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Keywords = computer-aided maintenance

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19 pages, 2415 KB  
Article
Thermal–Electrical Fusion for Real-Time Condition Monitoring of IGBT Modules in Transportation Systems
by Man Cui, Yun Liu, Zhen Hu and Tao Shi
Micromachines 2026, 17(2), 154; https://doi.org/10.3390/mi17020154 - 25 Jan 2026
Viewed by 251
Abstract
The operational reliability of Insulated Gate Bipolar Transistor (IGBT) modules in demanding transportation applications, such as traction systems, is critically challenged by solder layer and bond wire failures under cyclic thermal stress. To address this, this paper proposes a novel health monitoring framework [...] Read more.
The operational reliability of Insulated Gate Bipolar Transistor (IGBT) modules in demanding transportation applications, such as traction systems, is critically challenged by solder layer and bond wire failures under cyclic thermal stress. To address this, this paper proposes a novel health monitoring framework that innovatively synergizes micro-scale spatial thermal analysis with microsecond electrical dynamics inversion. The method requires only non-invasive temperature measurements on the module baseplate and utilizes standard electrical signals (load current, duty cycle, switching frequency, DC-link voltage) readily available from the converter’s controller, enabling simultaneous diagnosis without dedicated voltage or high-bandwidth current sensors. First, a non-invasive assessment of solder layer fatigue is achieved by correlating the normalized thermal gradient (TP) on the baseplate with the underlying thermal impedance (ZJC). Second, for bond wire aging, a cost-effective inversion algorithm estimates the on-state voltage (Vce,on) by calculating the total power loss from temperature, isolating the conduction loss (Pcond) with the aid of a Foster-model-based junction temperature (TJ) estimate, and finally computing Vce,on at a unique current inflection point (IC,inf) to nullify TJ dependency. Third, the health states from both failure modes are fused for comprehensive condition evaluation. Experimental validation confirms the method’s accuracy in tracking both degradation modes. This work provides a practical and economical solution for online IGBT condition monitoring, enhancing the predictive maintenance and operational safety of transportation electrification systems. Full article
(This article belongs to the Special Issue Insulated Gate Bipolar Transistor (IGBT) Modules, 2nd Edition)
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29 pages, 1280 KB  
Review
Idiopathic Pulmonary Fibrosis: A Comprehensive Review of Risk Factors, Genetics, Diagnosis, and Therapeutic Approaches
by Lamiyae Senhaji, Nadia Senhaji, Meriame Abbassi, Mariem Karhate, Mounia Serraj, Mohammed El Biaze, Mohamed Chakib Benjelloun, Karim Ouldim, Laila Bouguenouch and Bouchra Amara
Biomedicines 2026, 14(1), 90; https://doi.org/10.3390/biomedicines14010090 - 1 Jan 2026
Viewed by 998
Abstract
Idiopathic Pulmonary Fibrosis (IPF) is a severe, chronic, progressive lung disease classified within interstitial lung disorders. It predominantly affects individuals aged 50 to 70 years, with a prognosis of 3–5 years post-diagnosis. The pathophysiology of IPF is complex, involving an interplay of genetic [...] Read more.
