Long-Term Prediction For T1dm Model During State-Feedback Control

2016 12TH IEEE INTERNATIONAL CONFERENCE ON CONTROL AND AUTOMATION (ICCA)(2016)

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摘要
Avoiding low glucose concentration is critically important in type-1 diabetes treatment. Predicting the future plasma glucose levels could ensure the safety of the patient. However, such estimation is no trivial task. The current paper proposes a predictor framework which stems from Unscented Kalman tiller and works during closed-loop control, that can predict hazardous glucose levels in advance. Once the blood glucose concentration starts to rise, the predictor activates and estimates future glucose levels up to 3 hours, confirming whether the controller can endanger the patient. The capabilities of the framework is presented through simulations based on the SimEdu validated in-silico simulator.
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关键词
SimEdu validated in-silico simulator,blood glucose concentration,hazardous glucose level prediction,closed-loop control,unscented Kalman filter,future plasma glucose level prediction,type-1 diabetes treatment,state-feedback control,T1DM model,long-term prediction
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