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End-to-end multimodal knowledge graph construction for industrial exploded views via attention-guided expert chains 基于注意力引导专家链的工业爆炸视图端到端多模态知识图谱构建
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-05 DOI: 10.1016/j.jmsy.2025.10.013
Xinxin Liang , Zuoxu Wang , Mingrui Li , Chun-Hsien Chen , Jihong Liu
Industrial exploded views (IEVs) integrate images, text, and part–assembly relations, which is essential for advancing intelligent manufacturing. However, semantic ambiguities, structural inconsistencies, and fragmented annotations hinder effective knowledge extraction and reuse. We cast extraction from IEVs as constrained inference over scene graphs and present a Scene-aware Cascade Expert Chain (SACEC) that incrementally resolves entities, relations, and assembly context. A Visual–Structural–Rule (VSR) validator then enforces domain rules and semantic consistency on every triple. A dynamic triple-cutting strategy selects credible triples by jointly balancing local evidence, contextual coherence, and assembly order, yielding a multimodal knowledge graph (MMKG). We also introduce the Industrial Exploded-View (IEV) dataset, with fine-grained component and relation annotations and assembly-order metadata. Experiments on VRD, VG150, and the IEV dataset demonstrate significant improvements over state-of-the-art baselines, achieving R@100 of 73.2%, 63.9%, and 67.4%, and TripleAcc of 31.8%, 20.2%, and 24.9%. At the triple level, we further obtain P@100 of 54.9%, 39.8%, and 49.6%, and F1@100 of 46.2%, 34.1%, and 45.1%. Against strong path- and context-based baselines, our method improves by up to +7.4 pp in recall@100, +2.7 pp in TripleAcc, +15.8 pp in Precision@100, and +13.5 pp in F1@100. The approach reduces manual annotation and yields interpretable, audit-ready outputs for intelligent design and process planning, offering a practical route to automated and interpretable knowledge extraction in industrial environments.
工业爆炸视图集成了图像、文本和零部件关系,对推进智能制造至关重要。然而,语义歧义、结构不一致和碎片化的注释阻碍了有效的知识提取和重用。我们将evs提取作为场景图上的约束推理,并提出了一个场景感知级联专家链(SACEC),该链可以增量地解析实体、关系和装配上下文。然后,可视化结构规则(VSR)验证器对每个三元组强制执行域规则和语义一致性。动态三重切割策略通过联合平衡局部证据、上下文一致性和装配顺序来选择可信的三元组,从而产生多模态知识图(MMKG)。我们还介绍了工业爆炸视图(IEV)数据集,该数据集具有细粒度的组件和关系注释以及装配顺序元数据。在VRD、VG150和IEV数据集上的实验表明,与最先进的基线相比,有了显著的改进,R@100的效率分别为73.2%、63.9%和67.4%,TripleAcc的效率分别为31.8%、20.2%和24.9%。在三重水平上,我们进一步得到P@100为54.9%、39.8%和49.6%,F1@100为46.2%、34.1%和45.1%。对于基于路径和上下文的强基线,我们的方法在recall@100中提高了+7.4 pp,在TripleAcc中提高了+2.7 pp,在Precision@100中提高了+15.8 pp,在F1@100中提高了+13.5 pp。该方法减少了手工注释,并为智能设计和过程规划提供了可解释的、可审计的输出,为工业环境中自动化和可解释的知识提取提供了一条实用的途径。
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引用次数: 0
Resilience-enhancing multi-strategy decision-making for dynamic scheduling in manufacturing systems 制造系统动态调度的弹性增强多策略决策
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-16 DOI: 10.1016/j.jmsy.2025.12.009
Xin Guo , Mingyue Yang , Pai Zheng , Jiewu Leng , Chong Chen , Kai Zhang , Jun Li , Zechuan Huang
High-impact disruptions can cause significant performance degradation and even failures in manufacturing systems. Resilient manufacturing systems can absorb such disruptions, adapt to changing environments, and accelerate recovery through strategy scheduling based on real-time performance data. However, the nonlinear nature of degradation processes can lead to deviations from expected recovery outcomes and delays in strategy scheduling, which makes strategy scheduling for repairing manufacturing systems a difficult decision-making problem. Therefore, a resilience-enhancing multi-strategy decision-making for dynamic scheduling model in manufacturing systems is proposed, aiming to determine the optimal strategy and reduce performance anomaly duration. First, a component-based evaluation method is proposed to measure the absorption, adaptation, and recovery capabilities of the system, achieving real-time analysis of resilience levels. Then, a dynamic strategy scheduling method based on Markov chains is proposed to plan strategies and predict trajectories based on the real-time performance status, disruption, and resilience level, which solves the nonlinearity changes of performance state. Finally, a multi-strategy decision-making method based on fuzzy-BWM is proposed to achieve the resilient-oriented multi-objective discrete strategy decision-making, considering cost, recovery time, and recovery degree. The die forging press is used to demonstrate the effectiveness of the proposed model. The results show that the strategy decided by the model enables the system to recover quickly to its expected state with an acceptable cost compared to other strategies.
