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Morphology Similarity Distance for Bearing Fault Diagnosis Based on Multi-Scale Permutation Entropy 被引量:3
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作者 Jinbao Zhang Yongqiang Zhao +1 位作者 Lingxian Kong Ming Liu 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2020年第1期1-9,共9页
Bearings are crucial components in rotating machines,which have direct effects on industrial productivity and safety.To fast and accurately identify the operating condition of bearings,a novel method based on multi⁃sc... Bearings are crucial components in rotating machines,which have direct effects on industrial productivity and safety.To fast and accurately identify the operating condition of bearings,a novel method based on multi⁃scale permutation entropy(MPE)and morphology similarity distance(MSD)is proposed in this paper.Firstly,the MPE values of the original signals were calculated to characterize the complexity in different scales and they constructed feature vectors after normalization.Then,the MSD was employed to measure the distance among test samples from different fault types and the reference samples,and achieved classification with the minimum MSD.Finally,the proposed method was verified with two experiments concerning artificially seeded damage bearings and run⁃to⁃failure bearings,respectively.Different categories were considered for the two experiments and high classification accuracies were obtained.The experimental results indicate that the proposed method is effective and feasible in bearing fault diagnosis. 展开更多
关键词 bearing fault diagnosis multi⁃scale permutation entropy morphology similarity distance
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Microseismic signal denoising by combining variational mode decomposition with permutation entropy 被引量:8
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作者 Zhang Xing-Li Cao Lian-Yue +2 位作者 Chen Yan Jia Rui-Sheng Lu Xin-Ming 《Applied Geophysics》 SCIE CSCD 2022年第1期65-80,144,145,共18页
Remarkable progress has been achieved on microseismic signal denoising in recent years,which is the basic component for rock-burst detection.However,its denoising effectiveness remains unsatisfactory.To extract the ef... Remarkable progress has been achieved on microseismic signal denoising in recent years,which is the basic component for rock-burst detection.However,its denoising effectiveness remains unsatisfactory.To extract the effective microseismic signal from polluted noisy signals,a novel microseismic signal denoising method that combines the variational mode decomposition(VMD)and permutation entropy(PE),which we denote as VMD–PE,is proposed in this paper.VMD is a recently introduced technique for adaptive signal decomposition,where K is an important decomposing parameter that determines the number of modes.VMD provides a predictable eff ect on the nature of detected modes.In this work,we present a method that addresses the problem of selecting an appropriate K value by constructing a simulation signal whose spectrum is similar to that of a mine microseismic signal and apply this value to the VMD–PE method.In addition,PE is developed to identify the relevant effective microseismic signal modes,which are reconstructed to realize signal filtering.The experimental results show that the VMD–PE method remarkably outperforms the empirical mode decomposition(EMD)–VMD filtering and detrended fl uctuation analysis(DFA)–VMD denoising methods of the simulated and real microseismic signals.We expect that this novel method can inspire and help evaluate new ideas in this field. 展开更多
关键词 DENOISING Microseismic signal permutation entropy Variational mode decomposition
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Identification of denatured and normal biological tissues based on compressed sensing and refined composite multi-scale fuzzy entropy during high intensity focused ultrasound treatment 被引量:4
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作者 Shang-Qu Yan Han Zhang +2 位作者 Bei Liu Hao Tang Sheng-You Qian 《Chinese Physics B》 SCIE EI CAS CSCD 2021年第2期601-607,共7页
