Litcius/Paper detail

State-of-charge estimation based on model-adaptive Kalman filters

Edoardo Locorotondo, Giovanni Lutzemberger, Luca Pugi

2020Proceedings of the Institution of Mechanical Engineers Part I Journal of Systems and Control Engineering27 citationsDOI

Abstract

This article presents a set of algorithms for the estimation of state of charge, specifically deployed for lithium-ion batteries. These algorithms are based on appropriate battery models. These models can be developed having different levels of accuracy, also including the possibility to correctly represent the hysteresis voltage behaviour of the selected lithium cells. In addition, different identification methods of the battery model parameters may also be considered, considering tabulated parameters, calibrated in previous tests, or online parametrization tools. State of charge is then evaluated using non-linear Kalman filter techniques. Effectiveness of identification methods, also with the performance offered by Kalman filter itself, has been accurately evaluated through experimental tests. To verify the robustness of the proposed algorithms, some disturbances were introduced and evaluation was also conducted at different state of charge initial conditions and sampling times.

Topics & Concepts

State of chargeKalman filterExtended Kalman filterControl theory (sociology)Robustness (evolution)Computer scienceParametrization (atmospheric modeling)Battery (electricity)Invariant extended Kalman filterAlgorithmVoltageSystem identificationObservabilityIdentification (biology)State (computer science)EngineeringMathematicsArtificial intelligenceData miningApplied mathematicsElectrical engineeringPhysicsMeasure (data warehouse)Radiative transferQuantum mechanicsChemistryControl (management)BiologyPower (physics)BiochemistryBotanyGeneAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsAdvanced Battery Materials and Technologies