谷氨酸发酵过程的灰色最小二乘支持向量机软测量

Rongjian Zheng, Feng Pan
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引用次数: 1

摘要

由于谷氨酸发酵过程具有典型的不确定性,且缺乏合适的主要过程变量在线传感器,因此谷氨酸发酵过程的在线控制是一个难点。提出了一种基于灰色关联分析(GRA)和最小二乘向量机(LSSVM)的谷氨酸在线预测模型。首先,通过灰色关联分析对输入变量进行关联分析,降低模型维数,提高模型性能;其次,在非线性预测模型的训练过程中,采用结合网格搜索的耦合模拟退火(CSA)算法确定LSSVM的模型参数值,提高预测精度;仿真结果表明,与径向基函数(RBF)神经网络相比,所建立的谷氨酸浓度预测模型具有明显的预测性能,可为谷氨酸发酵过程的控制和优化提供有效的操作指导。
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Soft Sensor for Glutamate Fermentation Process Using Gray Least Squares Support Vector Machine
The on-line control of glutamate fermentation process is difficult, owing to the typical uncertainties of fermentation process and the lack of suitable on-line sensors for primary process variables. A prediction model based on gray relational analysis (GRA) and least squares vector machine (LSSVM) is presented to predict glutamate concentration on-line. First, the correlation analysis of input variables was carried out by grey relational analysis to reduce model dimensionality and improve model performance. Second, in the training process of nonlinear predict model, coupled simulated annealing (CSA) arithmetic combining grid search was adopted to determine model parameter values of LSSVM for better predict accuracy. Simulation results showed that the prediction model proposed for glutamate concentration has obvious prediction performance compared with radial basis function (RBF) neural networks, it can provide effective operation guidance for control and optimization of the glutamate fermentation process.
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