高影响的中断可能导致制造系统的显著性能下降甚至故障。弹性制造系统可以吸收这种中断,适应不断变化的环境,并通过基于实时性能数据的策略调度加速恢复。然而,退化过程的非线性特性会导致策略调度偏离预期的恢复结果和延迟,这使得修复制造系统的策略调度成为一个困难的决策问题。为此,针对制造系统动态调度模型,提出了一种增强弹性的多策略决策,以确定最优策略并减少性能异常持续时间。首先,提出了一种基于组分的评估方法,测量系统的吸收、适应和恢复能力,实现对系统弹性水平的实时分析。在此基础上,提出了一种基于马尔可夫链的动态策略调度方法,根据实时性能状态、中断和弹性水平进行策略规划和轨迹预测,解决了性能状态的非线性变化问题。最后,提出了一种基于模糊bwm的多策略决策方法,在考虑成本、恢复时间和恢复程度的情况下,实现了面向弹性的多目标离散策略决策。以模锻压力机为例,验证了该模型的有效性。结果表明,与其他策略相比,由模型决定的策略使系统能够以可接受的代价快速恢复到预期状态。
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引用次数: 0
Frequency-aware and bionic-aligned collaborative modeling for cross-domain tool wear monitoring under small-sample conditions 小样本条件下跨域工具磨损监测的频率感知和仿生对齐协同建模
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-15 DOI: 10.1016/j.jmsy.2025.11.025
Yezhen Peng , Weimin Kang , Qirui Hu , Fengwen Yu , Wenhong Zhou , Xinhua Yao , Congcong Luan , Songyu Hu , Jianzhong Fu
Tool wear monitoring is crucial for optimizing CNC machining processes in next-generation intelligent manufacturing systems. However, existing methods struggle to capture the dynamic relationship between high-frequency features and wear evolution. Small-sample training and the uneven distribution of labels across the domain exacerbate bias in feature migration, limiting model generalizability and adaptability. To address this, a frequency domain-aware and bionic-aligned collaborative modeling approach for domain shift mitigation is proposed. Firstly, a smoothed wavelet convolution feature extraction method is introduced, enhancing the capture of sensitive frequency bands and stabilizing gradient propagation through a Softplus smoothing mechanism. The method’s ability to suppress domain offset during the initial feature extraction stage is validated by comparing feature activation distributions across two domains. Inspired by bat echolocation, an attention mechanism is proposed that integrates energy guidance, echo alignment, and time-frequency focusing modules to enhance high-frequency signal mapping and mitigate domain shift. The method's effectiveness in high-frequency feature response is validated through enhancement metrics and variance distribution within the attention focus region. Additionally, interpretability of dual-domain feature alignment is improved by calculating working condition similarity, integrating a priori knowledge, and optimizing the MMD loss function. Systematic ablation experiments demonstrate that the proposed method achieves average RMSE, MAE, and R² values of 0.078, 0.063, and 0.817, respectively. It outperforms all ablation models, yielding average reductions of 31.6 % and 32.5 % in RMSE and MAE, and an average improvement of 42.7 % in R². Furthermore, the proposed method outperforms the best-performing method among the four mainstream methods, reducing RMSE and MAE by 13.3 % and 2.5 %, and improving R² by 5.1 %. This method effectively suppresses domain bias in feature extraction, mapping, and training under small sample conditions, providing critical technical support for intelligent manufacturing in complex, variable working environments.
