As a significant ingredient regarding health status, data-driven state-of-health (SOH) estimation has become dominant for lithium-ion batteries (LiBs). To handle data discrepancy across batteries, current SOH estimation models engage in transfer learning (TL), which reserves apriori knowledge gained through reusing partial structures of the offline trained model. However, multiple degradation patterns of a complete life cycle of a battery make it challenging to pursue TL. The concept of the stage is introduced to describe the collection of continuous cycles that present a similar degradation pattern. A transferable multi-stage SOH estimation model is proposed to perform TL across batteries in the same stage, consisting of four steps. First, with identified stage information, raw cycling data from the source battery are reconstructed into the phase space with high dimensions, exploring hidden dynamics with limited sensors. Next, domain invariant representation across cycles in each stage is proposed through cycling discrepancy subspace with reconstructed data. Third, considering the unbalanced discharge cycles among different stages, a switching estimation strategy composed of a lightweight model with the long short-term memory network and a powerful model with the proposed temporal capsule network is proposed to boost estimation accuracy. Lastly, an updating scheme compensates for estimation errors when the cycling consistency of target batteries drifts. The proposed method outperforms its competitive algorithms in various transfer tasks for a run-to-failure benchmark with three batteries.
翻译:作为健康状况的一个重要要素,数据驱动的健康状况(SOH)估算在锂离子电池(LiBs)中占据主导地位。为了处理不同电池的数据差异,目前的SOH估算模型采用转移学习(TL),这保留了通过重新使用离线培训模型的部分结构而获得的优先知识,然而,电池整个生命周期的多重退化模式使其难以追求TL。引入该阶段的概念是为了描述具有类似降解模式的连续循环的收集情况。提出了可转移的多阶段SOH估算模型,以在同一阶段对不同电池实施TL,包括四个步骤。首先,根据已查明的阶段信息,源电池的原始循环数据被重建到高度的阶段空间,探索有限的传感器的隐藏动态。下一步,通过循环差异分层与重建数据相交错的子空间来提议一个域。第三,考虑到不同阶段的不平衡排放周期,一个转换估算战略,由轻量模型组成,长期记忆网络,以及一个强有力的模型,在拟议的时间仓储基准值基础上,将来源电池的原始循环数据重建重建到阶段,然后提出一个升级的计算方法,以加速计算各种流动方法,以预测。最后,以推进周期流压方法,以预测各种流动计算。