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Search Results (1,766)

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Keywords = hierarchical management

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19 pages, 2520 KiB  
Article
Research on a Blockchain-Based Quality and Safety Traceability System for Hymenopellis raphanipes
by Wei Xu, Hongyan Guo, Xingguo Zhang, Mingxia Lin and Pingzeng Liu
Sustainability 2025, 17(16), 7413; https://doi.org/10.3390/su17167413 (registering DOI) - 16 Aug 2025
Abstract
Hymenopellis raphanipes is a high-value edible fungus with a short shelf life and high perishability, which poses significant challenges for quality control and safety assurance throughout its supply chain. Ensuring effective traceability is essential for improving production management, strengthening consumer trust, and supporting [...] Read more.
Hymenopellis raphanipes is a high-value edible fungus with a short shelf life and high perishability, which poses significant challenges for quality control and safety assurance throughout its supply chain. Ensuring effective traceability is essential for improving production management, strengthening consumer trust, and supporting brand development. This study proposes a comprehensive traceability system tailored to the full lifecycle of Hymenopellis raphanipes, addressing the operational needs of producers and regulators alike. Through detailed analysis of the entire supply chain, from raw material intake, cultivation, and processing to logistics and sales, the system defines standardized traceability granularity and a unique hierarchical coding scheme. A multi-layered system architecture is designed, comprising a data acquisition layer, network transmission layer, storage management layer, service orchestration layer, business logic layer, and user interaction layer, ensuring modularity, scalability, and maintainability. To address performance bottlenecks in traditional systems, a multi-chain collaborative traceability model is introduced, integrating a mainchain–sidechain storage mechanism with an on-chain/off-chain hybrid management strategy. This approach effectively mitigates storage overhead and enhances response efficiency. Furthermore, data integrity is verified through hash-based validation, supporting high-throughput queries and reliable traceability. Experimental results from its real-world deployment demonstrate that the proposed system significantly outperforms traditional single-chain models in terms of query latency and throughput. The solution enhances data transparency and regulatory efficiency, promotes sustainable practices in green agricultural production, and offers a scalable reference model for the traceability of other high-value agricultural products. Full article
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30 pages, 388 KiB  
Article
Do Security and Privacy Attitudes and Concerns Affect Travellers’ Willingness to Use Mobility-as-a-Service (MaaS) Systems?
by Maria Sophia Heering, Haiyue Yuan and Shujun Li
Information 2025, 16(8), 694; https://doi.org/10.3390/info16080694 - 15 Aug 2025
Abstract
Mobility-as-a-Service (MaaS) represents a transformative shift in transportation, enabling users to plan, book, and pay for diverse mobility services via a unified digital platform. While previous research has explored factors influencing MaaS adoption, few studies have addressed users’ perspectives, particularly concerning data privacy [...] Read more.
Mobility-as-a-Service (MaaS) represents a transformative shift in transportation, enabling users to plan, book, and pay for diverse mobility services via a unified digital platform. While previous research has explored factors influencing MaaS adoption, few studies have addressed users’ perspectives, particularly concerning data privacy and cyber security. To address this gap, we conducted an online survey with 320 UK-based participants recruited via Prolific. This study examined psychological, demographic, and perceptual factors influencing individuals’ willingness to adopt MaaS, focusing on cyber security and privacy attitudes, as well as perceived benefits and costs. The results of a hierarchical linear regression model revealed that trust in how commercial websites manage personal data positively influenced willingness to use MaaS, highlighting the indirect role of privacy and security concerns. However, when additional predictors were included, this effect diminished, and perceptions of benefits and costs emerged as the primary drivers of MaaS adoption, with the model explaining 54.5% of variance. These findings suggest that privacy concerns are outweighed by users’ cost–benefit evaluations. The minimal role of trust and security concerns underscores the need for MaaS providers to proactively promote cyber security awareness, build user trust, and collaborate with researchers and policymakers to ensure ethical and secure MaaS deployment. Full article
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37 pages, 1330 KiB  
Article
Digital HRM Practices and Perceived Digital Competence: An Analysis of Organizational Culture’s Role
by Ioannis Zervas and Sotiria Triantari
Digital 2025, 5(3), 34; https://doi.org/10.3390/digital5030034 - 14 Aug 2025
Abstract
This study explores the relationship between digital human resource management (HRM) practices, organizational culture, and employees’ perceived digital competence within Greek organizations. While digitalization has become a central priority in human resource management (HRM), there is still limited understanding of how cultural context [...] Read more.
