Soft Sensing of the Lysozyme Mycelium Bacteria Concentration Based on SUKF Algorithm

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Abstract:

In order to measure lysozyme biomass activity concentration accurately and in real-time in the fermentation process of marine biological enzyme preparation, soft sensing with the nonlinear state-estimation based on SUKF has been used, the method uses KF framework, embedded in SUT. In fact the fermentation bacteria is lysozyme, which is fermented in a fermenter of KRH-100L according to process requirements. The statistical properties of variables through the nonlinear transformation has been calculated and the degradation effects of aggregation of high-dimensional and nonlinear fermentation model would be effectively settled in sample. By using σ-point set with symmetric sampling strategy, the mean points increased, according to the fermentation of priori information of each dimension mean. By using cross-validation method to select model parameters, compared with the support vector machine SVM with RBFNN algorithm, the experimental results show that the smallest root mean square statistical error of training and testing in soft Sensing with SUKF reduced by 2% or so.

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Periodical:

Advanced Materials Research (Volumes 785-786)

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1408-1412

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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[1] B. Osmanoglu, S. Wdowinski . IEEE Trans. on Geosciencea and Remote Sensing . 47(4): 1197-1202(2011).

Google Scholar

[2] Haidong Hu, Xianlin Huang. Journal of Systems Engineering and Electronics. 21(1): 102-109(2010).

Google Scholar

[3] Julier S J. In Proc Aero Sense-llth int Symp Aero/De Sense, Simulation Control, Orlando, USA. 54-65 (2007).

Google Scholar

[4] LIU Yelx, YU AnXil. Science China(Technological Sciences). 53(4): 929-941(2010).

Google Scholar

[5] Pelckmans K, Brabanter J D, Suykens J. Neuro computing, 69(3): 100-122. (2005).

Google Scholar

[6] Schugerl K. Journal of Biotechnology, 85(2): 149-173. (2006).

Google Scholar

[7] Vlarcos J, Arauzo B. Control Engineering Practice, 12(9): 1073-1080. (2009).

Google Scholar