期刊文献+
共找到625篇文章
< 1 2 32 >
每页显示 20 50 100
Experts' Knowledge Fusion in Model-Based Diagnosis Based on Bayes Networks 被引量:5
1
作者 Deng Yong & Shi Wenkang School of Electronics & Information Technology, Shanghai Jiaotong University, Shanghai 200030, P. R. China 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2003年第2期25-30,共6页
In previous researches on a model-based diagnostic system, the components are assumed mutually independent. Howerver , the assumption is not always the case because the information about whether a component is faulty ... In previous researches on a model-based diagnostic system, the components are assumed mutually independent. Howerver , the assumption is not always the case because the information about whether a component is faulty or not usually influences our knowledge about other components. Some experts may draw such a conclusion that 'if component m 1 is faulty, then component m 2 may be faulty too'. How can we use this experts' knowledge to aid the diagnosis? Based on Kohlas's probabilistic assumption-based reasoning method, we use Bayes networks to solve this problem. We calculate the posterior fault probability of the components in the observation state. The result is reasonable and reflects the effectiveness of the experts' knowledge. 展开更多
关键词 model-based diagnosis Experts' knowledge Probabilistic assumption-based reasoning Bayes networks.
在线阅读 下载PDF
Nonlinear online process monitoring and fault diagnosis of condenser based on kernel PCA plus FDA 被引量:5
2
作者 张曦 阎威武 +1 位作者 赵旭 邵惠鹤 《Journal of Southeast University(English Edition)》 EI CAS 2007年第1期51-56,共6页
A novel online process monitoring and fault diagnosis method of condenser based on kernel principle component analysis (KPCA) and Fisher discriminant analysis (FDA) is presented. The basic idea of this method is:... A novel online process monitoring and fault diagnosis method of condenser based on kernel principle component analysis (KPCA) and Fisher discriminant analysis (FDA) is presented. The basic idea of this method is: First map data from the original space into high-dimensional feature space via nonlinear kernel function and then extract optimal feature vector and discriminant vector in feature space and calculate the Euclidean distance between feature vectors to perform process monitoring. Similar degree between the present discriminant vector and optimal discriminant vector of fault in historical dataset is used for diagnosis. The proposed method can effectively capture the nonlinear relationship among process variables. Simulating results of the turbo generator's fault data set prove that the proposed method is effective. 展开更多
关键词 NONLINEAR kernel PCA FDA process monitoring fault diagnosis CONDENSER
在线阅读 下载PDF
An Interpretable Denoising Layer for Neural Networks Based on Reproducing Kernel Hilbert Space and its Application in Machine Fault Diagnosis 被引量:9
3
作者 Baoxuan Zhao Changming Cheng +3 位作者 Guowei Tu Zhike Peng Qingbo He Guang Meng 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2021年第3期104-114,共11页
Deep learning algorithms based on neural networks make remarkable achievements in machine fault diagnosis,while the noise mixed in measured signals harms the prediction accuracy of networks.Existing denoising methods ... Deep learning algorithms based on neural networks make remarkable achievements in machine fault diagnosis,while the noise mixed in measured signals harms the prediction accuracy of networks.Existing denoising methods in neural networks,such as using complex network architectures and introducing sparse techniques,always suffer from the difficulty of estimating hyperparameters and the lack of physical interpretability.To address this issue,this paper proposes a novel interpretable denoising layer based on reproducing kernel Hilbert space(RKHS)as the first layer for standard neural networks,with the aim to combine the advantages of both