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Data-driven model for seismic assessment, design, and retrofit of structures using explainable artificial intelligence 使用可解释人工智能的结构抗震评估、设计和改造数据驱动模型
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-17 DOI: 10.1111/mice.13338
Khurram Shabbir, Mohamed Noureldin, Sung-Han Sim
Retrofitting building designs is crucial given the global aging infrastructure and increased in frequency of natural hazards like earthquakes. While traditional data-driven models are widely used for predicting building conditions, there has been limited exploration of recent artificial intelligence (AI) techniques in structural design. This study introduces a novel explainable AI framework that utilizes data-driven models for assessing, designing, and retrofitting of structures. The framework highlights the key global features of the model and further investigates them locally to adjust the input design parameters. It suggests the necessary changes in these inputs to achieve the desired structural performance. To achieve this, the framework employs interpretability techniques such as feature importance, feature interactions, Shapley Additive exPlanations, local interpretable model-agnostic explanations, partial dependence plot (PDP), and individual conditional expectation to highlight the important features. Additionally, a novel counterfactual) technique is applied for the first time as a design tool in seismic assessment and retrofitting of structures. The effectiveness of this framework is validated on a real benchmark structure through nonlinear time history analysis and natural earthquakes. The results show that the proposed framework is highly effective, especially under design-level earthquake conditions in achieving the necessary change in stiffness and strength of structures to meet the required seismic design objectives across different earthquake scenarios. This framework holds promise for wider adoption and applications in various other structural and civil engineering domains.
随着全球基础设施的老化和地震等自然灾害发生频率的增加,对建筑设计进行改造至关重要。虽然传统的数据驱动模型被广泛用于预测建筑状况,但最近在结构设计中对人工智能(AI)技术的探索还很有限。本研究介绍了一种新颖的可解释人工智能框架,该框架利用数据驱动模型对结构进行评估、设计和改造。该框架突出了模型的关键全局特征,并进一步对其进行局部研究,以调整输入的设计参数。它建议对这些输入参数进行必要的更改,以达到理想的结构性能。为实现这一目标,该框架采用了可解释性技术,如特征重要性、特征相互作用、夏普利加法前规划、局部可解释的模型对立解释、局部依赖图(PDP)和个体条件期望,以突出重要特征。此外,还首次将一种新颖的 "反事实"(counterfactual)技术用作结构抗震评估和改造的设计工具。通过非线性时间历史分析和自然地震,在实际基准结构上验证了该框架的有效性。结果表明,所提出的框架非常有效,尤其是在设计级地震条件下,能实现结构刚度和强度的必要变化,以满足不同地震情况下所需的抗震设计目标。该框架有望在其他各种结构和土木工程领域得到更广泛的采用和应用。
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引用次数: 0
Virtual reality-based dynamic scene recreation and robot teleoperation for hazardous environments 基于虚拟现实的危险环境动态场景再现和机器人远程操作
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-12 DOI: 10.1111/mice.13337
Angelos Christos Bavelos, Efthymios Anastasiou, Nikos Dimitropoulos, George Michalos, Sotiris Makris
Virtual reality (VR) technology is increasingly vital in various sectors, particularly for simulating real environments in training and teleoperation. However, it has primarily focused on static, controlled settings like indoor industrial shopfloors. This paper proposes a novel method for remotely controlling robots in hazardous environments safely, without compromising efficiency. Operators can execute tasks from remote locations ensuring continuity regardless of distance. Real-time efficiency is achieved by updating the virtual environment from on-site sensors and mirroring the real environment, utilizing 3D reconstruction, Google Images, and video streams. Communication between VR and the remote robot is facilitated through a remote robot operating system connection. The efficacy of this concept will be validated through real road maintenance interventions.
