dorsal/arxiv
View SchemaFault-tolerant Quantum Computation with Highly Verified Logical Cluster States
| Authors | Keisuke Fujii, Katsuji Yamamoto |
|---|---|
| Categories | |
| ArXiv ID | quant-ph/0611160 |
| URL | https://arxiv.org/abs/quant-ph/0611160 |
Abstract
We investigate a scheme of fault-tolerant quantum computation based on the cluster model. Logical qubits are encoded by a suitable code such as the Steane's 7-qubit code. Cluster states of logical qubits are prepared by post-selection through verification at high fidelity level, where the unsuccessful ones are discarded without recovery operation. Then, gate operations are implemented by transversal measurements on the prepared logical cluster states. The noise threshold is improved significantly by making the high fidelity preparation and transversal measurement. It is estimated to be about 3% by a numerical simulation.
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"abstract": "We investigate a scheme of fault-tolerant quantum computation based on the\ncluster model. Logical qubits are encoded by a suitable code such as the\nSteane\u0027s 7-qubit code. Cluster states of logical qubits are prepared by\npost-selection through verification at high fidelity level, where the\nunsuccessful ones are discarded without recovery operation. Then, gate\noperations are implemented by transversal measurements on the prepared logical\ncluster states. The noise threshold is improved significantly by making the\nhigh fidelity preparation and transversal measurement. It is estimated to be\nabout 3% by a numerical simulation.",
"arxiv_id": "quant-ph/0611160",
"authors": [
"Keisuke Fujii",
"Katsuji Yamamoto"
],
"categories": [
"quant-ph"
],
"title": "Fault-tolerant Quantum Computation with Highly Verified Logical Cluster States",
"url": "https://arxiv.org/abs/quant-ph/0611160"
},
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