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A Deep Auto-encoder Based Security Mechanism for Protecting Sensitive Data Using AI Based Risk Assessment
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作者 Lavanya M Mangayarkarasi S 《Journal of Harbin Institute of Technology(New Series)》 2025年第4期90-98,共9页
Big data has ushered in an era of unprecedented access to vast amounts of new,unstructured data,particularly in the realm of sensitive information.It presents unique opportunities for enhancing risk alerting systems,b... Big data has ushered in an era of unprecedented access to vast amounts of new,unstructured data,particularly in the realm of sensitive information.It presents unique opportunities for enhancing risk alerting systems,but also poses challenges in terms of extraction and analysis due to its diverse file formats.This paper proposes the utilization of a DAE-based(Deep Auto-encoders)model for projecting risk associated with financial data.The research delves into the development of an indicator assessing the degree to which organizations successfully avoid displaying bias in handling financial information.Simulation results demonstrate the superior performance of the DAE algorithm,showcasing fewer false positives,improved overall detection rates,and a noteworthy 9%reduction in failure jitter.The optimized DAE algorithm achieves an accuracy of 99%,surpassing existing methods,thereby presenting a robust solution for sensitive data risk projection. 展开更多
关键词 data mining sensitive data deep auto-encoders
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地西他滨联合MAE方案治疗急性髓系白血病效果及对血清TK1和IL-6及Hepc水平影响
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作者 刘芳 杨瑞峥 杨爽 《医药论坛杂志》 2025年第2期198-202,共5页
目的 研究急性髓系白血病患者采用地西他滨联合MAE方案(米托蒽醌+阿糖胞苷)治疗的效果及治疗前后血清胸苷激酶(thymidine kinase 1,TK1)、白细胞介素—6(interleukin-6,IL-6)和铁调素(hepcidin,Hepc)水平的变化。方法 选取郑州大学第一... 目的 研究急性髓系白血病患者采用地西他滨联合MAE方案(米托蒽醌+阿糖胞苷)治疗的效果及治疗前后血清胸苷激酶(thymidine kinase 1,TK1)、白细胞介素—6(interleukin-6,IL-6)和铁调素(hepcidin,Hepc)水平的变化。方法 选取郑州大学第一附属医院2021年2月—2023年1月收治的急性髓系白血病92例,将采用MAE方案治疗的46例作为对照组,采用地西他滨联合MAE方案治疗的46例作为研究组。回顾性比较两组临床疗效、治疗前后血管生成调控因子[碱性成纤维细胞生长因子(basic fibroblast growth factor,bFGF)、血管内皮生长因子(vascular endothelial growth factor,VEGF)]水平、血清TK1、IL-6、白细胞介素-22(interleukin-22,IL-22)、Hepc水平、卡式评分(Karnofsky performance status,KPS)及不良反应。结果 研究组总有效率82.61%,高于对照组63.04%,差异有统计学意义(P<0.05);两组治疗前bFGF及VEGF水平比较,差异无统计学意义(P>0.05),治疗28 d后均降低,且研究组血清bFGF及VEGF水平为(15.69±3.68)IU/mg及(53.64±6.79)pg/mL,均低于对照组,差异有统计学意义(P<0.05);研究组治疗后28 d血清TK1、IL-6、IL-22、Hepc水平分别是(2.75±0.63)pmol/L、(22.68±4.52)ng/L、(19.85±3.14)ng/L及(191.02±21.63)ng/mL,均低于对照组,差异有统计学意义(P<0.05);两组治疗28 d后KPS评分均升高,且研究组(85.46±4.12)分,高于对照组(77.35±5.39)分,差异有统计学意义(P<0.05);不良反应总发生率方面,研究组18.60%与对照组11.63%比较,差异无统计学意义(P>0.05)。结论 地西他滨联合MAE方案治疗急性髓系白血病疗效确切,抑制病情发展,改善机体状况,且安全性较高。 展开更多
关键词 地西他滨 mae方案 急性髓系白血病 疗效
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A multi-scale convolutional auto-encoder and its application in fault diagnosis of rolling bearings 被引量:12
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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
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Fault Diagnosis of Motor in Frequency Domain Signal by Stacked De-noising Auto-encoder 被引量:5
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作者 Xiaoping Zhao Jiaxin Wu +2 位作者 Yonghong Zhang Yunqing Shi Lihua Wang 《Computers, Materials & Continua》 SCIE EI 2018年第11期223-242,共20页
With the rapid development of mechanical equipment,mechanical health monitoring field has entered the era of big data.Deep learning has made a great achievement in the processing of large data of image and speech due ... With the rapid development of mechanical equipment,mechanical health monitoring field has entered the era of big data.Deep learning has made a great achievement in the processing of large data of image and speech due to the powerful modeling capabilities,this also brings influence to the mechanical fault diagnosis field.Therefore,according to the characteristics of motor vibration signals(nonstationary and difficult to deal with)and mechanical‘big data’,combined with deep learning,a motor fault diagnosis method based