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Reconfigurable flexible assembly model and implementation for cross-category products 针对跨类别产品的可重构灵活装配模型与实施
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-18 DOI: 10.1016/j.jmsy.2024.08.022
Zhaobo Xu , Chaoran Zhang , Song Hu , Zhaochun Han , Pingfa Feng , Long Zeng

As the production orders are becoming multi-category and small-batch in the era of product personalization, these require frequent reconfiguration of reconfigurable flexible assembly system for cross-category products (RFAS-CCP). However, there is no suitable theoretical assembly model and systematic implementation framework. We first propose a five-element assembly model (FAM) for RFAS-CCP, i.e. product, process, resource, knowledge, and decision. The product, process, and resource element describe the objects, steps to be assembled, and the tools, fixtures, and other equipment used for assembly, respectively. The knowledge element is a form representation of various heterogeneous data, such as a knowledge graph. The decision element includes various assembly methods to achieve assembly automation, flexibility, and intelligence. Then, in order to standardize and easy the frequent reconfiguration process, we reorganize various decision methods into a three-phase systematic implementation framework according to which stage they are used: design, configuration, and operation phases. The design phase methods primarily design various assembly modules for a product family, forming an assembly resource library. The configuration phase methods primarily configure suitable assembly lines for a specific product in the product family. The operation phase methods monitor the status of the assembly line and ensures its stable operation through health management. Finally, the effectiveness and practicality of the proposed five-element assembly model and three-phase systematic implementation framework are experimented with a pressure reducing valve product.

随着产品个性化时代的到来,生产订单变得多种类、小批量,这就需要跨种类产品的可重构柔性装配系统(RFAS-CCP)进行频繁重构。然而,目前还没有合适的理论装配模型和系统实现框架。我们首先提出了 RFAS-CCP 的五要素装配模型(FAM),即产品、流程、资源、知识和决策。产品、流程和资源要素分别描述了装配对象、装配步骤以及用于装配的工具、夹具和其他设备。知识元素是各种异构数据的形式表示,如知识图谱。决策元素包括各种装配方法,以实现装配的自动化、灵活性和智能化。然后,为了使频繁的重新配置过程标准化和简便化,我们将各种决策方法按其使用阶段重组为一个三阶段系统实施框架:设计阶段、配置阶段和运行阶段。设计阶段的方法主要是为产品系列设计各种装配模块,形成装配资源库。配置阶段的方法主要是为产品系列中的特定产品配置合适的装配线。运行阶段的方法主要是监控装配线的状态,并通过健康管理确保其稳定运行。最后,以减压阀产品为例,对所提出的五要素装配模型和三阶段系统实施框架的有效性和实用性进行了实验。
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引用次数: 0
Models and P4R asset description for digital twin-based advanced planning and scheduling using cyber-physical integration for resilient production operation 基于数字孪生的先进规划和调度模型及 P4R 资产描述,利用网络-物理集成实现弹性生产运营
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-17 DOI: 10.1016/j.jmsy.2024.08.030
Kyu-Tae Park , Ju-Yong Lee , Moon-Won Park , Yang Ho Park , Joung-Yun Lee , Yun-Hyok Choi

Advanced planning and scheduling (APS) addresses the complex and uncertain nature of production control. A digital twin (DT), which incorporates simulations through cyber-physical integration, provides an advanced functionality for APS. To facilitate efficient design and implementation, a DT-based APS must satisfy three requirements: technical functionalities for resilience, robust models for diverse operational constraints, and efficient interoperability through cyber-physical integration. Although several studies have proposed the use of DT as a primary technology for APS, proposals that address the process, functionality, integration, and information models are lacking. Additionally, the existing asset descriptions cannot adequately capture the sophisticated characteristics of DT and necessary informational elements for APS. Thus, this study designed a process model, functionalities, and integration models for the DT-based APS and asset descriptions for snapshot synchronization. Crucial service-compositions and functionalities were defined using work-center-level lifecycles. Consequently, a process model was developed, which focused on core activities for resilience. Moreover, horizontal integration between DT and control functionalities and vertical integration between DT and standards, were proposed to enhance the DT-based APS. The proposed method effectively managed the product, process, plan, plant, and resource classes by ensuring adherence to asset administration shell principles. To validate the effectiveness of the proposed methods, two work centers with distinctly different characteristics were employed and demonstrated dominant preventive measures compared to static functionality-based methods. The primary contributions encompass the facilitation of integration and interoperability within a DT-based APS. The proposed methods support the advanced characteristics of DT, ensuring robustness and neutrality across heterogeneous operational contexts.

