4.7 Review

From ROM of Electrochemistry to AI-Based Battery Digital and Hybrid Twin

Journal

ARCHIVES OF COMPUTATIONAL METHODS IN ENGINEERING
Volume 28, Issue 3, Pages 979-1015

Publisher

SPRINGER
DOI: 10.1007/s11831-020-09404-6

Keywords

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Funding

  1. Spanish Ministry of Economy and Competitiveness [DPI2017-85139-C2-1-R, DPI2015-72365-EXP]
  2. Regional Government of Aragon [T24 17R]
  3. European Social Fund [T24 17R]
  4. ESI Group International Chairs at University of Zaragoza and Arts et Metiers ParisTech

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This work focuses on the development of a Hybrid Twin model for the new generation of BMS, applying three reduced order model techniques for different ranges of application. Simulation of the electric vehicle system was conducted with real-time performance demonstrated, while a Digital Twin was created for real-time simulations and adaptive predictions. Additionally, a data-driven model based on Dynamic Mode Decomposition techniques was developed to correct the gap between prediction and measurement, creating the first hybrid twin of a Li-ion battery capable of self-correction.
Lithium-ion batteries are widely used in the automobile industry (electric vehicles and hybrid electric vehicles) due to their high energy and power density. However, this raises new safety and reliability challenges which require development of novel sophisticated Battery Management Systems (BMS). A BMS ensures the safe and reliable operation of a battery pack and to realize it a model must be solved. However, current BMSs are not adapted to the specifications of the automotive industry, as they are unable to give accurate results at real-time rates and during a wide operation range. For this reason, the main focus of this work is to develop a Hybrid Twin, as introduced in Chinesta et al. (Arch Comput Methods Eng (in press), 2018. 10.1007/s11831-018-9301-4), so as to meet the requirements of the new generation of BMS. To achieve this, three reduced order model techniques are applied to the most commonly used physics-based models, each one for a different range of application. First, a POD model is used to greatly reduce the simulation time and the computational effort for the pseudo-2D model, while maintaining its accuracy. In this way, cell design, optimization of parameters, and simulation of battery packs can be done while saving time and computational resources. In addition, its real-time performance has been studied. Next, a regression model is constructed from data by using the sparse-Proper Generalized Decomposition (s-PGD). It is shown that it achieves real-time performance for the whole electric vehicle (EV) system with a battery pack. In addition, this regression model can be used in a BMS without issues because of the simple algebraic expression obtained. A simulation of the EV with the proposed approach is demonstrated using the system simulation tool SimulationX (ESI ITI GmbH. Dresden, Germany). Furthermore, the Digital Twin created using the s-PGD does not only allow for real-time simulations, but it can also adapt its predictions taking into consideration the real driving conditions and the real driving cycle to change the planning in real-time. Finally, a data-driven model based on the employment of Dynamic Mode Decomposition techniques is developed to extract an on-line model that corrects the gap between prediction and measurement, thus constructing the first (to our knowledge) hybrid twin of a Li-ion battery able to self-correct from data. In addition, thanks to this model, the above gap is corrected during the driving process, taking into consideration real-time restrictions.

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