Information dynamics in decohered quantum memory with repeated syndrome measurements: a dual approach
- URL: http://arxiv.org/abs/2407.07882v1
- Date: Wed, 10 Jul 2024 17:48:54 GMT
- Title: Information dynamics in decohered quantum memory with repeated syndrome measurements: a dual approach
- Authors: Jacob Hauser, Yimu Bao, Shengqi Sang, Ali Lavasani, Utkarsh Agrawal, Matthew P. A. Fisher,
- Abstract summary: We intrinsically characterize the information dynamics in a quantum memory under repeated measurements.
We develop a $(d+1)$-dimensional statistical mechanics model for the information-theoretic diagnostics.
- Score: 1.1215232994550846
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Measurements can detect errors in a decohered quantum memory allowing active error correction to increase the memory time. Previous understanding of this mechanism has focused on evaluating the performance of error correction algorithms based on measurement results. In this work, we instead intrinsically characterize the information dynamics in a quantum memory under repeated measurements, using coherent information and relative entropy. We consider the dynamics of a $d$-dimensional stabilizer code subject to Pauli errors and noisy stabilizer measurements and develop a $(d+1)$-dimensional statistical mechanics model for the information-theoretic diagnostics. Our model is dual to the model previously obtained for the optimal decoding algorithm, and the potential decoding transition in the quantum memory again manifests as a thermal phase transition in the statistical mechanics model. We explicitly derive the model and study the phase transition in information encoding in three examples: surface codes, repetition codes, and the XZZX code.
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