Publications
Found 397 publication(s)
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Richter, K. (2025): Machine Learning-supported visibility forecasting by combining station, Meteosat and reanalysis data Philipps University of Marburg, master thesis
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Abstract:
Abstract:
Accurate forecasts of radiation fog are an objective of significant relevance due to its impact on traffic, aviation, and transportation. This
study will explore the adaptation and enhancement of a previously developed Machine Learning-based nowcasting framework for
radiation fog events. The objective is to explore the expansion potential to a spatial scale and model accuracy improvements through
application at three distinct weather station locations that experience radiation fog. Further, the effectiveness of Numerical Weather
Prediction (NWP) data as additional predictor variable source on model performance will be assessed. This will be performed through
integration of datasets from German Weather Service (DWD) stations, Meteosat Second Generation (MSG) channel properties and
regional reanalysis variables from COSMO NWP model. Distinct model variants based on different dataset combinations (Station,
MSG+COSMO, Station+MSG+COSMO, Visibility-Only) will be evaluated. Using eXtreme Gradient Boosting (XGBoost) algorithm,
the framework forecasts absolute visibility with 60-minute lead time. A persistence model serves as benchmark. Performance will be
assessed using scoring metrics (Accuracy, Correlation, Percentage bias, Mean Absolute Error) across the full visibility range and three
visibility threshold bounds (2 km, 1.1 km, 0.4 km). Temporal accuracy of fog formation and dissipation will be determined through
evaluation of fog formation and dissipation time shifts. XGBoost models mostly outperform PM, with tendencies of
Station+MSG+COSMO variant performing best and MSG+COSMO variant worst. Prediction difficulties arise in the 0.4 km threshold
segment due to measurement resolution limitations and value imbalance of visibility data. The model variants reliably predict fog event
transitions, with the majority forecasted with deviations < 30 minutes and only few events overseen. A consistent tendency towards
delayed prediction is observed. Variability in model performances across station locations suggests that small-scale environmental
characteristics contribute to different model robustness at distinct sites. The results indicate strong potential for further spatial framework
extension. COSMO variables partially contribute to improved model performance. The framework marks a solid foundation for future
exploitation.
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Keywords: |
Radiation fog |
fog horizontal visibility |
Machine learning |
Nowcasting |
XGBoost |
Bendix, J.; Limberger, O.; Breuer, L.; de Paula, M.D.; Fries, A.; González-Jaramillo, V.; Grigusova, P.; Hickler, T.; Murkute, C.; Pucha-Cofrep, F.; Trachte, K. & Windhorst, D. (2025): Simulation of latent heat flux over a high altitude pasture in the tropical Andes with a coupled land surface framework. Science of The Total Environment 981, 179510.
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DOI: 10.1016/j.scitotenv.2025.179510
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Abstract:
Abstract:
Latent heat flux is a central element of land-atmosphere interactions under climate change. Knowledge is particularly poor in the biodiversity hotspot of the Andes, where heat flux measurements using eddy covariance stations are scarce and land surface models (LSMs) often oversimplify the complexity of the ecosystems. The main objective of this study is to perform latent heat flux simulations for the tropical South Eastern (SE) Ecuadorian Andes using a coupled LSM framework, and to test the performance with heat flux and soil moisture data collected from a tropical high-altitude pasture. Prior to testing, we applied multi-criteria model calibration of sensitive model parameters, focusing on improving simulated soil water conditions and radiation fluxes as a prerequisite for proper heat flux simulations. The most sensitive parameters to improve soil moisture and radiation flux simulations were soil porosity, saturated hydraulic conductivity, leaf area index, soil colour and NIR (Near Infrared) leaf optical properties. The best calibrated model run showed a very good performance for half-hourly latent heat flux simulations with an R2 of 0.8 and an RMSE of 34.0 W m−2, outperforming simulations with uncalibrated and uncoupled LSM simulations in comparable areas. The slight overall overestimation in the simulated latent heat flux can be related to (i) simulation uncertainties in the canopy heat budget, (ii) an imbalance in the observed flux data and (iii) slight overestimations in the simulated soil moisture. Although our study focuses on latent heat fluxes and their relation to simulated radiation fluxes and soil moisture, model outputs of sensible heat fluxes were also discussed. The systematic overestimation of sensible heat flux in the model seems to be mainly a result of overestimated canopy temperatures. The improved simulation for latent heat flux has a high translational potential to support land use strategies in the tropical Andes under climate change.
