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Automatic differentiation applied to excitations with projected entangled pair states

Boris Ponsioen, Fakher F. Assaad, Philippe Corboz

2022SciPost Physics50 citationsDOIOpen Access PDF

Abstract

The excitation ansatz for tensor networks is a powerful tool for simulating the low-lying quasiparticle excitations above ground states of strongly correlated quantum many-body systems. Recently, the two-dimensional tensor network class of infinite projected entangled-pair states gained new ground state optimization methods based on automatic differentiation, which are at the same time highly accurate and simple to implement. Naturally, the question arises whether these new ideas can also be used to optimize the excitation ansatz, which has recently been implemented in two dimensions as well. In this paper, we describe a straightforward way to reimplement the framework for excitations using automatic differentiation, and demonstrate its performance for the Hubbard model at half filling.

Topics & Concepts

AnsatzQuasiparticleTensor (intrinsic definition)Simple (philosophy)PhysicsExcitationGround stateClass (philosophy)Hubbard modelQuantumStatistical physicsComputer scienceQuantum mechanicsMathematicsArtificial intelligencePure mathematicsEpistemologyPhilosophySuperconductivityQuantum many-body systemsPhysics of Superconductivity and MagnetismQuantum and electron transport phenomena