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Feature-centric allocation and visualization of primary manufacturing process life cycle inventory data 以特征为中心的初级制造过程生命周期库存数据分配与可视化
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-28 DOI: 10.1016/j.jmsy.2025.10.006
Teodor Vernica , Badrinath Veluri , Devarajan Ramanujan
Detailed machine-specific data are critical for accurate sustainability assessment and for supporting design decisions to reduce environmental impacts from manufacturing. However, obtaining, analyzing, and interpreting such fine-grained measurements can be challenging and inefficient. Existing methods for the above are time-consuming, do not fully capture process variability over time, and do not relate primary manufacturing data back to design decision-making. In this work, we propose a methodology to programmatically disaggregate process-level life cycle inventory data measurements, and relate it to both operations (i.e., activities or sub-processes) within the process and the geometric features created or affected by the process. We do this by leveraging the underlying machine code used to manufacture the part, in this case G-code, and by providing a scalable definition scheme for the corresponding operations, geometric features, and the relationship between them. Results can be used to generate targeted, actionable insights into process setup and product design improvements to address environmental impacts of manufacturing processes.
详细的机器特定数据对于准确的可持续性评估和支持设计决策以减少制造对环境的影响至关重要。然而,获取、分析和解释这种细粒度的测量结果可能具有挑战性且效率低下。上述现有方法耗时长,不能完全捕获随时间变化的工艺变化,也不能将原始制造数据与设计决策联系起来。在这项工作中,我们提出了一种方法,以编程方式分解过程级生命周期清单数据测量,并将其与过程中的操作(即活动或子过程)以及过程创建或影响的几何特征联系起来。我们通过利用用于制造零件的底层机器代码(在本例中为g代码),并通过为相应的操作、几何特征以及它们之间的关系提供可扩展的定义方案来实现这一点。结果可用于产生有针对性的、可操作的见解,以改进工艺设置和产品设计,以解决制造过程对环境的影响。
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引用次数: 0
Historical visual question answering with large language model for Augmented Reality-assisted Human–Robot Collaboration 基于大语言模型的增强现实辅助人机协作历史视觉问答
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-21 DOI: 10.1016/j.jmsy.2025.10.005
Jianhao Lv, Jiahui Si, Ding Gao, Jinsong Bao
Existing AR-assisted Human–Robot Collaboration (HRC) systems passively respond to real-time information, lacking the ability to model, store, and leverage historical task knowledge in HRC scenarios, thus relying on replacing pre-programmed fixed-content modules for upgrades. To address this constraint, a historical visual question answering (VQA) framework with large language models is proposed. The unstructured visual frame is converted into structured information via structured visual representation, supported by a cross-modal interaction module and multi-component loss function to lay a structured foundation for storing historical experiences and subsequent reasoning. A temporally structured Memory Graph (MG) is constructed. Combined with large language models, historical VQA solves traditional VQA’s reliance on static images and lack of temporal continuity; An AR-assisted Human–Robot Interaction pipeline is designed for bidirectional transmission and visualization, integrating perception and reasoning results with AR to enable Human–Robot bidirectional communication. Quantitative and qualitative results show the method significantly outperforms in integrating historical and real-time information with supporting HRC VQA.
