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Neural Network for Prediction of Curie Temperature of Two-Dimensional Ising Model
A. O. Korolab, V. Yu. Kapitanab a Far Eastern Federal University, Vladivostok
b Institute for Applied Mathematics, Far Eastern Branch, Russian Academy of Sciences, Vladivostok
Abstract:
The authors describe a method for determining the critical point of a second-order phase transitions using a convolutional neural network based on the Ising model on a square lattice. Data for training were obtained using Metropolis algorithm for different temperatures. The neural network was trained on the data corresponding to the low-temperature phase, that is a ferromagnetic one and high-temperature phase, that is a paramagnetic one, respectively. After training, the neural network analyzed input data from the entire temperature range: from $0.1$ to $5.0$ (in dimensionless units) and determined the Curie temperature $T_c$. The accuracy of the obtained results was estimated relative to the Onsager solution for a flat lattice of Ising spins.
Key words:
Ising model, Curie temperature, Monte Carlo method, Convolutional neural network.
Received: 11.05.2021
Citation:
A. O. Korol, V. Yu. Kapitan, “Neural Network for Prediction of Curie Temperature of Two-Dimensional Ising Model”, Dal'nevost. Mat. Zh., 21:1 (2021), 51–60
Linking options:
https://www.mathnet.ru/eng/dvmg446 https://www.mathnet.ru/eng/dvmg/v21/i1/p51
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