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Contourlet watermarking algorithm based on Arnold scrambling and singular value decomposition 被引量:3
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作者 陈立全 孙晓燕 +1 位作者 卢苗 邵辰 《Journal of Southeast University(English Edition)》 EI CAS 2012年第4期386-391,共6页
A new digital watermarking algorithm based on the contourlet transform is proposed to improve the robustness and anti-attack performances of digital watermarking. The algorithm uses the Arnold scrambling technique and... A new digital watermarking algorithm based on the contourlet transform is proposed to improve the robustness and anti-attack performances of digital watermarking. The algorithm uses the Arnold scrambling technique and the singular value decomposition (SVD) scheme. The Arnold scrambling technique is used to preprocess the watermark, and the SVD scheme is used to find the best suitable hiding points. After the contourlet transform of the carrier image, intermediate frequency sub-bands are decomposed to obtain the singularity values. Then the watermark bits scrambled in the Arnold rules are dispersedly embedded into the selected SVD points. Finally, the inverse contourlet transform is applied to obtain the carrier image with the watermark. In the extraction part, the watermark can be extracted by the semi-blind watermark extracting algorithm. Simulation results show that the proposed algorithm has better hiding and robustness performances than the traditional contourlet watermarking algorithm and the contourlet watermarking algorithm with SVD. Meanwhile, it has good robustness performances when the embedded watermark is attacked by Gaussian noise, salt- and-pepper noise, multiplicative noise, image scaling and image cutting attacks, etc. while security is ensured. 展开更多
关键词 digital watermarking contourlet transform Arnold scrambling singular value decomposition svd
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Application of Singular Value Decomposition(SVD)to the Extraction of Gravity Anomalies Associated with Ag-Pb-Zn-W Polymetallic Mineralization in the Bozhushan Ore Field,Southwestern China 被引量:4
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作者 Lingfen Guo Yongqing Chen Binbin Zhao 《Journal of Earth Science》 SCIE CAS CSCD 2021年第2期310-317,共8页
The Bozhushan Ore Field,located at the western margin of the South China Block,is an important area for Ag-Pb-Zn-W polymetallic mineralization which may be associated with the Late Cretaceous granitic magmaism.In this... The Bozhushan Ore Field,located at the western margin of the South China Block,is an important area for Ag-Pb-Zn-W polymetallic mineralization which may be associated with the Late Cretaceous granitic magmaism.In this paper,the singular value decomposition(SVD)was effectively applied to decompose gravity data at scale of 1:50000 within the Bozhushan Ore Field to extract deep ore-finding information.Two gravity anomaly images displaying different scales of the ore-controlling factors were obtained.(1)The low-pass filtered image may reflect the deeply buried geological structures,hidden intrusions and concealed ore bodies.The negative gravity anomaly may reflect the overall distribution of granite bodies in the Bozhushan Ore Field.One negative gravity anomaly area may correspond to the exposed part of the Baozhushan granitic intrusion and the other corresponds to the concealed part of the granitic intrusion.The granitic intrusions are the main ore-controlling factors in this ore district.