Machine Learning-Based Lithium-Ion Battery Capacity Estimation Exploiting Multi-Channel Charging Profiles | IEEE Journals & Magazine | IEEE Xplore

Machine Learning-Based Lithium-Ion Battery Capacity Estimation Exploiting Multi-Channel Charging Profiles


Voltage, current and temperature charging profiles for fresh cell and aged cell: Battery #5 from NASA battery set.

Abstract:

Prognostics and health management is a promising methodology to cope with the risks of failure in advance and has been implemented in many well-known applications includi...Show More
Topic: Advanced Energy Storage Technologies and Their Applications

Abstract:

Prognostics and health management is a promising methodology to cope with the risks of failure in advance and has been implemented in many well-known applications including battery systems. Since the estimation of battery capacity is critical for safe operation and decision making, battery capacity should be estimated precisely. In this regard, we leverage measurable data such as voltage, current, and temperature profiles from the battery management system whose patterns vary in cycles as aging. Based on these data, the relationship between capacity and charging profiles is learned by neural networks. Specifically, to estimate the state of health accurately we apply feedforward neural network, convolutional neural network, and long short-term memory. Our results show that the proposed multi-channel technique based on voltage, current, and temperature profiles outperforms the conventional method that uses only voltage profile by up to 25%-58% in terms of mean absolute percentage error.
Topic: Advanced Energy Storage Technologies and Their Applications
Voltage, current and temperature charging profiles for fresh cell and aged cell: Battery #5 from NASA battery set.
Published in: IEEE Access ( Volume: 7)
Page(s): 75143 - 75152
Date of Publication: 05 June 2019
Electronic ISSN: 2169-3536

Funding Agency:


References

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