期刊文献+

面向DVS振动信号识别率提升的特征选择算法研究

Research on feature selection algorithm for DVS vibration signalrecognition rate improvement
下载PDF
导出
摘要 分布式光纤振动传感(Distributed Optic-fiber Vibration Sensing, DVS)系统可对振动信号实现分布式测量,在实际应用中通常采用模式识别算法对各种振动事件进行识别,然而目前模式识别特征大都固定冗余,不能充分展现振动信号的特性,导致误报率高的问题。针对上述问题,搭建了一套直接探测结构的DVS系统样机,并提出了基于模拟退火算法和Fisher Score算法相结合的混合式特征选择方法。首先使用Fisher Score算法选取合适的特征初始集合,再将Fisher Score嵌入模拟退火算法的新解产生环节中,实现对入侵振动信号的特征组合整体效果较好的选择。通过实验对算法性能进行验证,结果表明:该算法可以剔除冗余入侵振动信号特征,拥有较快的收敛速度,使系统的识别率由80.23%提升至94.46%。 Distributed optic-fiber vibration sensing(DVS)system enables distributed measurement of vibration signals.Despite the prevalent utilization of pattern recognition algorithms in practical applications to discern various vibration events,extant pattern recognition features often exhibit fixity and redundancy,thereby inadequately capturing the nuanced characteristics of vibration signals,resulting in a pronounced false alarm rate challenge.This study presents a prototype of a direct detection structure DVS system devised to confront the issues above.Also,a hybrid feature selection methodology is proposed here,integrating the simulated annealing algorithm with the Fisher Score algorithm.Initially,the Fisher Score algorithm is employed to identify an apt initial feature set,subsequently integrating the Fisher Score into the new solution generation phase of the simulated annealing algorithm to optimize the overall efficacy of the feature amalgamation for intrusion vibration signals.Experimental validation of the algorithm underscores its capability to obviate redundant intrusion signal features,evince rapid convergence,and elevate the system's recognition rate from 80.23%to 94.46%.Objective The distributed fiber-optic vibration event recognition system comprises two key components of the distributed fiber-optic vibration sensing(DVS)system and the vibration event recognition module.This system is highly effective for locating vibration events and has garnered significant attention in applications such as perimeter security,pipeline leakage detection,and earthquake monitoring.In the studies on pattern recognition of intrusion vibration signals collected by DVS,it is essential to handle large volumes of high-dimensional feature vector data,where each component represents a specific characteristic of the data.However,existing pattern recognition features are often fixed and redundant,with some algorithms failing to address the core problem effectively,leading to a high false alarm rate.To enhance pattern recognition accuracy,it is crucial to eliminate irrelevant and redundant features from these high-dimensional vectors and identify the features critical to solving the problem.This article proposes a feature selection algorithm designed to improve the recognition rate of DVS vibration signals.Methods This study constructs a prototype of a distributed fiber-optic vibration sensing system(Fig.1)and introduces a hybrid feature selection method combining the simulated annealing algorithm with the Fisher Score algorithm(Fig.2).Initially,the Fisher Score algorithm is used to select an appropriate initial feature set.Subsequently,the Fisher Score is embedded into the new solution generation stage of the simulated annealing algorithm to optimize the feature combination for intrusion vibration signals.Results and Discussions The time-domain characteristics of four types of vibration signals—shear,tapping,shaking,and climbing—were analyzed(Fig.4-5,Tab.1).The algorithm optimization results for two sets of data each for cutting and tapping,as well as shaking and climbing,are presented(Tab.2).The relationship between the fitness values and iteration times of feature subsets selected by different methods on two datasets(Fig.6-7).A comparative analysis of the fitness values for different numbers of features revealed that the highest fitness value,0.9466,was achieved when selecting 10 features(Fig.8).The proposed method demonstrates significant advantages in feature selection,efficiently removing redundant features from the dataset.Conclusions To address the high false alarm rate in DVS systems used for perimeter security,pipeline leakage detection,and long-distance monitoring,this paper introduces a hybrid feature selection algorithm combining the simulated annealing and Fisher Score algorithms.Experiments on various vibration signals collected by DVS prototypes validate the algorithm.The maximum fitness values of different feature numbers were compared with traditional methods,demonstrating the proposed algorithm's superior performance and faster convergence in removing redundant features.This algorithm significantly improves the recognition rate of DVS systems,offering a valuable solution for reducing the false alarm rate of DVS vibration signals.
作者 马喆 李玮哲 张建忠 李健 王婷玉 和祥 杨滨远 张明江 MA Zhe;LI Weizhe;ZHANG Jianzhong;LI Jian;WANG Tingyu;HE Xiang;YANG Binyuan;ZHANG Mingjiang(College of Physics and Optoelectronic Engineering,Taiyuan University of Technology,Taiyuan 030024,China;Key Laboratory of Advanced Transducers and Intelligent Control System,Ministry of Education,Taiyuan University of Technology,Taiyuan 030024,China)
出处 《红外与激光工程》 EI CSCD 北大核心 2024年第8期228-238,共11页 Infrared and Laser Engineering
基金 国家重点研发计划项目(2023YFF0715700) 国家自然科学基金项目(62205237,62075153,62075151,62205234) 山西省基础研究计划(交控)联合资助项目(202303011222005) 山西省青年科学基金项目(20210302124396,202103021223042) 山西省重点研发计划项目(202102150101004)。
关键词 分布式光纤振动传感 特征提取 模拟退火算法 Fisher Score算法 distributed optic-fiber vibration sensing feature extraction simulated annealing algorithm Fisher Score algorithm
  • 相关文献

参考文献7

二级参考文献79

  • 1田艳琴,郭平,卢汉清.基于灰度共生矩阵的多波段遥感图像纹理特征的提取[J].计算机科学,2004,31(12):162-163. 被引量:30
  • 2徐宗本,高勇.遗传算法过早收敛现象的特征分析及其预防[J].中国科学(E辑),1996,26(4):364-375. 被引量:99
  • 3孙汝蛟,孙利民,孙智,淡丹辉,刘小会.一种新型光纤布喇格光栅振动传感器研究[J].光子学报,2007,36(1):63-67. 被引量:42
  • 4Hana M, Mcclure W F, Whitaker T B. Applying artificial neural networks II. Using near infrared data to classify tobacco types and identify native grown tobacco [J]. Journal of Near Infrared Spectroscopy, 1997, 5: 19-25.
  • 5Bylesjo M, Rantalainen M, Nicholson J K, et al. K-OPLS package: Kernel-based orthogonal projections to latent structures for prediction and interpretation in feature space [J]. BMC Bioinformaties, 2008, 9(1): 106-112.
  • 6Boaz Nadler, Coifman Ronald R. The prediction error inCLS and PLS: the importance of feature selection prior to multivariate calibration [J]. Journal of Chemometrics, 2005, 19(2): 107-118.
  • 7Leo Breiman. Random forests [J]. Machine Learning, 2001, 45(1): 5-32.
  • 8Statnikov A, Wang L, Aliferis C F. A comprehensive comparison of random forests and support vector machines for microarray based cancer classification [J]. BMC Bioinformatics, 2008, 9: 319-323.
  • 9Menze B H, Petrich W, Hamprecht F A. Multivariate feature selection and hierarchical classification for infrared spectroscopy: serum-based detection of bovine spongiform encephalopathy [J]. Analytical and Bioanaytical Chemistry, 2007, 387(5): 1801-1807.
  • 10Efron B, Tibshirani R J. Bootstrap measures for standard errors, confidence interval and other measures of statistical accuracy[J]. Statistical Science, 1986, 1(1): 54-74.

共引文献88

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部