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Detection of geohazards caused by human disturbance activities based on convolutional neural networks
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作者 ZHANG Heng ZHANG Diandian +1 位作者 YUAN Da LIU Tao 《水利水电技术(中英文)》 北大核心 2025年第S1期731-738,共8页
Human disturbance activities is one of the main reasons for inducing geohazards.Ecological impact assessment metrics of roads are inconsistent criteria and multiple.From the perspective of visual observation,the envir... Human disturbance activities is one of the main reasons for inducing geohazards.Ecological impact assessment metrics of roads are inconsistent criteria and multiple.From the perspective of visual observation,the environment damage can be shown through detecting the uncovered area of vegetation in the images along road.To realize this,an end-to-end environment damage detection model based on convolutional neural network is proposed.A 50-layer residual network is used to extract feature map.The initial parameters are optimized by transfer learning.An example is shown by this method.The dataset including cliff and landslide damage are collected by us along road in Shennongjia national forest park.Results show 0.4703 average precision(AP)rating for cliff damage and 0.4809 average precision(AP)rating for landslide damage.Compared with YOLOv3,our model shows a better accuracy in cliff and landslide detection although a certain amount of speed is sacrificed. 展开更多
关键词 convolutional neural network DETECTION environment damage CLIFF LANDSLIDE
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High-resolution reconstruction of the ablative RT instability flowfield via convolutional neural networks
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作者 Xia Zhiyang Kuang Yuanyuan +1 位作者 Lu Yan Yang Ming 《强激光与粒子束》 CAS CSCD 北大核心 2024年第12期42-49,共8页
High-resolution flow field data has important applications in meteorology,aerospace engineering,high-energy physics and other fields.Experiments and numerical simulations are two main ways to obtain high-resolution fl... High-resolution flow field data has important applications in meteorology,aerospace engineering,high-energy physics and other fields.Experiments and numerical simulations are two main ways to obtain high-resolution flow field data,while the high experiment cost and computing resources for simulation hinder the specificanalysis of flow field evolution.With the development of deep learning technology,convolutional neural networks areused to achieve high-resolution reconstruction of the flow field.In this paper,an ordinary convolutional neuralnetwork and a multi-time-path convolutional neural network are established for the ablative Rayleigh-Taylorinstability.These two methods can reconstruct the high-resolution flow field in just a few seconds,and further greatlyenrich the application of high-resolution reconstruction technology in fluid instability.Compared with the ordinaryconvolutional neural network,the multi-time-path convolutional neural network model has smaller error and canrestore more details of the flow field.The influence of low-resolution flow field data obtained by the two poolingmethods on the convolutional neural networks model is also discussed. 展开更多
关键词 convolutional neural networks ablative Rayleigh-Taylor instability high-resolutionreconstruction multi-time-path pooling
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融合改进采样技术和SRFCNN-BiLSTM的入侵检测方法
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作者 陈虹 由雨竹 +2 位作者 金海波 武聪 邹佳澎 《计算机工程与应用》 北大核心 2025年第9期315-324,共10页
针对目前很多入侵检测方法中因数据不平衡和特征冗余导致检测率低等问题,提出融合改进采样技术和SRFCNN-BiLSTM的入侵检测方法。设计一种FBS-RE混合采样算法,即Borderline-SMOTE过采样和RENN欠采样同时对多数类和少数类样本进行处理,解... 针对目前很多入侵检测方法中因数据不平衡和特征冗余导致检测率低等问题,提出融合改进采样技术和SRFCNN-BiLSTM的入侵检测方法。设计一种FBS-RE混合采样算法,即Borderline-SMOTE过采样和RENN欠采样同时对多数类和少数类样本进行处理,解决数据不平衡问题。利用堆叠降噪自动编码器(stacked denoising auto encoder,SDAE)进行数据降维,减少噪声对数据的影响,去除冗余特征。采用改进的卷积神经网络(split residual fuse convolutional neural network,SRFCNN)和双向长短期记忆网络(bi-directional long short-term memory,BiLSTM)更好地提取数据中的空间和时间特征,结合注意力机制对特征分配不同的权重,获得更好的分类能力,提高对少数攻击流量的检测率。最后,在UNSW-NB15数据集上对模型进行验证,准确率和F1分数为89.24%和90.36%,优于传统机器学习和深度学习模型。 展开更多
