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基于自适应FLSVM的赖氨酸发酵过程软测量方法
引用本文:王博,孙玉坤,黄永红,嵇小辅.基于自适应FLSVM的赖氨酸发酵过程软测量方法[J].仪器仪表学报,2011,32(2).
作者姓名:王博  孙玉坤  黄永红  嵇小辅
作者单位:江苏大学电气信息工程学院,镇江,212013
基金项目:国家"863"计划,国家"863"项目子项,高等学校博士学科点专项基金
摘    要:针对生化反应过程中软测量模型随着时间的推移而出现的模型老化现象,提出一种基于增量学习的自适应模糊支持向量机软测量建模方法.它首先将输入空间中的样本映射到高维特征空间,然后根据样本偏离超平面的程度赋予不同的模糊隶属度,建立模糊支持向量机软测量模型,并在模型投入现场运行后,通过一种改进的增量学习算法在线更新模型参数以自适应获得更加准确的软测量模型.以L-赖氨酸流加发酵过程为例,验证了所提算法能够从过程的第2批次开始对关键生物量参数(菌丝浓度和基质浓度)进行较准确的在线预测,与普通的模糊支持向量机建模方法相比具有较高的预测精度和自适应性.

关 键 词:自适应学习  模糊支持向量机  软测量  L-赖氨酸发酵过程

Soft-sensing method for Lysine fermentation process based on adaptive FLSVM
Wang Bo,Sun Yukun,Huang Yonghong,Ji Xiaofu.Soft-sensing method for Lysine fermentation process based on adaptive FLSVM[J].Chinese Journal of Scientific Instrument,2011,32(2).
Authors:Wang Bo  Sun Yukun  Huang Yonghong  Ji Xiaofu
Affiliation:Wang Bo,Sun Yukun,Huang Yonghong,Ji Xiaofu(School of Electrical and Information Engineering,Jiangsu University,Zhenjiang 212013,China)
Abstract:In order to overcome the emergence of model aging as time moves on,a soft sensing modeling method based on incremental learning and fuzzy support vector machines is presented.Data samples in input space are mapped into high dimensional feature space.The fuzzy membership value for each input point is computed according to its distance to the hyperplane,and a soft sensing model based on fuzzy support vector machines is established.In addition,after the model is put into application,the model can be updated on...
Keywords:adaptive learning  fuzzy support vector machine  soft sensing  L-lysine fermentation process  
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