In high intensity focused ultrasound(HIFU)treatment,it is crucial to accurately identify denatured and normal biological tissues.In this paper,a novel method based on compressed sensing(CS)and refined composite multi-... In high intensity focused ultrasound(HIFU)treatment,it is crucial to accurately identify denatured and normal biological tissues.In this paper,a novel method based on compressed sensing(CS)and refined composite multi-scale fuzzy entropy(RCMFE)is proposed.First,CS is used to denoise the HIFU echo signals.Then the multi-scale fuzzy entropy(MFE)and RCMFE of the denoised HIFU echo signals are calculated.This study analyzed 90 cases of HIFU echo signals,including 45 cases in normal status and 45 cases in denatured status,and the results show that although both MFE and RCMFE can be used to identify denatured tissues,the intra-class distance of RCMFE on each scale factor is smaller than MFE,and the inter-class distance is larger than MFE.Compared with MFE,RCMFE can calculate the complexity of the signal more accurately and improve the stability,compactness,and separability.When RCMFE is selected as the characteristic parameter,the RCMFE difference between denatured and normal biological tissues is more evident than that of MFE,which helps doctors evaluate the treatment effect more accurately.When the scale factor is selected as 16,the best distinguishing effect can be obtained. 展开更多
关键词 compressed sensing high intensity focused ultrasound(HIFU)echo signal multi-scale fuzzy entropy refined composite multi-scale fuzzy entropy
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Radar emitter signal recognition based on multi-scale wavelet entropy and feature weighting 被引量:16
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作者 李一兵 葛娟 +1 位作者 林云 叶方 《Journal of Central South University》 SCIE EI CAS 2014年第11期4254-4260,共7页
In modern electromagnetic environment, radar emitter signal recognition is an important research topic. On the basis of multi-resolution wavelet analysis, an adaptive radar emitter signal recognition method based on m... In modern electromagnetic environment, radar emitter signal recognition is an important research topic. On the basis of multi-resolution wavelet analysis, an adaptive radar emitter signal recognition method based on multi-scale wavelet entropy feature extraction and feature weighting was proposed. With the only priori knowledge of signal to noise ratio(SNR), the method of extracting multi-scale wavelet entropy features of wavelet coefficients from different received signals were combined with calculating uneven weight factor and stability weight factor of the extracted multi-dimensional characteristics. Radar emitter signals of different modulation types and different parameters modulated were recognized through feature weighting and feature fusion. Theoretical analysis and simulation results show that the presented algorithm has a high recognition rate. Additionally, when the SNR is greater than-4 d B, the correct recognition rate is higher than 93%. Hence, the proposed algorithm has great application value. 展开更多
关键词 emitter recognition multi-scale wavelet entropy feature weighting uneven weight factor stability weight factor
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Weak Fault Feature Extraction of the Rotating Machinery Using Flexible Analytic Wavelet Transform and Nonlinear Quantum Permutation Entropy 被引量:1
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作者 Lili Bai Wenhui Li +3 位作者 He Ren Feng Li TaoYan Lirong Chen 《Computers, Materials & Continua》 SCIE EI 2024年第6期4513-4531,共19页