关键词 入侵检测 不平衡处理 堆叠降噪自动编码器 卷积神经网络 注意力机制
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Convolutional neural networks for time series classification 被引量:52
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作者 Bendong Zhao Huanzhang Lu +2 位作者 Shangfeng Chen Junliang Liu Dongya Wu 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2017年第1期162-169,共8页
Time series classification is an important task in time series data mining, and has attracted great interests and tremendous efforts during last decades. However, it remains a challenging problem due to the nature of ... Time series classification is an important task in time series data mining, and has attracted great interests and tremendous efforts during last decades. However, it remains a challenging problem due to the nature of time series data: high dimensionality, large in data size and updating continuously. The deep learning techniques are explored to improve the performance of traditional feature-based approaches. Specifically, a novel convolutional neural network (CNN) framework is proposed for time series classification. Different from other feature-based classification approaches, CNN can discover and extract the suitable internal structure to generate deep features of the input time series automatically by using convolution and pooling operations. Two groups of experiments are conducted on simulated data sets and eight groups of experiments are conducted on real-world data sets from different application domains. The final experimental results show that the proposed method outperforms state-of-the-art methods for time series classification in terms of the classification accuracy and noise tolerance. © 1990-2011 Beijing Institute of Aerospace Information. 展开更多
关键词 CONVOLUTION Data mining neural networks Time series Virtual reality
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Discrimination of mining microseismic events and blasts using convolutional neural networks and original waveform 被引量:23
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作者 DONG Long-jun TANG Zheng +2 位作者 LI Xi-bing CHEN Yong-chao XUE Jin-chun 《Journal of Central South University》 SCIE EI CAS CSCD 2020年第10期3078-3089,共12页
Microseismic monitoring system is one of the effective methods for deep mining geo-stress monitoring.The principle of microseismic monitoring system is to analyze the mechanical parameters contained in microseismic ev... Microseismic monitoring system is one of the effective methods for deep mining geo-stress monitoring.The principle of microseismic monitoring system is to analyze the mechanical parameters contained in microseismic events for providing accurate information of rockmass.The accurate identification of microseismic events and blasts determines the timeliness and accuracy of early warning of microseismic monitoring technology.An image identification model based on Convolutional Neural Network(CNN)is established in this paper for the seismic waveforms of microseismic events and blasts.Firstly,the training set,test set,and validation set are collected,which are composed of 5250,1500,and 750 seismic waveforms of microseismic events and blasts,respectively.The classified data sets are preprocessed and input into the constructed CNN in CPU mode for training.Results show that the accuracies of microseismic events and blasts are 99.46%and 99.33%in the test set,respectively.The accuracies of microseismic events and blasts are 100%and 98.13%in the validation set,respectively.The proposed method gives superior performance when compared with existed methods.The accuracies of models using logistic regression and artificial neural network(ANN)based on the same data set are 54.43%and 67.9%in the test set,respectively.Then,the ROC curves of the three models are obtained and compared,which show that the CNN gives an absolute advantage in this classification model when the original seismic waveform are used in training the model.It not only decreases the influence of individual differences in experience,but also removes the errors induced by source and waveform parameters.It is proved that the established discriminant method improves the efficiency and accuracy of microseismic data processing for monitoring rock instability and seismicity. 展开更多
