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Deep residual systolic network for massive MIMO channel estimation by joint training strategies of mixed-SNR and mixed-scenarios
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作者 SUN Meng JING Qingfeng ZHONG Weizhi 《Journal of Systems Engineering and Electronics》 2025年第4期903-913,共11页
The fifth-generation (5G) communication requires a highly accurate estimation of the channel state information (CSI)to take advantage of the massive multiple-input multiple-output(MIMO) system. However, traditional ch... The fifth-generation (5G) communication requires a highly accurate estimation of the channel state information (CSI)to take advantage of the massive multiple-input multiple-output(MIMO) system. However, traditional channel estimation methods do not always yield reliable estimates. The methodology of this paper consists of deep residual shrinkage network (DRSN)neural network-based method that is used to solve this problem.Thus, the channel estimation approach, based on DRSN with its learning ability of noise-containing data, is first introduced. Then,the DRSN is used to train the noise reduction process based on the results of the least square (LS) channel estimation while applying the pilot frequency subcarriers, where the initially estimated subcarrier channel matrix is considered as a three-dimensional tensor of the DRSN input. Afterward, a mixed signal to noise ratio (SNR) training data strategy is proposed based on the learning ability of DRSN under different SNRs. Moreover, a joint mixed scenario training strategy is carried out to test the multi scenarios robustness of DRSN. As for the findings, the numerical results indicate that the DRSN method outperforms the spatial-frequency-temporal convolutional neural networks (SF-CNN)with similar computational complexity and achieves better advantages in the full SNR range than the minimum mean squared error (MMSE) estimator with a limited dataset. Moreover, the DRSN approach shows robustness in different propagation environments. 展开更多
关键词 massive multiple-input multiple-output(MIMO) channel estimation deep residual shrinkage network(DRSN) deep convolutional neural network(CNN).
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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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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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基于CNN-Informer和DeepLIFT的电力系统频率稳定评估方法
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作者 张异浩 韩松 荣娜 《电力自动化设备》 北大核心 2025年第7期165-171,共7页
