An isolated system of interacting quantum particles is described by a Hamiltonian operator. Hamiltonian models underpin the study and analysis of physical and chemical processes throughout science and industry, so it is crucial they are faithful to the system they represent. However, formulating and testing Hamiltonian models of quantum systems from experimental data is difficult because it is impossible to directly observe which interactions the quantum system is subject to. Here, we propose and demonstrate an approach to retrieving a Hamiltonian model from experiments, using unsupervised machine learning. We test our methods experimentally on an electron spin in a nitrogen-vacancy interacting with its spin bath environment, and numerically, finding success rates up to 86%. By building agents capable of learning science, which recover meaningful representations, we can gain further insight on the physics of quantum systems.
翻译:汉密尔顿号操作员描述了一个单独的交互量子粒子系统。汉密尔顿模型支持了整个科学和工业对物理和化学过程的研究和分析,因此,它们必须忠实于它们所代表的系统。然而,从实验数据中制定和测试汉密尔顿量子系统模型是困难的,因为无法直接观测量子系统受何种相互作用约束。在这里,我们提出并展示了一种方法,利用不受监督的机器学习,从实验中检索汉密尔顿模型。我们实验我们的方法是在与其旋转浴环境发生相互作用的氮-蒸气中进行电子旋转,并且从数字上找到高达86%的成功率。通过建立能够学习科学的代理,我们可以进一步深入了解量子系统的物理。