(2)The band-pass filtered image depicts the shallow concealed geological structures and geological bodies within this study area.There are two obvious negative gravity anomalies,which may be created by the hidden granites at different depths at both northwestern and southeastern sides of the exposed granitic intrusion.Thus the two negative gravity anomalies are favorable prospecting areas for various type of polymetallic ore deposits at depth.The gravity anomalies extracted by using the SVD exactly reflect the distribution of the ore deposits,structures and intrusions,which will give new insights for further mineral exploration in the study area. 展开更多
关键词 singular value decomposition(svd) gravity anomaly Ag-Pb-Zn-W polymetallic deposits Bozhushan granitic complex southwestern China
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The Singular Value Decomposition Analysis between Summer Precipitation in the Dongting Lake Region and the Global Sea Surface Temperature 被引量:1
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作者 彭莉莉 罗伯良 张超 《Meteorological and Environmental Research》 CAS 2010年第11期28-32,共5页
By dint of the summer precipitation data from 21 stations in the Dongting Lake region during 1960-2008 and the sea surface temperature(SST) data from NOAA,the spatial and temporal distributions of summer precipitation... By dint of the summer precipitation data from 21 stations in the Dongting Lake region during 1960-2008 and the sea surface temperature(SST) data from NOAA,the spatial and temporal distributions of summer precipitation and their correlations with SST are analyzed.The coupling relationship between the anomalous distribution in summer precipitation and the variation of SST has between studied with the Singular Value Decomposition(SVD) analysis.The increase or decrease of summer precipitation in the Dongting Lake region is closely associated with the SST anomalies in three key regions.The variation of SST in the three key regions has been proved to be a significant previous signal to anomaly of summer rainfall in Dongting region. 展开更多
关键词 Summer precipitation Sea surface temperature(SST) singular value decomposition(svd) analysis Dongting Lake China
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AN ACCELERATION FOR THE EIGENSYSTEM REALIZATION ALGORITHM WITH PARTIAL SINGULAR VALUES DECOMPOSITION
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作者 Zhou Zhou Zhou Yuxum 《Acta Mechanica Solida Sinica》 SCIE EI 2002年第2期127-132,共6页
The real-time identification of dynamic parameters is importantfor the control system of spacecraft. The eigensystme realizationalgorithm (ERA) is currently the typical method for such applica-tion. In order to identi... The real-time identification of dynamic parameters is importantfor the control system of spacecraft. The eigensystme realizationalgorithm (ERA) is currently the typical method for such applica-tion. In order to identify the dynamic parameter of spacecraftrapidly and accurately, an accelerated ERA with a partial singularvalues decomposition (PSVD) algorithm is presented. In the PSVD, theHankel matrix is reduced to dual diagonal form first, and thentransformed into a tridiagonal matrix. 展开更多
关键词 eigensystem realization algorithm partial singular value decomposition Sturm sequence dynamic parameter identification