traditional signal processing technology with physical interpretation and network modeling strategy with parameter adaption.By investigating the influencing mechanism of parameters on the regularization procedure in RKHS,the key parameter that dynamically controls the signal smoothness with low computational cost is selected as the only trainable parameter of the proposed layer.Besides,the forward and backward propagation algorithms of the designed layer are formulated to ensure that the selected parameter can be automatically updated together with other parameters in the neural network.Moreover,exponential and piecewise functions are introduced in the weight updating process to keep the trainable weight within a reasonable range and avoid the ill-conditioned problem.Experiment studies verify the effectiveness and compatibility of the proposed layer design method in intelligent fault diagnosis of machinery in noisy environments. 展开更多
关键词 Machine fault diagnosis Reproducing kernel Hilbert space(RKHS) Regularization problem Denoising layer Neural network
在线阅读 下载PDF
Power Transformer Fault Diagnosis Using Random Forest and Optimized Kernel Extreme Learning Machine 被引量:2
4
作者 Tusongjiang Kari Zhiyang He +3 位作者 Aisikaer Rouzi Ziwei Zhang Xiaojing Ma Lin Du 《Intelligent Automation & Soft Computing》 SCIE 2023年第7期691-705,共15页
Power transformer is one of the most crucial devices in power grid.It is significant to determine incipient faults of power transformers fast and accurately.Input features play critical roles in fault diagnosis accura... Power transformer is one of the most crucial devices in power grid.It is significant to determine incipient faults of power transformers fast and accurately.Input features play critical roles in fault diagnosis accuracy.In order to further improve the fault diagnosis performance of power trans-formers,a random forest feature selection method coupled with optimized kernel extreme learning machine is presented in this study.Firstly,the random forest feature selection approach is adopted to rank 42 related input features derived from gas concentration,gas ratio and energy-weighted dissolved gas analysis.Afterwards,a kernel extreme learning machine tuned by the Aquila optimization algorithm is implemented to adjust crucial parameters and select the optimal feature subsets.The diagnosis accuracy is used to assess the fault diagnosis capability of concerned feature subsets.Finally,the optimal feature subsets are applied to establish fault diagnosis model.According to the experimental results based on two public datasets and comparison with 5 conventional approaches,it can be seen that the average accuracy of the pro-posed method is up to 94.5%,which is superior to that of other conventional approaches.Fault diagnosis performances verify that the optimum feature subset obtained by the presented method can dramatically improve power transformers fault diagnosis accuracy. 展开更多
关键词 Power transformer fault diagnosis kernel extreme learning machine aquila optimization random forest
在线阅读 下载PDF
An Improved Kernel K-Mean Cluster Method and Its Application in Fault Diagnosis of Roller Bearing 被引量:2
5
作者 Ling-Li Jiang Yu-Xiang Cao +1 位作者 Hua-Kui Yin Kong-Shu Deng 《Engineering(科研)》 2013年第1期44-49,共6页
For the kernel K-mean cluster method is run in an implicit feature space, the initial and iterative cluster centers cannot be defined explicitly. Against the deficiency of the initial cluster centers selected in the o... For the kernel K-mean cluster method is run in an implicit feature space, the initial and iterative cluster centers cannot be defined explicitly. Against the deficiency of the initial cluster centers selected in the original space discretionarily in the existing methods, this paper proposes a new method for ensuring the clustering center that virtual clustering centers are defined in the feature space by the original classification as the initial cluster centers and the iteration clustering centers are ensured by the further virtual classification. The improved method is used for fault diagnosis of roller bearing that achieves a good cluster and diagnosis result, which demonstrates the effectiveness of the proposed method. 展开更多
