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Evolution of clogging of porous asphalt concrete in the seepage process through integration of computer tomography, computational fluid dynamics, and discrete element method 结合计算机断层扫描、计算流体力学和离散元法研究多孔沥青混凝土在渗流过程中的堵塞演化
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-07 DOI: 10.1111/mice.13419
Bo Li, Yunpeng Zhang, Dingbang Wei, Tengfei Yao, Yongping Hu, Hui Dou
The longevity of porous asphalt pavement is inevitably compromised by the clogging of voids by various particles, leading to a degradation in its drainage function. Numerical simulations with real pore structures were used to investigate the clogging behavior of porous asphalt concrete (PAC) to clearly and intuitively understand its void clogging process. In this study, a three-dimensional model of the real void was created by computed tomography scanning. The change before and after void clogging of PAC was characterized by seepage pressure and seepage velocity in the seepage field. The computational fluid dynamics-discrete element method coupling method was used to visually describe the dynamic evolution of clogging particles in porous asphalt voids. Findings reveal that the most influential particle size for clogging in PAC-13 with 18% and 20% porosity ranged between 0.15 and 0.6 mm. In contrast, for PAC-13 with 25% porosity, the sensitive size was 0.3–1.18 mm. When clogging occurred, large particles predominantly obstructed the void inlets, prompting a refinement in the void structure. Subsequent particles either traversed the void, accumulating at the entrances of finer voids, or filled up progressively, leading to eventual clogging. Small particles either exited directly through the voids or accumulated in the bends of the voids, making the voids clogged directly. Consequently, the clogging behavior of porous asphalt was classified into three types: surface-filling clogging, void refining filter clogging, and void bending or semi-connecting clogging. These findings provide a scientific basis for optimizing PAC design and developing conservation strategies.
多孔沥青路面的使用寿命不可避免地受到各种颗粒堵塞空隙的影响,导致其排水功能下降。采用真实孔隙结构的数值模拟方法对多孔沥青混凝土(PAC)的堵塞行为进行了研究,以清晰直观地了解其孔隙堵塞过程。在本研究中,通过计算机断层扫描创建了真实空洞的三维模型。渗流场中渗流压力和渗流速度表征了PAC堵塞前后空隙的变化。采用计算流体力学-离散元法耦合方法,直观地描述了多孔沥青空隙中堵塞颗粒的动态演化过程。研究结果表明,在孔隙率为18%和20%的PAC-13中,对堵塞影响最大的粒径范围为0.15 ~ 0.6 mm。而对于孔隙率为25%的PAC-13,其敏感粒径为0.3 ~ 1.18 mm。当堵塞发生时,大颗粒主要堵塞空隙入口,促使空隙结构细化。随后的粒子要么穿过空隙,在更细的空隙入口处聚集,要么逐渐填满,最终导致堵塞。小颗粒要么直接穿过空隙,要么积聚在空隙的弯曲处,使空隙直接堵塞。因此,将多孔沥青的堵塞行为分为三种类型:表面填充堵塞、空隙精炼过滤器堵塞和空隙弯曲或半连接堵塞。这些发现为优化PAC设计和制定保护策略提供了科学依据。
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引用次数: 0
Cover Image, Volume 40, Issue 3 封面图像,第40卷,第3期
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-07 DOI: 10.1111/mice.13416

The cover image is based on the article A rendering-based lightweight network for segmentation of high-resolution crack images by Weiwei Chen et al., https://doi.org/10.1111/mice.13290.

封面图像基于陈伟伟等人的文章A基于渲染的用于高分辨率裂缝图像分割的轻量级网络https://doi.org/10.1111/mice.13290。
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引用次数: 0
A universal geography neural network for mobility flow prediction in planning scenarios 规划情景下交通流量预测的通用地理神经网络
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-06 DOI: 10.1111/mice.13398
Jifu Guo, Shengguang Bai, Xun Li, Kai Xian, Erjian Liu, Wenting Ding, Xizhi Ma
This study primarily focuses on generating mobility flow in regions and cities, which plays an important role in urban planning and management. The majority of existing mobility flow models, including conventional statistical models and deep learning-based models, are heavily dependent on historical data to predict future mobility flows. The application of these models poses significant challenges in the planning and construction of emerging cities and regions, particularly in developing countries experiencing swift urbanization. These challenges are exacerbated by a dearth of historical data and rapid shifts in mobility patterns. Consequently, the scenario necessitates a mobility flow generation model capable of generating flows without historical data. This study introduces the universal geography neural network, an algorithm designed to glean potential patterns in human mobility across diverse cities and temporal spans. This is achieved through the analysis of substantial quantities of location-based data, resulting in the generation of mobility flows within a city. Our experiment, designed to extract various features and generate fine-grained mobility flows in the testing set, outperforms both traditional models and state-of-the-art deep learning models. Moreover, our model has proven capable of generating reliable results across various time periods and grid areas.
