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Efficient quantum algorithm for dissipative nonlinear differential equations

Quantum Physics 2021-10-19 v3 Numerical Analysis Numerical Analysis Plasma Physics

Abstract

Nonlinear differential equations model diverse phenomena but are notoriously difficult to solve. While there has been extensive previous work on efficient quantum algorithms for linear differential equations, the linearity of quantum mechanics has limited analogous progress for the nonlinear case. Despite this obstacle, we develop a quantum algorithm for dissipative quadratic nn-dimensional ordinary differential equations. Assuming R<1R < 1, where RR is a parameter characterizing the ratio of the nonlinearity and forcing to the linear dissipation, this algorithm has complexity T2q poly(logT,logn,log1/ϵ)/ϵT^2 q~\mathrm{poly}(\log T, \log n, \log 1/\epsilon)/\epsilon, where TT is the evolution time, ϵ\epsilon is the allowed error, and qq measures decay of the solution. This is an exponential improvement over the best previous quantum algorithms, whose complexity is exponential in TT. While exponential decay precludes efficiency, driven equations can avoid this issue despite the presence of dissipation. Our algorithm uses the method of Carleman linearization, for which we give a novel convergence theorem. This method maps a system of nonlinear differential equations to an infinite-dimensional system of linear differential equations, which we discretize, truncate, and solve using the forward Euler method and the quantum linear system algorithm. We also provide a lower bound on the worst-case complexity of quantum algorithms for general quadratic differential equations, showing that the problem is intractable for R2R \ge \sqrt{2}. Finally, we discuss potential applications, showing that the R<1R < 1 condition can be satisfied in realistic epidemiological models and giving numerical evidence that the method may describe a model of fluid dynamics even for larger values of RR.

Keywords

Cite

@article{arxiv.2011.03185,
  title  = {Efficient quantum algorithm for dissipative nonlinear differential equations},
  author = {Jin-Peng Liu and Herman Øie Kolden and Hari K. Krovi and Nuno F. Loureiro and Konstantina Trivisa and Andrew M. Childs},
  journal= {arXiv preprint arXiv:2011.03185},
  year   = {2021}
}

Comments

36 pages, 1 figure. Published in PNAS