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Multi-objective optimization of electric shovel excavation trajectories using ore distribution perception and reinforcement learning 基于矿体分布感知和强化学习的电铲开挖轨迹多目标优化
IF 10.3 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-16 DOI: 10.1016/j.autcon.2026.106875
Yu Yao, Yunhua Li, Liman Yang, Zhaoxiong Wang, Molei Peng, Xu Yang
Safe and efficient excavation trajectories are essential for autonomous operation of intelligent electric shovels in open-pit mining. However, irregular ore pile distributions, multi-objective requirements, and operational constraints pose a significant challenge to the real-time generation of high-performance trajectories. This paper formulates the excavation trajectory optimization as a Markov decision process and proposes a real-time multi-objective optimization surrogate model based on reinforcement learning, with the objectives of maximizing bucket fill rate, minimizing mass-specific energy consumption, and reducing excavation time. By embedding the solution evolution into reinforcement learning training process, the model achieves a 2.87 s runtime, 84.13% non-dominated solutions, and a hypervolume value of 0.9403, outperforming other multi-objective optimization algorithms. After optimization, an entropy-based decision-making method is designed to objectively select the final excavation trajectory from obtained non-dominated solutions. Simulations and experiments indicate that the surrogate model and decision-making method effectively enable efficient and stable excavation for electric shovels.
安全高效的开挖轨迹是实现露天矿智能电铲自主作业的关键。然而,不规则的矿堆分布、多目标要求和操作限制对高性能轨迹的实时生成构成了重大挑战。本文将挖掘轨迹优化表述为马尔可夫决策过程,提出了一种基于强化学习的实时多目标优化代理模型,以最大斗体填充率、最小质量比能耗、减少挖掘时间为目标。通过将解进化嵌入到强化学习训练过程中,该模型的运行时间为2.87 s,非支配解占84.13%,hypervolume值为0.9403,优于其他多目标优化算法。优化后,设计了一种基于熵的决策方法,从得到的非支配解中客观选择最终开挖轨迹。仿真和试验结果表明,该替代模型和决策方法能够有效地实现电动铲的高效、稳定开挖。
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引用次数: 0
Nature-inspired ML for strength estimation and multi-objective optimization of cement-supplementary material-stabilized soft soils 基于ML的水泥补料稳定软土强度估计与多目标优化
IF 10.3 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-16 DOI: 10.1016/j.autcon.2026.106880
Chikezie Chimere Onyekwena, Yunli Li, Chengkai Fan, Samuel J. Abbey, Wen-Ping Wu, Zhen-Song Chen
Soft soil stabilization poses a major challenge in geotechnical engineering, requiring solutions that balance performance with sustainability. This paper presents automated methodologies combining Machine Learning (ML) and optimization algorithms for designing cement-Supplementary Cementitious Material (SCM) blend binders for effective soil stabilization. Key design variables are investigated, highlighting their pivotal role in achieving optimal strength. Among the ML models, the Extreme Gradient Boosting (XGB) with Grey Wolf Optimization (GWO) achieved the highest predictive accuracy (R2 = 0.9798). Feature evaluations highlight the importance of curing time, binder content, cement proportion, and Ground Granulated Blast-furnace Slag (GGBS) content, while revealing the negative correlation of parameters like plasticity index and liquid limit. GGBS incorporation proves effective in enhancing soil strength. The proposed approach, validated against European standards, demonstrates superior mechanical performance and environmental benefits, with multi-criteria decision analysis identifying sustainable mix designs that balance economic and environmental factors without compromising mechanical performance.