本研究主要关注区域和城市中产生的流动流,这在城市规划和管理中具有重要作用。大多数现有的流动性流模型,包括传统的统计模型和基于深度学习的模型,都严重依赖于历史数据来预测未来的流动性流。这些模型的应用对新兴城市和地区的规划和建设提出了重大挑战,特别是在经历快速城市化的发展中国家。历史数据的缺乏和人口流动模式的快速变化加剧了这些挑战。因此,该场景需要能够在没有历史数据的情况下生成流的移动性流生成模型。本研究引入了通用地理神经网络,该算法旨在收集不同城市和时间跨度的人类流动的潜在模式。这是通过分析大量基于位置的数据来实现的,从而产生城市内的移动流量。我们的实验旨在提取各种特征并在测试集中生成细粒度的流动性流,其性能优于传统模型和最先进的深度学习模型。此外,我们的模型已被证明能够在不同的时间段和网格区域产生可靠的结果。
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引用次数: 0
Hybrid-data-driven bridge weigh-in-motion technology using a two-level sequential artificial neural network 混合数据驱动的桥梁动态称重技术,采用两级顺序人工神经网络
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-05 DOI: 10.1111/mice.13415
Wangchen Yan, Hao Ren, Xin Luo, Shaofan Li
For existing bridge weigh-in-motion technologies, the main challenge in accurate weight estimation is to overcome the difficulty of identifying the closely spaced axles. To do so, many field test data are generally required for each bridge in application. To address such a challenge, a novel two-level sequential artificial neural network (ANN) model trained by the hybrid simulated-experimental data was proposed in this study to identify the gross weight and axle weight. For this, simulations and scaled experiments were conducted for the vehicle–bridge interaction system to develop the sequential ANN model. The sequential ANN model was realized by a special data looping strategy, in which the outputs of the global-level ANN served as partial inputs to the following local-level ANN to predict the axle weight. The optimized size of the training data and the appropriate hybrid ratio of the sequential ANN model were also explored. Finally, the proposed algorithm was applied to a real bridge application via transfer learning, as the optimized hybrid sequential ANN model serves as the pre-trained model. The results showed that for the small training datasets with only 5% experimental data, the proposed algorithm significantly improved the accuracy in weight estimation of moving vehicles with closely spaced axles. The field test demonstrated that the proposed algorithm also applies to different bridges within a gross weight identification error of 5%, showing the promise of the proposed algorithm in practical applications.
对于现有的桥梁运动称重技术来说,准确估计重量的主要挑战是克服识别紧密间隔轴的困难。要做到这一点,通常需要对应用中的每个桥梁进行许多现场测试数据。为了解决这一问题,本研究提出了一种基于仿真与实验混合数据训练的两级序列人工神经网络模型,用于识别汽车毛重和车轴重。为此,对车辆-桥梁相互作用系统进行了仿真和规模化实验,建立了序列神经网络模型。序列神经网络模型采用一种特殊的数据循环策略,将全局级神经网络的输出作为下一个局部级神经网络的部分输入来预测轴重。并对训练数据的优化大小和序列神经网络模型的适当混合比例进行了探讨。最后,通过迁移学习将该算法应用于实际桥梁应用中,将优化后的混合序列神经网络模型作为预训练模型。结果表明,在只有5%实验数据的小型训练数据集上,该算法显著提高了轴距较近的移动车辆的权重估计精度。现场试验表明,该算法同样适用于不同桥梁,总重识别误差在5%以内,表明了该算法在实际应用中的前景。
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引用次数: 0
Traffic estimation in work zones using a custom regression model and data augmentation 使用自定义回归模型和数据增强对工作区域的流量进行估计
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-05 DOI: 10.1111/mice.13413
Ali Hassandokht Mashhadi, Abbas Rashidi, Masoud Hamedi, Nikola Marković
Accurately estimating traffic volumes in construction work zones is crucial for effective traffic management. However, one of the key challenges transportation agencies face is the limited coverage of continuous count station (CCS) sensors, which are often sparsely located and may not be positioned directly on roads where construction work zones are present. This spatial limitation leads to gaps in traffic data, making accurate volume estimation difficult. Addressing this, our study utilized a custom regularized model and variational autoencoders (VAE) to generate synthetic data that improves traffic volume estimations in these challenging areas. The proposed method not only bridges the data gaps between sparse CCS sensors but also outperforms several benchmark models, as measured by mean absolute percentage error, root mean square error, and mean absolute error. Moreover, the effectiveness of VAE-augmented models in enhancing the precision and accuracy of traffic volume estimations further underscores the benefits of integrating synthetic data into traffic-modeling approaches. These findings highlight the potential of the proposed approach to enhance traffic volume estimation in construction work zones and assist transportation agencies in making informed decisions for traffic management.
