Percolation is an important topic in climate, physics, materials science, epidemiology, finance, and so on. Prediction of percolation thresholds with machine learning methods remains challenging. In this paper, we build a powerful graph convolutional neural network to study the percolation in both supervised and unsupervised ways. From a supervised learning perspective, the graph convolutional neural network simultaneously and correctly trains data of different lattice types, such as the square and triangular lattices. For the unsupervised perspective, combining the graph convolutional neural network and the confusion method, the percolation threshold can be obtained by the "W" shaped performance. The finding of this work opens up the possibility of building a more general framework that can probe the percolation-related phenomenon.
翻译:渗流在气候、物理、材料科学、流行病学、金融等领域占有重要地位,利用机器学习方法准确预测渗流临界点始终很具挑战性。本研究基于图卷积神经网络(Graph Convolutional Neural Network, GCNN)采用监督和非监督两种方式研究渗流模型。从监督学习方面看,GCNN可以同时准确地训练不同格子类型(例如正方形和三角形)。从非监督学习方面看,结合GCNN和混乱方法,可以通过"W"形状的性能获取渗流阈值。此研究的发现为建立更为通用的框架探究渗流相关现象提供了可能。