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SIM-Net:A Multi-Scale Attention-Guided Deep Learning Framework for High-Precision PCB Defect Detection
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作者 Ping Fang Mengjun Tong 《Computers, Materials & Continua》 2026年第4期1754-1770,共17页
Defect detection in printed circuit boards(PCB)remains challenging due to the difficulty of identifying small-scale defects,the inefficiency of conventional approaches,and the interference from complex backgrounds.To ... Defect detection in printed circuit boards(PCB)remains challenging due to the difficulty of identifying small-scale defects,the inefficiency of conventional approaches,and the interference from complex backgrounds.To address these issues,this paper proposes SIM-Net,an enhanced detection framework derived from YOLOv11.The model integrates SPDConv to preserve fine-grained features for small object detection,introduces a novel convolutional partial attention module(C2PAM)to suppress redundant background information and highlight salient regions,and employs a multi-scale fusion network(MFN)with a multi-grain contextual module(MGCT)to strengthen contextual representation and accelerate inference.Experimental evaluations demonstrate that SIM-Net achieves 92.4%mAP,92%accuracy,and 89.4%recall with an inference speed of 75.1 FPS,outperforming existing state-of-the-art methods.These results confirm the robustness and real-time applicability of SIM-Net for PCB defect inspection. 展开更多
关键词 Deep learning small object detection PCB defect detection attention mechanism multi-scale fusion network
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M2ANet:Multi-branch and multi-scale attention network for medical image segmentation 被引量:1
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作者 Wei Xue Chuanghui Chen +3 位作者 Xuan Qi Jian Qin Zhen Tang Yongsheng He 《Chinese Physics B》 2025年第8期547-559,共13页
Convolutional neural networks(CNNs)-based medical image segmentation technologies have been widely used in medical image segmentation because of their strong representation and generalization abilities.However,due to ... Convolutional neural networks(CNNs)-based medical image segmentation technologies have been widely used in medical image segmentation because of their strong representation and generalization abilities.However,due to the inability to effectively capture global information from images,CNNs can easily lead to loss of contours and textures in segmentation results.Notice that the transformer model can effectively capture the properties of long-range dependencies in the image,and furthermore,combining the CNN and the transformer can effectively extract local details and global contextual features of the image.Motivated by this,we propose a multi-branch and multi-scale attention network(M2ANet)for medical image segmentation,whose architecture consists of three components.Specifically,in the first component,we construct an adaptive multi-branch patch module for parallel extraction of image features to reduce information loss caused by downsampling.In the second component,we apply residual block to the well-known convolutional block attention module to enhance the network’s ability to recognize important features of images and alleviate the phenomenon of gradient vanishing.In the third component,we design a multi-scale feature fusion module,in which we adopt adaptive average pooling and position encoding to enhance contextual features,and then multi-head attention is introduced to further enrich feature representation.Finally,we validate the effectiveness and feasibility of the proposed M2ANet method through comparative experiments on four benchmark medical image segmentation datasets,particularly in the context of preserving contours and textures. 展开更多
关键词 medical image segmentation convolutional neural network multi-branch attention multi-scale feature fusion