准确估计施工区域的交通量对于有效的交通管理至关重要。然而,交通运输机构面临的主要挑战之一是连续计数站(CCS)传感器的覆盖范围有限,这些传感器通常分布稀疏,可能不会直接放置在施工区域存在的道路上。这种空间限制导致了交通数据的空白,使准确的体积估计变得困难。为了解决这个问题,我们的研究使用了一个定制的正则化模型和变分自编码器(VAE)来生成合成数据,以改善这些具有挑战性的地区的交通量估计。该方法不仅弥补了稀疏CCS传感器之间的数据差距,而且通过平均绝对百分比误差、均方根误差和平均绝对误差来衡量,其性能优于几种基准模型。此外,vae增强模型在提高交通量估计的精度和准确性方面的有效性进一步强调了将合成数据集成到交通建模方法中的好处。这些研究结果突出了拟议方法的潜力,可以提高建筑工作区的交通量估算,并协助运输机构为交通管理做出明智的决策。
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引用次数: 0
Geometry physics neural operator solver for solid mechanics 固体力学几何物理神经算子求解器
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-03 DOI: 10.1111/mice.13405
Chawit Kaewnuratchadasorn, Jiaji Wang, Chul-Woo Kim, Xiaowei Deng
This study developed Geometry Physics neural Operator (GPO), a novel solver framework to approximate the partial differential equation (PDE) solutions for solid mechanics problems with irregular geometry and achieved a significant speedup in simulation time compared to numerical solvers. GPO leverages a weak form of PDEs based on the principle of least work, incorporates geometry information, and imposes exact Dirichlet boundary conditions within the network architecture to attain accurate and efficient modeling. This study focuses on applying GPO to model the behaviors of complicated bodies without any guided solutions or labeled training data. GPO adopts a modified Fourier neural operator as the backbone to achieve significantly improved convergence speed and to learn the complicated solution field of solid mechanics problems. Numerical experiments involved a two-dimensional plane with a hole and a three-dimensional building structure with Dirichlet boundary constraints. The results indicate that the geometry layer and exact boundary constraints in GPO significantly contribute to the convergence accuracy and speed, outperforming the previous benchmark in simulations of irregular geometry. The comparison results also showed that GPO can converge to solution fields faster than a commercial numerical solver in the structural examples. Furthermore, GPO demonstrates stronger performance than the solvers when the mesh size is smaller, and it achieves over 3<span data-altimg="/cms/asset/df3c163a-e7c6-4e48-9813-d4de41ec9066/mice13405-math-0001.png"></span><mjx-container ctxtmenu_counter="93" ctxtmenu_oldtabindex="1" jax="CHTML" role="application" sre-explorer- style="font-size: 103%; position: relative;" tabindex="0"><mjx-math aria-hidden="true" location="graphic/mice13405-math-0001.png"><mjx-semantics><mjx-mo data-semantic- data-semantic-role="unknown" data-semantic-speech="times" data-semantic-type="operator"><mjx-c></mjx-c></mjx-mo></mjx-semantics></mjx-math><mjx-assistive-mml display="inline" unselectable="on"><math altimg="urn:x-wiley:10939687:media:mice13405:mice13405-math-0001" display="inline" location="graphic/mice13405-math-0001.png" xmlns="http://www.w3.org/1998/Math/MathML"><semantics><mo data-semantic-="" data-semantic-role="unknown" data-semantic-speech="times" data-semantic-type="operator">×</mo>$times$</annotation></semantics></math></mjx-assistive-mml></mjx-container> and 2<span data-altimg="/cms/asset/67f630b9-5c45-4ee8-a436-0fef5e94744b/mice13405-math-0002.png"></span><mjx-container ctxtmenu_counter="94" ctxtmenu_oldtabindex="1" jax="CHTML" role="application" sre-explorer- style="font-size: 103%; position: relative;" tabindex="0"><mjx-math aria-hidden="true" location="graphic/mice13405-math-0002.png"><mjx-semantics><mjx-mo data-semantic- data-semantic-role="unknown" data-semantic-speech="times" data-semantic-type="operator"><mjx-c></mjx-c></mjx-mo></mjx-semantics></mjx-math><mjx-assistive-mml display="inline" unselectable="on"><math
本研究开发了几何物理神经算子(GPO),这是一种新的求解框架,用于近似不规则几何固体力学问题的偏微分方程(PDE)解,与数值求解器相比,其模拟时间显著加快。GPO利用基于最小功原理的弱形式偏微分方程,结合几何信息,并在网络架构内施加精确的狄利克雷边界条件,以获得准确有效的建模。本研究的重点是在没有任何引导解和标记训练数据的情况下,将GPO应用于复杂物体的行为建模。GPO采用一种改进的傅立叶神经算子作为主干,大大提高了收敛速度,学习了固体力学问题的复杂解域。数值实验涉及一个带孔的二维平面和一个具有狄利克雷边界约束的三维建筑结构。结果表明,GPO的几何层和精确边界约束显著提高了GPO的收敛精度和速度,在不规则几何模拟中优于以往的基准算法。对比结果还表明,在结构算例中,GPO比商用数值求解器收敛到解场的速度更快。此外,当网格尺寸较小时,GPO表现出比求解器更强的性能,在二维和三维的大自由度示例中,GPO分别实现了超过3×$times$和2×$times$的加速。进一步讨论了非线性和复杂结构的局限性,展望了未来的发展。这些显著的结果表明了该模型在大型基础设施中的潜在应用。
