Non-perturbative analytical diagonalization of Hamiltonians with
application to coupling suppression and enhancement in cQED
- URL: http://arxiv.org/abs/2112.00039v2
- Date: Wed, 4 May 2022 16:38:09 GMT
- Title: Non-perturbative analytical diagonalization of Hamiltonians with
application to coupling suppression and enhancement in cQED
- Authors: Boxi Li, Tommaso Calarco and Felix Motzoi
- Abstract summary: Deriving effective Hamiltonian models plays an essential role in quantum theory.
We present two symbolic methods for computing effective Hamiltonian models.
We study the ZZ and cross-resonance interactions of superconducting qubits systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Deriving effective Hamiltonian models plays an essential role in quantum
theory, with particular emphasis in recent years on control and engineering
problems. In this work, we present two symbolic methods for computing effective
Hamiltonian models: the Non-perturbative Analytical Diagonalization (NPAD) and
the Recursive Schrieffer-Wolff Transformation (RSWT). NPAD makes use of the
Jacobi iteration and works without the assumptions of perturbation theory while
retaining convergence, allowing to treat a very wide range of models. In the
perturbation regime, it reduces to RSWT, which takes advantage of an in-built
recursive structure where remarkably the number of terms increases only
linearly with perturbation order, exponentially decreasing the number of terms
compared to the ubiquitous Schrieffer-Wolff method. In this regime, NPAD
further gives an exponential reduction in terms, i.e. superexponential compared
to Schrieffer-Wolff, relevant to high precision expansions. Both methods
consist of algebraic expressions and can be easily automated for symbolic
computation. To demonstrate the application of the methods, we study the ZZ and
cross-resonance interactions of superconducting qubits systems. We investigate
both suppressing and engineering the coupling in near-resonant and
quasi-dispersive regimes. With the proposed methods, the coupling strength in
the effective Hamiltonians can be estimated with high precision comparable to
numerical results.
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