Idiopathic Pulmonary Fibrosis (IPF) is a severe, chronic, progressive lung disease classified within interstitial lung disorders. It predominantly affects individuals aged 50 to 70 years, with a prognosis of 3–5 years post-diagnosis. The pathophysiology of IPF is complex, involving an interplay of genetic predisposition, environmental exposures, and age-related factors. A significant genetic component is evident, with key contributions from rare variants in telomere maintenance genes (e.g., TERT and TERC) and surfactant protein genes (e.g., SFTPA and SFTPC), as well as a strong association with a common promoter variant in the MUC5B gene. The diagnosis is established through high-resolution computed tomography (HRCT) and, when necessary, histopathological analysis. The search for reliable biomarkers is a key area of research, with molecules such as KL-6, SP-A, SP-D, and MMP-7 showing potential for aiding in diagnosis, prognosis, and monitoring disease activity. While antifibrotic therapies (Pirfenidone and Nintedanib) have revolutionized management by slowing the decline in lung function, the therapeutic landscape continues to evolve. Ongoing research efforts are focused on integrating clinical, radiological, genetic, and biomarker data to facilitate early diagnosis and develop personalized treatment strategies to improve patient outcomes. Full article
(This article belongs to the Special Issue New Advances in Pulmonary Fibrosis)
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21 pages, 898 KB  
Article
Adoption of BIM in Architectural Firms in Nigeria: A Survey of Current Practices, Challenges and Enablers
by Destiny Omokhua, Mohammad Mayouf, Ilnaz Ashayeri, E. M. A. C. Ekanayake and Bushra Zalloom
Buildings 2025, 15(24), 4547; https://doi.org/10.3390/buildings15244547 - 16 Dec 2025
Cited by 1 | Viewed by 550
Abstract
Building Information Modelling (BIM) has increasingly transformed global architectural and construction practices by enhancing collaboration, design accuracy, and project efficiency. However, BIM adoption remains slow in several developing countries, including Nigeria, where architectural firms play a critical role in driving digital transformation across [...] Read more.
Building Information Modelling (BIM) has increasingly transformed global architectural and construction practices by enhancing collaboration, design accuracy, and project efficiency. However, BIM adoption remains slow in several developing countries, including Nigeria, where architectural firms play a critical role in driving digital transformation across the wider construction sector. This study investigates the current level of BIM implementation within Nigerian architectural practices and identifies key factors that either enable or constrain its uptake. Survey findings (77 responses; 77% response rate), analysed using SPSS 26.0 and the Relative Importance Index (RII), reveal that although some firms have begun integrating BIM tools, many still rely heavily on traditional 2D CAD (Computer-Aided Design) workflows. Major barriers include high software acquisition and maintenance costs, limited technical expertise, and insufficient organisational readiness. The results highlight the urgent need for government incentives, targeted capacity-building programmes, and industry-wide digital skill development to accelerate BIM diffusion among architectural firms, whose early adoption is essential for sector-wide modernisation. Future research should explore how socio-technical alignment can reshape BIM-enabled workflows to generate measurable value for clients, contractors, and end users. Examining collaborative data environments, information exchange standards, and participatory design practices will be crucial for demonstrating BIM’s long-term return on investment and establishing sustainable digital transformation pathways within Nigeria’s architectural and construction industries. Full article
(This article belongs to the Section Construction Management, and Computers & Digitization)
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5 pages, 169 KB  
Proceeding Paper
Analysis of Digital Tool Implementation in Building Operations
by Jozef Švajlenka, Pavol Packo and Denis Konovalov
Eng. Proc. 2025, 116(1), 7; https://doi.org/10.3390/engproc2025116007 - 28 Nov 2025
Viewed by 272
Abstract
Digitalization is becoming one of the key trends in contemporary construction, playing a particularly important role in the building operation phase. This phase represents the longest period of a building’s life cycle and is simultaneously associated with high operational costs. The aim of [...] Read more.
Digitalization is becoming one of the key trends in contemporary construction, playing a particularly important role in the building operation phase. This phase represents the longest period of a building’s life cycle and is simultaneously associated with high operational costs. The aim of the presented research was to analyze the views of experts and professionals working in the field of building management and operation on the use of digital tools, their perception of the level of digitalization, and the potential for further development. The research was conducted in the form of a questionnaire survey. The results show that in most cases, basic software tools prevail, while the use of advanced platforms such as CMMS (Computerized Maintenance Management System) or CAFM (Computer-Aided Facility Management) systems remains limited. Only one quarter of respondents actively use IoT sensors, which represent an innovative element with high potential for efficient building operation and sustainability. Paradoxically, some respondents perceive even the use of basic software as representing significant digitalization. The most digitalized areas include financial administration, security systems, and energy management, while digital building passports and workspace management remain on the periphery. The findings highlight the uneven application of digital tools and the need for their broader implementation, which can significantly contribute to the efficiency and sustainability of building management. Full article
10 pages, 9327 KB  
Case Report
Retrograde Vital Pulp Treatment in External Root Resorption Due to Third Molar Impaction: A Proof-of-Concept and Case Report
by Emanuele Ambu, José Luis Sanz, Roberto Ghiretti, Francesco Bellucci, Carlo Gaeta, Simone Grandini, James Ghilotti and Leopoldo Forner
J. Clin. Med. 2025, 14(16), 5828; https://doi.org/10.3390/jcm14165828 - 18 Aug 2025
Cited by 1 | Viewed by 1834
Abstract
Background/Aim: Third molar impaction with the consequent root resorption of second molars often creates complexities in treatment planning and execution. In the past, the root canal treatment (RCT) of second molars was required in these cases to avoid pulp necrosis and infection. [...] Read more.
