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Closed-loop optimization of fast-charging protocols for batteries with machine learning.
Attia, Peter M; Grover, Aditya; Jin, Norman; Severson, Kristen A; Markov, Todor M; Liao, Yang-Hung; Chen, Michael H; Cheong, Bryan; Perkins, Nicholas; Yang, Zi; Herring, Patrick K; Aykol, Muratahan; Harris, Stephen J; Braatz, Richard D; Ermon, Stefano; Chueh, William C.
Afiliação
  • Attia PM; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Grover A; Department of Computer Science, Stanford University, Stanford, CA, USA.
  • Jin N; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Severson KA; Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, MA, USA.
  • Markov TM; Department of Computer Science, Stanford University, Stanford, CA, USA.
  • Liao YH; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Chen MH; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Cheong B; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Perkins N; Department of Computer Science, Stanford University, Stanford, CA, USA.
  • Yang Z; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Herring PK; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Aykol M; Toyota Research Institute, Los Altos, CA, USA.
  • Harris SJ; Toyota Research Institute, Los Altos, CA, USA.
  • Braatz RD; Department of Materials Science and Engineering, Stanford University, Stanford, CA, USA.
  • Ermon S; Materials Science Division, Lawrence Berkeley National Laboratory, Berkeley, CA, USA.
  • Chueh WC; Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, MA, USA. braatz@mit.edu.
Nature ; 578(7795): 397-402, 2020 02.
Article em En | MEDLINE | ID: mdl-32076218
ABSTRACT
Simultaneously optimizing many design parameters in time-consuming experiments causes bottlenecks in a broad range of scientific and engineering disciplines1,2. One such example is process and control optimization for lithium-ion batteries during materials selection, cell manufacturing and operation. A typical objective is to maximize battery lifetime; however, conducting even a single experiment to evaluate lifetime can take months to years3-5. Furthermore, both large parameter spaces and high sampling variability3,6,7 necessitate a large number of experiments. Hence, the key challenge is to reduce both the number and the duration of the experiments required. Here we develop and demonstrate a machine learning methodology  to efficiently optimize a parameter space specifying the current and voltage profiles of six-step, ten-minute fast-charging protocols for maximizing battery cycle life, which can alleviate range anxiety for electric-vehicle users8,9. We combine two key elements to reduce the optimization cost an early-prediction model5, which reduces the time per experiment by predicting the final cycle life using data from the first few cycles, and a Bayesian optimization algorithm10,11, which reduces the number of experiments by balancing exploration and exploitation to efficiently probe the parameter space of charging protocols. Using this methodology, we rapidly identify high-cycle-life charging protocols among 224 candidates in 16 days (compared with over 500 days using exhaustive search without early prediction), and subsequently validate the accuracy and efficiency of our optimization approach. Our closed-loop methodology automatically incorporates feedback from past experiments to inform future decisions and can be generalized to other applications in battery design and, more broadly, other scientific domains that involve time-intensive experiments and multi-dimensional design spaces.

Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article