虚拟现实(VR)技术在各行各业越来越重要,特别是在培训和远程操作中模拟真实环境。然而,它主要集中在静态、受控的环境中,如室内工业车间。本文提出了一种在不影响效率的前提下,在危险环境中安全远程控制机器人的新方法。操作员可以从远程位置执行任务,无论距离多远,都能确保连续性。利用三维重建、谷歌图片和视频流,通过现场传感器更新虚拟环境并镜像真实环境,从而实现实时高效。VR 与远程机器人之间的通信通过远程机器人操作系统连接实现。这一概念的有效性将通过实际道路维护干预来验证。
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引用次数: 0
Cover Image, Volume 39, Issue 19 封面图片,第 39 卷第 19 期
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-11 DOI: 10.1111/mice.13341

The cover image is based on the Article A multiscale model for wood combustion by H. L. Hao et al., https://doi.org/10.1111/mice.13187.

封面图片来自 H. L. Hao 等人撰写的文章《木材燃烧的多尺度模型》,https://doi.org/10.1111/mice.13187。
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引用次数: 0
Self‐supervised representation learning of metro interior noise based on variational autoencoder and deep embedding clustering 基于变异自动编码器和深度嵌入聚类的地铁内部噪声自监督表征学习
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-09 DOI: 10.1111/mice.13336
Yang Wang, Hong Xiao, Zhihai Zhang, Xiaoxuan Guo, Qiang Liu
The noise within train is a paradox; while harmful to passenger health, it is useful to operators as it provides insights into the working status of vehicles and tracks. Recently, methods for identifying defects based on interior noise signals are emerging, among which representation learning is the foundation for deep neural network models to understand the key information and structure of the data. To provide foundational data for track fault detection, a representation learning framework for interior noise, named the interior noise representation framework, is introduced. The method includes: (i) using wavelet transform to represent the original noise signal and designing a soft and hard denoising module for dataset denoising; (ii) deep residual convolutional denoising variational autoencoder (VAE) module performs representation learning with a VAE and deep residual convolutional neural networks, enabling richer data augmentation for sparsely labeled samples by manipulating the embedding space; (iii) deep embedding clustering submodule balances the representation of reconstruction and clustering features through the joint optimization of these aspects, categorizing metro noise into three distinct classes and effectively discriminating significantly different features. The experimental results show that, compared to traditional mechanism‐based models for characterizing interior noise, this approach offers a data‐driven general analysis framework, providing a foundational model for downstream tasks.
列车内的噪音是一个悖论;它虽然对乘客的健康有害,但对运营商却很有用,因为它能让人了解车辆和轨道的工作状态。最近,基于车内噪声信号识别故障的方法层出不穷,其中表示学习是深度神经网络模型理解数据关键信息和结构的基础。为了给轨道故障检测提供基础数据,本文介绍了一种内部噪声表示学习框架,命名为内部噪声表示框架。该方法包括(i) 使用小波变换来表示原始噪声信号,并设计软硬去噪模块对数据集进行去噪;(ii) 深度残差卷积去噪变异自动编码器(VAE)模块使用 VAE 和深度残差卷积神经网络进行表示学习,通过操纵嵌入空间为稀疏标记的样本提供更丰富的数据增强;(iii) 深度嵌入聚类子模块通过对重构和聚类特征的联合优化,平衡了这两方面的表征,将地铁噪声分为三个不同的类别,并有效区分了明显不同的特征。实验结果表明,与传统的基于机制的室内噪声表征模型相比,该方法提供了一个数据驱动的通用分析框架,为下游任务提供了一个基础模型。
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引用次数: 0
A computer vision–aided methodology for bridge flexibility identification from ambient vibrations 从环境振动中识别桥梁柔性的计算机视觉辅助方法
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-03 DOI: 10.1111/mice.13329
Yuyao Cheng, Siqi Jia, Jianliang Zhang, Jian Zhang
This paper presents the implementation of a novel monitoring system in which video images and conventional sensor network data are simultaneously analyzed to identify the structural flexibility from the ambient vibrations. The magnitude ratio between the flexibility estimated from known/unknown input force are theoretically derived and decomposed into two parts: and . The first scale factor related to basic modal parameters can be acquired using the general modal identification methods. Aiming to tackle the difficulty in identifying the second scale factor related to the force intensity, a video stream of traffic is processed to detect and classify vehicles to determine the vehicle's location while displacement measurements are simultaneously collected. By integrating the toll station data, the vehicle loads are assigned to the vehicle on the bridge deck through the uniqueness of the license plate number. Thus, a structural input–output relationship is established to solve the second scale factor . Finally, the flexibility estimated from the ambient vibration are scaled by and , respectively to obtain the exact flexibility , which are same as the analytical ones . Both numerical example and a laboratory test are performed to demonstrate the accuracy of the proposed methodology. The algorithms, approaches, and results given in the paper demonstrate its effectiveness and shows great potential for its application on a real‐life bridge's condition assessment.
