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%.
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CITATION STYLE
Xie, F., Wang, S., Xie, Y., Fernandezb, C., Li, X., & Zou, C. (2020). A novel battery state of charge estimation based on the joint unscented kalman filter and support vector machine algorithms. International Journal of Electrochemical Science, 15, 7935–7953. https://doi.org/10.20964/2020.08.83
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