on stacked de-noising auto-encoder is proposed.The frequency domain signals obtained by the Fourier transform are used as input to the network.This method can extract features adaptively and unsupervised,and get rid of the dependence of traditional machine learning methods on human extraction features.A supervised fine tuning of the model is then carried out by backpropagation.The Asynchronous motor in Drivetrain Dynamics Simulator system was taken as the research object,the effectiveness of the proposed method was verified by a large number of data,and research on visualization of network output,the results shown that the SDAE method is more efficient and more intelligent. 展开更多
关键词 Big data deep learning stacked de-noising auto-encoder fourier transform
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Outlier Detection for Water Supply Data Based on Joint Auto-Encoder 被引量:2
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作者 Shu Fang Lei Huang +2 位作者 Yi Wan Weize Sun Jingxin Xu 《Computers, Materials & Continua》 SCIE EI 2020年第7期541-555,共15页
With the development of science and technology,the status of the water environment has received more and more attention.In this paper,we propose a deep learning model,named a Joint Auto-Encoder network,to solve the pr... With the development of science and technology,the status of the water environment has received more and more attention.In this paper,we propose a deep learning model,named a Joint Auto-Encoder network,to solve the problem of outlier detection in water supply data.The Joint Auto-Encoder network first expands the size of training data and extracts the useful features from the input data,and then reconstructs the input data effectively into an output.The outliers are detected based on the network’s reconstruction errors,with a larger reconstruction error indicating a higher rate to be an outlier.For water supply data,there are mainly two types of outliers:outliers with large values and those with values closed to zero.We set two separate thresholds,and,for the reconstruction errors to detect the two types of outliers respectively.The data samples with reconstruction errors exceeding the thresholds are voted to be outliers.The two thresholds can be calculated by the classification confusion matrix and the receiver operating characteristic(ROC)curve.We have also performed comparisons between the Joint Auto-Encoder and the vanilla Auto-Encoder in this paper on both the synthesis data set and the MNIST data set.As a result,our model has proved to outperform the vanilla Auto-Encoder and some other outlier detection approaches with the recall rate of 98.94 percent in water supply data. 展开更多
关键词 Water supply data outlier detection auto-encoder deep learning
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SNP site-drug association prediction algorithm based on denoising variational auto-encoder 被引量:2
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作者 SONG Xiaoyu FENG Xiaobei +3 位作者 ZHU Lin LIU Tong WU Hongyang LI Yifan 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2022年第3期300-308,共9页
Single nucletide polymorphism(SNP)is an important factor for the study of genetic variation in human families and animal and plant strains.Therefore,it is widely used in the study of population genetics and disease re... Single nucletide polymorphism(SNP)is an important factor for the study of genetic variation in human families and animal and plant strains.Therefore,it is widely used in the study of population genetics and disease related gene.In pharmacogenomics research,identifying the association between SNP site and drug is the key to clinical precision medication,therefore,a predictive model of SNP site and drug association based on denoising variational auto-encoder(DVAE-SVM)is proposed.Firstly,k-mer algorithm is used to construct the initial SNP site feature vector,meanwhile,MACCS molecular fingerprint is introduced to generate the feature vector of the drug module.Then,we use the DVAE to extract the effective features of the initial feature vector of the SNP site.Finally,the effective feature vector of the SNP site and the feature vector of the drug module are fused input to the support vector machines(SVM)to predict the relationship of SNP site and drug module.The results of five-fold cross-validation experiments indicate that the proposed algorithm performs better than random forest(RF)and logistic regression(LR)classification.Further experiments show that compared with the feature extraction algorithms of principal component analysis(PCA),denoising auto-encoder(DAE)and variational auto-encode(VAE),the proposed algorithm has better prediction results. 展开更多