现有的ar辅助人机协作(HRC)系统被动响应实时信息,缺乏在HRC场景中建模、存储和利用历史任务知识的能力,因此依赖于替换预编程的固定内容模块进行升级。为了解决这一问题,提出了一个具有大型语言模型的历史视觉问答(VQA)框架。将非结构化的视觉框架通过结构化的视觉表示转化为结构化的信息,并由跨模态交互模块和多分量损失函数支持,为存储历史经验和后续推理奠定结构化的基础。构造了一个临时结构的内存图(MG)。结合大型语言模型,解决了传统VQA对静态图像的依赖和缺乏时间连续性的问题;设计了AR辅助的人机交互管道,用于双向传输和可视化,将感知和推理结果与AR相结合,实现人机双向通信。定量和定性结果表明,该方法在整合历史和实时信息以及支持HRC VQA方面具有显著的优势。
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引用次数: 0
From efficiency to effectiveness: A new method for diagnosing energy waste in manufacturing systems 从效率到效益:制造系统能源浪费诊断的新方法
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-17 DOI: 10.1016/j.jmsy.2025.10.003
Xuanhao Wen , Huajun Cao , Hongcheng Li , Weiwei Ge , Na Yang , Xiaohui Huang , Jin Zhou , Qiongzhi Zhang
The obligatory carbon neutrality targets drive manufacturers to improve energy performance for emission reduction. In this context, energy waste diagnosis in production has become increasingly critical. However, energy waste in manufacturing systems exhibits complex characteristics such as multi-source distributions, multi-form mediums and multi-variant influencers, resulting in a lack of comprehensive diagnosis methods. Inspired by effectiveness metrics for productivity waste diagnosis, this paper extends the concept of energy efficiency to energy effectiveness and proposes a novel energy waste diagnosis method. Firstly, it transcends the binary classification of energy consumption to establish a novel energy waste taxonomy. Next, a hierarchical framework of energy effectiveness metrics (indicators and dynamic benchmarks) is developed. These metrics are then quantified using data-driven approaches, such as meta-energy-blocks, to pinpoint the root-causes of waste. Finally, the method facilitates practical applications such as energy-saving potential estimation and waste visualization. An industrial case study on a die-casting unit demonstrates the method's effectiveness and practicality. The results revealed that actual energy consumption exceeded the ideal minimum by 11.5 times, indicating significant saving potential. Moreover, 37.2 % of energy was wasted due to managerial issues, with the method successfully identifying their specific root-causes for targeted improvements. The main novelty of the proposed method lies in its transferable effectiveness metric framework, which enables a comprehensive and in-depth diagnosis of diverse energy waste types, thereby bridging a critical gap in manufacturing energy management.
强制性的碳中和目标促使制造商提高能源绩效以减少排放。在这种情况下,生产中的能源浪费诊断变得越来越重要。然而,制造系统中的能源浪费具有多源分布、多形式介质和多变量影响因素等复杂特征,缺乏全面的诊断方法。受效率指标用于生产力浪费诊断的启发,本文将能源效率的概念扩展到能源有效性,提出了一种新的能源浪费诊断方法。首先,它超越了能源消耗的二元分类,建立了一种新的能源浪费分类法。接下来,开发了能效度量(指标和动态基准)的分层框架。然后使用数据驱动的方法(如元能源块)对这些指标进行量化,以查明浪费的根本原因。最后,该方法便于实际应用,如节能潜力估计和浪费可视化。通过对某压铸机组的工业实例分析,验证了该方法的有效性和实用性。结果显示,实际能耗超过理想最小值的11.5倍,显示出显著的节能潜力。此外,37.2% %的能源是由于管理问题而浪费的,该方法成功地确定了其具体的根本原因,并进行了有针对性的改进。所提出方法的主要新颖之处在于其可转移的有效性度量框架,该框架能够全面深入地诊断各种能源浪费类型,从而弥合制造业能源管理的关键差距。
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引用次数: 0
Probabilistic state–space modeling for robust condition monitoring of industrial equipment 工业设备鲁棒状态监测的概率状态空间建模
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-15 DOI: 10.1016/j.jmsy.2025.09.016
Victor Vantilborgh, Tom Lefebvre, Guillaume Crevecoeur
This paper proposes a generic low-cost method for probabilistic condition monitoring of industrial equipment. A computationally efficient recursive data-driven model is constructed that correlates real-time machine measurements with a quantity or several quantities of interest (QoIs), including artificial metrics such as the Remaining Useful Lifetime (RUL). To that end, a probabilistic state–space model (PSSM) is identified, based on a fully instrumented measurement set obtained from a limited set of experiments that can only be obtained in a specialized testing environment. The dataset contains both cheaply available sensory information as well as prohibitively expensive, invasive or artificially constructed sensory signals. To identify a Maximum Likelihood Estimate of the PSSM, we rely on the Expectation–Maximization (EM) algorithm and Sequential Monte Carlo (SMC) estimation techniques. During operation, only the vital, non-intrusive and cheap sensors are used. The PSSM is then repurposed to reconstruct the costly sensory signals, realizing an effective and general purpose virtual sensor. Our methodology demonstrates the capacity to robustly estimate unmeasured physical variables in real-time and artificially constructed prognostic QoIs, such as the RUL, even when working with an incomplete measurement array. We validate the presented methodology for condition monitoring on the C-MAPSS dataset and a solenoid valve (SV) use case. The presented tool has similar predictive capabilities as compared with other state-of-the-art RUL prognostic methods and furthermore provides uncertainty quantification and contextual information with respect to equipment health.
