Wagner Elisabeth, Dell'Anna Federico, Nigmatullin Ramil, K Brennen Gavin
School of Mathematical and Physical Sciences, Macquarie University, Sydney, NSW 2109, Australia.
Australian Research Council Centre of Excellence in Engineered Quantum Systems, Macquarie University, Sydney, NSW 2109, Australia.
Entropy (Basel). 2024 Dec 31;27(1):26. doi: 10.3390/e27010026.
The density classification (DC) task, a computation which maps global density information to local density, is studied using one-dimensional non-unitary quantum cellular automata (QCAs). Two approaches are considered: one that preserves the number density and one that performs majority voting. For number-preserving DC, two QCAs are introduced that reach the fixed-point solution in a time scaling quadratically with the system size. One of the QCAs is based on a known classical probabilistic cellular automaton which has been studied in the context of DC. The second is a new quantum model that is designed to demonstrate additional quantum features and is restricted to only two-body interactions. Both can be generated by continuous-time Lindblad dynamics. A third QCA is a hybrid rule defined by both discrete-time and continuous-time three-body interactions that is shown to solve the majority voting problem within a time that scales linearly with the system size.
利用一维非酉量子元胞自动机(QCA)研究了密度分类(DC)任务,即一种将全局密度信息映射到局部密度的计算。考虑了两种方法:一种是保持数密度的方法,另一种是执行多数表决的方法。对于保持数目的DC,引入了两个QCA,它们在与系统大小成二次方比例的时间尺度内达到定点解。其中一个QCA基于一个已知的经典概率元胞自动机,该自动机已在DC的背景下进行了研究。第二个是一个新的量子模型,旨在展示额外的量子特性,并且仅限于两体相互作用。两者都可以由连续时间林德布拉德动力学生成。第三个QCA是一个由离散时间和连续时间三体相互作用定义的混合规则,它被证明可以在与系统大小成线性比例的时间内解决多数表决问题。