在下一代智能制造系统中,刀具磨损监测对于优化数控加工工艺至关重要。然而,现有的方法很难捕捉到高频特征与磨损演变之间的动态关系。小样本训练和标签在整个领域的不均匀分布加剧了特征迁移的偏差,限制了模型的泛化和适应性。为了解决这个问题,提出了一种频域感知和仿生对齐的协同建模方法来缓解域移。首先,介绍了一种平滑小波卷积特征提取方法,通过Softplus平滑机制增强对敏感频段的捕获,稳定梯度传播;通过比较两个域的特征激活分布,验证了该方法在初始特征提取阶段抑制域偏移的能力。受蝙蝠回声定位的启发,提出了一种集成能量引导、回波对准和时频聚焦模块的注意机制,以增强高频信号映射和减轻域漂移。通过增强指标和关注焦点区域的方差分布验证了该方法对高频特征响应的有效性。此外,通过计算工况相似度、整合先验知识和优化MMD损失函数,提高了双域特征对齐的可解释性。系统烧蚀实验表明,该方法的平均RMSE、MAE和R²值分别为0.078、0.063和0.817。它优于所有消融模型,RMSE和MAE的平均降低率分别为31.6% %和32.5 %,R²的平均改善率为42.7% %。此外,该方法的RMSE和MAE分别降低了13.3 %和2.5 %,R²提高了5.1 %,是四种主流方法中表现最好的方法。该方法有效地抑制了小样本条件下特征提取、映射和训练中的领域偏差,为复杂多变工作环境下的智能制造提供了关键的技术支持。
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引用次数: 0
Physics-informed multi-task heterogeneous transfer learning network for robust milling tool wear and RUL prediction under anomalous data conditions 基于物理信息的多任务异构迁移学习网络用于铣刀磨损和异常数据条件下的RUL预测
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-18 DOI: 10.1016/j.jmsy.2025.12.011
Jinrui Liu , Pei Wang , Kesong Zhou , Qinfeng Wang , Hui Wang
Milling is widely employed in precision component manufacturing for aerospace and other high-precision industries. Indirect tool wear monitoring via machining signals provides critical references for timely tool replacement in real-world, ensuring production quality and cost efficiency. However, due to practical constraints (e.g., sensor costs), some machining signal channels may be missing, while sensor failures (e.g., poor contact or damage) can lead to abnormal signals in other channels. Consequently, historical models trained on intact data often fail when confronted with such heterogeneous data. To address this issue, this paper proposes a physics-informed multi-task heterogeneous transfer learning network for robust milling tool wear prediction under anomalous data conditions. The framework employs channel-specific autoencoders, jointly pre-trained via inter-channel adaptation on intact historical data, along with physics-informed attention, to homogenize heterogeneous data. Furthermore, a Frank-Wolfe solver based multi-task loss weighting strategy, inter-domain adaptation, and soft/hard physical constraints guide the predictor's learning process, ensuring consistency with prior physical knowledge and enabling parallel prediction of multi-blade wear. Finally, the max predicted wear is utilized to estimate remaining useful life. Comparative studies with state-of-the-art (SOTA) models in related domains validate the superior accuracy and robustness of the proposed method. Extensive experiments on two public datasets further demonstrate that the proposed method achieves high generalizability. Taking PHM2010 dataset as an example, compared to the best-performing comparative model, the MAE of the proposed model tested on normal or heterogeneous data are 13.8 % and 25.8 % lower, respectively. And the degradation rates of MAE, RMSE and R2 are 0.15, 3.12, and 3.86 % points lower, respectively, when tested on simulated channel-failure data.