Addressing the challenges posed by the nonlinear and non-stationary vibrations in rotating machinery,where weak fault characteristic signals hinder accurate fault state representation,we propose a novel feature extrac... Addressing the challenges posed by the nonlinear and non-stationary vibrations in rotating machinery,where weak fault characteristic signals hinder accurate fault state representation,we propose a novel feature extraction method that combines the Flexible Analytic Wavelet Transform(FAWT)with Nonlinear Quantum Permutation Entropy.FAWT,leveraging fractional orders and arbitrary scaling and translation factors,exhibits superior translational invariance and adjustable fundamental oscillatory characteristics.This flexibility enables FAWT to provide well-suited wavelet shapes,effectively matching subtle fault components and avoiding performance degradation associated with fixed frequency partitioning and low-oscillation bases in detecting weak faults.In our approach,gearbox vibration signals undergo FAWT to obtain sub-bands.Quantum theory is then introduced into permutation entropy to propose Nonlinear Quantum Permutation Entropy,a feature that more accurately characterizes the operational state of vibration simulation signals.The nonlinear quantum permutation entropy extracted from sub-bands is utilized to characterize the operating state of rotating machinery.A comprehensive analysis of vibration signals from rolling bearings and gearboxes validates the feasibility of the proposed method.Comparative assessments with parameters derived from traditional permutation entropy,sample entropy,wavelet transform(WT),and empirical mode decomposition(EMD)underscore the superior effectiveness of this approach in fault detection and classification for rotating machinery. 展开更多
关键词 Rotating machinery quantum theory nonlinear quantum permutation entropy Flexible Analytic Wavelet Transform(FAWT) feature extraction
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Short-Term Prediction of Photovoltaic Power Generation Based on LMD Permutation Entropy and Singular Spectrum Analysis 被引量:1
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作者 Wenchao Ma 《Energy Engineering》 EI 2023年第7期1685-1699,共15页
The power output state of photovoltaic power generation is affected by the earth’s rotation and solar radiation intensity.On the one hand,its output sequence has daily periodicity;on the other hand,it has discrete ra... The power output state of photovoltaic power generation is affected by the earth’s rotation and solar radiation intensity.On the one hand,its output sequence has daily periodicity;on the other hand,it has discrete randomness.With the development of new energy economy,the proportion of photovoltaic energy increased accordingly.In order to solve the problem of improving the energy conversion efficiency in the grid-connected optical network and ensure the stability of photovoltaic power generation,this paper proposes the short-termprediction of photovoltaic power generation based on the improvedmulti-scale permutation entropy,localmean decomposition and singular spectrum analysis algorithm.Firstly,taking the power output per unit day as the research object,the multi-scale permutation entropy is used to calculate the eigenvectors under different weather conditions,and the cluster analysis is used to reconstruct the historical power generation under typical weather rainy and snowy,sunny,abrupt,cloudy.Then,local mean decomposition(LMD)is used to decompose the output sequence,so as to extract more detail components of the reconstructed output sequence.Finally,combined with the weather forecast of the Meteorological Bureau for the next day,the singular spectrumanalysis algorithm is used to predict the photovoltaic classification of the recombination decomposition sequence under typical weather.Through the verification and analysis of examples,the hierarchical prediction experiments of reconstructed and non-reconstructed output sequences are compared.The results show that the algorithm proposed in this paper is effective in realizing the short-term prediction of photovoltaic generator,and has the advantages of simple structure and high prediction accuracy. 展开更多
关键词 Photovoltaic power generation short term forecast multiscale permutation entropy local mean decomposition singular spectrum analysis