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Recursive State-space Model Identification of Non-uniformly Sampled Systems Using Singular Value Decomposition 被引量:2
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作者 王宏伟 刘涛 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2014年第Z1期1268-1273,共6页
In this paper a recursive state-space model identification method is proposed for non-uniformly sampled systems in industrial applications. Two cases for measuring all states and only output(s) of such a system are co... In this paper a recursive state-space model identification method is proposed for non-uniformly sampled systems in industrial applications. Two cases for measuring all states and only output(s) of such a system are considered for identification. In the case of state measurement, an identification algorithm based on the singular value decomposition(SVD) is developed to estimate the model parameter matrices by using the least-squares fitting. In the case of output measurement only, another identification algorithm is given by combining the SVD approach with a hierarchical identification strategy. An example is used to demonstrate the effectiveness of the proposed identification method. 展开更多
关键词 Non-uniformly sampling system STATE-SPACE model IDENTIFICATION singular value decomposition RECURSIVE algorithm
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Analysis of heart rate variability based on singular value decomposition entropy 被引量:2
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作者 李世阳 杨明 +1 位作者 李存岑 蔡萍 《Journal of Shanghai University(English Edition)》 CAS 2008年第5期433-437,共5页
Assessing the dynamics of heart rate fluctuations can provide valuable information about heart status. In this study, regularity of heart rate variability (HRV) of heart failure patients and healthy persons using th... Assessing the dynamics of heart rate fluctuations can provide valuable information about heart status. In this study, regularity of heart rate variability (HRV) of heart failure patients and healthy persons using the concept of singular value decomposition entropy (SvdEn) is analyzed. SvdEn is calculated from the time series using normalized singular values. The advantage of this method is its simplicity and fast computation. It enables analysis of very short and non-stationary data sets. The results show that SvdEn of patients with congestive heart failure (CHF) shows a low value (SvdEn: 0.056±0.006, p 〈 0.01) which can be completely separated from healthy subjects. In addition, differences of SvdEn values between day and night are found for the healthy groups. SvdEn decreases with age. The lower the SvdEn values, the higher the risk of heart disease. Moreover, SvdEn is associated with the energy of heart rhythm. The results show that using SvdEn for discriminating HRV in different physiological states for clinical applications is feasible and simple. 展开更多
关键词 heart rate variability (HRV) singular value decomposition svd ENTROPY congestive heart failure (CHF)
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Pulsed Eddy Current Signal Denoising Based on Singular Value Decomposition 被引量:1
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作者 朱红运 王长龙 +1 位作者 陈海龙 王建斌 《Journal of Shanghai Jiaotong university(Science)》 EI 2016年第1期121-128,共8页