关键词 IMPROVED kernel K-Mean CLUSTER FAULT diagnosis ROLLER BEARING
暂未订购
Application of Kernel GDA to Performance Monitoring and Fault Diagnosis for Rotating Machinery
6
作者 马思乐 张曦 邵惠鹤 《Journal of Donghua University(English Edition)》 EI CAS 2010年第5期709-714,共6页
Faults in rotating machine are difficult to detect and identify,especially when the system is complex and nonlinear.In order to solve this problem,a novel performance monitoring and fault diagnosis method based on ker... Faults in rotating machine are difficult to detect and identify,especially when the system is complex and nonlinear.In order to solve this problem,a novel performance monitoring and fault diagnosis method based on kernel generalized discriminant analysis(kernel GDA,KGDA)was proposed.Through KGDA,the data were mapped from the original space to the high-dimensional feature space.Then the statistic distance between normal data and test data was constructed to detect whether a fault was occurring.If a fault had occurred,similar analysis was used to identify the type of faults.The effectiveness of the proposed method was evaluated by simulation results of vibration signal fault dataset in the rotating machinery,which was scalable to different rotating machinery. 展开更多
关键词 kernel generalized discriminant analysis(KGDA) performance monitoring fault diagnosis rotating machinery
在线阅读 下载PDF
MODIFIED LAPLACIAN EIGENMAP ETHOD FOR FAULT DIAGNOSIS 被引量:9
7
作者 JIANG Quansheng JIA Minping +1 位作者 HU Jianzhong XU Feiyun 《Chinese Journal of Mechanical Engineering》 SCIE EI CAS CSCD 2008年第3期90-93,共4页
A novel method based on the improved Laplacian eigenmap algorithm for fault pattern classification is proposed. Via modifying the Laplacian eigenmap algorithm to replace Euclidean distance with kernel-based geometric ... A novel method based on the improved Laplacian eigenmap algorithm for fault pattern classification is proposed. Via modifying the Laplacian eigenmap algorithm to replace Euclidean distance with kernel-based geometric distance in the neighbor graph construction, the method can preserve the consistency of local neighbor information and effectively extract the low-dimensional manifold features embedded in the high-dimensional nonlinear data sets. A nonlinear dimensionality reduction algorithm based on the improved Laplacian eigenmap is to directly learn high-dimensional fault signals and extract the intrinsic manifold features from them. The method greatly preserves the global geometry structure information embedded in the signals, and obviously improves the classification performance of fault pattern recognition. The experimental results on both simulation and engineering indicate the feasibility and effectiveness of the new method. 展开更多
关键词 Laplacian eigenmap kernel trick Fault diagnosis Manifold learning
在线阅读 下载PDF
Aircraft Engine Gas Path Fault Diagnosis Based on Hybrid PSO-TWSVM 被引量:6
8
作者 Du Yanbin Xiao Lingfei +1 位作者 Chen Yusheng Ding Runze 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI CSCD 2018年第2期334-342,共9页