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The Study of Image Segmentation Based on the Combination of the Wavelet Multi-scale Edge Detection and the Entropy Iterative Threshold Selection 被引量:3
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作者 ZHANG Qian HE Jian-feng +3 位作者 MA Lei PAN Li-peng LIU Jun-qing CHEN Hong-lei 《Chinese Journal of Biomedical Engineering(English Edition)》 2013年第4期154-160,共7页
This paper proposes an image segmentation method based on the combination of the wavelet multi-scale edge detection and the entropy iterative threshold selection.Image for segmentation is divided into two parts by hig... This paper proposes an image segmentation method based on the combination of the wavelet multi-scale edge detection and the entropy iterative threshold selection.Image for segmentation is divided into two parts by high- and low-frequency.In the high-frequency part the wavelet multiscale was used for the edge detection,and the low-frequency part conducted on segmentation using the entropy iterative threshold selection method.Through the consideration of the image edge and region,a CT image of the thorax was chosen to test the proposed method for the segmentation of the lungs.Experimental results show that the method is efficient to segment the interesting region of an image compared with conventional methods. 展开更多
关键词 wavelet multi-scale entropy iterative threshold lung images
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INVESTIGATION OF THE SPATIAL AND TEMPORAL DISTRIBUTION OF EXTREME HIGH TEMPERATURE IN CHINA WITH DETRENDED FLUCTUATION AND PERMUTATION ENTROPY
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作者 尹继福 郑有飞 +2 位作者 吴荣军 傅颖 王维 《Journal of Tropical Meteorology》 SCIE 2013年第4期349-356,共8页
With temperatures increasing as a result of global warming,extreme high temperatures are becoming more intense and more frequent on larger scale during summer in China.In recent years,a variety of researches have exam... With temperatures increasing as a result of global warming,extreme high temperatures are becoming more intense and more frequent on larger scale during summer in China.In recent years,a variety of researches have examined the high temperature distribution in China.However,it hardly considers the variation of temperature data and systems when defining the threshold of extreme high temperature.In order to discern the spatio-temporal distribution of extreme heat in China,we examined the daily maximum temperature data of 83 observation stations in China from 1950 to 2008.The objective of this study was to understand the distribution characteristics of extreme high temperature events defined by Detrended Fluctuation Analysis(DFA).The statistical methods of Permutation Entropy(PE)were also used in this study to analyze the temporal distribution.The results showed that the frequency of extreme high temperature events in China presented 3 periods of 7,10—13 and 16—20 years,respectively.The abrupt changes generally happened in the 1960s,the end of 1970s and early 1980s.It was also found that the maximum frequency occurred in the early 1950s,and the frequency decreased sharply until the late 1980s when an evidently increasing trend emerged.Furthermore,the annual averaged frequency of extreme high temperature events reveals a decreasing-increasing-decreasing trend from southwest to northeast China,but an increasing-decreasing trend from southeast to northwest China.And the frequency was higher in southern region than that in northern region.Besides,the maximum and minimum of frequencies were relatively concentrated spatially.Our results also shed light on the reasons for the periods and abrupt changes of the frequency of extreme high temperature events in China. 展开更多
关键词 EXTREME high temperature EVENTS detrended FLUCTUATION analysis permutation entropy spatial and TEMPORAL distribution
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Adaptive Bearing Fault Diagnosis based on Wavelet Packet Decomposition and LMD Permutation Entropy 被引量:1