本文介绍了一种新型监测系统的实施情况,该系统通过同时分析视频图像和传统传感器网络数据,从环境振动中识别结构柔性。根据已知/未知输入力估算出的柔性之间的大小比从理论上得出,并分解为两部分:和。与基本模态参数相关的第一个比例因子可通过一般模态识别方法获得。为了解决与力强度相关的第二个标度因子的识别难题,我们对交通视频流进行了检测和分类,以确定车辆的位置,同时收集位移测量数据。通过整合收费站数据,利用车牌号的唯一性将车辆荷载分配给桥面上的车辆。这样,就建立了结构输入输出关系,从而求解第二个比例系数。最后,根据环境振动估算出的柔度分别按比例计算和按比例计算,得到与分析结果相同的精确柔度。为了证明所提方法的准确性,我们进行了数值示例和实验室测试。文中给出的算法、方法和结果证明了其有效性,并显示了其在实际桥梁状况评估中的巨大应用潜力。
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引用次数: 0
Gravity dam displacement monitoring using in situ strain and deep learning 利用现场应变和深度学习监测重力坝位移
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-01 DOI: 10.1111/mice.13333
Xin Wu, Dongjian Zheng, Xingqiao Chen, Yongtao Liu, Jianchun Qiu, Haifeng Jiang
Recent studies in dam displacement monitoring primarily focus on single‐response monitoring or model updating using advanced techniques. Few studies involve the combination analysis of displacement with other synchronized responses utilizing their monitoring characteristics. In situ strain data provide a strength‐safety perspective for dam displacement monitoring. The challenge lies in that estimating displacement directly using limited discrete strain data may be misleading. This paper analyzes the relationship between displacement and global, and multipoint local strains from the perspective of the differences in load effects of gravity dams, and indicates that introducing appropriate state factors improves the estimation. A displacement estimation model driven by strain data and state factors is developed using stacked convolutional neural network, and the variable relationships within the model are interpretated via accumulated local effects. Incorporating specific strength criteria, a novel displacement monitoring indicator based on the tensile safety of the dam heel is proposed. A case study of a gravity dam showcases the effectiveness of the proposed approach in comparison with the solely strain‐based model and the traditional hydrostatic‐seasonal‐time factors‐based model.
近期对大坝位移监测的研究主要集中在单一响应监测或利用先进技术更新模型。很少有研究利用其监测特性对位移与其他同步响应进行组合分析。现场应变数据为大坝位移监测提供了强度-安全视角。问题在于,直接利用有限的离散应变数据估算位移可能会产生误导。本文从重力坝荷载效应差异的角度分析了位移与全局应变和多点局部应变之间的关系,并指出引入适当的状态因子可改善估算结果。利用堆叠卷积神经网络开发了一个由应变数据和状态因子驱动的位移估算模型,并通过累积的局部效应解释了模型内的变量关系。结合特定的强度标准,提出了一种基于坝踵抗拉安全性的新型位移监测指标。通过对重力坝的案例研究,展示了所提方法与单纯基于应变的模型和传统的基于流体静力学-季节-时间因素的模型相比的有效性。
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引用次数: 0
Cover Image, Volume 39, Issue 18 封面图片,第 39 卷第 18 期
IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-09-01 DOI: 10.1111/mice.13335

The cover image is based on the Article A traffic state prediction method based on spatial–temporal data mining of floating car data by using autoformer architecture by Shuangzhi Yu et al., https://doi.org/10.1111/mice.13179.