高级计划和调度(APS)可解决生产控制的复杂性和不确定性。数字孪生(DT)通过网络-物理集成将模拟融入其中,为 APS 提供了先进的功能。为促进高效设计和实施,基于数字孪生的 APS 必须满足三个要求:具有弹性的技术功能、针对不同操作限制的稳健模型,以及通过网络物理集成实现的高效互操作性。虽然已有多项研究提出将 DT 作为 APS 的主要技术,但缺乏针对流程、功能、集成和信息模型的建议。此外,现有的资产描述无法充分反映 DT 的复杂特性和 APS 所需的信息要素。因此,本研究为基于 DT 的 APS 设计了流程模型、功能和集成模型,并为快照同步设计了资产描述。利用工作中心级别的生命周期定义了关键的服务组合和功能。因此,开发了一个流程模型,其重点是复原力的核心活动。此外,还提出了 DT 与控制功能之间的横向整合以及 DT 与标准之间的纵向整合,以增强基于 DT 的 APS。建议的方法通过确保遵守资产管理外壳原则,有效地管理了产品、流程、计划、工厂和资源类别。为了验证所提方法的有效性,我们采用了两个具有明显不同特征的工作中心,与基于静态功能的方法相比,这两个工作中心的预防措施具有优势。主要贡献包括促进基于 DT 的 APS 内部的集成和互操作性。所提出的方法支持 DT 的高级特性,确保了在不同操作环境下的稳健性和中立性。
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引用次数: 0
Superpixel perception graph neural network for intelligent defect detection of aero-engine blade 用于航空发动机叶片智能缺陷检测的超像素感知图神经网络
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-14 DOI: 10.1016/j.jmsy.2024.08.009
Hongbing Shang, Qixiu Yang, Chuang Sun, Xuefeng Chen, Ruqiang Yan

Aero-engine is the core component of aircraft and other spacecraft. The high-speed rotating blades provide power by sucking in air and fully combusting, and various defects will inevitably occur, threatening the operation safety of aero-engine. Therefore, regular inspections are essential for such a complex system. However, existing traditional technology which is borescope inspection is labor-intensive, time-consuming, and experience-dependent. To endow this technology with intelligence, a novel superpixel perception graph neural network (SPGNN) is proposed by utilizing a multi-stage graph convolutional network (MSGCN) for feature extraction and superpixel perception region proposal network (SPRPN) for region proposal. First, to capture complex and irregular textures, the images are transformed into a series of patches, to obtain their graph representations. Then, MSGCN composed of several GCN blocks extracts graph structure features and performs graph information processing at graph level. Last but not least, the SPRPN is proposed to generate perceptual bounding boxes by fusing graph representation features and superpixel perception features. Therefore, the proposed SPGNN always implements feature extraction and information transmission at the graph level in the whole SPGNN pipeline, to alleviate the reduction of receptive field and information loss. To verify the effectiveness of SPGNN, we construct a simulated blade dataset with 3000 images. A public aluminum dataset is also used to validate the performances of different methods. The experimental results demonstrate that the proposed SPGNN has superior performance compared with the state-of-the-art methods.

