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基于粒子群最小二乘支持向量机的瓦斯含量预测
引用本文:姜谙男,梁冰,张娇. 基于粒子群最小二乘支持向量机的瓦斯含量预测[J]. 辽宁工程技术大学学报(自然科学版), 2009, 28(3)
作者姓名:姜谙男  梁冰  张娇
作者单位:1. 大连海事大学,交通工程与物流学院,辽宁,大连,116026;辽宁工程技术大学,力学与工程科学系,辽宁,阜新,123000
2. 辽宁工程技术大学,力学与工程科学系,辽宁,阜新,123000
3. 大连海事大学,交通工程与物流学院,辽宁,大连,116026
基金项目:国家自然科学基金资助项目 
摘    要:针对经验模型与确定性模型在应用中受到限制问题,采用基于统计学习理论的支持向量机对经验数据进行学习,建立瓦斯含量与其影响因素之间的映射模型,从而实现煤层瓦斯含量预测.支持向量机的惩罚因子和核参数取值不同将会明显影响其预测的精度,支持向量机本身也没给出解决的办法,引入粒子群算法自动搜索支持向量机参数.该方法克服了神经网络过学习问题和支持向量机人为选取参数的盲目性问题.通过对某矿区样本的学习预测研究,表明该方法可取得良好的预测效果,具有较好的适应性.

关 键 词:粒子群算法  最小二乘支持向量机  瓦斯含量  预测

Forecasting in-situ gas content using geological factors based on particle swarm optimization and least square support vector machine
JIANG Annan,LIANG Bing,ZHANG Jiao. Forecasting in-situ gas content using geological factors based on particle swarm optimization and least square support vector machine[J]. Journal of Liaoning Technical University (Natural Science Edition), 2009, 28(3)
Authors:JIANG Annan  LIANG Bing  ZHANG Jiao
Affiliation:1. Traffic and Logistics College;Dalian Maritime University;Dalian 116026;China;2. Department of Mechanics and Engineering Sciences;Liaoning Technical University;Fuxin 123000;China
Abstract:In-situ gas content in coal seam is affected by many complicated geological factors. Conventional empirical models and deterministic models have a limited capacity in forecasting coal seam in-situ gas content. This paper proposes a new method to forecast in-situ gas content in coal seam. The proposed method adopts support vector machine (SVM), which is based on statistical learning theory to map the complex nonlinear relationship between in-situ gas content and its influence factors by learning from empiric...
Keywords:particle swarm optimization  least square support vector machine  gas content  forecast  
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