Background/Aim: Third molar impaction with the consequent root resorption of second molars often creates complexities in treatment planning and execution. In the past, the root canal treatment (RCT) of second molars was required in these cases to avoid pulp necrosis and infection. The aim of this paper is to report a surgical/retrograde approach for the maintenance of pulp vitality, proposed as retrograde vital pulp treatment (rVPT), in cases of asymptomatic or reversibly affected teeth with root resorptions caused by impacted adjacent teeth. Methods: A case report on the rVPT of two upper second molars with root resorption due to third molar impaction is presented. The chief complaint of the patient was a slight pain during bite involving the upper second molars. Heat and cold sensitivity tests were performed, suggesting a healthy pulp status. A cone beam computed tomography (CBCT) scan was performed to aid the diagnosis and treatment planning, showing bilateral upper third molar impaction and both distal roots of the upper second molars affected by external root resorption (ERR). In both cases, the third molar was surgically extracted, the surface of the root with ERR was smoothened and rVPT was carried out by performing a 3 mm retrograde preparation of the root canal and its retrograde sealing using a hydraulic calcium silicate-based cement (hCSCs). Results: Heat and cold sensitivity tests were performed 1 month, 3 months, 6 months and 1 year after the treatment. The patient reported no pain, and the pulp sensitivity was maintained in all follow-up periods. A CBCT scan was performed 24 months after the treatment, reporting a complete perirradicular endogenous bone apposition. Conclusions: Based on the successful clinical and radiographic outcomes observed in the present case after two years of follow-up, rVPT is proposed for the maintenance of pulp vitality in cases of asymptomatic or reversibly affected teeth with ERR caused by impacted adjacent teeth. Full article
(This article belongs to the Section Dentistry, Oral Surgery and Oral Medicine)
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25 pages, 1932 KB  
Article
Enhancing Facility Management with Emerging Technologies: A Study on the Application of Blockchain and NFTs
by Andrea Bongini, Marco Sparacino, Luca Marzi and Carlo Biagini
Buildings 2025, 15(11), 1911; https://doi.org/10.3390/buildings15111911 - 1 Jun 2025
Viewed by 1114
Abstract
In recent years, Facility Management has undergone significant technological and methodological advancements, primarily driven by Building Information Modelling (BIM), Computer-Aided Facility Management (CAFM), and Computerized Maintenance Management Systems (CMMS). These innovations have improved process efficiency and risk management. However, challenges remain in asset [...] Read more.
In recent years, Facility Management has undergone significant technological and methodological advancements, primarily driven by Building Information Modelling (BIM), Computer-Aided Facility Management (CAFM), and Computerized Maintenance Management Systems (CMMS). These innovations have improved process efficiency and risk management. However, challenges remain in asset management, maintenance, traceability, and transparency. This study investigates the potential of blockchain technology and non-fungible tokens (NFTs) to address these challenges. By referencing international (ISO, BOMA) and European (EN) standards, the research develops an asset management process model incorporating blockchain and NFTs. The methodology includes evaluating the technical and practical aspects of this model and strategies for metadata utilization. The model ensures an immutable record of transactions and maintenance activities, reducing errors and fraud. Smart contracts automate sub-phases like progress validation and milestone-based payments, increasing operational efficiency. The study’s practical implications are significant, offering advanced solutions for transparent, efficient, and secure Facility Management. It lays the groundwork for future research, emphasizing practical implementations and real-world case studies. Additionally, integrating blockchain with emerging technologies like artificial intelligence and machine learning could further enhance Facility Management processes. Full article
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19 pages, 6390 KB  
Article
AI-Based Smart Monitoring Framework for Livestock Farms
by Moonsun Shin, Seonmin Hwang and Byungcheol Kim
Appl. Sci. 2025, 15(10), 5638; https://doi.org/10.3390/app15105638 - 18 May 2025
Cited by 5 | Viewed by 5344
Abstract
Smart farms refer to spaces and technologies that utilize networks and automation to monitor and manage the environment and livestock without the constraints of time and space. As various devices installed on farms are connected to a network and automated, farm conditions can [...] Read more.
