4.8 Article

Active model-based balancing strategy for self-reconfigurable batteries

Journal

JOURNAL OF POWER SOURCES
Volume 322, Issue -, Pages 129-137

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.jpowsour.2016.05.027

Keywords

Self-reconfigurable battery; Network optimization; Active cell balancing; Energy equalization; Lithium-ion battery; Electric vehicles

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This paper describes a novel balancing strategy for self-reconfigurable batteries where the discharge and charge rates of each cell can be controlled. While much effort has been focused on improving the hardware architecture of self-reconfigurable batteries, energy equalization algorithms have not been systematically optimized in terms of maximizing the efficiency of the balancing system. Our approach includes aspects of such optimization theory. We develop a balancing strategy for optimal control of the discharge rate of battery cells. We first formulate the cell balancing as a nonlinear optimal control problem, which is modeled afterward as a network program. Using dynamic programming techniques and MATLAB's vectorization feature, we solve the optimal control problem by generating the optimal battery operation policy for a given drive cycle. The simulation results show that the proposed strategy efficiently balances the cells over the life of the battery, an obvious advantage that is absent in the other conventional approaches. Our algorithm is shown to be robust when tested against different influencing parameters varying over wide spectrum on different drive cycles. Furthermore, due to the little computation time and the proved low sensitivity to the inaccurate power predictions, our strategy can be integrated in a real-time system. (C) 2016 Elsevier B.V. All rights reserved.

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