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Get Free AccessTo help reduce the impact of geohazards, an innovative landslide early-warning technology based on an energy demodulation-based fiber optic sensing (FOS-LW for short) technology, is introduced in this paper. FOS-LW measures the energy change in a sensing fiber at the segment of micro-bending, which can be caused by landslide movements, and automatically raises an alarm as soon as the measured signal intensity in the fiber reaches a pre-set threshold. Based on the sensing of micro-bending losses in the fiber optics, a two-event sensing algorithm has been developed for the landslide early-warning. The feasibility of the FOS-LW technology is verified through laboratory simulation and field tests. The result shows that FOS-LW has some unique features such as the graded alarm, real-time responses, remote monitoring, low cost and passive optical network, and can be applied in the early-warning of landslides.
Xing Wang, Bin Shi, Guangqing Wei, Shenen Chen (2017). An Energy Demodulation Based Fiber Optic Sensing System for Landslide Early-Warning. , DOI: 10.20944/preprints201704.0100.v1.
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Type
Preprint
Year
2017
Authors
4
Datasets
0
Total Files
0
Language
English
DOI
10.20944/preprints201704.0100.v1
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