提出了一种工业设备概率状态监测的通用低成本方法。构建了一个计算效率高的递归数据驱动模型,该模型将实时机器测量与一个或多个感兴趣量(qoi)关联起来,包括人工指标,如剩余使用寿命(RUL)。为此,基于从有限的实验中获得的完全仪器化的测量集(只能在专门的测试环境中获得),确定了概率状态空间模型(PSSM)。该数据集既包含廉价的感官信息,也包含昂贵的侵入性或人工构建的感官信号。为了确定PSSM的最大似然估计,我们依赖于期望最大化(EM)算法和顺序蒙特卡罗(SMC)估计技术。在操作过程中,只使用重要的、非侵入性的和廉价的传感器。然后将PSSM重新用于重建昂贵的传感器信号,实现有效的通用虚拟传感器。我们的方法证明了即使在使用不完整的测量阵列时,也能在实时和人工构建的预测qi(如RUL)中可靠地估计未测量的物理变量。我们在C-MAPSS数据集和电磁阀(SV)用例上验证了所提出的状态监测方法。与其他最先进的RUL预测方法相比,该工具具有类似的预测能力,而且还提供了与设备健康相关的不确定性量化和上下文信息。
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引用次数: 0
Invertible transfer function informed neural ODE to learn stable latent dynamics for degradation process modeling and remaining useful life prediction 可逆传递函数通知神经ODE学习稳定的潜在动力学,用于退化过程建模和剩余使用寿命预测
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-11 DOI: 10.1016/j.jmsy.2025.10.002
Zheng Zhou , Yasong Li , Ruqiang Yan
Modeling degradation processes is essential for estimating industrial system performance and guiding maintenance decisions. Machine learning methods, due to the adaptability for diverse data types, show promise to model temporal evolution of degradation in an embedding space known as latent dynamics, especially for neural ordinary differential equations (NODE) with continuous-time property. However, inferring system states from observation data is an inverse problem, and NODEs often inherit ill-posedness further from their complex optimization landscape. We propose an invertible transfer function informed NODE to ensure stable latent dynamics, making the model robust to perturbations in observation data. First, a NODE describes the hidden degradation process, while an invertible Fourier neural operator maps between latent dynamics and observations. Error analysis reveals that stability is governed by data fidelity and the Lipschitz constant of the inverse mapping, forming the basis for our regularization technique. Additionally, we demonstrate that without ground truth degradation data, latent dynamics lack uniqueness, leading to infinite equivalent solutions. Tests on turbofan engine and battery datasets confirm improved robustness and performance in fault diagnosis and prognosis.
对退化过程进行建模对于估计工业系统性能和指导维护决策至关重要。由于对不同数据类型的适应性,机器学习方法有望在称为潜在动力学的嵌入空间中对退化的时间演化进行建模,特别是对于具有连续时间性质的神经常微分方程(NODE)。然而,从观测数据推断系统状态是一个逆问题,节点通常从其复杂的优化环境中进一步继承病态性。我们提出了一个可逆传递函数通知节点,以确保稳定的潜在动力学,使模型对观测数据的扰动具有鲁棒性。首先,节点描述隐藏的退化过程,而可逆傅立叶神经算子在潜在动力学和观测之间映射。误差分析表明,稳定性由数据保真度和逆映射的Lipschitz常数控制,这是正则化技术的基础。此外,我们还证明了在没有真值退化数据的情况下,潜在动力学缺乏唯一性,导致无穷个等价解。对涡轮风扇发动机和电池数据集的测试证实了改进的鲁棒性和故障诊断和预测性能。
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引用次数: 0
Unleashing the power of unlabeled plant data: A hierarchical contrastive learning framework for dynamic manufacturing process monitoring 释放未标记工厂数据的力量:用于动态制造过程监控的分层对比学习框架
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-07 DOI: 10.1016/j.jmsy.2025.10.001
Xijia Zhao , Hassan Ghassemi-Armaki , Blair Carlson , Peng (Edward) Wang
Modern shopfloors generate large volumes of raw process monitoring data, which hold valuable rich information for data-driven machine learning applications. However, the utility of these data is typically limited by the intensive cost and effort required for manual labeling. To this end, this paper proposes a multi-level contrastive learning framework that leverages hierarchical contextual metadata to enable effective self-supervised learning (SSL) without reliance on extensive labeled data. The framework constructs semantic supervision signals at three levels of granularity, allowing the model to learn discriminative features that align with real manufacturing conditions. The proposed pipeline is validated on a resistance spot welding (RSW) dataset collected from a General Motors production line, with evaluations on two downstream tasks: expulsion detection and nugget size prediction. Experimental results show that linear probing on partially labeled data using the pretrained model achieves performance comparable to a fully supervised transformer-based model trained on the entire labeled dataset. This generalization capability enables the SSL framework to exploit value from unlabeled plant data, providing a scalable and efficient approach for deploying machine learning in industrial applications.
