Internal short circuit detection in Li-ion batteries using supervised machine learning.
Clicks: 468
ID: 88362
2020
With the proliferation of Li-ion batteries in smart phones, safety is the main concern and an on-line detection of battery faults is much wanting. Internal short circuit is a very critical issue that is often ascribed to be a cause of many accidents involving Li-ion batteries. A novel method that can detect the Internal short circuit in real time based on an advanced machine leaning approach, is proposed. Based on an equivalent electric circuit model, a set of features encompassing the physics of Li-ion cell with short circuit fault are identified and extracted from each charge-discharge cycle. The training feature set is generated with and without an external short-circuit resistance across the battery terminals. To emulate a real user scenario, internal short is induced by mechanical abuse. The testing feature set is generated from the battery charge-discharge data before and after the abuse. A random forest classifier is trained with the training feature set. The fault detection accuracy for the testing dataset is found to be more than 97%. The proposed algorithm does not interfere with the normal usage of the device, and the trained model can be implemented in any device for online fault detection.
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naha2020internalscientific
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Authors | Naha, Arunava;Khandelwal, Ashish;Agarwal, Samarth;Tagade, Piyush;Hariharan, Krishnan S;Kaushik, Anshul;Yadu, Ankit;Kolake, Subramanya Mayya;Han, Seongho;Oh, Bookeun; |
Journal | Scientific reports |
Year | 2020 |
DOI | 10.1038/s41598-020-58021-7 |
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