The noise as an undesired phenomenon often appears in the pulsed eddy current testing(PECT)signal, and it is difficult to recognize the character of the testing signal. One of the most common noises presented in the P... The noise as an undesired phenomenon often appears in the pulsed eddy current testing(PECT)signal, and it is difficult to recognize the character of the testing signal. One of the most common noises presented in the PECT signal is the Gaussian noise, since it is caused by the testing environment. A new denoising approach based on singular value decomposition(SVD) is proposed in this paper to reduce the Gaussian noise of PECT signal. The approach first discusses the relationship between signal to noise ratio(SNR) and negentropy of PECT signal. Then the Hankel matrix of PECT signal is constructed for noise reduction, and the matrix is divided into noise subspace and signal subspace by a singular valve threshold. Based on the theory of negentropy, the optimal matrix dimension and threshold are chosen to improve the performance of denoising. The denoised signal Hankel matrix is reconstructed by the singular values of signal subspace, and the denoised signal is finally extracted from this matrix. Experiment is performed to verify the feasibility of the proposed approach, and the results indicate that the proposed approach can reduce the Gaussian noise of PECT signal more effectively compared with other existing approaches. 展开更多
关键词 pulsed eddy current testing(PECT) singular value decomposition(svd) NEGENTROPY DENOISING
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Detection and correction of level echo based on generalized S-transform and singular value decomposition 被引量:1
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作者 ZHU Tianliang WANG Xiaopeng WANG Qi 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2021年第4期442-448,共7页
The echo of the material level is non-stationary and contains many singularities.The echo contains false echoes and noise,which affects the detection of the material level signals,resulting in low accuracy of material... The echo of the material level is non-stationary and contains many singularities.The echo contains false echoes and noise,which affects the detection of the material level signals,resulting in low accuracy of material level measurement.A new method for detecting and correcting the material level signal is proposed,which is based on the generalized S-transform and singular value decomposition(GST-SVD).In this project,the change of material level is regarded as the low speed moving target.First,the generalized S-transform is performed on the echo signals.During the transformation process,the variation trend of window of the generalized S-transform is adjusted according to the frequency distribution characteristics of the material level echo signal,achieving the purpose of detecting the signal.Secondly,the SVD is used to reconstruct the time-frequency coefficient matrix.At last,the reconstructed time-frequency matrix performs an inverse transform.The experimental results show that the method can accurately detect the material level echo signal,and it can reserve the detailed characteristics of the signal while suppressing the noise,and reduce the false echo interference.Compared with other methods,the material level measurement error does not exceed 4.01%,and the material level measurement accuracy can reach 0.40%F.S. 展开更多
关键词 echo signal false echo generalized S-transform singular value decomposition(svd) level measurement
