• Media type: E-Article
  • Title: Simultaneous model predictive control and moving horizon estimation for blood glucose regulation in Type 1 diabetes
  • Contributor: Copp, David A.; Gondhalekar, Ravi; Hespanha, João P.
  • Published: Wiley, 2018
  • Published in: Optimal Control Applications and Methods, 39 (2018) 2, Seite 904-918
  • Language: English
  • DOI: 10.1002/oca.2388
  • ISSN: 0143-2087; 1099-1514
  • Keywords: Applied Mathematics ; Control and Optimization ; Software ; Control and Systems Engineering
  • Origination:
  • Footnote:
  • Description: <jats:title>Summary</jats:title><jats:p>A new estimation and control approach for the feedback control of an artificial pancreas to treat Type 1 diabetes mellitus is proposed. In particular, we present a new output‐feedback predictive control approach that simultaneously solves the state estimation and control objectives by means of a single min‐max optimization problem. This involves optimizing a cost function with both finite forward and backward horizons with respect to the unknown initial state, unmeasured disturbances and noise, and future control inputs and is similar to simultaneously solving a model predictive control (MPC) problem and a moving horizon estimation (MHE) problem. We incorporate a novel asymmetric output cost to penalize dangerous low blood glucose values more severely than less harmful high blood glucose values. We compare this combined MPC/MHE approach to a control strategy that uses state‐feedback MPC preceded by a Luenberger observer for state estimation. <jats:italic>In‐silico</jats:italic> results showcase several advantages of this new simultaneous MPC/MHE approach, including fewer hypoglycemic events without increasing the number of hyperglycemic events, faster insulin delivery in response to a meal consumption, and shorter insulin pump suspensions, resulting in smoother blood glucose trajectories.</jats:p>