Title :
SVM-based prediction of the product formation for industrial 2-keto-L-gulonic acid cultivation
Author :
Cui, Lei ; Xie, Ping ; Sun, Junwei ; Guo, Wei ; Yuan, Jingqi
Author_Institution :
Dept. of Autom., Shanghai Jiao Tong Univ., Shanghai, China
Abstract :
2-keto-L-gulonic acid (2-KGA), a key precursor in the synthesis of L-ascorbic acid, is produced by mixed fermentation of Bacillus megaterium and Gluconobacter oxydans with L-sorbose as substrate. For such mixed cultivation, the mechanistic modelling is difficult because the interactions between the two strains are not well known yet. Therefore, data-driven modelling is studied in this paper. The rolling learning-prediction (RLP) based on support vector machine (SVM) is practiced to predict the product formation. To satisfy the online application demand, pseudo-on-line prediction is carried out using the data from commercial scale 2-KGA cultivation. The prediction approach receives data in sequence and the historical database of the SVM is updated with statistical analysis of the product formation after the termination of a batch. The robustness of the prediction approach is further tested by adding extra noises to the process variables.
Keywords :
fermentation; microorganisms; organic compounds; pharmaceuticals; production engineering computing; statistical analysis; support vector machines; 2-KGA; Bacillus megaterium; Gluconobacter oxydans; L-ascorbic acid; L-sorbose; RLP; SVM-based prediction; data-driven modelling; industrial 2-keto-L-gulonic acid cultivation; mixed fermentation; product formation; pseudo-online prediction; rolling learning-prediction; statistical analysis; support vector machine; Computational modeling; Databases; Kernel; Noise; Pollution measurement; Support vector machines; Training;
Conference_Titel :
Advanced Control of Industrial Processes (ADCONIP), 2011 International Symposium on
Conference_Location :
Hangzhou
Print_ISBN :
978-1-4244-7460-8
Electronic_ISBN :
978-988-17255-0-9