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Integrating spatial and channel attention mechanisms with domain knowledge in convolutional neural networks for friction coefficient prediction 将空间和通道注意机制与领域知识相结合的卷积神经网络摩擦系数预测
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-10 DOI: 10.1111/mice.13391
Zihang Weng, Chenglong Liu, Yuchuan Du, Difei Wu, Zhen Leng
The pavement skid resistance is crucial for ensuring driving safety. However, the reproducibility and comparability of field measurements are constrained by various influencing factors. One solution to these constraints is utilizing laser‐based 3D pavement data, which are notably stable and can be employed to estimate pavement skid resistance indirectly. However, the integration of tire–road friction mechanisms and deep neural networks has not been fully studied. This study employed spatial‐channel attention mechanisms to integrate frictional domain knowledge and convolutional neural networks (CNNs) that predict the friction coefficient as the output. The models’ inputs include 3D texture data, corresponding finite element (FE) simulation outcomes, and 2D wavelet decomposition outcomes. An additional spatial attention (ASA) mechanism guided the CNNs to focus on the tire–road contact region, using tire–road contact stress from FE simulation as domain knowledge. Multi‐scale channel attention (MSCA) mechanisms enabled the CNNs to learn the channel weights of 2D‐wavelet‐based multi‐scale inputs, thereby assessing the contribution of different texture scales to tire–road friction. A multi‐attention and feature fusion mechanism was designed, and the performances of various combinations were compared. The results showed that the fusion of ASA and MSCA achieved the best performance, with a regression R2 of 0.8470, which was a 20.25% improvement over the baseline model.
路面防滑性能是保证行车安全的关键。然而,野外测量的再现性和可比性受到各种影响因素的制约。解决这些限制的一种方法是利用基于激光的3D路面数据,这些数据非常稳定,可以用来间接估计路面的防滑性。然而,将轮胎-路面摩擦机理与深度神经网络相结合的研究尚未得到充分的研究。本研究采用空间通道注意机制整合摩擦域知识和卷积神经网络(cnn),预测摩擦系数作为输出。模型的输入包括三维纹理数据、相应的有限元模拟结果和二维小波分解结果。附加的空间注意(ASA)机制引导cnn关注轮胎-道路接触区域,将有限元模拟的轮胎-道路接触应力作为领域知识。多尺度通道注意(MSCA)机制使cnn能够学习基于二维小波的多尺度输入的通道权重,从而评估不同纹理尺度对轮胎-道路摩擦的贡献。设计了一种多关注特征融合机制,并比较了不同组合的性能。结果表明,ASA与MSCA的融合效果最佳,回归R2为0.8470,较基线模型提高20.25%。
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引用次数: 0
A K‐Net‐based deep learning framework for automatic rock quality designation estimation 一种基于K - Net的深度学习框架,用于岩石质量自动评价
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-10 DOI: 10.1111/mice.13386
Sihao Yu, Louis Ngai Yuen Wong
Rock quality designation (RQD) plays a crucial role in the design and analysis of rock engineering. The traditional method of measuring RQD relies on manual logging by geologists, which is often labor‐intensive and time‐consuming. Thus, this study presents an autonomous framework for expeditious RQD estimation based on two‐dimensional corebox photographs. The scale‐invariant feature transform (SIFT) algorithm is employed for rapid image calibration. A K‐Net‐based model with dynamic semantic kernels, conditional on their actual activations, is proposed for rock core segmentation. It surpasses other prevalent models with a mean intersection over union of 95.43%. The automatic RQD estimation error of our proposed framework is only 1.46% compared to manual logging results, demonstrating its exceptional reliability and effectiveness. The robustness of the framework is then validated on an additional test set, proving its potential for widespread adoption in geotechnical engineering practice.
