RVFL-Based Optical Fiber Intrusion Signal Recognition With Multi-Level Wavelet Decomposition as Feature

Yanping Wang , Dianjun Gong , Liping Pang , Dan Yang

Photonic Sensors ›› 2017, Vol. 8 ›› Issue (3) : 234 -241.

PDF
Photonic Sensors ›› 2017, Vol. 8 ›› Issue (3) : 234 -241. DOI: 10.1007/s13320-018-0496-7
Regular

RVFL-Based Optical Fiber Intrusion Signal Recognition With Multi-Level Wavelet Decomposition as Feature

Author information +
History +
PDF

Abstract

The optical fiber pre-warning system (OFPS) has been gradually considered as one of the important means for pipeline safety monitoring. Intrusion signal types are correctly identified which could reduce the cost of troubleshooting and maintenance of the pipeline. Most of the previous feature extraction methods in OFPS are usually quested from the view of time domain. However, in some cases, there is no distinguishing feature in the time domain. In the paper, firstly, the intrusion signal features of the running, digging, and pick mattock are extracted in the frequency domain by multi-level wavelet decomposition, that is, the intrusion signals are decomposed into five bands. Secondly, the average energy ratio of different frequency bands is obtained, which is considered as the feature of each intrusion type. Finally, the feature samples are sent into the random vector functional-link (RVFL) network for training to complete the classification and identification of the signals. Experimental results show that the algorithm can correctly distinguish the different intrusion signals and achieve higher recognition rate.

Keywords

OFPS / multi-level wavelet decomposition / optical fiber signal recognition / RVFL

Cite this article

Download citation ▾
Yanping Wang, Dianjun Gong, Liping Pang, Dan Yang. RVFL-Based Optical Fiber Intrusion Signal Recognition With Multi-Level Wavelet Decomposition as Feature. Photonic Sensors, 2017, 8(3): 234-241 DOI:10.1007/s13320-018-0496-7

登录浏览全文

4963

注册一个新账户 忘记密码

References

[1]

Lu W. Q., Liang W., Zhang L. B., Liu W.. A novel noise reduction method applied in negative pressure wave for pipeline leakage localization. Process Safety and Environmental Protection, 2016 104.

[2]

Jing K., Zou Z. H.. Time prediction model for pipeline leakage based on grey relational analysis. Physics Procedia, 2012, 25(2): 2019-2024.

[3]

Liang W., Lu L. L., Zhang L. B.. Coupling relations and early-warning for ‘equipment chain’ in long-distance pipeline. Mechanical Systems and Signal Processing, 2013 41.

[4]

Wang X., Ghidaoui M. S.. Identification of multiple leaks in pipeline: linearized model, maximum likelihood, and super-resolution localization. Mechanical Systems and Signal Processing, 2018, 107, 529-548.

[5]

Zadkarami M., Shahbazian M., Salahshoor K.. Pipeline leakage detection and isolation: an integrated approach of statistical and wavelet feature extraction with multi-layer perceptron neural network (MLPNN). Journal of Loss Prevention in the Process Industries, 2016, 43, 479-487.

[6]

Allwood G., Wild G., Hinckley S.. Optical fiber sensors in physical intrusion detection systems: a review. IEEE Sensors Journal, 2016, 16(14): 5497-5509.

[7]

Zhan Y., Yu Q., Wang K., Yang F., Kong Y., Zhao X.. A high performance distributed sensor system with multi-intrusions simultaneous detection capability based on phase sensitive OTDR. Opto-Electronics Review, 2015, 23(3): 187-194.

[8]

Shi Y., Feng H., An Y., Geng X., Zeng Z. M.. Research on wavelet analysis for pipeline pre-warning system based on phase-sensitive optical time domain reflectometry. in Proceeding of IEEE/ASME International Conference on Advanced Intelligent Mechatronics (AIM), 2014 1177-1182.

[9]

Qu H. Q., Zheng T., Bi F. K., Pang L. P.. A vibration detection method for optical fiber pre-warning system. IET Signal Processing, 2016, 10(6): 692-698.

[10]

Qiu Z. Z., Zheng T., Qu H. Q., Pang L. P.. A new detection method based on CFAR and DE for OFPS. Photonic Sensors, 2016, 6(3): 261-267.

[11]

Lu N., An B. W., Li Y. L.. Signal recognition algorithm of fiber-optic security system based on time-domain features. Transducer and Microsystem Technologies, 2017, 36(4): 150-152.

[12]

Zhu L., Zeng Z. M., Zhang J. C., Jin S. J.. Feature extraction of vibration signal detected by optical fiber along crude oil pipeline and forewarning system based on ICA. in Proceeding of International Workshop on Intelligent Systems and Applications, 2009 1-4.

[13]

Wu H. J., Wang Z. N., Peng F., Peng Z. P., Li X. Y., Wu Y., . Field test of a fully distributed fiber optic intrusion detection system for long-distance security monitoring of national borderline. International Conference on Optical Fiber Sensors International Society for Optics and Photonics, 2014, 9157, 901-904.

[14]

Klar A., Linker R.. Feasibility study of the automated detection and localization of underground tunnel excavation using Brillouin optical time domain reflectometer. SPIE, 2009, 7316(5): 433-443.

[15]

Lv Y. X., Sun S. X., Gu X. H.. Battlefield acoustic target classification and recognition based on EMD and power ratio. Journal of Vibration and Shock, 2008, 27(11): 51-55.

[16]

Lu Y., Han Z. K., Chen Y.. FFT narrow band filtering method based on energy-ratio pretreatment. Journal of Southeast University (Natural Science Edition), 2010, 40(5): 948-951.

AI Summary AI Mindmap
PDF

125

Accesses

0

Citation

Detail

Sections
Recommended

AI思维导图

/