论文标题
推断基于深层操作员网络的锂离子电池的电化学性能和参数
Inferring electrochemical performance and parameters of Li-ion batteries based on deep operator networks
论文作者
论文摘要
锂离子电池是一个复杂的物理化学系统,通常以输入和端子电压为输出。从电流到电压的映射可以通过几种模型来描述,例如准确但效率低下的物理模型,有效但有时不准确的等效电路和黑盒模型。为了同时实现电池建模的准确性和效率,我们建议为电池系统构建一个数据驱动的替代物,同时将基础物理纳入约束。在这项工作中,我们创新地将从当前曲线到终端电压的功能映射视为运算符的组合,该组合由功能强大的深层操作员网络(DeeltoNET)近似。首先通过对两个电极处的锂离子浓度进行预测测试来验证其学习能力。在该实验中,发现物理知识的deponet比纯粹的数据驱动的deponet更健壮,尤其是在时间外推场景中。然后构建一个复合替代物,用于映射电流曲线,并使用三个操作员网络对末端电压进行固体扩散率,在该电压中,首先使用两个平行物理信息的deponets来预测两个电极处的锂离子浓度,然后基于其表面值,一个deponet构建以给出终端电压预测。由于替代物在任何地方都是可区分的,因此它具有直接从数据中学习的能力,通过使用终端电压测量值来估算输入参数,该数据得到了验证。拟议的替代构建基于操作员网络具有很大的潜力,可以在电池管理系统(例如电池管理系统)中应用于电池管理系统,因为它通过结合基础物理学来整合效率和准确性,并且还通过完全不同的模型结构留下了用于改进模型的接口。
The Li-ion battery is a complex physicochemical system that generally takes applied current as input and terminal voltage as output. The mappings from current to voltage can be described by several kinds of models, such as accurate but inefficient physics-based models, and efficient but sometimes inaccurate equivalent circuit and black-box models. To realize accuracy and efficiency simultaneously in battery modeling, we propose to build a data-driven surrogate for a battery system while incorporating the underlying physics as constraints. In this work, we innovatively treat the functional mapping from current curve to terminal voltage as a composite of operators, which is approximated by the powerful deep operator network (DeepONet). Its learning capability is firstly verified through a predictive test for Li-ion concentration at two electrodes. In this experiment, the physics-informed DeepONet is found to be more robust than the purely data-driven DeepONet, especially in temporal extrapolation scenarios. A composite surrogate is then constructed for mapping current curve and solid diffusivity to terminal voltage with three operator networks, in which two parallel physics-informed DeepONets are firstly used to predict Li-ion concentration at two electrodes, and then based on their surface values, a DeepONet is built to give terminal voltage predictions. Since the surrogate is differentiable anywhere, it is endowed with the ability to learn from data directly, which was validated by using terminal voltage measurements to estimate input parameters. The proposed surrogate built upon operator networks possesses great potential to be applied in on-board scenarios, such as battery management system, since it integrates efficiency and accuracy by incorporating underlying physics, and also leaves an interface for model refinement through a totally differentiable model structure.