Lithium-sulfur cell equivalent circuit network model parameterization and sensitivity analysis

Date

2017-04-18

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Publisher

Institute of Electrical and Electronics Engineers

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Article

ISSN

0018-9545

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Citation

Fotouhi A, Auger DJ, Propp K, et al., (2017) Lithium-Sulfur cell equivalent circuit network model parameterization and sensitivity analysis. IEEE Transactions on Vehicular Technology, Volume 66, Issue 9, September 2017, pp. 7711-7721

Abstract

Compared to lithium-ion batteries, lithium-sulfur (Li-S) batteries potentially offer greater specific energy density, a wider temperature range of operation, and safety benefits, making them a promising technology for energy storage systems especially in automotive and aerospace applications. Unlike lithium-ion batteries, there is not a mature discipline of equivalent circuit network (ECN) modelling for Li-S. In this study, ECN modelling is addressed using formal ‘system identification’ techniques. A Li-S cell’s performance is studied in the presence of different charge/discharge rates and temperature levels using precise experimental test equipment. Various ECN model structures are explored, considering the trade-offs between accuracy and speed. It was concluded that a ‘2RC’ model is generally a good compromise, giving good accuracy and speed. Model parameterization is repeated at various state-of-charge (SOC) and temperature levels, and the effects of these variables on Li-S cell’s ohmic resistance and total capacity are demonstrated. The results demonstrate that Li-S cell’s ohmic resistance has a highly nonlinear relationship with SOC with a break-point around 75% SOC that distinguishes it from other types of battery. Finally, an ECN model is proposed which uses SOC and temperature as inputs. A sensitivity analysis is performed to investigate the effect of SOC estimation error on the model’s accuracy. In this analysis, the battery model’s accuracy is evaluated at various SOC and temperature levels. The results demonstrate that the Li-S cell model has the most sensitivity to SOC estimation error around the break-point (around 75% SOC) whereas in the middle SOC range, from 20% to 70%, it has the least sensitivity.

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Github

Keywords

lithium-sulfur cell, battery modelling, identification, state-of-charge estimation, sensitivity analysis

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Attribution 3.0 International

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