现代车间产生大量的原始过程监控数据,这些数据为数据驱动的机器学习应用程序提供了有价值的丰富信息。然而,这些数据的效用通常受到人工标记所需的大量成本和努力的限制。为此,本文提出了一个多层次的对比学习框架,该框架利用分层上下文元数据来实现有效的自监督学习(SSL),而不依赖于大量的标记数据。该框架在三个粒度级别上构建语义监督信号,使模型能够学习与实际制造条件相一致的判别特征。该管道在从通用汽车生产线收集的电阻点焊(RSW)数据集上进行了验证,并对两个下游任务进行了评估:排出检测和金块尺寸预测。实验结果表明,使用预训练模型对部分标记数据进行线性探测,其性能可与在整个标记数据集上训练的基于全监督变压器的模型相媲美。这种泛化能力使SSL框架能够从未标记的工厂数据中挖掘价值,为在工业应用中部署机器学习提供了一种可扩展且有效的方法。
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引用次数: 0
Causal inference-based dynamic optimization for disassembly line balancing with uncertain component states 基于因果推理的部件状态不确定拆解线平衡动态优化
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-06 DOI: 10.1016/j.jmsy.2025.09.018
Yilin Fang, Zhiyao Li, Kai Huang, Junyufeng Chen, Ling Gui, Xinyi Chen
Efficient resource recovery from end-of-life (EOL) products requires well-structured disassembly processes. A disassembly line with multiple workstations provides a systematic framework, assigning specific tasks to each station. The disassembly line balancing problem (DLBP) aims to optimize task allocation to improve performance indicators such as cycle time. However, in practical scenarios, the states of EOL product components are often uncertain during the disassembly process. To tackle this challenge, we propose a DLBP with uncertain component states (DLB-UCS) model, which incorporates component state changes as dynamic factors during EOL product disassembly. Unlike conventional DLBP models, DLB-UCS supports real-time adaptation to uncertain changes, making it more consistent with industrial conditions. To solve this problem, we develop a causal inference-based dynamic multi-objective evolutionary algorithm (CI-DMOEA) that simultaneously minimizes the total disassembly cycle time and the number of robotic units required. In particular, a causal feature selection technique based on conditional independence testing is used for efficient initial population generation, enhancing adaptability in dynamic environments. Extensive comparative experiments on eight disassembly scenarios against three state-of-the-art dynamic multi-objective optimization algorithms show that the proposed CI-DMOEA demonstrates superior performance and responsiveness.