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作者 WANG Ming-yue MIAO Bing-rong YUAN Cheng-biao 《International Journal of Plant Engineering and Management》 2016年第4期202-216,共15页
Bearing fault signal is nonlinear and non-stationary, therefore proposed a fault feature extraction method based on wavelet packet decomposition (WPD) and local mean decomposition (LMD) permutation entropy, which ... Bearing fault signal is nonlinear and non-stationary, therefore proposed a fault feature extraction method based on wavelet packet decomposition (WPD) and local mean decomposition (LMD) permutation entropy, which is based on the support vector machine (SVM) as the feature vector pattern recognition device Firstly, the wavelet packet analysis method is used to denoise the original vibration signal, and the frequency band division and signal reconstruction are carried out according to the characteristic frequency. Then the decomposition of the reconstructed signal is decomposed into a number of product functions (PE) by the local mean decomposition (LMD) , and the permutation entropy of the PF component which contains the main fault information is calculated to realize the feature quantization of the PF component. Finally, the entropy feature vector input multi-classification SVM, which is used to determine the type of fault and fault degree of bearing The experimental results show that the recognition rate of rolling bearing fault diagnosis is 95%. Comparing with other methods, the present this method can effectively extract the features of bearing fault and has a higher recognition accuracy 展开更多
关键词 fault diagnosis wavelet packet decomposition WPD local mean decomposition LMD permutation entropy support vector machine (SVM)
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Multi-scale complexity entropy causality plane: An intrinsic measure for indicating two-phase flow structures
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作者 窦富祥 金宁德 +2 位作者 樊春玲 高忠科 孙斌 《Chinese Physics B》 SCIE EI CAS CSCD 2014年第12期85-96,共12页
We extend the complexity entropy causality plane(CECP) to propose a multi-scale complexity entropy causality plane(MS-CECP) and further use the proposed method to discriminate the deterministic characteristics of ... We extend the complexity entropy causality plane(CECP) to propose a multi-scale complexity entropy causality plane(MS-CECP) and further use the proposed method to discriminate the deterministic characteristics of different oil-in-water flows. We first take several typical time series for example to investigate the characteristic of the MS-CECP and find that the MS-CECP not only describes the continuous loss of dynamical structure with the increase of scale, but also reflects the determinacy of the system. Then we calculate the MS-CECP for the conductance fluctuating signals measured from oil–water two-phase flow loop test facility. The results indicate that the MS-CECP could be an intrinsic measure for indicating oil-in-water two-phase flow structures. 展开更多
关键词 oil–water two-phase flow fluid dynamics complexity entropy multi-scale
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Cloud Resource Integrated Prediction Model Based on Variational Modal Decomposition-Permutation Entropy and LSTM
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作者 Xinfei Li Xiaolan Xie +1 位作者 Yigang Tang Qiang Guo 《Computer Systems Science & Engineering》 SCIE EI 2023年第11期2707-2724,共18页
Predicting the usage of container cloud resources has always been an important and challenging problem in improving the performance of cloud resource clusters.We proposed an integrated prediction method of stacking co... Predicting the usage of container cloud resources has always been an important and challenging problem in improving the performance of cloud resource clusters.We proposed an integrated prediction method of stacking container cloud resources based on variational modal decomposition(VMD)-Permutation entropy(PE)and long short-term memory(LSTM)neural network to solve the prediction difficulties caused by the non-stationarity and volatility