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Bayesian Parameter Estimation Applied to the Li-ion Battery Single Particle Model with Electrolyte Dynamics a

机译:贝叶斯参数估计应用于带电解液动力学的锂离子电池单粒子模型 a

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This paper presents a Bayesian parameter estimation approach and identifiability analysis for a lithium-ion battery model, to determine the uniqueness, evaluate the sensitivity and quantify the uncertainty of a subset of the model parameters. The analysis was based on the single particle model with electrolyte dynamics, rigorously derived from the Doyle-Fuller-Newman model using asymptotic analysis including electrode-average terms. The Bayesian approach allows complex target distributions to be estimated, which enables a global analysis of the parameter space. The analysis focuses on the identification problem (i) locally, under a set of discrete quasi-steady states of charge, and in comparison (ii) globally with a continuous excursion of state of charge. The performance of the methodology was evaluated using synthetic data from multiple numerical simulations under diverse types of current excitation. We show that various diffusivities as well as the transference number may be estimated with small variances in the global case, but with much larger uncertainty in the local estimation case. This also has significant implications for estimation where parameters might vary as a function of state of charge or other latent variables.
机译:本文介绍了锂离子电池模型的贝叶斯参数估计方法和可识别性分析,以确定唯一性,评估灵敏度并量化模型参数子集的不确定性。该分析基于具有电解质动力学的单粒子模型,使用包括电极平均术语的渐近分析严格地衍生自Doyle-Fuler-Newman模型。贝叶斯方法允许估计复杂的目标分布,这使得能够全局分析参数空间。该分析在本地侧重于识别问题(i),根据一组离散的准稳定态,并且在全球范围内具有持续的充电状态。使用来自不同类型的电流激励的多种数值模拟的合成数据评估方法的性能。我们表明,可以在全局案例中具有小的差异来估计各种扩散率以及转移号,但在局部估计情况下具有更大的不确定性。这也对估计有重大影响,其中参数可能因充电状态或其他潜在变量而变化。

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