A platform for research: civil engineering, architecture and urbanism
Sandy Soil Liquefaction Prediction Based on Clustering-Binary Tree Neural Network Algorithm Model
The neural network algorithm is a small sample machine learning method built on the statistical learning theory and the lowest structural risk principle. Classical neural network algorithms mainly aim at solving two-classification problems, making it infeasible for multiclassification problems encountered in engineering practice. According to the main factors affecting sand liquefaction, a sand liquefaction discriminant model based on a clustering-binary tree multiclass neural network algorithm is established using the class distance idea in cluster analysis. The model can establish the nonlinear relationship between sand liquefaction and various influencing factors by learning limited samples. The research results show that the hierarchical structure based on the clustering-binary tree neural network algorithm is reasonable, and the sand liquefaction level can be categorized accurately.
Sandy Soil Liquefaction Prediction Based on Clustering-Binary Tree Neural Network Algorithm Model
The neural network algorithm is a small sample machine learning method built on the statistical learning theory and the lowest structural risk principle. Classical neural network algorithms mainly aim at solving two-classification problems, making it infeasible for multiclassification problems encountered in engineering practice. According to the main factors affecting sand liquefaction, a sand liquefaction discriminant model based on a clustering-binary tree multiclass neural network algorithm is established using the class distance idea in cluster analysis. The model can establish the nonlinear relationship between sand liquefaction and various influencing factors by learning limited samples. The research results show that the hierarchical structure based on the clustering-binary tree neural network algorithm is reasonable, and the sand liquefaction level can be categorized accurately.
Sandy Soil Liquefaction Prediction Based on Clustering-Binary Tree Neural Network Algorithm Model
Yu Wang (author) / Jiachen Wang (author)
2021
Article (Journal)
Electronic Resource
Unknown
Metadata by DOAJ is licensed under CC BY-SA 1.0
Effect of Soil Grain Size on Liquefaction Strength of Sandy Soil
TIBKAT | 2021
|Liquefaction prediction using fuzzy neural network model based on SPT
British Library Conference Proceedings | 2001
|Effect of Soil Grain Size on Liquefaction Strength of Sandy Soil
Springer Verlag | 2020
|CPT Based Liquefaction Resistance of Sandy Soils
British Library Conference Proceedings | 1998
|