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Keywords: |
Tropical Andes |
Latent heat flux |
Land surface model |
Sub-model coupling |
Model calibration |
High altitude pasture |
Tenelanda, P.; Turini, N.; Orellana-Alvear, J.; Maldonado, B.D.; Bendix, J. & Celleri, R. (2025): The diurnal cycle and event-scale precipitation characteristics in Galápagos at different altitudes during ENSO 2022-2024. ERDKUNDE 79, 43-65.
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DOI: 10.3112/erdkunde.2025.01.03
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Abstract:
Abstract:
An understanding of sub-hourly precipitation variability in the Galapagos Islands is crucial for water resource
management and effective biodiversity conservation. This study compares the diurnal cycle and event-scale precipitation
characteristics (ESPC), such as mean and maximum intensity, duration and rainfall accumulation at different altitudes during
El Niño-Southern Oscillation (ENSO) 2022-2024 on Santa Cruz Island. The La Niña phase was analyzed from April 2022
to January 2023 and the El Niño phase from June 2023 to April 2024. Precipitation data, recorded every 10 minutes, was
collected from a recently established network of automatic weather stations, which were strategically positioned at three
windward and two leeward sites. The results suggest that the diurnal cycle was influenced by altitude, with a maximum vari
ability between morning and afternoon, regardless of ENSO phase. During La Niña, ESPC exhibited similarities at interme
diate altitudes at both windward and leeward sides. However, rainfall events at the island’s summit were less intense and of
longer duration. During El Niño, the highest intensities were observed along the coast and at intermediate altitudes of both
windward and leeward locations. In contrast, at the top of the island, rainfall events were less intense and more prolonged.
At all altitudes, more than half of the rainfall events corresponded to garúa events, and at the top of the island, almost all
events were of this type. At this altitude, the contribution of garúa events to the total rainfall accumulation was 80% and
85% for La Niña and El Niño, respectively. This study provides a detailed analysis of how sub-hourly precipitation varies
significantly at different altitudes on the windward and leeward sides as a function of ENSO phases, providing valuable
baseline information for future studies in this unique and fragile ecosystem.
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Keywords: |
Galapagos Archipelago |
Rainfall |
ESNO |
Grigusova, P.; Limberger, O.; Murkute, C.; Pucha, F.; González-Jaramillo, V.; Fries, A.; Windhorst, D.; Breuer, L.; de Paula, M.D.; Hickler, T.; Trachte, K. & Bendix, J. (2025): Radiation partitioning in a cloud-rich tropical mountain rain forest of the S-Ecuadorian Andes for use in plot-based land surface modelling. Dynamics of Atmospheres and Oceans 110, 101553.
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DOI: 10.1016/j.dynatmoce.2025.101553
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Abstract:
Abstract:
Understanding the partitioning of downward shortwave radiation into direct and diffuse components is essential for modeling ecosystem energy fluxes. Accurate partitioning functions are critical for land surface models (LSMs) coupled with climate models, yet these functions often depend on regional cloud and aerosol conditions. While data for developing semi-empirical partitioning functions are abundant in mid-latitudes, their performance in tropical regions, particularly in the high Andes, remains poorly understood due to scarce ground-based measurements. This study analyzed a unique dataset of shortwave radiation components from a tropical mountain rainforest (MRF) in southern Ecuador, developing and testing a locally adapted partitioning function using Random Forest Regression. The model achieved high accuracy in predicting the percentage of diffuse radiation (%Dif; R2=0.95, RMSE = 5.33, MAE = 3.74) and absolute diffuse radiation (R2=0.99, RMSE = 5.30, MAE = 14). When applied to simulate upward shortwave radiation, the model outperformed commonly used partitioning functions achieving the lowest RMSE (8.62) and MAE (5.82) while matching the highest R2 (0.97). These results underscore the importance of regionally adapted radiation partitioning functions for improving LSM performance, particularly in complex tropical environments. The adapted LSM will be further utilized for studies on heat fluxes and carbon sequestration.
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Keywords: |
Machine learning |
Diffuse radiation |
Surface radiation balance |
Land surface modeling |
Tropical mountain rain forest |
Urdiales-Flores, D.; Celleri, R.; Mariéthoz, G.; Bendix, J. & Peleg, N. (2025): Heavy Rainfall Patterns and High Streamflow Dynamics in the Southern Ecuadorian Andes. Journal of Hydrometeorology 26(6), 725 - 739.