of resource data.The variational modal decomposition algorithm decomposes the time series data of cloud resources to obtain intrinsic mode function and residual components,which solves the signal decomposition algorithm’s end-effect and modal confusion problems.The permutation entropy is used to evaluate the complexity of the intrinsic mode function,and the reconstruction based on similar entropy and low complexity is used to reduce the difficulty of modeling.Finally,we use the LSTM and stacking fusion models to predict and superimpose;the stacking integration model integrates Gradient boosting regression(GBR),Kernel ridge regression(KRR),and Elastic net regression(ENet)as primary learners,and the secondary learner adopts the kernel ridge regression method with solid generalization ability.The Amazon public data set experiment shows that compared with Holt-winters,LSTM,and Neuralprophet models,we can see that the optimization range of multiple evaluation indicators is 0.338∼1.913,0.057∼0.940,0.000∼0.017 and 1.038∼8.481 in root means square error(RMSE),mean absolute error(MAE),mean absolute percentage error(MAPE)and variance(VAR),showing its stability and better prediction accuracy. 展开更多
关键词 Cloud resource prediction variational modal decomposition permutation entropy long and short-term neural network stacking integration
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Fault diagnosis of rolling bearing based on two-dimensional composite multi-scale ensemble Gramian dispersion entropy
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作者 Wenqing Ding Jinde Zheng +3 位作者 Jianghong Li Haiyang Pan Jian Cheng Jinyu Tong 《Chinese Journal of Mechanical Engineering》 2026年第1期125-144,共20页
One-dimensional ensemble dispersion entropy(EDE1D)is an effective nonlinear dynamic analysis method for complexity measurement of time series.However,it is only restricted to assessing the complexity of one-di-mension... One-dimensional ensemble dispersion entropy(EDE1D)is an effective nonlinear dynamic analysis method for complexity measurement of time series.However,it is only restricted to assessing the complexity of one-di-mensional time series(TS1d)with the extracted complexity features only at a single scale.Aiming at these problems,a new nonlinear dynamic analysis method termed two-dimensional composite multi-scale ensemble Gramian dispersion entropy(CMEGDE_(2D))is proposed in this paper.First,the TS_(1D) is transformed into a two-dimensional image(I_(2D))by using Gramian angular fields(GAF)with more internal data structures and geometri features,which preserve the global characteristics and time dependence of vibration signals.Second,the I2D is analyzed at multiple scales through the composite coarse-graining method,which overcomes the limitation of a single scale and provides greater stability compared to traditional coarse-graining methods.Subsequently,a new fault diagnosis method of rolling bearing is proposed based on the proposed CMEGDE_(2D) for fault feature ex-traction and the chicken swarm algorithm optimized support vector machine(CsO-SvM)for fault pattern identification.The simulation signals and two data sets of rolling bearings are utilized to verify the effectiveness of the proposed fault diagnosis method.The results demonstrate that the proposed method has stronger dis-crimination ability,higher fault diagnosis accuracy and better stability than the other compared methods. 展开更多
关键词 Composite multi-scale ensemble Gramian dispersion entropy Dispersion entropy Fault diagnosis Rolling bearing Feature extraction
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基于ICEEMDAN和小波包阈值的滚动轴承故障特征分析
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作者 李鑫 石维喜 +3 位作者 蔡景 左洪福 周恒康 羊玢 《振动.测试与诊断》 北大核心 2026年第1期154-162,222,共10页
