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Abstract
The lithium-ion (Li-ion) battery plays a crucial role in the performance of electric vehicles, owing to its unique properties and compact size. To ensure the prolonged lifespan of these batteries, it is imperative for users to exercise additional precautions. The variable load torque applied to the Permanent Magnet Synchronous Motor (PMSM) drive, influenced by diverse road conditions, adds complexity to the scenario. Assessing the State of Charge (SoC) of the Li-ion battery proves to be a significant challenge, given the multitude of electrical sensors and mechanical components involved in the operation of electric vehicles (EVs). In such instances, the SoC may be subject to noisy measurements, leading to performance degradation of the battery over time. This paper proposes the utilization of the Kalman filter to estimate the actual SoC from the noisy measurements, relying on indirect measurements as a basis for improved accuracy.
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