关键词 association prediction k-mer molecular fingerprinting support vector machine(SVM) denoising variational auto-encoder(DVAE)
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Application of Improved Deep Auto-Encoder Network in Rolling Bearing Fault Diagnosis 被引量:1
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作者 Jian Di Leilei Wang 《Journal of Computer and Communications》 2018年第7期41-53,共13页
Since the effectiveness of extracting fault features is not high under traditional bearing fault diagnosis method, a bearing fault diagnosis method based on Deep Auto-encoder Network (DAEN) optimized by Cloud Adaptive... Since the effectiveness of extracting fault features is not high under traditional bearing fault diagnosis method, a bearing fault diagnosis method based on Deep Auto-encoder Network (DAEN) optimized by Cloud Adaptive Particle Swarm Optimization (CAPSO) was proposed. On the basis of analyzing CAPSO and DAEN, the CAPSO-DAEN fault diagnosis model is built. The model uses the randomness and stability of CAPSO algorithm to optimize the connection weight of DAEN, to reduce the constraints on the weights and extract fault features adaptively. Finally, efficient and accurate fault diagnosis can be implemented with the Softmax classifier. The results of test show that the proposed method has higher diagnostic accuracy and more stable diagnosis results than those based on the DAEN, Support Vector Machine (SVM) and the Back Propagation algorithm (BP) under appropriate parameters. 展开更多
关键词 FAULT Diagnosis ROLLING BEARING Deep auto-encoder NETWORK CAPSO Algorithm Feature Extraction
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An Efficient Encryption and Compression of Sensed IoT Medical Images Using Auto-Encoder
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作者 Passent El-kafrawy Maie Aboghazalah +2 位作者 Abdelmoty M.Ahmed Hanaa Torkey Ayman El-Sayed 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第2期909-926,共18页
Healthcare systems nowadays depend on IoT sensors for sending data over the internet as a common practice.Encryption ofmedical images is very important to secure patient information.Encrypting these images consumes a ... Healthcare systems nowadays depend on IoT sensors for sending data over the internet as a common practice.Encryption ofmedical images is very important to secure patient information.Encrypting these images consumes a lot of time onedge computing;therefore,theuse of anauto-encoder for compressionbefore encodingwill solve such a problem.In this paper,we use an auto-encoder to compress amedical image before encryption,and an encryption output(vector)is sent out over the network.On the other hand,a decoder was used to reproduce the original image back after the vector was received and decrypted.Two convolutional neural networks were conducted to evaluate our proposed approach:The first one is the auto-encoder,which is utilized to compress and encrypt the images,and the other assesses the classification accuracy of the image after decryption and decoding.Different hyperparameters of the encoder were tested,followed by the classification of the image to verify that no critical information was lost,to test the encryption and encoding resolution.In this approach,sixteen hyperparameter permutations are utilized,but this research discusses three main cases in detail.The first case shows that the combination of Mean Square Logarithmic Error(MSLE),ADAgrad,two layers for the auto-encoder,and ReLU had the best auto-encoder results with a Mean Absolute Error(MAE)=0.221 after 50 epochs and 75%classification with the best result for the classification algorithm.The second case shows the reflection of auto-encoder results on the classification results which is a combination ofMean Square Error(MSE),RMSprop,three layers for the auto-encoder,and ReLU,which had the best classification accuracy of 65%,the auto-encoder gives MAE=0.31 after 50 epochs.The third case is the worst,which is the combination of the hinge,RMSprop,three layers for the auto-encoder,and ReLU,providing accuracy of 20%and MAE=0.485. 展开更多
