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改进DenseNet的干气密封摩擦润滑状态识别研究
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作者 张帅 丁雪兴 +2 位作者 王世鹏 力宁 张兰霞 《振动与冲击》 北大核心 2025年第4期313-321,共9页
为了克服干气密封运行中端面接触状态参数(膜厚、端面开启时间)测量困难的问题,提出自注意力机制融合稠密连接网络(DenseNet-convolutional block attention module,DenseNet-CBAM)的干气密封端面摩擦润滑状态识别方法。根据斯特里贝克... 为了克服干气密封运行中端面接触状态参数(膜厚、端面开启时间)测量困难的问题,提出自注意力机制融合稠密连接网络(DenseNet-convolutional block attention module,DenseNet-CBAM)的干气密封端面摩擦润滑状态识别方法。根据斯特里贝克曲线和干气密封运行规律分析端面可能出现的摩擦润滑状态:流体润滑,边界润滑、混合润滑。通过声发射传感器采集密封系统运行时的声发射信号,通过滤波、时域分析、频域分析得出能够表征各种摩擦润滑状态的特征分量,获取三维连续小波(3D continuous wavelet transform,3D-CWT)时频图,最终基于深度学习模型Densenet-CBAM识别时频图,实现密封系统摩擦润滑状态识别。与其他二维时频特征图作为输入端相比,3D-CWT时频图提高了状态识别的准确率。同时,相较于其他深度学习模型,该方法对干气密封摩擦润滑状态识别精度高,达到了99.27%。 展开更多
关键词 干气密封 稠密连接网络 自注意力机制 声发射 状态识别
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Earthquake monitoring and high-resolution velocity tomography for the central Longmenshan fault zone by a temporary dense seismic array
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作者 ShaoBo Yang HaiJiang Zhang +4 位作者 MaoMao Wang Ji Gao Shuaijun Wang BaoJin Liu XiWei Xu 《Earth and Planetary Physics》 2025年第2期239-252,共14页
The Longmenshan(LMS) fault zone is located at the junction of the eastern Tibetan Plateau and the Sichuan Basin and is of great significance for studying regional tectonics and earthquake hazards. Although regional ve... The Longmenshan(LMS) fault zone is located at the junction of the eastern Tibetan Plateau and the Sichuan Basin and is of great significance for studying regional tectonics and earthquake hazards. Although regional velocity models are available for the LMS fault zone, high-resolution velocity models are lacking. Therefore, a dense array of 240 short-period seismometers was deployed around the central segment of the LMS fault zone for approximately 30 days to monitor earthquakes and characterize fine structures of the fault zone. Considering the large quantity of observed seismic data, the data processing workflow consisted of deep learning-based automatic earthquake detection, phase arrival picking, and association. Compared with the earthquake catalog released by the China Earthquake Administration, many more earthquakes were detected by the dense array. Double-difference seismic tomography was adopted to determine V_(p), V_(s), and V_(p)/V_(s) models as well as earthquake locations. The checkerboard test showed that the velocity models have spatial resolutions of approximately 5 km in the horizontal directions and 2 km at depth. To the west of the Yingxiu–Beichuan Fault(YBF), the Precambrian Pengguan complex, where most of earthquakes occurred, is characterized by high velocity and low V_(p)/V_(s) values. In comparison, to the east of the YBF, the Upper Paleozoic to Jurassic sediments, where few earthquakes occurred, show low velocity and high V_(p)/V_(s) values. Our results suggest that the earthquake activity in the LMS fault zone is controlled by the strength of the rock compositions. When the high-resolution velocity models were combined with the relocated earthquakes, we were also able to delineate the fault geometry for different faults in the LMS fault zone. 展开更多
关键词 Longmenshan fault zone dense seismic array deep learning double-difference seismic tomography seismic velocity model earthquake locations fault geometry
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基于CAM-DenseNet模型的邮轮薄板焊缝缺陷识别算法
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作者 黎林发 王岳 《造船技术》 2025年第1期78-84,共7页
