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A teacher-student framework leveraging large vision model for data pre-annotation and YOLO for tunnel lining multiple defects instance segmentation
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-07 DOI: 10.1016/j.jii.2025.100790
Hanlong Yang , Lujie Wang , Yue Pan , Jin-Jian Chen
To achieve an accurate and efficient instance segmentation task for multiple defects within tunnel linings, this paper proposes a simple yet powerful Teacher-Student Framework (TeSF) leveraging the emerging Large Vision Model (LVM) and the advanced You Only Look Once v5 (YOLO v5) model. TeSF integrates a pre-trained LVM within the Teacher Module to alleviate data annotation efforts. Concurrently, the Student Module introduces a novel top-down model architecture, amalgamating YOLO v5 for top-level Classification & Localization and a Segment Head for down-level Segmentation, resulting in YOLO-SH. The Teacher Module acts as a data engine for automatic learning in the Student Module through a well-designed loss function. The proposed TeSF is tested in images collected from Shanghai metro tunnels to automatically recognize five different types of tunnel surface defects. Experiment results indicate that: (1) The LVM-based data annotation procedure in the Teacher Module surpasses the efficacy of the traditional manual method. (2) Optimal equilibrium between computational efficiency and segmentation accuracy is achieved with a medium-sized backbone for YOLO v5, yielding mask [email protected] values of 0.644 and 0.694, all within an inference time of 6.2ms/image. (3) The top-down Student Module with YOLO-SH v5m exhibits superior performance in instance segmentation compared to state-of-the-art models, bringing improvements of no less than 8.2% and 6.3% in box [email protected] and mask [email protected], respectively. In short, the novelty of TeSF lies in the utilization of the pre-trained LVM for streamlined data annotation coupled with the augmentation of YOLO-SH for a more cost-effective and precise detection of multiple defects within tunnels. The applicability of TeSF can extend to the analysis of 3D scanner images derived from in-service tunnel environments.
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引用次数: 0
Autonomous cycle of data analysis tasks for the determination of the coffee productive process for MSMEs
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-06 DOI: 10.1016/j.jii.2025.100788
Jairo Fuentes , Jose Aguilar , Edwin Montoya
Coffee production needs certain levels of efficiency to ensure that the quality of the bean, the roasting process, and in general, the coffee processing methods, achieve financial and environmental sustainability objectives. This requires tasks of monitoring and analyzing of features of the coffee bean, and the roasting process, among other aspects, so that stakeholders of the agro-industrial sector of MSMEs can know what happens in the coffee production and can make better decisions to improve it. In a previous article, three autonomous cycles of data analysis tasks are proposed for the automation of the production chains of the MSMEs. This work aims to instantiate the autonomous cycle responsible for identifying the type of input to transform in the production process, in the case of coffee production. This cycle analyzes the inputs of the production chain (quantity, quality, seasonality, durability, cost, etc.), based on information from the organization and the context, to establish the production process to be carried out. This autonomous cycle is instanced in the coffee production to identify the type of input to transform (bean quality), and to determine the transformation process (level of decrease of the bean during the roasting process and coffee processing method). The quality model is defined by the K-means technique with a performance in the Silhouette Index of 0.85, the predictive model of the level of decrease of beans in the roasting process is defined by Random Forest with a performance in the accuracy of 0.81, and finally, the identification model of the "production method" is carried out by the Logistic Regression technique with a quality performance in the accuracy of 0.72. Among the most important findings is that the autonomous cycle of data analysis tasks based on machine learning techniques is capable of studying the contextual data of coffee production to identify the type of input to be transformed and the coffee transformation process. Another important finding is that the autonomous cycle allows the automation of the production process, leading to improved times and coffee processing.