Twin support vector machine(TWSVM)is a new development of support vector machine(SVM)algorithm.It has the smaller computation scale and the stronger ability to cope with unbalanced problems.In this paper,TWSVM is intr... Twin support vector machine(TWSVM)is a new development of support vector machine(SVM)algorithm.It has the smaller computation scale and the stronger ability to cope with unbalanced problems.In this paper,TWSVM is introduced into aircraft engine gas path fault diagnosis.The generalization capacity of Gauss kernel function usually used in TWSVM is relatively weak.So a mixed kernel function is used to improve performance to ensure that the TWSVM algorithm can better balance a strong generalization ability and a good learning ability.Experimental results prove that the cross validation training accuracy of TWSVM using the mixed kernel function averagely increases 2%.Grid search is usually applied in parameter optimization of TWSVM,but it heavily depends on experience.Therefore,the hybrid particle swarm algorithm is introduced.It can intelligently and rapidly find the global optimum.Experiments prove that its training accuracy is better than that of the classical particle swarm algorithm by 5%. 展开更多
关键词 aircraft engines FAULT diagnosis TWIN support VECTOR machine (TWSVM) hybrid PARTICLE SWARM optimization (HPSO) algorithm mixed kernel function
在线阅读 下载PDF
Fault diagnosis of an intelligent hydraulic pump based on a nonlinear unknown input observer 被引量:16
9
作者 Zhonghai MA Shaoping WANG +2 位作者 Jian SHI Tongyang LI Xingjian WANG 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2018年第2期385-394,共10页
Hydraulic piston pumps are commonly used in aircraft. In order to improve the viability of aircraft and energy efficiency, intelligent variable pressure pump systems have been used in aircraft hydraulic systems more a... Hydraulic piston pumps are commonly used in aircraft. In order to improve the viability of aircraft and energy efficiency, intelligent variable pressure pump systems have been used in aircraft hydraulic systems more and more widely. Efficient fault diagnosis plays an important role in improving the reliability and performance of hydraulic systems. In this paper, a fault diagnosis method of an intelligent hydraulic pump system(IHPS) based on a nonlinear unknown input observer(NUIO) is proposed. Different from factors of a full-order Luenberger-type unknown input observer, nonlinear factors of the IHPS are considered in the NUIO. Firstly, a new type of intelligent pump is presented, the mathematical model of which is established to describe the IHPS. Taking into account the real-time requirements of the IHPS and the special structure of the pump, the mechanism of the intelligent pump and failure modes are analyzed and two typical failure modes are obtained. Furthermore, a NUIO of the IHPS is performed based on the output pressure and swashplate angle signals. With the residual error signals produced by the NUIO, online intelligent pump failure occurring in real-time can be detected. Lastly, through analysis and simulation, it is confirmed that this diagnostic method could accurately diagnose and isolate those typical failure modes of the nonlinear IHPS. The method proposed in this paper is of great significance in improving the reliability of the IHPS. 展开更多
关键词 Fault diagnosis Hydraulic piston pump model-based Nonlinear unknown input observer (NUIO) Residual error
原文传递
A multi-scale convolutional auto-encoder and its application in fault diagnosis of rolling bearings 被引量:12
10
作者 Ding Yunhao Jia Minping 《Journal of Southeast University(English Edition)》 EI CAS 2019年第4期417-423,共7页
Aiming at the difficulty of fault identification caused by manual extraction of fault features of rotating machinery,a one-dimensional multi-scale convolutional auto-encoder fault diagnosis model is proposed,based on ... Aiming at the difficulty of fault identification caused by manual extraction of fault features of rotating machinery,a one-dimensional multi-scale convolutional auto-encoder fault diagnosis model is proposed,based on the standard convolutional auto-encoder.In this model,the parallel convolutional and deconvolutional kernels of different scales are used to extract the features from the input signal and reconstruct the input signal;then the feature map extracted by multi-scale convolutional kernels is used as the input of the classifier;and finally the parameters of the whole model are fine-tuned using labeled