학술논문

Forecasting Coal and Gas Outburst Based on Support Vector Machine
Document Type
Conference
Source
2009 International Conference on Information Engineering and Computer Science Information Engineering and Computer Science, 2009. ICIECS 2009. International Conference on. :1-4 Dec, 2009
Subject
Computing and Processing
Support vector machines
Support vector machine classification
Pattern recognition
Technology forecasting
Learning systems
Statistical learning
Sampling methods
Regression analysis
Equations
Production
Language
ISSN
2156-7379
2156-7387
Abstract
Support vector machine (SVM) is a novel machine learning method based on statistical learning theory (SLT). SVM is powerful for the problem with small sample, non linear and high dimension. A multi-class SVM classifier is applied to predict the coal and gas outburst in the paper. In this model, the dominant factors are the input vectors and the degree of outburst danger is divided into four types: heavy outburst, common outburst, outburst warning and no existing outburst. Through a special data dealing process, the multi-class SVM classifier, trained with the sampling data, identifies out the four types of coal and gas outburst states. An empirical analysis shows that some perfect computing conclusions have been acquired by the proposed model.