The avalanche warning services use the regional avalanche danger level and activity as key metrics. In this study a dataset of a ski resort from 2012 to 2020 was used. The local avalanche danger level, the success of artificial avalanche release by snow groomer or blasting, and the decision to try an avalanche release by blasting are target variables. Five meteorological recordings and twenty five variables of the modeled snowpack with an hourly resolution were used as input for the machine learning approach. An artificial neural network consists of recurrent layers and convolutional layers for merging the temporal and spatial data. Support vector machines were adapted to calculate the probabilities for the target variables. A logistic regr...
International audienceSeveral decision-support methods exist to assist ski touring practitioners in ...
Abstract. This paper explores the use of the Support Vector Machine (SVM) as a data exploration tool...
It is important to predict snow disasters to prevent and reduce hazards in pastoral areas. In this s...
ABSTRACT: Numerical avalanche prediction with statistical methods using meteorological input parame...
ABSTRACT. In the past, numerical prediction of regional avalanche danger using statistical methods w...
Even today, the assessment of avalanche danger is by and large a subjective yet data-based decision-...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
Although snow avalanches are among the most destructive natural disasters, and result in losses of l...
Although snow avalanches are among the most destructive natural disasters, and result in losses of l...
Avalanche forecasting is an iterative process, where forecasters use weather data and snow observati...
Abstract Snow avalanches impose a considerable threat to infrastructure and human safety in snow bo...
International audienceSeveral decision-support methods exist to assist ski touring practitioners in ...
Abstract. This paper explores the use of the Support Vector Machine (SVM) as a data exploration tool...
It is important to predict snow disasters to prevent and reduce hazards in pastoral areas. In this s...
ABSTRACT: Numerical avalanche prediction with statistical methods using meteorological input parame...
ABSTRACT. In the past, numerical prediction of regional avalanche danger using statistical methods w...
Even today, the assessment of avalanche danger is by and large a subjective yet data-based decision-...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
International audiencePredicting avalanche activity from meteorological and snow cover simulations i...
Although snow avalanches are among the most destructive natural disasters, and result in losses of l...
Although snow avalanches are among the most destructive natural disasters, and result in losses of l...
Avalanche forecasting is an iterative process, where forecasters use weather data and snow observati...
Abstract Snow avalanches impose a considerable threat to infrastructure and human safety in snow bo...
International audienceSeveral decision-support methods exist to assist ski touring practitioners in ...
Abstract. This paper explores the use of the Support Vector Machine (SVM) as a data exploration tool...
It is important to predict snow disasters to prevent and reduce hazards in pastoral areas. In this s...