论文标题

带有高级算法的电池云

Battery Cloud with Advanced Algorithms

论文作者

Li, Xiaojun, Jauernig, David, Gao, Mengzhu, Jones, Trevor

论文摘要

电池云或云电池管理系统利用云计算功率和数据存储来提高电池安全性,性能和经济性。这项工作将呈现电池云,该电池云从电动汽车和储能系统中收集测量的电池数据。采用高级算法来提高电池性能。使用远程车辆数据,我们训练并验证人工神经网络,以估计车辆充电期间的Pack Soc。然后对该策略进行测试。此外,根据差分电压(DVA)和增量容量分析(ICA)开发了电动汽车健康估计方法的高精度和机上电池状态估计方法。使用来自各种温度电池电池的循环数据,我们提取充电周期并计算DVA和ICA曲线,从中提取,分析多个特征,并最终用于估计健康状况。为了安全性,开发了数据驱动的热异常检测方法。该方法可以检测到早期阶段的不可预见的异常,例如热逃亡者。随着物联网的进一步发展,将越来越多的电池数据提供。电池云的潜在应用还包括电池制造,回收和电动汽车电池互换等区域。

A Battery Cloud or cloud battery management system leverages the cloud computational power and data storage to improve battery safety, performance, and economy. This work will present the Battery Cloud that collects measured battery data from electric vehicles and energy storage systems. Advanced algorithms are applied to improve battery performance. Using remote vehicle data, we train and validate an artificial neural network to estimate pack SOC during vehicle charging. The strategy is then tested on vehicles. Furthermore, high accuracy and onboard battery state of health estimation methods for electric vehicles are developed based on the differential voltage (DVA) and incremental capacity analysis (ICA). Using cycling data from battery cells at various temperatures, we extract the charging cycles and calculate the DVA and ICA curves, from which multiple features are extracted, analyzed, and eventually used to estimate the state of health. For battery safety, a data-driven thermal anomaly detection method is developed. The method can detect unforeseen anomalies such as thermal runaways at the very early stage. With the further development of the internet of things, more and more battery data will be available. Potential applications of battery cloud also include areas such as battery manufacture, recycling, and electric vehicle battery swap.

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