为了解决滚动轴承故障诊断过程中由于环境噪声干扰所导致的故障分类准确性较低的问题,提出一种基于改进型完全自适应噪声集合经验模态分解(improved complete ensemble empirical mode decomposition with adaptive noise,简称ICEEMDAN... 为了解决滚动轴承故障诊断过程中由于环境噪声干扰所导致的故障分类准确性较低的问题,提出一种基于改进型完全自适应噪声集合经验模态分解(improved complete ensemble empirical mode decomposition with adaptive noise,简称ICEEMDAN)与小波包阈值去噪相结合的多阶段处理的轴承故障诊断方法。首先,对滚动轴承的原始振动信号应用ICEEMDAN方法将其分解为不同分量;其次,基于分解结果构建相关系数-多尺度排列熵(multi-scale permutation entropy,简称MPE)筛选准则以划分高噪、低噪分量;然后,利用小波包阈值抑制高噪分量中的背景噪声,并与低噪分量进行重构;最后,对重构信号实施包络解调,提取出蕴含关键故障信息的特征信号,并建立故障特征能量图,实现对轴承故障类型的识别。为了验证所提出方法的有效性,分别采用滚动轴承外圈故障仿真数据、凯斯西储大学深沟球轴承实验台的故障数据和某型航空发动机三支点轴承试验平台的试验数据开展试验验证。试验结果表明,所提方法能够在复杂工况下准确识别滚动轴承的故障模式,对滚动轴承的智能运维具有重要的理论意义和工程实用价值。 展开更多
关键词 滚动轴承 小波包阈值 多尺度排列熵 包络谱 故障能量
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基于优化VMD和ELM的行星齿轮箱故障诊断方法研究
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作者 杨荣坤 姜宏 章翔峰 《机械传动》 北大核心 2026年第3期172-178,共7页
【目的】针对行星齿轮箱结构复杂导致振动信号故障特征提取困难,且传统处理方法高度依赖专业经验的问题,提出一种融合白鲸优化(Beluga Whale Optimization,BWO)算法优化变分模态分解(Variational Mode Decomposition,VMD)、多尺度排列熵... 【目的】针对行星齿轮箱结构复杂导致振动信号故障特征提取困难,且传统处理方法高度依赖专业经验的问题,提出一种融合白鲸优化(Beluga Whale Optimization,BWO)算法优化变分模态分解(Variational Mode Decomposition,VMD)、多尺度排列熵(Multi‑scale Permutation Entropy,MPE)与极限学习机(Extreme Learning Machine,ELM)的故障诊断新方法。【方法】首先,利用BWO算法以包络熵最小为目标函数,对VMD的分解层数K、惩罚因子α进行了组合寻优,实现了信号的自适应分解;其次,利用MPE算法提取了各本征模态函数(Intrinsic Mode Function,IMF)分量的非线性特征,构建了包含均值、方差等5项时域指标的特征向量;最后,将特征向量输入ELM进行训练与识别,并在行星齿轮箱试验台上开展了不同工况下的对比试验。【结果】试验结果表明,所提方法在正常、齿根裂纹、缺齿及断齿4种工况下的整体识别准确率达到97.92%,显著优于EMD-ELM、优化VMD-SVM等传统模型。验证了BWO-VMD在信号去噪与自适应分解方面的优势,为行星齿轮箱关键部件的健康监测提供了可靠的技术支撑。 展开更多
关键词 行星齿轮箱 变分模态分解 白鲸优化算法 多尺度排列熵 极限学习机 故障诊断
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基于互补集合模态分解的舰船辐射噪声降噪方法
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作者 庄泽文 陈名松 唐建勋 《舰船科学技术》 北大核心 2026年第2期114-121,共8页
舰船辐射噪声降噪是水声信号处理的基础,为了获得更好的降噪效果,将基于互补集合经验模态分解(CEEMD),提出一种结合排列熵(PE)、小波软阈值(WST)降噪和奇异谱分析(SSA)的联合降噪方法。该方法首先通过互补集合经验模态分解将含噪信号分... 舰船辐射噪声降噪是水声信号处理的基础,为了获得更好的降噪效果,将基于互补集合经验模态分解(CEEMD),提出一种结合排列熵(PE)、小波软阈值(WST)降噪和奇异谱分析(SSA)的联合降噪方法。该方法首先通过互补集合经验模态分解将含噪信号分解为一系列本征模态函数,然后用排列熵对有效模态分量和含噪模态分量进行区分,对含噪模态分量进行小波阈值去噪后和有效模态分量进行重构,最后对重构信号利用奇异值分析方法进一步提取有效成分后得到降噪后的信号。将所提方法用于仿真数据、混沌信号和实测舰船辐射噪声进行实验,实验结果验证了所提出方法的可行性和有效性。 展开更多
关键词 舰船辐射噪声降噪 互补集合经验模态分解 排列熵 小波阈值降噪 奇异谱分析
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基于多尺度标准差排列熵的单磨粒磨损声发射特征提取研究
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作者 夏天 万林林 +1 位作者 张先洋 陈泽郡 《表面技术》 北大核心 2026年第3期183-195,272,共14页
目的降低砂轮磨损行为对工件表面质量的影响,开发出新的特征用于表征磨粒磨损,提升声发射监测砂轮磨损的可靠性。方法以单颗磨粒为研究对象,开展单颗磨粒磨损试验,记录磨粒的出露高度及磨耗面积的变化,根据磨粒磨损体积对磨损状态进行... 目的降低砂轮磨损行为对工件表面质量的影响,开发出新的特征用于表征磨粒磨损,提升声发射监测砂轮磨损的可靠性。方法以单颗磨粒为研究对象,开展单颗磨粒磨损试验,记录磨粒的出露高度及磨耗面积的变化,根据磨粒磨损体积对磨损状态进行划分。采集磨粒在不同状态下磨粒划擦碳化硅的声发射信号,利用增强鲸鱼优化变分模态分解(EWOAVMD)的数据处理方法,对原始声发射信号进行预处理。提取信号时域和频域特征,验证所提出的新的多尺度标准差排列熵(MSDPE)特征的可靠性。结果磨粒的磨损形式为微破碎、磨耗磨损和宏观破碎,不同形式的磨损导致了磨损体积呈现出先急速上升、又趋于平缓、最后又急速上升的趋势。将EWOA_VMD和鲸鱼优化变分模态分解(WOA_VMD)的去噪效果对比,EWOAVMD的包络熵为更低的6.8689,EWOAVMD的收敛速度更快,并且处理后的信号信噪比更高。所提出的MSDPE特征能够准确捕捉磨粒的磨损行为,尺度因子为4时的MSDPE与磨粒磨损体积的相关性系数为0.92。结论磨粒磨损可分为初期磨损、稳定磨损和严重磨损3个阶段。EWOAVMD具有收敛速度快、重构信号质量更高的优点,能有效剔除环境噪声。MSDPE特征对磨粒的磨损行为具有较高的敏感性,与磨粒磨损体积的相关性较高。MSDPE能够准确识别磨粒磨损的3个阶段,该特征可以应用于砂轮磨损的声发射监测过程中。 展开更多
关键词 单颗磨粒 磨损机制 声发射 增强鲸鱼优化算法 特征提取 多尺度标准差排列熵
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基于VMD-PE-GWO-LSTM的海浪波高预测模型
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作者 冷春花 张文正 《舰船科学技术》 北大核心 2026年第3期46-52,共7页
复杂的海洋环境下,船舶航行安全受波高显著影响,波高与船舶运动状态密切相关,需构建基于深度学习的波高预测模型以保障航行安全。由于海浪波高具有非平稳的特性,传统预测方法效果欠佳。本文创新提出基于灰狼优化算法下最优参数的海浪波... 复杂的海洋环境下,船舶航行安全受波高显著影响,波高与船舶运动状态密切相关,需构建基于深度学习的波高预测模型以保障航行安全。由于海浪波高具有非平稳的特性,传统预测方法效果欠佳。本文创新提出基于灰狼优化算法下最优参数的海浪波高特征预报复合模型,采取灰狼算法(Grey Wolf Optimization,GWO)优化变分模态分解(Variational Mode Decomposition,VMD)参数中模态分量数K和惩罚因子α处理数据后提取波高序列固有模态函数(Intrinsic Mode Functions,IMF),以排列熵(Permutation Entropy,PE)为标准筛选信号,并将有效的模态分量作为长短时记忆神经网络(Long-Short Term Memory Network,LSTM)模型输入;构建VMD-PE-GWOLSTM复合模型。经南海实测数据验证,该模型将波高数据分解为8个趋势项序列,预报精度达到R~2=0.985 7,能更精准地预报波高数据从而保障航行中的船舶安全。 展开更多
关键词 变分模态分解 排列熵 南海波高预测 长短时记忆神经网络
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基于排列熵的颅骨打孔机器人颤振状态识别
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作者 吴冬雨 《机械管理开发》 2026年第1期16-17,20,共3页
针对颅骨打孔机器人工作过程中末端执行器颤振检测不及时的问题,提出了一种基于排列熵的颅骨打孔机器人颤振状态识别方法。搭建了实验测试平台,通过三轴加速度传感器对颤振信号进行监测。研究结果表明:原始信号变化幅度会上升,能够在振... 针对颅骨打孔机器人工作过程中末端执行器颤振检测不及时的问题,提出了一种基于排列熵的颅骨打孔机器人颤振状态识别方法。搭建了实验测试平台,通过三轴加速度传感器对颤振信号进行监测。研究结果表明:原始信号变化幅度会上升,能够在振动完全形成前提前检测到对应的特征信号。相对方差与裕度因子,小波包熵下降出现在信号骤降前,且波动幅度较小,总体呈现稳定的状态。排列熵降至0.95以下时可检测到颤振现象,可以实现更快颤振响应。该研究有助于提高颅骨打孔机器人的稳定性,也可拓宽到其他的机器人领域。 展开更多
