This study explores the possibilities of employing machine learning algorithms to predict foehn occurrence in Switzerland at a north Alpine (Altdorf) and south Alpine (Lugano) station from its synoptic fingerprint in reanalysis data and climate simulations. This allows for an investigation on a potential future shift in monthly foehn frequencies. First, inputs from various atmospheric fields from the European Centre for Medium-Range Weather Forecasts (ECMWF) interim reanalysis (ERAI) were used to train an XGBoost model. Here, similar predictive performance to previous work was achieved, showing that foehn can accurately be diagnosed from the coarse synoptic situation. In the next step, the algorithm was generalized to predict foehn based on...
Abstract It remains difficult to disentangle the relative influences of aerosols and greenhouse gase...
Near-surface wind is difficult to estimate using global numerical weather and climate models, becaus...
Abstract Many problems in climate science require the identification of signals obscured by both the...
Remote sensing of water vapour using the Global Navigation Satellite System (GNSS) is a well-establi...
The goal of this thesis is to produce probabilistic foehn forecasts by applying model output statist...
Vb cyclones are major drivers of extreme precipitation and floods in the study area of hydrological ...
Summarization: Understanding and estimating regional climate change under different anthropogenic em...
Machine learning (ML) and in particular deep learning (DL) methods push state-of-the-art solutions f...
Glacier mass changes are considered to represent key variables related to climate variability. The a...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
Reliable subseasonal forecasts of high summer temperatures would be very valuable for society. Altho...
We use sophisticated machine-learning techniques on a network of summer temperature and precipitatio...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Numerical weather prediction has traditionally been based on the models that discretize the dynamica...
Shallow and deep learning of extreme rainfall events from convective atmospheres Summary This repo...
Abstract It remains difficult to disentangle the relative influences of aerosols and greenhouse gase...
Near-surface wind is difficult to estimate using global numerical weather and climate models, becaus...
Abstract Many problems in climate science require the identification of signals obscured by both the...
Remote sensing of water vapour using the Global Navigation Satellite System (GNSS) is a well-establi...
The goal of this thesis is to produce probabilistic foehn forecasts by applying model output statist...
Vb cyclones are major drivers of extreme precipitation and floods in the study area of hydrological ...
Summarization: Understanding and estimating regional climate change under different anthropogenic em...
Machine learning (ML) and in particular deep learning (DL) methods push state-of-the-art solutions f...
Glacier mass changes are considered to represent key variables related to climate variability. The a...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
Reliable subseasonal forecasts of high summer temperatures would be very valuable for society. Altho...
We use sophisticated machine-learning techniques on a network of summer temperature and precipitatio...
In this paper, we performed an analysis of the 500 most relevant scientific articles published since...
Numerical weather prediction has traditionally been based on the models that discretize the dynamica...
Shallow and deep learning of extreme rainfall events from convective atmospheres Summary This repo...
Abstract It remains difficult to disentangle the relative influences of aerosols and greenhouse gase...
Near-surface wind is difficult to estimate using global numerical weather and climate models, becaus...
Abstract Many problems in climate science require the identification of signals obscured by both the...