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引用次数: 0
Integrating digital transformation with human-centric factors strategies to enhance organisational process performance: The H.O.P.E. model
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-02-05 DOI: 10.1016/j.jii.2025.100785
Camilla Buttura Chrusciak, Anderson Luis Szejka, Osiris Canciglieri Junior
Digital transformation (DX) has driven significant company changes, restructuring products, processes, and services by integrating emerging technologies across all organisational levels. This change enhances workflows, decision-making, and operational efficiency, fostering innovation and competitive advantage. This research analyses how effective technology implementation, employee engagement, usability awareness, and strategic management practices can improve organisational processes. By analysing interconnections among DX, human factors, business processes, and emerging technologies, the research employs a systematic literature review and Structural Equation Modelling (SEM) to identify critical factors for success. The findings highlight that digital tools streamline operations and support data-driven decisions, reducing cognitive overload through user-centred design. This research proposes a Human-Oriented Process Enhancement (H.O.P.E.) model that integrates DX with human-centric factors to guide digital technology applications and improve organisational performance. The practical application of this model was carried out as part of a litigation management project in an automotive supplier manufacturing plant specialising in advanced solutions across seating, interiors, and clean mobility technologies. The project sought to streamline legal processes, enhance compliance, and mitigate risks through structured litigation management. In conclusion, the digital maturity and human factors (DMHF) index, the outcome of the H.O.P.E. model, has proven to be a comprehensive tool for aligning DX adoption with organisational strategic goals considering human-centric factors. Future research will focus on customising the index for industry-specific needs, particularly ergonomics, to ensure organisations achieve sustainable growth in a digital setting.
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引用次数: 0
An outranking method with Dombi aggregation operators based on multi-polar fuzzy Z-numbers for selection of best rehabilitation center
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-27 DOI: 10.1016/j.jii.2025.100781
Inayat Ullah , Muhammad Akram , Tofigh Allahviranloo
Useful decisions are made based on reliable information. The concept of Z-number involves the issue of reliability of information. Multipolar information is particularly important in scenarios involving multiple attributes in a decision making process. There does not exist a study in the literature that conveys multipolar information with reliability. In this research article, the concept of multipolar fuzzy Z-Dombi aggregation operators is first introduced. An outranking method based on the proposed multipolar fuzzy Z-Dombi aggregation operators is then developed. The proposed method is applied to a case study related to the selection of the best rehabilitation centre for the treatment of teenage drug users. The proposed method is compared with four existing techniques in multipolar fuzzy and fuzzy environments to validate the approach. A sensitivity analysis is performed to test the credibility of the study. Further, the Spearman coefficient is calculated for ranking lists obtained by different methods to verify the method’s consistency. The study’s findings are presented in graphical illustrations for a clear understanding of the results. The method shows validity through consistent comparison with four established techniques. This alignment supports its robustness and relevance in practical applications. Moreover, a positive Spearman correlation coefficient confirms its reliability by aligning rankings with expected outcomes.
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引用次数: 0
Strategic analysis of e-trade platforms in automotive spare part sector: A T-Spherical fuzzy perspective
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-22 DOI: 10.1016/j.jii.2025.100782
Ömer Faruk Görçün , Prasenjit Chatterjee , Ahmet Aytekin , Selçuk Korucuk , Dragan Pamucar
E-trade platforms are software applications that enable businesses to conduct online sales and manage their digital storefronts. These platforms provide a range of tools and features to facilitate the creation, operation, and management of an online business. This study comprehensively evaluates e-trade platforms within the automotive spare parts industry, examining various critical aspects to identify the optimal platform. The evaluation includes an in-depth analysis of the current state of the platforms, exploration of potential strategies and approaches for improvement, and identification and analysis of challenges and barriers. To address these issues, the study employs problem-solving within the framework of expert evaluations based on criteria defined by an extensive literature review. T-Spherical fuzzy (T-SF) subjective weighting approach and T-SF-weighted aggregated sum product assessment (WASPAS) method are used for this purpose. The analysis reveals that “security” is the most crucial criterion, with Amazon emerging as the most prominent e-trade platform. The findings indicate that prioritizing security, discounts, and delivery time will enable e-commerce platforms to gain a competitive edge. The study evaluates international e-commerce platforms, identifying weaknesses in critical business areas key competitive advantage factors, and offering forward-thinking recommendations. This research has significant implications for the rapid and effective development of logistical partnerships with e-trade platforms across various industries. Additionally, it serves as a foundational basis and template for future research in the e-commerce sector, particularly within the automotive spare parts industry.
