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Integrating geographical equity and travel behavior dynamics into resilience enhancement of transport networks 将地理公平和出行行为动态整合到交通网络弹性增强中
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-17 DOI: 10.1111/mice.70128
Tingting Zhang, Chence Niu, Divya Jayakumar Nair, Vinayak Dixit, S. Travis Waller

The role of transportation system in ensuring equitable access to essential services and promptly recovering it post-disaster is critical to community resilience. This research introduces a framework aiming to strengthen transportation systems against external shocks, with an emphasis on geographical equity. To evaluate equity and address multiple network design objectives, we develop a two-level consolidated resilience index that measures network performance and community equity, employing a data-driven analytic hierarchy process for objective metric weighting, surpassing traditional expert scoring methods. Furthermore, we have implemented an equity-weighted Shapley value method to prioritize candidate links prior to investment. Finally, we have established a multi-objective bi-level program that integrates traffic distribution and travel behavior analysis. Our findings reveal that integrating equity considerations into candidate links selection phase significantly enhances fairness outcomes. The results also underscore the inseparable relationship between pursuing fairness and efficiency. This framework could potentially extend to other transportation systems’ investment strategies during the preparation phase, contributing to broader applications in resilience planning.

交通系统在确保公平获得基本服务和灾后迅速恢复服务方面的作用对社区的复原力至关重要。本研究介绍了一个框架,旨在加强运输系统抵御外部冲击,重点是地理公平。为了评估公平性并解决多个网络设计目标,我们开发了一个两级综合弹性指数来衡量网络性能和社区公平性,采用数据驱动的层次分析法进行客观度量加权,超越了传统的专家评分方法。此外,我们已经实现了股权加权Shapley值方法,优先考虑候选链接之前的投资。最后,我们建立了一个整合交通分布和出行行为分析的多目标双层程序。我们的研究结果表明,将公平考虑纳入候选链接选择阶段显着提高了公平结果。调查结果也强调了追求公平与效率之间不可分割的关系。在准备阶段,这一框架有可能扩展到其他交通系统的投资战略,有助于在弹性规划中得到更广泛的应用。
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引用次数: 0
Zero-shot point cloud segmentation for hydro power plant components 水电站部件的零点云分割
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-17 DOI: 10.1111/mice.70150
Yang Su, Weiwei Chen, Jiaxin Ling, Diran Yu

Accurate 3D segmentation of hydro power plant (HPP) components from point cloud data is essential for building high-fidelity digital twin systems that enable automation in construction, monitoring, and maintenance. However, existing point cloud segmentation methods suffer from high annotation costs. To address these challenges, a novel fully automated segmentation framework is proposed that assigns 3D semantic labels directly from unannotated point cloud data using only a textual prompt, without prior training on HPP-specific data. Experiments on six real-world HPP scenarios demonstrate that it achieves superior performance compared to state-of-the-art zero-shot baselines, with an average positive ratio of 72.56% and negative ratio of 20.45%, while significantly reducing the human effort and time required for segmentation. This study advances automation in construction by providing a practical, annotation-free solution for large-scale, fine-grained 3D segmentation of complex HPP environments, laying the foundation for efficient, intelligent digital twin creation and automated decision support in hydropower engineering.

从点云数据中对水电站(HPP)组件进行精确的3D分割对于构建高保真数字孪生系统至关重要,该系统可实现施工、监控和维护自动化。然而,现有的点云分割方法存在标注成本高的问题。为了解决这些挑战,提出了一种新的全自动分割框架,该框架仅使用文本提示直接从未注释的点云数据分配3D语义标签,而无需事先对HPP特定数据进行培训。在六个真实世界的HPP场景中进行的实验表明,与目前最先进的零射击基线相比,它取得了卓越的性能,平均阳性比率为72.56%,阴性比率为20.45%,同时显着减少了分割所需的人力和时间。该研究通过为复杂HPP环境的大规模、细粒度三维分割提供实用的、无需注释的解决方案,推进了建设自动化,为水电工程中高效、智能的数字孪生创建和自动化决策支持奠定了基础。
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引用次数: 0
Simulation-driven deep learning for rebar clutter elimination in ground-penetrating radar images to detect backfill grout defects in segment linings 基于仿真驱动的深度学习技术在探地雷达图像中消除钢筋杂波,以检测管片衬砌中回填浆液缺陷
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-16 DOI: 10.1111/mice.70142
Chaemin Hwang, Seunghun Yang, Younseo Kim, Sangwoo Park, Hangseok Choi

