SOC and SOH monitoring algorithms for lithium batteries using multilayer neural networks

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Abstract

This paper presents a battery monitoring system using a multilayer neural network (MNN) for state of charge (SOC) estimation and state of health (SOH) diagnosis. In this system, the MNN utilizes experimental discharge voltage data from lithium battery operation to estimate SOH and uses present and previous voltages for SOC estimation. From experimental results, we know that the proposed battery monitoring system performs SOC estimation and SOH diagnosis well.

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APA

Lee, J. H., Kim, H. S., & Lee, I. S. (2020). SOC and SOH monitoring algorithms for lithium batteries using multilayer neural networks. In EPiC Series in Computing (Vol. 69, pp. 206–213). EasyChair. https://doi.org/10.29007/m89x

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