Título: The deformation prediction of mine slope surface using PSO-SVM model
Autores: Du, Sunwen; Taiyuan University of echnology
Zhang, Jin; Taiyuan University of echnology
Li, Jingtao; China Coal Pingshuo Group co., Ltd
Su, Qiaomei; Taiyuan University of echnology
Zhu, Wenbo; Taiyuan University of echnology
Chen, Yuejuan; Taiyuan University of echnology
Fecha: 2013-07-03
Publicador: TELKOMNIKA: Indonesian journal of electrical engineering
Fuente:
Tipo: info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Tema: Computer Engineering
Geologic measurements, meteorological factors, forecasting, particle swarm optimization, support vector machine
Descripción: Based on the main factors with important influence on thedeformation of the mine slope, a new methodintegrating support vector machine (SVM) and particleswarm optimization (PSO) was proposed to predict thedeformation of mine slope surface. Themeteorological factors and the deformation data of the research area are acquired using the advanced deformation monitoring equipment GroundBased-Synthetic Aperture Radar (GB-SAR).Then the SVM is used to predict the mine slope deformation. The PSO is employed to optimize the structure parameters of the SVM. The proposed newmethod was applied to predict the mine slope surface deformation of theAnjialing diggings in China. The obtained experiments results indicated thatthe proposed method can provide precise prediction of the mining slope surfacedeformation and its performance is superior to its rivals.
Idioma: Inglés