流体力学非线性方程的量子算法

R. Steijl
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引用次数: 11

摘要

近年来,线性常微分方程和线性偏微分方程的量子算法的发展取得了重大进展。在非线性微分方程的量子算法的发展方面还没有类似的进展。在目前的工作中,重点是非线性偏微分方程作为流体力学中的控制方程。首先,讨论了量子计算背景下与非线性方程相关的关键挑战。然后,作为本工作的主要贡献,提出了在Navier-Stokes方程中表示非线性对流项的量子电路。所介绍的量子算法在计算基础上采用编码,并采用基于量子傅里叶变换的算法。此外,使用浮点型数据表示代替量子算法中通常使用的定点表示。复杂度分析表明,即使在当前和近期量子计算机(<100)上可用的量子比特数量有限的情况下,非线性乘积项也可以以良好的精度计算。通过一个典型的算例,说明了在浮点量子算法中包含次正规数的重要性。讨论了将引入的算法嵌入更大规模算法所需的进一步开发步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum Algorithms for Nonlinear Equations in Fluid Mechanics
In recent years, significant progress has been made in the development of quantum algorithms for linear ordinary differential equations as well as linear partial differential equations. There has not been similar progress in the development of quantum algorithms for nonlinear differential equations. In the present work, the focus is on nonlinear partial differential equations arising as governing equations in fluid mechanics. First, the key challenges related to nonlinear equations in the context of quantum computing are discussed. Then, as the main contribution of this work, quantum circuits are presented that represent the nonlinear convection terms in the Navier–Stokes equations. The quantum algorithms introduced use encoding in the computational basis, and employ arithmetic based on the Quantum Fourier Transform. Furthermore, a floating-point type data representation is used instead of the fixed-point representation typically employed in quantum algorithms. A complexity analysis shows that even with the limited number of qubits available on current and near-term quantum computers (<100), nonlinear product terms can be computed with good accuracy. The importance of including sub-normal numbers in the floating-point quantum arithmetic is demonstrated for a representative example problem. Further development steps required to embed the introduced algorithms into larger-scale algorithms are discussed.
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