To meet the fairly high safety and reliability requirements in practice, the state of health (SOH) estimation of Lithium-ion batteries (LIBs), which has a close relationship with the degradation performance, has been extensively studied with the widespread applications of various electronics. The conventional SOH estimation approaches with digital twin are end-of-cycle estimation that require the completion of a full charge/discharge cycle to observe the maximum available capacity. However, under dynamic operating conditions with partially discharged data, it is impossible to sense accurate real-time SOH estimation for LIBs. To bridge this research gap, we put forward a digital twin framework to gain the capability of sensing the battery's SOH on the fly, updating the physical battery model. The proposed digital twin solution consists of three core components to enable real-time SOH estimation without requiring a complete discharge. First, to handle the variable training cycling data, the energy discrepancy-aware cycling synchronization is proposed to align cycling data with guaranteeing the same data structure. Second, to explore the temporal importance of different training sampling times, a time-attention SOH estimation model is developed with data encoding to capture the degradation behavior over cycles, excluding adverse influences of unimportant samples. Finally, for online implementation, a similarity analysis-based data reconstruction has been put forward to provide real-time SOH estimation without requiring a full discharge cycle. Through a series of results conducted on a widely used benchmark, the proposed method yields the real-time SOH estimation with errors less than 1% for most sampling times in ongoing cycles.
翻译:为了满足实际中相当高的安全和可靠性要求,对与降解性能密切相关的锂离电池(LIBs)的健康状况(SOH)的估算,已经与各电子设备的广泛应用进行了广泛研究。传统的SOH估算方法与数字双胞胎的常规估算方法是周期末估算,需要完成一个完整的充电/放电周期,以遵守现有最大容量;然而,在部分排放的数据的动态操作条件下,无法感觉到对LIBs进行准确的SOH实时估算。为了缩小这一研究差距,我们提出了一个数字双对等框架,以广泛探测电池的SOH,更新物理电池模型。拟议的数字双对齐解决方案包括三个核心组成部分,以便能够实时进行SOHO估算,而无需完全排放。首先,为了处理可变的培训循环循环计算数据,建议能源差异-觉知循环同步将数据与保障同一数据结构统一起来。第二,为了探索不同培训取样的时间重要性,我们提出了一个不留时间的SOHA估计模型, 与最短时间的SOHA的连续数据更新周期,在S-imalimalimal assimal imal beal ass beal ass beal ass beal dal beal beal betrading slading a lave lave lading a lading a lading a lading a laut a laut a laut a laut a subild d d d dre lad dre lad a laut a ro ro ro laut a lad dre lady a lady a ro ro lad lad d ro ro ro lautd lad ro ro ro ro ro lady laut a ro ro ro lad ro ro ro ro ro ro ro ro ro ro ro ladal lad ladal lad ladal lad lad lad lad ro ro ro ro ro ro ro ro ro ro ro lad lad ro ro ro ro ro ro ro ro ro ro