封面图像基于余双志等人撰写的文章《一种基于时空数据挖掘的浮动车数据交通状态预测方法》(A Traffic State prediction method based on spatial-temporal data mining of floating car data by using autoformer architecture),https://doi.org/10.1111/mice.13179。
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引用次数: 0
A convergent cross‐mapping approach for unveiling congestion spatial causality in urban traffic networks 揭示城市交通网络拥堵空间因果关系的聚合交叉映射法
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-08-30 DOI: 10.1111/mice.13334
Jiannan Mao, Hao Huang, Yu Gu, Weike Lu, Tianli Tang, Fan Ding
Spatial causality in urban traffic networks explores how events or conditions in one location affect those in another. Unveiling congestion spatial causality is crucial for identifying congestion‐inducing bottlenecks in traffic networks and offering valuable insights for traffic network management and control. This study introduces the traffic‐convergent‐cross‐mapping (T‐CCM) method, a state‐space‐reconstruction approach from the dynamic system perspective, to identify causality among roads within urban traffic networks using time series data. Simultaneously, it effectively addresses the intricate challenges of uncertainty and interdependency among sensors caused by traffic flow dynamics. Empirical findings from real‐world (PeMS‐Bay area) traffic speed data validate the effectiveness of the T‐CCM method in detecting causality. This study reveals bidirectional causal effects between downstream and upstream roads in short‐term congestion generation and dissipation periods, which can pinpoint congestion origins and inform quick traffic management response. Furthermore, it elucidates the long‐term causality impacts between distant roads, particularly with regard to traveler choices and road land use attributes, guiding infrastructure investment and public transit improvements.
城市交通网络中的空间因果关系探讨了一个地点的事件或条件如何影响另一个地点的事件或条件。揭示拥堵的空间因果关系对于识别交通网络中导致拥堵的瓶颈至关重要,并为交通网络的管理和控制提供有价值的见解。本研究从动态系统的角度出发,引入了一种状态空间重构方法--交通收敛交叉映射(T-CCM)方法,利用时间序列数据识别城市交通网络中道路之间的因果关系。同时,该方法还能有效解决交通流动态变化带来的不确定性和传感器之间相互依赖的复杂难题。来自真实世界(PeMS-海湾地区)交通速度数据的经验结果验证了 T-CCM 方法在检测因果关系方面的有效性。这项研究揭示了在短期拥堵产生和消散期间,下游和上游道路之间的双向因果效应,从而可以精确定位拥堵根源,为快速交通管理响应提供依据。此外,该研究还阐明了远距离道路之间的长期因果影响,尤其是对出行者选择和道路土地使用属性的影响,从而为基础设施投资和公共交通改善提供指导。
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引用次数: 0
Performance‐driven contractor recommendation system using a weighted activity–contractor network 使用加权活动-承包商网络的绩效驱动型承包商推荐系统
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-08-30 DOI: 10.1111/mice.13332
Fatemeh Mostofi, Onur Behzat Tokdemir, Ümit Bahadır, Vedat Toğan
The reliance of contractor selection for specific construction activities on subjective judgments remains a complex decision‐making process with high stakes due to its impact on project success. Existing methods of contractor selection lack a data‐driven decision‐support approach, leading to suboptimal contractor assignments. Here, an advanced node2vec‐based recommendation system is proposed that addresses the shortcomings of conventional contractor selection by incorporating a broad range of quantitative performance indicators. This study utilizes semi‐supervised machine learning to analyze contractor records, creating a network in which nodes represent activities and weighted edges correspond to contractors and their performances, particularly cost and schedule performance indicators. Node2vec is found to display a prediction accuracy of 88.16% and 84.08% when processing cost and schedule performance rating networks, respectively. The novelty of this research lies in its proposed network‐based, multi‐criteria decision‐making method for ranking construction contractors using embedding information obtained from quantitative contractor performance data and processed by the node2vec procedure, along with the measurement of cosine similarity between contractors and the ideal as related to a given activity.