为解决扰动发生后电力系统频率稳定评估精度低且预测时间长的问题,提出了一种电力系统频率稳定评估方法。该方法改进层次时间戳机制,有效捕捉了频率响应在不同时间尺度下的相关性;利用深度学习重要特征技术对输入特征进行筛选,简化了数... 为解决扰动发生后电力系统频率稳定评估精度低且预测时间长的问题,提出了一种电力系统频率稳定评估方法。该方法改进层次时间戳机制,有效捕捉了频率响应在不同时间尺度下的相关性;利用深度学习重要特征技术对输入特征进行筛选,简化了数据维度并提升了模型的训练效率和预测性能;结合卷积神经网络与Informer网络,基于编码器与解码器的协同训练,构建适用于多场景的频率稳定评估框架。以修改后的新英格兰10机39节点系统和WECC 29机179节点系统为算例,仿真结果表明,所提方法在时效性和准确性方面具有显著的优势,并在多种实验条件下展现出良好的鲁棒性和适应性。 展开更多
关键词 电力系统 频率稳定评估 深度学习 时序数据 层次时间戳 蒸馏机制 卷积神经网络
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基于DCNN-SVM的农田灌溉分流机械智能控制方法
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作者 张亮 冯乃勤 孙滨 《节水灌溉》 北大核心 2025年第7期53-58,65,共7页
当前农田灌溉分流以简单的单一阈值干旱判断配合机械开关人工或者定时控制为主,无法按照土壤干旱特征分类后再进行灌溉控制。为此,提出基于DCNN-SVM的农田灌溉分流机械智能控制方法。采用水分传感器实时采集农田灌溉区域的土壤水分数据... 当前农田灌溉分流以简单的单一阈值干旱判断配合机械开关人工或者定时控制为主,无法按照土壤干旱特征分类后再进行灌溉控制。为此,提出基于DCNN-SVM的农田灌溉分流机械智能控制方法。采用水分传感器实时采集农田灌溉区域的土壤水分数据,构建DCNN-SVM模型,利用DCNN提取土壤水分数据特征并输入到SVM中对土壤水分状态分类。根据SVM分类器的输出结果,确定相应的灌溉控制策略。将控制策略转化为具体的控制信号,输入到分流机械阀门控制器中,自动调节阀门开度,实现灌溉水量的精准控制。实验表明:该方法能够准确地采集并分析农田灌溉区域的土壤水分数据,成功识别出土壤水分的不同类别,可精准控制农田灌溉分流机械阀门的开度,误差不超过5%,分流控制后的灌溉量为52~70 L,灌溉量更低,可以达到节水的效果。 展开更多
关键词 深度卷积神经网络 支持向量机 灌溉分流机械 阀门开度 智能控制 控制器
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基于IGWO-1DCNN的高分辨一维距离像目标识别方法
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作者 陈世宝 韩嘉轩 +2 位作者 张慧雯 吴钇达 王彩云 《兵工学报》 北大核心 2025年第11期341-349,共9页
高分辨一维距离像(High Resolution Range Profile,HRRP)可提供丰富的目标细节信息,在雷达目标识别领域得到了广泛应用。由于受环境噪声干扰、大气辐射及突防措施等影响,传统的弹道中段目标HRRP识别方法的准确率较低,而智能优化算法在... 高分辨一维距离像(High Resolution Range Profile,HRRP)可提供丰富的目标细节信息,在雷达目标识别领域得到了广泛应用。由于受环境噪声干扰、大气辐射及突防措施等影响,传统的弹道中段目标HRRP识别方法的准确率较低,而智能优化算法在提取目标局部特征时又有参数过多而导致人工调参困难。针对此问题,提出一种基于改进灰狼优化一维卷积神经网络的弹道目标HRRP识别方法。该方法通过构建并改进一维卷积神经网络,对宽带雷达目标HRRP样本进行特征提取;引入改进的灰狼优化算法加快模型的收敛速度,提升模型的识别性能;使用支持向量机作为网络的分类器进行弹道目标分类识别。实验结果表明,与其他现有方法对比,新方法实现了神经网络参数的自动寻优,减轻了人工训练的负担;弹道HRRP目标识别的准确率较高,而且鲁棒性较强。 展开更多
关键词 雷达目标识别 高分辨一维距离像 一维卷积神经网络 灰狼优化算法
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基于1DCNN-IWOA-SVM的齿轮箱故障诊断方法研究
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作者 贾丽臻 雷欣然 李耀华 《机械设计》 北大核心 2025年第7期98-106,共9页
齿轮箱作为航空发动机重要的传动装置,工作环境恶劣,导致振动信号呈多种信息叠加难以区分。针对齿轮箱故障特征难以提取、故障难以识别的问题,提出一种基于一维卷积神经网络结合改进鲸鱼优化支持向量机的航空发动机齿轮箱故障诊断方法,... 齿轮箱作为航空发动机重要的传动装置,工作环境恶劣,导致振动信号呈多种信息叠加难以区分。针对齿轮箱故障特征难以提取、故障难以识别的问题,提出一种基于一维卷积神经网络结合改进鲸鱼优化支持向量机的航空发动机齿轮箱故障诊断方法,实现航空发动机齿轮箱故障快速、精准诊断。使用一维卷积神经通过其内置的卷积和池化对振动信号进行故障特征提取,在鲸鱼优化算法中引入混沌映射、非线性因子和自适应权重对其进行改进;使用改进后的鲸鱼优化算法对支持向量机进行参数寻优,再将一维卷积神经网络提取的故障特征输入到经改进鲸鱼优化参数后的支持向量机中进行故障诊断。仿真结果表明:所提的故障诊断模型对齿轮箱故障具有良好的诊断效果,与其他方法相比效果更好、泛化能力更强。 展开更多
关键词 齿轮箱 故障诊断 一维卷积神经网络 改进鲸鱼优化算法 支持向量机
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基于DCNN的ZPW-2000A无绝缘轨道电路故障诊断研究 被引量:4
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作者 林俊亭 牛鹏远 《电子测量与仪器学报》 CSCD 北大核心 2024年第6期171-180,共10页
