等变映射
方格
人工神经网络
格子(音乐)
旋转
计算机科学
数学
物理
拓扑(电路)
统计物理学
凝聚态物理
纯数学
人工智能
伊辛模型
声学
组合数学
标识
DOI:10.1088/2632-2153/acffa2
摘要
Abstract I present a novel equivariant neural network architecture for the large-scale spin dynamics simulation of the Kondo lattice model. This neural network mainly consists of tensor-product-based convolution layers and ensures two equivariances: translations of the lattice and rotations of the spins. I implement equivariant neural networks for two Kondo lattice models on two-dimensional square and triangular lattices, and perform training and validation. In the equivariant model for the square lattice, the validation error (based on root mean squared error) is reduced to less than one-third compared to a model using invariant descriptors as inputs. Furthermore, I demonstrate the ability to simulate phase transitions of skyrmion crystals in the triangular lattice, by performing dynamics simulations using the trained model.
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