Soto Marcelo A, Ramírez Jaime A, Thévenaz Luc
EPFL Swiss Federal Institute of Technology, Group for Fibre Optics,, SCI-STI-LT, Station 11, CH-1015 Lausanne, Switzerland.
Nat Commun. 2016 Mar 1;7:10870. doi: 10.1038/ncomms10870.
Distributed optical fibre sensors possess the unique capability of measuring the spatial and temporal map of environmental quantities that can be of great interest for several field applications. Although existing methods for performance enhancement have enabled important progresses in the field, they do not take full advantage of all information present in the measured data, still giving room for substantial improvement over the state-of-the-art. Here we propose and experimentally demonstrate an approach for performance enhancement that exploits the high level of similitude and redundancy contained on the multidimensional information measured by distributed fibre sensors. Exploiting conventional image and video processing, an unprecedented boost in signal-to-noise ratio and measurement contrast is experimentally demonstrated. The method can be applied to any white-noise-limited distributed fibre sensor and can remarkably provide a 100-fold improvement in the sensor performance with no hardware modification.
分布式光纤传感器具有独特的能力,能够测量环境量的空间和时间分布图,这对于多个领域的应用可能具有重大意义。尽管现有的性能增强方法已在该领域取得了重要进展,但它们并未充分利用测量数据中存在的所有信息,与当前的技术水平相比仍有很大的改进空间。在此,我们提出并通过实验证明了一种性能增强方法,该方法利用分布式光纤传感器测量的多维信息中所包含的高度相似性和冗余性。通过利用传统的图像和视频处理技术,实验证明了信噪比和测量对比度得到了前所未有的提升。该方法可应用于任何受白噪声限制的分布式光纤传感器,并且无需对硬件进行修改就能显著提高传感器性能100倍。