Smart farms refer to spaces and technologies that utilize networks and automation to monitor and manage the environment and livestock without the constraints of time and space. As various devices installed on farms are connected to a network and automated, farm conditions can be observed remotely anytime and anywhere via smartphones or computers. These smart farms have evolved into smart livestock farming, which involves collecting, analyzing, and sharing data across the entire process from livestock production and growth to post-shipment distribution and consumption. This data-driven approach aids decision-making and creates new value. However, in the process of evolving smart farm technology into smart livestock farming, challenges remain in the essential requirements of data collection and intelligence. Many livestock farms face difficulties in applying intelligent technologies. In this paper, we propose an intelligent monitoring system framework for smart livestock farms using artificial intelligence technology and implement deep learning-based intelligent monitoring. To detect cattle lesions and inactive individuals within the barn, we apply the RT-DETR method instead of the traditional YOLO model. YOLOv5 and YOLOv8 are representative models in the YOLO series, both of which utilize Non-Maximum Suppression (NMS). NMS is a postprocessing technique used to eliminate redundant bounding boxes by calculating the Intersection over Union (IoU) between all predicted boxes. However, this process can be computationally intensive and may negatively impact both speed and accuracy in object detection tasks. In contrast, RT-DETR (Real-Time Detection Transformer) is a Transformer-based real-time object detection model that does not require NMS and achieves higher accuracy compared to the YOLO models. Given environments where large-scale datasets can be obtained via CCTV, Transformer-based detection methods like RT-DETR are expected to outperform traditional YOLO approaches in terms of detection performance. This approach reduces computational costs and optimizes query initialization, making it more suitable for the real-time detection of cattle maintenance behaviors and related abnormal behavior detection. Comparative analysis with the existing YOLO technique verifies RT-DETR and confirms that RT-DETR shows higher performance than YOLOv8. This research contributes to resolving the low accuracy and high redundancy of traditional YOLO models in behavior recognition, increasing the efficiency of livestock management, and improving productivity by applying deep learning to the smart monitoring of livestock farms. Full article
(This article belongs to the Special Issue Future Information & Communication Engineering 2024)
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16 pages, 4118 KB  
Article
Reinforcement Learning-Based Augmentation of Data Collection for Bayesian Optimization Towards Radiation Survey and Source Localization
by Jeremy Marquardt, Leonard Lucas and Stylianos Chatzidakis
J. Nucl. Eng. 2025, 6(2), 10; https://doi.org/10.3390/jne6020010 - 15 Apr 2025
Viewed by 1307
Abstract
Safer and more efficient characterization of radioactive environments requires exploring intelligently, utilizing robotic systems which use smart strategies and physics-based statistical models. Bayesian Optimization (BO) provides one such statistical framework to explainably find the global maximum within noisy contexts while also minimizing the [...] Read more.