This study explores the relationship between digital human resource management (HRM) practices, organizational culture, and employees’ perceived digital competence within Greek organizations. While digitalization has become a central priority in human resource management (HRM), there is still limited understanding of how cultural context shapes the effectiveness of digital HR interventions. Using a quantitative approach, data were collected via an online questionnaire from 257 employees across various sectors. The research employed the method of Partial Least Squares Structural Equation Modeling (PLS-SEM) and Multi-Group Analysis (MGA) to examine the structural relationships between digital HRM practices—such as e-learning, onboarding, and performance management—and digital competence, taking into account different organizational culture profiles. The results show that digital HRM practices have a positive, but modest, impact on employees’ digital skills, with e-learning emerging as the most influential factor. Importantly, the effect of HRM practices varies significantly according to the cultural environment: supportive and innovative cultures foster stronger development of digital competence compared to hierarchical settings. The findings underline the necessity for organizations to adapt digital HR strategies to their specific cultural context and not to rely solely on technological solutions. This research contributes to the growing literature by demonstrating the interplay between technology and culture in shaping employees’ digital capabilities and suggests that a balanced focus on both is essential for successful digital transformation. Full article
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25 pages, 15383 KiB  
Article
SplitGround: Long-Chain Reasoning Split via Modular Multi-Expert Collaboration for Training-Free Scene Knowledge-Guided Visual Grounding
by Xilong Qin, Yue Hu, Wansen Wu, Xinmeng Li and Quanjun Yin
Big Data Cogn. Comput. 2025, 9(8), 209; https://doi.org/10.3390/bdcc9080209 - 14 Aug 2025
Abstract
Scene Knowledge-guided Visual Grounding (SK-VG) is a multi-modal detection task built upon conventional visual grounding (VG) for human–computer interaction scenarios. It utilizes an additional passage of scene knowledge apart from the image and context-dependent textual query for referred object localization. Due to the [...] Read more.
Scene Knowledge-guided Visual Grounding (SK-VG) is a multi-modal detection task built upon conventional visual grounding (VG) for human–computer interaction scenarios. It utilizes an additional passage of scene knowledge apart from the image and context-dependent textual query for referred object localization. Due to the inherent difficulty in directly establishing correlations between the given query and the image without leveraging scene knowledge, this task imposes significant demands on a multi-step knowledge reasoning process to achieve accurate grounding. Off-the-shelf VG models underperform under such a setting due to the requirement of detailed description in the query and a lack of knowledge inference based on implicit narratives of the visual scene. Recent Vision–Language Models (VLMs) exhibit improved cross-modal reasoning capabilities. However, their monolithic architectures, particularly in lightweight implementations, struggle to maintain coherent reasoning chains across sequential logical deductions, leading to error accumulation in knowledge integration and object localization. To address the above-mentioned challenges, we propose SplitGround—a collaborative framework that strategically decomposes complex reasoning processes by fusing the input query and image with knowledge through two auxiliary modules. Specifically, it implements an Agentic Annotation Workflow (AAW) for explicit image annotation and a Synonymous Conversion Mechanism (SCM) for semantic query transformation. This hierarchical decomposition enables VLMs to focus on essential reasoning steps while offloading auxiliary cognitive tasks to specialized modules, effectively splitting long reasoning chains into manageable subtasks with reduced complexity. Comprehensive evaluations on the SK-VG benchmark demonstrate the significant advancements of our method. Remarkably, SplitGround attains an accuracy improvement of 15.71% on the hard split of the test set over the previous training-required SOTA, using only a compact VLM backbone without fine-tuning, which provides new insights for knowledge-intensive visual grounding tasks. Full article
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24 pages, 2716 KiB  
Article
Interactive Indoor Audio-Map as a Digital Equivalent of the Tactile Map
by Dariusz Gotlib, Krzysztof Lipka and Hubert Świech
Appl. Sci. 2025, 15(16), 8975; https://doi.org/10.3390/app15168975 - 14 Aug 2025
Abstract
There are still relatively few applications that serve the function of a traditional tactile map, allowing visually impaired individuals to explore a digital map by sliding their fingers across it. Moreover, existing technological solutions either lack a spatial learning mode or provide only [...] Read more.
