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Paper   IPM / CMNL / 17937
Condensed Matter National Laboratory
  Title:   Insights on the Rate Performance of Polyaniline Supercapacitors by Integrated Mathematical Modeling and Machine Learning
  Author(s): 
1.  Elham Rahmanian
2.  Rasoul Malekfar
3.  Ali Sajedi-Moghaddam
  Status:   Published
  Journal: J. Mater. Chem. A
  Year:  2024
  Supported by:  IPM
  Abstract:
The specific capacitance of supercapacitors (SCs) decreases as the applied current increases during the charge-discharge process. The rate of capacitance reduction is influenced by a combination of factors, including the synthesis approach, structural properties of the electrode material, electrode fabrication protocol, and operational conditions. However, decoupling the impacts of these interconnected parameters and determining the individual contribution of each factor to the rate performance of supercapacitor materials, such as polyaniline (PANI), remains unclear. In this work, a machine learning approach is employed as an alternative to experimental approaches to elucidate the impacts of structural, fabrication, and operational features on the rate performance of PANI-based SCs. Mathematical parametrization of the rate performance of PANI using different model selection criteria was performed, with the exponential decay function showing the highest accuracy. The gradient boosting machine model properly predicted the rate performance parameters, achieving an R�² value of 0.91 for the decay rate. The SHapley Additive exPlanations interpretation technique revealed that binder- and carbon-free electrodes or electrolytes that typically have a potential window 1 volt or higher, enhance capacitance at low current densities (CDs). A carbon-free electrode with a higher binder ratio and lower levels of PANI accelerates the decay rate. Additionally, increasing the start and end current densities is favorable for minimizing the decay rate. Electrolytes with typical PW of 0.5 or 0.7 volts, higher CD operational conditions, a lower active material ratio, a higher carbon ratio, and electrodes with large specific surface areas contribute to achieving high capacitance at elevated current densities. This study demonstrates the robust capabilities of machine learning in elucidating the underlying complex mechanisms affecting rate performance and provides valuable insights for designing high-rate performance PANI-based SCs. We anticipate that our study to be a starting point for investigating the rate behavior of other SC electrode materials using data-driven approaches.

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