Safer and more efficient characterization of radioactive environments requires exploring intelligently, utilizing robotic systems which use smart strategies and physics-based statistical models. Bayesian Optimization (BO) provides one such statistical framework to explainably find the global maximum within noisy contexts while also minimizing the number of trials. For radiation survey and source location, the aid of such a machine learning algorithm could significantly cut down on time and health risks required for maintenance and emergency response scenarios. Maintaining the explainability while increasing the efficiency of the search has been found possible by including the high uncertainty data that is picked up while the agent is in transit. Now that the paths of transit matter to data acquisition they could be optimized as well. This paper introduces reinforcement learning (RL) to the BO search framework. The behavior of this RL additive is observed in simulation over three different datasets of real radiation data. It is shown that the RL additive can cause significant increases to the score of the maximum point discovered, but the computational time cost is increased by nearly 100% while the reconstructed radiation field root mean square error (RMSE) of the BO+RL algorithm matches BO performance within 1%. Full article
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28 pages, 739 KB  
Article
Cooperative Overbooking-Based Resource Allocation and Application Placement in UAV-Mounted Edge Computing for Internet of Forestry Things
by Xiaoyu Li, Long Suo, Wanguo Jiao, Xiaoming Liu and Yunfei Liu
Drones 2025, 9(1), 22; https://doi.org/10.3390/drones9010022 - 29 Dec 2024
Cited by 2 | Viewed by 1329
Abstract
Due to the high mobility and low cost, unmanned aerial vehicle (UAV)-mounted edge computing (UMEC) provides an efficient way to provision computing offloading services for Internet of Forestry Things (IoFT) applications in forest areas without sufficient infrastructure. Multiple IoFT applications can be consolidated [...] Read more.
Due to the high mobility and low cost, unmanned aerial vehicle (UAV)-mounted edge computing (UMEC) provides an efficient way to provision computing offloading services for Internet of Forestry Things (IoFT) applications in forest areas without sufficient infrastructure. Multiple IoFT applications can be consolidated into fewer UAV-mounted servers to improve the resource utilization and reduce deployment costs with the precondition that all applications’ Quality of Service (QoS) can be met. However, most existing application placement schemes in UMEC did not consider the dynamic nature of the aggregated computing resource demand. In this paper, the resource allocation and application placement problem based on fine-grained cooperative overbooking in UMEC is studied. First, for the two-tenant overbooking case, a Two-tenant Cooperative Resource Overbooking (2CROB) scheme is designed, which allows tenants to share resource demand violations (RDVs) in the cooperative overbooking region. In 2CROB, an aggregated-resource-demand minimization problem is modeled, and a bisection search algorithm is designed to obtain the minimized aggregated resource demand. Second, for the multiple-tenant overbooking case, a Proportional Fairness-based Cooperative Resource Overbooking (PF-MCROB) scheme is designed, and a bisection search algorithm is also designed to obtain the corresponding minimized aggregated resource demand. Then, on the basis of PF-MCROB, a First Fit Decreasing-based Cooperative Application Placement (FFD-CAP) scheme is proposed to accommodate applications in as few servers as possible. Simulation results verify that the proposed cooperative resource overbooking schemes can save more computing resource in cases including more tenants with higher or differentiated resource demand violation ratio (RDVR) thresholds, and the FFD-ACP scheme can reduce about one third of necessarily deployed UAVs compared with traditional overbooking. Thus, applying efficient cooperative overbooking in application placement can considerably reduce deployment and maintenance costs and improve onboard computing resource utilization and operating revenues in UMEC-aided IoFT applications. Full article
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15 pages, 5502 KB  
Article
Street View Image-Based Road Marking Inspection System Using Computer Vision and Deep Learning Techniques
by Junjie Wu, Wen Liu and Yoshihisa Maruyama
Sensors 2024, 24(23), 7724; https://doi.org/10.3390/s24237724 - 3 Dec 2024
Cited by 12 | Viewed by 3501
Abstract
Road markings are vital to the infrastructure of roads, conveying extensive guidance and information to drivers and autonomous vehicles. However, road markings will inevitably wear out over time and impact traffic safety. At the same time, the inspection and maintenance of road markings [...] Read more.