Inspecting the backfill grout behind segment linings using ground-penetrating radar (GPR) is essential for the maintenance of shield tunnels. However, reinforcing rebars embedded in the segment linings generate strong clutter in GPR data, which obscures the detection of defect signals within the backfill grout. In addition, acquiring sufficient and consistent GPR data to train deep learning models is challenging due to restricted site access and variability in tunnel environments. To address these limitations, this study proposed a simulation-driven deep learning network for clutter elimination and defect detection in GPR images. A training database was constructed exclusively through finite-difference time-domain numerical simulations to model segment linings containing backfill grout defects. This configuration provides a standardized and well-controlled dataset for training and evaluating the network. Several architectures within the encoder–decoder framework, including U-Net 3+, were employed to develop models for eliminating rebar clutter. The performance of the reconstructed GPR B-scans was assessed using image quality and quantitative metrics, with U-Net 3+ demonstrating the highest accuracy. The findings confirm that realistic GPR signal characteristics can be learned and generalized through simulation-based data without relying on extensive field data. Finally, GPR B-scans collected from a full-scale tunnel lining segment were reconstructed using the proposed network to verify its practical applicability. This study demonstrates the potential feasibility of transfer learning from simulation-only data to real-world engineering applications, enabling more effective backfill grout inspection and supporting efficient maintenance.

利用探地雷达(GPR)对盾构隧道管片衬砌后的回填浆液进行检测是盾构隧道维修中必不可少的技术手段。然而,埋置在管片衬砌中的钢筋会在探地雷达数据中产生较强的杂波,从而掩盖了对充填体内部缺陷信号的检测。此外,由于隧道环境的限制和变化,获取足够和一致的GPR数据来训练深度学习模型具有挑战性。为了解决这些限制,本研究提出了一个模拟驱动的深度学习网络,用于GPR图像的杂波消除和缺陷检测。通过有限差分时域数值模拟,建立了包含回填浆液缺陷的管片衬砌模型的训练数据库。这种配置为训练和评估网络提供了标准化和良好控制的数据集。编码器-解码器框架中的几种架构,包括U‐Net 3+,被用于开发消除钢筋杂波的模型。利用图像质量和定量指标评估重建GPR B -扫描的性能,U - Net 3+显示出最高的精度。研究结果证实,可以通过基于模拟的数据来学习和推广真实的GPR信号特征,而无需依赖大量的现场数据。最后,利用该网络重建了全尺寸隧道衬砌段的GPR B扫描图,以验证其实际适用性。该研究证明了将模拟数据的学习转移到现实世界工程应用的潜在可行性,从而实现更有效的回填灌浆检查和支持有效的维护。
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引用次数: 0
Collaborative multi-lane scheduling strategy for connected and automated vehicles on highway interchange using rolling traversal scheduling 基于滚动遍历调度的高速公路互通车辆多车道协同调度策略
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-16 DOI: 10.1111/mice.70141
Pengfei Li, Yihe Chen, Yunhao Hu, Jia Shi, Keqiang Li, Yugong Luo