软土稳定是岩土工程中的一个重大挑战,需要平衡性能和可持续性的解决方案。本文介绍了结合机器学习(ML)和优化算法的自动化方法,用于设计有效稳定土壤的水泥-补充胶凝材料(SCM)混合粘合剂。研究了关键的设计变量,突出了它们在实现最佳强度中的关键作用。在ML模型中,极端梯度增强(XGB)与灰狼优化(GWO)的预测准确率最高(R2 = 0.9798)。特征评价强调了养护时间、粘结剂含量、水泥掺量和矿渣(GGBS)含量的重要性,揭示了塑性指数和液限等参数的负相关关系。掺入GGBS对提高土壤强度有较好的效果。根据欧洲标准验证,该方法展示了卓越的机械性能和环境效益,并通过多标准决策分析确定了可持续的混合设计,在不影响机械性能的情况下平衡经济和环境因素。
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引用次数: 0
Integrated computational-robotic workflow for complex timber-only structures 复杂木结构的集成计算-机器人工作流程
IF 10.3 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-16 DOI: 10.1016/j.autcon.2026.106887
Hua Chai, Tianyi Gao, Junwang Yu, Sylvain Rasneur, Yige Liu, Denis Zastavni, Philip F. Yuan
Traditional timber joinery has been largely replaced by metal connectors due to industrial standardization, compromising the material's inherent low-carbon benefits and recyclability. To address this, this paper proposes a joint-informed computational-robotic workflow for timber-only spatial frames. The approach integrates vector-based graphic statics (VGS), geometric computation, and robotic toolpath generation into a continuous process. As a proof-of-concept, the workflow is demonstrated through the construction of a full-scale, 9.4-m-tall timber tower. While mechanical joint properties were not quantified through laboratory testing, the prototype confirms the system's geometric adaptability and construction feasibility under self-weight. Results indicate that the workflow successfully enabled robotic fabrication of 20 unique spatial nodes, achieved a 74% reduction in embodied carbon compared to steel-jointed equivalents, and facilitated a rapid 10-h reassembly process. This paper establishes a reproducible framework for materially coherent construction, contributing to the advancement of circular building practices and automated timber fabrication.
由于工业标准化,传统的木材细木工已在很大程度上被金属连接器所取代,这损害了材料固有的低碳效益和可回收性。为了解决这个问题,本文提出了一种联合通知的计算机器人工作流程,用于纯木材空间框架。该方法将基于矢量的图形静力学(VGS)、几何计算和机器人刀具路径生成集成为一个连续的过程。作为概念验证,通过建造一座9.4米高的全尺寸木塔来展示工作流程。虽然没有通过实验室测试来量化关节的力学性能,但原型机证实了系统在自重下的几何适应性和构造可行性。结果表明,该工作流程成功地使机器人制造了20个独特的空间节点,与钢连接的等效节点相比,隐含碳减少了74%,并促进了10小时的快速重组过程。本文建立了一个可复制的框架,用于材料连贯的建设,有助于推进循环建筑实践和自动化木材制造。
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引用次数: 0
Retrieval-augmented LLM with structured sampling for Building Management Systems point tagging under minimal context 基于结构化采样的检索增强LLM在最小环境下的建筑管理系统点标记
IF 10.3 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-16 DOI: 10.1016/j.autcon.2026.106884
Zhiyu Zheng, Sylvain Marié, Sylvain Kubler
Semantic tagging of Building Management Systems (BMS) metadata is critical for interoperability but remains labor-intensive. This paper presents a Retrieval-Augmented Generation (RAG) framework, BMS-RAG, that automates point-type classification using Large Language Models (LLMs) with minimal supervision. This framework dynamically retrieves relevant examples to guide the LLM, adapting to heterogeneous naming conventions without model retraining. A lightweight rectification layer enforces compliance with a predefined ontology (e.g., Brick), mitigating hallucinations. Evaluated on six real-world datasets, BMS-RAG achieves state-of-the-art results, consistently outperforming static few-shot LLM baselines by up to 15% in F1 score, with several datasets reaching near- or full 100% accuracy using our minimal, quality-driven context size. Grounded in a systematic ablation study of key architectural components, this paper’s main contribution is the application of RAG to BMS metadata tagging, offering a scalable, accurate, and low-effort pathway toward semantic interoperability.
