4.7 Article

Blockchain-Based Data Collection With Efficient Anomaly Detection for Estimating Battery State-of-Health

Journal

IEEE SENSORS JOURNAL
Volume 21, Issue 12, Pages 13455-13465

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2021.3066785

Keywords

Sensors; 5G mobile communication; Artificial intelligence; 6G mobile communication; Electric vehicle; battery charging; state-of-health; anomaly detection; blockchain

Funding

  1. Natural Science Foundation (NSF)-Tianjin [19JCYBJC15700]

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This study proposes a battery data collection method using Isolation Forest for anomaly detection, with a score-based mechanism for screening high-quality data. Experimental results show that this method outperforms traditional methods in improving data quality and SOH estimation.
The number of electric vehicles in various countries has shown exponential growth so that the related industries to face the tremendous pressure of power batteries disposal. Efficient secondary use and recycling of power batteries require effective collection of battery data and reasonable estimation of battery state-of-health (SOH). In this paper, we propose a framework to collect battery charging data from different stakeholders with an anomaly detection method based on Isolation Forest with two features. Besides a score-based mechanism is adopted to do data screening and capture the data with good quality. Unlike prior works, our proposed method can exploit crowdsourced data to reduce the significant effort of battery data sensing and provide a data source scoring mechanism based on blockchain to improve the data quality and meet the requirement of reasonable estimation. In order to verify the effectiveness of the proposed collection method, a charge data test set is constructed based on the NASA battery data set. The simulation results indicate that the method increases the F-measure criteria up to 25.65% compared to the well-known anomaly detection algorithms. In addition, the proposed collection method outperforms the traditional method up to 10.9% in reducing the relative error when being used for SOH estimation.

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