Suppressing spin qubit decoherence during shuttling via confinement modulation
Daniel Q. L. Nguyen, Maximilian Rimbach-Russ, Stefano Bosco
TLDR
This paper introduces confinement-modulated shuttling protocols to enhance spin qubit coherence during transport by suppressing noise.
Key contributions
- Introduces temporal and spatial breathing shuttling protocols for spin qubits.
- Leverages spin-orbit interactions to electrically drive qubits during transport.
- Continuously rotates spin during movement to suppress low-frequency magnetic and electric noise.
- Demonstrates significant coherence enhancement for germanium hole-spin qubits during transport.
Why it matters
Reliable long-range qubit shuttling is crucial for scalable quantum computing architectures. This work provides practical, noise-resilient protocols to maintain qubit coherence during transport, addressing a key challenge in building robust quantum links.
Original Abstract
Reliable long-range qubit shuttling is a powerful tool for scalable quantum computing architectures. We investigate strategies to improve the coherence of moving spin qubits by performing continuous dynamical decoupling by modulating their confinement potential. Specifically, we introduce temporal and spatial breathing shuttling protocols that leverage spin-orbit interactions in hole-spin systems to electrically drive the qubit while moving. This enables efficient dressed-state shuttling, where the spin is continuously rotated during transport, suppressing the effect of low-frequency noise. Using the filter function formalism, we identify driving regimes that efficiently mitigate both global and local magnetic and electric noise sources. We find that confinement-modulated shuttling can significantly enhance coherence during transport, while revealing distinct limitations depending on the correlation length of the noise. Applying our framework to germanium hole-spin qubits, we show that these protocols provide a practical route toward noise-resilient long-range coherent quantum links.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.