建筑管理系统(BMS)元数据的语义标记对于互操作性至关重要,但仍然是劳动密集型的。本文提出了一个检索-增强生成(RAG)框架,BMS-RAG,它使用大型语言模型(llm)在最小监督下自动进行点类型分类。该框架动态检索相关示例来指导LLM,无需模型再训练即可适应异构命名约定。轻量级纠正层强制遵守预定义的本体(例如,Brick),减轻幻觉。在六个真实世界的数据集上进行评估后,BMS-RAG获得了最先进的结果,在F1得分上始终优于静态的少量LLM基线,最高可达15%,使用我们最小的、质量驱动的上下文大小,几个数据集的准确率接近或完全达到100%。基于对关键架构组件的系统研究,本文的主要贡献是将RAG应用于BMS元数据标记,为实现语义互操作性提供了一种可扩展的、准确的、低成本的途径。
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引用次数: 0
Robust AGV navigation in degenerative built environments with glass walls: Perception and localization co-optimization 具有玻璃墙的退化建筑环境中的鲁棒AGV导航:感知和定位协同优化
IF 10.3 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-15 DOI: 10.1016/j.autcon.2026.106885
Liuhong Zhang, Xiaogang Wang, Min Wang, Yu Liu, Zhiwei Yin, Xinyu Wu, Chao Sun
Automated Guided Vehicles face challenges of glass wall perception distortion and autonomous localization drift when operating in intelligent construction. This paper proposes a marker-free navigation framework that achieves co-optimization through tight coupling of the perception and localization layers. The framework's perception layer employs a Fresnel optics-based physical model to enable real-time detection and accurate reconstruction of glass walls. Within the localization layer, a rotation-translation decoupled matching algorithm accomplishes global cold-start localization, and a multi-resolution manifold optimization algorithm achieves accurate, robust autonomous positioning during navigation, effectively suppressing localization drift in degenerative built environments. When tested in intelligent construction containing glass walls, the framework achieved 96.80% SR, absolute trajectory error of 8.189 cm, glass reconstruction accuracy of 1.83 cm, and per-frame processing time of 31.7 ms. This work will validate this framework in larger and more diverse glass-rich construction environments.
自动导引车在智能建筑中运行时面临着玻璃墙感知失真和自主定位漂移的挑战。本文提出了一种通过感知层和定位层的紧密耦合实现协同优化的无标记导航框架。该框架的感知层采用基于菲涅耳光学的物理模型,能够实时检测和精确重建玻璃墙。在定位层中,旋转平移解耦匹配算法实现了全局冷启动定位,多分辨率流形优化算法实现了导航过程中精确、鲁棒的自主定位,有效抑制了退化建筑环境中的定位漂移。在含玻璃幕墙的智能建筑中,该框架的准确率为96.80%,绝对轨迹误差为8.189 cm,玻璃重构精度为1.83 cm,每帧处理时间为31.7 ms。这项工作将在更大、更多样化的玻璃建筑环境中验证这一框架。
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引用次数: 0
Few-shot GAN adaptation for high-fidelity and diverse crack image generation in dam damage detection 基于GAN的大坝损伤检测中高保真、多样化裂纹图像生成方法
IF 11.5 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-01 Epub Date: 2026-01-20 DOI: 10.1016/j.autcon.2026.106789
Mingchao Li , Zuguang Zhang , Qiubing Ren , Yantao Yu , Jingyue Yuan , Jiamei Ma
Substantial crack imagery is hard to acquire in dam structural inspection due to high costs and risks. Crack image generation, as a crucial yet challenging visual task, still struggles with the quality-diversity trade-off under data scarcity. This paper thus presents CrackFSGAN, a few-shot Generative Adversarial Network (GAN) adaptation method for generating realistic, diverse dam crack images from limited samples. It incorporates the Cross-Scale Channel Interaction (CSCI) module to ensure robust gradient flow across network weights for efficient training, and the Self-Supervised Discriminator (SSDr), a redesigned feature-encoder with an additional decoder, to learn more discriminative, region-extensive feature maps. Extensive experiments on multiple damage datasets against state-of-the-art GANs validate CrackFSGAN's superiority in few-shot image synthesis quality and diversity, and its effectiveness in data augmentation for downstream crack detection tasks. Notably, it supports high-resolution (1024 × 1024 pixel2) crack image generation, offering a promising solution to data scarcity and advancing intelligent structural damage detection.
