140 KW - Rainfall-runoff response KW - Process identification KW - Improved calibration KW - Soil-moisture KW - Catchment Y1 - 2009 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:kobv:517-opus-45114 ER - TY - GEN A1 - Pradhan, Prajal A1 - Fischer, Günther A1 - Velthuizen, Harrij van A1 - Reusser, Dominik Edwin A1 - Kropp, Jürgen T1 - Closing yield gaps BT - how sustainable can we be? T2 - Postprints der Universität Potsdam : Mathematisch-Naturwissenschaftliche Reihe N2 - Global food production needs to be increased by 60-110% between 2005 and 2050 to meet growing food and feed demand. Intensification and/or expansion of agriculture are the two main options available to meet the growing crop demands. Land conversion to expand cultivated land increases GHG emissions and impacts biodiversity and ecosystem services. Closing yield gaps to attain potential yields may be a viable option to increase the global crop production. Traditional methods of agricultural intensification often have negative externalities. Therefore, there is a need to explore location-specific methods of sustainable agricultural intensification. We identified regions where the achievement of potential crop calorie production on currently cultivated land will meet the present and future food demand based on scenario analyses considering population growth and changes in dietary habits. By closing yield gaps in the current irrigated and rain-fed cultivated land, about 24% and 80% more crop calories can respectively be produced compared to 2000. Most countries will reach food self-sufficiency or improve their current food self-sufficiency levels if potential crop production levels are achieved. As a novel approach, we defined specific input and agricultural management strategies required to achieve the potential production by overcoming biophysical and socioeconomic constraints causing yield gaps. The management strategies include: fertilizers, pesticides, advanced soil management, land improvement, management strategies coping with weather induced yield variability, and improving market accessibility. Finally, we estimated the required fertilizers (N, P2O5, and K2O) to attain the potential yields. Globally, N-fertilizer application needs to increase by 45-73%, P2O5-fertilizer by 22-46%, and K2O-fertilizer by 2-3 times compared to the year 2010 to attain potential crop production. The sustainability of such agricultural intensification largely depends on the way management strategies for closing yield gaps are chosen and implemented. T3 - Zweitveröffentlichungen der Universität Potsdam : Mathematisch-Naturwissenschaftliche Reihe - 491 KW - climate-change KW - management KW - intensification KW - productivity KW - agriculture Y1 - 2019 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:kobv:517-opus4-408105 SN - 1866-8372 IS - 491 ER - TY - GEN A1 - Fluschnik, Till A1 - Kriewald, Steffen A1 - Ros, Anselmo García Cantú A1 - Zhou, Bin A1 - Reusser, Dominik Edwin A1 - Kropp, Jürgen A1 - Rybski, Diego T1 - The size distribution, scaling properties and spatial organization of urban clusters BT - a global and regional percolation perspective N2 - Human development has far-reaching impacts on the surface of the globe. The transformation of natural land cover occurs in different forms, and urban growth is one of the most eminent transformative processes. We analyze global land cover data and extract cities as defined by maximally connected urban clusters. The analysis of the city size distribution for all cities on the globe confirms Zipf’s law. Moreover, by investigating the percolation properties of the clustering of urban areas we assess the closeness to criticality for various countries. At the critical thresholds, the urban land cover of the countries undergoes a transition from separated clusters to a gigantic component on the country scale. We study the Zipf-exponents as a function of the closeness to percolation and find a systematic dependence, which could be the reason for deviating exponents reported in the literature. Moreover, we investigate the average size of the clusters as a function of the proximity to percolation and find country specific behavior. By relating the standard deviation and the average of cluster sizes—analogous to Taylor’s law—we suggest an alternative way to identify the percolation transition. We calculate spatial correlations of the urban land cover and find long-range correlations. Finally, by relating the areas of cities with population figures we address the global aspect of the allometry