With the rapid development of transportation infrastructure, highway interchanges have become critical nodes in the network, where congestion frequently occurs. Existing research on congestion mitigation in such regions is limited, often focusing on individual bottlenecks, which may overlook interactions between diverging and merging areas. Some other research adopted a macroscopic traffic flow perspective, without microscopically mitigating right-of-way conflicts caused by lane-changing demands of vehicles. To address this gap, this study proposes a collaborative multi-lane scheduling strategy for connected and automated vehicles under a cloud control system. By jointly optimizing vehicle passing sequences in both diverging and merging zones, the proposed method aims to improve overall traffic efficiency. Key contributions include a rolling traversal mechanism for global scheduling, a discretionary lane-changing strategy for enhanced lane utilization, and a double-checked trajectory planning approach that balances efficiency and comfort. This framework offers a scalable solution to alleviate congestion at complex highway interchanges under high traffic demand.

随着交通基础设施的快速发展,公路立交已成为交通网络中的关键节点,频繁发生交通拥堵。现有的缓解此类区域拥堵的研究有限,往往侧重于单个瓶颈,可能忽略了偏离和合并区域之间的相互作用。另一些研究采用宏观交通流视角,没有从微观上缓解车辆变道需求引起的路权冲突。为了解决这一差距,本研究提出了一种云控制系统下的联网和自动驾驶汽车的协同多车道调度策略。该方法通过对发散区和归并区车辆通过顺序进行联合优化,以提高整体交通效率。主要贡献包括用于全局调度的滚动遍历机制,用于提高车道利用率的任意变道策略,以及平衡效率和舒适性的双重检查轨迹规划方法。该框架提供了一个可扩展的解决方案,以缓解高交通需求下复杂高速公路交汇处的拥堵。
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引用次数: 0
Enhanced precision in axle configuration inference for bridge weigh-in-motion systems using computer vision and deep learning 利用计算机视觉和深度学习提高了桥梁运动称重系统的轴构型推断精度
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-16 DOI: 10.1111/mice.70144
Domen Šoberl, Jan Kalin, Andrej Anžlin, Maja Kreslin, Klen Čopič Pucihar, Matjaž Kljun, Doron Hekič, Aleš Žnidarič

Heavy goods vehicles (HGVs) have a significant impact on road and bridge infrastructure, with overloaded vehicles accelerating structural deterioration and increasing safety risks. Bridge weigh-in-motion (B-WIM) systems estimate gross vehicle weight (GVW) using strain measurements, but inaccuracies in axle configuration recognition can reduce reliability. This study presents a low-cost computer vision (CV) extension for existing B-WIM installations that verifies strain-inferred axle configurations using traffic camera images and flags GVW estimates as reliable or unreliable. Experiments on a data set of over 30,000 HGV records show that by combining convolutional neural networks with strain-based heuristics, GVW reliability can improve from 96.7% to 99.89%, effectively excluding nearly all erroneous measurements. The approach operates without interrupting ongoing B-WIM operations and can be applied retrospectively to historical data. Limitations include the inability to detect raised axles (RAs), which the method excludes as unreliable. This method provides a practical, high-precision enhancement for structural health monitoring of bridges.

重型货车(hgv)对道路和桥梁基础设施产生了重大影响,超载车辆加速了结构的恶化,增加了安全风险。桥梁运动称重(B-WIM)系统通过应变测量来估计车辆总重(GVW),但在车轴结构识别方面的不准确性会降低可靠性。本研究为现有的B-WIM装置提供了一种低成本的计算机视觉(CV)扩展,可以使用交通摄像头图像验证应变推断的轴配置,并将GVW估计标记为可靠或不可靠。在超过30,000条HGV记录的数据集上进行的实验表明,通过将卷积神经网络与基于应变的启发式方法相结合,GVW的可靠性可以从96.7%提高到99.89%,有效地排除了几乎所有的错误测量。该方法不会中断正在进行的B-WIM操作,并且可以回顾性地应用于历史数据。局限性包括无法检测凸起的轴(RAs),该方法将其排除为不可靠。该方法为桥梁结构健康监测提供了实用、高精度的增强手段。
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引用次数: 0
Inspector gaze-guided multitask learning for explainable structural damage assessment 检查员注视引导的多任务学习用于可解释的结构损伤评估
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-14 DOI: 10.1111/mice.70131
Chenyu Zhang, Charlotte Liu, Ke Li, Zhaozheng Yin, Ruwen Qin