特定建筑活动的承包商选择依赖于主观判断,这仍然是一个复杂的决策过程,对项目成功与否有着重大影响。现有的承包商选择方法缺乏数据驱动的决策支持方法,导致了次优承包商的分配。本文提出了一种先进的基于 node2vec 的推荐系统,该系统通过纳入广泛的定量性能指标,解决了传统承包商选择方法的不足之处。本研究利用半监督机器学习分析承包商记录,创建了一个网络,其中节点代表活动,加权边对应承包商及其绩效,尤其是成本和进度绩效指标。在处理成本和进度绩效评级网络时,Node2vec 的预测准确率分别为 88.16% 和 84.08%。这项研究的新颖之处在于,它提出了基于网络的多标准决策方法,利用从承包商业绩量化数据中获得的嵌入信息,并通过 node2vec 程序进行处理,同时测量承包商与理想承包商之间与特定活动相关的余弦相似度,对建筑承包商进行排名。
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引用次数: 0
Estimating link flow through link speed with sparse flow data sampling 利用稀疏流量数据采样,通过链路速度估算链路流量
IF 11.775 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2024-08-29 DOI: 10.1111/mice.13323
Jiandong Qiu, Sicheng Fu, Jushang Ou, Kai Tang, Xinming Qu, Shixiao Liang, Xin Wang, Bin Ran
In modern transportation systems, network‐wide traffic flow estimation is crucial for informed decision making, strategic infrastructure planning, and effective traffic management. While the limited availability of observed road‐segment traffic flow data presents a significant challenge, the emerging collection of Global Navigation Satellite System (GNSS) speed data across the entire network provides an alternative method for estimating the missing traffic flow information. To this end, this paper introduces a novel approach to estimating network‐wide road‐segment traffic flow. This approach takes advantage of the abundantly available GNSS speed data, coupled with only sparsely observed traffic flow samples. By integrating the principles of dynamic traffic assignment models with sparse recovery techniques, we formulate the problem of traffic flow estimation as a Least Absolute Shrinkage and Selection Operator (LASSO) optimization task. The efficacy and practical applicability of our proposed method are validated through evaluations using both hypothetical and real‐world case studies. The experimental findings exhibit a close alignment between the estimated and ground‐truth link flows across different time periods. Additionally, the method consistently produces low mean estimation errors for the majority of road segments, underlining the potential for our approach in effectively managing traffic flow estimation for large‐scale road networks, particularly in situations characterized by data scarcity.
在现代交通系统中,全网交通流量估算对于明智决策、战略基础设施规划和有效交通管理至关重要。虽然观测到的路段交通流量数据有限是一个重大挑战,但新出现的全球导航卫星系统(GNSS)全网速度数据收集为估算缺失的交通流量信息提供了另一种方法。为此,本文介绍了一种估算全网路段交通流量的新方法。这种方法利用了大量可用的 GNSS 速度数据,以及仅有的稀疏观测交通流样本。通过将动态交通分配模型原理与稀疏恢复技术相结合,我们将交通流量估算问题表述为最小绝对缩减和选择算子(LASSO)优化任务。通过使用假设和实际案例研究进行评估,验证了我们提出的方法的有效性和实际应用性。实验结果表明,在不同时间段内,估算的链路流量与地面实况的链路流量非常接近。此外,该方法对大多数路段的平均估算误差都很低,凸显了我们的方法在有效管理大规模道路网络交通流量估算方面的潜力,尤其是在数据稀缺的情况下。
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引用次数: 0
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Computer-Aided Civil and Infrastructure Engineering
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