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引用次数: 0
A bi-contrast self-supervised learning framework for enhancing multi-label classification in Industrial Internet of Things
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-21 DOI: 10.1016/j.jii.2025.100777
Xin Hu , Yifan Chen , Jichao Leng , Yuhua Yao , Xiaoming Hu , Zhuo Zou
In the Industrial Internet of Things (IIoT), multi-label classification is challenging due to limited labeled data, class imbalance, and the necessity to consider temporal and spatial dependencies. We propose BiConED, a bi-contrast encoder–decoder self-supervised model integrating two contrasting methods: RAC employs an encoder–decoder with augmented data to capture temporal dependencies and boost information entropy, enhancing generalization under label scarcity. QuadC captures spatial dependencies across channels through convolutions on hidden vectors. Evaluated on the real-world industrial benchmark SKAB, BiConED improves feature extraction for underrepresented classes, achieving a 26% increase in F1 score, a 67.72% reduction in False Alarm Rate (FAR), and a 57.25% decrease in Missed Alarm Rate (MAR) compared to models without the proposed contrasts. Even with limited labeled data, BiConED maintains a FAR below 1% and recovers up to 85% of the F1 score without resampling, demonstrating its robustness in imbalanced IIoT environments.
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引用次数: 0
Backpropagation neural network model with statistical inference in manufacturing processes
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-20 DOI: 10.1016/j.jii.2025.100783
Homero de León-Delgado , Rolando J. Praga-Alejo , David S. González-González
Nowadays, there is a growing need for tools to model the complex characteristics of manufacturing processes to support decision-making and optimize production and quality. This study proposes using a Backpropagation neural network (BPNN) to model manufacturing processes, leveraging its ability to capture complex and nonlinear relationships. Additionally, integrating statistical inference techniques from Generalized Linear Models (GLM) with the neural network is suggested. This integration combines the predictive capabilities of the BPNN with the statistical tools of GLMs, enhancing result interpretability and analysis accuracy. The proposed approach was applied to two manufacturing processes. In the die-casting process, the BPNN with a logit function showed a lower deviance (0.0399) compared to the probit model (0.0875) and a greater deviance difference (6.1280) with a p-value of 0.0201. Confidence intervals confirmed the significance of these results. Metal temperature and solidification time were significant predictors, with weights of -1.0375 and -0.9880, respectively. In the machining process, the BPNN model with the probit function had a lower deviance (0.0140) compared to the logit model (0.0175) and a slight precision advantage with a deviance difference of 3.9325 and a p-value of 0.0473. Parameters S1 and S2 had significant effects with weights of 72.671 and -54.397, respectively. This approach allows for selecting optimal activation functions for each process, improving efficiency and quality control in manufacturing.
