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A multisource data‐driven monitoring model for assessing concrete dam behavior 用于评估混凝土大坝行为的多源数据驱动监测模型
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-17 DOI: 10.1111/mice.13232
Kefu Yao, Zhiping Wen, Chenfei Shao, Jiaquan Yang, Huaizhi Su
The pivotal role of dam infrastructure necessitates continuous health monitoring, which results in extensive sets of data. Most monitoring data‐based models in dam engineering concentrate on predicting dam behavior. However, little attention has been systematically paid to the processing of extensive monitoring data, modeling of comprehensive dam behavior, and assessment of overall dam operation status. Here, we propose a novel monitoring model comprising three main aspects: a multidimensional data mining method, a multipoint response prediction method, and a multilayer data fusion‐based assessment method. Utilizing monitoring data from a mega concrete arch dam, we evaluate and discuss the effects of data mining, modeling accuracy for dam behavior, robustness against data pollution, and sensitivity to anomalies. Comparisons with classical benchmarks demonstrate the performance of the proposed model for the dam.
大坝基础设施的关键作用要求对其进行持续的健康监测,这就产生了大量的数据集。大坝工程中大多数基于监测数据的模型都集中在预测大坝行为上。然而,人们很少系统地关注大量监测数据的处理、大坝综合行为的建模以及大坝整体运行状况的评估。在此,我们提出了一种新型监测模型,主要包括三个方面:多维数据挖掘方法、多点响应预测方法和基于多层数据融合的评估方法。利用巨型混凝土拱坝的监测数据,我们评估并讨论了数据挖掘的效果、大坝行为建模的准确性、对数据污染的鲁棒性以及对异常的敏感性。与经典基准的比较证明了所提出的大坝模型的性能。
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引用次数: 0
Intelligent design of shear wall layout based on diffusion models 基于扩散模型的剪力墙布局智能设计
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-17 DOI: 10.1111/mice.13236
Yi Gu, Yuli Huang, Wenjie Liao, Xinzheng Lu
This study explores artificial intelligence (AI) for shear wall layout design, aiming to overcome challenges in data feature sparsity and the complexity of drawing representations in existing AI‐based methods. We pioneer an innovative method leveraging the potential of diffusion models, establishing a suitable drawing representation, and examining the impact of various conditions. The proposed image‐prompt diffusion model incorporating a mask tensor featuring tailored training methods demonstrates superior feature extraction and design effectiveness. A comparative study reveals the advanced capabilities of the Struct‐Diffusion model in capturing engineering designs and optimizing performance metrics such as inter‐story drift ratio (in elastic analysis), offering significant improvements over previous methods and paving the way for future innovations in intelligent designs.
本研究探讨了剪力墙布局设计的人工智能(AI),旨在克服现有基于人工智能的方法在数据特征稀疏性和绘图表示复杂性方面的挑战。我们利用扩散模型的潜力开创了一种创新方法,建立了合适的绘图表示法,并检验了各种条件的影响。我们提出的图像提示扩散模型结合了面具张量,并采用了量身定制的训练方法,显示出卓越的特征提取和设计效果。对比研究显示,Struct-Diffusion 模型在捕捉工程设计和优化性能指标(如弹性分析中的层间漂移比)方面具有先进的能力,与以前的方法相比有显著的改进,为未来智能设计的创新铺平了道路。
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引用次数: 0
Wear diagnosis for rail profile data using a novel multidimensional scaling clustering method 使用新型多维缩放聚类方法对轨道剖面数据进行磨损诊断
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-15 DOI: 10.1111/mice.13235
D. Shang, Shuai Su, Y. K. Sun, F. Wang, Y. Cao, W. F. Yang, P. Li, J. H. Zhou
The diagnosis of railway system faults is significant for its comfort, efficiency, and safety. The rail surface wear is the key impact factor when considering the health conditions of rails. This paper accomplishes contactless rail wear diagnosis by using multidimensional scaling based on a novel informational dissimilarity measure (IDM) to cluster intact and different worn rail profile data. The IDM uses weighted‐probability distribution of dispersion patterns to extract accurate time domain features from rail profile data, and the loss of information is minimized, which can greatly improve the accuracy for wear diagnosis. All the analyzing data for real experiments are collected by a laser scanner camera on an inspection car, where heavy‐haul railway rails with different types of surface wear are inspected. Experimental results with simulated and reality‐based data show that the proposed methods can identify worn profile data and discriminate different types of worn profiles more effectively when compared with existing methods. Thus, the proposed method offers a new thinking for the diagnosis of rail surface wear for heavy‐haul railways.