邮轮薄板焊缝的熔深和熔宽相对较小,母材与焊缝区域差异性小,焊缝表面缺陷较难判别。为准确地定位焊缝位置,提出一种将注意力机制的坐标注意力模块(Coordinate Attention Module,CAM)融入密集链接卷积网络(Densely Connected Convolutio... 邮轮薄板焊缝的熔深和熔宽相对较小,母材与焊缝区域差异性小,焊缝表面缺陷较难判别。为准确地定位焊缝位置,提出一种将注意力机制的坐标注意力模块(Coordinate Attention Module,CAM)融入密集链接卷积网络(Densely Connected Convolutional Networks,DenseNet)的邮轮薄板焊缝缺陷识别算法,建立CAM-DenseNet模型。将网络中的激活函数ReLU替换为更具有稳定性的ReLU6,并利用贝叶斯优化算法对CAM-DenseNet模型的超参数组合进行优化和选取。在焊接车间利用相机采集邮轮薄板焊缝三原色(Red Green Blue,RGB)图片,自建立邮轮薄板焊缝缺陷数据集,并按焊缝缺陷类型将数据集分为凹陷、气孔、毛刺、表面裂纹和无缺陷等5类。试验结果表明,CAM-DonseNet模型对邮轮薄板焊缝缺陷识别具有优异表现。 展开更多
关键词 邮轮 薄板 焊缝缺陷 识别算法 深度学习 密集链接卷积网络 坐标注意力模块 CAM-denseNet模型 激活函数 贝叶斯优化算法
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Enhancing Dense Small Object Detection in UAV Images Based on Hybrid Transformer 被引量:1
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作者 Changfeng Feng Chunping Wang +2 位作者 Dongdong Zhang Renke Kou Qiang Fu 《Computers, Materials & Continua》 SCIE EI 2024年第3期3993-4013,共21页
Transformer-based models have facilitated significant advances in object detection.However,their extensive computational consumption and suboptimal detection of dense small objects curtail their applicability in unman... Transformer-based models have facilitated significant advances in object detection.However,their extensive computational consumption and suboptimal detection of dense small objects curtail their applicability in unmanned aerial vehicle(UAV)imagery.Addressing these limitations,we propose a hybrid transformer-based detector,H-DETR,and enhance it for dense small objects,leading to an accurate and efficient model.Firstly,we introduce a hybrid transformer encoder,which integrates a convolutional neural network-based cross-scale fusion module with the original encoder to handle multi-scale feature sequences more efficiently.Furthermore,we propose two novel strategies to enhance detection performance without incurring additional inference computation.Query filter is designed to cope with the dense clustering inherent in drone-captured images by counteracting similar queries with a training-aware non-maximum suppression.Adversarial denoising learning is a novel enhancement method inspired by adversarial learning,which improves the detection of numerous small targets by counteracting the effects of artificial spatial and semantic noise.Extensive experiments on the VisDrone and UAVDT datasets substantiate the effectiveness of our approach,achieving a significant improvement in accuracy with a reduction in computational complexity.Our method achieves 31.9%and 21.1%AP on the VisDrone and UAVDT datasets,respectively,and has a faster inference speed,making it a competitive model in UAV image object detection. 展开更多
关键词 UAV images TRANSFORMER dense small object detection
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基于改进DenseNet模型的滚动轴承故障诊断 被引量:1
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作者 雷伟 廖光忠 裴浪 《计算机技术与发展》 2024年第3期207-213,共7页
滚动轴承是机械设备的关键部件,为了检测滚动轴承设备的正常运转并且提高识别轴承故障的准确率,提出一种优化变分模态分解(VMD)结合改进密集神经网络(DenseNet)的故障诊断模型方法。首先,使用多种群差分进化(MPDE)算法以局部极小包络熵... 滚动轴承是机械设备的关键部件,为了检测滚动轴承设备的正常运转并且提高识别轴承故障的准确率,提出一种优化变分模态分解(VMD)结合改进密集神经网络(DenseNet)的故障诊断模型方法。首先,使用多种群差分进化(MPDE)算法以局部极小包络熵为优化搜索的目标函数,对VMD方法中的相关参数进行优化搜索以获取最佳参数组合;然后,使用最佳参数组合优化的VMD方法分解处理原始滚动轴承的故障信号,并得到若干本征模态分量信号(IMFs);最后,通过引入通道注意力模块(MECANet)的改进密集神经网络模型对分解得到的IMF分量信号进行深层故障特征提取与识别,最终完成滚动轴承的故障诊断。实验结果表明:提出的优化VMD结合改进DenseNet模型对滚动轴承故障识别的准确率达到了99.23%,并且对比一些其他常见故障诊断模型的准确率有明显的提升,而且与先进的故障诊断模型对比其准确率存在较小差距,验证了此模型在滚动轴承故障诊断方面的有效性。 展开更多
关键词 滚动轴承 变分模态分解 多种群差分进化 密集神经网络 MECANet 故障诊断
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结合强化学习和DenseNet的远程监督关系抽取模型
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作者 冯轩闻 袁新瑞 +1 位作者 孙霞 高厦 《计算机应用与软件》 北大核心 2024年第2期138-144,208,共8页