铣削广泛应用于航空航天和其他高精度行业的精密部件制造。通过加工信号对刀具磨损进行间接监测,为实际生产中及时更换刀具提供了重要依据,保证了生产质量和成本效益。然而,由于实际限制(如传感器成本),一些加工信号通道可能会缺失,而传感器故障(如接触不良或损坏)可能导致其他通道信号异常。因此,在完整数据上训练的历史模型在面对异构数据时往往会失败。为了解决这一问题,本文提出了一种基于物理的多任务异构迁移学习网络,用于异常数据条件下铣刀磨损的鲁棒预测。该框架采用通道特定的自编码器,通过通道间适应对完整的历史数据进行预训练,以及物理信息的关注,以均匀化异构数据。此外,基于Frank-Wolfe求解器的多任务损失加权策略、域间适应和软/硬物理约束指导了预测器的学习过程,确保了与先前物理知识的一致性,并实现了多叶片磨损的并行预测。最后,利用最大预测磨损来估计剩余使用寿命。通过与相关领域最先进的SOTA模型的比较研究,验证了该方法的准确性和鲁棒性。在两个公共数据集上的大量实验进一步证明了该方法具有较高的泛化性。以PHM2010数据集为例,与性能最好的对比模型相比,本文提出的模型在正常数据和异构数据上的MAE分别降低了13.8 %和25.8 %。在模拟信道失效数据上测试,MAE、RMSE和R2的退化率分别降低了0.15、3.12和3.86个点。
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引用次数: 0
Process mining-driven modeling and simulation to enhance fault diagnosis in cyber–physical systems 过程挖掘驱动的建模和仿真,以增强网络物理系统的故障诊断
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-12 DOI: 10.1016/j.jmsy.2025.12.005
Francesco Vitale , Nicola Dall’Ora , Sebastiano Gaiardelli , Enrico Fraccaroli , Nicola Mazzocca , Franco Fummi
Cyber–Physical Systems (CPSs) tightly interconnect digital and physical operations within production environments, enabling real-time monitoring, control, optimization, and autonomous decision-making that directly enhance manufacturing processes and productivity. The inherent complexity of these systems can lead to faults that require robust and interpretable diagnoses to maintain system dependability and operational efficiency. However, manual modeling of faulty behaviors requires extensive domain expertise and cannot leverage the low-level sensor data of the CPS. Furthermore, although powerful, deep learning-based techniques produce black-box diagnostics that lack interpretability, limiting their practical adoption. To address these challenges, we set forth a method that performs unsupervised characterization of system states and state transitions from low-level sensor data, uses several process mining techniques to model faults through interpretable stochastic Petri nets, simulates such Petri nets for a comprehensive understanding of system behavior under faulty conditions, and performs Petri net-based fault diagnosis. The method begins with detecting collective anomalies involving multiple samples in low-level sensor data. These anomalies are then transformed into structured event logs, enabling the data-driven discovery of interpretable Petri nets through process mining. By enhancing these Petri nets with timing distributions, the approach supports the simulation of faulty behaviors. Finally, faults can be diagnosed online by checking collective anomalies with the Petri nets and the corresponding simulations. The method is applied to the Robotic Arm Dataset (RoAD), a benchmark collected from a robotic arm deployed in a scale-replica smart manufacturing assembly line. The application to RoAD demonstrates the method’s effectiveness in modeling, simulating, and classifying faulty behaviors in CPSs. The modeling results demonstrate that our method achieves a satisfactory interpretability-simulation accuracy trade-off with up to 0.676 arc-degree simplicity, 0.395 R2, and 0.088 RMSE. In addition, the fault identification results show that the method achieves an F1 score of up to 98.925%, while maintaining a low conformance checking time of 0.020 s, which competes with other deep learning-based methods.