Road markings are vital to the infrastructure of roads, conveying extensive guidance and information to drivers and autonomous vehicles. However, road markings will inevitably wear out over time and impact traffic safety. At the same time, the inspection and maintenance of road markings is an enormous burden on human and economic resources. Considering this, we propose a road marking inspection system using computer vision and deep learning techniques with the aid of street view images captured by a regular digital camera mounted on a vehicle. The damage ratio of road markings was measured according to both the undamaged region and region of road markings using semantic segmentation, inverse perspective mapping, and image thresholding approaches. Furthermore, a road marking damage detector that uses the YOLOv11x model was developed based on the damage ratio of road markings. Finally, the mean average precision achieves 73.5%, showing that the proposed system successfully automates the inspection process for road markings. In addition, we introduce the Road Marking Damage Detection Dataset (RMDDD), which has been made publicly available to facilitate further research in this area. Full article
(This article belongs to the Special Issue AI and Sensors in Smart Cities)
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15 pages, 2141 KB  
Article
An Optimization Model for Production Scheduling in Parallel Machine Systems
by Leting Zu, Wenzhu Liao and Xiaoxia Yang
Axioms 2024, 13(12), 848; https://doi.org/10.3390/axioms13120848 - 2 Dec 2024
Viewed by 2491
Abstract
The efficiency and quality of the manufacturing industry are greatly influenced by production scheduling, which makes it a crucial aspect. A well-designed production scheduling scheme can significantly enhance manufacturing efficiency and reduce enterprise costs. This paper presents a tailored optimization model designed to [...] Read more.
The efficiency and quality of the manufacturing industry are greatly influenced by production scheduling, which makes it a crucial aspect. A well-designed production scheduling scheme can significantly enhance manufacturing efficiency and reduce enterprise costs. This paper presents a tailored optimization model designed to address a more complex production scheduling problem that incorporates parallel machines and preventive maintenance. The proposed solutions aim to achieve a balance between job sequence and machine reliability, considering the minimum maintenance cost rate for determining maintenance cycles of deteriorating machines in real manufacturing scenarios. Furthermore, the objective of minimizing the maximum completion time guides machine assignment and job sequence based on maintenance constraints. The innovation lies in the introduction of a greedy algorithm that utilizes a water injection model to address this NP-hard integrated problem. A pre-distribution model is constructed using the water injection model, and its solution is utilized as input for constructing the production scheduling model, which aids in determining machine assignment and job sequence. This algorithm demonstrates remarkable effectiveness and efficiency, enabling the achievement of an optimal solution. A numerical example is presented to illustrate the computational process, accompanied by an extensive discussion of the results showcasing improved performance. Furthermore, the optimization model developed in this paper can be adapted to tackle the production scheduling problem with modifications tailored for parallel machines. Full article
(This article belongs to the Special Issue Advances in Mathematical Modeling, Analysis and Optimization)
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24 pages, 28407 KB  
Article
Methodology for 3D Management of University Faculties Using Integrated GIS and BIM Models: A Case Study
by César A. Carrasco, Ignacio Lombillo, Javier M. Sánchez-Espeso, Haydee Blanco and Yosbel Boffill
Buildings 2024, 14(11), 3547; https://doi.org/10.3390/buildings14113547 - 6 Nov 2024
Cited by 2 | Viewed by 1780
Abstract
Three-dimensional virtual modeling is one of the tools being rapidly implemented in the construction industry, leading to the need for strategies based on intelligent 3D models of cities and/or digital twins, which allow simulation by interacting with their real physical counterparts, anticipating the [...] Read more.