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Dynamic Interaction-Aware Trajectory Prediction with Bidirectional Graph Attention Network
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作者 Jun Li Kai Xu +4 位作者 Baozhu Chen Xiaohan Yang Mengting Sun Guojun Li HaoJie Du 《Computers, Materials & Continua》 2025年第11期3349-3368,共20页
Pedestrian trajectory prediction is pivotal and challenging in applications such as autonomous driving,social robotics,and intelligent surveillance systems.Pedestrian trajectory is governed not only by individual inte... Pedestrian trajectory prediction is pivotal and challenging in applications such as autonomous driving,social robotics,and intelligent surveillance systems.Pedestrian trajectory is governed not only by individual intent but also by interactions with surrounding agents.These interactions are critical to trajectory prediction accuracy.While prior studies have employed Convolutional Neural Networks(CNNs)and Graph Convolutional Networks(GCNs)to model such interactions,these methods fail to distinguish varying influence levels among neighboring pedestrians.To address this,we propose a novel model based on a bidirectional graph attention network and spatio-temporal graphs to capture dynamic interactions.Specifically,we construct temporal and spatial graphs encoding the sequential evolution and spatial proximity among pedestrians.These features are then fused and processed by the Bidirectional Graph Attention Network(Bi-GAT),which models the bidirectional interactions between the target pedestrian and its neighbors.The model computes node attention weights(i.e.,similarity scores)to differentially aggregate neighbor information,enabling fine-grained interaction representations.Extensive experiments conducted on two widely used pedestrian trajectory prediction benchmark datasets demonstrate that our approach outperforms existing state-of-theartmethods regarding Average Displacement Error(ADE)and Final Displacement Error(FDE),highlighting its strong prediction accuracy and generalization capability. 展开更多
关键词 Pedestrian trajectory prediction spatio-temporal modeling bidirectional graph attention network autonomous system
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Magnetic Resonance Image Super-Resolution Based on GAN and Multi-Scale Residual Dense Attention Network
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作者 GUAN Chunling YU Suping +1 位作者 XU Wujun FAN Hong 《Journal of Donghua University(English Edition)》 2025年第4期435-441,共7页
The application of image super-resolution(SR)has brought significant assistance in the medical field,aiding doctors to make more precise diagnoses.However,solely relying on a convolutional neural network(CNN)for image... The application of image super-resolution(SR)has brought significant assistance in the medical field,aiding doctors to make more precise diagnoses.However,solely relying on a convolutional neural network(CNN)for image SR may lead to issues such as blurry details and excessive smoothness.To address the limitations,we proposed an algorithm based on the generative adversarial network(GAN)framework.In the generator network,three different sizes of convolutions connected by a residual dense structure were used to extract detailed features,and an attention mechanism combined with dual channel and spatial information was applied to concentrate the computing power on crucial areas.In the discriminator network,using InstanceNorm to normalize tensors sped up the training process while retaining feature information.The experimental results demonstrate that our algorithm achieves higher peak signal-to-noise ratio(PSNR)and structural similarity index measure(SSIM)compared to other methods,resulting in an improved visual quality. 展开更多
关键词 magnetic resonance(MR) image super-resolution(SR) attention mechanism generative adversarial network(GAN) multi-scale convolution