{"title":"Backpropagation neural network model with statistical inference in manufacturing processes","authors":"Homero de León-Delgado ,&nbsp;Rolando J. Praga-Alejo ,&nbsp;David S. González-González","doi":"10.1016/j.jii.2025.100783","DOIUrl":"10.1016/j.jii.2025.100783","url":null,"abstract":"<div><div>Nowadays, there is a growing need for tools to model the complex characteristics of manufacturing processes to support decision-making and optimize production and quality. This study proposes using a Backpropagation neural network (BPNN) to model manufacturing processes, leveraging its ability to capture complex and nonlinear relationships. Additionally, integrating statistical inference techniques from Generalized Linear Models (GLM) with the neural network is suggested. This integration combines the predictive capabilities of the BPNN with the statistical tools of GLMs, enhancing result interpretability and analysis accuracy. The proposed approach was applied to two manufacturing processes. In the die-casting process, the BPNN with a logit function showed a lower deviance (0.0399) compared to the probit model (0.0875) and a greater deviance difference (6.1280) with a <em>p</em>-value of 0.0201. Confidence intervals confirmed the significance of these results. Metal temperature and solidification time were significant predictors, with weights of -1.0375 and -0.9880, respectively. In the machining process, the BPNN model with the probit function had a lower deviance (0.0140) compared to the logit model (0.0175) and a slight precision advantage with a deviance difference of 3.9325 and a p-value of 0.0473. Parameters S1 and S2 had significant effects with weights of 72.671 and -54.397, respectively. This approach allows for selecting optimal activation functions for each process, improving efficiency and quality control in manufacturing.</div></div>","PeriodicalId":55975,"journal":{"name":"Journal of Industrial Information Integration","volume":"44 ","pages":"Article 100783"},"PeriodicalIF":10.4,"publicationDate":"2025-01-20","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"143049838","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":1,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Realization of the physical to virtual connection for digital twin of construction crane 工程起重机数字孪生体物理到虚拟连接的实现
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-09 DOI: 10.1016/j.jii.2025.100779
Enliu Yuan , Jian Yang , Mohamed Saafi , Fei Wang , Jianqiao YE
A digital twin is an integrated multi-physics representation of a complex physical entity. This article develops the physical-to-virtual connection of the digital twin and proposes a framework for the construction of a tower crane digital twin. The main contributions of this paper include development of tower crane monitoring dataset, tower crane detection and tower crane operation mode recognition. By annotating >20,000 tower crane images in 583 tower crane videos, a tower crane image recognition dataset and a tower crane operating mode dataset are established. Yolov5x algorithm is used in the tower crane detection, and the test set detection accuracy is 93.85 %. After comparing the LSTM and CNN algorithms, 3DResNet algorithm is selected for tower crane operational mode recognition. The dataset is augmented by rotating the image and the final recognition accuracy reaches 87 %. These models can be installed on CCTV to monitor operational status of tower crane in real time and transfer relevant information to the virtual model. The tower crane in the virtual space completes the action of the physical tower crane, thereby realizing the physical-to-virtual mapping in the digital twin.
数字孪生是一个复杂物理实体的集成多物理表示。本文发展了数字孪生的物理到虚拟连接,并提出了塔机数字孪生的构建框架。本文的主要贡献包括塔机监测数据集的开发、塔机检测和塔机运行模式识别。通过对583个塔机视频中的2万张塔机图像进行标注,建立了塔机图像识别数据集和塔机运行模式数据集。塔机检测采用Yolov5x算法,测试集检测准确率为93.85%。在比较LSTM算法和CNN算法后,选择3DResNet算法进行塔机运行模式识别。通过旋转图像增强数据集,最终识别准确率达到87%。这些模型可以安装在CCTV上,实时监控塔机的运行状态,并将相关信息传递给虚拟模型。虚拟空间中的塔机完成了物理塔机的动作,从而实现了数字孪生体中物理到虚拟的映射。
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引用次数: 0
Multi-criteria group decision-making with spherical fuzzy rough numbers for biomedical materials in hip prosthesis 人工髋关节生物医用材料球形模糊粗糙数多准则群体决策
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-06 DOI: 10.1016/j.jii.2024.100766
Muhammad Akram , Maheen Sultan , Cengiz Kahraman
Biomedical materials play a crucial role in modern medicine, helping restore and enhance function after injury or illness. These materials, whether natural or synthetic, are used in clinical applications to support, reinforce, or replace damaged tissues or biological functions. This study focuses on the effectiveness and advancements of biomedical materials in hip replacement surgery, offering various solutions for the recovery of different hip injuries. To compute biocompatibility and biodegradability of biomedical materials in hip prosthesis, this research paper develops a multi-criteria group decision making technique to encompass all aspects of an issue under consideration within a decision-making team’s governance. The suggested multi-criteria decision making outranking technique combined with spherical fuzzy rough approach excels in a unique way by encapsulating the capabilities to handle pseudo criteria and compare the considered options by referring to the indifference, strong and weak preference relation. Moreover, the proposed outranking technique effectively employs spherical fuzzy rough numbers to minimize subjective bias while addressing varying degrees of uncertainty. The practical implication of the proposed technique is addressed by considering the case study of material selection in hip prosthesis. Finally, the validity of the proposed technique is confirmed by comparing it with existing methods, and the selection of the same best alternative across all techniques reinforces its credibility.
