论文标题

分布式声感应的压缩域振动检测和分类

Compressed domain vibration detection and classification for distributed acoustic sensing

论文作者

Shen, Xingliang, Wu, Huan, Zhu, Kun, Li, Yujia, Zheng, Hua, Li, Jialong, Shao, Liyang, Shum, Perry Ping, Lu, Chao

论文摘要

分布式声传感(DAS)是一种新型的启示技术,可以将现有的光纤网络转换为分布式的声传感器。但是,它面临传输,存储和处理大量数据流的挑战,这些数据流比从点传感器收集的数据大数量级。 DAS生成的密集数据与读写速度有限的现代计算系统之间的差距对许多应用程序施加限制。压缩传感(CS)是一种革命性的信号采集方法,它允许以比Nyquist-Shannon定理所要求的样本明显少的样品获取和重建信号。尽管在采样阶段的数据大小大大减少了,但是压缩数据的重建是时间和计算的消耗。为了应对这一挑战,我们建议将特征从Nyquist域的提取器映射到压缩域,因此可以在压缩域中直接实现振动检测和分类。测得的结果表明,我们的框架可用于将传输的数据大小降低70%,而在5 km感应纤维上达到99.4%的真实正率(TPR)和0.04%的假阳性率(TPR),而在5级分类任务上的分类精度为95.05%。

Distributed acoustic sensing (DAS) is a novel enabling technology that can turn existing fibre optic networks to distributed acoustic sensors. However, it faces the challenges of transmitting, storing, and processing massive streams of data which are orders of magnitude larger than that collected from point sensors. The gap between intensive data generated by DAS and modern computing system with limited reading/writing speed and storage capacity imposes restrictions on many applications. Compressive sensing (CS) is a revolutionary signal acquisition method that allows a signal to be acquired and reconstructed with significantly fewer samples than that required by Nyquist-Shannon theorem. Though the data size is greatly reduced in the sampling stage, the reconstruction of the compressed data is however time and computation consuming. To address this challenge, we propose to map the feature extractor from Nyquist-domain to compressed-domain and therefore vibration detection and classification can be directly implemented in compressed-domain. The measured results show that our framework can be used to reduce the transmitted data size by 70% while achieves 99.4% true positive rate (TPR) and 0.04% false positive rate (TPR) along 5 km sensing fibre and 95.05% classification accuracy on a 5-class classification task.

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