There are still relatively few applications that serve the function of a traditional tactile map, allowing visually impaired individuals to explore a digital map by sliding their fingers across it. Moreover, existing technological solutions either lack a spatial learning mode or provide only limited functionality, focusing primarily on navigating to a selected destination. To address these gaps, the authors have proposed an original concept for an indoor mobile application that enables map exploration by sliding a finger across the smartphone screen, using audio spatial descriptions as the primary medium for conveying information. The spatial descriptions are hierarchical and contextual, focusing on anchoring them in space and indicating their extent of influence. The basis for data management and analysis is GIS technology. The application is designed to support spatial orientation during user interaction with the digital map. The research emphasis was on creating an effective cartographic communication message, utilizing voice-based delivery of spatial information stored in a virtual building model (within a database) and tags placed in real-world buildings. Techniques such as Text-to-Speech, TalkBack, QRCode technologies were employed to achieve this. Preliminary tests conducted with both blind and sighted people demonstrated the usefulness of the proposed concept. The proposed solution supporting people with disabilities can also be useful and attractive to all users of navigation applications and may affect the development of such applications. Full article
(This article belongs to the Section Earth Sciences)
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27 pages, 12670 KiB  
Article
Integrated Multivariate and Spatial Assessment of Groundwater Quality for Sustainable Human Consumption in Arid Moroccan Regions
by Yousra Tligui, El Khalil Cherif, Wafae Lechhab, Touria Lechhab, Ali Laghzal, Nordine Nouayti, El Mustapha Azzirgue, Joaquim C. G. Esteves da Silva and Farida Salmoun
Water 2025, 17(16), 2393; https://doi.org/10.3390/w17162393 - 13 Aug 2025
Viewed by 175
Abstract
Groundwater quality in arid and semi-arid regions of Morocco is under increasing pressure due to both anthropogenic influences and climatic variability. This study investigates the physicochemical and heavy metal characteristics of groundwater across four Moroccan regions (Tangier-Tetouan-Al Hoceima, Oriental, Souss-Massa, and Marrakech-Safi) known [...] Read more.
Groundwater quality in arid and semi-arid regions of Morocco is under increasing pressure due to both anthropogenic influences and climatic variability. This study investigates the physicochemical and heavy metal characteristics of groundwater across four Moroccan regions (Tangier-Tetouan-Al Hoceima, Oriental, Souss-Massa, and Marrakech-Safi) known for being argan tree habitats. Thirteen groundwater samples were analyzed for twenty-five parameters, including major ions, nutrients, and trace metals. Elevated levels of ammonium, turbidity, electrical conductivity, and dissolved oxygen were observed in multiple samples, surpassing Moroccan water quality standards and indicating significant quality deterioration. Inductively Coupled Plasma-Atomic Emission Spectroscopy (ICP-AES) detected arsenic concentrations exceeding permissible limits in sample AW11 alongside widespread lead contamination in most samples except AW5 and AW9. Spatial patterns of contamination were characterized using Principal Component Analysis (PCA), Hierarchical Cluster Analysis (HCA), K-means clustering, and GIS-based Inverse Distance Weighted (IDW) interpolation. These multivariate approaches revealed marked spatial heterogeneity and highlighted the dual influence of geogenic processes and anthropogenic activities on groundwater quality. To assess consumption suitability, a Water Quality Index (WQI) and Human Health Risk Assessment were applied. As a result, 31% of samples were rated “Fair” and 69% as “Good”, but with notable non-carcinogenic risks, particularly to children, attributable to nitrate, lead, and arsenic. The findings underscore the urgent need for systematic groundwater monitoring and management strategies to safeguard water resources in Morocco’s vulnerable dryland ecosystems, particularly in regions where groundwater sustains vital socio-ecological species such as argan forests. Full article
(This article belongs to the Section Water Quality and Contamination)
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22 pages, 17156 KiB  
Article
Adaptive Clustering-Guided Multi-Scale Integration for Traffic Density Estimation in Remote Sensing Images
by Xin Liu, Qiao Meng, Xiangqing Zhang, Xinli Li and Shihao Li
Remote Sens. 2025, 17(16), 2796; https://doi.org/10.3390/rs17162796 - 12 Aug 2025
Viewed by 196
Abstract
Grading and providing early warning of traffic congestion density is crucial for the timely coordination and optimization of traffic management. However, current traffic density detection methods primarily rely on historical traffic flow data, resulting in ambiguous thresholds for congestion classification. To overcome these [...] Read more.