关键词 microseismic monitoring waveform classification microseismic events BLASTS convolutional neural network
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Effective distributed convolutional neural network architecture for remote sensing images target classification with a pre-training approach 被引量:3
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作者 LI Binquan HU Xiaohui 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2019年第2期238-244,共7页
How to recognize targets with similar appearances from remote sensing images(RSIs) effectively and efficiently has become a big challenge. Recently, convolutional neural network(CNN) is preferred in the target classif... How to recognize targets with similar appearances from remote sensing images(RSIs) effectively and efficiently has become a big challenge. Recently, convolutional neural network(CNN) is preferred in the target classification due to the powerful feature representation ability and better performance. However,the training and testing of CNN mainly rely on single machine.Single machine has its natural limitation and bottleneck in processing RSIs due to limited hardware resources and huge time consuming. Besides, overfitting is a challenge for the CNN model due to the unbalance between RSIs data and the model structure.When a model is complex or the training data is relatively small,overfitting occurs and leads to a poor predictive performance. To address these problems, a distributed CNN architecture for RSIs target classification is proposed, which dramatically increases the training speed of CNN and system scalability. It improves the storage ability and processing efficiency of RSIs. Furthermore,Bayesian regularization approach is utilized in order to initialize the weights of the CNN extractor, which increases the robustness and flexibility of the CNN model. It helps prevent the overfitting and avoid the local optima caused by limited RSI training images or the inappropriate CNN structure. In addition, considering the efficiency of the Na¨?ve Bayes classifier, a distributed Na¨?ve Bayes classifier is designed to reduce the training cost. Compared with other algorithms, the proposed system and method perform the best and increase the recognition accuracy. The results show that the distributed system framework and the proposed algorithms are suitable for RSIs target classification tasks. 展开更多
关键词 convolutional neural network (CNN) DISTRIBUTED architecture REMOTE SENSING images (RSIs) TARGET classification pre-training
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Automatic Calcified Plaques Detection in the OCT Pullbacks Using Convolutional Neural Networks 被引量:2
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作者 Chunliu He Yifan Yin +2 位作者 Jiaqiu Wang Biao Xu Zhiyong Li 《医用生物力学》 EI CAS CSCD 北大核心 2019年第A01期109-110,共2页
Background Coronary artery calcification is a well-known marker of atherosclerotic plaque burden.High-resolution intravascular optical coherence tomography(OCT)imaging has shown the potential to characterize the detai... Background Coronary artery calcification is a well-known marker of atherosclerotic plaque burden.High-resolution intravascular optical coherence tomography(OCT)imaging has shown the potential to characterize the details of coronary calcification in vivo.In routine clinical practice,it is a time-consuming and laborious task for clinicians to review the over 250 images in a single pullback.Besides,the imbalance label distribution within the entire pullbacks is another problem,which could lead to the failure of the classifier model.Given the success of deep learning methods with other imaging modalities,a thorough understanding of calcified plaque detection using Convolutional Neural Networks(CNNs)within pullbacks for future clinical