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1.
针对模拟电路故障诊断中特征向量冗余的问题,提出一种基于Treelet变换的模拟电路故障诊断方法.Treelet变换是一种自适应的多尺度的数据分析方法,适用于对高维数据降维和特征选择。文中首先对被测电路的输出信号采样,将采集到的信号进行Treelet变换,提取故障特征向量,最后将得到的特征向量输入BP神经网络进行故障模式识别。仿真实验结果表明,该方法能够有效地提取电路故障特征。与其他故障特征提取方法相比较,基于Treelet变换的模拟电路故障诊断方法具有较高的故障诊断率和收敛速度。  相似文献   

2.
针对因模拟电路的故障模型复杂、有容差、非线性等导致的模拟电路故障特征提取难度大、严重依赖于专家的经验的现状,对基于小波分析的模拟电路最优故障特征提取技术进行了研究。以四运放电路为实验基础,采用Morlet和Haar两种小波基分别从不同的维度上做数据预处理,能量化、归一化后组成故障特征,而后通过克隆选择算法的诊断结果分析对比特征提取的效果。实验结果为通过两种小波基提取的故障特征在不同的情况下达到最高故障诊断率均接近89%,表明基于两种小波基的故障特征提取技术都是优秀可用的,以及单点采样数据的有效性;同时实验结果还反映了模拟电路故障特征的详细程度与诊断正确率成正比例关系。这对实际复杂模拟电路的故障特征提取具有指导性的意义。  相似文献   

3.
吴凡  张莉 《应用声学》2014,22(11):3521-3524
文章提出了一种基于小波神经网络的模拟电路故障诊断方法:通过分析被测电路的冲激响应来识别电路中的故障元件,利用小波理论中的多分辨率分析的方法提取出相应信号中的故障特征,组成特征向量后输入神经网络进行训练,实现故障诊断;该方法减少了神经网络的输入、简化了其结构、并缩短了训练和处理时间,文中分别用小波神经网络和传统的BP神经网络对实例电路进行故障诊断,仿真结果发现:小波神经网络相比BP网络方法收敛速度更快,诊断率更高。  相似文献   

4.
陈文华 《应用声学》2014,22(6):1673-1675
核方法通过非线性映射将原始数据嵌入到高维特征空间,然后进行线性分析和处理,为基于知识的数据分析带来新的方法和模式;传统方法无法解决故障特征数据维数高、在故障样本交叠严重时多分类性能较差的问题,因此在电路故障特征数据预处理阶段,提出了分步骤分别在时域对电路输出电压波形进行小波包分析和在频域测量电路幅频特性的方法来提取电路故障特征;预处理后的故障特征向量只是8维向量,减少了SVM的训练时间;将该方法应用于国际标准电路中的CTSV滤波器电路的故障诊断,结果表明:该方法能突出不同故障的特性,故障诊断正确率达到98.57%(414/420)。  相似文献   

5.
王月海  卢俊  潘国庆  冯建呈 《应用声学》2014,22(11):3470-3472
针对LS-SVM算法中小波提取特征存在小波基函数选择和小波分解层次、系数选取的问题,提出了一种基于因子分析技术的故障特征识别方法;该方法通过构建采样数据的相关矩阵求出因子载荷和因子得分,按照累计贡献率自动提取出1~3个因子组成特征向量,从而降低了输入维度,提高了算法训练诊断效率,降低了收敛难度;四运放典型电路的仿真实验结果表明:文中算法的诊断正确率超过了同类方法,同时提高了训练时间和诊断效率。  相似文献   

6.
针对模拟电路故障诊断中的容差问题,提出了基于节点导纳矩阵(NAM)的模拟电路故障诊断方法。该方法以NAM为基础,提取被测电路(CUT)的故障特征向量。测试前,用仿真的方法生成被测电路中某一故障对应的故障样本子集,所有类别的故障样本子集构成故障样本集。测试时,测量被测电路的故障特征向量,并根据其与故障样本集中样本的相似性来判断电路发生的故障类型。由于电路的NAM对元件容差不敏感,所以可以很好地克服模拟电路故障诊断中的容差问题。实验结果证明了该方法的有效性。  相似文献   

7.
紫檀属中的木材有很多属于名贵木材,不同树种之间十分相似。传统的木材识别方法多以木材解剖学为主,通过观察木材的切片结构特征对木材的树种进行判断,这类方法虽有较高的识别精度,但是其识别工艺较为复杂而且技术难度也相对较高。与木材解剖学相对应的是利用图像信息或光谱信息的木材树种识别方法,该类方法虽具有较为简单的识别工艺,但是在对同属相似木材树种进行识别时,往往不能够取得较好的识别效果。提出了一种基于木材切面光谱特征和纹理特征相融合的木材树种识别方法,该方法不仅识别工艺简单、自动化程度高,而且具有较高的识别精度。首先通过数码相机和光谱仪采集木材切面的图像信息和光谱信息,然后分别使用纹理特征提取方法和光谱特征提取方法提取两类特征的特征向量,接下来使用基于典型相关分析的特征级融合方法将这两个特征向量进行融合,最后使用支持向量机对融合后的特征向量进行分类识别。为了验证方法的有效性,以市场中常见的5种紫檀属树种的三个切面为研究对象,对这些木材树种进行了识别。实验结果显示,单独使用纹理特征的识别正确率最高为80.00%,单独使用光谱特征的识别正确率最高为94.40%,使用融合的特征最高的识别正确率可达99...  相似文献   

