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Erschienen in: Journal of Intelligent Manufacturing 4/2020

01.07.2019

A data-driven decision-making optimization approach for inconsistent lithium-ion cell screening

verfasst von: Chengbao Liu, Jie Tan, Xuelei Wang

Erschienen in: Journal of Intelligent Manufacturing | Ausgabe 4/2020

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Abstract

Because the data generated in the complex industrial manufacturing processes is multi-sourced and heterogeneous, it brings a challenge for addressing decision-making optimization problems embedded in the whole manufacturing processes. Especially, for inconsistent lithium-ion cell screening as such a special problem, it is a tough issue to fuse data from multiple sources in a lithium-ion cell manufacturing process to screen cells for relieving the inconsistency among cells in a battery pack with multiple cells configured in series, parallel, and series-parallel. This paper proposes a data-driven decision-making optimization approach (DDDMO) for inconsistent lithium-ion cell screening, which takes into account three dynamic characteristic curves of cells, thus ensuring that the screened cells have consistent electrochemical characteristics. The DDDMO method uses the convolutional auto-encoder to extract features from different characteristics curves of lithium-ion cells through multi-channels and then the features in different channels are combined into fusion features to build a feature base. It also proposes an effective sample generation approach for imbalanced learning using the conditional generative adversarial networks to enhance the feature base, thereby efficiently training a classifier for inconsistent lithium-ion cell screening. Finally, industrial applications verify the effectiveness of the proposed approach. The results show that the missing rate of inconsistent lithium-ion cells drops by an average of 93.74% compared to the screening performance in the single dynamic characteristic of cells, and the DDDMO approach has greater accuracy for screening cells at lower time costs than the existing methods.

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Metadaten
Titel
A data-driven decision-making optimization approach for inconsistent lithium-ion cell screening
verfasst von
Chengbao Liu
Jie Tan
Xuelei Wang
Publikationsdatum
01.07.2019
Verlag
Springer US
Erschienen in
Journal of Intelligent Manufacturing / Ausgabe 4/2020
Print ISSN: 0956-5515
Elektronische ISSN: 1572-8145
DOI
https://doi.org/10.1007/s10845-019-01480-1

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