decision was required.Methods All 33 IVOCT clinical pullbacks of 33 patients were taken from Affiliated Drum Tower Hospital,Nanjing University between December 2017 and December 2018.For ground-truth annotation,three trained experts determined the type of plaque that was present in a B-Scan.The experts assigned the labels'no calcified plaque','calcified plaque'for each OCT image.All experts were provided the all images for labeling.The final label was determined based on consensus between the experts,different opinions on the plaque type were resolved by asking the experts for a repetition of their evaluation.Before the implement of algorithm,all OCT images was resized to a resolution of 300×300,which matched the range used with standard architectures in the natural image domain.In the study,we randomly selected 26 pullbacks for training,the remaining data were testing.While,imbalance label distribution within entire pullbacks was great challenge for various CNNs architecture.In order to resolve the problem,we designed the following experiment.First,we fine-tuned twenty different CNNs architecture,including customize CNN architectures and pretrained CNN architectures.Considering the nature of OCT images,customize CNN architectures were designed that the layers were fewer than 25 layers.Then,three with good performance were selected and further deep fine-tuned to train three different models.The difference of CNNs was mainly in the model architecture,such as depth-based residual networks,width-based inception networks.Finally,the three CNN models were used to majority voting,the predicted labels were from the most voting.Areas under the receiver operating characteristic curve(ROC AUC)were used as the evaluation metric for the imbalance label distribution.Results The imbalance label distribution within pullbacks affected both convergence during the training phase and generalization of a CNN model.Different labels of OCT images could be classified with excellent performance by fine tuning parameters of CNN architectures.Overall,we find that our final result performed best with an accuracy of 90%of'calcified plaque'class,which the numbers were less than'no calcified plaque'class in one pullback.Conclusions The obtained results showed that the method is fast and effective to classify calcific plaques with imbalance label distribution in each pullback.The results suggest that the proposed method could be facilitating our understanding of coronary artery calcification in the process of atherosclerosis andhelping guide complex interventional strategies in coronary arteries with superficial calcification. 展开更多
关键词 CALCIFIED PLAQUE INTRAVASCULAR optical coherence tomography deep learning IMBALANCE LABEL distribution convolutional neural networks
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Automatic modulation recognition of radiation source signals based on two-dimensional data matrix and improved residual neural network
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作者 Guanghua Yi Xinhong Hao +3 位作者 Xiaopeng Yan Jian Dai Yangtian Liu Yanwen Han 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2024年第3期364-373,共10页
Automatic modulation recognition(AMR)of radiation source signals is a research focus in the field of cognitive radio.However,the AMR of radiation source signals at low SNRs still faces a great challenge.Therefore,the ... Automatic modulation recognition(AMR)of radiation source signals is a research focus in the field of cognitive radio.However,the AMR of radiation source signals at low SNRs still faces a great challenge.Therefore,the AMR method of radiation source signals based on two-dimensional data matrix and improved residual neural network is proposed in this paper.First,the time series of the radiation source signals are reconstructed into two-dimensional data matrix,which greatly simplifies the signal preprocessing process.Second,the depthwise convolution and large-size convolutional kernels based residual neural network(DLRNet)is proposed to improve the feature extraction capability of the AMR model.Finally,the model performs feature extraction and classification on the two-dimensional data matrix to obtain the recognition vector that represents the signal modulation type.Theoretical analysis and simulation results show that the AMR method based on two-dimensional data matrix and improved residual network can significantly improve the accuracy of the AMR method.The recognition accuracy of the proposed method maintains a high level greater than 90% even at -14 dB SNR. 展开更多