网络物理系统(cps)紧密连接生产环境中的数字和物理操作,实现实时监控、控制、优化和自主决策,直接提高制造过程和生产力。这些系统固有的复杂性可能导致故障,需要健壮和可解释的诊断来维持系统的可靠性和操作效率。然而,故障行为的手动建模需要广泛的领域专业知识,并且不能利用CPS的低级传感器数据。此外,尽管基于深度学习的强大技术产生了缺乏可解释性的黑箱诊断,限制了它们的实际应用。为了应对这些挑战,我们提出了一种方法,该方法从低级传感器数据中执行系统状态和状态转换的无监督特征,使用几种过程挖掘技术通过可解释的随机Petri网来建模故障,模拟这种Petri网以全面了解故障条件下的系统行为,并执行基于Petri网的故障诊断。该方法首先检测涉及低水平传感器数据中多个样本的集体异常。然后将这些异常转换为结构化事件日志,通过过程挖掘实现数据驱动的可解释Petri网发现。通过用时序分布增强这些Petri网,该方法支持故障行为的模拟。最后,利用Petri网对集体异常进行检测,并进行相应的仿真,实现故障在线诊断。该方法应用于机器人手臂数据集(RoAD),该数据集是从部署在按比例复制的智能制造装配线上的机器人手臂收集的基准。在RoAD中的应用证明了该方法在cps故障行为建模、仿真和分类方面的有效性。建模结果表明,我们的方法达到了令人满意的可解释性-模拟精度权衡,简单性高达0.676弧度,R2为0.395,RMSE为0.088。此外,故障识别结果表明,该方法达到了高达98.925%的F1分数,同时保持了较低的一致性检查时间(0.020 s),与其他基于深度学习的方法相竞争。
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引用次数: 0
Towards perceptive assembly: An edge vision network-enabled augmented reality (AR) monitoring method for global shape and mechanical information in large aerospace components 面向感知装配:一种支持边缘视觉网络的增强现实(AR)监测方法,用于大型航空航天部件的全局形状和机械信息
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-10 DOI: 10.1016/j.jmsy.2025.11.017
Yang Zhang, Xu Wang, Jiacheng Cui, Yulin Jin, Qihang Chen, Yongkang Lu, Wei Liu
Real-time, high-fidelity, and interactive monitoring of global mechanical responses during the assembly of large-scale, flexible aerospace structures remains a critical and unresolved challenge. Here, we present a perceptive assembly framework that integrates a distributed edge vision network, physics-informed sparse sensing, and immersive augmented reality (AR) visualization to enable full-field structural state monitoring. A modular edge sensing system is deployed to achieve fast, high-precision measurement of distributed displacements across meter-scale components. To overcome view discontinuities, a hierarchical coordinate transformation pipeline is introduced for global registration under non-overlapping camera views. Building on sparse displacement data, we develop a constrained sensor optimization strategy that enables real-time reconstruction of global displacement and strain fields. Through HoloLens 2, the system provides intuitive AR overlays that deliver immersive, in-situ mechanical feedback during assembly. Validation experiments on composite panels demonstrate sub-millimeter reconstruction accuracy and real-time performance, significantly enhancing transparency and decision-making in the assembly process. This work establishes a scalable AR-based perception infrastructure for next-generation intelligent manufacturing of large aerospace structures.