航空发动机是飞机和其他航天器的核心部件。高速旋转的叶片通过吸入空气并充分燃烧来提供动力,不可避免地会出现各种缺陷,威胁着航空发动机的运行安全。因此,对于这样一个复杂的系统,定期检查是必不可少的。然而,现有的传统技术--内孔检查--耗费大量人力、时间,并且依赖经验。为了给这项技术赋予智能,我们提出了一种新型超像素感知图神经网络(SPGNN),利用多级图卷积网络(MSGCN)进行特征提取,并利用超像素感知区域建议网络(SPRPN)进行区域建议。首先,为了捕捉复杂和不规则的纹理,将图像转换成一系列斑块,以获得它们的图表示。然后,由多个 GCN 块组成的 MSGCN 提取图结构特征,并在图层面进行图信息处理。最后,我们提出了 SPRPN,通过融合图表示特征和超像素感知特征来生成感知边界框。因此,所提出的 SPGNN 在整个 SPGNN 流程中始终在图层面实现特征提取和信息传输,以减轻感受野的缩小和信息损失。为了验证 SPGNN 的有效性,我们构建了一个包含 3000 幅图像的模拟叶片数据集。我们还使用了一个公共铝数据集来验证不同方法的性能。实验结果表明,与最先进的方法相比,所提出的 SPGNN 性能更优。
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引用次数: 0
Spot-checking machine learning algorithms for tool wear monitoring in automatic drilling operations in CFRP/Ti6Al4V/Al stacks in the aircraft industry 在飞机工业的 CFRP/Ti6Al4V/Al 叠层自动钻孔作业中,用于刀具磨损监测的抽查式机器学习算法
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-13 DOI: 10.1016/j.jmsy.2024.08.023
C. Domínguez-Monferrer , A. Ramajo-Ballester , J.M. Armingol , J.L. Cantero

In aircraft manufacturing, where diverse materials, including Carbon Fiber-Reinforced Plastics (CFRP), aluminum, and titanium alloys, are employed, the assembly process heavily relies on creating thousands of holes. These holes accommodate bolts and rivets, facilitating the secure interlocking of structural components within the aircraft fuselage. The proliferation of sensor systems in this domain has led to a substantial increase in data generation during the hole-making process, offering a compelling opportunity to optimize the production system. In this context, this article is dedicated to harnessing the data collected from the production system of a commercial aircraft to refine the assembly process, with a specific focus on reducing consumable costs. The primary approach involves developing a real-time Tool Wear Monitoring System by comparing the performance of Linear Regression, Lasso Regression, Ridge Regression, k-Nearest Neighbors, Support Vector Regression, Decision Tree, Random Forest, and Extreme Gradient Boosting Machine Learning models. Using a scale of the general drill condition as an outcome, the Gradient Boosting Regressor has shown outstanding results. Notably, the residuals consistently exhibited zero-centered errors in training and test sets. However, it suggests that further enhancements are needed to surpass human-level performance in predicting tool conditions because of the quality and quantity of available data.

在使用碳纤维增强塑料 (CFRP)、铝和钛合金等多种材料的飞机制造过程中,装配工艺主要依赖于开凿数千个孔。这些孔可容纳螺栓和铆钉,有助于飞机机身内结构部件的安全联锁。随着传感器系统在该领域的普及,打孔过程中产生的数据量大幅增加,这为优化生产系统提供了难得的机会。在此背景下,本文致力于利用从商用飞机生产系统收集到的数据来完善装配流程,并特别关注降低耗材成本。主要方法是通过比较线性回归、Lasso 回归、岭回归、k-近邻、支持向量回归、决策树、随机森林和极端梯度提升机器学习模型的性能,开发实时刀具磨损监测系统。梯度提升回归模型以一般钻井条件为结果,显示出出色的效果。值得注意的是,在训练集和测试集中,残差始终表现出零中心误差。然而,由于可用数据的质量和数量问题,这表明要想在工具状况预测方面超越人类水平,还需要进一步的改进。
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引用次数: 0
Point cloud self-supervised learning for machining feature recognition 用于加工特征识别的点云自监督学习
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-12 DOI: 10.1016/j.jmsy.2024.08.029
Hang Zhang , Wenhu Wang , Shusheng Zhang , Zhen Wang , Yajun Zhang , Jingtao Zhou , Bo Huang

Machining feature recognition serves as a foundational step in process planning, crucial for translating design information into manufacturing information. Traditional rule-based methods require extensive manual rule definition, prompting researchers to develop learning-based methods using data-driven algorithms. However, existing learning-based methods typically demand substantial data annotation and show limitations in machining feature segmentation. To address these issues, this paper introduces a novel learning-based machining feature recognition method. The proposed method leverages self-supervised learning to autonomously extract valuable intrinsic information from unlabeled data and incorporates a discriminative loss function to improve feature segmentation performance, thereby enhancing feature recognition results under conditions of limited labeled data. Specifically, the self-supervised learning network is first pre-trained on a large amount of unlabeled point cloud data representing CAD models and then fine-tuned with labeled data using the discriminative loss function. The fine-tuned network can be employed for recognizing machining features. Experimental results demonstrate that the proposed approach is effective during pre-training and improves feature recognition performance with limited amounts of labeled data, potentially reducing annotation efforts and associated costs.