关键词 Automatic modulation recognition Radiation source signals Two-dimensional data matrix Residual neural network Depthwise convolution
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Real-time object segmentation based on convolutional neural network with saliency optimization for picking 被引量:1
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作者 CHEN Jinbo WANG Zhiheng LI Hengyu 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2018年第6期1300-1307,共8页
This paper concerns the problem of object segmentation in real-time for picking system. A region proposal method inspired by human glance based on the convolutional neural network is proposed to select promising regio... This paper concerns the problem of object segmentation in real-time for picking system. A region proposal method inspired by human glance based on the convolutional neural network is proposed to select promising regions, allowing more processing is reserved only for these regions. The speed of object segmentation is significantly improved by the region proposal method.By the combination of the region proposal method based on the convolutional neural network and superpixel method, the category and location information can be used to segment objects and image redundancy is significantly reduced. The processing time is reduced considerably by this to achieve the real time. Experiments show that the proposed method can segment the interested target object in real time on an ordinary laptop. 展开更多
关键词 convolutional neural network object detection object segmentation superpixel saliency optimization
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Uplink NOMA signal transmission with convolutional neural networks approach 被引量:3
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作者 LIN Chuan CHANG Qing LI Xianxu 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2020年第5期890-898,共9页
Non-orthogonal multiple access(NOMA), featuring high spectrum efficiency, massive connectivity and low latency, holds immense potential to be a novel multi-access technique in fifth-generation(5G) communication. Succe... Non-orthogonal multiple access(NOMA), featuring high spectrum efficiency, massive connectivity and low latency, holds immense potential to be a novel multi-access technique in fifth-generation(5G) communication. Successive interference cancellation(SIC) is proved to be an effective method to detect the NOMA signal by ordering the power of received signals and then decoding them. However, the error accumulation effect referred to as error propagation is an inevitable problem. In this paper,we propose a convolutional neural networks(CNNs) approach to restore the desired signal impaired by the multiple input multiple output(MIMO) channel. Especially in the uplink NOMA scenario,the proposed method can decode multiple users' information in a cluster instantaneously without any traditional communication signal processing steps. Simulation experiments are conducted in the Rayleigh channel and the results demonstrate that the error performance of the proposed learning system outperforms that of the classic SIC detection. Consequently, deep learning has disruptive potential to replace the conventional signal detection method. 展开更多
关键词 non-orthogonal multiple access(NOMA) deep learning(DL) convolutional neural networks(CNNs) signal detection
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Deep convolutional neural network for meteorology target detection in airborne weather radar images 被引量:2
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作者 YU Chaopeng XIONG Wei +1 位作者 LI Xiaoqing DONG Lei 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2023年第5期1147-1157,共11页