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引用次数: 0
Multi-stage detection of warped ceiling panel using ensemble vision models for automated localization and quantification 基于集成视觉模型的多阶段天花板翘曲检测自动定位与量化
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-03 DOI: 10.1111/mice.13414
Qinghua Guo, Weihang Gao, Qingzhao Kong, Xilin Lu
Suspended ceiling systems constitute a pivotal non-structural component in buildings, and the warping of panels not only compromises the seismic performance but also affects the functional integrity. This paper proposes a novel multi-stage warped panel detection (MWPD) method to automatically locate warped panels from two-dimensional images and quantify their deformation. First, the Deep Hough Transform (DHT) is employed to localize the runner line, after that, each detected line is expanded to a rectangular strip. Then ResNet18 classifies the strips as warped or intact. Those classified as warped will undergo Gabor and horizontal Sobel filters successively to highlight the curved edge. Subsequently, the Generalized Hough Transform (GHT) is used to locate pixel points on the curve, and fitting these points yields the pixel-level radius of curvature. Leveraging known orthogonal relationships and geometric dimensions of runners, pixel quantification is converted into physical maximum deflection. The experiments include two aspects: the first is conducted on a validation dataset to verify the localization stability, and the second is carried out on-site for quantification validation. Results demonstrate that the proposed MWPD method effectively localizes the warped panel, achieving an accuracy of 92.2% on the validation dataset. Additionally, the quantitative test has achieved an accuracy of approximately 85%.
吊顶系统是建筑中重要的非结构构件,吊顶板的翘曲不仅影响其抗震性能,而且影响其功能完整性。提出了一种新的多级变形面板检测方法,从二维图像中自动定位变形面板,并对其变形量进行量化。首先利用深霍夫变换(Deep Hough Transform, DHT)对流道线进行定位,然后将每条检测到的流道线扩展为矩形条带。然后ResNet18将条带分类为扭曲或完整。那些被归类为扭曲的将依次进行Gabor和水平Sobel滤波器以突出弯曲的边缘。然后,使用广义霍夫变换(GHT)定位曲线上的像素点,并拟合这些点产生像素级曲率半径。利用已知的正交关系和流道的几何尺寸,像素量化转换为物理最大挠度。实验包括两个方面:一是在验证数据集上进行定位稳定性验证,二是在现场进行量化验证。结果表明,所提出的MWPD方法在验证数据集上有效地定位了扭曲面板,准确率达到92.2%。此外,定量测试达到了约85%的准确性。
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引用次数: 0
A graph attention reasoning model for prefabricated component detection 预制构件检测的图注意推理模型
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-02 DOI: 10.1111/mice.13373
Manxu Zhou, Guanting Ye, Ka-Veng Yuen, Wenhao Yu, Qiang Jin
Accurately checking the position and presence of internal components before casting prefabricated elements is critical to ensuring product quality. However, traditional manual visual inspection is often inefficient and inaccurate. While deep learning has been widely applied to quality inspection of prefabricated components, most studies focus on surface defects and cracks, with less emphasis on the internal structural complexities of these components. Prefabricated composite panels, due to their complex structure—including small embedded parts and large-scale reinforcing rib—require high-precision, multiscale feature recognition. This study developed an instance segmentation model: a graph attention reasoning model (GARM) for prefabricated component detection, for the quality inspection of prefabricated concrete composite panels. First, a dataset of prefabricated concrete composite components was constructed to address the shortage of existing data and provide sufficient samples for training the segmentation network. Subsequently, after training on a self-built dataset of prefabricated concrete composite panels, ablation experiments and comparative tests were conducted. The GARM segmentation model demonstrated superior performance in terms of detection speed and model lightweighting. Its accuracy surpassed other models, with a mean average precision (mAP50) of 88.7%. This study confirms the efficacy and reliability of the GARM instance segmentation model in detecting prefabricated concrete composite panels.
