Real-time estimation of battery internal states and physical parameters is of the utmost importance for intelligent battery management systems (BMS). Electrochemical models, derived from the principles of electrochemistry, are arguably more accurate in capturing the physical mechanism of the battery cells than their counterpart data-driven or equivalent circuit models (ECM). Moreover, the electrochemical phenomena inside the battery cells are coupled with the thermal dynamics of the cells. Therefore, consideration of the coupling between electrochemical and thermal dynamics inside the battery cell can be potentially advantageous for improving the accuracy of the estimation. In this paper, a nonlinear adaptive observer scheme is developed based on a coupled electrochemical–thermal model of a Li-ion battery cell. The proposed adaptive observer scheme estimates the distributed Li-ion concentration and temperature states inside the electrode, and some of the electrochemical model parameters, simultaneously. These states and parameters determine the state of charge (SOC) and state of health (SOH) of the battery cell. The adaptive scheme is split into two separate but coupled observers, which simplifies the design and gain tuning procedures. The design relies on a Lyapunov's stability analysis of the observers, which guarantees the convergence of the combined state-parameter estimates. To validate the effectiveness of the scheme, both simulation and experimental studies are performed. The results show that the adaptive scheme is able to estimate the desired variables with reasonable accuracy. Finally, some scenarios are described where the performance of the scheme degrades.
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November 2015
Research-Article
Nonlinear Adaptive Observer for a Lithium-Ion Battery Cell Based on Coupled Electrochemical–Thermal Model
S. Dey,
S. Dey
Department of Automotive Engineering,
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: satadrd@clemson.edu
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: satadrd@clemson.edu
Search for other works by this author on:
B. Ayalew,
B. Ayalew
Department of Automotive Engineering,
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: beshah@clemson.edu
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: beshah@clemson.edu
Search for other works by this author on:
P. Pisu
P. Pisu
Department of Automotive Engineering,
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: pisup@clemson.edu
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: pisup@clemson.edu
Search for other works by this author on:
S. Dey
Department of Automotive Engineering,
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: satadrd@clemson.edu
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: satadrd@clemson.edu
B. Ayalew
Department of Automotive Engineering,
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: beshah@clemson.edu
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: beshah@clemson.edu
P. Pisu
Department of Automotive Engineering,
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: pisup@clemson.edu
Clemson University,
4 Research Drive,
Greenville, SC 29607
e-mail: pisup@clemson.edu
1Corresponding author.
Contributed by the Dynamic Systems Division of ASME for publication in the JOURNAL OF DYNAMIC SYSTEMS, MEASUREMENT, AND CONTROL. Manuscript received December 17, 2014; final manuscript received June 18, 2015; published online August 13, 2015. Assoc. Editor: Junmin Wang.
J. Dyn. Sys., Meas., Control. Nov 2015, 137(11): 111005 (12 pages)
Published Online: August 13, 2015
Article history
Received:
December 17, 2014
Revision Received:
June 18, 2015
Citation
Dey, S., Ayalew, B., and Pisu, P. (August 13, 2015). "Nonlinear Adaptive Observer for a Lithium-Ion Battery Cell Based on Coupled Electrochemical–Thermal Model." ASME. J. Dyn. Sys., Meas., Control. November 2015; 137(11): 111005. https://doi.org/10.1115/1.4030972
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