关系抽取是信息获取领域的重要任务之一。为了更好地解决数据集中的噪声问题和句子深层次语义表征,提出一种结合强化学习和密集连接卷积神经网络的远程监督关系抽取模型,模型分为句子选择器和关系分类器。在句子选择器中,基于强化学习... 关系抽取是信息获取领域的重要任务之一。为了更好地解决数据集中的噪声问题和句子深层次语义表征,提出一种结合强化学习和密集连接卷积神经网络的远程监督关系抽取模型,模型分为句子选择器和关系分类器。在句子选择器中,基于强化学习的方法能有效过滤噪声语句,提升输入数据质量;在关系分类器中,通过DenseNet深层网络中的特征复用,学习更丰富的语义特征。在NYT数据集上的实验结果表明句子选择器能够有效过滤噪声,该模型的关系抽取性能相比基线模型得到有效提高。 展开更多
关键词 关系抽取 远程监督 强化学习 卷积神经网络 密集连接
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融合DenseNet和注意力机制的永磁定位方法 被引量:2
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作者 郭鹏飞 戴厚德 +2 位作者 杨千慧 姚瀚晨 黄巧园 《传感器与微系统》 CSCD 北大核心 2024年第2期37-40,共4页
基于永磁体的定位技术为运动跟踪、机器人定位导航和医疗器械跟踪领域提供了一种无线、高精度、低成本的解决方案。为解决基于磁偶极子模型和LM(Levenberg-Marquardt)算法的定位方法过于依赖初始值、计算耗时受限的问题,利用基于磁偶极... 基于永磁体的定位技术为运动跟踪、机器人定位导航和医疗器械跟踪领域提供了一种无线、高精度、低成本的解决方案。为解决基于磁偶极子模型和LM(Levenberg-Marquardt)算法的定位方法过于依赖初始值、计算耗时受限的问题,利用基于磁偶极子模型先验知识的约束条件构造惩罚函数,提出一种融合密集卷积网络(DenseNet)和注意力机制(SE Block)的永磁定位方法。实验结果表明:在48~118 mm的高度范围内,本文方法定位精度可达(1.79±1.05)mm和1.12°±0.53°,平均计算耗时降低至1.6 ms,提升了永磁定位系统计算的速率和稳定性。 展开更多
关键词 磁定位 深度学习 密集卷积网络 注意力机制
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A quantum blind signature scheme based on dense coding for non-entangled states
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作者 邢柯 殷爱菡 薛勇奇 《Chinese Physics B》 SCIE EI CAS CSCD 2024年第6期220-228,共9页
In some schemes, quantum blind signatures require the use of difficult-to-prepare multiparticle entangled states. By considering the communication overhead, quantum operation complexity, verification efficiency and ot... In some schemes, quantum blind signatures require the use of difficult-to-prepare multiparticle entangled states. By considering the communication overhead, quantum operation complexity, verification efficiency and other relevant factors in practical situations, this article proposes a non-entangled quantum blind signature scheme based on dense encoding. The information owner utilizes dense encoding and hash functions to blind the information while reducing the use of quantum resources. After receiving particles, the signer encrypts the message using a one-way function and performs a Hadamard gate operation on the selected single photon to generate the signature. Then the verifier performs a Hadamard gate inverse operation on the signature and combines it with the encoding rules to restore the message and complete the verification.Compared with some typical quantum blind signature protocols, this protocol has strong blindness in privacy protection,and higher flexibility in scalability and application. The signer can adjust the signature operation according to the actual situation, which greatly simplifies the complexity of the signature. By simultaneously utilizing the secondary distribution and rearrangement of non-entangled quantum states, a non-entangled quantum state representation of three bits of classical information is achieved, reducing the use of a large amount of quantum resources and lowering implementation costs. This improves both signature verification efficiency and communication efficiency while, at the same time, this scheme meets the requirements of unforgeability, non-repudiation, and prevention of information leakage. 展开更多
关键词 quantum blind signature dense coding non-entanglement Hadamard gate
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Vehicle Abnormal Behavior Detection Based on Dense Block and Soft Thresholding
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作者 Yuanyao Lu Wei Chen +2 位作者 Zhanhe Yu Jingxuan Wang Chaochao Yang 《Computers, Materials & Continua》 SCIE EI 2024年第6期5051-5066,共16页