岩石质量设计在岩石工程设计和分析中起着至关重要的作用。测量RQD的传统方法依赖于地质学家的手工测井,这通常是劳动密集型和耗时的。因此,本研究提出了一个基于二维核盒照片的快速RQD估计的自主框架。采用尺度不变特征变换(SIFT)算法对图像进行快速标定。提出了一种基于K - Net的动态语义核模型,该模型以其实际激活为条件,用于岩心分割。它优于其他流行的模型,平均交点优于并集的95.43%。与手工记录结果相比,我们提出的框架的自动RQD估计误差仅为1.46%,证明了其卓越的可靠性和有效性。然后在另一个测试集上验证了框架的鲁棒性,证明了其在岩土工程实践中广泛采用的潜力。
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引用次数: 0
Event-based supervisor control for a cyber-physical waterway lock system 基于事件的信息物理水闸系统监控
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-08 DOI: 10.1111/mice.13393
D. G. Fragkoulis, F. N. Koumboulis, M. P. Tzamtzi, P. G. Totomis
An event-based supervisory control scheme, in the Ramdage–Wonham framework, will be proposed for the cyber-physical Waterway Lock system, known as Lock III, in Tilburg, the Netherlands. The proposed control scheme imposes desired behavior, by appropriately disabling controllable events, so as to avoid activation of actuator commands that may lead to undesired and potentially hazardous operating states. The discrete event model of the total Waterway Lock system, comprising 54 actuator and sensor automata, will be presented in analytic 6-tuple forms of its subsystems. The system's desired behavior, which is expressed using six rules, will be formulated as 84 regular and prefix closed languages that will be realized as appropriate supervisor automata. All supervisors are developed by a general two-state supervisor form, which facilitates their implementation. A distributed control architecture will be proposed, which organizes all supervisors in distinct groups, each of which controls one and only one distinct command event. The complexity of the proposed control scheme will be computed to be equal to (168,324,564), being reasonable, as compared to the large number of subsystems and the restrictive design requirements. The physical realizability of the 84 supervisors, with respect to the 54 subsystems of the waterway lock system, will be proved analytically. Also, it will be proved analytically that the proposed supervisor architecture guarantees the nonblocking property of the controlled automaton, including all subsystems. The establishment of these analytic proofs supports the extendibility of the results to other applications. To demonstrate the resulting large-scale controlled automaton's good performance, its marked behavior and simulation results will be presented.
ramage - wonham框架中将提出一种基于事件的监督控制方案,用于位于荷兰蒂尔堡的网络物理水道锁系统(称为Lock III)。所提出的控制方案通过适当地禁用可控事件来施加期望的行为,从而避免激活可能导致不希望的和潜在危险的操作状态的执行器命令。整个水闸系统的离散事件模型,包括54个执行器和传感器自动机,将以其子系统的解析六元形式呈现。系统的期望行为,用六个规则表示,将被表述为84种规则和前缀封闭语言,这些语言将被实现为适当的监督自动机。所有监事均采用通用的双态监事形式,便于实施。提出了一种分布式控制体系结构,该体系结构将所有监督者组织在不同的组中,每个组控制一个且仅一个不同的命令事件。与大量子系统和限制性设计要求相比,拟议控制方案的复杂性将被计算为等于(168,324,564),这是合理的。对水闸系统的54个子系统,84个监控器的物理可实现性进行了分析论证。同时,分析证明了所提出的监督结构保证了被控自动机的非阻塞性,包括所有子系统。这些解析证明的建立支持了结果在其他应用中的可扩展性。为了证明所得到的大型控制自动机的良好性能,将给出其标记行为和仿真结果。
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引用次数: 0
Uncertainty-guided U-Net for soil boundary segmentation using Monte Carlo dropout 基于蒙特卡罗dropout的不确定性导向U-Net土壤边界分割
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-08 DOI: 10.1111/mice.13396
X. Zhou, B. Sheil, S. Suryasentana, P. Shi
Accurate soil stratification is essential for geotechnical engineering design. Owing to its effectiveness and efficiency, the cone penetration test (CPT) has been widely applied for subsurface stratigraphy, which relies heavily on empiricism for correlations to soil type. Recently, deep learning techniques have shown great promise in learning the relationship between CPT data and soil boundaries automatically. However, the segmentation of soil boundaries is fraught with model and measurement uncertainty. This paper introduces an uncertainty-guided U((-Net (UGU-Net) for improved soil boundary segmentation. The UGU-Net consists of three parts: (a) a Bayesian U-Net to predict a pixel-level uncertainty map, (b) reinforcement of original labels on the basis of the predicted uncertainty map, and (c) a traditional deterministic U-Net, which is applied to the reinforced labels for final soil boundary segmentation. The results show that the proposed UGU-Net outperforms the existing methods in terms of both high accuracy and low uncertainty. A sensitivity study is also conducted to explore the influence of key model parameters on model performance. The proposed method is validated by comparing the predicted subsurface profile with benchmark profiles. The code for this project is available at github.com/Xiaoqi-Zhou-suda/UGU-Net.