Accurately classifying damage levels from structural inspection images is critical for automated infrastructure assessment. Although deep neural networks achieve impressive performance, their black-box nature limits explainability, and prior studies using Grad-CAM often yield coarse or inaccurate saliency maps. To overcome these limitations, this paper introduces XIDLE-Net, a multitask model that simultaneously performs damage classification and saliency map prediction to enhance explainability in structural damage assessment. Combining a Swin Transformer encoder with a convolutional neural network decoder, XIDLE-Net is trained with dual supervision using damage labels and inspector gaze-derived attention maps, enhancing both classification accuracy and model explainability. Experimental results show that XIDLE-Net outperforms state-of-the-art methods in both classification and saliency explainability, achieving 78.1% accuracy, 94.3% area under the curve (AUC), and a 39.7% improvement in saliency prediction over ResNet-50 with Grad-CAM. To our knowledge, this is one of the first investigations to employ large-scale inspector gaze data for supervision and to quantitatively evaluate Grad-CAM in structural image classification. The results highlight the promise of human gaze data for advancing explainable vision-based structural health monitoring.

从结构检测图像中准确分类损伤等级对于基础设施自动化评估至关重要。尽管深度神经网络取得了令人印象深刻的表现,但它们的黑盒性质限制了可解释性,并且先前使用Grad - CAM的研究经常产生粗糙或不准确的显著性图。为了克服这些限制,本文引入了XIDLE‐Net,这是一个多任务模型,可以同时进行损伤分类和显著性图预测,以提高结构损伤评估的可解释性。XIDLE - Net结合了Swin Transformer编码器和卷积神经网络解码器,使用损伤标签和检查员注视衍生的注意图进行双重监督训练,提高了分类准确性和模型的可解释性。实验结果表明,XIDLE‐Net在分类和显著性可解释性方面都优于最先进的方法,准确率达到78.1%,曲线下面积(AUC)达到94.3%,显著性预测比ResNet‐50与Grad‐CAM的显著性预测提高39.7%。据我们所知,这是首次使用大规模检查员注视数据进行监督并定量评估Grad - CAM在结构图像分类中的应用。研究结果强调了人类凝视数据在推进基于可解释视觉的结构健康监测方面的前景。
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引用次数: 0
A depth–spatial alignment method for multi-source point clouds on large-scale construction sites 大型建筑工地多源点云的深度-空间对齐方法
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-14 DOI: 10.1111/mice.70120
Tao Zhong, Yujie Lu, Zongjun Xia, Zhifei Chen, Shuo Wang, Yifei Wang

Three-dimensional (3D) site models form the digital foundation for modern construction management. However, creating these models from multi-source imagery presents two key challenges: accurately georeferencing camera poses during wide-view acquisition and precisely aligning multiple point clouds that possess non-uniform accuracy. This paper proposes a two-stage framework to address these challenges. The first stage performs local-to-world registration by integrating ground control points, detected via an enhanced HA-YOLOv8, as early-stage constraints in the 3D reconstruction process. The second stage, inter-model alignment, introduces a novel edge-aware method that utilizes refined structural edge features to merge local models. The framework was validated using images from crane cameras on a high-rise project, achieving a final modeling accuracy of 0.121 m for the main structures, resulting from precise registrations with low translation (0.102 m) and rotation (0.051°) errors. This approach provides a robust solution for generating high-fidelity 3D site models, supporting advanced digital construction applications.

