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Trapped Ion Quantum Computing
Channel-Constrained Markovian Quantum Diffusion Model from Open System Perspective
arXiv
Authors: Qin-Sheng Zhu, Geng Chen, Lian-Hui Yu, Xiaodong Xing, Xiao-Yu Li
Year
2025
Paper ID
17107
Status
Preprint
Abstract Read
~2 min
Abstract Words
164
Citations
N/A
Abstract
We present a channel-constrained Markovian quantum diffusion (CCMQD) model that prepares quantum states by rigorously framing the generative process within the dynamics of open quantum systems. Our model interprets the forward diffusion process as natural decoherence using quantum master equations, whereas the reverse denoising is achieved by learning inverse quantum channels. Our core innovation is a comprehensive channel-constrained framework: we model the diffusion and denoising steps as quantum channels defined by Kraus operators, ensure their physical validity through optimization on the Stiefel manifold, and introduce tailored training strategies and loss functions that leverage this constrained structure for high-fidelity state reconstruction. Experimental validation on systems ranging from single qubits to entangled states 7 -qubits demonstrates high-fidelity state generation, achieving fidelities exceeding 0.998 under both random and depolarizing noise conditions. This work confirms that quantum diffusion can be characterized as a controlled Markov evolution, demonstrating that environmental interactions are not limited to being a source of decoherence but can also be utilized to achieve high-fidelity quantum state synthesis.
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- This paper contributes to the Trapped-Ion Quantum Computing research area in the Quantum Articles archive.
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- We present a channel-constrained Markovian quantum diffusion (CCMQD) model that prepares quantum states by rigorously framing the generative process within the dynamics of open...
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