With the rapid advancement of social economies,intelligent transportation systems are gaining increasing atten-tion.Central to these systems is the detection of abnormal vehicle behavior,which remains a critical chall... With the rapid advancement of social economies,intelligent transportation systems are gaining increasing atten-tion.Central to these systems is the detection of abnormal vehicle behavior,which remains a critical challenge due to the complexity of urban roadways and the variability of external conditions.Current research on detecting abnormal traffic behaviors is still nascent,with significant room for improvement in recognition accuracy.To address this,this research has developed a new model for recognizing abnormal traffic behaviors.This model employs the R3D network as its core architecture,incorporating a dense block to facilitate feature reuse.This approach not only enhances performance with fewer parameters and reduced computational demands but also allows for the acquisition of new features while simplifying the overall network structure.Additionally,this research integrates a self-attentive method that dynamically adjusts to the prevailing traffic conditions,optimizing the relevance of features for the task at hand.For temporal analysis,a Bi-LSTM layer is utilized to extract and learn from time-based data nuances.This research conducted a series of comparative experiments using the UCF-Crime dataset,achieving a notable accuracy of 89.30%on our test set.Our results demonstrate that our model not only operates with fewer parameters but also achieves superior recognition accuracy compared to previous models. 展开更多
关键词 Vehicle abnormal behavior deep learning ResNet dense block soft thresholding
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MSADCN:Multi-Scale Attentional Densely Connected Network for Automated Bone Age Assessment
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作者 Yanjun Yu Lei Yu +2 位作者 Huiqi Wang Haodong Zheng Yi Deng 《Computers, Materials & Continua》 SCIE EI 2024年第2期2225-2243,共19页
Bone age assessment(BAA)helps doctors determine how a child’s bones grow and develop in clinical medicine.Traditional BAA methods rely on clinician expertise,leading to time-consuming predictions and inaccurate resul... Bone age assessment(BAA)helps doctors determine how a child’s bones grow and develop in clinical medicine.Traditional BAA methods rely on clinician expertise,leading to time-consuming predictions and inaccurate results.Most deep learning-based BAA methods feed the extracted critical points of images into the network by providing additional annotations.This operation is costly and subjective.To address these problems,we propose a multi-scale attentional densely connected network(MSADCN)in this paper.MSADCN constructs a multi-scale dense connectivity mechanism,which can avoid overfitting,obtain the local features effectively and prevent gradient vanishing even in limited training data.First,MSADCN designs multi-scale structures in the densely connected network to extract fine-grained features at different scales.Then,coordinate attention is embedded to focus on critical features and automatically locate the regions of interest(ROI)without additional annotation.In addition,to improve the model’s generalization,transfer learning is applied to train the proposed MSADCN on the public dataset IMDB-WIKI,and the obtained pre-trained weights are loaded onto the Radiological Society of North America(RSNA)dataset.Finally,label distribution learning(LDL)and expectation regression techniques are introduced into our model to exploit the correlation between hand bone images of different ages,which can obtain stable age estimates.Extensive experiments confirm that our model can converge more efficiently and obtain a mean absolute error(MAE)of 4.64 months,outperforming some state-of-the-art BAA methods. 展开更多
关键词 Bone age assessment deep learning attentional densely connected network muti-scale
