期刊文献+

粒子群优化SVM在气体定量分析中的应用 被引量:6

Application of Support Vector Machine Optimized by Particle Swarm in Quantitative Analysis of Gas
在线阅读 下载PDF
导出
摘要 针对机动车尾气排放CO气体的定量分析中,支持向量机建模的参数难以确定、光谱数据计算量过大等问题,提出了一种自适应变异粒子群优化的支持向量机方法,对浓度范围在0.5%~8%的20组不同浓度的CO气体进行定量分析。通过对汽车尾气中CO气体的初始数据进行优化,再将优化的核函数带入支持向量机进行浓度的回归分析,将结果与BP神经网络模型回归效果作对比,实验表明:粒子群寻优得到的最优参数c=39.315 2,g=0.178 55;BP神经网络的适应度值在迭代60次之后趋于稳定,SVM建模时间约为BP网络的1/30,且SVM预测精度明显高于BP网络。相比与BP网络,SVM更适合处理气体定量分析问题。 For the problems of the quantitative analysis of vehicle exhaust emissions of CO gas,it is difficult to determine parameters of SVM modeling,calculate excessive data in infrared spectroscopy,and other issues. A solution of support vector machine of adaptive and mutate particle swarm optimization was proposed. 20 different groups of CO gas which concentration range from 0.5% to 8% was analyzed. According to this method,the spectrum data of CO in vehicle exhaust is optimized. The kernel function was used in SVM to analysis the concentration. Then compare the effect with the result received with the BP neural network model. The result shows that the best parameter in PSO is c=39.315 2 and g=0.178 55,the fitness of BP neural network became stable after 60 iterations,the time of modeling by SVM was about 1/30 of BP modeling,and the prediction accuracy of SVM is significantly higher than BP. Compared with BP network,SVM is more suitable for processing quantitative analysis of gas.
出处 《传感技术学报》 CAS CSCD 北大核心 2016年第7期1121-1126,共6页 Chinese Journal of Sensors and Actuators
关键词 传感器应用 支持向量机 粒子群优化 BP神经网络 遗传算法 sensor application SVM particle swarm optimization bp neural Network genetic algorithms
  • 相关文献

参考文献15

二级参考文献152

共引文献611

同被引文献64

引证文献6

二级引证文献23

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部