Method of Soft-Sensor Modeling for Fermentation Process Based on Geometric Support Vector Regression

被引:1
作者
吴佳欢
王晓琨
王建林
赵利强
于涛
机构
[1] CollegeofInformationScienceandTechnology,BeijingUniversityofChemicalTechnology
关键词
fermentation process; soft-sensor modeling; geometric SVR; swarm energy conservation particle swarm optimization (SEC-PSO);
D O I
10.19884/j.1672-5220.2013.01.001
中图分类号
TQ920.6 [发酵工艺]; TP274 [数据处理、数据处理系统];
学科分类号
081703 ; 082203 ; 0804 ; 080401 ; 080402 ; 081002 ; 0835 ;
摘要
The soft-sensor modeling for fermentation process based on standard support vector regression(SVR) needs to solve the quadratic programming problem(QPP) which will often lead to large computational burdens, slow convergence rate, low solving efficiency, and etc. In order to overcome these problems, a method of soft-sensor modeling for fermentation process based on geometric SVR is presented. In the method, the problem of solving the SVR soft-sensor model is converted into the problem of finding the nearest points between two convex hulls (CHs) or reduced convex hulls (RCHs) in geometry. Then a geometric algorithm is adopted to generate soft-sensor models of fermentation process efficiently. Furthermore, a swarm energy conservation particle swarm optimization (SEC-PSO) algorithm is proposed to seek the optimal parameters of the augmented training sample sets, the RCH size, and the kernel function which are involved in geometric SVR modeling. The method is applied to the soft-sensor modeling for a penicillin fermentation process. The experimental results show that, compared with the method based on the standard SVR, the proposed method of soft-sensor modeling based on geometric SVR for fermentation process can generate accurate soft-sensor models and has much less amount of computation, faster convergence rate, and higher efficiency.
引用
收藏
页码:1 / 6
页数:6
相关论文
共 15 条
[1]   基于群能量恒定的粒子群优化算法 [J].
王建林 ;
薛尧予 ;
于涛 ;
马江宁 .
控制与决策, 2010, (02) :269-272+277
[2]   On-line Estimation in Fed-batch Fermentation Process Using State Space Model and Unscented Kalman Filter [J].
Wang Jianlin ;
Zhao Liqiang ;
Yu Tao .
CHINESE JOURNAL OF CHEMICAL ENGINEERING, 2010, 18 (02) :258-264
[3]  
Tax forecasting theory and model based on SVM optimized by PSO[J] . Liu Li-xia,Zhuang Yi-qi,Xue-yong Liu.Expert Systems With Applications . 2010 (1)
[4]  
Application of the PSO–SVM model for recognition of control chart patterns[J] . Vahid Ranaee,Ata Ebrahimzadeh,Reza Ghaderi.ISA Transactions . 2010 (4)
[5]  
Hybrid robust support vector machines for regression with outliers[J] . Chen-Chia Chuang,Zne-Jung Lee.Applied Soft Computing Journal . 2009 (1)
[6]  
Model optimization of SVM for a fermentation soft sensor[J] . Guohai Liu,Dawei Zhou,Haixia Xu,Congli Mei.Expert Systems With Applications . 2009 (4)
[7]  
Hybrid modeling of penicillin fermentation process based on least square support vector machine[J] . Xianfang Wang,Jindong Chen,Chunbo Liu,Feng Pan.Chemical Engineering Research and Design . 2009 (4)
[8]  
A geometric method for model selection in support vector machine[J] . Xinjun Peng,Yifei Wang.Expert Systems With Applications . 2008 (3)
[9]  
Decomposition techniques for training linear programming support vector machines[J] . Yusuke Torii,Shigeo Abe.Neurocomputing . 2008 (4)
[10]  
On-line Estimation of Biomass in Fermentation Process Using Support Vector Machine 1 1 Supported by the National Natural Science Foundation of China (No.20476007)[J] . Jianlin WANG,Tao YU,Cuiyun JIN.Chinese Journal of Chemical Engineering . 2006 (3)