Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Piecewise prediction model for watershed‐scale erosion and sediment yield of individual rainfall events on the Loess Plateau, China

View through CrossRef
AbstractEstablishing a universal watershed‐scale erosion and sediment yield prediction model represents a frontier field in erosion and soil/water conservation. The research presented here was conducted on the Chabagou watershed, which is located in the first sub‐region of the hill‐gully area of the Loess Plateau, China. A back‐propagation artificial neural model for watershed‐scale erosion and sediment yield was established, with the accuracy of the model, then compared with that of multiple linear regression. The sensitivity degree of various factors to erosion and sediment yield was quantitatively analysed using the default factor test. On the basis of the sensitive factors and the fractal information dimension, the piecewise prediction model for erosion and sediment yield of individual rainfall events was established and further verified. The results revealed the back‐propagation artificial neural network model to perform better than the multiple linear regression model in terms of predicting the erosion modulus, with the former able to effectively characterize dynamic changes in sediment yield under comprehensive factor conditions. The sensitivity of runoff erosion power and runoff depth to the erosion and sediment yield associated with individual rainfall events was found to be related to the complexity of surface topography. The characteristics of such a hydrological response are thus closely related to topography. When the fractal information dimension is greater than the topographic threshold, the accuracy of prediction using runoff erosion power is higher than that of using runoff depth. In contrast, when the fractal information dimension is smaller than the topographic threshold, the accuracy of prediction using runoff depth is higher than that of using runoff erosion power. The developed piecewise prediction model for watershed‐scale erosion and sediment yield of individual rainfall events, which introduces runoff erosion power and runoff depth using the fractal information dimension as a boundary, can be considered feasible and reliable and has a high prediction accuracy. Copyright © 2013 John Wiley & Sons, Ltd.
Title: Piecewise prediction model for watershed‐scale erosion and sediment yield of individual rainfall events on the Loess Plateau, China
Description:
AbstractEstablishing a universal watershed‐scale erosion and sediment yield prediction model represents a frontier field in erosion and soil/water conservation.
The research presented here was conducted on the Chabagou watershed, which is located in the first sub‐region of the hill‐gully area of the Loess Plateau, China.
A back‐propagation artificial neural model for watershed‐scale erosion and sediment yield was established, with the accuracy of the model, then compared with that of multiple linear regression.
The sensitivity degree of various factors to erosion and sediment yield was quantitatively analysed using the default factor test.
On the basis of the sensitive factors and the fractal information dimension, the piecewise prediction model for erosion and sediment yield of individual rainfall events was established and further verified.
The results revealed the back‐propagation artificial neural network model to perform better than the multiple linear regression model in terms of predicting the erosion modulus, with the former able to effectively characterize dynamic changes in sediment yield under comprehensive factor conditions.
The sensitivity of runoff erosion power and runoff depth to the erosion and sediment yield associated with individual rainfall events was found to be related to the complexity of surface topography.
The characteristics of such a hydrological response are thus closely related to topography.
When the fractal information dimension is greater than the topographic threshold, the accuracy of prediction using runoff erosion power is higher than that of using runoff depth.
In contrast, when the fractal information dimension is smaller than the topographic threshold, the accuracy of prediction using runoff depth is higher than that of using runoff erosion power.
The developed piecewise prediction model for watershed‐scale erosion and sediment yield of individual rainfall events, which introduces runoff erosion power and runoff depth using the fractal information dimension as a boundary, can be considered feasible and reliable and has a high prediction accuracy.
Copyright © 2013 John Wiley & Sons, Ltd.

Related Results

LOESS OF SERBIA—FROM PALEOCLIMATE TO WINEYARDS
LOESS OF SERBIA—FROM PALEOCLIMATE TO WINEYARDS
Loess is a buff colored, clastic sedimentary rocky of eolian origin without stratification and laminations where the silt particles predominates (beside clay and sand). Gentle lith...
Geomorphological context of Quaternary desert loess - from dust sink to dust source
Geomorphological context of Quaternary desert loess - from dust sink to dust source
<p>Quaternary loess covers desert margins and vast areas of the Negev, southern Israel. The Negev loess is among the best-studied desert loess, with research going ba...
Analysis of changes in ecosystem capacity index and driving factors in the Loess Plateau under ecological engineering orientation
Analysis of changes in ecosystem capacity index and driving factors in the Loess Plateau under ecological engineering orientation
BackgroundIn recent decades, the Loess Plateau is one of the regions in China that urgently needs ecological governance due to the severe situation of soil erosion and land deserti...
Characteristics and RISM of sliding flow landslides triggered by prolonged heavy rainfall in the loess area of Tianshui, China
Characteristics and RISM of sliding flow landslides triggered by prolonged heavy rainfall in the loess area of Tianshui, China
Abstract. Shallow loess landslides induced by prolonged heavy rainfall are common in loess dominated areas and often result in property loss, human casualties, and sediment polluti...
Environmental Implications of Soil Erosion and Sediment Yield in Lake Hawassa Watershed, South-central Ethiopia
Environmental Implications of Soil Erosion and Sediment Yield in Lake Hawassa Watershed, South-central Ethiopia
Abstract Background: Assessing soil erosion, sediment yield and sediment retention capacity of watersheds is one of the under researched areas in watersheds of developing c...
Runoff–Sediment Simulation of Typical Small Watershed in Loess Plateau of China
Runoff–Sediment Simulation of Typical Small Watershed in Loess Plateau of China
The implementation of measures such as check dams and terraces in the Loess Plateau of China has had a groundbreaking impact on water and sediment conditions. The question of how t...
An enthusiasm for loess: Leonard Horner in Bonn and Liu Tungsheng in Beijing
An enthusiasm for loess: Leonard Horner in Bonn and Liu Tungsheng in Beijing
Abstract Liu Tungsheng featured on the list of twelve notable loess investigators prepared for the great LoessFest meeting, held in Heidelberg and Bonn in 1999. He fully deserved h...
Hydrological Processes and Sediment Dynamics in Climatically Transitional Watersheds under Climate Change and Human Activities
Hydrological Processes and Sediment Dynamics in Climatically Transitional Watersheds under Climate Change and Human Activities
Climate change and intensified human activities have profoundly altered hydrological processes in watersheds worldwide. Soil erosion and sediment yield are key indicators of waters...

Back to Top