加工特征识别是工艺规划的基础步骤,对于将设计信息转化为制造信息至关重要。传统的基于规则的方法需要大量人工定义规则,这促使研究人员利用数据驱动算法开发基于学习的方法。然而,现有的基于学习的方法通常需要大量的数据注释,并且在加工特征分割方面表现出局限性。为了解决这些问题,本文介绍了一种新颖的基于学习的加工特征识别方法。所提出的方法利用自监督学习从无标注数据中自主提取有价值的内在信息,并结合判别损失函数来提高特征分割性能,从而在标注数据有限的条件下提高特征识别结果。具体来说,自监督学习网络首先在代表 CAD 模型的大量无标记点云数据上进行预训练,然后使用判别损失函数对标记数据进行微调。微调后的网络可用于识别加工特征。实验结果表明,所提出的方法在预训练过程中非常有效,并能在标注数据量有限的情况下提高特征识别性能,从而有可能减少标注工作和相关成本。
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引用次数: 0
Expanding the horizons of metal additive manufacturing: A comprehensive multi-objective optimization model incorporating sustainability for SMEs 拓展金属增材制造的视野:包含中小企业可持续性的多目标综合优化模型
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-11 DOI: 10.1016/j.jmsy.2024.08.026
Mathias Sæterbø, Halldor Arnarson, Hao Yu, Wei Deng Solvang

Metal Additive Manufacturing (MAM) has seen significant growth in recent years, with sub-processes like Metal Material Extrusion (MEX) reaching industrial readiness. MEX, known for its cost-effectiveness and ease of integration, targets a distinct market segment compared to established high-end MAM processes. However, despite technological improvements, its overall integration into the industry as a viable manufacturing technology remains incomplete. This paper investigates the competitiveness of MEX, specifically its integration into the supply chain and the implications on cost and carbon emissions. Utilizing real-world data, the research develops a multi-objective optimization (MOO) model for a four-echelon supply chain including suppliers, airports, production facilities, and customers. The optimization model is combined with a previously developed cost model for MEX to optimize facility location in Norway using the NSGA-II algorithm. Employing a case study approach, the paper examines the production of an industrial part using stainless steel 17-4PH, detailing concrete process costs and system-level costs across four different production scenarios: 10, 100, 1,000, and 10,000 parts. The findings indicate MEX’s potential for cost-effective production at low and diversified volumes, supporting the trend towards customization and manufacturing flexibility. However, the study also identifies significant challenges in maintaining competitiveness at higher production volumes. These challenges underline the necessity for further advancements in MEX technology and process optimization to enhance its applicability and efficiency in larger-scale production settings.

近年来,金属快速成型制造(MAM)得到了长足的发展,金属材料挤压(MEX)等子工艺已进入工业化生产阶段。与成熟的高端 MAM 工艺相比,MEX 以其成本效益和易于集成而著称,瞄准的是一个独特的细分市场。然而,尽管在技术上有所改进,但作为一种可行的制造技术,其与工业的整体融合仍未完成。本文研究了 MEX 的竞争力,特别是其与供应链的整合以及对成本和碳排放的影响。研究利用真实世界的数据,为包括供应商、机场、生产设施和客户在内的四梯队供应链开发了一个多目标优化(MOO)模型。该优化模型与之前开发的 MEX 成本模型相结合,使用 NSGA-II 算法优化挪威的设施位置。本文采用案例研究方法,考察了使用不锈钢 17-4PH 生产工业零件的情况,详细介绍了四种不同生产情况下的具体流程成本和系统级成本:10、100、1,000 和 10,000 个零件。研究结果表明,MEX 具有在小批量和多样化生产中实现成本效益的潜力,支持定制化和生产灵活性的发展趋势。然而,研究也发现了在较高产量下保持竞争力所面临的重大挑战。这些挑战突出表明,有必要进一步推进 MEX 技术和工艺优化,以提高其在更大规模生产环境中的适用性和效率。
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引用次数: 0
Tool wear monitoring based on physics-informed Gaussian process regression 基于物理信息高斯过程回归的刀具磨损监测
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-10 DOI: 10.1016/j.jmsy.2024.09.001
Mingjian Sun , Xianding Wang , Kai Guo , Xiaoming Huang , Jie Sun , Duo Li , Tao Huang

