Publication | Open Access
Multigrid Algorithms for Tensor Network States
46
Citations
28
References
2012
Year
Mathematical ProgrammingNumerical AnalysisLattice ModelsQuantum Lattice SystemEngineeringNetwork AnalysisComputational ChemistryEnergy MinimizationStatistical Field TheoryNumerical SimulationMultilinear Subspace LearningOptical LatticeMultigrid AlgorithmPhysicsComputer ScienceMultigrid AlgorithmsComputational ScienceMatrix FactorizationNatural SciencesApplied PhysicsLattice Field TheoryHigh-dimensional NetworkMultiscale Modeling
The widely used density matrix renormalization group (DRMG) method often fails to converge in systems with multiple length scales, such as lattice discretizations of continuum models and dilute or weakly doped lattice models. The local optimization employed by DMRG to optimize the wave function is ineffective in updating large-scale features. Here we present a multigrid algorithm that solves these convergence problems by optimizing the wave function at different spatial resolutions. We demonstrate its effectiveness by simulating bosons in continuous space and study nonadiabaticity when ramping up the amplitude of an optical lattice. The algorithm can be generalized to tensor network methods and combined with the contractor renormalization group method to study dilute and weakly doped lattice models.
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