Batteries plays an essential role in modern energy ecosystem and are widely used in daily applications such as cell phones and electric vehicles. For many applications, the health status of batteries plays a critical role in the performance of the system by indicating efficient maintenance and on-time replacement. Directly modeling an individual battery using a computational models based on physical rules can be of low-efficiency, in terms of the difficulties in build such a model and the computational effort of tuning and running it especially on the edge. With the rapid development of sensor technology (to provide more insights into the system) and machine learning (to build capable yet fast model), it is now possible to directly build a data-riven model of the battery health status using the data collected from historical battery data (being possibly local and remote) to predict local battery health status in the future accurately. Nevertheless, most data-driven methods are trained based on the local battery data and lack the ability to extract common properties, such as generations and degradation, in the life span of other remote batteries. In this paper, we utilize a Gaussian process dynamical model (GPDM) to build a data-driven model of battery health status and propose a knowledge transfer method to extract common properties in the life span of all batteries to accurately predict the battery health status with and without features extracted from the local battery. For modern benchmark problems, the proposed method outperform the state-of-the-art methods with significant margins in terms of accuracy and is able to accuracy predict the regeneration process.
翻译:在现代能源生态系统中,电池在现代能源生态系统中发挥着不可或缺的作用,并被广泛用于日常应用,如手机和电动车辆等。许多应用中,电池的健康状况通过表明高效率的维护和实时替换,在系统运行中发挥着关键的作用。使用基于物理规则的计算模型直接模拟个体电池,其效率较低,因为很难建立这种模型,也难以进行计算和调节,特别是在边缘地区。随着传感器技术的迅速发展(更深入地了解系统)和机器学习(建立有能力的快速模型)和机器学习(建立有能力的快速模型),现在有可能利用从历史电池数据(可能为本地和远程)收集的数据,直接建立电池健康状况数据转换的准确性模型,准确预测今后的当地电池健康状况。然而,大多数数据驱动方法都是根据当地电池数据数据数据进行训练的,缺乏在其他远程电池生命周期中获取共同特性,例如世代和退化的能力。在本文件中,我们利用高斯进程动态模型(GPDMDM)来建立电池健康状况数据转换的准确性模型,在不精确的电池健康状况模型方面,提出一个以通用的方法转移。