Tool Wear Monitoring (TWM) plays a vital role in safeguarding product quality and enhancing machining efficiency. TWM technology mainly includes physics-based models and data-driven methods. However, physical models established under simplified or idealized conditions struggle to capture the complexity of machining processes. Moreover, the predictive efficacy of data-driven methods is heavily contingent upon the quantity of labeled data available. Addressing these issues, a hybrid-driven physics-informed Gaussian process regression model (PIGPR) is proposed. First, a health indicator construction strategy based on feature fitness analysis and Gaussian weighted moving average filtering is proposed to eliminate interference and redundancy in the measurement signal and improve monitoring efficiency. Second, a novel explicit physical model of tool wear was developed, with a determination coefficient of at least 0.98. On this basis, health indicator and proposed priori physical models are employed to constrain the mean function of the Gaussian process regression (GPR), combining data mining and physical models to provide prediction guidance for key physical domain knowledge for the hybrid model. Third, grid search algorithm is used to optimize the model parameters, adaptively identify tool wear conditions, and 95 % prediction confidence interval is given to provide more reliability. Finally, nine sets of experiments with varying cutting settings confirmed the PIGPR model's dependability. The findings demonstrate that the suggested hybrid approach significantly enhances the prediction precision of tool wear, achieving an accuracy of 0.997. Compared to the solely data-driven GPR model, the width and variance of the 95 % confidence interval decreased by 46.44 % and 60.80 %, respectively, which demonstrates that incorporating prior physical knowledge significantly enhances the smoothness and reliability of predictions.

刀具磨损监测(TWM)在保障产品质量和提高加工效率方面发挥着至关重要的作用。刀具磨损监测技术主要包括基于物理的模型和数据驱动方法。然而,在简化或理想化条件下建立的物理模型难以捕捉加工过程的复杂性。此外,数据驱动方法的预测效果在很大程度上取决于标注数据的数量。为了解决这些问题,我们提出了一种混合驱动的物理信息高斯过程回归模型(PIGPR)。首先,提出了一种基于特征适配性分析和高斯加权移动平均滤波的健康指标构建策略,以消除测量信号中的干扰和冗余,提高监测效率。其次,建立了一个新颖的刀具磨损显式物理模型,其确定系数至少为 0.98。在此基础上,采用健康指标和提出的先验物理模型来约束高斯过程回归(GPR)的均值函数,将数据挖掘与物理模型相结合,为混合模型的关键物理领域知识提供预测指导。第三,采用网格搜索算法优化模型参数,自适应识别刀具磨损条件,并给出 95 % 的预测置信区间,以提供更高的可靠性。最后,九组不同切削设置的实验证实了 PIGPR 模型的可靠性。研究结果表明,建议的混合方法显著提高了刀具磨损的预测精度,达到了 0.997 的准确度。与完全由数据驱动的 GPR 模型相比,95 % 置信区间的宽度和方差分别减少了 46.44 % 和 60.80 %,这表明结合先验物理知识可显著提高预测的平稳性和可靠性。
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引用次数: 0
Data-driven unsupervised anomaly detection of manufacturing processes with multi-scale prototype augmentation and multi-sensor data 利用多尺度原型增强和多传感器数据,对制造过程进行数据驱动的无监督异常检测
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-07 DOI: 10.1016/j.jmsy.2024.08.027
Zongliang Xie , Zhipeng Zhang , Jinglong Chen , Yong Feng , Xingyu Pan , Zitong Zhou , Shuilong He