针对ZPW-2000A无绝缘轨道电路故障发生的多样性和不确定性导致的故障诊断效率低的问题,从故障特征提取和故障分类的角度出发,提出一种基于深度卷积神经网络(DCNN)的轨道电路故障诊断方法。通过故障分析总结出12种轨道电路故障状态,并将... 针对ZPW-2000A无绝缘轨道电路故障发生的多样性和不确定性导致的故障诊断效率低的问题,从故障特征提取和故障分类的角度出发,提出一种基于深度卷积神经网络(DCNN)的轨道电路故障诊断方法。通过故障分析总结出12种轨道电路故障状态,并将不同故障状态下的轨道电路监测数据进行标准化处理,作为DCNN模型的输入。模型采用卷积-池化结构提取轨道电路的关键特征并滤除冗余特征。BP神经网络作为模型的全连接层,并结合Softmax函数进行故障分类。通过k折交叉验证法优化模型结构,确定最佳模型。实验结果表明,采用4层卷积-池化层结构的轨道电路故障诊断模型在诊断准确率方面达到了98.48%,较同为最优模型的长短期记忆网络(LSTM)模型、深度前馈网络(DFN)模型、双向长短时记忆网络模型(BiLSTM)与CNN-LSTM组合模型分别提升了6.06%,6.06%,3.33%与2.27%,训练收敛速度分别快了大约1250、4250、1250与1450次,且训练时的损失波动更小。本研究提升了轨道电路故障诊断效率,为轨道电路的故障诊断任务提供了一种新的有效方法。 展开更多
关键词 无绝缘轨道电路 深度卷积神经网络 BP神经网络 k折交叉验证 故障诊断
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基于SSA-VMD-WDCNN的水电机组故障诊断 被引量:4
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作者 欧阳慧泉 杨峰 +3 位作者 单定军 肖龙 周迪 李超顺 《水电能源科学》 北大核心 2024年第12期147-151,共5页
为提高水电机组故障诊断的诊断精度和诊断速度,提出了一种自适应变分模态分解与第一层为宽卷积核的深度卷积神经网络相融合的水电机组故障诊断方法。首先利用麻雀搜索算法对VMD分解参数进行寻优,利用最优分解参数对水电机组振动信号进行... 为提高水电机组故障诊断的诊断精度和诊断速度,提出了一种自适应变分模态分解与第一层为宽卷积核的深度卷积神经网络相融合的水电机组故障诊断方法。首先利用麻雀搜索算法对VMD分解参数进行寻优,利用最优分解参数对水电机组振动信号进行VMD分解,实现振动信号的最优自适应分解,再对分解后IMF分量进行归一化处理,最后将处理后的分量输入到WDCNN模型中进行训练和测试,得到故障诊断结果。以实测水电机组振动信号进行对比试验,结果表明所提方法具有最优的诊断精度及良好的训练速度和降噪效果,在实际的水电机组故障诊断中有一定的参考作用。 展开更多
关键词 水电机组 故障诊断 麻雀搜索算法 自适应变分模态分解 深度卷积神经网络
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基于改进2DCNN的高光谱遥感图像处理研究 被引量:2
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作者 赵章红 张丹 +2 位作者 胡昊 陈琳 常升龙 《南京信息工程大学学报(自然科学版)》 CAS 北大核心 2024年第1期106-113,共8页
针对传统遥感图像处理中的时间成本和人工成本高、效率低等问题,以提高遥感高光谱图像分类中的处理速度、精度,降低参数量为目标,提出改进的2DCNN模型En-De-2CP-2DCNN.首先,使用1DCNN、2DCNN与3DCNN在Pavia University HSI数据集上分别... 针对传统遥感图像处理中的时间成本和人工成本高、效率低等问题,以提高遥感高光谱图像分类中的处理速度、精度,降低参数量为目标,提出改进的2DCNN模型En-De-2CP-2DCNN.首先,使用1DCNN、2DCNN与3DCNN在Pavia University HSI数据集上分别进行分类实验,对比分析各自优缺点.其次,在保持较快的处理速度和不增加模型参数量的前提下,选择2DCNN为基础模型,参考SegNet的Encoder-Decoder结构,融入双卷积池化思想进行基础模型改进,同时优化学习策略.结果表明:En-De-2CP-2DCNN模型F1为99.96%,达到3DCNN的同等水平(99.36%),较改进前(97.28%)提高2.68个百分点;处理速度(5 s/epoch)和1DCNN位于同一量级,快于3DCNN(96 s/epoch);参数量(2.01 MB)较改进前降低了1.54 MB,虽高于3DCNN(316 KB),但远低于1DCNN(19.21 MB).En-De-2CP-2DCNN模型在处理速度和参数量方面的改进,有利于进一步实现移动端的轻量化部署. 展开更多
关键词 卷积神经网络 深度学习 遥感图像处理 高光谱 图像分类
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基于DCNN网络及Self-Attention-BiGRU机制的轴承剩余寿命预测 被引量:4
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作者 刘森 刘美 +2 位作者 贺银超 韩惠子 孟亚男 《机电工程》 CAS 北大核心 2024年第5期786-796,共11页
深度神经网络在剩余寿命预测(RUL)领域得到了广泛的应用。传统的滚动轴承寿命预测模型存在预测精确度较低、鲁棒性较弱的问题。为了进一步提升预测模型的精确度以及鲁棒性,提出了一种融合深度卷积神经网络(DCNN)、双向门控循环单元(BiG... 深度神经网络在剩余寿命预测(RUL)领域得到了广泛的应用。传统的滚动轴承寿命预测模型存在预测精确度较低、鲁棒性较弱的问题。为了进一步提升预测模型的精确度以及鲁棒性,提出了一种融合深度卷积神经网络(DCNN)、双向门控循环单元(BiGRU)以及自注意力机制(Self-Attention)三种模块的滚动轴承剩余使用寿命预测模型。首先,利用DCNN网络对原始振动信号的时域特征、频域特征进行了提取;然后,使用不确定量化的方法对提取到的特征进行了评价和筛选,利用筛选过后的特征构建了新的替代特征集;最后,利用Self-Attention-BiGRU网络对轴承的剩余使用寿命进行了预测,并在IEEE PHM2012数据集上进行了验证。实验结果表明:相较于BiGRU、GRU和BiLSTM三种模型的预测结果,基于DCNN及Self-Attention-BiGRU方法的预测结果最优,两项误差值:平均绝对误差(MAE)、均方根误差(RMSE)最低,其中工况一的一号轴承RUL预测的MAE值相较于BiGRU、GRU以及BiLSTM网络分别下降了7.0%、7.4%和6.5%,RMSE值相较于其他三种模型分别下降了7.6%、8.4%和6.9%,预测的Score值最高,分值为0.985。通过不同数据集的划分,证明了该方法在轴承RUL预测时的强鲁棒性。实验结果验证了基于DCNN网络及Self-Attention-BiGRU模型在轴承剩余使用寿命预测中的有效性。 展开更多