8.
本文在LabVIEW平台下,设计了一种基于小波和神经网络的风机故障在线诊断系统。以风机产生的噪声为诊断依据,用噪声信号的功率谱重心、A声级、小波分解后相关频段的能量构成故障诊断的特征向量,以BP网络作为故障的智能分类器,建立起智能诊断系统。实验结果表明,采用小波和神经网络相融合的诊断与识别技术,是提取风机故障特征,进行状态识别的一种有效方法。所设计系统有较强的学习能力和容错能力。诊断结果比较可靠、准确。  相似文献   

9.
针对多类运动想象情况下存在的脑电信号识别正确率比较低的问题,提出了一种将小波包方差,小波包熵和共同空间模式相结合的脑电信号特征提取,输入到支持向量机达到分类目的。首先选择小波包去噪后重要导联的脑电信号,进行小波包分解;然后对通道优化选取的重要导联的每个通道信号计算方差和熵值,对重要导联的每个通道信号的子带系数进行重构后,进行共同空间模式特征提取;最后结合2种不同导联方式所获取的特征向量进行分类。采用BCI2005desc_IIIa中l1b数据,该算法的分类正确率最高达到88.75%,相对2种单一的提取方法分别提高28.27%和6.55%。结果表明该算法能够有效提取特征向量,进而改善多类识别正确率较低的问题。  相似文献   

10.
摘要:针对光伏并网逆变器电路中故障信号的非线性、非平稳特点,提出一种基于经验模态分解(EMD)和样本熵(SampEn)的故障诊断方法。首先,利用经验模态分解对逆变器的三相输出电压进行分解,得到有限个本征模式分量(IMF),从中选取包含故障主要信息的前几个本征模式分量提取故障信息。然后,计算本征模式分量的样本熵,从而得到用于故障诊断的特征向量;最后,将逆变器开路故障进行分类和编码,将故障特征向量输入BP神经网络进行模式识别,从而达到故障诊断的目的。在Matlab环境下对光伏并网逆变器的故障诊断进行了实验,实验结果证明了文中方法能实现对光伏并网逆变器的故障诊断,且与小波包变换相比,该方法具有诊断效率高和准确度高等特点。  相似文献   

11.
动态加权的多频段距离特征量数据融合方法   总被引:3,自引:2,他引:1       下载免费PDF全文
距离特征量反映了目标距离变化规律,该观测量可由基于LOFAR谱图的距离特征量提取方法得到。为解决单一频段提取的距离特征量精度不高的问题,本文基于最优加权平均法,提出了多频段距离特征量值提取技术。针对该方法在实际应用中无法准确得到距离特征量解算值误差的标准差,提出了一种对方差进行实时估计的动态加权融合方法。试验数据处理结果表明,融合后精度明显提高。  相似文献   

12.
一种基于小波系数综合能量特征的多算子图像融合算法   总被引:1,自引:0,他引:1  
吉书鹏 《光学技术》2008,34(1):85-88
提出了一种新的多算子小波分解图像融合算法,算法对输入图像进行多尺度小波分解,综合考虑同层各子带及相邻层子带小波系数图像特征描述的相关一致性,基于局部空间复合能量和局部相对能量差特征测度,采用多算子自适应融合规则构造融合图像,得到含有丰富细节特征的融合图像。  相似文献   

13.
In remote sensing community, IHS (intensity, hue, and saturation) transform is one of the most commonly used fusion algorithm. A study on IHS fusion indicates that the color distortion cannot be avoided.Meanwhile, wavelet decomposition has a property of frequency division in transform domain. And the statistical property of wavelet coefficient reflects those significant features. So, a united optimal fusion method, which using the statistical property of wavelet decomposition and IHS transform on pixel and feature levels, is proposed. That is, the high frequency of intensity component I is fused on feature level with multi-resolution wavelet in IHS space, and the low frequency of intensity component I is fused on pixel level with optimal weight coefficients. Spectral information and spatial resolution are two performance indexes of optimal weight coefficients. Experiment results show that it is a practical and effective method.  相似文献   

14.
Feature extraction plays an important role in the clustering analysis. In this paper an integrated Autoregressive (AR)/Autoregressive Conditional Heteroscedasticity (ARCH) model is proposed to characterize the vibration signal and the model coefficients are adopted as feature vectors to realize clustering diagnosis of rolling element bearings. The main characteristic is that the AR item and ARCH item are interrelated with each other so that it can depict the excess kurtosis and volatility clustering information in the vibration signal more accurately in comparison with two-stage AR/ARCH model. To testify the correctness, four kinds of bearing signals are adopted for parametric modeling by using the integrated and two-stage AR/ARCH model. The variance analysis of the model coefficients shows that the integrated AR/ARCH model can get more concentrated distribution. Taking these coefficients as feature vectors, K means based clustering is utilized to realize the automatic classification of bearing fault status. The results show that the proposed method can get more accurate results in comparison with two-stage model and discrete wavelet decomposition.  相似文献   