从报废(EOL)产品中有效地回收资源需要结构良好的拆卸过程。具有多个工作站的拆解线提供了一个系统框架,为每个工作站分配特定的任务。拆解线平衡问题(DLBP)旨在优化任务分配,以提高周期时间等性能指标。然而,在实际情况中,在拆卸过程中,EOL产品组件的状态往往是不确定的。为了解决这一问题,我们提出了一个具有不确定组件状态的DLBP (DLB-UCS)模型,该模型将组件状态变化作为EOL产品拆卸过程中的动态因素。与传统的DLBP模型不同,DLB-UCS支持对不确定变化的实时适应,使其更符合工业条件。为了解决这一问题,我们开发了一种基于因果推理的动态多目标进化算法(CI-DMOEA),该算法同时最小化了总拆卸周期时间和所需机器人单元的数量。特别地,基于条件独立测试的因果特征选择技术被用于高效的初始种群生成,增强了在动态环境中的适应性。在八种拆卸场景下与三种最先进的动态多目标优化算法进行的大量对比实验表明,所提出的CI-DMOEA具有优异的性能和响应能力。
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引用次数: 0
Virtual reconstruction-based digital twin shop floor: theoretical methodology, industrial software, and applications 基于虚拟重建的数字孪生车间:理论方法、工业软件和应用
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-04 DOI: 10.1016/j.jmsy.2025.09.019
Guofu Ding , Mingyuan Liu , Haojie Chen , Jian Zhang , Shuying Wang , Jiaxiang Xie
Digital Twin (DT) has become a key enabling technology for intelligent upgrading in discrete manufacturing shops. However, existing research primarily focuses on specific production applications, lacking consideration of the continuity across the overall production operation cycle. Such decentralized research leads to model fragmentation, data silos, and logical inconsistencies among multiple application scenarios such as pre-production planning, in-production execution, and post-production analysis, making effective integration and collaboration difficult. To address these challenges, this paper proposes a Seven-Element virtual reconstruction theory that enables consistent modeling of production elements, organizational forms, and execution logic. Based on this theory, a DT shop construction and operation framework centered on unified production logic is developed to support seamless integration and collaboration of various production applications. Additionally, operation methods for three core production applications of DT shop execution, simulation, and monitoring are systematically developed, establishing an overall technical system throughout the entire production cycle driven by a unified model. Corresponding DT industrial software systems are developed to support engineering implementation of the proposed methods. Validation through an actual shop floor demonstrates that the proposed method effectively achieves model unification and data fusion across multiple application scenarios, enhances both effectiveness and consistency of DT shop construction and operation.
数字孪生(DT)已成为离散制造车间智能升级的关键使能技术。然而,现有的研究主要集中在具体的生产应用上,缺乏对整个生产操作周期的连续性的考虑。这种分散的研究导致模型碎片化、数据竖井和多个应用场景(如生产前计划、生产中执行和生产后分析)之间的逻辑不一致,使有效的集成和协作变得困难。为了应对这些挑战,本文提出了一个七元素虚拟重构理论,使生产元素、组织形式和执行逻辑的一致建模成为可能。基于该理论,开发了以统一生产逻辑为中心的DT车间建设和运营框架,支持各种生产应用的无缝集成和协作。系统开发DT车间执行、仿真、监控三大核心生产应用的操作方法,建立统一模型驱动的贯穿整个生产周期的整体技术体系。开发了相应的DT工业软件系统,以支持所提出方法的工程实施。通过实际车间验证,该方法有效地实现了多应用场景下的模型统一和数据融合,增强了DT车间建设和运营的有效性和一致性。
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引用次数: 0
Multi-objective chaotic evolutionary-based cell configuration and load balancing for reconfigurable production lines 基于多目标混沌进化的可重构生产线单元配置与负载平衡
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-10-04 DOI: 10.1016/j.jmsy.2025.09.017
Jiaming Zhang , Jiewu Leng , Xuming Lai , Libin Lin , Linshan Ding , Lei Yue
With the continuous advancement of intelligent manufacturing, the reconfigurable manufacturing system (RMS) has become an important development direction for modern manufacturing industry by virtue of its high degree of flexibility and reconfigurable characteristics. As a concrete realization form of RMS, reconfigurable automated production line (RAPL) provides an effective technical path to cope with diversified and individualized market demands. In this study, a multi-constraint mathematical model is constructed around the cell configuration and balance optimization problem in RAPL, taking into account the different production line organization methods and cell service modes. Multi-objectives are established involving the minimization of the cycle time, the smoothing index among the manufacturing cells, and the total number of machines of the RAPL. Recognizing the collaborative interaction between mobile robots and machines, a specific theoretical cycle time derivation method is proposed for this RAPL system, and a general-purpose simulation model is designed to support the evaluation and optimization of multiple configuration schemes, thereby verifying the accuracy of the derivation model (with an error of only 1.5 %). To overcome the inefficiency and trial-and-error nature of manual methods, a multi-objective chaotic evolutionary algorithm (MOCEO) is developed. MOCEO demonstrates superior performance and stability, achieving high-quality solutions in a single run and outperforming classical algorithms such as NSGA-II and SPEA2 in hypervolume (HV), distance (GD) and other metrics. The proposed approach provides reliable decision-making support, enabling efficient and effective configuration and balancing of RAPL systems.