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基于改进SVD和LS-Prony的电机转子断条故障诊断 被引量:2
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作者 贾朱植 康云娟 +2 位作者 祝洪宇 张博 宋向金 《电子测量技术》 北大核心 2025年第3期100-111,共12页
采用电机定子电流信号特征分析诊断转子断条故障时,基频两侧的故障特征频率和幅值是判断故障发生与否和严重程度的重要参数。FFT算法的诊断能力严重依赖于所分析的数据长度,最小二乘Prony分析算法虽然具有短时数据分析能力,但是该方法... 采用电机定子电流信号特征分析诊断转子断条故障时,基频两侧的故障特征频率和幅值是判断故障发生与否和严重程度的重要参数。FFT算法的诊断能力严重依赖于所分析的数据长度,最小二乘Prony分析算法虽然具有短时数据分析能力,但是该方法对噪声异常敏感,当电机低频低负载运行时同样存在故障特征提取能力不足和诊断失效的问题。为解决上述问题,提出改进奇异值分解和LS-PA算法相结合的转子断条故障诊断方法。首先采用按列截断方式重构奇异值分解矩阵,根据奇异值差商确定有效阶次,进而对定子电流信号进行预处理以适度抑制噪声,然后运用LS-PA算法对预处理后的信号做故障特征识别和诊断。有限元仿真和实验分析结果表明,所提出的方法能有效抑制电流信号噪声,具有短时数据高分辨率的诊断性能,在工频和变频供电时均能实现电机轻载到满载全工况稳定运行条件下的转子断条故障诊断,诊断性能高于经典的FFT方法。 展开更多
关键词 故障诊断 奇异值分解 最小二乘Prony算法 电机定子电流信号特征分析
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The Singular Value Decomposition as a Tool of Investigating Central MHD Instabilities in the HL-1M Tokamak
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作者 董云波 潘传红 +1 位作者 刘仪 付炳忠 《Plasma Science and Technology》 SCIE EI CAS CSCD 2004年第3期2307-2312,共6页
A variety of strong MHD instabilities are always resulted from MHD activity of Tokamak plasmas. Central MHD instabilities can be observed with pinhole cameras to record soft x-ray (SXR) emission from the plasma along ... A variety of strong MHD instabilities are always resulted from MHD activity of Tokamak plasmas. Central MHD instabilities can be observed with pinhole cameras to record soft x-ray (SXR) emission from the plasma along many chords with a high temporal resolution. The investigation of MHD instabilities often necessitates an analysis on spatial-temporal signals. The method of Singular Value Decomposition (SVD) can split such signals into orthogonal spatial and temporal vectors. By this means, the repetition time and the characteristic radius of various MHD phenomena such as sawteeth and snake-like perturbation can be obtained. Moreover, the (1,1) MHD mode is analyzed in great detail by SVD and used to determine the radius of the q = 1 surface. 展开更多
关键词 MHD instabilities soft x-ray (SXR) singular value decomposition (svd)
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一种基于AE-SVD模态重心频率的汽车助力转向泵裂纹转子在线辨识研究
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作者 祝新军 李明 +2 位作者 金丹 裘杭锋 刘冬 《振动与冲击》 北大核心 2025年第19期257-263,共7页
针对汽车助力转向泵转子裂纹的动态辨识问题,提出了一种基于多传感器的声发射(acoustic emission,AE)重心频率的判定方法。首先,在同一个泵体中分别安装合格与裂纹转子,在同样的试验条件下从吸油和压油盘附近采集4路AE信号,采样频率为1 ... 针对汽车助力转向泵转子裂纹的动态辨识问题,提出了一种基于多传感器的声发射(acoustic emission,AE)重心频率的判定方法。首先,在同一个泵体中分别安装合格与裂纹转子,在同样的试验条件下从吸油和压油盘附近采集4路AE信号,采样频率为1 MHz;然后,从4个传感器采集的AE信号中按照单个周期长度截取子信号,经白化处理后构造AE信号矩阵,并对AE信号矩阵进行奇异值分解(singular value decomposition,SVD),根据分解结果提取4个正交模态向量;最后,对每个正交模态进行3层小波包分解,分别计算第3层前4个节点的重心频率,并通过与阈值的比较实现裂纹转子的判定。研究结果表明,在压力7 MPa和转速1000 r/min的试验条件下,对SVD得到的第2个模态进行3层小波包分解后,第2个节点的重心频率在阈值为95 kHz时能够可靠识别裂纹转子。 展开更多
关键词 声发射(AE) 奇异值分解(svd) 正交模态 重心频率 助力转向泵 裂纹转子
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基于改进SVD-HPO-VMD电缆局部放电去噪方法
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作者 马星河 李凯濛 +1 位作者 赵军营 刘鹏 《广东电力》 北大核心 2025年第4期89-100,共12页
对局部放电(partial discharge,PD)的检测是获知高压电缆绝缘状态的主要手段之一,但现场对PD信号的检测易受到噪声的干扰,从而影响对信号检测的准确度。为此,提出一种采用猎人猎物优化算法(hunter-prey optimization algorithm,HPO)优... 对局部放电(partial discharge,PD)的检测是获知高压电缆绝缘状态的主要手段之一,但现场对PD信号的检测易受到噪声的干扰,从而影响对信号检测的准确度。为此,提出一种采用猎人猎物优化算法(hunter-prey optimization algorithm,HPO)优化变分模态分解(variational mode decomposition,VMD),再采用改进奇异值分解(singular value decomposition,SVD)对PD信号进行降噪的方法。首先,对含噪PD信号进行傅里叶变换,在傅里叶变换功率谱中运用差分变换及设定阈值的方法去筛选周期性窄带干扰奇异值;然后,通过HPO优化VMD的参数选择,分解出K个本征模态函数(intrinsic mode function,IMF),利用模糊散布熵(fuzzy dispersion entropy,FuzzyDispEn)确定IMF的性质,从而区分有效分量和噪声分量,对分类后的噪声主导分量通过改进小波阈值方法进行去噪;最后,将信号进行重构,通过仿真和实验计算去噪后信号的信噪比、归一化相关系数以及均方误差,并与传统方法进行比对,证明提出的方法能够有效去除PD信号中的噪声分量,能够运用到供电系统中。 展开更多