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Attention-Based Residual Dense Shrinkage Network for ECG Denoising
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作者 Dengyong Zhang Minzhi Yuan +3 位作者 Feng Li Lebing Zhang Yanqiang Sun Yiming Ling 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第3期2809-2824,共16页
Electrocardiogram(ECG)signal is one of the noninvasive physiological measurement techniques commonly usedin cardiac diagnosis.However,in real scenarios,the ECGsignal is susceptible to various noise erosion,which affec... Electrocardiogram(ECG)signal is one of the noninvasive physiological measurement techniques commonly usedin cardiac diagnosis.However,in real scenarios,the ECGsignal is susceptible to various noise erosion,which affectsthe subsequent pathological analysis.Therefore,the effective removal of the noise from ECG signals has becomea top priority in cardiac diagnostic research.Aiming at the problem of incomplete signal shape retention andlow signal-to-noise ratio(SNR)after denoising,a novel ECG denoising network,named attention-based residualdense shrinkage network(ARDSN),is proposed in this paper.Firstly,the shallow ECG characteristics are extractedby a shallow feature extraction network(SFEN).Then,the residual dense shrinkage attention block(RDSAB)isused for adaptive noise suppression.Finally,feature fusion representation(FFR)is performed on the hierarchicalfeatures extracted by a series of RDSABs to reconstruct the de-noised ECG signal.Experiments on the MIT-BIHarrhythmia database and MIT-BIH noise stress test database indicate that the proposed scheme can effectively resistthe interference of different sources of noise on the ECG signal. 展开更多
关键词 Electrocardiogram signal denoising signal-to-noise ratio attention-based residual dense shrinkage network MIT-BIH
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基于DenseNet卷积神经网络的短期风电预测方法 被引量:2
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作者 殷林飞 蒙雨洁 《综合智慧能源》 CAS 2024年第7期12-20,共9页
风能作为一种清洁、可再生的能源,在能源转型中扮演着至关重要的角色,准确预测风电出力对电力系统的安全高效运行非常重要,然而风速的波动性和随机性,对风电预测带来了挑战。为了提高风电预测的准确性,提出了一种基于DenseNet卷积神经... 风能作为一种清洁、可再生的能源,在能源转型中扮演着至关重要的角色,准确预测风电出力对电力系统的安全高效运行非常重要,然而风速的波动性和随机性,对风电预测带来了挑战。为了提高风电预测的准确性,提出了一种基于DenseNet卷积神经网络的短期风电预测模型。该模型通过精简DenseNet201网络得到了拥有出色的密集连接结构和适当深度、宽度的DenseNet160网络,不仅能缓解训练过程中梯度消失现象,还能通过密集连接将浅层的信息反映到深层,实现深度监督。基于巴西纳塔尔地区378 d的风力数据集,采用DenseNet160网络以及27种算法对未来一天的风力发电情况进行预测。结果表明:DenseNet160网络的平均绝对误差、均方误差以及平均绝对百分误差比其他算法分别降低了至少10.89%,4.98%,8.68%;同时,与使用相同数据集的混合经济模型相比,DenseNet160网络的MAE值小了25.56%。说明该模型能精准地拟合风力发电数据,获得可靠的风力预测结果。 展开更多
关键词 风电预测 可再生能源 denseNet 卷积神经网络 密集连接 梯度消失
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Tomato detection method using domain adaptive learning for dense planting environments
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作者 LI Yang HOU Wenhui +4 位作者 YANG Huihuang RAO Yuan WANG Tan JIN Xiu ZHU Jun 《农业工程学报》 EI CAS CSCD 北大核心 2024年第13期134-145,共12页
This study aimed to address the challenge of accurately and reliably detecting tomatoes in dense planting environments,a critical prerequisite for the automation implementation of robotic harvesting.However,the heavy ... This study aimed to address the challenge of accurately and reliably detecting tomatoes in dense planting environments,a critical prerequisite for the automation implementation of robotic harvesting.However,the heavy reliance on extensive manually annotated datasets for training deep learning models still poses significant limitations to their application in real-world agricultural production environments.To overcome these limitations,we employed domain adaptive learning approach combined with the YOLOv5 model to develop a novel tomato detection model called as TDA-YOLO(tomato