This paper presents a neural network (NN) based model to assess the regional hazard degree of debris flows in Lake Qionghai Watershed, China. The NN model was used as an alternative for the more conventional linear model MFCAM (multi-factor composite assessment model) in order to effectively handle the nonlinearity and uncertainty inherent in the debris flow hazard analysis. The NN model was configured using a three layer structure with eight input nodes and one output node, and the number of nodes in the hidden layer was determined through an iterative process of varying the number of nodes in the hidden layer until an optimal performance was achieved. The eight variables used to represent the eight input nodes include density of debris fl...
Climate change and rapid urbanization have made it difficult to predict the risk of pollution in cit...
Sediment in river is usually transported during extreme events related to intense rainfall and high ...
Although the prediction of debris flow-prone areas represents a key step towards reducing damages, m...
Debris flows have caused serious loss of human lives and a lot of damage to properties in Taiwan ove...
The main purpose of this study is to develop a new type of artificial neural network based model for...
Debris flows belong to sudden disasters which are difficult to forecast. Thus, a detailed and cohere...
Debris flows have caused enormous losses of property and human life in Taiwan during the last two de...
Ministry of Science and Technology of China 2008BAK50B01 201208018;National Natural Science Founda...
As one of the ecological consequences due to intensified human activities in the upper catchments of...
UnrestrictedArtificial Neural Network is a very powerful computational tool for modeling very compli...
Debris flows are a major geological hazard in mountainous regions. For improving mitigation, it is i...
This study employed an approach linking the Environmental Fluid Dynamics Code (EFDC) model and a Neu...
This study focused on a cloud model approach for considering debris-flow hazard assessment, in which...
Floods are the most frequent and destructive natural disasters causing damages to human lives and th...
China is one of the countries in the world that seriously affected by flash floods disasters. The fl...
Climate change and rapid urbanization have made it difficult to predict the risk of pollution in cit...
Sediment in river is usually transported during extreme events related to intense rainfall and high ...
Although the prediction of debris flow-prone areas represents a key step towards reducing damages, m...
Debris flows have caused serious loss of human lives and a lot of damage to properties in Taiwan ove...
The main purpose of this study is to develop a new type of artificial neural network based model for...
Debris flows belong to sudden disasters which are difficult to forecast. Thus, a detailed and cohere...
Debris flows have caused enormous losses of property and human life in Taiwan during the last two de...
Ministry of Science and Technology of China 2008BAK50B01 201208018;National Natural Science Founda...
As one of the ecological consequences due to intensified human activities in the upper catchments of...
UnrestrictedArtificial Neural Network is a very powerful computational tool for modeling very compli...
Debris flows are a major geological hazard in mountainous regions. For improving mitigation, it is i...
This study employed an approach linking the Environmental Fluid Dynamics Code (EFDC) model and a Neu...
This study focused on a cloud model approach for considering debris-flow hazard assessment, in which...
Floods are the most frequent and destructive natural disasters causing damages to human lives and th...
China is one of the countries in the world that seriously affected by flash floods disasters. The fl...
Climate change and rapid urbanization have made it difficult to predict the risk of pollution in cit...
Sediment in river is usually transported during extreme events related to intense rainfall and high ...
Although the prediction of debris flow-prone areas represents a key step towards reducing damages, m...