三维(3D)现场模型构成了现代施工管理的数字化基础。然而,从多源图像中创建这些模型面临两个关键挑战:在广角视角采集期间准确地参考相机姿势,以及精确地对齐具有非均匀精度的多点云。本文提出了一个两阶段的框架来解决这些挑战。第一阶段通过整合地面控制点(通过增强型HA - YOLOv8检测)进行本地到全球的注册,作为3D重建过程的早期限制条件。第二阶段,模型间对齐,引入了一种新的边缘感知方法,该方法利用精细的结构边缘特征来合并局部模型。该框架使用来自高层项目起重机摄像机的图像进行验证,通过精确配准,低平移(0.102米)和旋转(0.051°)误差,使主要结构的最终建模精度达到0.121米。这种方法为生成高保真度的3D场地模型提供了强大的解决方案,支持先进的数字建筑应用。
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引用次数: 0
From pixels to rating—A semiautomated system linking multi-damage segmentation and condition rating in concrete bridge inspections 从像素到分级——混凝土桥梁检测中多损伤分割和状态分级的半自动化系统
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-14 DOI: 10.1111/mice.70145
Rona Firdes Çelik, Vedhus Hoskere, Sylvia Kessler

While machine learning (ML) has advanced image-based damage detection, a critical gap remains: the automated translation of detected damage into standardized condition ratings used in structural assessments. Most existing approaches stop at semantic segmentation, overlooking the damage rating step essential for practical inspections. This paper presents a semiautomated system that bridges this gap by linking multi-label damage segmentation with condition rating prediction. Our contributions are: (1) a data-driven label taxonomy for damage segmentation, derived from statistical and semantic analysis of 2.2 million inspection records, and designed to support downstream condition rating; (2) a pipeline for converting textual inspection records into structured training data for automated condition rating, and a set of custom bidirectional long short-term memory (LSTM) models achieving up to 99%$99 ,%$ F1-score on this task; and (3) a reference system architecture integrating image segmentation and text-based damage rating within an interactive 3D inspection interface. The system demonstrates how integrating damage detection and condition rating within an interactive 3D interface can streamline inspection documentation and enhance decision support for concrete structures. Developed in compliance with German inspection standards and designed for adaptability, the system architecture offers a transferable framework for embedding ML-based automation into digital inspection workflows, ensuring that all components, from damage detection to condition rating, are aligned in an end-to-end process.

虽然机器学习(ML)具有先进的基于图像的损伤检测,但仍然存在一个关键的差距:将检测到的损伤自动转换为用于结构评估的标准化状态评级。大多数现有的方法都停留在语义分割上,忽略了对实际检测至关重要的损伤分级步骤。本文提出了一种半自动化系统,通过将多标签损伤分割与状态评级预测联系起来,弥补了这一空白。我们的贡献有:(1)基于220万份检查记录的统计和语义分析,设计了一种用于损伤分割的数据驱动标签分类法,用于支持下游状态评级;(2)将文本检查记录转换为结构化训练数据的管道,用于自动状态评级,以及一组自定义的双向长短期记忆(LSTM)模型,该模型在该任务上达到F1分;(3)在交互式3D检测界面中集成图像分割和基于文本的损伤等级的参考系统架构。该系统演示了如何在交互式3D界面中集成损伤检测和状态评级,从而简化检测文档并增强对混凝土结构的决策支持。该系统架构符合德国检测标准,设计适应性强,提供了一个可转移的框架,可将基于机器学习的自动化嵌入到数字检测工作流程中,确保从损伤检测到状态评级的所有组件在端到端过程中保持一致。
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引用次数: 0
Complete-coverage trenching trajectory planning for excavators via reachability and excavation force maps 通过可达性和挖掘力图为挖掘机进行全覆盖的挖沟轨迹规划
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-14 DOI: 10.1111/mice.70138
Zhe Suo, Xiang Li, Zhenyu Xu, Jianfeng Liu, Jixin Wang, Jianhua Wang