铁路系统的故障诊断对其舒适性、效率和安全性意义重大。轨道表面磨损是影响轨道健康状况的关键因素。本文基于新颖的信息不相似度量(IDM),使用多维尺度对完好和不同磨损的钢轨轮廓数据进行聚类,从而实现非接触式钢轨磨损诊断。IDM 利用频散模式的加权概率分布从钢轨轮廓数据中提取精确的时域特征,并将信息损失降至最低,从而大大提高了磨损诊断的准确性。实际实验中的所有分析数据都是通过检测车上的激光扫描相机采集的,在检测车上对不同类型表面磨损的重载铁路钢轨进行检测。模拟和实际数据的实验结果表明,与现有方法相比,所提出的方法能更有效地识别磨损轮廓数据并区分不同类型的磨损轮廓。因此,所提出的方法为重载铁路钢轨表面磨损的诊断提供了一种新思路。
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引用次数: 0
A hybrid method for intercity transport mode identification based on mobility features and sequential relations mined from cellular signaling data 基于移动性特征和从蜂窝信令数据中挖掘的序列关系的城际交通模式识别混合方法
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-13 DOI: 10.1111/mice.13229
Fan Ding, Yongyi Zhang, Jiankun Peng, Yuming Ge, Tao Qu, Xingyuan Tao, Jun Chen
The proliferation of mobile phones has generated vast quantities of cellular signaling data (CSD), covering extensive spatial areas and populations. These data, containing spatiotemporal information, can be employed to identify and analyze intercity transport modes, providing valuable insights for understanding travel distribution and behavior. However, CSD are primarily intended for communication purposes and are not directly suitable for transportation research due to issues such as low spatial precision, sparse sampling granularity, and lacking traffic semantic features. This article proposes a Hybrid model for identifying individual intercity transport modes based on CSD. Several multidimensional mobility features are proposed that extract interpretable motion characteristics from CSD. A preliminary transport mode probability judgment is made based on the mobility features. Then, the complete transport mode is confirmed considering the temporal continuity correlation of the entire trace. Experiments confirm the Hybrid model's superior precision in identifying transport modes over baseline models, with an average F1 score of 0.92, maintaining high accuracy across various trajectory lengths. This model would support further studying individual intercity travel behavior patterns, aiding transportation planning and operational management decisions using CSD.
移动电话的普及产生了大量的蜂窝信令数据(CSD),覆盖了广泛的空间区域和人口。这些数据包含时空信息,可用于识别和分析城际交通模式,为了解出行分布和行为提供有价值的见解。然而,CSD 主要用于通信目的,由于空间精度低、采样粒度稀疏、缺乏交通语义特征等问题,并不直接适用于交通研究。本文提出了一种基于 CSD 的城际交通模式识别混合模型。本文提出了几种多维移动特征,可从 CSD 中提取可解释的移动特征。根据移动特征对交通模式概率进行初步判断。然后,考虑整个轨迹的时间连续性相关性,确认完整的运输模式。实验证实,混合模型在识别运输模式方面的精确度优于基线模型,平均 F1 得分为 0.92,在不同的轨迹长度上都能保持较高的精确度。该模型有助于进一步研究个人城际旅行行为模式,利用 CSD 辅助交通规划和运营管理决策。
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引用次数: 0
Earthquake damage detection and level classification method for wooden houses based on convolutional neural networks and onsite photos 基于卷积神经网络和现场照片的木质房屋地震破坏检测和等级分类方法
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-12 DOI: 10.1111/mice.13224
Kai Wu, Masashi Matsuoka, Haruki Oshio
The results of earthquake damage certification (EDC) surveys are the basis of support measures for improving the lives of disaster victims. To address issues such as a limited workforce to perform EDC surveys and difficulties in judging the level of damage, a damage detection and level classification method for wooden houses using multiple convolutional neural network models is proposed. The proposed method, including detection, filtering, and classification models, was trained and validated based on photographs collected from EDC surveys in Uki City, Kumamoto Prefecture. Then, a software system, which deployed these models, was developed for the onsite EDC surveyors to detect damages shown in the photographs of the surveyed house and classify damage levels. The test results based on 32 target buildings indicate that the detection model achieved high recall in detecting damage. Moreover, the redundant detected regions can be precisely filtered by the filtering model. Finally, the classification model achieved relatively high overall accuracy in classifying the damage level.
