AdaBoost-SCN algorithm for optical fiber vibration signal recognition

2019 ◽  
Vol 58 (21) ◽  
pp. 5612
Author(s):  
Hongquan Qu ◽  
Tingliang Feng ◽  
Yanping Wang ◽  
Yuan Zhang
2019 ◽  
Vol 48 (2) ◽  
pp. 206001
Author(s):  
熊兴隆 XIONG Xing-long ◽  
张琬童 ZHANG Wan-tong ◽  
冯磊 FENG Lei ◽  
李猛 LI Meng ◽  
马愈昭 MA Yu-zhao ◽  
...  

2019 ◽  
Vol 48 ◽  
pp. 270-277 ◽  
Author(s):  
Zhiyong Sheng ◽  
Zhiqiang Zeng ◽  
Hongquan Qu ◽  
Yuan Zhang

2013 ◽  
Vol 347-350 ◽  
pp. 743-747
Author(s):  
Hai Yan Xu ◽  
Zhuo Zhang ◽  
Xue Wu Zhang

Distributed optical fiber sensor can acquire the information of physical field along time and spatial continuous distribution. It plays an important role in long-distance oil and electricity transmission and security. In this paper, the author introduced the universal steps in triggering pattern recognition, which includes signal characteristics extracting by accurate endpoint detecting, templates establishing by training, and pattern matching. By training the samples acquired in the laboratory, three templates are established. And pattern matching had been done between templates and all the samples. The results show that, 87.5 percent of the samples are matched correctly with the triggering patterns they are belonging to.


Sensors ◽  
2019 ◽  
Vol 19 (15) ◽  
pp. 3293 ◽  
Author(s):  
Hongquan Qu ◽  
Tingliang Feng ◽  
Yuan Zhang ◽  
Yanping Wang

Optical fiber pre-warning systems (OFPS) based on Φ-OTDR are applied to many different scenarios such as oil and gas pipeline protection. The recognition of fiber vibration signals is one of the most important parts of this system. According to the characteristics of small sample set, we choose stochastic configuration network (SCN) for recognition. However, due to the interference of environmental and mechanical noise, the recognition effect of vibration signals will be affected. In order to study the effect of noise on signal recognition performance, we recognize noisy optical fiber vibration signals, which superimposed analog white Gaussian noise, white uniform noise, Rayleigh distributed noise, and exponentially distributed noise. Meanwhile, bootstrap sampling (bagging) and AdaBoost ensemble learning methods are combined with original SCN, and Bootstrap-SCN, AdaBoost-SCN, and AdaBoost-Bootstrap-SCN are proposed and compared for noisy signals recognition. Results show that: (1) the recognition rates of two classifiers combined with AdaBoost are higher than the other two methods over the entire noise range; (2) the recognition for noisy signals of AdaBoost-Bootstrap-SCN is better than other methods in recognition of noisy signals.


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