A cyclical route linking fundamental mechanism and AI algorithm: An example from tuning Poisson's ratio in amorphous networks
"AI for science" is widely recognized as a future trend in the development of scientific research. Currently, although machine learning algorithms have played a crucial role in scientific research with numerous successful cases, relatively few instances exist where AI assists researchers i...
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Zusammenfassung: | "AI for science" is widely recognized as a future trend in the development of
scientific research. Currently, although machine learning algorithms have
played a crucial role in scientific research with numerous successful cases,
relatively few instances exist where AI assists researchers in uncovering the
underlying physical mechanisms behind a certain phenomenon and subsequently
using that mechanism to improve machine learning algorithms' efficiency. This
article uses the investigation into the relationship between extreme Poisson's
ratio values and the structure of amorphous networks as a case study to
illustrate how machine learning methods can assist in revealing underlying
physical mechanisms. Upon recognizing that the Poisson's ratio relies on the
low-frequency vibrational modes of dynamical matrix, we can then employ a
convolutional neural network, trained on the dynamical matrix instead of
traditional image recognition, to predict the Poisson's ratio of amorphous
networks with a much higher efficiency. Through this example, we aim to
showcase the role that artificial intelligence can play in revealing
fundamental physical mechanisms, which subsequently improves the machine
learning algorithms significantly. |
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DOI: | 10.48550/arxiv.2312.03404 |