Grading and providing early warning of traffic congestion density is crucial for the timely coordination and optimization of traffic management. However, current traffic density detection methods primarily rely on historical traffic flow data, resulting in ambiguous thresholds for congestion classification. To overcome these challenges, this paper proposes a traffic density grading algorithm for remote sensing images that integrates adaptive clustering and multi-scale fusion. A dynamic neighborhood radius adjustment mechanism guided by spatial distribution characteristics is introduced to ensure consistency between the density clustering parameter space and the decision domain for image cropping, thereby addressing the issues of large errors and low efficiency in existing cropping techniques. Furthermore, a hierarchical detection framework is developed by incorporating a dynamic background suppression strategy to fuse multi-scale spatiotemporal features, thereby enhancing the detection accuracy of small objects in remote sensing imagery. Additionally, we propose a novel method that combines density analysis with pixel-level gradient quantification to construct a traffic state evaluation model featuring a dual optimization strategy. This enables precise detection and grading of traffic congestion areas while maintaining low computational overhead. Experimental results demonstrate that the proposed approach achieves average precision (AP) scores of 32.6% on the VisDrone dataset and 16.2% on the UAVDT dataset. Full article
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32 pages, 4113 KiB  
Article
A Novel Deep Learning-Based Soil Moisture Prediction Model Using Adaptive Group Radial Lasso Regularized Basis Function Networks (AGRL-RBFN) Optimized by Hierarchical Correlated Spider Wasp Optimizer (HCSWO) and Incremental Learning (IL)
by Claudia Cherubini and Muthu Bala Anand
Water 2025, 17(16), 2379; https://doi.org/10.3390/w17162379 - 11 Aug 2025
Viewed by 299
Abstract
Soil moisture serves as a critical factor in the hydrological cycle, affecting plant growth, ecosystem health, and groundwater reserves. Current methods for monitoring and predicting it fail to account for the complexities introduced by climatic variations and other influencing factors, such as the [...] Read more.
Soil moisture serves as a critical factor in the hydrological cycle, affecting plant growth, ecosystem health, and groundwater reserves. Current methods for monitoring and predicting it fail to account for the complexities introduced by climatic variations and other influencing factors, such as the effects of atmospheric interference and data gaps, leading to reduced prediction accuracy. To address these challenges, this study introduces a novel soil moisture prediction model based on remote sensing and deep learning, utilizing the Adaptive Group Radial Lasso Regularized Basis Function Networks (AGRL-RBFN) optimized by the Hierarchical Correlated Spider Wasp Optimizer (HCSWO) and incremental learning (IL) techniques. The proposed method for monitoring soil moisture utilizes hyperspectral and soil moisture data from a 2017 campaign in Karlsruhe, encompassing variables such as datetime, soil moisture percentage, soil temperature, and remote sensing spectral bands. The proposed methodology begins with comprehensive preprocessing of historical remote sensing data to fill gaps, reduce noise, and correct atmospheric disturbances. It then employs a unique seasonal mapping and grouping technique, enhanced by the AdaK-MCC method, to analyze the impact of climatic changes on soil moisture patterns. The model’s innovative feature selection approach, using HCSWO, identifies the most significant predictors, ensuring optimal data input for the AGRL-RBFN model. The model achieves an impressive accuracy of 98.09%, a precision of 98.17%, a recall of 97.24%, and an F1-score of 98.95%, outperforming existing methods. Furthermore, it attains a mean absolute error (MAE) of 0.047 in gap filling and a Dunn Index of 4.897 for clustering. Although successful in many aspects, the study did not investigate the relationship between soil moisture levels and specific crops, which presents an opportunity for future research aimed at enhancing smart agricultural practices. Furthermore, the model can be refined by integrating a wider range of datasets and improving its resilience to extreme weather conditions, thereby providing a reliable tool for climate-responsive agricultural management and water conservation strategies. Full article
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18 pages, 3218 KiB  
Article
Identity-Based Efficient Secure Data Communication Protocol for Hierarchical Sensor Groups in Smart Grid
by Yun Feng, Yi Sun, Yongfeng Cao, Bin Xu and Yong Li
Sensors 2025, 25(16), 4955; https://doi.org/10.3390/s25164955 - 10 Aug 2025
Viewed by 350
Abstract
With the rapid evolution of smart grids, secure and efficient data communication among hierarchical sensor devices has become critical to ensure privacy and system integrity. However, existing protocols often fail to balance security strength and resource constraints of terminal sensors. In this paper, [...] Read more.
