English

Efficient quantum algorithm for nonlinear reaction-diffusion equations and energy estimation

Quantum Physics 2023-11-08 v2 Numerical Analysis Mathematical Physics math.MP Numerical Analysis

Abstract

Nonlinear differential equations exhibit rich phenomena in many fields but are notoriously challenging to solve. Recently, Liu et al. [1] demonstrated the first efficient quantum algorithm for dissipative quadratic differential equations under the condition R<1R < 1, where RR measures the ratio of nonlinearity to dissipation using the 2\ell_2 norm. Here we develop an efficient quantum algorithm based on [1] for reaction-diffusion equations, a class of nonlinear partial differential equations (PDEs). To achieve this, we improve upon the Carleman linearization approach introduced in [1] to obtain a faster convergence rate under the condition RD<1R_D < 1, where RDR_D measures the ratio of nonlinearity to dissipation using the \ell_{\infty} norm. Since RDR_D is independent of the number of spatial grid points nn while RR increases with nn, the criterion RD<1R_D<1 is significantly milder than R<1R<1 for high-dimensional systems and can stay convergent under grid refinement for approximating PDEs. As applications of our quantum algorithm we consider the Fisher-KPP and Allen-Cahn equations, which have interpretations in classical physics. In particular, we show how to estimate the mean square kinetic energy in the solution by postprocessing the quantum state that encodes it to extract derivative information.

Keywords

Cite

@article{arxiv.2205.01141,
  title  = {Efficient quantum algorithm for nonlinear reaction-diffusion equations and energy estimation},
  author = {Dong An and Di Fang and Stephen Jordan and Jin-Peng Liu and Guang Hao Low and Jiasu Wang},
  journal= {arXiv preprint arXiv:2205.01141},
  year   = {2023}
}

Comments

61 pages, 5 figures. Published in Communications in Mathematical Physics