关键词 局部放电 变分模态分解 奇异值分解 猎人猎物优化算法 模糊散布熵
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基于BOA‑VMD‑SVD的MEMS陀螺仪信号降噪方法研究
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作者 马星河 闫崇威 《武汉大学学报(工学版)》 北大核心 2025年第7期1130-1138,共9页
针对微机电系统(micro-electro-mechanical system,MEMS)加速度计输出信号中随机噪声较大的问题,提出一种基于蝴蝶优化算法(butterfly optimization algorithm,BOA)的变分模态分解(variational mode decomposition,VMD)联合奇异值分解(s... 针对微机电系统(micro-electro-mechanical system,MEMS)加速度计输出信号中随机噪声较大的问题,提出一种基于蝴蝶优化算法(butterfly optimization algorithm,BOA)的变分模态分解(variational mode decomposition,VMD)联合奇异值分解(singular value decomposition,SVD)的随机噪声降噪方法。首先应用BOA-VMD算法将加速度计信号分解为K个最优的IMF(intrinsic mode function)分量;其次计算分解后的各IMF分量的排列熵值,并将其划分为加速度计信号主导的IMF分量、噪声主导的IMF分量以及噪声信号3种类型;再对噪声主导的IMF分量进行SVD分解降噪,舍弃噪声分量;最后将加速度计信号主导分量与降噪后的噪声主导分量进行重构,得到最终信号。仿真与实验数据表明:相较于VMD联合小波阈值方法,BOA-VMD-SVD算法的信噪比提高了19.8%,均方根误差下降了44.5%;相较于VMD-SVD算法,BOA-VMD-SVD算法的信噪比提高了15.6%,均方根误差下降了19.5%。这表明所提算法在处理MEMS加速度计信号中的随机噪声时具有更好的去噪效果,进而证明了所提方法的有效性。 展开更多
关键词 微机电系统 蝴蝶优化算法 奇异值分解 随机噪声 去噪
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一种基于LWT-DCT-SVD抗压缩的图像水印方案
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作者 杨志疆 《肇庆学院学报》 2025年第2期69-74,共6页
针对图像水印的透明性和鲁棒性的矛盾问题,以及图像水印在图像压缩攻击中鲁棒性较差的问题,提出基于LWT-DCT-SVD混合域的抗压缩鲁棒性图像水印方案.该方案应用混沌序列和置乱变换加密水印,提高水印的安全性,并选取LWT-DCT变换的低频系... 针对图像水印的透明性和鲁棒性的矛盾问题,以及图像水印在图像压缩攻击中鲁棒性较差的问题,提出基于LWT-DCT-SVD混合域的抗压缩鲁棒性图像水印方案.该方案应用混沌序列和置乱变换加密水印,提高水印的安全性,并选取LWT-DCT变换的低频系数进行SVD变换,并在奇异值中采用自适应量化嵌入水印,实现盲检测.仿真实验结果表明,水印保持较好的透明性,同时在噪声污染、低通滤波、图像缩放、恶意剪切等常见图像处理具有较强的鲁棒性,尤其对于图像压缩攻击,本水印方案显示出较强的抗压缩特征. 展开更多
关键词 提升小波变换 离散余弦变换 奇异值分解 抗压缩 鲁棒性
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应用奇异值分解(SVD)-主成分分析(PCA)组合模型定量圈定与评价腾冲地块锡钨和铅锌多金属找矿靶区 被引量:3
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作者 郑澳月 费金娜 +3 位作者 陈永清 宁妍云 曹一琳 赵鹏大 《地学前缘》 北大核心 2025年第1期283-301,共19页
成矿元素或元素组在一个地质单元中的富集是成岩和成矿地质过程多阶段作用的产物。基于水系沉积物地球化学数据,主成分分析(principal component analysis,PCA)可识别成矿元素组。奇异值分解(singular value decomposition,SVD)可将成... 成矿元素或元素组在一个地质单元中的富集是成岩和成矿地质过程多阶段作用的产物。基于水系沉积物地球化学数据,主成分分析(principal component analysis,PCA)可识别成矿元素组。奇异值分解(singular value decomposition,SVD)可将成矿元素组主成分得分进一步分解为两个部分:(1)成矿元素组合区域异常分量,能够表征在地壳演化过程中,由各种地质作用(岩浆作用、沉积作用和/或变质作用)形成的有利于成矿的高背景区域;(2)成矿元素组合局部异常分量,能够表征成矿作用引起的,叠加在成矿元素组合区域异常分量之上的成矿元素组合局部异常分量,应用局部异常分量能够识别找矿靶区。本次研究,首先基于国家1∶200000水系沉积物地球化学数据,应用主成分分析建立不同类型的成矿元素组;其次,利用SVD从成矿元素组的主成分得分中识别出不同类型成矿过程引起的成矿元素组合局部异常分量;最后,应用局部异常分量识别找矿靶区。最终在腾冲地块圈定15处找矿靶区,其中Sn-W找矿靶区8处,Pb-Zn-Ag找矿靶区7处。预测Sn-W潜在资源量915 Mt,Pb-Zn-Ag潜在资源量792 Mt。 展开更多
关键词 svd PCA 成矿元素组合异常分量 地球化学块体 锡钨和铅锌多金属矿 腾冲地块 西南地区
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Randomized Generalized Singular Value Decomposition
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作者 Wei Wei Hui Zhang +1 位作者 Xi Yang Xiaoping Chen 《Communications on Applied Mathematics and Computation》 2021年第1期137-156,共20页