With the rapid evolution of smart grids, secure and efficient data communication among hierarchical sensor devices has become critical to ensure privacy and system integrity. However, existing protocols often fail to balance security strength and resource constraints of terminal sensors. In this paper, we propose a novel identity-based secure data communication protocol tailored for hierarchical sensor groups in smart grid environments. The protocol integrates symmetric and asymmetric encryption to enable secure and efficient data sharing. To reduce computational overhead, a Bloom filter is employed for lightweight identity encoding, and a cloud-assisted pre-authentication mechanism is introduced to enhance access efficiency. Furthermore, we design a dynamic group key update scheme with minimal operations to maintain forward and backward security in evolving sensor networks. Security analysis proves that the protocol is resistant to replay and impersonation attacks, while experimental results demonstrate significant improvements in computational and communication efficiency compared to state-of-the-art methods—achieving reductions of 73.94% in authentication computation cost, 37.77% in encryption, and 55.75% in decryption, along with a 79.98% decrease in communication overhead during authentication. Full article
(This article belongs to the Section Internet of Things)
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16 pages, 2576 KiB  
Article
Tissue-Specific Modulation of Spexin Expression in Diet-Induced Obese Male Rats: Comparative Effects of Aerobic Exercise and Metformin
by İsa Aydemir, Vedat Çınar, Taner Akbulut, Mehmet Hanifi Yalçın, Yavuz Yasul, Berrin Tarakçi Gençer, Süleyman Aydın, Halil İbrahim Ceylan and Nicola Luigi Bragazzi
Appl. Sci. 2025, 15(16), 8828; https://doi.org/10.3390/app15168828 - 10 Aug 2025
Viewed by 212
Abstract
Obesity, a major global health concern, is associated with systemic metabolic dysregulation. Spexin, a peptide implicated in appetite control and energy balance, may represent a biomarker and therapeutic target in obesity management. This study aimed to investigate tissue-specific modulation of spexin expression in [...] Read more.
Obesity, a major global health concern, is associated with systemic metabolic dysregulation. Spexin, a peptide implicated in appetite control and energy balance, may represent a biomarker and therapeutic target in obesity management. This study aimed to investigate tissue-specific modulation of spexin expression in obese male rats subjected to aerobic exercise and/or metformin treatment. Thirty-six Sprague–Dawley rats were randomly assigned to six groups (n = 6 per group): (i) control, (ii) obese control, (iii) exercise, (iv) metformin, (v) metformin + exercise, and (vi) a decapitation baseline group. Obesity was induced via a 12-week high-calorie diet. Subsequently, interventions were applied over 4 weeks: treadmill running (30 min/day, 5 days/week) and/or metformin (150 mg/kg/day). Post-intervention, body weight significantly decreased in intervention groups (p < 0.001) exercise (−13.7%), metformin (−14.6%), and metformin + exercise (−21.1%) compared to the obese control group. ELISA revealed tissue-specific effects on spexin expression. In skeletal muscle, spexin levels were highest in controls (628 ± 160.5 pg/mL), with a significant reduction in the metformin + exercise group (349 ± 84.7 pg/mL; p = 0.003, Cohen’s d = 2.17). In the liver, the control group showed the highest expression (443 ± 240.8 pg/mL), while metformin + exercise yielded the lowest (254 ± 20.4 pg/mL). In contrast, heart tissue maintained elevated spexin levels across all intervention groups, with the metformin + exercise group nearly matching control levels (617 ± 25.2 vs. 618 ± 53.2 pg/mL). Immunohistochemistry confirmed these patterns, with the highest cardiac histoscore in the metformin + exercise group (2.34 ± 0.09). Hierarchical clustering underscored distinct tissue-specific expression patterns, separating muscle from liver and heart. Collectively, these findings suggest that spexin is differentially regulated by exercise and metformin, with joint effects and complex, tissue-specific modulation. This highlights spexin’s potential as a biomarker and therapeutic target in precision obesity interventions. Full article
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40 pages, 2964 KiB  
Article
Formalizing Permission to Delegate and Delegation with Policy Interaction
by Azan Hamad Alkhorem, Daniel Conte de Leon, Ananth A. Jillepalli and Jia Song
Sensors 2025, 25(16), 4915; https://doi.org/10.3390/s25164915 - 8 Aug 2025
Viewed by 206
Abstract
In the context of Internet of Things (IoT) intelligent systems, the latest research regarding delegation using an access control model has gained attention, reflecting the need for models to support more functionalities in relation to hierarchical delegation. With respect to delegation procedures within [...] Read more.