detection domain adaptation).We designated the normal illumination scenes in dense planting environments as the source domain and utilized various other illumination scenes as the target domain.To construct bridge mechanism between source and target domains,neural preset for color style transfer is introduced to generate a pseudo-dataset,which served to deal with domain discrepancy.Furthermore,this study combines the semi-supervised learning method to enable the model to extract domain-invariant features more fully,and uses knowledge distillation to improve the model's ability to adapt to the target domain.Additionally,for purpose of promoting inference speed and low computational demand,the lightweight FasterNet network was integrated into the YOLOv5's C3 module,creating a modified C3_Faster module.The experimental results demonstrated that the proposed TDA-YOLO model significantly outperformed original YOLOv5s model,achieving a mAP(mean average precision)of 96.80%for tomato detection across diverse scenarios in dense planting environments,increasing by 7.19 percentage points;Compared with the latest YOLOv8 and YOLOv9,it is also 2.17 and 1.19 percentage points higher,respectively.The model's average detection time per image was an impressive 15 milliseconds,with a FLOPs(floating point operations per second)count of 13.8 G.After acceleration processing,the detection accuracy of the TDA-YOLO model on the Jetson Xavier NX development board is 90.95%,the mAP value is 91.35%,and the detection time of each image is 21 ms,which can still meet the requirements of real-time detection of tomatoes in dense planting environment.The experimental results show that the proposed TDA-YOLO model can accurately and quickly detect tomatoes in dense planting environment,and at the same time avoid the use of a large number of annotated data,which provides technical support for the development of automatic harvesting systems for tomatoes and other fruits. 展开更多
关键词 PLANTS MODELS domain adaptive tomato detection illumination variation semi-supervised learning dense planting environments
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The seismicity in the middle section of the Altyn Tagh Fault system revealed by a dense nodal seismic array
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作者 Shi Yao Tao Xu +4 位作者 Yingquan Sang Lingling Ye Tingwei Yang Chenglong Wu Minghui Zhang 《Earthquake Research Advances》 CSCD 2024年第3期7-15,共9页
The left-lateral Altyn Tagh Fault(ATF) system is the northern boundary of the Qinghai-Xizang Plateau, separating the Tarim Basin and the Qaidam Basin. The middle section of ATF has not recorded any large earthquakes s... The left-lateral Altyn Tagh Fault(ATF) system is the northern boundary of the Qinghai-Xizang Plateau, separating the Tarim Basin and the Qaidam Basin. The middle section of ATF has not recorded any large earthquakes since1598 AD, so the potential seismic hazard is unclear. We develope an earthquake catalog using continuous waveform data recorded by the Tarim-Altyn-Qaidam dense nodal seismic array from September 17 to November23, 2021 in the middle section of ATF. With the machine learning-based picker, phase association, location, match and locate workflow, we detecte 233 earthquakes with M_L-1–3, far more than 6 earthquakes in the routine catalog. Combining with focal mechanism solutions and the local fault structure, we find that seismic events are clustered along the ATF with strike-slip focal mechanisms and on the southern secondary faults with thrusting focal mechanisms. This overall seismic activity in the middle section of the ATF might be due to the northeastward transpressional motion of the Qinghai-Xizang Plateau block at the western margin of the Qaidam Basin. 展开更多