在大坝结构检测中,由于成本高、风险大,难以获得实质性裂缝图像。裂缝图像生成作为一项重要而又具有挑战性的视觉任务,在数据稀缺的情况下,仍然面临着质量-多样性权衡的问题。因此,本文提出了一种基于生成对抗网络(GAN)的自适应方法——CrackFSGAN,用于从有限的样本中生成逼真的、多样化的大坝裂缝图像。它结合了跨尺度通道交互(CSCI)模块,以确保跨网络权值的鲁棒梯度流,以实现高效训练,以及自监督鉴别器(SSDr),一个重新设计的带有额外解码器的特征编码器,以学习更具判别性的、区域扩展的特征映射。在多个损伤数据集上对最先进的gan进行了大量实验,验证了CrackFSGAN在少镜头图像合成质量和多样性方面的优势,以及它在下游裂纹检测任务的数据增强方面的有效性。值得注意的是,它支持高分辨率(1024 × 1024 pixel2)的裂纹图像生成,为解决数据稀缺问题和推进结构损伤智能检测提供了有希望的解决方案。
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引用次数: 0
Noise-robust self-supervised learning with frequency-bias decomposition for TBM muck particle size distribution prediction 基于频率偏差分解的噪声鲁棒自监督学习TBM渣土粒径分布预测
IF 11.5 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-01 Epub Date: 2026-01-27 DOI: 10.1016/j.autcon.2026.106802
Guoqiang Huang , Chengjin Qin , Jie Lu , Pengcheng Xia , Haodi Wang , Chengliang Liu
Accurately predicting muck particle size distribution (PSD) of Tunnel Boring Machine (TBM) is constrained by the cumbersome process of manual annotation and environmental noise. This paper investigates robust prediction of muck PSD curve under noisy TBM operation conditions, while reducing reliance on manual annotations. A noise-robust self-supervised learning method with frequency-bias decomposition is proposed, which integrates contrastive pre-training based on noise augmentation, frequency-domain bias decomposition, and hybrid edge-aware loss function. The experiments show that with only 10% annotation, it achieves performance comparable to existing models trained on 90% annotation, with a maximum particle size MAPE of 6.7% and Rosin-Rammler parameter errors between 10 and 20%. These results demonstrate a low-cost, accurate, and noise-robust approach for muck monitoring, substantially reducing the need for manual annotation and improving prediction reliability. Future work will combine muck PSD with multi-modal TBM excavation data to support intelligent tunneling decision-making.
