It is important to predict snow disasters to prevent and reduce hazards in pastoral areas. In this study, we build a potential risk assessment model based on a logistic regression of 33 snow disaster events that occurred in Qinghai Province. A simulation model of the snow disaster early warning is established using a back propagation artificial neural network (BP-ANN) method and is then validated. The results show: (1) the potential risk of a snow disaster in the Qinghai Province is mainly determined by five factors. Three factors are positively associated, the maximum snow depth, snow-covered days (SCDs), and slope, and two are negative factors, annual mean temperature and per capita gross domestic product (GDP); (2) the key factors that c...
Heilongjiang Province is located in the northeast region of China, with the country’s highest latitu...
After analysing systematically formation mechanism of snow disaster (SD), this study revealed spatia...
ABSTRACT: Numerical avalanche prediction with statistical methods using meteorological input parame...
This study develops a model for early warning of snow-caused livestock disasters on a county basis a...
To date, the emphasis in snow-caused disasters that occur in pastoral areas in China has been in mon...
Snow disaster is one of the top ten natural disasters worldwide, and the most severe natural disaste...
As the heavy snow storm occurrence increases due to the climate change, the demage caused by snowsto...
Crop frost, one kind of agro-meteorological disaster, often causes significant loss to agriculture. ...
Artificial neural networks (ANN) are non-linear mapping structures analogous to the functioning of t...
China’s landslide disasters are serious, and regional landslide disaster early-warning is one of the...
The avalanche warning services use the regional avalanche danger level and activity as key metrics. ...
Abstract- This paper deals with the application of a well-known data mining technique, multi-layer b...
ABSTRACT. In the past, numerical prediction of regional avalanche danger using statistical methods w...
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...
Heilongjiang Province is located in the northeast region of China, with the country’s highest latitu...
After analysing systematically formation mechanism of snow disaster (SD), this study revealed spatia...
ABSTRACT: Numerical avalanche prediction with statistical methods using meteorological input parame...
This study develops a model for early warning of snow-caused livestock disasters on a county basis a...
To date, the emphasis in snow-caused disasters that occur in pastoral areas in China has been in mon...
Snow disaster is one of the top ten natural disasters worldwide, and the most severe natural disaste...
As the heavy snow storm occurrence increases due to the climate change, the demage caused by snowsto...
Crop frost, one kind of agro-meteorological disaster, often causes significant loss to agriculture. ...
Artificial neural networks (ANN) are non-linear mapping structures analogous to the functioning of t...
China’s landslide disasters are serious, and regional landslide disaster early-warning is one of the...
The avalanche warning services use the regional avalanche danger level and activity as key metrics. ...
Abstract- This paper deals with the application of a well-known data mining technique, multi-layer b...
ABSTRACT. In the past, numerical prediction of regional avalanche danger using statistical methods w...
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...
Heilongjiang Province is located in the northeast region of China, with the country’s highest latitu...
After analysing systematically formation mechanism of snow disaster (SD), this study revealed spatia...
ABSTRACT: Numerical avalanche prediction with statistical methods using meteorological input parame...