关键词 Altyn Tagh Fault Machine learning SEISMICITY dense seismic array
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基于MTF可视化和改进DenseNet神经网络的电能质量扰动识别算法
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作者 时帅 陈子文 +3 位作者 黄冬梅 贺琪 孙园 胡伟 《电力科学与技术学报》 CAS CSCD 北大核心 2024年第4期102-111,共10页
针对传统电能质量扰动(power quality disturbances,PQDs)分类器人工选取特征过程复杂、精细化程度不足的问题,提出一种基于马尔科夫迁移场(Markov translate filed,MTF)可视化和改进密集卷积网络(dense convolu-tional networks,DenseN... 针对传统电能质量扰动(power quality disturbances,PQDs)分类器人工选取特征过程复杂、精细化程度不足的问题,提出一种基于马尔科夫迁移场(Markov translate filed,MTF)可视化和改进密集卷积网络(dense convolu-tional networks,DenseNet)的PQDs识别新方法。首先将一维PQD信号经MTF映射为二维图像,接着将图像输入到具有新型通道注意力机制的改进DenseNet中,最后训练网络自行从海量样本中提取特征,实现PQDs信号的正确识别。算例结果表明:在无噪声和信噪比为20、30 dB情况下,所提改进DenseNet能有效克服传统方法中主观性强、抗噪性能差等特征缺点,可以更好地提取复合PQD特征信息,对复合PQD识别率高。 展开更多
关键词 电能质量扰动 马尔科夫迁移场 可视化 密集卷积网络 通道注意力机制 分类识别
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Discovery of the Nature of Separation of Ice Bodies of the Visible Dense Rings of Saturn, Predicted by J. C. Maxwell in 1856, and How It Helps Solve Unsolved Problems of Purely Gravitational Models of Their Origin
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作者 Vladimir V. Tchernyi Sergey V. Kapranov 《Journal of Applied Mathematics and Physics》 2024年第12期4333-4339,共7页
Cassini measurements suggest that ice bodies of Saturn’s visible dense rings have diamagnetic properties. Recently, JWST confirmed the existence of water around forming planets and showed that the magnetic field play... Cassini measurements suggest that ice bodies of Saturn’s visible dense rings have diamagnetic properties. Recently, JWST confirmed the existence of water around forming planets and showed that the magnetic field plays an important role in the formation of planets. It follows that Saturn’s visible dense rings could arise from the ice bodies of a protoplanetary cloud the radius of the Roche limit under the mutual action of a diamagnetic expulsion force created by Saturn’s magnetic field, together with the action of Saturn’s gravitational and centrifugal forces. As a result, the Kepler’s orbits of the ice bodies of the protoplanetary cloud move into the plane of Saturn’s equator and origin highly compressed stable system of the visible dense rings with separate individual ice bodies. With the same orientation of magnetic moment of ice bodies, their repulsion and separation occur due to their magnetization by Saturn’s magnetic field. Ice bodies are also attracted to each other due to their own gravity. At the balance of the both forces, the ice bodies remain at an equilibrium distance between them. This provides important evidence of the nature of J. C. Maxwell’s discovery in 1856 that the visible dense rings of Saturn are not continuous, but composed of individual bodies. This theory can provide an explanation of the origin of Saturn’s visible dense rings and their structure observed by Cassini probe in 2004-2017. It could also improve purely gravitational models of the origin of Saturn’s visible dense rings, which can only show how additional ice could penetrate the visible dense rings, and cannot explain convincingly their origin and structure. 展开更多
关键词 Saturn’s Visible dense Rings Origin of Saturn’s Visible dense Rings Diamagnetism of Ice in Space Saturn’s Magnetism
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Research on Dense Crowd Area Detection Method Based on Improved YOLOv5 and Improved DBSCAN Clustering Algorithm
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作者 Guchang Yuan Zhonghua Ma 《Journal of Applied Mathematics and Physics》 2024年第12期4206-4212,共7页