生物医学材料在现代医学中发挥着至关重要的作用,有助于在受伤或疾病后恢复和增强功能。这些材料,无论是天然的还是合成的,在临床应用中用于支持、加强或替换受损的组织或生物功能。本研究主要关注生物医学材料在髋关节置换术中的有效性和进展,为不同髋关节损伤的恢复提供多种解决方案。为了计算生物医学材料在髋关节假体中的生物相容性和生物降解性,本研究开发了一种多标准群体决策技术,以涵盖决策团队治理中考虑的问题的所有方面。本文提出的多准则决策排序技术与球面模糊粗糙法相结合,封装了伪准则的处理能力,并根据无差异偏好关系、强弱偏好关系对所考虑的选项进行比较,具有独特的优势。此外,所提出的超越排序技术有效地利用球形模糊粗糙数来最小化主观偏差,同时解决不同程度的不确定性。通过对人工髋关节材料选择的案例研究,阐述了该技术的实际意义。最后,通过与现有方法的比较,证实了所提出技术的有效性,并且在所有技术中选择相同的最佳替代方案增强了其可信度。
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引用次数: 0
An industrial dataspace for automotive supply chain: Secure data sharing based on data association relationship 汽车供应链的工业数据空间:基于数据关联关系的安全数据共享
IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-01-05 DOI: 10.1016/j.jii.2025.100778
Yuqiao Liao, Xianguang Kong, Lei Yin, Yunpeng Gao, Xinghua Dong
The automotive supply chain (ASC) is a complex system involving every aspect of automobile manufacturing, from which the data obtained features such as massive volume, diverse types, and complex relationships. Traditional data management methods no longer meet the demands of handling heterogeneous data from multiple sources or ensuring secure cross-domain data sharing in the ASC, which leads to the isolation of information. Therefore, this paper proposes a data management method based on Industrial Dataspace (IDS), constructs a dataspace architecture for the automotive supply chain (DS-ASC). On this basis, proposes a method for data relationship mining and trusted data sharing that considers implicit associations among ASC members. The improved BiLSTM model promotes the understanding of data, and the improved DPoS algorithm reduces the risk of data leakage. Our method is validated in the practical application of a supply chain master enterprise, and the experiments show that the method proposed in this paper is able to effectively improve the accuracy of mining data association relationship. Meanwhile, it is able to prevent single-point attacks, and ensure the security of data sharing.
汽车供应链是一个涉及汽车制造各个环节的复杂系统,其数据具有量大、类型多、关系复杂等特点。传统的数据管理方法已不能满足ASC中处理多源异构数据或保证跨域数据安全共享的需求,导致信息的隔离。为此,本文提出了一种基于工业数据空间(IDS)的数据管理方法,构建了面向汽车供应链的数据空间体系结构(DS-ASC)。在此基础上,提出了一种考虑ASC成员间隐式关联的数据关系挖掘和可信数据共享方法。改进的BiLSTM模型促进了对数据的理解,改进的DPoS算法降低了数据泄露的风险。我们的方法在供应链主企业的实际应用中得到了验证,实验表明本文提出的方法能够有效地提高数据关联关系挖掘的准确性。同时能够防止单点攻击,保证数据共享的安全性。
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引用次数: 0
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Journal of Industrial Information Integration
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