Advancing lithium-ion batteries (LIBs) in both design and usage is key to promoting electrification in the coming decades to mitigate human-caused climate change. Inadequate understanding of LIB degradation is an important bottleneck that limits battery durability and safety. Here, we propose hybrid physics-based and data-driven modeling for online diagnosis and prognosis of battery degradation. Compared to existing battery modeling efforts, we aim to build a model with physics as its backbone and statistical learning techniques as enhancements. Such a hybrid model has better generalizability and interpretability together with a well-calibrated uncertainty associated with its prediction, rendering it more valuable and relevant to safety-critical applications under realistic usage scenarios.
翻译:推进锂离子电池(LIBs)在设计和使用方面都是在未来几十年中促进电气化以减缓人类造成的气候变化的关键,对LIB降解认识不足是限制电池耐久性和安全的一个重要瓶颈。这里我们建议采用基于物理和数据驱动的混合模型进行在线诊断和预测电池退化。与现有的电池模型相比,我们的目标是建立一个以物理为主的模型,并将统计学习技术作为增强剂。这种混合模型具有更好的通用性和可解释性,同时其预测也具有经充分校准的不确定性,因此在现实的使用情景下,它更具有价值,更切合安全关键应用。