Medical Engineering & Physics
Volume 28, Issue 3 , Pages 240-250 , April 2006

Modeling, identification and nonlinear model predictive control of type I diabetic patient

Received 15 October 2003 ,Revised 2 March 2005 ,Accepted 8 April 2005.

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PII: S1350-4533(05)00087-1

doi: 10.1016/j.medengphy.2005.04.009

Medical Engineering & Physics
Volume 28, Issue 3 , Pages 240-250 , April 2006