Merker Helena A, Heiberger Harry, Nguyen Linh, Liu Tongtong, Chen Zhantao, Andrejevic Nina, Drucker Nathan C, Okabe Ryotaro, Kim Song Eun, Wang Yao, Smidt Tess, Li Mingda
Quantum Measurement Group, Massachusetts Institute of Technology, Cambridge, MA 02139, USA.
Department of Electrical Engineering and Computer Science, Massachusetts Institute of Technology, Cambridge, MA 02139, USA.
iScience. 2022 Sep 28;25(10):105192. doi: 10.1016/j.isci.2022.105192. eCollection 2022 Oct 21.
The determination of magnetic structure poses a long-standing challenge in condensed matter physics and materials science. Experimental techniques such as neutron diffraction are resource-limited and require complex structure refinement protocols, while computational approaches such as first-principles density functional theory (DFT) need additional semi-empirical correction, and reliable prediction is still largely limited to collinear magnetism. Here, we present a machine learning model that aims to classify the magnetic structure by inputting atomic coordinates containing transition metal and rare earth elements. By building a Euclidean equivariant neural network that preserves the crystallographic symmetry, the magnetic structure (ferromagnetic, antiferromagnetic, and non-magnetic) and magnetic propagation vector (zero or non-zero) can be predicted with an average accuracy of 77.8% and 73.6%. In particular, a 91% accuracy is reached when predicting no magnetic ordering even if the structure contains magnetic element(s). Our work represents one step forward to solving the grand challenge of full magnetic structure determination.
磁结构的确定在凝聚态物理和材料科学中是一个长期存在的挑战。诸如中子衍射等实验技术资源有限,且需要复杂的结构精修方案,而诸如第一性原理密度泛函理论(DFT)等计算方法需要额外的半经验校正,并且可靠的预测在很大程度上仍局限于共线磁性。在此,我们提出一种机器学习模型,旨在通过输入包含过渡金属和稀土元素的原子坐标来对磁结构进行分类。通过构建一个保持晶体学对称性的欧几里得等变神经网络,可以预测磁结构(铁磁、反铁磁和非磁性)和磁传播矢量(零或非零),平均准确率分别为77.8%和73.6%。特别是,即使结构包含磁性元素,在预测无磁有序时也能达到91%的准确率。我们的工作朝着解决完整磁结构确定这一重大挑战迈进了一步。