| Literature DB >> 31757066 |
Wenbin Yu1,2,3, Zijia Xiong1, Zanqiang Dong4, Siyao Wang1, Jingya Li1, Gaoping Liu2, Alex X Liu3.
Abstract
Today's sensor networks need robustness, security and efficiency with a high level of assurance. Error correction is an effective communicational technique that plays a critical role in maintaining robustness in informational transmission. The general way to tackle this problem is by using forward error correction (FEC) between two communication parties. However, by applying zero-error coding one can assure information fidelity while signals are transmitted in sensor networks. In this study, we investigate zero-error coding via both classical and quantum channels, which consist of n obfuscated symbols such as Shannon's zero-error communication. As a contrast to the standard classical zero-error coding, which has a computational complexity of , a general approach is proposed herein to find zero-error codewords in the case of quantum channel. This method is based on a n-symbol obfuscation model and the matrix's linear transformation, whose complexity dramatically decreases to . According to a comparison with classical zero-error coding, the quantum zero-error capacity of the proposed method has obvious advantages over its classical counterpart, as the zero-error capacity equals the rank of the quantum coefficient matrix. In particular, the channel capacity can reach n when the rank of coefficient matrix is full in the n-symbol multilateral obfuscation quantum channel, which cannot be reached in the classical case. Considering previous methods such as low density parity check code (LDPC), our work can provide a means of error-free communication through some typical channels. Especially in the quantum case, zero-error coding can reach both a high coding efficiency and large channel capacity, which can improve the robustness of communication in sensor networks.Entities:
Keywords: communication robustness; error correction; quantum channel; sensor networks; zero-error coding
Year: 2019 PMID: 31757066 PMCID: PMC6928839 DOI: 10.3390/s19235071
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Classical channel.
Figure 2Flowchart of classical zero-error coding.
Figure 3Quantum coefficient channel.
Figure 4Flowchart of quantum zero-error coding based on linear transformation.
Figure 5(a) Classical pentagonal channel; (b) quantum pentagonal coefficient channel.
Figure 6(a) Classical triangular channel; (b) quantum triangular coefficient channel.
Figure 7(a) Classical five-symbol multilateral obfuscation channel; (b) quantum five-symbol multilateral obfuscation channel.
The channel capacity of zero-error coding and its low density parity check code (LDPC) counterpart.
| Channel Capacity C | Triangular Channel | Pentagon Channel | Five-Symbol Multilateral Obfuscation Channel |
|---|---|---|---|
| LDPC |
|
| 1.405 |
| Classical Zero-error Coding | 0 |
| 1 |
| Quantum Zero-error Coding |
|
| 2 |
Figure 8BER vs SNR in LDPC and zero-error coding cases according to channel capacity C.