准确的土壤分层是岩土工程设计的基础。由于其有效性和高捷性,锥贯试验(CPT)在地下地层学中得到了广泛的应用,而地下地层学在很大程度上依赖于经验与土壤类型的相关性。近年来,深度学习技术在自动学习CPT数据与土壤边界之间的关系方面显示出很大的前景。然而,土壤边界的分割存在着模型和测量的不确定性。本文介绍了一种基于不确定性的U-Net (UGU-Net)算法,用于改进土壤边界分割。UGU-Net由三部分组成:(a)预测像素级不确定性图的贝叶斯U-Net, (b)在预测不确定性图的基础上对原始标签进行增强,(c)将传统的确定性U-Net应用于增强后的标签进行最终的土壤边界分割。结果表明,该方法具有精度高、不确定度低的优点。同时进行敏感性研究,探讨关键模型参数对模型性能的影响。通过将预测的地下剖面与基准剖面进行比较,验证了该方法的有效性。该项目的代码可从github.com/Xiaoqi-Zhou-suda/UGU-Net获得。
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引用次数: 0
Computational modeling of reinforced concrete dapped-end beams 钢筋混凝土垂端梁的计算模型
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-03 DOI: 10.1111/mice.13390
Danilo D'Angela, Gennaro Magliulo, Chiara Di Salvatore, Edoardo Cosenza
The structural response of reinforced concrete dapped-end beams is simulated through finite element analysis. The case study consists in experimental tests performed in the framework of an Italian research project on bridges. The study assesses both the local and global behavior of the beam and characterizes the damage patterns. A blind prediction is initially performed inputting the main basic material and geometrical properties of the specimen. Further models are developed by varying several structural parameters and modeling/analysis features, assessing their influence on the structural capacity and response of the beams. The blind model yielded relatively accurate behavior and capacity estimations. Additionally, the modeling is enhanced by accounting for experimental data. Technical and operative guidelines for implementing the numerical analysis of dapped-end beams are finally provided, in light of the critical assessment of the modeling and analysis results.
采用有限元方法模拟了钢筋混凝土垂端梁的结构响应。案例研究包括在意大利桥梁研究项目框架内进行的实验测试。该研究评估了梁的局部和全局行为,并描述了损伤模式。首先进行盲预测,输入试件的主要基本材料和几何特性。进一步的模型是通过改变几个结构参数和建模/分析特征来开发的,评估它们对梁的结构能力和响应的影响。盲模型产生了相对准确的行为和容量估计。此外,通过考虑实验数据,增强了建模能力。最后,根据对模型和分析结果的批判性评估,提供了实施斜端梁数值分析的技术和操作指南。
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引用次数: 0
Cover Image, Volume 39, Issue 24 封面图片,第39卷,第24期
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-03 DOI: 10.1111/mice.13388

The cover image is based on the Article Crack pattern-based machine learning prediction of residual drift capacity in damaged masonrywalls by Mauricio Pereira et al., https://doi.org/10.1111/mice.13212.