关键词 滚动轴承 剩余使用寿命 双向门控循环单元 不确定量化 自注意力机制 深度卷积神经网络 预测与健康管理
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基于GAN-DCNN的树叶识别 被引量:2
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作者 徐竞怡 张志 +1 位作者 闫飞 张雯悦 《林业科学》 EI CAS CSCD 北大核心 2024年第4期40-51,共12页
【目的】利用深度学习进行树叶识别时需要大量训练样本,当样本量不足、图像风格单一会导致识别准确率不稳定。研究利用少量的样本进行树叶图像增殖和风格转换,可极大减轻数据采集的负担,为提升林业调查信息化、智能化提供有效的技术手... 【目的】利用深度学习进行树叶识别时需要大量训练样本,当样本量不足、图像风格单一会导致识别准确率不稳定。研究利用少量的样本进行树叶图像增殖和风格转换,可极大减轻数据采集的负担,为提升林业调查信息化、智能化提供有效的技术手段和理论支撑。【方法】采集6种树种的树叶图像建立数据集,引入light-weight GAN对图像进行增殖和风格转换,扩充人工拍摄的树叶数据集,通过在该数据集与原数据集上分别应用AlexNet、GoogLeNet、ResNet34和ShuffleNetV2四种深度卷积神经网络进行训练,分析生成对抗网络的图像增殖技术在树叶识别中的作用。综合模型准确率和训练时间等性能指标选择最优模型,同时对模型的学习率进行调整。使用测试样本对参数优化后的模型进行验证,分析该方法在实践中的可行性和意义。【结果】基于生成对抗网络生成的样本具有高清晰度,高保真性,能够有效地辅助神经网络模型的训练工作,同时也丰富了样本类别,使之获得包含更多不同季节、形状、健康状况的树叶图像。与原始数据集相比,AlexNet、GoogLeNet、ResNet34和ShuffleNetV2四种网络在新数据集的训练上均表现出训练误差更小、验证精度更高的特点,其中学习率为0.01的ShuffleNetV2模型对该数据集的训练效果最好,训练时最高验证精度为99.7%。使用未参与训练的测试样本对该模型进行验证,模型对各树叶的识别效果较好,模型的总体识别准确率高达99.8%。与未使用GAN技术的普通深度卷积神经网络相比,本文提出的模型对树叶识别准确率明显提升。【结论】生成对抗网络可以有效地扩充图像数量,对图像进行风格转换,与深度卷积神经网络相结合,可以显著提高树叶识别准确率,适合应用于林业树叶识别领域。 展开更多
关键词 树叶识别 生成对抗网络 深度卷积神经网络
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基于DNDCNN的地震信号去噪方法 被引量:2
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作者 马俊卓 李钢 +2 位作者 孙嘉莹 张玲 卫超凡 《科学技术与工程》 北大核心 2024年第34期14571-14580,共10页
在复杂的勘探环境下,原始采集的地震数据包含大量随机噪声会严重影响地震资料的质量,为后续地质解释带来困难。针对该问题,提出了一种结合可变形卷积和注意力机制的地震信号去噪模型,即DnDCNN(denoising deformable convolutional neura... 在复杂的勘探环境下,原始采集的地震数据包含大量随机噪声会严重影响地震资料的质量,为后续地质解释带来困难。针对该问题,提出了一种结合可变形卷积和注意力机制的地震信号去噪模型,即DnDCNN(denoising deformable convolutional neural network)网络。首先,在DnCNN网络中引入融合可变形卷积的注意力机制,使网络更加关注有效信号区域,减少细节信息的丢失;其次,将网络中堆叠的标准卷积替换为可变形卷积和标准卷积串联模式,提高不变性特征提取能力;最后,将批量归一化和残差学习策略融合,实现网络快速收敛和信噪分离。通过对模拟和实际地震数据进行验证,结果表明该网络模型在不同噪声水平下可以有效压制随机噪声、保留更多细节信息,对微弱信号去噪表现出更优秀的信噪比。 展开更多
关键词 深度学习 地震去噪 可变形卷积 卷积神经网络 注意力机制
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基于RIME和1DCNN-LSTM-Attention的无创血糖预测模型研究 被引量:2
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作者 贺义博 靳鸿 +1 位作者 周春 屈盛玉 《现代电子技术》 北大核心 2024年第18期83-88,共6页