15.
Effective diagnosis of vibration fault is of practical significance to ensure the safe and stable operation of power transformers. Aiming at the traditional problems of transformer vibration fault diagnosis, a novel feature extraction method based on complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) and multi-scale dispersion entropy (MDE) was proposed. In this paper, CEEMDAN method is used to decompose the original transformer vibration signal. Additionally, then MDE is used to capture multi-scale fault features in the decomposed intrinsic mode functions (IMFs). Next, the principal component analysis (PCA) method is employed to reduce the feature dimension and extract the effective information in vibration signals. Finally, the simplified features are sent into density peak clustering (DPC) to get the fault diagnosis results. The experimental data analysis shows that CEEMDAN-MDE can effectively extract the information of the original vibration signals and DPC can accurately diagnose the types of transformer faults. By comparing different algorithms, the practicability and superiority of this proposed method are verified.  相似文献   

16.
A method for gearbox fault diagnosis consists of feature extraction and fault identification. Many methods for feature extraction have been devised for exposing nature of vibration data of a defective gearbox. In addition, features extracted from gearbox vibration data are identified by various classifiers. However, existing literatures leave much to be desired in assessing performance of different combinatorial methods for gearbox fault diagnosis. To this end, this paper evaluated performance of several typical combinatorial methods for gearbox fault diagnosis by associating each of multifractal detrended fluctuation analysis (MFDFA), empirical mode decomposition (EMD) and wavelet transform (WT) with each of neural network (NN), Mahalanobis distance decision rules (MDDR) and support vector machine (SVM). Following this, performance of different combinatorial methods was compared using a group of gearbox vibration data containing slightly different fault patterns. The results indicate that MFDFA performs better in feature extraction of gearbox vibration data and SVM does the same in fault identification. Naturally, the method associating MFDFA with SVM shows huge potential for fault diagnosis of gearboxes. As a result, this paper can provide some useful information on construction of a method for gearbox fault diagnosis.  相似文献   

17.
Based on the techniques of Hilbert–Huang transform (HHT) and support vector machine (SVM), a noise-based intelligent method for engine fault diagnosis (EFD), so-called HHT–SVM model, is developed in this paper. The noises of a sample engine under normal and several fault states are first measured and denoised by using the wavelet packet threshold method to initially lower the noise level with negligible signal distortion. To extract fault features of the engine, then, the HHT is selected and applied to the measured noise signals. A nine-dimensional vector, which consists of seven intrinsic mode functions (IMFs) from the empirical mode decomposition (EMD), maximum value of HHT marginal spectrum and its corresponding frequency component, is specified to represent each engine fault feature. Finally, an optimal SVM model is established and trained for engine failure classification by using the fault feature vectors of the noise signals. Cross-validation results show that the proposed noise-based HHT–SVM method is accurate and effective for engine fault diagnosis. Due to outstanding time–frequency characteristics and pattern recognition capacity of the HHT and SVM, the newly proposed HHT–SVM can be used to deal with both the stationary and nonstationary signals, and even the transient ones. In the view of applications, the HHT–SVM technique may be suggested not only to detect the abnormal states of vehicle engines, but also to be extended to other fields for failure diagnosis in engineering.  相似文献   

18.
针对在用离散小波变换中提取纹理特征缺少纹理的空间分布特性问题,提出引入方向测度的灰度共生矩阵(Gray Level Co-occurrence Matrix,GLCM)与离散小波分解相互融合的算法,在低频子带上借助方向测度引入权值因子的方法提取灰度共生矩阵的六个统计量,用生成的综合特征来描述轮胎花纹的纹理构成,用欧式距离进行相似性度量。实验结果表明,融合算法能够有效提高检索效率,改进方法的检索效率优于用传统的灰度共生矩阵和小波变换提取纹理方法的检索效率。  相似文献   

19.
Fault diagnosis of wind turbines is of great importance to reduce operating and maintenance costs of wind farms. At present, most wind turbine fault diagnosis methods are focused on single faults, and the methods for combined faults usually depend on inefficient manual analysis. Filling the gap, this paper proposes a low-pass filtering empirical wavelet transform (LPFEWT) machine learning based fault diagnosis method for combined fault of wind turbines, which can identify the fault type of wind turbines simply and efficiently without human experience and with low computation costs. In this method, low-pass filtering empirical wavelet transform is proposed to extract fault features from vibration signals, LPFEWT energies are selected to be the inputs of the fault diagnosis model, a grey wolf optimizer hyperparameter tuned support vector machine (SVM) is employed for fault diagnosis. The method is verified on a wind turbine test rig that can simulate shaft misalignment and broken gear tooth faulty conditions. Compared with other models, the proposed model has superiority for this classification problem.  相似文献   

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