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GrapheNet: a deep learning framework for predicting the physical and electronic properties of nanographenes using images. | LitMetric

GrapheNet: a deep learning framework for predicting the physical and electronic properties of nanographenes using images.

Sci Rep

DAIMON Lab, Istituto per lo Studio dei Materiali Nanostrutturati (ISMN), Consiglio Nazionale delle Ricerche (CNR), Via P. Gobetti 101, Bologna, 40129, Italy.

Published: October 2024

AI Article Synopsis

  • GrapheNet is a deep learning framework that uses Inception-Resnet architecture to predict properties of nanographenes by translating structural features into image-like encodings.
  • The model has been tested on datasets related to graphene oxide and defected graphene nanoflakes, showcasing its effectiveness in property prediction.
  • GrapheNet efficiently handles large systems and outperforms traditional atom-level models in both numerical accuracy and computational efficiency, particularly for planar nanostructures.

Article Abstract

In this work we introduce GrapheNet, a deep learning framework based on an Inception-Resnet architecture using image-like encoding of structural features for the prediction of the properties of nanographenes. The model is validated on datasets of computed structure/property data on graphene oxide and defected graphene nanoflakes. By exploiting the planarity of quasi-bidimensional systems and through encoding structures into images, and leveraging the flexibility and power of deep learning in image processing, Graphenet achieves significant accuracy in predicting the physicochemical properties of nanographenes. This approach is able to efficiently encode structures composed of hundreds of atoms, scaling efficiently with the size of the model and enabling the prediction of the properties of large systems, which contrasts with the limitations of current atomistic-level representations for deep learning applications. The approach proposed based on image encoding exhibit a significant numerical accuracy and outperforms the computational efficiency of current representations of materials at the atomistic level, with significant advantages especially in the representation of nanostructures and large planar systems.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11490583PMC
http://dx.doi.org/10.1038/s41598-024-75841-zDOI Listing

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