实现无创血糖检测对于糖尿病患者来说具有重要意义,然而目前市面上的无创血糖仪存在检测精度不高的问题。为了提高无创血糖检测的准确度,基于近红外无创血糖检测仪,构建了1DCNN-LSTM-Attention混合预测模型,同时引入了霜冰优化算法(RIME... 实现无创血糖检测对于糖尿病患者来说具有重要意义,然而目前市面上的无创血糖仪存在检测精度不高的问题。为了提高无创血糖检测的准确度,基于近红外无创血糖检测仪,构建了1DCNN-LSTM-Attention混合预测模型,同时引入了霜冰优化算法(RIME)。该模型通过一维卷积神经网络(1DCNN)提取数据中的局部特征,将所提取的特征向量作为长短期记忆(LSTM)网络的输入,捕捉数据中的依赖关系;采用注意力机制(Attention)为LSTM的输出赋予不同的权重,增强关键信息提取;通过RIME算法优化模型参数,避免陷入局部最优解。结果表明,引入RIME的1DCNN-LSTM-Attention混合模型预测效果优于1DCNN、LSTM、1DCNN-LSTM、1DCNN-LSTM-Attention等模型,预测血糖值与有创血糖值的平均绝对误差为0.121 0,均方误差为0.018 6,相关系数达到了0.982 3。该模型有助于提高近红外无创血糖检测的精确度和可靠性。 展开更多
关键词 近红外无创血糖检测 一维卷积神经网络 霜冰优化算法 长短期记忆网络 注意力机制 参数优化
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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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脉冲噪声下基于DCNN的LFM信号去噪方法
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作者 卢景琳 郭勇 杨立东 《现代雷达》 CSCD 北大核心 2024年第10期104-114,共11页
由于脉冲噪声具有明显的尖峰脉冲特性,使得基于高斯假设的传统去噪方法无法有效滤除脉冲噪声。针对这个问题,文中提出了一种脉冲噪声下基于深度卷积神经网络(DCNN)的线性调频(LFM)信号去噪方法。首先,生成LFM信号和随机脉冲噪声,构建不... 由于脉冲噪声具有明显的尖峰脉冲特性,使得基于高斯假设的传统去噪方法无法有效滤除脉冲噪声。针对这个问题,文中提出了一种脉冲噪声下基于深度卷积神经网络(DCNN)的线性调频(LFM)信号去噪方法。首先,生成LFM信号和随机脉冲噪声,构建不同广义信噪比下的数据集,输入DCNN进行训练和测试。进而,从时域波形图、分数谱、时频分布三个方面验证模型的去噪能力。最后,对去噪LFM信号进行分数阶傅里叶变换,通过搜寻分数谱中的峰值点来估计LFM信号的参数。仿真实验结果表明,文中方法不仅能够有效去除含噪信号中的随机脉冲噪声,而且还可以保持LFM信号的时域特征、分数谱特征和时频特征基本不变,进而提高了参数估计的噪声鲁棒性。与传统的基于非线性变换的方法相比,本文方法在低信噪比下仍能有效保持信号的分数谱特征和时频特征,具有更好的去噪性能和泛化能力。 展开更多
关键词 脉冲噪声 深度卷积神经网络 线性调频信号 分数阶傅里叶变换
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基于1 DCNN-GWO-SVM的柴油机喷油系统故障诊断方法研究 被引量:1
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作者 冯海波 毛玉欣 +3 位作者 孔祥鑫 张探军 刘峰春 叶俊杰 《车用发动机》 北大核心 2024年第4期85-92,共8页
准确、有效的故障诊断是柴油机安全可靠运行的重要保障。基于热工参数诊断的方法存在测点多、专业性强等问题,传统机器学习结合振动信号诊断方法存在人为影响因素过高、不确定性大等问题,因此提出了一种基于1DCNN-GWO-SVM的柴油机喷油... 准确、有效的故障诊断是柴油机安全可靠运行的重要保障。基于热工参数诊断的方法存在测点多、专业性强等问题,传统机器学习结合振动信号诊断方法存在人为影响因素过高、不确定性大等问题,因此提出了一种基于1DCNN-GWO-SVM的柴油机喷油系统故障诊断方法。首先利用一维卷积神经网络(one-dimensional convolutional neural network,1DCNN)对时域下的柴油机振动加速度信号进行自学习特征提取,然后利用提取到的特征向量训练支持向量机(support vector machine,SVM)分类模型,并利用灰狼优化算法(grey wolf optimization,GWO)对SVM的C,g等超参数进行寻优,以此来实现对柴油机的“端对端”故障诊断。在实例验证中,1DCNN-GWO-SVM在测试集上能达到99.10%的诊断准确率,优于传统的机器学习故障诊断方法,并且在信噪比为分别10 dB,20 dB,30 dB的干扰环境下,依然能保持90%以上的诊断准确率。结果表明:1DCNN-GWO-SVM是一种预测精度高、泛化能力强、抗干扰能力强的柴油机“端对端”喷油系统故障诊断方法,具有实际工程应用价值。 展开更多
关键词 卷积神经网络 支持向量机 灰狼优化算法 柴油机 故障诊断
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Sound event localization and detection based on deep learning
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作者 ZHAO Dada DING Kai +2 位作者 QI Xiaogang CHEN Yu FENG Hailin 《Journal of Systems Engineering and Electronics》 SCIE CSCD 2024年第2期294-301,共8页