Turini, N.; Maldonado, B.D.; Zander, S.; López, S.D.B.; Ballari, D.; Celleri, R.; Orellana Alvear, J.; Schmidt, B.; Scherer, D. & Bendix, J. (2025): Operational satellite cloud products need local adjustment--The Galapagos case of ecoclimatic cloud zonation. Atmospheric Research 315, 107918.
Limberger, O.; Homeier, J.; Gonzalez-Jaramillo, V.; Fries, A.; Murkute, C.; Trachte, K. & Bendix, J. (2025): Foliar trait retrieval models based on hyperspectral satellite imagery perform well in a biodiversity hotspot of the SE Ecuadorian Andes. International Journal of Remote Sensing 0(0), 1--19.
Gaurav, S.; Thies, B.; Egli, S. & Bendix, J. (2025): A new machine-learning based cloud mask using harmonized data of two Meteosat generations shows a general decrease in cloudiness over Europe in recent decades. Remote Sensing of Environment 318, 114599.
Grigusova, P.; Beilschmidt, C.; Dobbermann, M.; Drönner, J.; Mattig, M.; Sanchez, P.; Farwig, N. & Bendix, J. (2024): A Data Storage, Analysis, and Project Administration Engine (TMFdw) for Small-to Medium-Size Interdisciplinary Ecological Research Programs with Full Raster Data Capabilities. Data 9(12), 143.
Pauli, E.; Cermak, J.; Bendix, J. & Stier, P. (2024): Synoptic scale controls and aerosol effects on fog and low stratus life cycle processes in the Po valley, Italy. Geophysical Research Letters 51(20), e2024GL111490.
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DOI: 10.1029/2024GL111490
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Abstract:
Abstract:
Fog and low stratus clouds (FLS) form as a result of complex interactions of multiple factors in
the atmosphere and at the land surface and impact both the anthropogenic and natural environments. Here, we
analyze the role of synoptic conditions and aerosol loading on FLS occurrence and persistence in the Po valley
in northern Italy. By applying k‐means clustering to reanalysis data, we find that FLS formation in the Po valley
is either based on radiative processes or moisture advection from the Mediterranean sea. Satellite‐based data on
FLS persistence shows longer persistence of radiatively formed FLS events, likely due to air mass stagnation
and a temperature inversion. Ground‐based aerosol optical depth observations further reveal that FLS event
duration is significantly higher under high aerosol loading. The results underline the combined effect of
topography, moisture advection and aerosol loading on the FLS life cycle in the Po valley.
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Keywords: |
Po Valley |
Fog and low stratus detection |
Meteosat Second Generation (MSG) |
Pohl, M.; Lehnert, L.; Thies, B.; Seeger, K.; Berdugo, M.; Gradstein, S.; Bader, M. & Bendix, J. (2024): Downscaling air temperatures for high-resolution niche modeling in a valley of the Amazon lowland forests: A case study on the microclima R package. PLOS ONE 19(11), e0310423.
Murkute, C.; Sayeed, M.; Pucha-Cofrep, F.; Carrillo-Rojas, G.; Homeier, J.; Limberger, O.; Fries, A.; Bendix, J. & Trachte, K. (2024): Turbulent Energy and Carbon Fluxes in an Andean Montane Forest—Energy Balance and Heat Storage. Forests 15(10), 1828.
Schön, J.E.; Keuth, R.; Homeier, J.; Limberger, O.; Bendix, J.; Farwig, N. & Brandl, R. (2024): Do leaf traits shape herbivory in tropical montane rainforests? A multispecies approach. Ecosphere 15(10), e70018.
Schütz, M.; Schütz, A.; Bendix, J. & Thies, B. (2024): Improving classification-based nowcasting of radiation fog with machine learning based on filtered and preprocessed temporal data. Quarterly Journal of the Royal Meteorological Society 150(759), 577--596.