封面图像是基于毛里西奥·佩雷拉等人(https://doi.org/10.1111/mice.13212)基于Article Crack模式的机器学习预测受损砖墙的剩余漂移能力。
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引用次数: 0
Cover Image, Volume 39, Issue 24 封面图片,第39卷,第24期
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-12-03 DOI: 10.1111/mice.13389

The cover image is based on the Article Smartphone-based high durable strain sensor with sub-pixel-level accuracy and adjustable camera position by Pengfei Wu et al., https://doi.org/10.1111/mice.13383.

封面图像基于吴鹏飞等(https://doi.org/10.1111/mice.13383)基于Article smartphone的亚像素级精度、相机位置可调的高耐用应变传感器。
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引用次数: 0
Coupled lattice discrete particle model for the simulation of water and chloride transport in cracked concrete members 耦合点阵离散粒子模型模拟开裂混凝土构件中水和氯离子的输运
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-30 DOI: 10.1111/mice.13385
Yingbo Zhu, Dongge Jia, John C. Brigham, Alessandro Fascetti
A novel coupled mechanical and mass transport lattice discrete particle model is developed to quantitatively assess the impact of cracks on the mass transport properties in concrete members subjected to short‐ and long‐term loading conditions. In the developed approach, two sets of dual lattice networks are generated: one to resolve the mechanical response and another for mass transport analysis. The cracks simulated by the mechanical lattice are mapped onto the transport elements to investigate the effect of cracks on the global transport properties in concrete members. A new quantitative relationship is proposed for the estimation of the diffusion coefficient based on local crack information, and the developed model is capable of describing both convection and diffusion mechanisms. Moreover, creep behavior is incorporated to account for the influence of cracks induced by long‐term loading conditions. Numerical results, in the form of dynamic changes in cumulative water and chloride contents in concrete members under tension, compression, and bending with various stress levels show remarkable accuracy when compared to available experimental observations. The developed model provides an effective means for incorporating mesoscale information in simulations of water and chloride transport in concrete members under varying short‐ and long‐term loading conditions.
建立了一种新的耦合力学和质量传输晶格离散粒子模型,以定量评估裂缝对混凝土构件在短期和长期加载条件下的质量传输特性的影响。在开发的方法中,生成了两组对偶晶格网络:一组用于求解力学响应,另一组用于质量输运分析。将力学点阵模拟的裂缝映射到输运单元上,研究裂缝对混凝土构件整体输运特性的影响。提出了一种新的基于局部裂纹信息的扩散系数估计定量关系,该模型能够同时描述对流和扩散机制。此外,蠕变行为被纳入考虑裂纹的影响引起的长期加载条件。与现有的实验观察结果相比,以各种应力水平下混凝土构件中累积水和氯化物含量动态变化形式的数值结果显示出显著的准确性。所开发的模型为在不同短期和长期加载条件下混凝土构件中水和氯化物运移的模拟中纳入中尺度信息提供了有效手段。
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引用次数: 0
Aeroelastic force prediction via temporal fusion transformers 基于时间融合变压器的气动弹性力预测
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-28 DOI: 10.1111/mice.13381
Miguel Cid Montoya, Ashutosh Mishra, Sumit Verma, Omar A. Mures, Carlos E. Rubio‐Medrano
Aero‐structural shape design and optimization of bridge decks rely on accurately estimating their self‐excited aeroelastic forces within the design domain. The inherent nonlinear features of bluff body aerodynamics and the high cost of wind tunnel tests and computational fluid dynamics (CFD) simulations make their emulation as a function of deck shape and reduced velocity challenging. State‐of‐the‐art methods address deck shape tailoring by interpolating discrete values of integrated flutter derivatives (FDs) in the frequency domain. Nevertheless, more sophisticated strategies can improve surrogate accuracy and potentially reduce the required number of samples. We propose a time domain emulation strategy harnessing temporal fusion transformers (TFTs) to predict the self‐excited forces time series before their integration into FDs. Emulating aeroelastic forces in the time domain permits the inclusion of time‐series amplitudes, frequencies, phases, and other properties in the training process, enabling a more solid learning strategy that is independent of the self‐excited forces modeling order and the inherent loss of information during the identification of FDs. TFTs' long‐ and short‐term context awareness, combined with their interpretability and enhanced ability to deal with static and time‐dependent covariates, make them an ideal choice for predicting unseen aeroelastic forces time series. The proposed TFT‐based metamodel offers a powerful technique for drastically improving the accuracy and versatility of wind‐resistant design optimization frameworks.
