MINN: Learning the Dynamics of Differential-Algebraic Equations and Application to Battery Modeling

Yicun Huang;Changfu Zou;Yang Li;Torsten Wik
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Abstract

The concept of integrating physics-based and data-driven approaches has become popular for modeling sustainable energy systems. However, the existing literature mainly focuses on the data-driven surrogates generated to replace physics-based models. These models often trade accuracy for speed but lack the generalizability, adaptability, and interpretability inherent in physics-based models, which are often indispensable in modeling real-world dynamic systems for optimization and control purposes. We propose a novel machine learning architecture, termed model-integrated neural networks (MINN), that can learn the physics-based dynamics of general autonomous or non-autonomous systems consisting of partial differential-algebraic equations (PDAEs). The obtained architecture systematically solves an unsettled research problem in control-oriented modeling, i.e., how to obtain optimally simplified models that are physically insightful, numerically accurate, and computationally tractable simultaneously. We apply the proposed neural network architecture to model the electrochemical dynamics of lithium-ion batteries and show that MINN is extremely data-efficient to train while being sufficiently generalizable to previously unseen input data, owing to its underlying physical invariants. The MINN battery model has an accuracy comparable to the first principle-based model in predicting both the system outputs and any locally distributed electrochemical behaviors but achieves two orders of magnitude reduction in the solution time.
MINN:学习微分代数方程的动力学并将其应用于电池建模
在可持续能源系统建模中,将基于物理的方法与数据驱动的方法相结合的概念已变得十分流行。然而,现有文献主要关注为取代基于物理的模型而生成的数据驱动代用模型。这些模型通常以准确性换取速度,但缺乏基于物理的模型所固有的通用性、适应性和可解释性,而这些往往是为优化和控制目的模拟真实世界动态系统所不可或缺的。我们提出了一种新颖的机器学习架构,即模型集成神经网络(MINN),它可以学习由偏微分代数方程(PDAE)组成的一般自主或非自主系统的物理动态。所获得的架构系统地解决了面向控制的建模中一个悬而未决的研究问题,即如何同时获得具有物理洞察力、数值精确性和计算可操作性的最佳简化模型。我们将提出的神经网络架构应用于锂离子电池的电化学动力学建模,结果表明 MINN 具有极高的数据训练效率,同时由于其潜在的物理不变性,对以前未见过的输入数据具有足够的通用性。MINN 电池模型在预测系统输出和任何局部分布式电化学行为方面的准确性与基于第一原理的模型相当,但求解时间却缩短了两个数量级。
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