Three-dimensional virtual modeling is one of the tools being rapidly implemented in the construction industry, leading to the need for strategies based on intelligent 3D models of cities and/or digital twins, which allow simulation by interacting with their real physical counterparts, anticipating the outcomes of decision making. In practice, problems arise when creating and managing these twins, as different data, models, technology, and tools must be used, and they cannot all be combined as desired due to certain incompatibilities. On the other hand, today’s traditional building management demands a more optimized process to prevent errors and enable timely reactions to failures and defects. Managing and using a large amount of complex and disparate data are required, which is why the use of CMMS-type software is common (Computerized Maintenance Management System). However, such software is rarely designed for management in a 3D format, often due to the absence of three-dimensional models of the assets. This research aims to contribute to the technological development of the digitalization of the built environment, providing a simple methodology for generating and managing 3D models of cities. To achieve this, the tools and information useful for generating an integrated GIS 3D and BIM model, and for Computer-Aided Maintenance Management in a three-dimensional format (CMMS-3D), are identified. The final model obtained is used to optimize the three-dimensional management of a classroom building on the “Campus de Las Llamas” at the University of Cantabria in Spain. The results demonstrate that it is possible to integrate digital models with simple linking mechanisms between the existing tools, thus achieving an optimal three-dimensional management model. Full article
(This article belongs to the Special Issue Selected Papers from the REHABEND 2024 Congress)
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27 pages, 3396 KB  
Review
Internet of Things and Distributed Computing Systems in Business Models
by Albérico Travassos Rosário and Ricardo Raimundo
Future Internet 2024, 16(10), 384; https://doi.org/10.3390/fi16100384 - 21 Oct 2024
Cited by 5 | Viewed by 4005
Abstract
The integration of the Internet of Things (IoT) and Distributed Computing Systems (DCS) is transforming business models across industries. IoT devices allow immediate monitoring of equipment and processes, mitigating lost time and enhancing efficiency. In this case, manufacturing companies use IoT sensors to [...] Read more.
The integration of the Internet of Things (IoT) and Distributed Computing Systems (DCS) is transforming business models across industries. IoT devices allow immediate monitoring of equipment and processes, mitigating lost time and enhancing efficiency. In this case, manufacturing companies use IoT sensors to monitor machinery, predict failures, and schedule maintenance. Also, automation via IoT reduces manual intervention, resulting in boosted productivity in smart factories and automated supply chains. IoT devices generate this vast amount of data, which businesses analyze to gain insights into customer behavior, operational inefficiencies, and market trends. In turn, Distributed Computing Systems process this data, providing actionable insights and enabling advanced analytics and machine learning for future trend predictions. While, IoT facilitates personalized products and services by collecting data on customer preferences and usage patterns, enhancing satisfaction and loyalty, IoT devices support new customer interactions, like wearable health devices, and enable subscription-based and pay-per-use models in transportation and utilities. Conversely, real-time monitoring enhances security, as distributed systems quickly respond to threats, ensuring operational safety. It also aids regulatory compliance by providing accurate operational data. In this way, this study, through a Bibliometric Literature Review (LRSB) of 91 screened pieces of literature, aims at ascertaining to what extent the aforementioned capacities, overall, enhance business models, in terms of efficiency and effectiveness. The study concludes that those systems altogether leverage businesses, promoting competitive edge, continuous innovation, and adaptability to market dynamics. In particular, overall, the integration of both IoT and Distributed Systems in business models augments its numerous advantages: it develops smart infrastructures e.g., smart grids; edge computing that allows data processing closer to the data source e.g., autonomous vehicles; predictive analytics, by helping businesses anticipate issues e.g., to foresee equipment failures; personalized services e.g., through e-commerce platforms of personalized recommendations to users; enhanced security, while reducing the risk of centralized attacks e.g., blockchain technology, in how IoT and Distributed Computing Systems altogether impact business models. Future research avenues are suggested. Full article
(This article belongs to the Collection Information Systems Security)
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16 pages, 8376 KB  
Article
Virtual Tours as Effective Complement to Building Information Models in Computer-Aided Facility Management Using Internet of Things
by Sergi Aguacil Moreno, Matthias Loup, Morgane Lebre, Laurent Deschamps, Jean-Philippe Bacher and Sebastian Duque Mahecha
Appl. Sci. 2024, 14(17), 7998; https://doi.org/10.3390/app14177998 - 7 Sep 2024
Cited by 3 | Viewed by 2924
Abstract
This study investigates the integration of Building Information Models (BIMs) and Virtual Tour (VT) environments in the Architecture, Engineering and Construction (AEC) industry, focusing on Computer-Aided Facility Management (CAFM), Computerized Maintenance Management Systems (CMMSs), and data Life-Cycle Assessment (LCA). The interconnected nature of [...] Read more.
