Lalam Nageswara, Bukka Sandeep, Bhatta Hari, Buric Michael, Ohodnicki Paul, Wright Ruishu
National Energy Technology Laboratory, Pittsburgh, PA, USA.
NETL Research Support Contractor, Pittsburgh, PA, USA.
Commun Eng. 2024 Aug 31;3(1):121. doi: 10.1038/s44172-024-00274-5.
The development of advanced distributed optical fiber sensing systems that are capable of performing accurate and spatially resolved multiparameter measurements is of great interest to a wide range of scientific and industrial applications. Here, we propose and experimentally demonstrate a wavelength diversity based advanced distributed optical fiber sensor system to accomplish multiparameter sensing while greatly enhancing measurement accuracy. A suite of deep neural network (DNN) algorithms are developed and verified for data denoising, rapid Brillouin frequency shift estimation, and vibration data event classification. As a proof-of-concept, we demonstrate the effectiveness of the proposed advanced wavelength diversity distributed fiber sensor system assisted by DNN for simultaneous, independent measurements of static strain, temperature, and acoustic vibrations over a 25 km long sensing fiber at 3 m spatial resolution. These results suggest the potential for an intelligent multiparameter monitoring system with enhanced performance in advanced structural health monitoring applications.
能够进行精确且具有空间分辨率的多参数测量的先进分布式光纤传感系统的发展,对于广泛的科学和工业应用而言具有极大的吸引力。在此,我们提出并通过实验证明了一种基于波长分集的先进分布式光纤传感器系统,以实现多参数传感,同时大幅提高测量精度。开发并验证了一套深度神经网络(DNN)算法,用于数据去噪、快速布里渊频移估计和振动数据事件分类。作为概念验证,我们展示了所提出的由DNN辅助的先进波长分集分布式光纤传感器系统在长达25公里的传感光纤上以3米空间分辨率同时、独立测量静态应变、温度和声振动的有效性。这些结果表明了在先进结构健康监测应用中具有增强性能的智能多参数监测系统的潜力。