关键词 auto-encoder CLOUD image encryption IOT healthcare
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Fault Diagnosis for Rolling Bearings with Stacked Denoising Auto-encoder of Information Aggregation
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作者 Li Zhang Xin Gao Xiao Xu 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2019年第4期69-77,共9页
Rolling bearings are important central components in rotating machines, whose fault diagnosis is crucial in condition-based maintenance to reduce the complexity of different kinds of faults. To classify various rollin... Rolling bearings are important central components in rotating machines, whose fault diagnosis is crucial in condition-based maintenance to reduce the complexity of different kinds of faults. To classify various rolling bearing faults, a prognostic algorithm consisting of four phases was proposed. Since stacked denoising auto-encoder can be filtered, noise of large numbers of mechanical vibration signals was used for deep learning structure to extract the characteristics of the noise. Unsupervised pre-training method, which can greatly simplify the traditional manual extraction approach, was utilized to process the depth of the data automatically. Furthermore, the aggregation layer of stacked denoising auto-encoder(SDA) was proposed to get rid of gradient disappearance in deeper layers of network, mix superficial nodes’ expression with deeper layers, and avoid the insufficient express ability in deeper layers. Principal component analysis(PCA) was adopted to extract different features for classification. According to the experimental data of this method and from the comparison results, the proposed method of rolling bearing fault classification reached 97.02% of correct rate, suggesting a better performance than other algorithms. 展开更多
关键词 DEEP learning stacked DENOISING auto-encoder FAULT diagnosis PCA classification
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Transfer learning with deep sparse auto-encoder for speech emotion recognition
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作者 Liang Zhenlin Liang Ruiyu +3 位作者 Tang Manting Xie Yue Zhao Li Wang Shijia 《Journal of Southeast University(English Edition)》 EI CAS 2019年第2期160-167,共8页
In order to improve the efficiency of speech emotion recognition across corpora,a speech emotion transfer learning method based on the deep sparse auto-encoder is proposed.The algorithm first reconstructs a small amou... In order to improve the efficiency of speech emotion recognition across corpora,a speech emotion transfer learning method based on the deep sparse auto-encoder is proposed.The algorithm first reconstructs a small amount of data in the target domain by training the deep sparse auto-encoder,so that the encoder can learn the low-dimensional structural representation of the target domain data.Then,the source domain data and the target domain data are coded by the trained deep sparse auto-encoder to obtain the reconstruction data of the low-dimensional structural representation close to the target domain.Finally,a part of the reconstructed tagged target domain data is mixed with the reconstructed source domain data to jointly train the classifier.This part of the target domain data is used to guide the source domain data.Experiments on the CASIA,SoutheastLab corpus show that the model recognition rate after a small amount of data transferred reached 89.2%and 72.4%on the DNN.Compared to the training results of the complete original corpus,it only decreased by 2%in the CASIA corpus,and only 3.4%in the SoutheastLab corpus.Experiments show that the algorithm can achieve the effect of labeling all data in the extreme case that the data set has only a small amount of data tagged. 展开更多