The generalized singular value decomposition(GSVD)of two matrices with the same number of columns is a very useful tool in many practical applications.However,the GSVD may suffer from heavy computational time and memo... The generalized singular value decomposition(GSVD)of two matrices with the same number of columns is a very useful tool in many practical applications.However,the GSVD may suffer from heavy computational time and memory requirement when the scale of the matrices is quite large.In this paper,we use random projections to capture the most of the action of the matrices and propose randomized algorithms for computing a low-rank approximation of the GSVD.Serval error bounds of the approximation are also presented for the proposed randomized algorithms.Finally,some experimental results show that the proposed randomized algorithms can achieve a good accuracy with less computational cost and storage requirement. 展开更多
关键词 Generalized singular value decomposition Randomized algorithm Low-rank approximation Error analysis
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鹈鹕算法参数优化VMD联合SVDS的电机轴承故障诊断
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作者 孙姿姣 周湘贞 李松洋 《机械设计》 北大核心 2025年第4期150-155,共6页
为减小噪声的干扰,增强轴承故障特征频率,实现轴承故障有效诊断,文中提出了鹈鹕算法(POA)优化变分模态分解(VMD)参数联合奇异值差分谱(SVDS)的轴承故障诊断新方法。针对VMD分解时模态层数k和平衡因子α难确定的问题,以本征模态分量(IMF... 为减小噪声的干扰,增强轴承故障特征频率,实现轴承故障有效诊断,文中提出了鹈鹕算法(POA)优化变分模态分解(VMD)参数联合奇异值差分谱(SVDS)的轴承故障诊断新方法。针对VMD分解时模态层数k和平衡因子α难确定的问题,以本征模态分量(IMF)包络熵最小为评价指标,通过POA进行参数优化;利用包络熵最小指标选取最优IMF模态,并对最优模态构建Hankel矩阵进行SVDS分析;通过SVDS确定信号重构阶数完成信号重构,并以Hilbert解调对重构信号进行包络分析。通过轴承仿真信号和实测信号对方法的有效性进行了验证,结果表明:所提方法增强了轴承故障特征频率,更容易实现故障的判别。 展开更多
关键词 变分模态分解 鹈鹕算法 奇异值差分谱 轴承 故障诊断
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基于SVD和UKF的科氏流量计信号处理方法研究
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作者 郭景阳 刘铁军 +2 位作者 谢代梁 徐雅 黄震威 《电子器件》 2025年第1期20-24,共5页
针对科氏流量计在单相流情况下信号缓慢变化的特点和较高的测量精度需求,提出了一种SVD和UKF相结合的科氏流量计信号处理方法。首先采用SVD去噪方法减弱信号所携带的干扰噪声,然后建立待测信号的状态矢量、状态转移方程和观测方程,使用... 针对科氏流量计在单相流情况下信号缓慢变化的特点和较高的测量精度需求,提出了一种SVD和UKF相结合的科氏流量计信号处理方法。首先采用SVD去噪方法减弱信号所携带的干扰噪声,然后建立待测信号的状态矢量、状态转移方程和观测方程,使用UKF算法对测量管两路输出信号进行参数追踪,最后利用更新后的状态估计值计算出相位差和信号频率。给出了方法的总体流程和实现步骤,并通过仿真和实际测试证明了整套算法是可行的,具有一定的应用价值。 展开更多
关键词 科氏流量计 奇异值分解 无迹卡尔曼滤波算法 相位差 频率估计
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基于TFG-SVD-1DCNN的液压优先阀智能故障诊断方法
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作者 何瑶 熊晓燕 +2 位作者 王伟杰 李翔宇 刘会军 《机电工程》 北大核心 2025年第7期1287-1293,共7页
液压优先阀连接在液压泵、蓄能器和油箱增压腔之间,针对其容易受到多路干扰的影响,以及采用传统的液压测试方法对优先阀故障识别精度不足的问题,提出了一种基于时频图结构数据奇异值分解与一维卷积神经网络(TFG-SVD-1DCNN)的液压阀智能... 液压优先阀连接在液压泵、蓄能器和油箱增压腔之间,针对其容易受到多路干扰的影响,以及采用传统的液压测试方法对优先阀故障识别精度不足的问题,提出了一种基于时频图结构数据奇异值分解与一维卷积神经网络(TFG-SVD-1DCNN)的液压阀智能故障诊断方法。首先,采用短时傅里叶变换(STFT)的方法分析了包含故障信息的信号,提取了信号在不同时间段内频率成分的详细信息,得到了时频矩阵;然后,使用时频矩阵在频率维度上的特征构造了图结构数据(GSD),获得了边的连接关系和边的权重等信息,再利用这些信息生成了图结构数据的邻接矩阵,充分保留了每个样本的空间特征;最后,采用奇异值分解(SVD)方法对图结构数据的邻接矩阵进行了降维,将降维之后的主要特征输入到一维卷积神经网络(1D-CNN)中进行了故障分类,并利用仿真数据验证了该方法在优先阀故障诊断方面的性能。研究结果表明:对于优先阀正向无法打开或关断以及反向无法打开或关断4种故障类型,采用智能故障诊断方法所得的平均准确率为99.7%。该研究可以为液压阀故障检测提供一种有效的方法。 展开更多
关键词 液压系统 液压阀 流量优先阀 时频图结构数据奇异值分解 一维卷积神经网络 短时傅里叶变换 图结构数据
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基于AGSMD和TSVD的工业机器人柔性薄壁轴承故障诊断 被引量:1
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作者 张昌杰 马桂林 李超 《机械设计与制造工程》 2025年第3期77-83,共7页
由于柔性薄壁轴承结构特殊,振动信号复杂,因此为准确判断柔性薄壁轴承故障类别,提出一种基于自适应群稀疏模式分解和截断奇异值分解的故障诊断方法。首先采用功率谱密度方法得到预估信噪比参数,并利用电鳗觅食优化算法对自适应群稀疏模... 由于柔性薄壁轴承结构特殊,振动信号复杂,因此为准确判断柔性薄壁轴承故障类别,提出一种基于自适应群稀疏模式分解和截断奇异值分解的故障诊断方法。首先采用功率谱密度方法得到预估信噪比参数,并利用电鳗觅食优化算法对自适应群稀疏模式分解方法中的惩罚因子参数及信号分量选取过程进行寻优,寻找出有效信号分量中的有效成分。然后利用截断奇异值分解方法对所得信号分量进行降噪处理,并提出一种新的奇异值能量比差分谱方法用来选取合适的重构阶数,从而准确地寻找出柔性薄壁轴承的故障特征信息。实验数据分析结果表明,所提方法能够有效地提取出柔性薄壁轴承的故障特征,实现对柔性薄壁轴承故障的准确诊断。 展开更多
关键词 柔性薄壁轴承 自适应群稀疏模式分解 电鳗觅食优化算法 截断奇异值分解
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