Litcius/Paper detail

A Novel Battery State of Charge Estimation Based on the Joint Unscented Kalman Filter and Support Vector Machine Algorithms

Fei Xie, Shunli Wang, Xie Yanxin, Carlos Fernández, Xiaoxia Li, Chuanyun Zou

2020International Journal of Electrochemical Science27 citationsDOIOpen Access PDF

Abstract

With the development of new energy sources becoming the mainstream of energy development strategies, the role of electric vehicle-powered lithium-ion batteries in the field of automobile transportation is becoming more and more obvious. An efficient the Battery Management System is necessary for the real-time usage monitor of each battery cell, which analyzes the battery status to ensure its safe operation. A complex equivalent circuit model is proposed and established. the Improved Equivalent Circuit Model is used to realize the precise mathematical expression of the power lithium-ion battery packs under special conditions. The State of Charge estimation method which is based on Unscented Kalman Filter has a good filtering effect on the nonlinear systems. Based on the State of Charge estimation of Support Vector Machine, the samples in the nonlinear space of lithium-ion battery are mapped to the linear space. It can be seen from the experimental analysis that a joint Unscented Kalman Filter and Support Vector Machine algorithms for State of Charge estimation has higher accuracy. The experimental results show that the tracking error is less than 1.00%.

Topics & Concepts

Kalman filterState vectorBattery (electricity)State (computer science)AlgorithmJoint (building)Computer scienceState of chargeExtended Kalman filterSupport vector machineUnscented transformControl theory (sociology)Fast Kalman filterArtificial intelligenceEngineeringPhysicsControl (management)Power (physics)Quantum mechanicsArchitectural engineeringClassical mechanicsAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsFault Detection and Control Systems