论文标题
模拟基于云的超导量子计算机上的大尺寸量子旋转链
Simulating large-size quantum spin chains on cloud-based superconducting quantum computers
论文作者
论文摘要
量子计算机有可能有效模拟大型量子系统,而经典方法必定会失败。即使现在有几种现有的量子设备具有超过一百多个量子数的总量子数,但它们的适用性仍然困扰着噪声和错误。因此,在这些设备上可以成功模拟大型量子系统的程度尚不清楚。在这里,我们报告了在IBM的几台超导量子计算机上进行的云模拟,以模拟具有多种系统尺寸的旋转链的基态,最高为一百二个量子。我们发现,从不同量子计算机和系统尺寸的实现中提取的基态能量达到了较小的误差内的预期值(即在百分比水平上),包括从这些值的热力学限制中推断能量密度的推断。我们通过将物理动机的变异ansatzes以及有效,可扩展的能量测定和误差缓解方案(包括在零噪声推断中使用参考状态)的结合来实现这种准确性。通过使用102 QUITAINT系统,在执行栅极误差时,我们已经能够在单个电路中成功应用3186个CNOT门。我们对ANSATZ状态中随机参数的准确,误差的结果表明,大规模XXZ模型的独立混合量子量子差异方法是可行的。
Quantum computers have the potential to efficiently simulate large-scale quantum systems for which classical approaches are bound to fail. Even though several existing quantum devices now feature total qubit numbers of more than one hundred, their applicability remains plagued by the presence of noise and errors. Thus, the degree to which large quantum systems can successfully be simulated on these devices remains unclear. Here, we report on cloud simulations performed on several of IBM's superconducting quantum computers to simulate ground states of spin chains having a wide range of system sizes up to one hundred and two qubits. We find that the ground-state energies extracted from realizations across different quantum computers and system sizes reach the expected values to within errors that are small (i.e. on the percent level), including the inference of the energy density in the thermodynamic limit from these values. We achieve this accuracy through a combination of physics-motivated variational Ansatzes, and efficient, scalable energy-measurement and error-mitigation protocols, including the use of a reference state in the zero-noise extrapolation. By using a 102-qubit system, we have been able to successfully apply up to 3186 CNOT gates in a single circuit when performing gate-error mitigation. Our accurate, error-mitigated results for random parameters in the Ansatz states suggest that a standalone hybrid quantum-classical variational approach for large-scale XXZ models is feasible.