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Incipient loose detection of hoops for pipeline based on ensemble empirical mode decomposition and multi-scale entropy and extreme learning machine
[摘要] Hoops are very important fittings in hydraulic pipeline, incipient loose detection of hoops will help to prevent hydraulic piping system from breaking down. Since the vibration signals of fluid pipe are non-stationary and of great complexity, multi-scale entropy(MSE), a method characterized by evaluating complexity and irregularity of time series on multiple scales, is used for extracting feature vectors from the vibration signals. In order to obtain components related to system characteristics, ensemble empirical mode decomposition(EEMD) is applied to reconstruct the original signals before the procedure of MSE. Extreme learning machine(ELM) is a new machine learning algorithm characterized by high accuracy and efficiency. In this paper, ELM is introduced as a classifier to identify the different conditions of hoops according to feature vectors extracted by EEMD and MSE algorithms. Thus a novel loose detection method combining with EEMD-MSE and ELM is put forward. The analysis and experimental results demonstrate that the proposed loose detection and feature extraction method for hydraulic pipeline is effective with high performance.
[发布日期]  [发布机构] School of Information Engineering, Wuhan University of Technology, Wuhan, Hubei, China^1;School of Mechanical and Electronic Engineering, Wuhan University of Technology, Wuhan, Hubei, China^2
[效力级别] 机械制造 [学科分类] 航空航天科学
[关键词] Detection methods;Ensemble empirical mode decomposition;Ensemble empirical mode decompositions (EEMD);Extracting features;Extreme learning machine;Feature extraction methods;Multi-scale entropies;System characteristics [时效性] 
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