Publication | Closed Access
Adaptive Partial Differential Equation Observer for Battery State-of-Charge/State-of-Health Estimation Via an Electrochemical Model
257
Citations
24
References
2013
Year
EngineeringState EstimationNonlinear System IdentificationLinear PdeElectrochemical ModelSystems EngineeringBattery Energy StorageElectrical EngineeringBattery Electrode MaterialsEnergy StorageSystem IdentificationObserver DesignElectrochemistryElectric BatteryState ObserverEnergy ManagementBattery ConfigurationSimultaneous StateElectrophysiologyBatteries
This paper develops an adaptive partial differential equation (PDE) observer for battery state-of-charge (SOC) and state-of-health (SOH) estimation. Real-time state and parameter information enables operation near physical limits without compromising durability, thereby unlocking the full potential of battery energy storage. SOC/SOH estimation is technically challenging because battery dynamics are governed by electrochemical principles, mathematically modeled by PDEs. We cast this problem as a simultaneous state (SOC) and parameter (SOH) estimation design for a linear PDE with a nonlinear output mapping. Several new theoretical ideas are developed, integrated together, and tested. These include a backstepping PDE state estimator, a Padé-based parameter identifier, nonlinear parameter sensitivity analysis, and adaptive inversion of nonlinear output functions. The key novelty of this design is a combined SOC/SOH battery estimation algorithm that identifies physical system variables, from measurements of voltage and current only.
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