地震破坏认证(EDC)调查的结果是改善灾民生活的支持措施的基础。为了解决进行 EDC 调查的劳动力有限和损坏程度判断困难等问题,提出了一种使用多重卷积神经网络模型的木质房屋损坏检测和等级分类方法。该方法包括检测、过滤和分类模型,根据在熊本县宇喜市的 EDC 调查中收集的照片进行了训练和验证。然后,开发了一个部署了这些模型的软件系统,供现场 EDC 勘测人员检测勘测房屋照片中显示的损坏情况,并对损坏程度进行分类。基于 32 栋目标建筑物的测试结果表明,该检测模型在检测损坏方面实现了高召回率。此外,滤波模型还能精确过滤多余的检测区域。最后,分类模型在对损坏程度进行分类时取得了相对较高的整体准确率。
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引用次数: 0
A lightweight feature attention fusion network for pavement crack segmentation 用于路面裂缝分割的轻量级特征关注融合网络
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-08 DOI: 10.1111/mice.13225
Yucheng Huang, Yuchen Liu, Fang Liu, Wei Liu
The occurrence of pavement cracks poses a significant potential threat to road safety, thus the rapid and accurate acquisition of pavement crack information is of paramount importance. Deep learning methods have the capability to offer precise and automated crack detection solutions based on crack images. However, the slow detection speed and huge model size in high-accuracy models are still the main challenges required to be addressed. Therefore, this research presents a lightweight feature attention fusion network for pavement crack segmentation. This structure employs FasterNet as the backbone network, ensuring performance while reducing model inference time and memory overhead. Additionally, the receptive field block is incorporated to simulate human visual perception, enhancing the network's feature extraction capability. Ultimately, our approach employs the feature fusion module (FFM) to effectively combine decoder outputs with encoder's low-level features using weight vectors. Experimental results on public crack datasets, namely, CFD, CRACK500, and DeepCrack, demonstrate that compared to other semantic segmentation algorithms, the proposed method achieves both accurate and comprehensive pavement crack extraction while ensuring speed.
路面裂缝的出现对道路安全构成了巨大的潜在威胁,因此快速准确地获取路面裂缝信息至关重要。深度学习方法能够基于裂缝图像提供精确的自动裂缝检测解决方案。然而,在高精度模型中,检测速度慢和模型体积庞大仍然是需要解决的主要挑战。因此,本研究提出了一种用于路面裂缝分割的轻量级特征关注融合网络。该结构采用 FasterNet 作为骨干网络,在确保性能的同时减少了模型推理时间和内存开销。此外,为了模拟人类的视觉感知,我们还加入了感受野块,从而增强了网络的特征提取能力。最后,我们的方法采用了特征融合模块(FFM),利用权重向量将解码器输出与编码器的底层特征有效结合。在 CFD、CRACK500 和 DeepCrack 等公共裂缝数据集上的实验结果表明,与其他语义分割算法相比,所提出的方法既能实现准确、全面的路面裂缝提取,又能保证速度。
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引用次数: 0
Constraint-aware optimization model for plane truss structures via single-agent gradient descent 通过单代理梯度下降技术实现平面桁架结构的约束感知优化模型
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-08 DOI: 10.1111/mice.13226
Jun Su Park, Taehoon Hong, Dong-Eun Lee, Hyo Seon Park
This study introduces the constraint-aware optimization model (CAOM), a novel optimization framework designed to optimize the size, shape, and topology of plane truss structures simultaneously. Unlike traditional optimization models, which rely on gradient descent and frequently struggle with managing various constraints due to their dependence on a single optimization agent, CAOM effectively addresses this challenge. It does so by incorporating a variety of assistant modules along with the Adam optimizer, a variant of the gradient descent method. Uniquely, CAOM employs the leaky rectified linear unit (ReLU) activation function beyond its conventional use in neural networks, applying it as a mechanism to integrate constraints and losses seamlessly. The model's effectiveness was validated through two numerical examples and a practical application, demonstrating that CAOM can reduce structural weight by up to 84% compared to unoptimized designs while fully adhering to structural, dimensional, and moveable constraints. Furthermore, the study found that while shape optimization plays a key role for stiffness-governed structures, size optimization is crucial for strength-governed structures. Optimizing size, shape, and topology together consistently leads to the most weight-efficient designs. This emphasizes the significance of a holistic approach in the optimization processes.