data.Experiments on one set of simulation fault data and two sets of rolling bearing fault data are conducted to validate the proposed method.The results show that the model can achieve 99.75%,99.3%and 100%diagnostic accuracy,respectively.In addition,the diagnostic accuracy and reconstruction error of the one-dimensional multi-scale convolutional auto-encoder are compared with traditional machine learning,convolutional neural networks and a traditional convolutional auto-encoder.The final results show that the proposed model has a better recognition effect for rolling bearing fault data. 展开更多
关键词 fault diagnosis deep learning convolutional auto-encoder multi-scale convolutional kernel feature extraction
在线阅读 下载PDF
Cycle temporal algorithm-based multivariate statistical methods for fault diagnosis in chemical processes 被引量:2
11
作者 Jiaxin Zhang Wenjia Luo +1 位作者 Yiyang Dai Yuman Yao 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2022年第7期54-70,共17页
Multivariate statistical process monitoring methods are often used in chemical process fault diagnosis.In this article,(I)the cycle temporal algorithm(CTA)combined with the dynamic kernel principal component analysis(... Multivariate statistical process monitoring methods are often used in chemical process fault diagnosis.In this article,(I)the cycle temporal algorithm(CTA)combined with the dynamic kernel principal component analysis(DKPCA)and the multiway dynamic kernel principal component analysis(MDKPCA)fault detection algorithms are proposed,which are used for continuous and batch process fault detections,respectively.In addition,(II)a fault variable identification model based on reconstructed-based contribution(RBC)model that paves the way for determining the cause of the fault are proposed.The proposed fault diagnosis model was applied to Tennessee Eastman(TE)process and penicillin fermentation process for fault diagnosis.And compare with other fault diagnosis methods.The results show that the proposed method has better detection effects than other methods.Finally,the reconstruction-based contribution(RBC)model method is used to accurately locate the root cause of the fault and determine the fault path. 展开更多
关键词 Cycle temporal algorithm Fault diagnosis Dynamic kernel principal component analysis Multiway dynamic kernel principal component analysis Reconstruction-based contribution
在线阅读 下载PDF
Fault diagnosis method of train control RBC system based on KPCA-SOM network 被引量:4
12
作者 LI Yang-qing LIN Hai-xiang 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2020年第2期161-168,共8页
Radio block center(RBC)system is the core equipment of China train control system-3(CTCS-3).Now,the fault analysis of RBC system mainly depends on manual work,and the diagnostic results are inaccurate and inefficient.... Radio block center(RBC)system is the core equipment of China train control system-3(CTCS-3).Now,the fault analysis of RBC system mainly depends on manual work,and the diagnostic results are inaccurate and inefficient.Therefore,the intelligent fault diagnosis method of RBC system based on one-hot model,kernel principal component analysis(KPCA)and self-organizing map(SOM)network was proposed.Firstly,the fault document matrix based on one-hot model was constructed by the fault feature lexicon selected manually and fault tracking record table.Secondly,the KPCA method was used to reduce the dimension and noise of the fault document matrix to avoid information redundancy.Finally,the processed data were input into the SOM network to train the KPCA-SOM fault classification model.Compared with back propagation(BP)neural network algorithm and SOM network algorithm,common fault patterns of train control RBC system can be effectively distinguished by KPCA-SOM intelligent diagnosis model,and the accuracy and processing efficiency are further improved. 展开更多
关键词 radio block center(RBC)system fault diagnosis self-organizing map(SOM) kernel principal component(KPCA)
