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Drive-by spatial offset detection for high-speed railway bridges based on fusion analysis of multi-source data from comprehensive inspection train
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作者 Chuang Wang Jiawang Zhan +4 位作者 Nan Zhang Yujie Wang Xinxiang Xu Zhihang Wang Zhen Ni 《Railway Engineering Science》 2026年第1期128-148,共21页
The spatial offset of bridge has a significant impact on the safety,comfort,and durability of high-speed railway(HSR)operations,so it is crucial to rapidly and effectively detect the spatial offset of operational HSR ... The spatial offset of bridge has a significant impact on the safety,comfort,and durability of high-speed railway(HSR)operations,so it is crucial to rapidly and effectively detect the spatial offset of operational HSR bridges.Drive-by monitoring of bridge uneven settlement demonstrates significant potential due to its practicality,cost-effectiveness,and efficiency.However,existing drive-by methods for detecting bridge offset have limitations such as reliance on a single data source,low detection accuracy,and the inability to identify lateral deformations of bridges.This paper proposes a novel drive-by inspection method for spatial offset of HSR bridge based on multi-source data fusion of comprehensive inspection train.Firstly,dung beetle optimizer-variational mode decomposition was employed to achieve adaptive decomposition of non-stationary dynamic signals,and explore the hidden temporal relationships in the data.Subsequently,a long short-term memory neural network was developed to achieve feature fusion of multi-source signal and accurate prediction of spatial settlement of HSR bridge.A dataset of track irregularities and CRH380A high-speed train responses was generated using a 3D train-track-bridge interaction model,and the accuracy and effectiveness of the proposed hybrid deep learning model were numerically validated.Finally,the reliability of the proposed drive-by inspection method was further validated by analyzing the actual measurement data obtained from comprehensive inspection train.The research findings indicate that the proposed approach enables rapid and accurate detection of spatial offset in HSR bridge,ensuring the long-term operational safety of HSR bridges. 展开更多
关键词 High-speed railway bridge drive-by inspection Spatial offset Multi-source data fusion Deep learning
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Drive-by damage detection methodology for high-speed railway bridges using sparse autoencoders
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作者 Edson Florentino de Souza Cássio Bragança +2 位作者 Diogo Ribeiro Túlio Nogueira Bittencourt Hermes Carvalho 《Railway Engineering Science》 2025年第4期614-641,共28页
High-speed railway bridges are essential components of any railway transportation system that should keep adequate levels of serviceability and safety.In this context,drive-by methodologies have emerged as a feasible ... High-speed railway bridges are essential components of any railway transportation system that should keep adequate levels of serviceability and safety.In this context,drive-by methodologies have emerged as a feasible and cost-effective monitor-ing solution for detecting damage on railway bridges while minimizing train operation interruptions.Moreover,integrating advanced sensor technologies and machine learning algorithms has significantly enhanced structural health monitoring(SHM)for bridges.Despite being increasingly used in traditional SHM applications,studies using autoencoders within drive-by methodologies are rare,especially in the railway field.This study presents a novel approach for drive-by damage detection in HSR bridges.The methodology relies on acceleration records collected from multiple bridge crossings by an operational train equipped with onboard sensors.Log-Mel spectrogram features derived from the acceleration records are used together with sparse autoencoders for computing statistical distribution-based damage indexes.Numerical simulations were performed on a 3D vehicle-track-bridge interaction system model implemented in Matlab to evaluate the robustness and effectiveness of the proposed approach,considering several damage scenarios,vehicle speeds,and environmental and operational variations,such as multiple track irregularities and varying measurement noise.The results show that the pro-posed approach can successfully detect damages,as well as characterize their severity,especially for very early-stage dam-ages.This demonstrates the high potential of applying Mel-frequency damage-sensitive features associated with machine learning algorithms in the drive-by condition assessment of high-speed railway bridges. 展开更多
关键词 drive-by Indirect monitoring Damage detection High-speed railway bridges Autoencoders
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Drive-by damage detection and localization exploiting continuous wavelet transform and multiple sparse autoencoders
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作者 Lorenzo Bernardini Francesco Morgan Bono Andrea Collina 《Railway Engineering Science》 2025年第4期721-745,共25页
Drive-by techniques for bridge health monitoring have drawn increasing attention from researchers and practitioners,in the attempt to make bridge condition-based monitoring more cost-efficient.In this work,the authors... Drive-by techniques for bridge health monitoring have drawn increasing attention from researchers and practitioners,in the attempt to make bridge condition-based monitoring more cost-efficient.In this work,the authors propose a drive-by approach that takes advantage from bogie vertical accelerations to assess bridge health status.To do so,continuous wavelet transform is combined with multiple sparse autoencoders that allow for damage detection and localization across bridge span.According to authors’best knowledge,this is the first case in which an unsupervised technique,which relies on the use of sparse autoencoders,is used to localize damages.The bridge considered in this work is a Warren steel truss bridge,whose finite element model is referred to an actual structure,belonging to the Italian railway line.To investigate damage detection and localization performances,different operational variables are accounted for:train weight,forward speed and track irregularity evolution in time.Two configurations for the virtual measuring channels were investigated:as a result,better performances were obtained by exploiting the vertical accelerations of both the bogies of the leading coach instead of using only one single acceleration signal. 展开更多
关键词 drive-by Sparse autoencoder Steel truss railway bridge Continuous wavelet transform Damage detection Damage localization
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基于浏览器扩展的Drive-by Download防御方法
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作者 田睿智 茅兵 谢立 《计算机技术与发展》 2014年第2期131-135,共5页
基于Web的病毒感染及扩散方法,目前成为了互联网中病毒传播的主要方式。Drive-by Download攻击是其中一种非常常见的攻击方法。文中用浏览器扩展来监控用户下载文件的活动,从而建立相应的白表。同时在内核空间安装钩子,用于阻止非用户... 基于Web的病毒感染及扩散方法,目前成为了互联网中病毒传播的主要方式。Drive-by Download攻击是其中一种非常常见的攻击方法。文中用浏览器扩展来监控用户下载文件的活动,从而建立相应的白表。同时在内核空间安装钩子,用于阻止非用户下载文件的执行,从而有效地防御Drive-by Download攻击。文中实现了一个在Windows操作系统上,基于Firefox扩展的原型系统:DPrevent(Drive-by Download Prevent)。实验表明,该系统的误报和漏报率都为零。同时因为它本身不需要知道具体的攻击方法,因此还可以有效地防御zero-day攻击。该系统的性能开销几乎为零,优于目前这方面的各种动态防御技术。 展开更多
关键词 浏览器扩展 drive-by DOWNLOAD WEB安全
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