Considering the problem that the scattering echo images of airborne Doppler weather radar are often reduced by ground clutters,the accuracy and confidence of meteorology target detection are reduced.In this paper,a de... Considering the problem that the scattering echo images of airborne Doppler weather radar are often reduced by ground clutters,the accuracy and confidence of meteorology target detection are reduced.In this paper,a deep convolutional neural network(DCNN)is proposed for meteorology target detection and ground clutter suppression with a large collection of airborne weather radar images as network input.For each weather radar image,the corresponding digital elevation model(DEM)image is extracted on basis of the radar antenna scan-ning parameters and plane position,and is further fed to the net-work as a supplement for ground clutter suppression.The fea-tures of actual meteorology targets are learned in each bottle-neck module of the proposed network and convolved into deeper iterations in the forward propagation process.Then the network parameters are updated by the back propagation itera-tion of the training error.Experimental results on the real mea-sured images show that our proposed DCNN outperforms the counterparts in terms of six evaluation factors.Meanwhile,the network outputs are in good agreement with the expected mete-orology detection results(labels).It is demonstrated that the pro-posed network would have a promising meteorology observa-tion application with minimal effort on network variables or parameter changes. 展开更多
关键词 meteorology target detection ground clutter sup-pression weather radar images convolutional neural network(CNN)
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基于CWGAN⁃ABiLSTM⁃FCN的运动想象脑电信号分类
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作者 吴生彪 程显朋 李花宁 《现代电子技术》 北大核心 2025年第7期57-64,共8页
针对运动想象脑电信号(MI⁃EEG)样本数据分布不平衡、时序特征提取时对长距离的依赖和关注度不均衡、局部特征提取难导致的基于MI⁃EEG的运动意图识别实时性差、精度低的问题,提出一种融合改进的双向长短时记忆神经网络(BiLSTM)和全卷积... 针对运动想象脑电信号(MI⁃EEG)样本数据分布不平衡、时序特征提取时对长距离的依赖和关注度不均衡、局部特征提取难导致的基于MI⁃EEG的运动意图识别实时性差、精度低的问题,提出一种融合改进的双向长短时记忆神经网络(BiLSTM)和全卷积神经网络(FCN)的MI⁃EEG信号分类方法。首先,该方法利用条件生成对抗网络产生虚假的MI⁃EEG信号样本,实现训练样本集的有效扩充,解决了数据集过少且各类别数量不平衡的问题;其次,利用双向自注意力长短时记忆神经网络和全卷积神经网络的各自优势,避免了时序特征提取时对长距离的依赖和关注度不均衡、局部特征提取难以及无法兼顾MI⁃EEG信号的时⁃空域特征的问题;在此基础上,构建融合特征与动作分类标签间的非线性映射关系,从而提高模型的识别精度。最终将此分类模型与其他的MI⁃EEG分类模型在测试数据集进行了对比实验。研究成果表明,该MI⁃EEG识别模型准确度达到了97%,显示出较强的泛化能力。 展开更多
关键词 运动想象 脑电信号分类 生成对抗网络 长短时记忆网络 全卷积神经网络 注意力机制
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基于MMFFCNN-GCN的门式启闭机轴承半监督故障诊断
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作者 包唐伟 张世杰 +1 位作者 武世虎 夏诗雨 《机床与液压》 北大核心 2025年第15期158-165,共8页
在实际水电站门式启闭机中,收集到的轴承标记数据往往很少,传统数据驱动故障诊断方法在有限标记数据集上无法获得令人满意的结果。针对这一问题,提出一种基于多域多尺度特征融合卷积网络(MMFFCNN)和图卷积(GCN)的半监督故障诊断方法。... 在实际水电站门式启闭机中,收集到的轴承标记数据往往很少,传统数据驱动故障诊断方法在有限标记数据集上无法获得令人满意的结果。针对这一问题,提出一种基于多域多尺度特征融合卷积网络(MMFFCNN)和图卷积(GCN)的半监督故障诊断方法。通过变分模态分解对振动信号进行分解,选择主要成分进行重构。对重构信号采用快速傅里叶变换提取频域特征,同时利用连续小波变换提取时频域特征,采用多尺度卷积网络进行特征提取与融合。采用K最近邻基于特征向量构建图结构,继而构建图卷积模型实现半监督故障诊断。最后,利用凯斯西储大学轴承数据集进行验证。结果表明:所提方法在20%标记数据下准确率达到99.59%;相比单一时频特征(方法四),加入时域和频域特征(文中方法)使准确率提升0.93%;多尺度卷积网络(方法三)比单尺度CNN(方法二)准确率提高1.78%;引入GCN半监督机制,文中方法比方法五的准确率提升2.44%;表明该方法能够提高有限标记数据集下模型故障诊断的准确率。 展开更多
关键词 门式启闭机轴承 半监督故障诊断 多域多尺度特征融合卷积网络(MMFfcnN) 图卷积(GCN)
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强噪声干扰下基于SVMD-FFCNN的深沟球轴承故障分类模型
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作者 李友家 张忠伟 +2 位作者 焦宗豪 李新宇 秦贺 《机电工程》 北大核心 2025年第4期686-696,共11页
针对滚动轴承振动信号易受到外界噪声的干扰,导致故障特征信号微弱甚至被淹没,难以提取有效的故障特征的问题,提出了一种基于逐次变分模态分解与特征融合卷积神经网络(SVMD-FFCNN)的故障诊断方法。首先,利用SVMD对原始振动信号进行了模... 针对滚动轴承振动信号易受到外界噪声的干扰,导致故障特征信号微弱甚至被淹没,难以提取有效的故障特征的问题,提出了一种基于逐次变分模态分解与特征融合卷积神经网络(SVMD-FFCNN)的故障诊断方法。首先,利用SVMD对原始振动信号进行了模态分解,得到了固有模态函数(IMF)分量,并计算了皮尔森相关系数,筛选出相关程度大的分量,对信号进行了重构,完成了信号的降噪工作,并以降噪后的信号作为输入数据;然后,搭建了特征融合卷积神经网络模型(FFCNN),对卷积神经网络(CNN)提取到的浅层特征以及利用不同映射方法获取的深层特征成分进行了融合,提取了更具代表性的故障特征;最后,以SoftMax作为分类器,进行了深沟球轴承故障的分类任务,采用SKF6203深沟球轴承,并利用搭建的轴承故障模拟实验台采集了深沟球轴承振动数据,对SVMD-FFCNN方法进行了实验验证,并将其与其他方法进行了对比分析。研究结果表明:SVMD方法能够有效降低噪声的干扰,相较于未经过SVMD降噪处理的信号,实测实验信号信噪比提升了116.22%,均方根误差减低了56.10%;SVMD-FFCNN方法在噪声环境下的平均准确精度达到了99.37%,且三个转速工况下的诊断精度均达到了99%以上。上述结果表明,该方法在噪声环境下具有更优越的故障诊断性能。 展开更多
