Luis Fabián Peña, Justine C. Koepke, Joseph Houston Dycus, Andrew Mounce, Andrew D. Baczewski, N. Tobias Jacobson, Ezra Bussmann
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引用次数: 0
摘要
硅锗异质外延生长为量子点量子比特提供了原始的宿主材料,但残留的界面紊乱会导致量子比特间的变异,这可能会对基于硅锗的可靠量子计算构成障碍。通过融合扫描隧道显微镜和高角度环形暗场扫描透射电子显微镜的数据,我们重建了三维界面原子结构,并采用原子论多谷有效质量理论来量化量子比特光谱变异性。结果表明:(1) 由于合金无序,谷分裂 (VS) 的可观变化约为 50%;(2) 粗糙度引起的双点失谐偏置能量变化约为 1-10 meV,这取决于阱的厚度。对于测量到的混合物,原子阶梯对 VS 的影响可以忽略不计,而不相关的粗糙度会导致双点失谐的空间波动能量偏差,这可能会被错误地归因于电荷失调。与生长后显微镜或层析成像法相比,我们的方法能获得更大范围的原子结构,从而能更全面地预测无序诱导的量子比特变异性。
Modeling Si/SiGe quantum dot variability induced by interface disorder reconstructed from multiperspective microscopy
SiGe heteroepitaxial growth yields pristine host material for quantum dot qubits, but residual interface disorder can lead to qubit-to-qubit variability that might pose an obstacle to reliable SiGe-based quantum computing. By convolving data from scanning tunneling microscopy and high-angle annular dark field scanning transmission electron microscopy, we reconstruct 3D interfacial atomic structure and employ an atomistic multi-valley effective mass theory to quantify qubit spectral variability. The results indicate (1) appreciable valley splitting (VS) variability of ~50% owing to alloy disorder and (2) roughness-induced double-dot detuning bias energy variability of order 1–10 meV depending on well thickness. For measured intermixing, atomic steps have negligible influence on VS, and uncorrelated roughness causes spatially fluctuating energy biases in double-dot detunings potentially incorrectly attributed to charge disorder. Our approach yields atomic structure spanning orders of magnitude larger areas than post-growth microscopy or tomography alone, enabling more holistic predictions of disorder-induced qubit variability.
期刊介绍:
The scope of npj Quantum Information spans across all relevant disciplines, fields, approaches and levels and so considers outstanding work ranging from fundamental research to applications and technologies.