Yang Shuo, Gu Zheng-Cheng, Wen Xiao-Gang
Perimeter Institute for Theoretical Physics, Waterloo, Ontario N2L 2Y5, Canada.
Department of Physics, The Chinese University of Hong Kong, Shatin, New Territories, Hong Kong.
Phys Rev Lett. 2017 Mar 17;118(11):110504. doi: 10.1103/PhysRevLett.118.110504. Epub 2017 Mar 15.
We introduce a tensor renormalization group scheme for coarse graining a two-dimensional tensor network that can be successfully applied to both classical and quantum systems on and off criticality. The key innovation in our scheme is to deform a 2D tensor network into small loops and then optimize the tensors on each loop. In this way, we remove short-range entanglement at each iteration step and significantly improve the accuracy and stability of the renormalization flow. We demonstrate our algorithm in the classical Ising model and a frustrated 2D quantum model.
我们引入了一种张量重整化群方案,用于对二维张量网络进行粗粒化,该方案可成功应用于临界和非临界状态下的经典和量子系统。我们方案的关键创新在于将二维张量网络变形为小环,然后优化每个环上的张量。通过这种方式,我们在每次迭代步骤中消除短程纠缠,并显著提高重整化流的精度和稳定性。我们在经典伊辛模型和一个受挫的二维量子模型中演示了我们的算法。