关键词 颤振检测 打孔加工 工业打孔机器人 排列熵
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A novel signal feature extraction technology based on empirical wavelet transform and reverse dispersion entropy 被引量:4
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作者 Yu-xing Li Shang-bin Jiao Xiang Gao 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2021年第5期1625-1635,共11页
Feature extraction is an important part of signal processing,which is significant for signal detection,classification,and recognition.The nonlinear dynamic analysis method can extract the nonlinear characteristics of ... Feature extraction is an important part of signal processing,which is significant for signal detection,classification,and recognition.The nonlinear dynamic analysis method can extract the nonlinear characteristics of signals and is widely used in different fields.Reverse dispersion entropy(RDE)proposed by us recently,as a nonlinear dynamic analysis method,has the advantages of fast computing speed and strong anti-noise ability,which is more suitable for measuring the complexity of signal than traditional permutation entropy(PE)and dispersion entropy(DE).Empirical wavelet transform(EWT),based on the theory of wavelet analysis,can decompose a complex non-stationary signal into a number of empirical wavelet functions(EWFs)with compact support set spectrum,which has better decomposition performance than empirical mode decomposition(EMD)and its improved algorithms.Considering the advantages of RDE and EWT,on the one hand,we introduce EWT into the field of underwater acoustic signal processing and fault diagnosis to improve the signal decomposition accuracy;on the other hand,we use RDE as the features of EWFs to improve the signal separability and stability.Finally,we propose a novel signal feature extraction technology based on EWT and RDE in this paper.Experimental results show that the proposed feature extraction technology can effectively extract the complexity features of actual signals.Moreover,it also has higher distinguishing ability for different types of signals than five latest feature extraction technologies. 展开更多
关键词 Feature extraction Empirical mode decomposition Empirical wavelet transform permutation entropy Reverse dispersion entropy
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Wi-Wheat+:Contact-free wheat moisture sensing with commodity WiFi based on entropy 被引量:1
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作者 Weidong Yang Erbo Shen +3 位作者 Xuyu Wang Shiwen Mao Yuehong Gong Pengming Hu 《Digital Communications and Networks》 SCIE CSCD 2023年第3期698-709,共12页
In this paper,we propose a contact-free wheat moisture monitoring system,termed Wi-Wheatþ,to address the several limitations of the existing grain moisture detection technologies,such as time-consuming process,ex... In this paper,we propose a contact-free wheat moisture monitoring system,termed Wi-Wheatþ,to address the several limitations of the existing grain moisture detection technologies,such as time-consuming process,expensive equipment,low accuracy,and difficulty in real-time monitoring.The proposed system is based on Commodity WiFi and is easy to deploy.Leveraging WiFi CSI data,this paper proposes a feature extraction method based on multi-scale and multi-channel entropy.The feasibility and stability of the system are validated through experiments in both Line-Of-Sight(LOS)and Non-Line-Of-Sight(NLOS)scenarios,where ten types of wheat moisture content are tested using multi-class Support Vector Machine(SVM).Compared with the Wi-Wheat system proposed in our prior work,Wi-Wheatþhas higher efficiency,requiring only a simple training process,and can sense more wheat moisture content levels. 展开更多
关键词 Channel state information(CSI) WIFI multi-scale entropy Multi-class support vector machine(SVM) Radio frequency(RF)sensing
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