Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty Consideration
Accurate estimation of model parameters and state of charge (SoC) is crucial for the lithium-ion battery management system (BMS). In this paper, the stability of the model parameters and SoC estimation under measurement uncertainty is evaluated by three different factors: (i) sampling periods of 1/0...
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doaj-875b1e4b15ad4d379e741e64739e6a892020-11-24T21:01:29ZengMDPI AGEnergies1996-10732015-07-01887729775110.3390/en8087729en8087729Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty ConsiderationShifei Yuan0Hongjie Wu1Xuerui Ma2Chengliang Yin3National Engineering Laboratory for Automotive Electronic Control Technology, Shanghai Jiao Tong University, Shanghai 200240, ChinaNational Engineering Laboratory for Automotive Electronic Control Technology, Shanghai Jiao Tong University, Shanghai 200240, ChinaNational Engineering Laboratory for Automotive Electronic Control Technology, Shanghai Jiao Tong University, Shanghai 200240, ChinaNational Engineering Laboratory for Automotive Electronic Control Technology, Shanghai Jiao Tong University, Shanghai 200240, ChinaAccurate estimation of model parameters and state of charge (SoC) is crucial for the lithium-ion battery management system (BMS). In this paper, the stability of the model parameters and SoC estimation under measurement uncertainty is evaluated by three different factors: (i) sampling periods of 1/0.5/0.1 s; (ii) current sensor precisions of ±5/±50/±500 mA; and (iii) voltage sensor precisions of ±1/±2.5/±5 mV. Firstly, the numerical model stability analysis and parametric sensitivity analysis for battery model parameters are conducted under sampling frequency of 1–50 Hz. The perturbation analysis is theoretically performed of current/voltage measurement uncertainty on model parameter variation. Secondly, the impact of three different factors on the model parameters and SoC estimation was evaluated with the federal urban driving sequence (FUDS) profile. The bias correction recursive least square (CRLS) and adaptive extended Kalman filter (AEKF) algorithm were adopted to estimate the model parameters and SoC jointly. Finally, the simulation results were compared and some insightful findings were concluded. For the given battery model and parameter estimation algorithm, the sampling period, and current/voltage sampling accuracy presented a non-negligible effect on the estimation results of model parameters. This research revealed the influence of the measurement uncertainty on the model parameter estimation, which will provide the guidelines to select a reasonable sampling period and the current/voltage sensor sampling precisions in engineering applications.http://www.mdpi.com/1996-1073/8/8/7729model stability analysisparametric sensitivity analysismeasurement uncertaintyparameters variationinfluencing factors weight |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shifei Yuan Hongjie Wu Xuerui Ma Chengliang Yin |
spellingShingle |
Shifei Yuan Hongjie Wu Xuerui Ma Chengliang Yin Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty Consideration Energies model stability analysis parametric sensitivity analysis measurement uncertainty parameters variation influencing factors weight |
author_facet |
Shifei Yuan Hongjie Wu Xuerui Ma Chengliang Yin |
author_sort |
Shifei Yuan |
title |
Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty Consideration |
title_short |
Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty Consideration |
title_full |
Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty Consideration |
title_fullStr |
Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty Consideration |
title_full_unstemmed |
Stability Analysis for Li-Ion Battery Model Parameters and State of Charge Estimation by Measurement Uncertainty Consideration |
title_sort |
stability analysis for li-ion battery model parameters and state of charge estimation by measurement uncertainty consideration |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2015-07-01 |
description |
Accurate estimation of model parameters and state of charge (SoC) is crucial for the lithium-ion battery management system (BMS). In this paper, the stability of the model parameters and SoC estimation under measurement uncertainty is evaluated by three different factors: (i) sampling periods of 1/0.5/0.1 s; (ii) current sensor precisions of ±5/±50/±500 mA; and (iii) voltage sensor precisions of ±1/±2.5/±5 mV. Firstly, the numerical model stability analysis and parametric sensitivity analysis for battery model parameters are conducted under sampling frequency of 1–50 Hz. The perturbation analysis is theoretically performed of current/voltage measurement uncertainty on model parameter variation. Secondly, the impact of three different factors on the model parameters and SoC estimation was evaluated with the federal urban driving sequence (FUDS) profile. The bias correction recursive least square (CRLS) and adaptive extended Kalman filter (AEKF) algorithm were adopted to estimate the model parameters and SoC jointly. Finally, the simulation results were compared and some insightful findings were concluded. For the given battery model and parameter estimation algorithm, the sampling period, and current/voltage sampling accuracy presented a non-negligible effect on the estimation results of model parameters. This research revealed the influence of the measurement uncertainty on the model parameter estimation, which will provide the guidelines to select a reasonable sampling period and the current/voltage sensor sampling precisions in engineering applications. |
topic |
model stability analysis parametric sensitivity analysis measurement uncertainty parameters variation influencing factors weight |
url |
http://www.mdpi.com/1996-1073/8/8/7729 |
work_keys_str_mv |
AT shifeiyuan stabilityanalysisforliionbatterymodelparametersandstateofchargeestimationbymeasurementuncertaintyconsideration AT hongjiewu stabilityanalysisforliionbatterymodelparametersandstateofchargeestimationbymeasurementuncertaintyconsideration AT xueruima stabilityanalysisforliionbatterymodelparametersandstateofchargeestimationbymeasurementuncertaintyconsideration AT chengliangyin stabilityanalysisforliionbatterymodelparametersandstateofchargeestimationbymeasurementuncertaintyconsideration |
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1716777878032482304 |