In modern society, dense crowd detection technology is particularly important due to the frequent occurrence of crowd scenes such as stations, shopping malls, and event sites, which are often accompanied by safety ris... In modern society, dense crowd detection technology is particularly important due to the frequent occurrence of crowd scenes such as stations, shopping malls, and event sites, which are often accompanied by safety risks, like stampede accidents. Although many studies have made progress in estimating population density, the ability to accurately identify dense areas in multi-scale scenarios still needs to be improved. To solve this problem, this paper proposed an improved multi-scale dense crowd detection method based on YOLOv5 and improved the DBSCAN clustering algorithm to identify densely crowded areas. Experiments show that the improved multi-scale dense crowd detection method can identify target crowds at multiple scales, and the accuracy of its detection results is around 70%. In addition, by calculating the crowd density under the same scale conditions and visualising the dense areas, we were able to solve the problem of dividing the crowded areas and visualise the dense areas more accurately. These improvements enhanced the applicability and reliability of the model in practical applications and provided strong technical support for security monitoring and management. 展开更多
关键词 dense Crowd Detection YOLOv5 Multi-Scale Detection DBSCAN Clustering
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Dense-UNet:基于密集连接U-Net的创伤伤口图像分割
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作者 张涛 禹宝庆 +4 位作者 雷鸣 高洁 胡伏原 潘云峰 周涛 《中国体视学与图像分析》 2024年第4期282-289,共8页
慢性伤口会严重的影响患者生活质量,并且病情容易恶化。为保证伤口图像分割的分割效果,提高基于图像的伤口分析能力,本文提出了一种基于密集连接的U-Net模型用于创伤伤口分割。其中,在跳跃连接中应用密集连接机制,将不同阶段的编码器输... 慢性伤口会严重的影响患者生活质量,并且病情容易恶化。为保证伤口图像分割的分割效果,提高基于图像的伤口分析能力,本文提出了一种基于密集连接的U-Net模型用于创伤伤口分割。其中,在跳跃连接中应用密集连接机制,将不同阶段的编码器输出,通过密集连接机制汇聚至对应层的解码器中。在每一层的解码器中使用多视野特征自适应融合模块(MFAF),对每一层解码器的跳跃连接特征进行自适应融合。在临床公共数据集上验证了本文方法的有效性。对比实验结果表明,本文方法对创伤伤口分割的DSC、MIoU、HD95、Recall、Voe及Rvd结果分别为82.84%、74.06%、2.66%、85.10%、74.31%和73.12%。并且对于伤口边缘不清晰的情况,分割精度得到有效提升。 展开更多
关键词 U-Net 创伤伤口分割 密集连接 自适应特征融合 多尺度
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基于DenseNet与PointNet融合算法的三维点云分割
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作者 吴烈权 周志峰 +1 位作者 时云 任朴林 《应用光学》 CAS 北大核心 2024年第5期982-991,共10页
点云分割对于智能驾驶、物体检测和识别、逆向工程等任务非常重要。PointNet是一种能够直接处理点云数据的方法,近年来在点云分割任务中得到广泛应用,但其分割精度较低,而PointNet++的计算成本又较高。针对以上问题,提出一种融合DenseNe... 点云分割对于智能驾驶、物体检测和识别、逆向工程等任务非常重要。PointNet是一种能够直接处理点云数据的方法,近年来在点云分割任务中得到广泛应用,但其分割精度较低,而PointNet++的计算成本又较高。针对以上问题,提出一种融合DenseNet和PointNet的算法,用于点云分割,并引入三分支混合注意力机制,以提高PointNet在提取局部特征方面的能力。基于密集连接卷积网络(DenseNet)思想,提出用DenseNet-STN和DenseNet-MLP结构来替代PointNet中的空间变换网络(STN)和多层感知机(MLP);同时,使用Add连接代替密集块(DenseBlock)中的Concat连接,以提高对点特征间相关性的准确性,同时不显著增加模型复杂度。DenseNet-PointNet能够提高复杂分类问题的泛化能力,实现对复杂函数更好的逼近,从而提高点云分割的准确率。有效性和消融实验结果表明,本文算法具有良好的性能。点云分割实验结果表明,DenseNet-PointNet在大多数类别中的交并比(IoU)都高于PointNet的IoU,并在部分类别中也高于PointNet++,参数量是PointNet++的47.6%,浮点运算量(FLOPs)是PointNet++的49.1%。实验结果验证了DenseNet-PointNet的可行性和有效性。 展开更多
关键词 点云分割 密集连接卷积网络 PointNet denseNet-PointNet
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采用DenseNet模型的AD自动分类方法
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作者 陈玉思 陈培坤 叶宇光 《宁德师范学院学报(自然科学版)》 2024年第1期65-72,共8页
为研究深度学习算法对阿尔茨海默病分类的准确性,提出密集卷积神经网络方法,对阿尔茨海默病进行分类.利用预处理后的数据训练密集卷积神经网络结构,并分类阿尔茨海默病和认知正常者.测试结果表明,文中方法获得的分类准确率为98.91%,分... 为研究深度学习算法对阿尔茨海默病分类的准确性,提出密集卷积神经网络方法,对阿尔茨海默病进行分类.利用预处理后的数据训练密集卷积神经网络结构,并分类阿尔茨海默病和认知正常者.测试结果表明,文中方法获得的分类准确率为98.91%,分类阿尔茨海默病和轻度认知障碍的准确率为94.54%,准确率较其他算法有一定提升,为阿尔茨海默病的精准分类提供了一种有效的解决方案. 展开更多
关键词 阿尔茨海默病 脑部磁共振成像图像 深度学习 密集的网络
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