关键词 滚动轴承 强噪声干扰 智能故障诊断 逐次变分模态分解 特征融合卷积神经网络 SoftMax分类器
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基于LSTM-SAFCN模型的生物质锅炉NO_(x)排放浓度预测 被引量:1
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作者 何德峰 刘明裕 +2 位作者 孙芷菲 王秀丽 李廉明 《高技术通讯》 CAS 北大核心 2024年第1期92-100,共9页
针对生物质锅炉燃烧过程的动态特性,提出一种改进的长短期记忆-自注意力机制全卷积神经网络(LSTM-SAFCN)模型用于预测NO_(x)排放浓度。首先利用完全自适应噪声集合经验模态分解法(CEEMDAN)对数据进行预处理,消除数据噪声对NO_(x)排放浓... 针对生物质锅炉燃烧过程的动态特性,提出一种改进的长短期记忆-自注意力机制全卷积神经网络(LSTM-SAFCN)模型用于预测NO_(x)排放浓度。首先利用完全自适应噪声集合经验模态分解法(CEEMDAN)对数据进行预处理,消除数据噪声对NO_(x)排放浓度预测的影响;其次融合自注意力机制与长短时记忆-全卷积神经网络(LSTM-FCN)进行特征提取与预测建模,该拓展方法能够同时兼顾时间序列数据的局部细节与长期趋势特征;最后,利用生物质热电联产系统的实际运行数据验证了所提算法的有效性。 展开更多
关键词 生物质锅炉 NO_(x)排放浓度预测 经验模态分解 长短时记忆-全卷积神经网络(LSTM-fcn) 自注意力机制
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基于CNN-Swin Transformer Network的LPI雷达信号识别 被引量:1
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作者 苏琮智 杨承志 +2 位作者 邴雨晨 吴宏超 邓力洪 《现代雷达》 CSCD 北大核心 2024年第3期59-65,共7页
针对在低信噪比(SNR)条件下,低截获概率雷达信号调制方式识别准确率低的问题,提出一种基于Transformer和卷积神经网络(CNN)的雷达信号识别方法。首先,引入Swin Transformer模型并在模型前端设计CNN特征提取层构建了CNN+Swin Transforme... 针对在低信噪比(SNR)条件下,低截获概率雷达信号调制方式识别准确率低的问题,提出一种基于Transformer和卷积神经网络(CNN)的雷达信号识别方法。首先,引入Swin Transformer模型并在模型前端设计CNN特征提取层构建了CNN+Swin Transformer网络(CSTN),然后利用时频分析获取雷达信号的时频特征,对图像进行预处理后输入CSTN模型进行训练,由网络的底部到顶部不断提取图像更丰富的语义信息,最后通过Softmax分类器对六类不同调制方式信号进行分类识别。仿真实验表明:在SNR为-18 dB时,该方法对六类典型雷达信号的平均识别率达到了94.26%,证明了所提方法的可行性。 展开更多
关键词 低截获概率雷达 信号调制方式识别 Swin Transformer网络 卷积神经网络 时频分析
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A novel multi-resolution network for the open-circuit faults diagnosis of automatic ramming drive system 被引量:1
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作者 Liuxuan Wei Linfang Qian +3 位作者 Manyi Wang Minghao Tong Yilin Jiang Ming Li 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2024年第4期225-237,共13页
The open-circuit fault is one of the most common faults of the automatic ramming drive system(ARDS),and it can be categorized into the open-phase faults of Permanent Magnet Synchronous Motor(PMSM)and the open-circuit ... The open-circuit fault is one of the most common faults of the automatic ramming drive system(ARDS),and it can be categorized into the open-phase faults of Permanent Magnet Synchronous Motor(PMSM)and the open-circuit faults of Voltage Source Inverter(VSI). The stator current serves as a common indicator for detecting open-circuit faults. Due to the identical changes of the stator current between the open-phase faults in the PMSM and failures of double switches within the same leg of the VSI, this paper utilizes the zero-sequence voltage component as an additional diagnostic criterion to differentiate them.Considering the variable conditions and substantial noise of the ARDS, a novel Multi-resolution Network(Mr Net) is proposed, which can extract multi-resolution perceptual information and enhance robustness to the noise. Meanwhile, a feature weighted layer is introduced to allocate higher weights to characteristics situated near the feature frequency. Both simulation and experiment results validate that the proposed fault diagnosis method can diagnose 25 types of open-circuit faults and achieve more than98.28% diagnostic accuracy. In addition, the experiment results also demonstrate that Mr Net has the capability of diagnosing the fault types accurately under the interference of noise signals(Laplace noise and Gaussian noise). 展开更多
关键词 Fault diagnosis Deep learning Multi-scale convolution Open-circuit convolutional neural network
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Identification of Typical Rice Diseases Based on Interleaved Attention Neural Network
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作者 Wen Xin Jia Yin-jiang Su Zhong-bin 《Journal of Northeast Agricultural University(English Edition)》 CAS 2021年第4期87-96,共10页