of cities, finding an exponent δ ≈ 0.85, i.e., large cities have lower densities. T3 - Zweitveröffentlichungen der Universität Potsdam : Mathematisch-Naturwissenschaftliche Reihe - 356 KW - Zipf’s law KW - city clusters KW - percolation KW - Taylor’s law Y1 - 2017 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:kobv:517-opus4-400486 ER - TY - THES A1 - Reusser, Dominik Edwin T1 - Combining smart model diagnostics and effective data collection for snow catchments T1 - Zeitlich aufgelöste Modelldiagnose und kosteneffektive Messungen für Schneeeinzugsgebiete N2 - Complete protection against flood risks by structural measures is impossible. Therefore flood prediction is important for flood risk management. Good explanatory power of flood models requires a meaningful representation of bio-physical processes. Therefore great interest exists to improve the process representation. Progress in hydrological process understanding is achieved through a learning cycle including critical assessment of an existing model for a given catchment as a first step. The assessment will highlight deficiencies of the model, from which useful additional data requirements are derived, giving a guideline for new measurements. These new measurements may in turn lead to improved process concepts. The improved process concepts are finally summarized in an updated hydrological model. In this thesis I demonstrate such a learning cycle, focusing on the advancement of model evaluation methods and more cost effective measurements. For a successful model evaluation, I propose that three questions should be answered: 1) when is a model reproducing observations in a satisfactory way? 2) If model results deviate, of what nature is the difference? And 3) what are most likely the relevant model components affecting these differences? To answer the first two questions, I developed a new method to assess the temporal dynamics of model performance (or TIGER - TIme series of Grouped Errors). This method is powerful in highlighting recurrent patterns of insufficient model behaviour for long simulation periods. I answered the third question with the analysis of the temporal dynamics of parameter sensitivity (TEDPAS). For calculating TEDPAS, an efficient method for sensitivity analysis is necessary. I used such an efficient method called Fourier Amplitude Sensitivity Test, which has a smart sampling scheme. Combining the two methods TIGER and TEDPAS provided a powerful tool for model assessment. With WaSiM-ETH applied to the Weisseritz catchment as a case study, I found insufficient process descriptions for the snow dynamics and for the recession during dry periods in late summer and fall. Focusing on snow dynamics, reasons for poor model performance can either be a poor representation of snow processes in the model, or poor data on snow cover, or both. To obtain an improved data set on snow cover, time series of snow height and temperatures were collected with a cost efficient method based on temperature measurements on multiple levels at each location. An algorithm was developed to simultaneously estimate snow height and cold content from these measurements. Both, snow height and cold content are relevant quantities for spring flood forecasting. Spatial variability was observed at the local and the catchment scale with an adjusted sampling design. At the local scale, samples were collected on two perpendicular transects of 60 m length and analysed with geostatistical methods. The range determined from fitted theoretical variograms was within the range of the sampling design for 80% of the plots. No patterns were found, that would explain the random variability and spatial correlation at the local scale. At the watershed scale, locations of the extensive field campaign were selected according to a stratified sample design to capture the combined effects of elevation, aspect and land use. The snow height is mainly affected by the plot elevation. The expected influence of aspect and land use was not observed. To better understand the deficiencies of the snow module in WaSiM-ETH, the same approach, a simple degree day model was checked for its capability to reproduce the data. The degree day model was capable to explain the temporal variability for plots with a continuous snow pack over the entire snow season, if parameters were estimated for single plots. However, processes described in the simple model are not sufficient to represent multiple accumulation-melt-cycles, as observed for the lower catchment. Thus, the combined