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Multi-Feature Fusion-Guided Multiscale Bidirectional Attention Networks for Logistics Pallet Segmentation 被引量:1
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作者 Weiwei Cai Yaping Song +2 位作者 Huan Duan Zhenwei Xia Zhanguo Wei 《Computer Modeling in Engineering & Sciences》 SCIE EI 2022年第6期1539-1555,共17页
In the smart logistics industry,unmanned forklifts that intelligently identify logistics pallets can improve work efficiency in warehousing and transportation and are better than traditional manual forklifts driven by... In the smart logistics industry,unmanned forklifts that intelligently identify logistics pallets can improve work efficiency in warehousing and transportation and are better than traditional manual forklifts driven by humans.Therefore,they play a critical role in smart warehousing,and semantics segmentation is an effective method to realize the intelligent identification of logistics pallets.However,most current recognition algorithms are ineffective due to the diverse types of pallets,their complex shapes,frequent blockades in production environments,and changing lighting conditions.This paper proposes a novel multi-feature fusion-guided multiscale bidirectional attention(MFMBA)neural network for logistics pallet segmentation.To better predict the foreground category(the pallet)and the background category(the cargo)of a pallet image,our approach extracts three types of features(grayscale,texture,and Hue,Saturation,Value features)and fuses them.The multiscale architecture deals with the problem that the size and shape of the pallet may appear different in the image in the actual,complex environment,which usually makes feature extraction difficult.Our study proposes a multiscale architecture that can extract additional semantic features.Also,since a traditional attention mechanism only assigns attention rights from a single direction,we designed a bidirectional attention mechanism that assigns cross-attention weights to each feature from two directions,horizontally and vertically,significantly improving segmentation.Finally,comparative experimental results show that the precision of the proposed algorithm is 0.53%–8.77%better than that of other methods we compared. 展开更多
关键词 Logistics pallet segmentation image segmentation multi-feature fusion multiscale network bidirectional attention mechanism HSV neural networks deep learning
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Multi-Scale Attention-Based Deep Neural Network for Brain Disease Diagnosis 被引量:1
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作者 Yin Liang Gaoxu Xu Sadaqat ur Rehman 《Computers, Materials & Continua》 SCIE EI 2022年第9期4645-4661,共17页
Whole brain functional connectivity(FC)patterns obtained from resting-state functional magnetic resonance imaging(rs-fMRI)have been widely used in the diagnosis of brain disorders such as autism spectrum disorder(ASD)... Whole brain functional connectivity(FC)patterns obtained from resting-state functional magnetic resonance imaging(rs-fMRI)have been widely used in the diagnosis of brain disorders such as autism spectrum disorder(ASD).Recently,an increasing number of studies have focused on employing deep learning techniques to analyze FC patterns for brain disease classification.However,the high dimensionality of the FC features and the interpretation of deep learning results are issues that need to be addressed in the FC-based brain disease classification.In this paper,we proposed a multi-scale attention-based deep neural network(MSA-DNN)model to classify FC patterns for the ASD diagnosis.The model was implemented by adding a flexible multi-scale attention(MSA)module to the auto-encoder based backbone DNN,which can extract multi-scale features of the FC patterns and change the level of attention for different FCs by continuous learning.Our model will reinforce the weights of important FC features while suppress the unimportant