关键词 sparse auto-encoder transfer learning speech emotion recognition
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Feature-aided pose estimation approach based on variational auto-encoder structure for spacecrafts
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作者 Yanfang LIU Rui ZHOU +2 位作者 Desong DU Shuqing CAO Naiming QI 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2024年第8期329-341,共13页
Real-time 6 Degree-of-Freedom(DoF)pose estimation is of paramount importance for various on-orbit tasks.Benefiting from the development of deep learning,Convolutional Neural Networks(CNNs)in feature extraction has yie... Real-time 6 Degree-of-Freedom(DoF)pose estimation is of paramount importance for various on-orbit tasks.Benefiting from the development of deep learning,Convolutional Neural Networks(CNNs)in feature extraction has yielded impressive achievements for spacecraft pose estimation.To improve the robustness and interpretability of CNNs,this paper proposes a Pose Estimation approach based on Variational Auto-Encoder structure(PE-VAE)and a Feature-Aided pose estimation approach based on Variational Auto-Encoder structure(FA-VAE),which aim to accurately estimate the 6 DoF pose of a target spacecraft.Both methods treat the pose vector as latent variables,employing an encoder-decoder network with a Variational Auto-Encoder(VAE)structure.To enhance the precision of pose estimation,PE-VAE uses the VAE structure to introduce reconstruction mechanism with the whole image.Furthermore,FA-VAE enforces feature shape constraints by exclusively reconstructing the segment of the target spacecraft with the desired shape.Comparative evaluation against leading methods on public datasets reveals similar accuracy with a threefold improvement in processing speed,showcasing the significant contribution of VAE structures to accuracy enhancement,and the additional benefit of incorporating global shape prior features. 展开更多
关键词 Pose estimation Variational auto-encoder Feature-aided Pose Estimation Approach On-orbit measurement tasks Simulated and experimental dataset
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Deep Learning-Based Stacked Auto-Encoder with Dynamic Differential Annealed Optimization for Skin Lesion Diagnosis
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作者 Ahmad Alassaf 《Computer Systems Science & Engineering》 SCIE EI 2023年第12期2773-2789,共17页
Intelligent diagnosis approaches with shallow architectural models play an essential role in healthcare.Deep Learning(DL)models with unsupervised learning concepts have been proposed because high-quality feature extra... Intelligent diagnosis approaches with shallow architectural models play an essential role in healthcare.Deep Learning(DL)models with unsupervised learning concepts have been proposed because high-quality feature extraction and adequate labelled details significantly influence shallow models.On the other hand,skin lesionbased segregation and disintegration procedures play an essential role in earlier skin cancer detection.However,artefacts,an unclear boundary,poor contrast,and different lesion sizes make detection difficult.To address the issues in skin lesion diagnosis,this study creates the UDLS-DDOA model,an intelligent Unsupervised Deep Learning-based Stacked Auto-encoder(UDLS)optimized by Dynamic Differential Annealed Optimization(DDOA).Pre-processing,segregation,feature removal or separation,and disintegration are part of the proposed skin lesion diagnosis model.Pre-processing of skin lesion images occurs at the initial level for noise removal in the image using the Top hat filter and painting methodology.Following that,a Fuzzy C-Means(FCM)segregation procedure is performed using a Quasi-Oppositional Elephant Herd Optimization(QOEHO)algorithm.Besides,a novel feature extraction technique using the UDLS technique is applied where the parameter tuning takes place using DDOA.In the end,the disintegration procedure would be accomplished using a SoftMax(SM)classifier.The UDLS-DDOA model is tested against the International Skin Imaging Collaboration(ISIC)dataset,and the experimental results are examined using various computational attributes.The simulation results demonstrated that the UDLS-DDOA model outperformed the compared methods significantly. 展开更多
