Tranter Aaron D, Kranz Ludwik, Sutherland Sam, Keizer Joris G, Gorman Samuel K, Buchler Benjamin C, Simmons Michelle Y
Centre of Excellence for Quantum Computation and Communication Technology, Department of Quantum Science and Technology, Research School of Physics, The Australian National University, Acton 2601, Australia.
Centre of Excellence for Quantum Computation and Communication Technology, School of Physics, UNSW Sydney, Kensington 2052, New South Wales, Australia.
ACS Nano. 2024 Jul 17;18(30):19489-97. doi: 10.1021/acsnano.4c00080.
Donor-based qubits in silicon, manufactured using scanning tunneling microscope (STM) lithography, provide a promising route to realizing full-scale quantum computing architectures. This is due to the precision of donor placement, long coherence times, and scalability of the silicon material platform. The properties of multiatom quantum dot qubits, however, depend on the exact number and location of the donor atoms within the quantum dots. In this work, we develop machine learning techniques that allow accurate and real-time prediction of the donor number at the qubit site during STM patterning. Machine learning image recognition is used to determine the probability distribution of donor numbers at the qubit site directly from STM images during device manufacturing. Models in excess of 90% accuracy are found to be consistently achieved by mitigating overfitting through reduced model complexity, image preprocessing, data augmentation, and examination of the intermediate layers of the convolutional neural networks. The results presented in this paper constitute an important milestone in automating the manufacture of atom-based qubits for computation and sensing applications.
利用扫描隧道显微镜(STM)光刻技术制造的基于施主的硅量子比特,为实现全尺寸量子计算架构提供了一条很有前景的途径。这得益于施主放置的精度、较长的相干时间以及硅材料平台的可扩展性。然而,多原子量子点量子比特的特性取决于量子点内施主原子的确切数量和位置。在这项工作中,我们开发了机器学习技术,能够在STM图案化过程中对量子比特位点的施主数量进行准确实时预测。机器学习图像识别用于在器件制造过程中直接从STM图像确定量子比特位点施主数量的概率分布。通过降低模型复杂度、图像预处理、数据增强以及对卷积神经网络中间层的检查来减轻过拟合,发现始终能实现超过90%准确率的模型。本文给出的结果是实现用于计算和传感应用的基于原子的量子比特自动化制造的一个重要里程碑。