Ensemble Learning, Prediction and Li-Ion Cell Charging Cycle Divergence
Autor: | Loraine Torres-Castro, James Obert, Rodrigo D. Trevizan, Yuliya Preger |
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Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Battery (electricity)
TK1001-1841 business.product_category Thermal runaway Distribution or transmission of electric power Computer science lithium-ion battery degradation TK3001-3521 medicine.disease Battery management systems Ensemble learning Automotive engineering Power (physics) lithium-ion cell charging Production of electric energy or power. Powerplants. Central stations Laptop medicine Grid energy storage business Divergence (statistics) Cell damage |
Zdroj: | IEEE Open Access Journal of Power and Energy, Vol 8, Pp 303-315 (2021) |
ISSN: | 2687-7910 |
Popis: | In recent years, the pervasive use of lithium ion (Li-ion) batteries in applications such as cell phones, laptop computers, electric vehicles, and grid energy storage systems has prompted the development of specialized battery management systems (BMS). The primary goal of a BMS is to maintain a reliable and safe battery power source while maximizing the calendar life and performance of the cells. To maintain safe operation, a BMS should be programmed to minimize degradation and prevent damage to a Li-ion cell, which can lead to thermal runaway. Cell damage can occur over time if a BMS is not properly configured to avoid overcharging and discharging. To prevent cell damage, efficient and accurate cell charging cycle characteristics algorithms must be employed. In this paper, computationally efficient and accurate ensemble learning algorithms capable of detecting Li-ion cell charging irregularities are described. Additionally, it is shown using machine and deep learning that it is possible to accurately and efficiently detect when a cell has experienced thermal and electrical stress due to cell overcharging by measuring charging cycle divergence. |
Databáze: | OpenAIRE |
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