Accurate anomaly detection (AD) of machine tools is crucial to ensure the quality and efficiency of the manufacturing processes. Due to the lack of tool anomaly information, it is difficult for AD model to precisely capture the distribution of health states and then obtain a discriminative decision boundary. Current methods try to reconstruct the normal data distribution without restricting the abnormal, resulting in the unacceptable overlap between normal and abnormal regions and finally leading to high false alarm rate. To tackle these issues, a hierarchical augmented autoencoder is proposed for AD of machine tools during manufacturing. First, a skip-connected autoencoder is built to basically learn the normal representations of multi-sensor data in an unsupervised manner. Then, to improve further emphasis the reconstruction on normality and suppress that on anomalies, we propose hierarchical memory modules to store multi-scale normal prototypical patterns, using them as a prior to guide the reconstruction with preference. Finally, A compound metric loss function is designed to measure data similarity considering both distance and angle perspectives, which can restrain noise interference and enhance model robustness. Extensive experiments are conducted on real-world CNC machine tool datasets, the proposed method achieves better performance for unsupervised AD compared with other typical methods.

准确的机床异常检测(AD)对于确保生产过程的质量和效率至关重要。由于缺乏工具异常信息,AD 模型很难精确捕捉健康状态的分布,进而获得判别决策边界。目前的方法试图重建正常数据分布而不限制异常数据,结果导致正常区域和异常区域之间不可接受的重叠,最终导致高误报率。为解决这些问题,我们提出了一种分层增强自动编码器,用于机床制造过程中的 AD。首先,建立一个跳接自动编码器,以无监督的方式学习多传感器数据的正常表示。然后,为了进一步提高对正常重构的重视程度,抑制对异常重构的重视程度,我们提出了分层存储模块来存储多尺度正常原型模式,并将其作为先验,优先指导重构。最后,我们设计了一个复合度量损失函数,从距离和角度两个角度来衡量数据的相似性,从而抑制噪声干扰,增强模型的鲁棒性。在实际数控机床数据集上进行了广泛的实验,与其他典型方法相比,所提出的方法在无监督 AD 方面取得了更好的性能。
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引用次数: 0
Developing physics-informed filters to align unattributed fragmental manufacturing data against a digital characteristics space (DCS) 开发物理信息过滤器,以便根据数字特征空间(DCS)调整未归属的零散制造数据
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-07 DOI: 10.1016/j.jmsy.2024.09.002
Heli Liu , Vincent Wu , Maxim Weill , Shengzhe Li , Xiao Yang , Denis J. Politis , Liliang Wang

Metadata are essential to the manufacturing sector. Encompassing a broad spectrum of information related to manufacturing processes, voluminous metadata are extensively obtained from sensing networks and experimentally validated finite element (FE) models. In the era of digital manufacturing, where metadata holds immense potential, its full value remains largely untapped without thorough analysis and characterisation. Yet, an overwhelming majority of the manufacturing metadata obtained during production lacks crucial information and is categorised as ‘fragmental data’, containing only a few (e.g., 1–2) essential pieces of information. Extremely sparse information within the fragmental data hinders the further analysis and characterisation of underlying scientific patterns. To address this challenge, two physics-informed filters, the probability density function filter (PDFF) and feature-driven neighbour filter (FDNF), were developed and embedded within the Evolutionary Binary (EB) algorithm. These filters enabled the alignment by identifying the origins of a set of naturally unattributed fragmental data, taking the digital characteristics space (DCS) of manufacturing processes as an alignment reference. This was realised by comparing the thermo-mechanical digital characteristics (DC), such as the temperature DC, to the counterparts stored in the DCS. An overall accuracy of 90 % was achieved when identifying the origins of unattributed fragmental hot stamping data using PDFF with a minimum length of 10 and FDNF with minimum length of 25. Results demonstrate a novel methodology to unlock the inherent values from unattributed fragmental data that contains extremely sparse information, thereby revolutionising insights into advanced manufacturing sciences.