FCs to ensure the sparsity of the model weights and enhance the model interpretability.We performed systematic experiments on the large multi-sites ASD dataset with both ten-fold and leaveone-site-out cross-validations.Results showed that our model outperformed classical methods in brain disease classification and revealed robust intersite prediction performance.We also localized important FC features and brain regions associated with ASD classification.Overall,our study further promotes the biomarker detection and computer-aided classification for ASD diagnosis,and the proposed MSA module is flexible and easy to implement in other classification networks. 展开更多
关键词 Autism spectrum disorder diagnosis resting-state fMRI deep neural network functional connectivity multi-scale attention module
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MSSTNet:Multi-scale facial videos pulse extraction network based on separable spatiotemporal convolution and dimension separable attention
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作者 Changchen ZHAO Hongsheng WANG Yuanjing FENG 《Virtual Reality & Intelligent Hardware》 2023年第2期124-141,共18页
Background The use of remote photoplethysmography(rPPG)to estimate blood volume pulse in a noncontact manner has been an active research topic in recent years.Existing methods are primarily based on a singlescale regi... Background The use of remote photoplethysmography(rPPG)to estimate blood volume pulse in a noncontact manner has been an active research topic in recent years.Existing methods are primarily based on a singlescale region of interest(ROI).However,some noise signals that are not easily separated in a single-scale space can be easily separated in a multi-scale space.Also,existing spatiotemporal networks mainly focus on local spatiotemporal information and do not emphasize temporal information,which is crucial in pulse extraction problems,resulting in insufficient spatiotemporal feature modelling.Methods Here,we propose a multi-scale facial video pulse extraction network based on separable spatiotemporal convolution(SSTC)and dimension separable attention(DSAT).First,to solve the problem of a single-scale ROI,we constructed a multi-scale feature space for initial signal separation.Second,SSTC and DSAT were designed for efficient spatiotemporal correlation modeling,which increased the information interaction between the long-span time and space dimensions;this placed more emphasis on temporal features.Results The signal-to-noise ratio(SNR)of the proposed network reached 9.58dB on the PURE dataset and 6.77dB on the UBFC-rPPG dataset,outperforming state-of-the-art algorithms.Conclusions The results showed that fusing multi-scale signals yielded better results than methods based on only single-scale signals.The proposed SSTC and dimension-separable attention mechanism will contribute to more accurate pulse signal extraction. 展开更多
关键词 Remote photoplethysmography Heart rate Separable spatiotemporal convolution Dimension separable attention multi-scale Neural network
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EHDC-YOLO: Enhancing Object Detection for UAV Imagery via Multi-Scale Edge and Detail Capture
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作者 Zhiyong Deng Yanchen Ye Jiangling Guo 《Computers, Materials & Continua》 2026年第1期1665-1682,共18页