在大型柔性航空航天结构装配过程中,实时、高保真和交互式的整体机械响应监测仍然是一个关键且未解决的挑战。在这里,我们提出了一个感知组装框架,该框架集成了分布式边缘视觉网络,物理信息稀疏感知和沉浸式增强现实(AR)可视化,以实现全场结构状态监测。部署了模块化边缘传感系统,以实现跨米尺度组件的分布式位移的快速、高精度测量。为了克服视图不连续的问题,在非重叠摄像机视图下引入了层次坐标变换流水线进行全局配准。基于稀疏位移数据,我们开发了一种约束传感器优化策略,可以实时重建全局位移和应变场。通过HoloLens 2,系统提供直观的AR叠加,在组装过程中提供身临其境的现场机械反馈。复合材料面板的验证实验证明了亚毫米级重构的精度和实时性,显著提高了装配过程的透明度和决策能力。这项工作为下一代大型航空航天结构的智能制造建立了可扩展的基于ar的感知基础设施。
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引用次数: 0
Designing Synthetic Active Learning for model refinement in manufacturing parts detection 面向制造零件检测模型精化的综合主动学习设计
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-04 DOI: 10.1016/j.jmsy.2025.11.023
Xiaomeng Zhu , Jacob Henningsson , Pär Mårtensson , Lars Hanson , Mårten Björkman , Atsuto Maki
This paper introduces Synthetic Active Learning (SAL), a fully automatic model refinement strategy for manufacturing parts detection using only synthetic data actively generated with domain randomization for training. SAL iteratively updates the detection model by identifying its weaknesses, such as in specific categories, materials, or object sizes, using custom evaluators, and generating targeted synthetic data to address them; it selectively synthesizes new useful data with respect to active learning, where traditionally humans in the loop select data to label. During each iteration, model training and data generation occur simultaneously to improve efficiency. Evaluated on four use cases from two industrial datasets, SAL achieved mAP@50 improvements of 2 to 6% percentage points over static learning, which refers to training on a fixed, pre-generated dataset. It also showed notable gains in underperforming categories, leading to more balanced performance across classes. Another benefit is that it uses a consistent configuration across multiple use cases, avoiding the need for extensive hyperparameter tuning common in prior domain randomization studies. Given its encouraging performance across diverse scenarios, we believe that SAL can scale to broader industrial applications where training can be fully or mostly based on synthetic data.
本文介绍了一种基于领域随机化主动生成的合成数据进行训练的制造零件检测的全自动模型优化策略——合成主动学习(SAL)。SAL迭代地更新检测模型,通过识别它的弱点,例如在特定的类别,材料,或对象大小,使用自定义评估器,并生成目标合成数据来解决它们;相对于主动学习,它有选择地合成新的有用数据,传统上,人类在循环中选择数据来标记。在每次迭代中,模型训练和数据生成同时进行,以提高效率。通过对来自两个工业数据集的四个用例进行评估,SAL实现了mAP@50比静态学习提高了2到6%的百分点,静态学习指的是在固定的、预先生成的数据集上进行训练。在表现不佳的类别中也显示出显著的进步,导致各个类别的表现更加平衡。另一个好处是,它在多个用例中使用一致的配置,避免了在先前的领域随机化研究中常见的大量超参数调优的需要。考虑到它在不同场景中令人鼓舞的表现,我们相信SAL可以扩展到更广泛的工业应用,在这些应用中,训练可以完全或主要基于合成数据。
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引用次数: 0
Corrigendum to “Designing Synthetic Active Learning for model refinement in manufacturing parts detection [Volume 84, February 2026, Pages 68–84]” “为制造零件检测中的模型改进设计综合主动学习[第84卷,2026年2月,第68-84页]”的勘误表
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-16 DOI: 10.1016/j.jmsy.2025.12.012
Xiaomeng Zhu , Jacob Henningsson , Pär Mårtensson , Lars Hanson , Mårten Björkman , Atsuto Maki
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引用次数: 0
Small-sample machining quality prediction via a fuzzy broad learning system enhanced by prior knowledge 基于先验知识增强模糊广义学习系统的小样本加工质量预测
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-29 DOI: 10.1016/j.jmsy.2025.12.021
Zewen Hu , Yu Shen , Shuyue Zhang , Hongcai Chen , Kanjian Zhang , Haikun Wei
Surface roughness is a critical indicator of machined workpiece quality, and accurately modeling its relationship with process parameters is essential for process optimization and intelligent decision-making. Fuzzy broad learning system (FBLS) has demonstrated considerable advantages in nonlinear predictive modeling; however, its performance under small-sample conditions may be limited due to an incomplete rule base and the lack of explicit physical mechanisms. To address this challenge, this article proposes a knowledge-enhanced fuzzy broad learning system (KEFBLS) that integrates dual sources of prior knowledge — expert-knowledge-guided fuzzy partition and physics-based fuzzy rule consequents — to improve predictive accuracy and generalization ability. The effectiveness of KEFBLS is validated on both real-world robotic grinding experiments and a publicly available machining dataset, achieving average prediction errors of only 10.3% and 4.7%, respectively, representing over 20% accuracy improvement over the FBLS baseline. These results highlight the significance of combining domain-specific prior knowledge with data-driven learning, enabling robust performance under limited-data conditions. Overall, KEFBLS provides a unified knowledge- and data-driven framework for surface roughness prediction, with potential applicability to other manufacturing processes where labeled data are scarce.