Acoustic source localization(ASL)and sound event detection(SED)are two widely pursued independent research fields.In recent years,in order to achieve a more complete spatial and temporal representation of sound field,... Acoustic source localization(ASL)and sound event detection(SED)are two widely pursued independent research fields.In recent years,in order to achieve a more complete spatial and temporal representation of sound field,sound event localization and detection(SELD)has become a very active research topic.This paper presents a deep learning-based multioverlapping sound event localization and detection algorithm in three-dimensional space.Log-Mel spectrum and generalized cross-correlation spectrum are joined together in channel dimension as input features.These features are classified and regressed in parallel after training by a neural network to obtain sound recognition and localization results respectively.The channel attention mechanism is also introduced in the network to selectively enhance the features containing essential information and suppress the useless features.Finally,a thourough comparison confirms the efficiency and effectiveness of the proposed SELD algorithm.Field experiments show that the proposed algorithm is robust to reverberation and environment and can achieve higher recognition and localization accuracy compared with the baseline method. 展开更多
关键词 sound event localization and detection(SELD) deep learning convolutional recursive neural network(CRNN) channel attention mechanism
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Rapid urban flood forecasting based on cellular automata and deep learning
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作者 BAI Bing DONG Fei +1 位作者 LI Chuanqi WANG Wei 《水利水电技术(中英文)》 北大核心 2024年第12期17-28,共12页
[Objective]Urban floods are occurring more frequently because of global climate change and urbanization.Accordingly,urban rainstorm and flood forecasting has become a priority in urban hydrology research.However,two-d... [Objective]Urban floods are occurring more frequently because of global climate change and urbanization.Accordingly,urban rainstorm and flood forecasting has become a priority in urban hydrology research.However,two-dimensional hydrodynamic models execute calculations slowly,hindering the rapid simulation and forecasting of urban floods.To overcome this limitation and accelerate the speed and improve the accuracy of urban flood simulations and forecasting,numerical simulations and deep learning were combined to develop a more effective urban flood forecasting method.[Methods]Specifically,a cellular automata model was used to simulate the urban flood process and address the need to include a large number of datasets in the deep learning process.Meanwhile,to shorten the time required for urban flood forecasting,a convolutional neural network model was used to establish the mapping relationship between rainfall and inundation depth.[Results]The results show that the relative error of forecasting the maximum inundation depth in flood-prone locations is less than 10%,and the Nash efficiency coefficient of forecasting inundation depth series in flood-prone locations is greater than 0.75.[Conclusion]The result demonstrated that the proposed method could execute highly accurate simulations and quickly produce forecasts,illustrating its superiority as an urban flood forecasting technique. 展开更多
