4.7 Article

Applications of a neural network to detect the percolating transitions in a system with variable radius of defects

Journal

CHAOS
Volume 30, Issue 8, Pages -

Publisher

AIP Publishing
DOI: 10.1063/5.0010904

Keywords

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Funding

  1. CONACYT (Mexico) [A1-S-9201, A1-S-8793]

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We systematically study the percolation phase transition at the change of concentration of the chaotic defects (pores) in an extended system where the disordered defects additionally have a variable random radius, using the methods of a neural network (NN). Two important parameters appear in such a material: the average value and the variance of the random pore radius, which leads to significant change in the properties of the phase transition compared with conventional percolation. To train a network, we use the spatial structure of a disordered environment (feature class), and the output (label class) indicates the state of the percolation transition. We found high accuracy of the transition prediction (except the narrow threshold area) by the trained network already in the two-dimensional case. We have also employed such a technique for the extended three-dimensional (3D) percolation system. Our simulations showed the high accuracy of prediction in the percolation transition in 3D case too. The considered approach opens up interesting perspectives for using NN to identify the phase transitions in real percolating nanomaterials with a complex cluster structure.

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