噪声量子计算机上微分方程的变分量子算法

Niclas Schillo;Andreas Sturm
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引用次数: 0

摘要

微分方程在科学和工程中的作用是至关重要的,因为它们为许多自然现象提供了数学框架。由于量子计算机承诺比经典计算机具有显著的优势,量子算法解决DEs已经受到了很多关注。特别有趣的是,在当前嘈杂的中等规模量子(NISQ)时代,算法提供了优势,其特点是小而容易出错的系统。我们考虑了一个变分量子算法框架,量子电路学习(QCL),结合推导方法,特别是参数移位规则,来解决DEs。由于这些算法是专门为NISQ计算机设计的,我们通过在IBM量子计算机上实现QCL来分析它们在NISQ设备上的适用性。我们对没有参数移位规则的QCL的分析表明,我们可以成功地使用三量子位电路学习不同的函数。然而,随着量子比特数量的增加,硬件错误会累积,因此,当前量子系统中只有一小部分可用的量子比特可以被有效利用。我们进一步表明,可以使用IBM硬件上的参数移位规则来确定学习函数的导数。参数移位规则导致较高的误差,这限制了其执行低阶导数。尽管存在这些限制,我们还是在IBM量子计算机上解决了一个一阶DE。我们通过同时学习不同的函数,进一步探索了在QCL中使用多个量子位的优势,并在模拟器上演示了耦合DE的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variational Quantum Algorithms for Differential Equations on a Noisy Quantum Computer
The role of differential equations (DEs) in science and engineering is of paramount importance, as they provide the mathematical framework for a multitude of natural phenomena. Since quantum computers promise significant advantages over classical computers, quantum algorithms for the solution of DEs have received a lot of attention. Particularly interesting are algorithms that offer advantages in the current noisy intermediate-scale quantum (NISQ) era, characterized by small and error-prone systems. We consider a framework of variational quantum algorithms, quantum circuit learning (QCL), in conjunction with derivation methods, in particular the parameter shift rule, to solve DEs. As these algorithms were specifically designed for NISQ computers, we analyze their applicability on NISQ devices by implementing QCL on an IBM quantum computer. Our analysis of QCL without the parameter shift rule shows that we can successfully learn different functions with three-qubit circuits. However, the hardware errors accumulate with increasing number of qubits, and thus, only a fraction of the qubits available on the current quantum systems can be effectively used. We further show that it is possible to determine derivatives of the learned functions using the parameter shift rule on the IBM hardware. The parameter shift rule results in higher errors, which limits its execution to low-order derivatives. Despite these limitations, we solve a first-order DE on the IBM quantum computer. We further explore the advantages of using multiple qubits in QCL by learning different functions simultaneously and demonstrate the solution of a coupled DE on a simulator.
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