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Inverse Design of Low-Resistivity Ternary Gold Alloys via Interpretable Machine Learning and Proactive Search Progress.

Hang CheTian LuShumin CaiMinjie LiWen-Cong Lu
Published in: Materials (Basel, Switzerland) (2024)
Ternary gold alloys (TGAs) are highly regarded for their excellent electrical properties. Electrical resistivity is a crucial indicator for evaluating the electrical performance of TGAs. To explore new promising TGAs with lower resistivity, we developed a reverse design approach integrating machine learning techniques and proactive searching progress (PSP) method. Compared with other models, the support vector regression (SVR) was determined to be the most optimal model for resistivity prediction. The training and test sets yielded R 2 values of 0.73 and 0.77, respectively. The model interpretation indicated that lower electrical resistivity was associated with the following conditions: a van der Waals Radius ( V rt ) of 0, a V r (another van der Waals Radius) of less than 217, and a mass attenuation coefficient of MoKα ( M acm ) greater than 77.5 cm 2 g -1 . Applying the PSP method, we successfully identified eight candidates whose resistivity was lower than that of the sample with the lowest resistivity in the dataset by more than 53-60%, e.g., Au 1.000 Cu 4.406 Pt 1.833 and Au 1.000 Pt 2.232 In 1.502 . Finally, the candidates were validated to possess low resistivity through the pattern recognition method.
Keyphrases
  • machine learning
  • reduced graphene oxide
  • sensitive detection
  • computed tomography
  • magnetic resonance
  • visible light
  • aqueous solution