关键词 urban flooding flood-prone location cellular automata deep learning convolutional neural network rapid forecasting
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A survey of fine-grained visual categorization based on deep learning
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作者 XIE Yuxiang GONG Quanzhi +2 位作者 LUAN Xidao YAN Jie ZHANG Jiahui 《Journal of Systems Engineering and Electronics》 CSCD 2024年第6期1337-1356,共20页
Deep learning has achieved excellent results in various tasks in the field of computer vision,especially in fine-grained visual categorization.It aims to distinguish the subordinate categories of the label-level categ... Deep learning has achieved excellent results in various tasks in the field of computer vision,especially in fine-grained visual categorization.It aims to distinguish the subordinate categories of the label-level categories.Due to high intra-class variances and high inter-class similarity,the fine-grained visual categorization is extremely challenging.This paper first briefly introduces and analyzes the related public datasets.After that,some of the latest methods are reviewed.Based on the feature types,the feature processing methods,and the overall structure used in the model,we divide them into three types of methods:methods based on general convolutional neural network(CNN)and strong supervision of parts,methods based on single feature processing,and meth-ods based on multiple feature processing.Most methods of the first type have a relatively simple structure,which is the result of the initial research.The methods of the other two types include models that have special structures and training processes,which are helpful to obtain discriminative features.We conduct a specific analysis on several methods with high accuracy on pub-lic datasets.In addition,we support that the focus of the future research is to solve the demand of existing methods for the large amount of the data and the computing power.In terms of tech-nology,the extraction of the subtle feature information with the burgeoning vision transformer(ViT)network is also an important research direction. 展开更多
关键词 deep learning fine-grained visual categorization convolutional neural network(CNN) visual attention
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