关键词 Intelligent diagnosis stacked auto-encoder skin lesion unsupervised learning parameter selection
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Method of Multi-Mode Sensor Data Fusion with an Adaptive Deep Coupling Convolutional Auto-Encoder
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作者 Xiaoxiong Feng Jianhua Liu 《Journal of Sensor Technology》 2023年第4期69-85,共17页
To address the difficulties in fusing multi-mode sensor data for complex industrial machinery, an adaptive deep coupling convolutional auto-encoder (ADCCAE) fusion method was proposed. First, the multi-mode features e... To address the difficulties in fusing multi-mode sensor data for complex industrial machinery, an adaptive deep coupling convolutional auto-encoder (ADCCAE) fusion method was proposed. First, the multi-mode features extracted synchronously by the CCAE were stacked and fed to the multi-channel convolution layers for fusion. Then, the fused data was passed to all connection layers for compression and fed to the Softmax module for classification. Finally, the coupling loss function coefficients and the network parameters were optimized through an adaptive approach using the gray wolf optimization (GWO) algorithm. Experimental comparisons showed that the proposed ADCCAE fusion model was superior to existing models for multi-mode data fusion. 展开更多
关键词 Multi-Mode Data Fusion Coupling Convolutional auto-encoder Adaptive Optimization Deep Learning
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耦合MAE-InternImage算法的铁路周边环境变化检测
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作者 方杨 易炼 +2 位作者 卢金涛 吴枫 蔡亚锋 《遥感信息》 北大核心 2025年第4期26-36,共11页
针对当前铁路周边环境变化检测时模型存在的检测精度依赖于训练样本、检测精度低的问题,提出一种耦合MAE-InternImage算法的变化检测模型。首先基于MAE模型,对遥感影像数据进行自监督训练,获取预设权重;接着将时相遥感影像语义分割训练... 针对当前铁路周边环境变化检测时模型存在的检测精度依赖于训练样本、检测精度低的问题,提出一种耦合MAE-InternImage算法的变化检测模型。首先基于MAE模型,对遥感影像数据进行自监督训练,获取预设权重;接着将时相遥感影像语义分割训练数据和预设权重输入InternImage大模型,进行微调训练;最后基于训练完成的MAE-InternImage模型,获取一期、二期影像中高精度的林地、耕地、裸土语义信息,通过差值运算获取变化区域。实验结果表明,所提出的算法在耕地、林地和裸土变化检测性能指标上明显优于Siam-FC、Changer和BIT算法,耕地、林地、裸土的变化检测精度分别为64.01%、80.64%、64.19%。通过语义值追溯,可以明确出语义转换关系。该研究对铁路周边环境常态化智能巡检等应用具有技术参考意义。 展开更多
关键词 mae InternImage 变化检测 智能巡检
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Predicting the Antigenic Variant of Human Influenza A(H3N2) Virus with a Stacked Auto-Encoder Model
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作者 Zhiying Tan Kenli Li +1 位作者 Taijiao Jiang Yousong Peng 《国际计算机前沿大会会议论文集》 2017年第2期71-73,共3页
The influenza virus changes its antigenicity frequently due to rapid mutations, leading to immune escape and failure of vaccination. Rapid determination of the influenza antigenicity could help identify the antigenic ... The influenza virus changes its antigenicity frequently due to rapid mutations, leading to immune escape and failure of vaccination. Rapid determination of the influenza antigenicity could help identify the antigenic variants in time. Here, we built a stacked auto-encoder (SAE) model for predicting the antigenic variant of human influenza A(H3N2) viruses based on the hemagglutinin (HA) protein sequences. The model achieved an accuracy of 0.95 in five-fold cross-validations, better than the logistic regression model did. Further analysis of the model shows that most of the active nodes in the hidden layer reflected the combined contribution of multiple residues to antigenic variation. Besides, some features (residues on HA protein) in the input layer were observed to take part in multiple active nodes, such as residue 189, 145 and 156, which were also reported to mostly determine the antigenic variation of influenza A(H3N2) viruses. Overall,this work is not only useful for rapidly identifying antigenic variants in influenza prevention, but also an interesting attempt in inferring the mechanisms of biological process through analysis of SAE model, which may give some insights into interpretation of the deep learning 展开更多
关键词 Stacked auto-encoder Antigenic VARIATION nfluenza Machine learning
