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Parametrisation and use of a predictive DFN model for a high­energy NCA/Gr­SiOx battery

Parametrisation and use of a predictive DFN model for a high­energy NCA/Gr­SiOx battery
Parametrisation and use of a predictive DFN model for a high­energy NCA/Gr­SiOx battery
We demonstrate the predictive power of a parametrised Doyle­Fuller­Newman (DFN) model of a commercial cylindrical (21700) lithium­ion cell with NCA/Gr­SiOx chem­ istry. Model parameters result from the deconstruction of a fresh commercial cell to deter­ mine/confirm chemistry and micro­structure, and also from electrochemical experiments with half­cells built from electrode samples. The simulations predict voltage profiles for (i) galvanostatic discharge and (ii) drive­cycles. Predicted voltage responses deviate from measured ones by <1% throughout at least ∼95% of a full galvanostatic discharge, whilst the drive cycle discharge is matched to a ∼1­3% error throughout. All simulations are performed using the online computational tool DandeLiion, which rapidly solves the DFN model using only modest computational resource. The DFN results are used to quantify the irreversible energy losses occurring in the cell and deduce their location. In addition to demonstrating the predictive power of a properly validated DFN model, this work pro­ vides a novel simplified parametrisation workflow that can be used to accurately calibrate an electrochemical model of a cell.
Drive-cycles simulation, Li-ion battery modelling, Newman-type modelling
0013-4651
Zulke, Alana
e457b4e0-a4d1-4d01-b5f2-af062d500cca
Korotkin, Ivan
1ca96363-075e-41d9-a0c1-153c8c0cc31a
Foster, Jamie
435ae65f-f9ee-4d9e-b575-a24b0734ad0d
Nagarathinam, Mangayarkarasi
8a9ba8a2-b44b-4905-8b1b-f6273c286342
Hoster, Harry
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Richardson, Giles
3fd8e08f-e615-42bb-a1ff-3346c5847b91
Zulke, Alana
e457b4e0-a4d1-4d01-b5f2-af062d500cca
Korotkin, Ivan
1ca96363-075e-41d9-a0c1-153c8c0cc31a
Foster, Jamie
435ae65f-f9ee-4d9e-b575-a24b0734ad0d
Nagarathinam, Mangayarkarasi
8a9ba8a2-b44b-4905-8b1b-f6273c286342
Hoster, Harry
5053e749-9ac5-4974-bc08-7e6d750f5ca9
Richardson, Giles
3fd8e08f-e615-42bb-a1ff-3346c5847b91

Zulke, Alana, Korotkin, Ivan, Foster, Jamie, Nagarathinam, Mangayarkarasi, Hoster, Harry and Richardson, Giles (2021) Parametrisation and use of a predictive DFN model for a high­energy NCA/Gr­SiOx battery. Journal of the Electrochemical Society, 168 (12), [120522]. (doi:10.1149/1945-7111/ac3e4a).

Record type: Article

Abstract

We demonstrate the predictive power of a parametrised Doyle­Fuller­Newman (DFN) model of a commercial cylindrical (21700) lithium­ion cell with NCA/Gr­SiOx chem­ istry. Model parameters result from the deconstruction of a fresh commercial cell to deter­ mine/confirm chemistry and micro­structure, and also from electrochemical experiments with half­cells built from electrode samples. The simulations predict voltage profiles for (i) galvanostatic discharge and (ii) drive­cycles. Predicted voltage responses deviate from measured ones by <1% throughout at least ∼95% of a full galvanostatic discharge, whilst the drive cycle discharge is matched to a ∼1­3% error throughout. All simulations are performed using the online computational tool DandeLiion, which rapidly solves the DFN model using only modest computational resource. The DFN results are used to quantify the irreversible energy losses occurring in the cell and deduce their location. In addition to demonstrating the predictive power of a properly validated DFN model, this work pro­ vides a novel simplified parametrisation workflow that can be used to accurately calibrate an electrochemical model of a cell.

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DFN_JES_Reviewed_Manuscript-3 - Accepted Manuscript
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Accepted/In Press date: 28 November 2021
Published date: 10 December 2021
Keywords: Drive-cycles simulation, Li-ion battery modelling, Newman-type modelling

Identifiers

Local EPrints ID: 452981
URI: http://eprints.soton.ac.uk/id/eprint/452981
ISSN: 0013-4651
PURE UUID: 171809d2-ff89-4363-a2ff-40837d929909
ORCID for Ivan Korotkin: ORCID iD orcid.org/0000-0002-5023-3684
ORCID for Giles Richardson: ORCID iD orcid.org/0000-0001-6225-8590

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Date deposited: 07 Jan 2022 12:09
Last modified: 17 Mar 2024 03:54

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Contributors

Author: Alana Zulke
Author: Ivan Korotkin ORCID iD
Author: Jamie Foster
Author: Mangayarkarasi Nagarathinam
Author: Harry Hoster

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