Chen Qingyang, He Yinghui, Fang Nengjie, Yu Guanding
College of Information Science and Electronic Engineering, Zhejiang University, Hangzhou 310027, China.
Hangzhou Zhonhen Electric Co., Ltd., Hangzhou 310053, China.
Sensors (Basel). 2024 Jul 31;24(15):4964. doi: 10.3390/s24154964.
With the increasingly widespread application of large-scale energy storage battery systems, the demand for battery safety is rising. Research on how to detect battery anomalies early and reduce the occurrence of thermal runaway (TR) accidents has become particularly important. Existing research on battery TR warning algorithms can be mainly divided into two categories: model-driven and data-driven methods. However, the common model-driven methods are often of high complexity, with poor versatility and low early warning capability; and the common data-driven methods are mostly based on neural networks, requiring substantial training costs, with better early warning capabilities but higher false alarm probabilities. To address the limitations of existing works, this paper proposes a combined data-driven and model-based algorithm for accurate battery TR warnings. Specifically, the K-Means algorithm serves as the data-driven module, capturing outliers in battery data, and the Bernardi equation serves as the model-driven module used to evaluate battery temperature. Ultimately, the outputs of the weighted model-driven module and data-driven module are combined to comprehensively assess whether the battery is abnormal. The proposed algorithm combines the advantages of model-driven and data-driven approaches, achieving a 25 min advance warning for thermal runaway, with a significantly reduced probability of false alarms.
随着大规模储能电池系统的应用日益广泛,对电池安全性的要求也在不断提高。如何早期检测电池异常并减少热失控(TR)事故的发生成为研究重点。现有电池TR预警算法主要分为模型驱动和数据驱动两类。然而,常见的模型驱动方法通常复杂度高、通用性差、预警能力低;常见的数据驱动方法大多基于神经网络,训练成本高,预警能力较好,但误报概率较高。为解决现有研究的局限性,本文提出一种基于数据驱动和模型的组合算法,用于准确的电池TR预警。具体而言,K-Means算法作为数据驱动模块,捕捉电池数据中的异常值,Bernardi方程作为模型驱动模块用于评估电池温度。最终,将加权后的模型驱动模块和数据驱动模块的输出相结合,综合评估电池是否异常。该算法结合了模型驱动和数据驱动方法的优点,实现了对热失控25分钟的提前预警,显著降低了误报概率。