本研究介绍了约束感知优化模型(CAOM),这是一种新型优化框架,旨在同时优化平面桁架结构的尺寸、形状和拓扑结构。传统的优化模型依赖于梯度下降,由于依赖于单一的优化代理,在管理各种约束条件时经常会遇到困难,与此不同,CAOM 有效地解决了这一难题。CAOM 将各种辅助模块与 Adam 优化器(梯度下降法的一种变体)结合在一起,从而有效地解决了这一难题。与众不同的是,CAOM 采用了超出神经网络传统用途的泄漏整流线性单元(ReLU)激活函数,将其作为一种机制来无缝整合约束和损失。该模型的有效性通过两个数值示例和一个实际应用得到了验证,表明与未优化的设计相比,CAOM 可在完全遵守结构、尺寸和可移动约束的前提下将结构重量减轻 84%。此外,研究还发现,形状优化对刚度控制结构起着关键作用,而尺寸优化则对强度控制结构至关重要。同时对尺寸、形状和拓扑结构进行优化,始终能获得最省力的设计。这强调了在优化过程中采用整体方法的重要性。
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引用次数: 0
Displacement sensing based on microscopic vision with high resolution and large measuring range 基于显微视觉的位移传感,分辨率高,测量范围大
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-07 DOI: 10.1111/mice.13227
Pengfei Wu, Weijie Li, Xuefeng Zhao
Microimage strain sensing (MISS) is a novel piston-type sensor based on microscopic vision. In this study, optical disc slice is used as information carriers to improve MISS. There are multiple pits on the surface of an optical disc. By using machine vision algorithms, the pits can be converted into digital information, making them scales for recording displacements. By this means, we proposed a sensing method that combines high resolution, wide range, and strong robustness. The study measured displacement under different conditions. To address inevitable factors such as pixel drift, and manufacturing errors, corresponding compensation methods were provided. The results show that the measurements closely match those of the linear variable differential transformer, with a resolution of up to 20 nm and a range approaching the sensor size. Despite the sensor's dependence on machine vision, it demonstrates strong resistance to environmental factors such as brightness and angle. Combining compensation methods for pixel drift, and manufacturing errors, this sensor can be well-applied in various working conditions.