在铸造预制构件之前准确检查内部构件的位置和存在对确保产品质量至关重要。然而,传统的人工目视检测往往效率低下且不准确。虽然深度学习已经被广泛应用于预制构件的质量检测,但大多数研究都集中在表面缺陷和裂纹上,很少关注这些构件内部结构的复杂性。预制复合板由于其复杂的结构,包括小的预埋件和大规模的加强肋,需要高精度、多尺度的特征识别。本研究针对预制混凝土复合板的质量检测,开发了一种实例分割模型:图注意推理模型(GARM)。首先,构建预制混凝土复合构件数据集,解决现有数据的不足,为分割网络的训练提供足够的样本;随后,在自建预制混凝土复合板数据集上进行训练后,进行烧蚀实验和对比试验。GARM分割模型在检测速度和模型轻量化方面表现出优异的性能。其精度优于其他模型,平均精度(mAP50)为88.7%。验证了GARM实例分割模型在预制混凝土复合板检测中的有效性和可靠性。
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引用次数: 0
Cover Image, Volume 40, Issue 2 封面图像,第40卷,第2期
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-01 DOI: 10.1111/mice.13410

The cover image is based on the article Hybrid structural analysis integrating physical model and continuous-time state-space neural network model by Yi-QIng Ni et al., https://doi.org/10.1111/mice.13282.

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引用次数: 0
A feature-based pavement image registration method for precise pavement deterioration monitoring 基于特征的路面图像配准方法用于路面劣化精确监测
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-30 DOI: 10.1111/mice.13407
Zhongyu Yang, Mohsen Mohammadi, Haolin Wang, Yi-Chang (James) Tsai
Over the past decade, pavement imaging systems, particularly 3D laser technology, have been widely adopted by transportation agencies for network-level pavement condition evaluations. State Highway Agencies, including Georgia Department of Transportation (DOT), Florida DOT, and Texas DOT, have been collecting pavement images for over 5 years. However, these multi-year pavement images have not been fully utilized for analyzing detailed pavement deterioration. One challenge is the accurate and efficient registration of multi-temporal pavement images. This study pioneers the use of feature-based methods to address this challenge. It evaluates various feature-based image registration methods, including both state-of-the-art and novel combinations of feature detectors and descriptors. These methods are rigorously assessed using hybrid “step-by-step” and “end-to-end” performance evaluation metrics, with a ground reference dataset containing 100 pavement image pairs featuring diverse crack types and varying year gaps. The results confirm the feasibility of using feature-based techniques to register multi-temporal pavement images. A novel combination of the AKAZE detector and the Binary Robust Independent Elementary Features (BRIEF) descriptor was identified as the best-performing method, successfully registering 96 out of 100 image pairs. This advancement enables pavement engineers to accurately monitor pavement deterioration using multi-temporal images.
在过去的十年中,路面成像系统,特别是3D激光技术,已被交通机构广泛采用,用于网络级路面状况评估。包括乔治亚州运输部(DOT)、佛罗里达州运输部和德克萨斯州运输部在内的国家公路机构已经收集路面图像超过5年了。然而,这些多年的路面图像并没有被充分利用来分析详细的路面劣化。其中一个挑战是多时间路面图像的准确和高效配准。这项研究开创了使用基于特征的方法来解决这一挑战。它评估了各种基于特征的图像配准方法,包括最先进的和新的特征检测器和描述符的组合。使用混合的“一步一步”和“端到端”性能评估指标对这些方法进行严格评估,并使用包含100对路面图像对的地面参考数据集,这些图像对具有不同的裂缝类型和不同的年份间隔。结果证实了使用基于特征的技术配准多时间路面图像的可行性。AKAZE检测器和二元鲁棒独立基本特征(BRIEF)描述符的新组合被认为是性能最好的方法,成功地注册了100对图像中的96对。这一进步使路面工程师能够使用多时相图像准确监测路面恶化情况。
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引用次数: 0
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