With the rapid expansion of drone applications,accurate detection of objects in aerial imagery has become crucial for intelligent transportation,urban management,and emergency rescue missions.However,existing methods ... With the rapid expansion of drone applications,accurate detection of objects in aerial imagery has become crucial for intelligent transportation,urban management,and emergency rescue missions.However,existing methods face numerous challenges in practical deployment,including scale variation handling,feature degradation,and complex backgrounds.To address these issues,we propose Edge-enhanced and Detail-Capturing You Only Look Once(EHDC-YOLO),a novel framework for object detection in Unmanned Aerial Vehicle(UAV)imagery.Based on the You Only Look Once version 11 nano(YOLOv11n)baseline,EHDC-YOLO systematically introduces several architectural enhancements:(1)a Multi-Scale Edge Enhancement(MSEE)module that leverages multi-scale pooling and edge information to enhance boundary feature extraction;(2)an Enhanced Feature Pyramid Network(EFPN)that integrates P2-level features with Cross Stage Partial(CSP)structures and OmniKernel convolutions for better fine-grained representation;and(3)Dynamic Head(DyHead)with multi-dimensional attention mechanisms for enhanced cross-scale modeling and perspective adaptability.Comprehensive experiments on the Vision meets Drones for Detection(VisDrone-DET)2019 dataset demonstrate that EHDC-YOLO achieves significant improvements,increasing mean Average Precision(mAP)@0.5 from 33.2%to 46.1%(an absolute improvement of 12.9 percentage points)and mAP@0.5:0.95 from 19.5%to 28.0%(an absolute improvement of 8.5 percentage points)compared with the YOLOv11n baseline,while maintaining a reasonable parameter count(2.81 M vs the baseline’s 2.58 M).Further ablation studies confirm the effectiveness of each proposed component,while visualization results highlight EHDC-YOLO’s superior performance in detecting objects and handling occlusions in complex drone scenarios. 展开更多
关键词 UAV imagery object detection multi-scale feature fusion edge enhancement detail preservation YOLO feature pyramid network attention mechanism
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An Integrated Attention-BiLSTM Approach for Probabilistic Remaining Useful Life Prediction
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作者 Bo Zhu Enzhi Dong +3 位作者 Zhonghua Cheng Kexin Jiang Chiming Guo Shuai Yue 《Computers, Materials & Continua》 2026年第4期966-984,共19页
Accurate prediction of remaining useful life serves as a reliable basis for maintenance strategies,effectively reducing both the frequency of failures and associated costs.As a core component of PHM,RUL prediction pla... Accurate prediction of remaining useful life serves as a reliable basis for maintenance strategies,effectively reducing both the frequency of failures and associated costs.As a core component of PHM,RUL prediction plays a crucial role in preventing equipment failures and optimizing maintenance decision-making.However,deep learning models often falter when processing raw,noisy temporal signals,fail to quantify prediction uncertainty,and face challenges in effectively capturing the nonlinear dynamics of equipment degradation.To address these issues,this study proposes a novel deep learning framework.First,a newbidirectional long short-termmemory network integrated with an attention mechanism is designed to enhance temporal feature extraction with improved noise robustness.Second,a probabilistic prediction framework based on kernel density estimation is constructed,incorporating residual connections and stochastic regularization to achieve precise RUL estimation.Finally,extensive experiments on the C-MAPSS dataset demonstrate that our method achieves competitive performance in terms of RMSE and Score metrics compared to state-of-the-artmodels.More importantly,the probabilistic output provides a quantifiablemeasure of prediction confidence,which is crucial for risk-informed maintenance planning,enabling managers to optimize maintenance strategies based on a quantifiable understanding of failure risk. 展开更多
关键词 bidirectional long short-term memory network attention mechanism kernel density estimation remaining useful life prediction
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基于SSA-VMD-BiLSTM-Attention的电力短期负荷预测研究
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作者 林雄锋 苏丽莎 +2 位作者 李声云 彭智刚 董雯影 《自动化仪表》 2026年第2期81-85,93,共6页