表面粗糙度是加工工件质量的重要指标,准确建模其与工艺参数的关系对工艺优化和智能决策至关重要。模糊广义学习系统(FBLS)在非线性预测建模方面显示出相当大的优势;然而,由于不完整的规则库和缺乏明确的物理机制,其在小样本条件下的性能可能受到限制。为了解决这一挑战,本文提出了一种知识增强模糊广义学习系统(KEFBLS),该系统集成了先验知识的双重来源-专家知识引导的模糊划分和基于物理的模糊规则结果-以提高预测精度和泛化能力。KEFBLS的有效性在实际机器人磨削实验和公开可用的加工数据集上得到了验证,平均预测误差分别仅为10.3%和4.7%,比FBLS基线精度提高了20%以上。这些结果强调了将特定领域的先验知识与数据驱动学习相结合的重要性,从而在有限数据条件下实现稳健的性能。总体而言,KEFBLS为表面粗糙度预测提供了统一的知识和数据驱动框架,具有潜在的适用性,可用于标记数据稀缺的其他制造过程。
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引用次数: 0
Industrial Value Symbiont in the context of Industrial Symbiosis: Retrospect and prospect 产业共生背景下的产业价值共生:回顾与展望
IF 14.2 1区 工程技术 Q1 ENGINEERING, INDUSTRIAL Pub Date : 2026-02-01 Epub Date: 2025-12-19 DOI: 10.1016/j.jmsy.2025.12.003
Weinan Sha , Xinguo Ming , Zhihua Chen , Xianyu Zhang , Jiapeng You
Industrial Symbiosis (IS) is regarded as a key enabler of the Circular Economy; its objective is to establish closed resource cycles and promote sustainable production through intensive inter-industrial exchanges of energy, materials, water, and by-products/waste. However, there exists a lack of value-oriented propositions in IS practices within industrial parks before realizing the circular economy vision, and a significant gap remains between the existing IS production system and the evolutionary prospects of a mature industrial ecosystem. To provide prospective insights for the next IS evolution, in this paper, a very first discussion of the Industrial Value Symbiont (IVS) is proposed by retrospecting its ongoing evolutionary paradigm. Then, this paper analyzes several frontier concepts and definitions related to IVS, and presents a proper connotation. To refine its intrinsic constituent diversification and delineate its operational essence, the conceptual framework of IVS is further constructed. Finally, pathways for implementing IVS towards IS 5.0, together with related enablers, digital initiatives, and potential strategies, are discussed. Barriers, challenges, and future research directions of IVS are concluded, respectively. We expect that this work may serve as a cornerstone resource for advancing the evolution and development of IS, offering guidance for value-driven IS in an underexplored research domain.
工业共生(IS)被认为是循环经济的关键推动者;其目标是建立封闭的资源循环,并通过工业间能源、材料、水和副产品/废物的密集交换促进可持续生产。然而,在实现循环经济愿景之前,工业园区内的信息系统实践缺乏以价值为导向的主张,现有的信息系统生产系统与成熟的产业生态系统的演进前景之间存在较大差距。为了提供对下一个IS进化的前瞻性见解,本文通过回顾其正在进行的进化范式,提出了对工业价值共生体(IVS)的第一次讨论。然后,分析了与IVS相关的几个前沿概念和定义,提出了IVS的正确内涵。为了细化其内在成分的多元化,勾画其运作本质,进一步构建了IVS的概念框架。最后,讨论了实现IVS到IS 5.0的途径,以及相关的推动因素、数字倡议和潜在战略。总结了IVS的障碍、挑战和未来的研究方向。我们期望这项工作可以作为推动IS进化和发展的基石资源,在一个尚未开发的研究领域为价值驱动的IS提供指导。
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Journal of Manufacturing Systems
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