This study investigates the integration of Building Information Models (BIMs) and Virtual Tour (VT) environments in the Architecture, Engineering and Construction (AEC) industry, focusing on Computer-Aided Facility Management (CAFM), Computerized Maintenance Management Systems (CMMSs), and data Life-Cycle Assessment (LCA). The interconnected nature of tasks throughout a building’s life cycle increasingly demands a seamless integration of real-time monitoring, 3D models, and building data technologies. While there are numerous examples of effective links between IoT and BIMs, as well as IoT and VTs, a research gap exists concerning VT-BIM integration. This article presents a technical solution that connects BIMs and IoT data using VTs to enhance workflow efficiency and information transfer. The VT is developed upon a pilot based on the Controlled Environments for Living Lab Studies (CELLS), a unique facility designed for flexible monitoring and remote-control processes that incorporate BIMs and IoT technologies. The findings offer valuable insights into the potential of VTs to complement and connect to BIMs from a life-cycle perspective, improving the usability of digital twins for beginner users and contributing to the advancement of the AEC and CAFM industries. Our technical solution helps complete the connectivity of BIMs-VT-IoT, providing an intuitive interface (VT) for rapid data visualisation and access to dashboards, models and building databases. The practical field of application is facility management, enhancing monitoring and asset management tasks. This includes (a) sensor data monitoring, (b) remote control of connected equipment, and (c) centralised access to asset-space information bridging BIM and visual (photographic/video) data. Full article
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21 pages, 9916 KB  
Article
Milliwatt μ-TEG-Powered Vibration Monitoring System for Industrial Predictive Maintenance Applications
by Raúl Aragonés, Roger Malet, Joan Oliver, Alex Prim, Denis Mascarell, Marc Salleras, Luis Fonseca, Alex Rodríguez-Iglesias, Albert Tarancón, Alex Morata, Federico Baiutti and Carles Ferrer
Information 2024, 15(9), 545; https://doi.org/10.3390/info15090545 - 6 Sep 2024
Cited by 3 | Viewed by 5188
Abstract
This paper presents a novel waste-heat-powered, wireless, and battery-less Industrial Internet of Things (IIoT) device designed for predictive maintenance in Industry 4.0 environments. With a focus on real-time quality data, this device addresses the limitations of current battery-operated IIoT devices, such as energy [...] Read more.
This paper presents a novel waste-heat-powered, wireless, and battery-less Industrial Internet of Things (IIoT) device designed for predictive maintenance in Industry 4.0 environments. With a focus on real-time quality data, this device addresses the limitations of current battery-operated IIoT devices, such as energy consumption, transmission range, data rate, and constant quality of service. It is specifically developed for heat-intensive industries (e.g., iron and steel, cement, petrochemical, etc.), where self-heating nodes, low-power processing platforms, and industrial sensors align with the stringent requirements of industrial monitoring. The presented IIoT device uses thermoelectric generators based on the Seebeck effect to harness waste heat from any hot surface, such as pipes or chimneys, ensuring continuous power without the need for batteries. The energy that is recovered can be used to power devices using mid-range wireless protocols like Bluetooth 5.0, minimizing the need for extensive in-house wireless infrastructure and incorporating light-edge computing. Consequently, up to 98% of cloud computation efforts and associated greenhouse gas emissions are reduced as data is processed within the IoT device. From the environmental perspective, the deployment of such self-powered IIoT devices contributes to reducing the carbon footprint in energy-demanding industries, aiding their digitalization transition towards the industry 5.0 paradigm. This paper presents the results of the most challenging energy harvesting technologies based on an all-silicon micro thermoelectric generator with planar architecture. The effectiveness and self-powering ability of the selected model, coupled with an ultra-low-power processing platform and Bluetooth 5 connectivity, are validated in an equivalent industrial environment to monitor vibrations in an electric machine. This approach aligns with the EU’s strategic objective of achieving net zero manufacturing capacity for renewable energy technologies, enhancing its position as a global leader in renewable energy technology (RET). Full article
(This article belongs to the Special Issue IoT-Based Systems for Resilient Smart Cities)
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