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DOI: 10.1002/qj.4619
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Abstract:
Abstract:
Radiation fog nowcasting remains a complex yet critical task due to its substantial impact on traffic safety and economic activity. Current numerical weather prediction models are hindered by computational intensity and knowledge gaps regarding fog-influencing processes. Machine-Learning (ML) models, particularly those employing the eXtreme Gradient Boosting (XGB) algorithm, may offer a robust alternative, given their ability to learn directly from data, swiftly generate nowcasts, and manage non-linear interrelationships among fog variables. However, unlike recurrent neural networks XGB does not inherently process temporal data, which is crucial in fog formation and dissipation. This study proposes incorporating preprocessed temporal data into the model training and applying a weighted moving-average filter to regulate the substantial fluctuations typical in fog development. Using an ML training and evaluation scheme for time series data, we conducted an extensive bootstrapped comparison of the influence of different smoothing intensities and trend information timespans on the model performance on three levels: overall performance, fog formation and fog dissipation. The performance is checked against one benchmark and two baseline models. A significant performance improvement was noted for the station in Linden-Leihgestern (Germany), where the initial F1 score of 0.75 (prior to smoothing and trend information incorporation) was improved to 0.82 after applying the smoothing technique and further increased to 0.88 when trend information was incorporated. The forecasting periods ranged from 60 to 240 min into the future. This study offers novel insights into the interplay of data smoothing, temporal preprocessing, and ML in advancing radiation fog nowcasting.
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Keywords: |
fog |
Machine learning |
Nowcasting |
forecast |
Urgilés, G.; Celleri, R.; Bendix, J. & Orellana-Alvear, J. (2024): Identification of spatio-temporal patterns in extreme rainfall events in the Tropical Andes: A clustering analysis approach. Meteorological Applications 31(5), e70005.
Álvarez-Estrella, J.; Muñoz, P.; Bendix, J.; Contreras, P. & Celleri, R. (2024): Enhancing Peak Runoff Forecasting through Feature Engineering Applied to X-Band Radar Data. Water 16(7), 968.
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DOI: 10.3390/w16070968
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Abstract:
Floods cause significant damage to human life, infrastructure, agriculture, and the economy. Predicting peak runoffs is crucial for hazard assessment, but it is challenging in remote areas like the Andes due to limited hydrometeorological data. We utilized a 300 km2 catchment over the period 2015–2021 to develop runoff forecasting models exploiting precipitation information retrieved from an X-band weather radar. For the modeling task, we employed the Random Forest (RF) algorithm in combination with a Feature Engineering (FE) strategy applied to the radar data. The FE strategy is based on an object-based approach, which derives precipitation characteristics from radar data. These characteristics served as inputs for the models, distinguishing them as “enhanced models” compared to “referential models” that incorporate precipitation estimates from all available pixels (1210) for each hour. From 29 identified events, enhanced models achieved Nash-Sutcliffe efficiency (NSE) values ranging from 0.94 to 0.50 for lead times between 1 and 6 h. A comparative analysis between the enhanced and referential models revealed a remarkable 23% increase in NSE-values at the 3 h lead time, which marks the peak improvement. The enhanced models integrated new data into the RF models, resulting in a more accurate representation of precipitation and its temporal transformation into runoff.
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Keywords: |
South Ecuador |
Weather Radar |
Runoff |
Forecast |
Cordova, M.; Orellana-Alvear, J.; Bendix, J.; Rollenbeck, R. & Celleri, R. (2024): Large-scale dynamics of extreme precipitation in the tropical Andes: combining weather radar observations and reanalysis data. Meteorology and Atmospheric Physics 136(4), 27.
Brenner, T.; Link, A.; Khan, S.A.; Reudenbach, C.; Bendix, J.; Kutzinski, M.; Weckler, B.C.; Pott, H.; Rupp, J.; Witzenrath, M.; Rohde, G.; Pletz, M. & Bertrams, W. (2024): Impact of comorbidities and personal characteristics on weather-related risk for community-acquired pneumonia. Frontiers in Climate 6, 1475075.
Kolbe, C.; Thies, B. & Bendix, J. (2024): Let It Snow: Intercomparison of Various Total and Snow Precipitation Data over the Tibetan Plateau. Atmosphere 15(9), 1076.
Ang, L.P.; Kong, F.; Hernández-Rodrguez, E.; Liu, Q.; Cerrejón, C.; Feldman, M.J.; Shu, L.; Ye, L.; Gao, L. & Yin, X. (2024): Rocket launches threaten global biodiversity conservation. Communications Earth & Environment 5(1), 799.