元数据对制造业至关重要。从传感网络和经过实验验证的有限元(FE)模型中广泛获取的大量元数据包含与制造过程相关的各种信息。在数字化制造时代,元数据蕴含着巨大的潜力,但如果不对其进行彻底的分析和表征,其全部价值在很大程度上仍未得到开发。然而,生产过程中获得的绝大多数制造元数据都缺乏关键信息,被归类为 "碎片数据",只包含少数(如 1-2 条)基本信息。零散数据中极其稀少的信息阻碍了对潜在科学模式的进一步分析和定性。为了应对这一挑战,我们开发了两个物理信息过滤器,即概率密度函数过滤器(PDFF)和特征驱动邻域过滤器(FDNF),并将其嵌入到二进制演化(EB)算法中。这些滤波器将制造过程的数字特征空间(DCS)作为配准参考,通过识别一组自然无属性片段数据的来源来实现配准。这是通过将热机械数字特征(DC)(如温度 DC)与存储在 DCS 中的对应数据进行比较来实现的。在使用最小长度为 10 的 PDFF 和最小长度为 25 的 FDNF 识别无属性片段热冲压数据的来源时,总体准确率达到了 90%。研究结果展示了一种新颖的方法,可以从包含极其稀少信息的无属性片段数据中挖掘出内在价值,从而彻底改变对先进制造科学的认识。
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引用次数: 0
Multi-source online transfer learning based on hybrid physics-data model for cross-condition tool health monitoring 基于混合物理数据模型的多源在线迁移学习,用于跨条件工具健康监测
IF 12.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2024-09-06 DOI: 10.1016/j.jmsy.2024.08.028
Biyao Qiang , Kaining Shi , Junxue Ren , Yaoyao Shi

Prognostic maintenance (PM) aims to monitor the running status and promptly detect potential failures to improve the availability and productivity of the equipment. The dimensional accuracy and surface integrity of the machined parts are directly influenced by the cutting tools. Thus, tool health monitoring (THM) is crucial to ensure the optimal in-service performance of the parts. Nevertheless, the variability of operating conditions, including milling parameters, workpiece materials, etc., typically results in insufficient fault data to train the model for new conditions, thus presenting a challenge in predicting the remaining useful life (RUL) of cutting tools. To address the above issue, this study proposes a multi-source online transfer learning framework for predicting the RUL of cutting tools cross various operating conditions. A source selection strategy is initially proposed to filter the source conditions that contribute to the target modeling from the numerous candidate operating conditions. Then, online transfer learning is employed to transfer valuable knowledge from source domains to target domains while updating the target data online to reflect the actual machining scene. In contrast to the traditional transfer learning approaches, this study utilizes a hybrid physics-data model as the base learner to improve the predictive precision of the RUL in the future scenarios. The results demonstrate its generalizability and flexibility in accurately tracking tool degradation status, and the prediction accuracy of the RUL reaches more than 93 % in various target operating conditions. This study provides reliable technical support for THM in machining actual complex components.

诊断性维护(PM)旨在监控运行状态并及时发现潜在故障,以提高设备的可用性和生产率。切削工具直接影响加工零件的尺寸精度和表面完整性。因此,刀具健康监测(THM)对于确保零件的最佳使用性能至关重要。然而,包括铣削参数、工件材料等在内的操作条件的多变性通常会导致没有足够的故障数据来训练新条件下的模型,从而给预测切削刀具的剩余使用寿命(RUL)带来了挑战。针对上述问题,本研究提出了一种多源在线迁移学习框架,用于预测切削工具在不同工况下的剩余使用寿命。首先提出了一种源选择策略,从众多候选工作条件中筛选出有助于目标建模的源条件。然后,采用在线迁移学习将有价值的知识从源域迁移到目标域,同时在线更新目标数据以反映实际加工场景。与传统的迁移学习方法不同,本研究利用混合物理数据模型作为基础学习器,以提高 RUL 在未来场景中的预测精度。结果表明,该方法在准确跟踪刀具退化状态方面具有通用性和灵活性,在各种目标操作条件下,RUL 的预测精度达到 93% 以上。这项研究为 THM 在实际复杂部件加工中的应用提供了可靠的技术支持。
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Journal of Manufacturing Systems
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