桥面气动结构的形状设计和优化依赖于其在设计范围内的自激气动弹性力的准确估计。钝体空气动力学固有的非线性特性以及风洞试验和计算流体动力学(CFD)仿真的高成本使得其作为甲板形状和降速函数的仿真具有挑战性。最先进的方法是通过在频域内插值积分颤振导数(FDs)的离散值来解决甲板形状裁剪问题。然而,更复杂的策略可以提高代理的准确性,并可能减少所需的样本数量。我们提出了一种时域仿真策略,利用时间融合变压器(TFTs)来预测自激力时间序列,然后将其集成到fd中。在时域中模拟气动弹性力允许在训练过程中包含时间序列幅度、频率、相位和其他属性,从而实现更可靠的学习策略,该策略独立于自激力建模顺序和fd识别过程中固有的信息损失。tft的长期和短期上下文感知能力,加上其可解释性和处理静态和时间相关协变量的增强能力,使其成为预测看不见的气动弹性力时间序列的理想选择。提出的基于TFT的元模型为大幅度提高抗风设计优化框架的准确性和多功能性提供了一种强大的技术。
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引用次数: 0
Machine learning‐aided prediction of windstorm‐induced vibration responses of long‐span suspension bridges 机器学习辅助预测大跨度悬索桥的风灾诱发振动响应
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-11-26 DOI: 10.1111/mice.13387
Alireza Entezami, Hassan Sarmadi
Long‐span suspension bridges are significantly susceptible to windstorm‐induced vibrations, leading to critical challenges of field measurements along with multicollinearity and nonlinearity between wind features and bridge dynamic responses. To address these issues, this article proposes an innovative machine learning‐assisted predictive method by integrating a predictor selector developed from regularized neighborhood components analysis and kernel regression modeling through a regularized support vector machine adjusted by Bayesian hyperparameter optimization. The crux of the proposed method lies in advanced machine learning algorithms including metric learning, kernel learning, and hybrid learning integrated in a regularized framework. Utilizing the Hardanger Bridge subjected to different windstorms, the performance of the proposed method is validated and then compared with state‐of‐the‐art regression techniques. Results highlight the effectiveness and practicality of the proposed method with the minimum and maximum R‐squared rates of 89% and 98%, respectively. It also surpasses the state‐of‐the‐art regression techniques in predicting bridge dynamics under different windstorms.
大跨度悬索桥非常容易受到暴风引起的振动的影响,导致现场测量面临严峻挑战,同时风力特征与桥梁动态响应之间存在多重共线性和非线性。为解决这些问题,本文提出了一种创新的机器学习辅助预测方法,即通过贝叶斯超参数优化调整的正则化支持向量机,将正则化邻域成分分析和核回归建模开发的预测选择器整合在一起。所提方法的关键在于先进的机器学习算法,包括集成在正则化框架中的度量学习、核学习和混合学习。利用哈当厄尔大桥遭受的不同风灾,对所提方法的性能进行了验证,然后与最先进的回归技术进行了比较。结果凸显了所提方法的有效性和实用性,最小和最大 R 平方率分别为 89% 和 98%。在预测不同风灾下的桥梁动态方面,该方法也超越了最先进的回归技术。
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引用次数: 0
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Computer-Aided Civil and Infrastructure Engineering
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