Photonic Chirality for Braiding and Readout of Non-Abelian Anyons
TLDR
A new cavity-based scheme uses photonic chirality to control braiding and read out non-Abelian anyons in fractional quantum Hall systems.
Key contributions
- Proposes a cavity-based scheme using photonic chirality to control anyon braiding.
- Counter-propagating cavity modes create a rotating pinning landscape for anyons.
- Maps the anyon braid response onto cavity intermode coherence for readout.
- Offers a robust, cavity-based readout method, avoiding fragile electronic interference.
Why it matters
This paper introduces a novel, robust method to manipulate and detect non-Abelian anyons, crucial for topological quantum computing. Leveraging photonic chirality, it offers a more stable readout mechanism, avoiding fragile electronic interference. This advancement could significantly accelerate fault-tolerant quantum technologies.
Original Abstract
We propose a cavity-based scheme that uses photonic chirality to control braiding and read out non-Abelian anyons in a fractional quantum Hall platform. Counter-propagating cavity modes interfere with a classical reference tone to create a rotating pinning landscape whose direction is set by photon circulation, so that opposite photonic branches drive opposite anyon loops. This realizes a branch-conditioned braid operation and maps the resulting braid response onto cavity intermode coherence. We derive the rotating pinning term and the readout relation at the effective-theory level, identify an operating window set by subgap driving, adiabatic transport, localization, and cavity coherence, and provide phenomenological diagnostics of transport locking. In the minimal four-anyon Ising realization, the leading signal reduces to a calibrated phase; more generally, the same readout structure becomes state dependent when the relative braid operator is non-scalar. The scheme provides a cavity route to braid-sensitive readout of non-Abelian anyons without relying on fragile electronic interference fringes.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.