电力负荷预测对于维护电网安全、稳定运行和制定高效的需求响应策略至关重要。为解决电力负荷影响因素多导致电力负荷难以准确预测的问题、提高电力负荷预测精度,提出一种利用麻雀搜索算法(SSA)分别优化变分模态分解(VMD)算法和双向长... 电力负荷预测对于维护电网安全、稳定运行和制定高效的需求响应策略至关重要。为解决电力负荷影响因素多导致电力负荷难以准确预测的问题、提高电力负荷预测精度,提出一种利用麻雀搜索算法(SSA)分别优化变分模态分解(VMD)算法和双向长短期记忆(BiLSTM)神经网络的短期负荷预测方法。首先,对原始数据进行预处理,清理异常值以防止对模型预测产生干扰。然后,利用SSA,分别优化VMD中的参数和BiLSTM中的部分超参数,防止人为选取的参数影响模型性能和预测精度。最后,在BiLSTM神经网络中引入注意力机制,增强对关键输入特征的重视程度。通过算例分析,引入误差评价参数后的结果表明,所提方法能够有效进行电力负荷预测,为维护电网安全、稳定运行和制定高效的需求响应策略提供准确数据。 展开更多
关键词 麻雀搜索算法 变分模态分解 双向长短期记忆 神经网络 注意力机制 负荷预测 误差评价
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STABC-IR:An air target intention recognition method based on bidirectional gated recurrent unit and conditional random field with space-time attention mechanism 被引量:17
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作者 Siyuan WANG Gang WANG +3 位作者 Qiang FU Yafei SONG Jiayi LIU Sheng HE 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2023年第3期316-334,共19页
The battlefield environment is changing rapidly,and fast and accurate identification of the tactical intention of enemy targets is an important condition for gaining a decision-making advantage.The current Intention R... The battlefield environment is changing rapidly,and fast and accurate identification of the tactical intention of enemy targets is an important condition for gaining a decision-making advantage.The current Intention Recognition(IR)method for air targets has shortcomings in temporality,interpretability and back-and-forth dependency of intentions.To address these problems,this paper designs a novel air target intention recognition method named STABC-IR,which is based on Bidirectional Gated Recurrent Unit(Bi GRU)and Conditional Random Field(CRF)with Space-Time Attention mechanism(STA).First,the problem of intention recognition of air targets is described and analyzed in detail.Then,a temporal network based on Bi GRU is constructed to achieve the temporal requirement.Subsequently,STA is proposed to focus on the key parts of the features and timing information to meet certain interpretability requirements while strengthening the timing requirements.Finally,an intention transformation network based on CRF is proposed to solve the back-and-forth dependency and transformation problem by jointly modeling the tactical intention of the target at each moment.The experimental results show that the recognition accuracy of the jointly trained STABC-IR model can reach 95.7%,which is higher than other latest intention recognition methods.STABC-IR solves the problem of intention transformation for the first time and considers both temporality and interpretability,which is important for improving the tactical intention recognition capability and has reference value for the construction of command and control auxiliary decision-making system. 展开更多
关键词 bidirectional gated recurrent network Conditional random field Intention recognition Intention transformation Situation cognition Space-time attention mechanism
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基于CNN-BiLSTM-Attention融合模型的差分隐私轨迹重构攻击
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作者 谢丽霞 赵尔康 +2 位作者 杨宏宇 刘哲理 赵永新 《通信学报》 北大核心 2025年第12期138-156,共19页
针对现有差分隐私轨迹保护机制的重构攻击方法在局部特征提取、空间信息提取以及全局依赖建模方面的不足所导致攻击性能不佳的问题,提出了一种基于CNN-BiLSTM-Attention融合模型的轨迹重构攻击方法。该方法引入卷积神经网络(CNN)捕捉轨... 针对现有差分隐私轨迹保护机制的重构攻击方法在局部特征提取、空间信息提取以及全局依赖建模方面的不足所导致攻击性能不佳的问题,提出了一种基于CNN-BiLSTM-Attention融合模型的轨迹重构攻击方法。该方法引入卷积神经网络(CNN)捕捉轨迹数据中的空间依赖性和局部模式。通过双向长短期记忆网络(BiLSTM)建模轨迹序列中的长期时序依赖,增强轨迹序列在时间维度上的表达能力。通过注意力机制为轨迹中的每个时间步自适应分配不同的权重,捕捉轨迹中的全局信息和长时间跨度的依赖关系。实验结果表明,相较于基线方法,所提方法的欧几里得距离减少百分比平均提升5.03%,豪斯多夫距离减少百分比平均提升5.02%,轨迹凸包的杰卡德指数平均提升了2.4倍,可有效实施轨迹重构攻击。 展开更多
关键词 差分隐私 轨迹重构攻击 卷积神经网络 双向长短期记忆网络 注意力机制
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以霜冰优化算法优化CNN-BiLSTM-Attention的参考蒸散量估算
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作者 付桐林 金晶 《中国沙漠》 北大核心 2025年第3期302-312,共11页