spatio-temporal variability at the watershed scale is not captured by the model. Further tests on improved concepts for the representation of snow dynamics at the Weißeritz are required. From the data I suggest to include at least rain on snow and redistribution by wind as additional processes to better describe spatio-temporal variability. Alternatively an energy balance snow model could be tested. Overall, the proposed learning cycle is a useful framework for targeted model improvement. The advanced model diagnostics is valuable to identify model deficiencies and to guide field measurements. The additional data collected throughout this work helps to get a deepened understanding of the processes in the Weisseritz catchment. N2 - Modelle zur Hochwasservorhersage und –warnung basieren auf einer bio-physikalisch Repräsentation der relevanten hydrologischen Prozesse. Eine Verbesserungen der Beschreibung dieser Prozesse kann zuverlässigere Vorhersagen ermöglichen. Dazu wird die Benutzung eines Lernzykluses bestehend aus einer kritische Beurteilung eines existierenden Modells, der Erhebung zusätzlicher Daten, der Bildung eines vertieften Verständnis und einer Überarbeitung des Modells vorgeschlagen. In dieser Arbeit wird ein solcher Lernzyklus aufgegriffen, wobei der Schwerpunkt auf einer verbesserten Modellanalyse und kosteneffizientere Messungen liegt. Für eine erfolgreiche Modellbeurteilung sind drei Fragen zu beantworten: 1) Wann reproduziert ein Modell die beobachteten Werte in einer zufriedenstellenden Weise (nicht)? 2) Wie lassen sich die Abweichungen charakterisieren? und 3) welches sind die Modellkomponenten, die diese Abweichungen bedingen? Um die ersten beiden Fragen zu beantworten, wird eine neue Methode zur Beurteilung des zeitlichen Verlaufs der Modellgüte vorgestellt. Eine wichtige Stärke ist, dass wiederholende Muster ungenügender Modellgüte auch für lange Simulationsläufe einfach identifiziert werden können. Die dritte Frage wird durch die Analyse des zeitlichen Verlaufs der Parametersensitivität beantwortet. Eine Kombination der beiden Methoden zur Beantwortung aller drei Fragen stellt ein umfangreiches Werkzeug für die Analyse hydrologischer Modelle zur Verfügung. Als Fallstudie wurde WaSiM-ETH verwendet, um das Einzugsgebiet der wilden Weißeritz zu modellieren. Die Modellanalyse von WaSiM-ETH hat ergeben, dass die Schneedynamik und die Rezession während trockener Perioden im Spätsommer und Herbst, für eine Beschreibung der Prozesse an der Weißeritz nicht geeignet sind. Die Erhebung zusätzlicher Daten zum besseren Verständnis der Schneedynamik bildet den nächste Schritt im Lernzyklus. Daten über Schneetemperaturen und Schneehöhen wurden mit Hilfe eines neuen, preisgünstigen Verfahrens erhoben. Dazu wurde die Temperatur an jedem Standort mit unterschiedlichen Abständen zum Boden gemessen und mit einem neuen Algorithmus in Schneehöhe und Kältegehalt umgerechnet. Die Schneehöhe und Kältegehalt sind wichtige Größen für die Vorhersage von Frühjahrshochwassern. Die räumliche Variabilität der Schneedecke auf der Einzugsgebietsskala wurde entsprechend der Landnutzung, der Höhenzone und der Ausrichtung stratifiziert untersucht, wobei lediglich der Einfluss der Höhe nachgewiesen werden konnte, während Ausrichtung und Landnutzung keinen statistisch signifikanten Einfluss hatten. Um die Defizite des WaSiM-ETH Schneemodules für die Beschreibung der Prozesse im Weißeritzeinzugsgebiets besser zu verstehen, wurde der gleiche konzeptionelle Ansatz als eigenständiges, kleines Modell benutzt, um die Dynamik in den Schneedaten zu reproduzieren. Während dieses Grad-Tag-Modell in der Lage war, den zeitlichen Verlauf für Flächen mit einer kontinuierlichen Schneedecke zu reproduzieren, konnte die Dynamik für Flächen mit mehreren Akkumulations- und Schmelzzyklen im unteren Einzugsgebiet vom Modell nicht abgebildet werden. Vorschläge zur Verbesserung des Modells werden in der Arbeit gemacht. Zusammenfassend hat sich das Lernzyklus-Konzept als nützlich erwiesen, um gezielt an einer Modellverbesserung zu arbeiten. Die differenzierte Modelldiagnose ist wertvoll, um Defizite im Modellkonzept zu identifizieren. Die während dieser Studie erhobenen Daten sind geeignet, um ein verbessertes Verständnis der Schnee-Prozesse an der Weißeritz zu erlangen. KW - Hydrologie KW - Modellierung KW - Modell Diagnose KW - Schnee KW - Sensitivitätsanalyse KW - hydrology KW - modelling KW - model diagnostics KW - snow KW - sensitivity analysis Y1 - 2011 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:kobv:517-opus-52574 ER -