Current trenching trajectory planning methods for autonomous excavators primarily focus on a single cycle, lacking overall optimization of the entire task. This study proposes an offline method for overall optimization of trenching trajectories via reachability and excavation force maps. This method can generate a complete set of trajectories that covers the entire target trench area and satisfies the excavation force requirements without relying on expert demonstration data, which is conducive to improving the overall trenching efficiency. First, a base-position selection method that considers both force and pose requirements is proposed. Second, rules for generating key points of trenching trajectories are established. Subsequently, an overall optimization method for all trajectories covering the entire trench area is proposed. Finally, a prototype and an experimental scenario were built, and trenching experiments on four trench shapes are conducted. The results demonstrate that the planning process is completed within a few minutes, and the trench profiles obtained from the trenching experiments closely match the target shapes.

目前自主挖掘机挖沟轨迹规划方法主要集中在单个周期,缺乏对整个任务的整体优化。本研究提出了一种离线方法,通过可达性和开挖力图来全面优化挖沟轨迹。该方法无需依赖专家论证数据,即可生成覆盖整个目标沟区域、满足开挖力要求的完整轨迹集,有利于提高整体挖沟效率。首先,提出了一种同时考虑力和位姿要求的基位选择方法。其次,建立了海沟轨迹关键点生成规则;随后,提出了覆盖整个海沟区域的所有轨迹的整体优化方法。最后,搭建了原型机和实验场景,对四种沟槽形状进行了沟槽试验。结果表明,规划过程在几分钟内完成,沟槽实验得到的沟槽剖面与目标形状吻合较好。
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引用次数: 0
Real-time network-level traffic signal and trajectory optimization with connected automated and human-driven vehicles 实时网络级交通信号和轨迹优化与连接的自动和人工驾驶车辆
IF 9.1 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-14 DOI: 10.1111/mice.70139
Ramin Niroumand, Fahim Kafashan, Leila Hajibabai, Ali Hajbabaie

This paper introduces a real-time framework designed to optimize intersection signal timing and vehicles’ trajectories across a network of intersections in a mixed environment of human-driven and automated fleets. The network-level optimization model is decomposed into intersection-level sub-models, whose decisions are coordinated through information exchange, aiming to push them toward the network model's optimal solutions. At each intersection, a bi-level framework addresses both the signal timing and trajectory optimization models. A specialized greedy heuristic algorithm is developed for the lower-level problem where optimal connected and automated vehicles (CAVs) trajectories are constructed for a given signal timing plan. At the upper level, all the feasible signal timing plans are created, and the system selects the most effective one to implement. The study integrates the entire solution process into a receding horizon framework to ensure efficient handling throughout the study period. A case study demonstrated the system's capability to adjust signals and trajectories effectively under various traffic demands and CAV market shares. Results showed a reduction in overall arterial delay correlating with higher proportions of CAVs. The proposed system delivered solutions in less than 70 ms, which is significantly faster than the half-second solving time steps, ensuring decisions were made quicker than in real-time.

本文介绍了一个实时框架,旨在优化交叉口信号定时和车辆在人工驾驶和自动驾驶车队混合环境中的交叉路口网络轨迹。将网络级优化模型分解为交叉级子模型,通过信息交换协调子模型的决策,推动子模型向网络模型的最优解方向发展。在每个十字路口,一个双层框架解决了信号时序和轨迹优化模型。针对较低级问题,针对给定的信号授时方案,提出了一种专门的贪婪启发式算法来构建最优的联网和自动驾驶车辆(cav)轨迹。在上层,创建所有可行的信号配时方案,系统选择最有效的方案实施。该研究将整个解决方案过程集成到一个后退的地平线框架中,以确保在整个研究期间有效处理。案例研究表明,该系统能够在不同的交通需求和自动驾驶汽车市场份额下有效地调整信号和轨迹。结果显示,总动脉延迟的减少与较高比例的cav相关。所提出的系统在不到70毫秒的时间内提供解决方案,这比半秒的解决时间步骤要快得多,确保比实时更快地做出决策。
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引用次数: 0
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Computer-Aided Civil and Infrastructure Engineering
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