随着智能制造的不断推进,可重构制造系统(reconfigurable manufacturing system, RMS)以其高度的柔性和可重构特性成为现代制造业的重要发展方向。可重构自动化生产线作为RMS的具体实现形式,为应对多样化、个性化的市场需求提供了有效的技术路径。本文针对RAPL中单体配置与平衡优化问题,考虑不同的生产线组织方式和单体服务模式,构建了多约束数学模型。建立了包括周期时间最小化、制造单元间平滑指数最小化和RAPL机器总数最小化的多目标。考虑到移动机器人与机器之间的协同交互作用,针对该RAPL系统提出了具体的理论周期时间推导方法,并设计了通用仿真模型,支持多种构型方案的评估与优化,从而验证了推导模型的准确性(误差仅为1.5 %)。为了克服手工方法的低效率和反复试验的特点,提出了一种多目标混沌进化算法。MOCEO展示了卓越的性能和稳定性,在单次运行中实现了高质量的解决方案,并且在超容量(HV)、距离(GD)和其他指标上优于NSGA-II和SPEA2等经典算法。该方法提供了可靠的决策支持,实现了RAPL系统的高效配置和平衡。
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引用次数: 0
Controlled assembly of random threads based on large language models 基于大型语言模型的随机线程控制装配
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2025-09-29 DOI: 10.1016/j.jmsy.2025.09.014
Liping Ma , Zhengjie Yang , Hongjuan Yan , Dehu Gao , Xurong Gong
In precision assembly scenarios such as aerospace and automotive engineering, the random starting positions of internal and external threads pose a significant challenge. While achieving specified tightening torque ranges is critical for sealing integrity, precisely controlling the final orientation of threaded connections remains difficult for varying thread pairings. This study proposes a framework integrating visual feature extraction with pre-trained large language models (LLMs) to enable controlled assembly of randomly aligned threads. Using the directional tightening process of hydraulic cylinder barrels and pipe fittings as a case study, the method’s feasibility is validated: First, computer vision techniques extract thread assembly features; then, servo-driven tightening devices perform directional tightening experiments on different fittings, with results recorded. Through structured prompt engineering, assembly parameters, visual features, and experimental outcomes are input into the LLM, the gasket thickness and thread phase are regarded as the controlled input variables, while the collaborative condition judgment of tightening torque and end orientation serves as the output variables. Results demonstrate that pre-trained LLMs, unlike traditional deep learning methods, not only adapt to raw data but also accurately predict directional tightening outcomes for randomly selected shims without requiring additional training. This work provides a novel approach for applying LLMs in precision assembly.
在航空航天和汽车工程等精密装配场景中,内螺纹和外螺纹的随机起始位置构成了重大挑战。虽然达到指定的拧紧扭矩范围对于密封完整性至关重要,但对于不同的螺纹对,精确控制螺纹连接的最终方向仍然很困难。本研究提出了一个将视觉特征提取与预训练的大型语言模型(llm)相结合的框架,以实现随机排列线程的受控组装。以液压缸筒与管件的定向拧紧过程为例,验证了该方法的可行性:首先,利用计算机视觉技术提取螺纹装配特征;然后,伺服驱动拧紧装置对不同管件进行定向拧紧实验,并记录结果。通过结构化提示工程,将装配参数、视觉特征和实验结果输入到LLM中,将垫片厚度和螺纹相位作为受控输入变量,拧紧扭矩和端部方向作为协同条件判断的输出变量。结果表明,与传统的深度学习方法不同,预先训练的llm不仅可以适应原始数据,还可以在不需要额外训练的情况下准确预测随机选择垫片的方向拧紧结果。这项工作为llm在精密装配中的应用提供了一种新的途径。
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引用次数: 0
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Journal of Manufacturing Systems
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