Efficient quantum algorithm for dissipative nonlinear differential
equations
- URL: http://arxiv.org/abs/2011.03185v3
- Date: Sat, 16 Oct 2021 00:08:48 GMT
- Title: Efficient quantum algorithm for dissipative nonlinear differential
equations
- Authors: Jin-Peng Liu, Herman {\O}ie Kolden, Hari K. Krovi, Nuno F. Loureiro,
Konstantina Trivisa, Andrew M. Childs
- Abstract summary: We develop a quantum algorithm for dissipative quadratic $n$-dimensional ordinary differential equations.
Our algorithm has complexity $T2 qmathrmpoly(log T, log n, log 1/epsilon)/epsilon$, where $T$ is the evolution time, $epsilon$ is the allowed error, and $q$ measures decay of the solution.
- Score: 1.1988695717766686
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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
$n$-dimensional ordinary differential equations. Assuming $R < 1$, where $R$ is
a parameter characterizing the ratio of the nonlinearity and forcing to the
linear dissipation, this algorithm has complexity $T^2 q~\mathrm{poly}(\log T,
\log n, \log 1/\epsilon)/\epsilon$, where $T$ is the evolution time, $\epsilon$
is the allowed error, and $q$ measures decay of the solution. This is an
exponential improvement over the best previous quantum algorithms, whose
complexity is exponential in $T$. 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 $R \ge \sqrt{2}$.
Finally, we discuss potential applications, showing that the $R < 1$ 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 $R$.
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