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Quantum Algorithms
Sensitivity to the initial conditions of the Time-Dependent Density Functional Theory
arXiv
Authors: Aurel Bulgac, Ibrahim Abdurrahman, Gabriel Wlazłowski
Year
2021
Paper ID
62125
Status
Preprint
Abstract Read
~2 min
Abstract Words
198
Citations
N/A
Abstract
Time-Dependent Density Functional Theory is mathematically formulated through non-linear coupled time-dependent 3-dimensional partial differential equations and it is natural to expect a strong sensitivity of its solutions to variations of the initial conditions, akin to the butterfly effect ubiquitous in classical dynamics. Since the Schrödinger equation for an interacting many-body system is however linear and mathematically the exact equations of the Density Functional Theory reproduce the corresponding one-body properties, it would follow that the Lyapunov exponents are also vanishing within a Density Functional Theory framework. Whether for realistic implementations of the Time-Dependent Density Functional Theory the question of absence of the butterfly effect and whether the dynamics provided is indeed a predictable theory was never discussed. At the same time, since the time-dependent density functional theory is a unique tool allowing us the study of non-equilibrium dynamics of strongly interacting many-fermion systems, the question of predictability of this theoretical framework is of paramount importance. Our analysis, for a number of quantum superfluid many-body systems (unitary Fermi gas, nuclear fission, and heavy-ion collisions) with a classical equivalent number of degrees of freedom {cal O}\(1010\) and larger, suggests that its maximum Lyapunov exponents are negligible for all practical purposes.
Why This Paper Matters
- It adds a 2021 reference point for readers tracking recent quantum research.
- Time-Dependent Density Functional Theory is mathematically formulated through non-linear coupled time-dependent 3-dimensional partial differential equations and it is natural...
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