论文标题
反射纤维故障检测和表征使用长期记忆
Reflective Fiber Faults Detection and Characterization Using Long-Short-Term Memory
论文作者
论文摘要
为了减少操作和维护费用(OPEX)并确保光网络的生存能力,光网络运营商需要及时检测和诊断故障,并以高度准确性。随着遥测技术和数据分析技术的快速发展,数据驱动的方法利用遥测数据来解决故障诊断问题,由于它们的快速实施和部署而变得越来越流行。 In this paper, we propose a novel multi-task learning model based on long short-term memory (LSTM) to detect, locate, and estimate the reflectance of fiber reflective faults (events) including the connectors and the mechanical splices by extracting insights from monitored data obtained by the optical time domain reflectometry (OTDR) principle commonly used for troubleshooting of fiber optic cables or links.实验结果证明了所提出的方法:(i)即使对于低SNR值,也可以在短时间测量时间内实现良好的检测能力和高定位精度; (ii)通常超过常规使用的技术。
To reduce operation-and-maintenance expenses (OPEX) and to ensure optical network survivability, optical network operators need to detect and diagnose faults in a timely manner and with high accuracy. With the rapid advancement of telemetry technology and data analysis techniques, data-driven approaches leveraging telemetry data to tackle the fault diagnosis problem have been gaining popularity due to their quick implementation and deployment. In this paper, we propose a novel multi-task learning model based on long short-term memory (LSTM) to detect, locate, and estimate the reflectance of fiber reflective faults (events) including the connectors and the mechanical splices by extracting insights from monitored data obtained by the optical time domain reflectometry (OTDR) principle commonly used for troubleshooting of fiber optic cables or links. The experimental results prove that the proposed method: (i) achieves a good detection capability and high localization accuracy within short measurement time even for low SNR values; and (ii) outperforms conventionally employed techniques.