Application of Multi-classification Support Vector Machine in Regionalization of Debris Flow Hazards
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Application of Multi-classification Support Vector Machine in Regionalization of Debris Flow Hazards
Bulletin of Soiland Water ConservationVol. 29, Issue 5, Pages: 128-133(2010)
作者机构:
1. 中国科学院山地灾害与地表过程重点实验室,四川,成都,610041
2. 中国科学院水利部成都山地灾害与环境研究所,四川,成都,610041
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Published:2010
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LI Xiuzhen, KONG Jiming, LI Chaofeng. Application of Multi-classification Support Vector Machine in Regionalization of Debris Flow Hazards[J]. Bulletin of Soiland Water Conservation, 2010, 29(5): 128-133.
DOI:
LI Xiuzhen, KONG Jiming, LI Chaofeng. Application of Multi-classification Support Vector Machine in Regionalization of Debris Flow Hazards[J]. Bulletin of Soiland Water Conservation, 2010, 29(5): 128-133.DOI:
Application of Multi-classification Support Vector Machine in Regionalization of Debris Flow Hazards
Based on the debris flow data collected from 129 villages and towns in the Anning River valley of Liangshan Prefecture
two multi-classification support vector machine models were built to evaluate debris flow hazards of the villages and towns.86 samples from the villages and 65 samples from the towns were randomly selected as training samples and the remainders
as testing samples.Results show that the prediction accuracy of SVM model is improved with the increase of training samples and prediction accuracy of the two SVM models are higher than that of BP neural network models.Therefore
support vector machine method is a new machine learning method with higher precision and better generalization performance than neural network method.It has very broad application prospects and promotion and application values in the practice of debris flow hazard assessment.