在线阅读 下载PDF
Fault diagnosis method of track circuit based on KPCA-SAE 被引量:2
13
作者 JIN Zuchen DONG Yu 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2022年第1期89-95,共7页
At present,ZPW-2000 track circuit fault diagnosis is artificially analyzed and monitored.Its discrimination method not only is low efficient and takes a long period,but also requires highly experienced personnel to an... At present,ZPW-2000 track circuit fault diagnosis is artificially analyzed and monitored.Its discrimination method not only is low efficient and takes a long period,but also requires highly experienced personnel to analyze the data.Therefore,we introduce kernel principal component analysis and stacked auto-encoder network(KPCA-SAD)into the fault diagnosis of ZPW-2000 track circuit.According to the working principle and fault characteristics of track circuit,a fault diagnosis model of KPCA-SAE network is established.The relevant parameters of key components recorded in the data collected by field staff are used as the fault feature parameters.The KPCA method is used to reduce the dimension and noise of fault document matrix to avoid information redundancy.The SAE network is trained by the processed fault data.The model parameters are optimized overall by using back propagation(BP)algorithm.The KPCA-SAE model is simulated in Matlab platform and is finally proved to be effective and feasible.Compared with the traditional method of artificially analyzing fault data and other intelligent algorithms,the KPCA-SAE based classifier has higher fault identification accuracy. 展开更多
关键词 ZPW-2000 track circuit fault diagnosis stacked auto-encoder(SAE) kernel principal component analysis(KPCA)
在线阅读 下载PDF
Online Contribution Rate Based Fault Diagnosis for Nonlinear Industrial Pro cesses 被引量:12
14
作者 PENG Kai-Xiang ZHANG Kai LI Gang 《自动化学报》 EI CSCD 北大核心 2014年第3期423-430,共8页
在过去的十年,核主管部件分析(KPCA ) 在监视区域的数据驱动的过程相当流行地出现了。庞大的工作被做了显示出它的简洁,可行性,和有效性。然而,核诡计的介绍使直接为差错诊断采用传统的贡献阴谋不可能。在这份报纸,根据重游并且分... 在过去的十年,核主管部件分析(KPCA ) 在监视区域的数据驱动的过程相当流行地出现了。庞大的工作被做了显示出它的简洁,可行性,和有效性。然而,核诡计的介绍使直接为差错诊断采用传统的贡献阴谋不可能。在这份报纸,根据重游并且分析存在, KPCA 相关的诊断来临,新贡献率基于方法被建议它能清楚地解释有缺点的变量。而且,为联机非线性的诊断的一个计划被建立。最后,连续搅动的坦克反应堆(CSTR ) 上的案例研究基准被使用存取新方法论的有效性,在有传统的线性方法的比较也被包含的地方。 展开更多
关键词 故障诊断 非线性 搅拌釜式反应器 工业 费率 核主成分分析 KPCA 数据驱动
在线阅读 下载PDF
Application of SABO-VMD-KELM in Fault Diagnosis of Wind Turbines
15
作者 Yuling HE Hao CUI 《Mechanical Engineering Science》 2023年第2期23-29,共7页
In order to improve the accuracy of wind turbine fault diagnosis,a wind turbine fault diagnosis method based on Subtraction-Average-Based Optimizer(SABO)optimized Variational Mode Decomposition(VMD)and Kernel Extreme ... In order to improve the accuracy of wind turbine fault diagnosis,a wind turbine fault diagnosis method based on Subtraction-Average-Based Optimizer(SABO)optimized Variational Mode Decomposition(VMD)and Kernel Extreme Learning Machine(KELM)is proposed.Firstly,the SABO algorithm was used to optimize the VMD parameters and decompose the original signal to obtain the best modal components,and then the nine features were calculated to obtain the feature vectors.Secondly,the SABO algorithm was used to optimize the KELM parameters,and the training set and the test set were divided according to different proportions.The results were compared with the optimized model without SABO algorithm.The experimental results show that the fault diagnosis method of wind turbine based on SABO-VMD-KELM model can achieve fault diagnosis quickly and effectively,and has higher accuracy. 展开更多
关键词 Wind turbine generator Fault diagnosis Subtraction-Average-Based Optimizer(SABO) Variational Mode Decomposition(VMD) kernel Extreme Learning Machine(KELM)
在线阅读 下载PDF
DVRE:dominator-based variables reduction of encoding for model-based diagnosis
16
作者 Jihong OUYANG Sen HUANG +1 位作者 Jinjin CHI Liming ZHANG 《Frontiers of Computer Science》 2025年第7期69-78,共10页