Taking Jiuhong Modern Agriculture Demonstration Park of Heilongjiang Province as the base for rice disease image acquisition,a total of 841 images of the four different diseases,including rice blast,stripe leaf blight... Taking Jiuhong Modern Agriculture Demonstration Park of Heilongjiang Province as the base for rice disease image acquisition,a total of 841 images of the four different diseases,including rice blast,stripe leaf blight,red blight and bacterial brown spot,were obtained.In this study,an interleaved attention neural network(IANN)was proposed to realize the recognition of rice disease images and an interleaved group convolutions(IGC)network was introduced to reduce the number of convolutional parameters,which realized the information interaction between channels.Based on the convolutional block attention module(CBAM),attention was paid to the features of results of the primary group convolution in the cross-group convolution to improve the classification performance of the deep learning model.The results showed that the classification accuracy of IANN was 96.14%,which was 4.72%higher than that of the classical convolutional neural network(CNN).This study showed a new idea for the efficient training of neural networks in the case of small samples and provided a reference for the image recognition and diagnosis of rice and other crop diseases. 展开更多
关键词 disease identification convolutional neural network interleaved attention neural network
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Multi-dimension and multi-modal rolling mill vibration prediction model based on multi-level network fusion
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作者 CHEN Shu-zong LIU Yun-xiao +3 位作者 WANG Yun-long QIAN Cheng HUA Chang-chun SUN Jie 《Journal of Central South University》 SCIE EI CAS CSCD 2024年第9期3329-3348,共20页
Mill vibration is a common problem in rolling production,which directly affects the thickness accuracy of the strip and may even lead to strip fracture accidents in serious cases.The existing vibration prediction mode... Mill vibration is a common problem in rolling production,which directly affects the thickness accuracy of the strip and may even lead to strip fracture accidents in serious cases.The existing vibration prediction models do not consider the features contained in the data,resulting in limited improvement of model accuracy.To address these challenges,this paper proposes a multi-dimensional multi-modal cold rolling vibration time series prediction model(MDMMVPM)based on the deep fusion of multi-level networks.In the model,the long-term and short-term modal features of multi-dimensional data are considered,and the appropriate prediction algorithms are selected for different data features.Based on the established prediction model,the effects of tension and rolling force on mill vibration are analyzed.Taking the 5th stand of a cold mill in a steel mill as the research object,the innovative model is applied to predict the mill vibration for the first time.The experimental results show that the correlation coefficient(R^(2))of the model proposed in this paper is 92.5%,and the root-mean-square error(RMSE)is 0.0011,which significantly improves the modeling accuracy compared with the existing models.The proposed model is also suitable for the hot rolling process,which provides a new method for the prediction of strip rolling vibration. 展开更多
关键词 rolling mill vibration multi-dimension data multi-modal data convolutional neural network time series prediction
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计及铁心非线性的变压器空间动态磁场加速计算方法 被引量:1
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作者 司马文霞 孙佳琪 +3 位作者 杨鸣 邹德旭 彭庆军 王劲松 《电工技术学报》 北大核心 2025年第5期1559-1574,共16页
快速获得变压器空间磁场动态分布是构建变压器数字孪生体的基础之一,然而现有快速计算方法难以快速、准确地获得铁心饱和工况下的磁场分布特性。因此,该文提出了计及铁心非线性的变压器空间动态磁场加速计算方法。首先,构建变压器电磁... 快速获得变压器空间磁场动态分布是构建变压器数字孪生体的基础之一,然而现有快速计算方法难以快速、准确地获得铁心饱和工况下的磁场分布特性。因此,该文提出了计及铁心非线性的变压器空间动态磁场加速计算方法。首先,构建变压器电磁场路耦合仿真模型,对关键变量进行参数化扫描,仿真获得不同非线性工况下的大量磁场数据,构建涉及铁心非线性工况的主磁通和漏磁通数据集;其次,提出融合卷积神经网络(CNN)和长短期记忆网络(LSTM)的双分支深度学习模型,训练提取磁场数据的空间和时间特征,解决主、漏磁通差异大造成的模型训练难题;最后,利用模型获得输入电压、电流与内部空间磁场分布的非线性映射关系,实现空间动态磁场的加速计算,为变压器数字孪生体的构建提供了快速获得磁场数据的方法。 展开更多
关键词 非线性 卷积神经网络 长短期记忆网络 磁场 加速计算
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