有限气象参数条件下借助于深度学习实现蒸散量的准确估算对干旱区有限水资源的高效利用和管理具有重要意义。当前基于混合深度学习模型CNN-Bi LSTM-Attention的蒸散发估算忽视了参数优化,导致估算精度难以契合实际应用需求。本文提出了... 有限气象参数条件下借助于深度学习实现蒸散量的准确估算对干旱区有限水资源的高效利用和管理具有重要意义。当前基于混合深度学习模型CNN-Bi LSTM-Attention的蒸散发估算忽视了参数优化,导致估算精度难以契合实际应用需求。本文提出了一种新的霜冰优化算法(RIME)优化CNN-Bi LSTM-Attention的超参数的混合模型RIME-CNN-Bi LSTM-Attention,实现了有限气象参数条件下临泽县参考蒸散量(ET_(0))的准确预测。与CNN-Bi LSTM-Attention相比,混合模型RIME-CNN-Bi LSTM-Attention的平均绝对百分比误差(MAPE)从14.56%下降到14.09%,可决系数从0.8654上升到0.8930。此外,数值结果表明混合模型RIME-CNN-Bi LSTM-Attention的模型性能优于分别采用哈里斯鹰优化算法(HHO)、鱼鹰优化算法(OOA)、北方苍鹰算法(NGO)对CNN-Bi LSTM-Attention进行优化的混合模型HHO-CNN-Bi LSTM-Attention、OOA-CNN-Bi LSTM-Attention、NGO-CNN-Bi LSTM-Attention,意味着所构建混合模型RIME-CNN-Bi LSTM-Attention具有更加稳健的模型性能和更高的计算精度,能够实现研究区域ET_(0)的准确估算。 展开更多
关键词 参考蒸散量 霜冰优化算法 卷积神经网络 双向长短期记忆网络 注意力机制
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基于PSO-GWO-BiLSTM-Attention的换道意图识别预测模型研究
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作者 陈峥 韦进 +1 位作者 陈博闻 魏福星 《昆明理工大学学报(自然科学版)》 北大核心 2025年第5期172-184,共13页
针对复杂交通场景中车辆换道意图识别准确率不足的问题,提出了一种融合PSO-GWO优化策略与BiLSTM-Attention机制的混合模型.该模型以目标车辆的轨迹序列及其与周围车辆的动态交互特征为输入,利用双向长短期记忆网络(BiLSTM)对时间序列数... 针对复杂交通场景中车辆换道意图识别准确率不足的问题,提出了一种融合PSO-GWO优化策略与BiLSTM-Attention机制的混合模型.该模型以目标车辆的轨迹序列及其与周围车辆的动态交互特征为输入,利用双向长短期记忆网络(BiLSTM)对时间序列数据进行处理,从而挖掘其中的长期依赖特性,并结合注意力机制(Attention)动态调整不同时间步的权重,聚焦关键信息,从而提升识别精度.为了优化模型性能,采用粒子群优化与灰狼优化相结合(PSO-GWO)算法对模型超参数进行多目标寻优,有效解决了传统方法中参数调优困难的问题.将该模型与其他5种模型进行对比,结果表明该模型的意图识别准确率最高,达到94.23%,在换道前2.5 s的识别精度均能达到90%以上,展现了较强的预判能力和鲁棒性,为复杂交通场景下的车辆换道意图识别提供了高效且可靠的解决方案. 展开更多
关键词 换道意图识别 注意力机制 自动驾驶 粒子群算法 双向长短期记忆网络
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基于CNN-BiLSTM-Attention的直流微电网故障诊断研究 被引量:7
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作者 孟宏宇 张建良 +1 位作者 蔡兆龙 李超勇 《中国电机工程学报》 北大核心 2025年第4期1369-1380,I0012,共13页
针对现有直流微电网故障诊断面临的快速性与准确性问题,提出一种融合注意力机制的卷积神经网络(convolutional neural network,CNN)和双向长短期记忆(bidirectional long short-term memory,BiLSTM)网络的故障诊断方法。首先,利用CNN挖... 针对现有直流微电网故障诊断面临的快速性与准确性问题,提出一种融合注意力机制的卷积神经网络(convolutional neural network,CNN)和双向长短期记忆(bidirectional long short-term memory,BiLSTM)网络的故障诊断方法。首先,利用CNN挖掘故障数据在某一时刻的纵向细节特征,并压缩数据长度,降低后续网络训练参数量,以提升故障诊断的快速性;进而,构建以BiLSTM为核心的级联网络,实现对故障数据在故障演化过程中横向历史特征的提取,并融合注意力机制促使模型关注故障时刻数据的特征变化规律,以提升故障诊断的准确性。仿真结果表明,相比于主流故障诊断方法,该文所提方法具有更高的准确率与更快的识别速度,并且对于故障记录数据在噪声干扰、不平衡样本以及小样本等情况下均具有良好的诊断性能。 展开更多
关键词 故障诊断 直流微电网 卷积神经网络 双向长短期记忆网络 注意力机制
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基于合作博弈策略和DBO-BiLSTM-Attention的电动汽车充电桩故障预测 被引量:1
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作者 陈庆斌 杨耿煌 +2 位作者 耿丽清 苏娟 尚春虎 《电子测量与仪器学报》 北大核心 2025年第4期163-171,共9页
针对电动汽车充电桩故障率较高的问题,提出一种基于合作博弈策略和蜣螂优化算法-双向长短期记忆网络-注意力机制(DBO-BiLSTM-Attention)的电动汽车充电桩故障预测方法。首先,通过参数统计分布处理异常值,通过均值填充处理缺失值,对处理... 针对电动汽车充电桩故障率较高的问题,提出一种基于合作博弈策略和蜣螂优化算法-双向长短期记忆网络-注意力机制(DBO-BiLSTM-Attention)的电动汽车充电桩故障预测方法。首先,通过参数统计分布处理异常值,通过均值填充处理缺失值,对处理后的数据归一化操作;其次,从不同角度出发,选取主观评价方法层次分析法、客观评价方法CRITIC权重法和机器学习算法中的随机森林依次计算特征权重,采用合作博弈策略对上述特征权重进行组合,得到新特征权重,并对参数特征矩阵进行放大;然后,分别引入蜣螂优化算法和注意力机制,搭建DBO-BiLSTM-Attention模型,在仿真实验下,所提模型训练集和测试集的准确率、F1系数分别为0.89、0.89、0.90和0.90;最后,构建相关对比实验。结果表明,相比于不进行特征放大的模型,测试集准确率和F1系数分别提高了5%和6%;相比于不采用合作博弈策略的模型,测试集准确率和F1系数分别提高了2%和3%,验证所提模型的有效性和合理性。 展开更多
关键词 充电桩 合作博弈 蜣螂优化算法 双向长短期记忆网络 注意力机制
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基于TCN-Attention-BiGRU的锅炉受热面壁温预测 被引量:3
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作者 曹熠云 茅大钧 陈思勤 《计算机仿真》 2025年第7期91-98,共8页
锅炉受热面频繁超温严重危害电厂的安全运行,准确地预测受热面壁温有助于提前采取控制措施,对电厂的安全运行有重要意义。对此,提出基于时间卷积注意力网络融合双向门控循环网络(TCN-Attention-BiGRU)的锅炉受热面壁温预测方法。首先,... 锅炉受热面频繁超温严重危害电厂的安全运行,准确地预测受热面壁温有助于提前采取控制措施,对电厂的安全运行有重要意义。对此,提出基于时间卷积注意力网络融合双向门控循环网络(TCN-Attention-BiGRU)的锅炉受热面壁温预测方法。首先,通过最大信息系数MIC筛选出关键特征变量,并利用VMD-WT方法剔除高频噪声;其次将时间卷积网络(TCN)的多尺度特征提取能力与注意力机制结合,以进一步突出关键特征的影响,最后融合BiGRU网络实现壁温预测。以某在役600MW超临界锅炉高温再热器为对象进行验证,结果表明,相较于其它方法,所提方法可在保证原始数据完整的同时最大限度地剔除噪声,能更准确地捕捉受热面壁温快速变化的趋势。 展开更多
关键词 超临界锅炉 壁温预测 时间卷积网络 注意力机制 双向门控循环网络
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土石坝渗流预测的BiTCN-Attention-LSSVM模型研究
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作者 傅蜀燕 杨石勇 +2 位作者 陈德辉 王子轩 欧斌 《水资源与水工程学报》 北大核心 2025年第1期118-128,共11页
