Mathematical Biosciences and Engineering (MBE)

Change detection in the dynamics of an intracellular protein synthesis model using nonlinear Kalman filtering
Pages: 1017 - 1035, Issue 5, October 2015

doi:10.3934/mbe.2015.12.1017      Abstract        References        Full text (446.8K)           Related Articles

Gerasimos G. Rigatos - Unit of Industrial Automation, Industrial Systems Institute, 26504, Rion Patras, Greece (email)
Efthymia G. Rigatou - Dept. of Paediatric Haematology-Oncology, Athens Children Hospital Aghia Sofia, 11527, Athens, Greece (email)
Jean Daniel Djida - Department of Physics, University of Ngaoundere, P.O. Box 454 Ngaoundere, Cameroon (email)

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