准确预测隧道掘进机的渣土粒径分布受到人工标注过程繁琐和环境噪声的制约。本文研究了在有噪声的TBM运行条件下的渣土PSD曲线的鲁棒预测,同时减少了对人工标注的依赖。将基于噪声增强、频域偏置分解和混合边缘感知损失函数的对比预训练相结合,提出了一种基于频域偏置分解的噪声鲁棒自监督学习方法。实验表明,在仅使用10%标注的情况下,该模型的性能与使用90%标注训练的现有模型相当,最大粒径MAPE为6.7%,Rosin-Rammler参数误差在10% ~ 20%之间。这些结果证明了一种低成本、准确、抗噪声的渣土监测方法,大大减少了人工注释的需要,提高了预测的可靠性。未来的工作将结合泥质PSD和多模态TBM开挖数据,以支持智能隧道决策。
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引用次数: 0
A digital monitoring, delay detection and visualisation framework for construction projects: RealCONs 用于建筑项目的数字监控、延迟检测和可视化框架:RealCONs
IF 11.5 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-01 Epub Date: 2026-01-28 DOI: 10.1016/j.autcon.2026.106781
Kambiz Radman, Mostafa Babaeian Jelodar, Ruggiero Lovreglio
Accurate and resilient monitoring of construction projects remains challenging due to fragmented reporting, data uncertainty and delayed system integration. This paper evaluates RealCONs, a QR-enabled real-time monitoring framework that integrates BIM, mobile scanning, cloud-based SQL storage, and Power BI analytics to support live project control. A 90-day comparative case analysis of two concurrent Electrical and Instrumentation projects benchmarked RealCONs against a conventional tracking system. Performance was assessed using Earned Value and Earned Schedule metrics, supported by Chi-square and two-proportion tests, confidence intervals, normality testing, regression forecasting, and non-parametric Wilcoxon and Mann–Whitney analyses. Data continuity strongly favoured RealCONs, with five missing earned-value days compared with 35 in the comparator project (χ2 = 28.93, p < .001). Across 51 paired days, RealCONs achieved superior CPI (1.02 vs 0.90) and SPI (1.01 vs 0.89). During a delay event (Days 33–37), RealCONs maintained measurable progress and statistically significant SPI predictability, while the comparator recorded zero earned value. Overall, RealCONs enabled earlier delay detection, improved forecast reliability and scalable, real-time decision support aligned with Industry 4.0 objectives.
由于报告的碎片化、数据的不确定性和系统集成的延迟,对建筑项目进行准确和有弹性的监测仍然具有挑战性。本文评估了RealCONs,这是一个支持qr的实时监控框架,它集成了BIM、移动扫描、基于云的SQL存储和Power BI分析,以支持实时项目控制。对两个同时进行的电气和仪器项目进行了为期90天的比较案例分析,将realcon与传统跟踪系统进行了对比。使用挣值和挣进度指标评估绩效,并采用卡方检验和双比例检验、置信区间、正态性检验、回归预测以及非参数Wilcoxon和Mann-Whitney分析。数据连续性非常有利于RealCONs,有5天缺少挣值日,而比较项目为35天(χ2 = 28.93, p < .001)。在51个配对的日子里,RealCONs取得了卓越的CPI (1.02 vs 0.90)和SPI (1.01 vs 0.89)。在延迟事件期间(第33-37天),RealCONs保持了可测量的进度和统计上显著的SPI可预测性,而比较器记录的挣值为零。总体而言,RealCONs实现了更早的延迟检测,提高了预测可靠性和可扩展的实时决策支持,符合工业4.0的目标。
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引用次数: 0
Addressing data scarcity in construction safety monitoring using low-rank adaptation (LoRA)-tuned domain-specific image generation 使用低秩自适应(LoRA)调优的特定领域图像生成解决建筑安全监测中的数据稀缺问题
IF 11.5 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-01 Epub Date: 2026-01-21 DOI: 10.1016/j.autcon.2026.106786
Insoo Jeong , Junghoon Kim , Seungmo Lim , Jeongbin Hwang , Seokho Chi
This paper proposes a lightweight domain adaptation framework for construction safety monitoring by fine-tuning a pretrained text-to-image diffusion model using Low-Rank Adaptation (LoRA). To simulate high-risk construction environments underrepresented in training data, the model was adapted to environmental features and specific hazards, focusing on visually dominant scenarios including falls, struck-by, and caught-in incidents. To address data scarcity, Multi-LoRA fine-tuning was conducted using 20 images per hazard type (totaling 60 across three hazards) and 30 background images, enabling both contextual and hazard-specific adaptation. The generated images achieved the highest semantic consistency, yielding the top mean Contrastive Language-Image Pre-training (CLIP) scores with minimal variance, and improved visual realism by reducing the Fréchet Inception Distance (FID) by 86.72 points. Furthermore, a YOLOv8 model trained exclusively on these synthetic images achieved a mean average precision ([email protected]:0.95) of 94.1% on real-world frames, comparable to a baseline model trained on real data.
