Title :
Optimal control and state estimation of lithium-ion batteries using reformulated models
Author :
Suthar, Bharatkumar ; Ramadesigan, Venkatasailanathan ; Northrop, Paul W. C. ; Gopaluni, Bhushan ; Santhanagopalan, Shriram ; Braatz, Richard ; Subramanian, Venkat R.
Author_Institution :
Washington Univ., St. Louis, MO, USA
Abstract :
First-principles models that incorporate all of the key physics that affect the internal states of a lithium-ion battery are in the form of coupled nonlinear PDEs. While these models are very accurate in terms of prediction capability, the models cannot be employed for on-line control and monitoring purposes due to the huge computational cost. A reformulated model [1] is capable of predicting the internal states of battery with a full simulation running in milliseconds without compromising on accuracy. This paper demonstrates the feasibility of using this reformulated model for control-relevant real-time applications. The reformulated model is used to compute optimal protocols for battery operations to demonstrate that the computational cost of each optimal control calculation is low enough to be completed within the sampling interval in model predictive control (MPC). Observability studies are then presented to confirm that this model can be used for state-estimation-based MPC. A moving horizon estimator (MHE) technique was implemented due to its ability to explicitly address constraints and nonlinear dynamics. The MHE uses the reformulated model to be computationally feasible in real time. The feature of reformulated model to be solved in real time opens up the possibility of incorporating detailed physics-based model in battery management systems (BMS) to design and implement better monitoring and control strategies.
Keywords :
battery management systems; nonlinear control systems; optimal control; predictive control; secondary cells; BMS; MHE technique; address constraint; battery management system; control-relevant real-time application; lithium-ion battery state estimation; model predictive control; moving horizon estimator; nonlinear PDE; nonlinear dynamics; on-line control; optimal control; optimal protocol; reformulated model; state-estimation-based MPC; Batteries; Computational modeling; Mathematical model; Observability; Predictive models; State estimation;
Conference_Titel :
American Control Conference (ACC), 2013
Conference_Location :
Washington, DC
Print_ISBN :
978-1-4799-0177-7
DOI :
10.1109/ACC.2013.6580673