微图像应变传感(MISS)是一种基于微观视觉的新型活塞式传感器。本研究利用光盘切片作为信息载体来改进 MISS。光盘表面有多个凹坑。通过使用机器视觉算法,可以将凹坑转化为数字信息,使其成为记录位移的标尺。通过这种方法,我们提出了一种集高分辨率、宽范围和强鲁棒性于一体的传感方法。研究测量了不同条件下的位移。针对像素漂移和制造误差等不可避免的因素,提供了相应的补偿方法。结果表明,测量结果与线性可变差动变压器的测量结果非常接近,分辨率高达 20 nm,量程接近传感器尺寸。尽管传感器依赖于机器视觉,但它对亮度和角度等环境因素具有很强的抵抗力。结合对像素漂移和制造误差的补偿方法,该传感器可以很好地应用于各种工作条件。
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引用次数: 0
Crack pattern–based machine learning prediction of residual drift capacity in damaged masonry walls 基于裂缝模式的机器学习预测受损砌体墙体的残余漂移能力
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-02 DOI: 10.1111/mice.13212
Mauricio Pereira, Antonio Maria D'Altri, Stefano de Miranda, Branko Glisic
In this paper, we present a method based on an ensemble of convolutional neural networks (CNNs) for the prediction of residual drift capacity in unreinforced damaged masonry walls using as only input the crack pattern. We use an accurate block-based numerical model to generate mechanically consistent crack patterns induced by external actions (earthquake-like loads and differential settlements). For a damaged masonry wall, we extract the crack width cumulative distribution, we derive a crack width exceedance curve (CWEC), and we evaluate the drift loss (DL) with respect to the undamaged wall. Numerous pairs of CWEC and DL are thus generated and used for training (and validating) an ensemble of CNNs generated via repeated k$k$-folding cross validation with shuffling. As a result, a method for damage prognosis (Level IV of SHM) is provided. Such method appears general, inexpensive, and able to adequately predict the DL using as only input the CWEC, providing real-time support for decision making in damaged masonry structures.
在本文中,我们介绍了一种基于卷积神经网络(CNN)的方法,该方法仅使用裂缝模式作为输入,即可预测未加固受损砌体墙的残余漂移能力。我们使用精确的基于砌块的数值模型来生成由外部作用(地震荷载和差异沉降)引起的机械一致的裂缝模式。对于受损的砌体墙,我们提取裂缝宽度累积分布,得出裂缝宽度超限曲线(CWEC),并评估相对于未受损墙体的漂移损失(DL)。这样就生成了无数对 CWEC 和 DL,并用于训练(和验证)通过重复 k$k$ 折叠交叉验证和洗牌生成的 CNN 集合。因此,我们提供了一种损伤预报方法(SHM 的第四级)。这种方法通用性强、成本低廉,仅使用 CWEC 作为输入就能充分预测 DL,为受损砌体结构的决策提供实时支持。
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引用次数: 0
A causal discovery approach to study key mixed traffic-related factors and age of highway affecting raveling 研究影响塌方的主要混合交通相关因素和公路年限的因果发现方法
IF 11.775 1区 工程技术 Q1 Engineering Pub Date : 2024-05-01 DOI: 10.1111/mice.13222
Zili Wang, Panchamy Krishnakumari, Kumar Anupam, Hans van Lint, Sandra Erkens
The relationship between real-world traffic and pavement raveling is unclear and subject to ongoing debates. This research proposes a novel approach that extends beyond traditional correlation analyses to explore causal mechanisms between mixed traffic and raveling. This approach incorporates the causal discovery method, and is applied to five Dutch porous asphalt (PA) highway sites that have substantial data sets. Findings indicate a nonlinear relationship between traffic volume and raveling, with road age emerging as a shared contributor. The results also suggest that the degree to which different vehicle types contribute as a causal factor for raveling varies with carriageway configurations and lane characteristics. This underlines the need for targeted maintenance strategies. Challenges remain due to confounding correlations among traffic variables, necessitating further development of causal discovery models. This study may not conclusively resolve the debate on to what extent traffic contributes to raveling, but we argue we provide sufficient evidence against rejecting this hypothesis.
现实世界中的交通与路面崎岖之间的关系尚不明确,也一直存在争议。本研究提出了一种超越传统相关性分析的新方法,以探索混合交通与路面塌陷之间的因果机制。这种方法结合了因果发现法,并应用于荷兰五个拥有大量数据集的多孔沥青(PA)高速公路站点。研究结果表明,交通量与塌方之间存在非线性关系,而路龄是共同的促成因素。研究结果还表明,不同类型的车辆对塌方的影响程度因车行道配置和车道特征而异。这强调了有针对性的维护策略的必要性。由于交通变量之间存在混杂关联,因此仍存在挑战,需要进一步开发因果发现模型。本研究可能无法最终解决关于交通在多大程度上导致了塌方的争论,但我们认为我们提供了足够的证据来否定这一假设。
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引用次数: 0
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Computer-Aided Civil and Infrastructure Engineering
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