为了克服常规机器学习模型在处理时序数据时难以有效捕捉长期依赖关系和局部重要性的局限,提出了一种基于双向时序卷积神经网络(BiTCN)、注意力机制(Attention)和最小二乘支持向量机(LSSVM)的土石坝渗流预测耦合模型。该模型利用BiTCN... 为了克服常规机器学习模型在处理时序数据时难以有效捕捉长期依赖关系和局部重要性的局限,提出了一种基于双向时序卷积神经网络(BiTCN)、注意力机制(Attention)和最小二乘支持向量机(LSSVM)的土石坝渗流预测耦合模型。该模型利用BiTCN从前、后两个方向捕获时序数据中的长期依赖关系,引入Attention机制帮助模型专注于与预测相关的关键局部特征,并将BiTCN-Attention深度处理后的特征输入LSSVM模型中进行预测,最后以2个不同的数据集分析了模型的预测效果。案例分析表明:与LSSVM、CNN-LSSVM和TCN-LSSVM相比,BiTCN-Attention-LSSVM模型预测的各项评价指标均为最优,在土石坝测压管水位预测中展现出更高的模型精度和稳定性;BiTCN与Attention的相互结合能够更好地提取时序数据中的相互依赖关系,将BiTCN-Attention提取的特征输入LSSVM中进行预测可获得良好的预测性能,数据集扩充处理后有效提高了模型的学习能力。 展开更多
关键词 土石坝测压管水位 渗流预测 双向时序卷积神经网络 注意力机制 最小二乘支持向量机
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基于TCN-BiGRU-Attention模型的弹丸发射点预测
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作者 高展鹏 易文俊 +1 位作者 管军 袁树森 《电子测量与仪器学报》 北大核心 2025年第10期79-89,共11页
准确预测弹丸发射点能够迅速定位敌方威胁源,提供关键情报支持,优化反击策略,在军事领域中具有重要战略意义。针对弹丸的发射点预测问题,提出了一种基于时序卷积网络(temporal convolutional network, TCN)、双向门控循环单元(bidirecti... 准确预测弹丸发射点能够迅速定位敌方威胁源,提供关键情报支持,优化反击策略,在军事领域中具有重要战略意义。针对弹丸的发射点预测问题,提出了一种基于时序卷积网络(temporal convolutional network, TCN)、双向门控循环单元(bidirectional gated recurrent unit, BiGRU)和注意力机制(attention mechanism)相结合的深度学习模型。该模型旨在提高弹道轨迹预测精度,尤其是在复杂战场环境下,通过反向推算敌方弹丸发射点,为反击策略提供支持。首先,基于弹道方程,针对不同射角和初速度的情况,通过解算六自由度刚体弹道方程,构建了详细的弹丸轨迹数据集。然后,提出的TCN-BiGRU-Attention模型,通过引入TCN结构,捕捉轨迹数据中的长时间依赖性,并结合Attention机制优化信息加权,以提高预测的精确度。在仿真验证中,与BiGRU、双向长短期记忆网络(bidirectional long short-term memory, BiLSTM)等模型及其改进模型相比,TCN-BiGRU-Attention模型在发射点预测精度上表现显著优越,尤其在射程方向和侧偏方向的误差显著降低。通过多组仿真测试,结果表明,TCN-BiGRU-Attention模型能够在不同发射高度下稳定地提供精准的发射点预测。其中在海平面高度下,模型的射程方向误差仅为8.3 m,侧偏方向误差较小,可以有效预测并打击敌方的发射点。为未来战场中对敌方发射点预测的实施提供了理论依据和技术支持。 展开更多
关键词 弹丸轨迹预测 发射点预测 时序卷积网络 双向门控循环单元 注意力机制
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Ultrashort-Term Power Prediction of Distributed Photovoltaic Based on Variational Mode Decomposition and Channel Attention Mechanism 被引量:1
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作者 Zhebin Sun Wei Wang +6 位作者 Mingxuan Du Tao Liang Yang Liu Hailong Fan Cuiping Li Xingxu Zhu Junhui Li 《Energy Engineering》 2025年第6期2155-2175,共21页
Responding to the stochasticity and uncertainty in the power height of distributed photovoltaic power generation.This paper presents a distributed photovoltaic ultra-short-term power forecasting method based on Variat... Responding to the stochasticity and uncertainty in the power height of distributed photovoltaic power generation.This paper presents a distributed photovoltaic ultra-short-term power forecasting method based on Variational Mode Decomposition(VMD)and Channel Attention Mechanism.First,Pearson’s correlation coefficient was utilized to filter out the meteorological factors that had a high impact on historical power.Second,the distributed PV power data were decomposed into a relatively smooth power series with different fluctuation patterns using variational modal decomposition(VMD).Finally,the reconstructed distributed PV power as well as other features are input into the combined CNN-SENet-BiLSTM model.In this model,the convolutional neural network(CNN)and channel attention mechanism dynamically adjust the weights while capturing the spatial features of the input data to improve the discriminative ability of key features.The extracted data is then fed into the bidirectional long short-term memory network(BiLSTM)to capture the time-series features,and the final output is the prediction result.The verification is conducted using a dataset from a distributed photovoltaic power station in the Northwest region of China.The results show that compared with other prediction methods,the method proposed in this paper has a higher prediction accuracy,which helps to improve the proportion of distributed PV access to the grid,and can guarantee the safe and stable operation of the power grid. 展开更多
关键词 Distributed photovoltaic power channel attention mechanism convolutional neural network bidirectional long short-term memory network
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