Compiling Model-Based Diagnosis to maximum satisfiability(MaxSAT)is currently a popular method because it can directly calculate the diagnosis.Although the method based on dominator component encoding can reduce the d... Compiling Model-Based Diagnosis to maximum satisfiability(MaxSAT)is currently a popular method because it can directly calculate the diagnosis.Although the method based on dominator component encoding can reduce the difficulty of the problem,with the increase of the system size,the complexity of the solution is also increasing.In this paper,we propose an efficient encoding method to solve this problem.The method makes several significant contributions.First,our strategy significantly reduces the size of the encoding required for constructing MaxSAT formulations in the offline phase,without the need for additional observations.Second,this strategy significantly decreases the number of clauses and variables through system observations,even when dealing with components that have uncertain output values.Last,our algorithm is applicable to both single and multiple observation diagnosis problems,without sacrificing the completeness of the solution set.Experimental results on ISCAS-85 benchmarks show that our algorithm outperforms the state-of-the-art algorithms on both single and multiple observation problems. 展开更多
关键词 model-based diagnosis system observation toplevel diagnosis cardinality-minimal diagnosis SATISFIABILITY
原文传递
Kernel PCA与BP神经网络相结合的变压器故障诊断 被引量:4
17
作者 胡青 杜林 +1 位作者 杨丽君 孙才新 《计算机应用研究》 CSCD 北大核心 2010年第2期580-581,共2页
为了提高变压器故障诊断的准确率和抗干扰能力,提出一种基于核特征量的BP神经网络故障诊断模型。通过核主成分分析将故障样本从低维的特征空间非线性地映射到高维的核空间,提高了样本的可分性,然后以核特征量作为BP神经网络的输入特征量... 为了提高变压器故障诊断的准确率和抗干扰能力,提出一种基于核特征量的BP神经网络故障诊断模型。通过核主成分分析将故障样本从低维的特征空间非线性地映射到高维的核空间,提高了样本的可分性,然后以核特征量作为BP神经网络的输入特征量,建立变压器故障诊断模型。实验对比了结构相似、输入量不同的BP神经网络,结果表明采用核特征量的诊断模型具有更好的诊断效果和抗干扰能力。 展开更多
关键词 核主成分分析 BP神经网络 电力变压器 故障诊断
在线阅读 下载PDF
基于SPSO优化Multiple Kernel-TWSVM的滚动轴承故障诊断 被引量:7
18
作者 徐冠基 曾柯 柏林 《振动.测试与诊断》 EI CSCD 北大核心 2019年第5期973-979,1130,共8页
双子支持向量机(twin support vector machine,简称TWSVM)的核函数选择对其分类性能有着重要影响,TWSVM其核函数一般是局部核函数或者全局核函数,这两种核函数的泛化能力和分类性能不能兼顾。笔者利用综合加权的高斯局部核函数和多项式... 双子支持向量机(twin support vector machine,简称TWSVM)的核函数选择对其分类性能有着重要影响,TWSVM其核函数一般是局部核函数或者全局核函数,这两种核函数的泛化能力和分类性能不能兼顾。笔者利用综合加权的高斯局部核函数和多项式全局核函数方法组成双核函数来改进TWSVM以提高其泛化能力和分类性能,并采用简化粒子群优化(simple particle swarm optimization,简称SPSO)方法来对权值和参数进行优化,提出了SPSO优化Multiple Kernel-TWSVM模型,将该模型应用到滚动轴承故障诊断模式识别中。实验结果表明,双核TWSVM比单核TWSVM和反向传播(back propagation,简称BP)神经网络具有更高的分类准确率。 展开更多
关键词 滚动轴承 故障诊断 相空间重构 简化粒子群优化 双核双子支持向量机
在线阅读 下载PDF
长江经济带经济高质量发展:测度、时空演变与障碍因子诊断 被引量:1
19
作者 周兵 李玉凤 《长江流域资源与环境》 北大核心 2025年第6期1149-1166,共18页
测度长江经济带经济高质量发展水平,考察其分布动态、转移特征、地区差异、空间集聚以及障碍因子,对打造区域经济高质量发展样本,建设中国经济高质量发展的先行示范区具有重要的现实意义。基于2011~2020年长江经济带102个城市基础数据,... 测度长江经济带经济高质量发展水平,考察其分布动态、转移特征、地区差异、空间集聚以及障碍因子,对打造区域经济高质量发展样本,建设中国经济高质量发展的先行示范区具有重要的现实意义。基于2011~2020年长江经济带102个城市基础数据,构建经济高质量发展评价指标体系,综合运用纵横向拉开档次法、定基功效系数法及线性加权法对经济高质量发展水平进行测度。采用核密度估计、马尔科夫链估计、Dagum基尼系数、ArcGIS绘图、空间莫兰指数、局部莫兰散点图以及障碍因子诊断等方法进行系统分析。研究发现:(1)长江经济带经济高质量发展水平在研究期内稳步提升,各省市经济高质量发展水平呈现显著差异;区域发展差距经历了扩大再缩小的过程,多级分化的梯度发展格局逐渐转化为两极分化格局,均衡发展态势逐渐显现;(2)各城市维持当前发展水平的概率较大,高水平城市固化现象得以证实;(3)区域差距主要来源于区域之间,呈逐年缩小的态势;(4)高质量发展呈高高集聚和低低集聚的空间特征,且高水平城市辐射效应显著;(5)人均利用外资金额、居民生活水平、市场化程度、产业结构合理化程度等是影响长江经济带经济高质量发展的主要因素;失业率、人均养老保险参保率和能源效率是部分省市经济高质量发展水平提升的重要阻力因素。 展开更多
关键词 高质量发展 核密度估计 Dagum基尼系数 空间莫兰指数 障碍因子诊断
原文传递
多策略改进COA算法优化LSSVM的变压器故障诊断研究 被引量:3
20
作者 李斌 白翔旭 《电工电能新技术》 北大核心 2025年第4期112-119,共8页
为解决变压器故障诊断准确率低的问题,本文提出一种多策略改进浣熊优化算法(ICOA)与最小二乘支持向量机(LSSVM)相结合的变压器故障诊断方法。首先,通过核主成分分析(KPCA)将变压器故障数据集进行特征提取,降低故障数据维度;其次,应用混... 为解决变压器故障诊断准确率低的问题,本文提出一种多策略改进浣熊优化算法(ICOA)与最小二乘支持向量机(LSSVM)相结合的变压器故障诊断方法。首先,通过核主成分分析(KPCA)将变压器故障数据集进行特征提取,降低故障数据维度;其次,应用混沌映射、透镜反向学习、Levy飞行等策略对浣熊优化算法(COA)进行优化,提高全局寻优能力;然后,应用ICOA算法进行LSSVM参数寻优,构建ICOA-LSSVM故障诊断模型;最后,将特征提取后的数据导入ICOA-LSSVM中并与其他模型对比。实验结果表明所提方法准确率为96.19%,相比其他诊断模型具有更高的故障诊断精度。 展开更多
关键词 变压器故障诊断 浣熊优化算法 核主成分分析 最小二乘支持向量机
在线阅读 下载PDF
上一页 1 2 32 下一页 到第
使用帮助 返回顶部