本文提出了一个轻量级的领域自适应框架,用于建筑安全监测,该框架采用低秩自适应(Low-Rank adaptation, LoRA)对预训练的文本到图像扩散模型进行微调。为了模拟训练数据中未被充分代表的高风险建筑环境,该模型适应了环境特征和特定危害,重点关注视觉上占主导地位的场景,包括跌倒、被撞和被困事故。为了解决数据短缺问题,Multi-LoRA对每种灾害类型使用20张图像(三种灾害共60张)和30张背景图像进行了微调,从而实现了上下文和特定灾害的适应。生成的图像达到了最高的语义一致性,以最小的方差产生最高的平均对比语言图像预训练(CLIP)分数,并通过将fr起始距离(FID)减少86.72分来提高视觉真实感。此外,专门在这些合成图像上训练的YOLOv8模型在真实帧上实现了94.1%的平均精度([email protected]:0.95),与在真实数据上训练的基线模型相当。
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引用次数: 0
Uncertainty-aware risk mapping with passive WiFi and modified Zonal Safety Analysis (mZSA) in BIM for construction 基于被动WiFi和改进的区域安全分析(mZSA)的BIM中的不确定性风险映射
IF 11.5 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Pub Date : 2026-03-01 Epub Date: 2026-01-21 DOI: 10.1016/j.autcon.2026.106779
Mohamed Elrifaee , Tarek Zayed , Ahmed Mansour , Eslam Ali
Construction sites remain among the most hazardous work environments, where the lack of non-intrusive, worker-independent monitoring systems limits proactive safety management. Compared to existing approaches that rely heavily on wearables, RFID tags, or bespoke infrastructure, this paper presents a passive and non-intrusive framework leveraging WiFi probe request tracking for safety monitoring in semi-open areas with static hazards. Using low-cost TP-Link routers, the proposed system localizes workers without requiring active participation or additional equipment. To improve robustness beyond conventional fingerprinting models, a joint Autoencoder–Transformer architecture is employed to capture latent dependencies among access points, significantly reducing localization uncertainty. The resulting position estimates are integrated into a modified Zonal Safety Analysis (mZSA) framework adapted for semi-open construction zones. Unlike deterministic approaches that overlook error variability, the proposed method incorporates distribution-specific error modeling, enabling confidence-aware risk buffers. The framework provides a scalable, uncertainty-aware pathway for real-time risk detection in semi-open construction environments.
建筑工地仍然是最危险的工作环境之一,缺乏非侵入式的、独立于工人的监控系统,限制了主动的安全管理。与现有的严重依赖可穿戴设备、RFID标签或定制基础设施的方法相比,本文提出了一种被动的非侵入式框架,利用WiFi探针请求跟踪在具有静态危险的半开放区域进行安全监控。使用低成本的TP-Link路由器,所提出的系统无需积极参与或额外的设备就可以使工作人员本地化。为了提高传统指纹识别模型的鲁棒性,采用了一种联合的Autoencoder-Transformer架构来捕获接入点之间的潜在依赖关系,显著降低了定位的不确定性。由此产生的位置估计被整合到一个改进的区域安全分析(mZSA)框架中,该框架适用于半开放的建筑区域。与忽略误差可变性的确定性方法不同,所提出的方法结合了特定于分布的误差建模,从而实现了信心感知风险缓冲。该框架为半开放式施工环境中的实时风险检测提供了一种可扩展的、不确定性感知的途径。
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引用次数: 0
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Automation in Construction
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