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Intrusion Detection through DCSYS Propagation Compared to Auto-encoders
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作者 Fatima Isiaka Zainab Adamu 《Journal of Computer Science Research》 2021年第3期42-49,共8页
In network settings,one of the major disadvantages that threaten the network protocols is the insecurity.In most cases,unscrupulous people or bad actors can access information through unsecured connections by planting... In network settings,one of the major disadvantages that threaten the network protocols is the insecurity.In most cases,unscrupulous people or bad actors can access information through unsecured connections by planting software or what we call malicious software otherwise anomalies.The presence of anomalies is also one of the disadvantages,internet users are constantly plagued by virus on their system and get activated when a harmless link is clicked on,this a case of true benign detected as false.Deep learning is very adept at dealing with such cases,but sometimes it has its own faults when dealing benign cases.Here we tend to adopt a dynamic control system(DCSYS)that addresses data packets based on benign scenario to truly report on false benign and exclude anomalies.Its performance is compared with artificial neural network auto-encoders to define its predictive power.Results show that though physical systems can adapt securely,it can be used for network data packets to identify true benign cases. 展开更多
关键词 Dynamic control system Deep learning Artificial neural network auto-encoders Identify space model BENIGN ANOMALIES
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郑纺机与意大利MAE达成合作共筑碳纤维装备新平台
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作者 牛方 朱起锋 《中国纺织》 2025年第9期52-52,共1页
日前,郑纺机纺织机械股份有限公司(以下简称“郑纺机”)与意大利机械制造领军企业MAE公司正式签署合作协议,双方将共同推进碳纤维碳化装备技术的研发与产业化应用,助力碳纤维产业高质量发展。强强联合:优势互补汇聚产业核心力量郑纺机... 日前,郑纺机纺织机械股份有限公司(以下简称“郑纺机”)与意大利机械制造领军企业MAE公司正式签署合作协议,双方将共同推进碳纤维碳化装备技术的研发与产业化应用,助力碳纤维产业高质量发展。强强联合:优势互补汇聚产业核心力量郑纺机成立于1949年,前身为国营郑州纺织机械厂,为新中国最早投产的国营纺织机械厂,被誉为中国纺机装备“孵化器”。公司现为中国恒天集团直接管理的重点企业,隶属于中国机械工业集团有限公司,产品出口至全球70多个国家和地区,具备完整的国际服务能力。 展开更多
关键词 意大利mae 碳化装备 郑纺机 碳纤维装备
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茶饮料浸提工艺的微波辅助萃取(MAE)应用研究 被引量:8
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作者 杨文杰 黄惠华 +1 位作者 张晨 吴阳宁 《食品研究与开发》 CAS 北大核心 2005年第5期53-57,共5页
浸提工艺是茶饮料生产过程一个关键生产工艺。本文比较了传统热水浸提工艺和微波辅助萃取工艺之间的最优工艺参数,并利用高效液相色谱分析方法研究了微波萃取对茶多酚浸出得率和单体组成的影响,表明微波萃取技术(Microwave-assistedextr... 浸提工艺是茶饮料生产过程一个关键生产工艺。本文比较了传统热水浸提工艺和微波辅助萃取工艺之间的最优工艺参数,并利用高效液相色谱分析方法研究了微波萃取对茶多酚浸出得率和单体组成的影响,表明微波萃取技术(Microwave-assistedextraction,MAE)可应用在茶饮料生产中,而且比传统热水浸提工艺省时节能。结果表明:传统热水浸提工艺的最优浸提温度90℃、时间43min、液固比20:1,茶多酚的得率为19.76%;微波辅助萃取工艺的最优浸提功率360W、时间3.5min、液固比25:1,茶多酚的得率为20.63%。微波短时处理茶叶不会对茶多酚的结构和单体组成产生破坏性影响。 展开更多
关键词 茶饮料 浸提工艺 微波辅助萃取(mae) 微波辅助萃取 茶饮料生产 浸提工艺 应用 微波萃取技术 色谱分析方法 微波短时处理 萃取工艺 单体组成
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小剂量MAE方案治疗难治与复发急性白血病 被引量:2
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作者 何爱丽 张王刚 +3 位作者 曹星梅 陈银霞 王剑利 杨云 《现代肿瘤医学》 CAS 2008年第1期102-104,共3页
目的:探讨小剂量米托蒽醌(MTZ)、阿糖胞苷(Arc)联合依托泊甙(VP-16)治疗难治与复发急性白血病的疗效及毒副作用。方法:难治与复发急性白血病52例,应用小剂量MAE方案化疗,完全缓解后应用中剂量阿糖胞苷或预激方案巩固。结果:22例急性非... 目的:探讨小剂量米托蒽醌(MTZ)、阿糖胞苷(Arc)联合依托泊甙(VP-16)治疗难治与复发急性白血病的疗效及毒副作用。方法:难治与复发急性白血病52例,应用小剂量MAE方案化疗,完全缓解后应用中剂量阿糖胞苷或预激方案巩固。结果:22例急性非淋巴细胞白血病中,10例(45.5%)达完全缓解(CR),2例(9.1%)部分缓解(PR),总有效率为54.5%;30例急性淋巴细胞白血病中,9例(30.0%)CR,2例(6.6%)PR,总有效率为36.6%。毒副作用主要是骨髓抑制、恶心、呕吐。结论:小剂量MAE方案治疗难治与复发急性白血病的疗效较好,毒副作用较轻。 展开更多
关键词 难治与复发急性白血病 小剂量mae方案 疗效 毒副作用
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HAE、DAE、MAE方案治疗急性单核细胞白血病的临床比较 被引量:3
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作者 彭爱华 许多荣 +3 位作者 洪文德 李娟 张国材 童秀珍 《中国肿瘤临床与康复》 2001年第5期23-24,共2页
目的 比较HAE、DAE、MAE三种化疗方案治疗急性单核细胞白血病 (M 5 )的临床疗效与副作用。方法 对初治的M 5型白血病分别采用HAE、DAE、MAE三种不同的方案进行化疗。结果 HAE、DAE、MAE三种化疗方案的有效率分别为 5 0 %、80 %、90 %... 目的 比较HAE、DAE、MAE三种化疗方案治疗急性单核细胞白血病 (M 5 )的临床疗效与副作用。方法 对初治的M 5型白血病分别采用HAE、DAE、MAE三种不同的方案进行化疗。结果 HAE、DAE、MAE三种化疗方案的有效率分别为 5 0 %、80 %、90 %。MAE方案骨髓抑制的发生率高 ,但心脏、消化道等方面的副作用略低于其它两组。结论 MAE方案可作为急性单核细胞白血病诱导化疗的一线方案。 展开更多
关键词 急性单核细胞白血病 化疗 mae方案 治疗
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