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  5. Hybrid Modeling of Lithium-Ion Battery: Physics-Informed Neural Network for Battery State Estimation
 
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2023
Zweitveröffentlichung
Artikel
Verlagsversion

Hybrid Modeling of Lithium-Ion Battery: Physics-Informed Neural Network for Battery State Estimation

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Hauptpublikation
batteries-09-00301-v2.pdf
CC BY 4.0 International
Format: Adobe PDF
Size: 5.35 MB
TUDa URI
tuda/10653
URN
urn:nbn:de:tuda-tuprints-240897
DOI
10.26083/tuprints-00024089
Autor:innen
Singh, Soumya ORCID 0000-0002-4798-9042
Ebongue, Yvonne Eboumbou
Rezaei, Shahed
Birke, Kai Peter ORCID 0000-0002-9679-2369
Kurzbeschreibung (Abstract)

Accurate forecasting of the lifetime and degradation mechanisms of lithium-ion batteries is crucial for their optimization, management, and safety while preventing latent failures. However, the typical state estimations are challenging due to complex and dynamic cell parameters and wide variations in usage conditions. Physics-based models need a tradeoff between accuracy and complexity due to vast parameter requirements, while machine-learning models require large training datasets and may fail when generalized to unseen scenarios. To address this issue, this paper aims to integrate the physics-based battery model and the machine learning model to leverage their respective strengths. This is achieved by applying the deep learning framework called physics-informed neural networks (PINN) to electrochemical battery modeling. The state of charge and state of health of lithium-ion cells are predicted by integrating the partial differential equation of Fick’s law of diffusion from a single particle model into the neural network training process. The results indicate that PINN can estimate the state of charge with a root mean square error in the range of 0.014% to 0.2%, while the state of health has a range of 1.1% to 2.3%, even with limited training data. Compared to conventional approaches, PINN is less complex while still incorporating the laws of physics into the training process, resulting in adequate predictions, even for unseen situations.

Freie Schlagworte

Li-ion battery

battery modeling

state estimation

state of health (SOH)...

state of charge (SOC)...

hybrid modeling

physics-informed neur...

single-particle model...

Sprache
Englisch
Fachbereich/-gebiet
11 Fachbereich Material- und Geowissenschaften > Materialwissenschaft > Fachgebiet Mechanik Funktionaler Materialien
DDC
600 Technik, Medizin, angewandte Wissenschaften > 620 Ingenieurwissenschaften und Maschinenbau
600 Technik, Medizin, angewandte Wissenschaften > 660 Technische Chemie
Institution
Universitäts- und Landesbibliothek Darmstadt
Ort
Darmstadt
Titel der Zeitschrift / Schriftenreihe
Batteries
Jahrgang der Zeitschrift
9
Heftnummer der Zeitschrift
6
ISSN
2313-0105
Verlag
MDPI
Publikationsjahr der Erstveröffentlichung
2023
Verlags-DOI
10.3390/batteries9060301
PPN
511990626
Zusätzliche Infomationen
This article belongs to the Special Issue The Precise Battery—towards Digital Twins for Advanced Batteries

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