In the context of Internet of Things (IoT) intelligent systems, the latest research regarding delegation using an access control model has gained attention, reflecting the need for models to support more functionalities in relation to hierarchical delegation. With respect to delegation procedures within access control, issues arise after delegation concerning the permissions to others with respect to revocation. Redundancy and conflict arising from delegation can occur depending on the delegation policies used within the hierarchical structure. This article discusses implementation of positive delegation represented by “YES” and negative delegation represented by “NO”. Furthermore, we also consider permission to delegate positively and negatively represented by (YES and NO). These challenges are addressed by creating additional features in a hierarchical policy model (HPol). The implementation was created using Python (ver. 3.10) code to verify the advantages of the approach, through experimentation under different scenarios. The model also has the capability to manage and adapt features of the Internet of Things (IoT) to a blockchain architecture, enhancing security and verification during the delegation process and increasing the scalability of Internet of Things (IoT) intelligent environment systems. Full article
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26 pages, 3786 KiB  
Article
Application of an Integrated DEMATEL-ISM-BN and Gray Clustering Model to Budget Quota Consumption Analysis in High-Standard Farmland Projects
by Jiaze Li, Xuenan Li, Kun Han and Chunsheng Li
Sustainability 2025, 17(16), 7204; https://doi.org/10.3390/su17167204 - 8 Aug 2025
Viewed by 297
Abstract
To overcome the absence of a standardized budget quota system for high-standard farmland projects and the resultant extended compilation cycles and high workloads, this study systematically analyzes quota consumption and innovatively proposes an integrated DEMATEL-ISM-BN and gray clustering analytical model. Through a literature [...] Read more.
To overcome the absence of a standardized budget quota system for high-standard farmland projects and the resultant extended compilation cycles and high workloads, this study systematically analyzes quota consumption and innovatively proposes an integrated DEMATEL-ISM-BN and gray clustering analytical model. Through a literature review and engineering feature analysis, a hierarchical factor system was established, encompassing six dimensions (environmental, technical, labor, machinery, material, and management) and 24 indicators. The DEMATEL-ISM method quantified factor weights and structured them into a five-level hierarchy, while Bayesian networks (BNs) enabled probabilistic productivity predictions (29% conservative, 45% moderate, and 26% advanced). Gray clustering was integrated to derive a comprehensive representative consumption value, and validation across six regions demonstrated a comprehensive productivity index of 0.986 (CV = 2.6%) for 17 earthwork projects, confirming model robustness. This research constructs a standardized “factor structure analysis–probabilistic deduction–regional clustering” framework, providing a theoretical foundation for precise budget compilation in high-standard farmland and proposing a novel methodological paradigm for quota consumption research. Full article
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24 pages, 1919 KiB  
Review
Towards Sustainable Road Pavement Construction: A Material Passport Framework
by Helapura Nuwanshi Yasodara Senarathne, Nilmini Pradeepika Weerasinghe, Jey Parthiban, Brook Hall, Jaimi Harrison, Dilan Robert, Guomin (Kevin) Zhang and Sujeeva Setunge
Buildings 2025, 15(16), 2821; https://doi.org/10.3390/buildings15162821 - 8 Aug 2025
Viewed by 292
Abstract
Sustainable transport infrastructure, highlighted in Agenda 21, Rio+20, and the 2030 Agenda, promotes resource efficiency and reduced environmental impact. Integrating circular economy principles into road construction supports these goals. However, limited material traceability and insufficient lifecycle information hinder the effective adoption of circular [...] Read more.
Sustainable transport infrastructure, highlighted in Agenda 21, Rio+20, and the 2030 Agenda, promotes resource efficiency and reduced environmental impact. Integrating circular economy principles into road construction supports these goals. However, limited material traceability and insufficient lifecycle information hinder the effective adoption of circular practices in the sector. Material passports have emerged as an enabling tool to address this gap by systematically documenting detailed data on material composition, environmental impact, lifecycle history, and potential for reuse or recycling. Despite growing adoption in the building sector, their application in road infrastructure remains limited. Therefore, this study aims to develop a material passport framework tailored for road pavements to enhance circularity and promote sustainable material management. A two-phase research method was used; first, a structured desk review identified relevant attributes; second, these attributes were categorized into six key domains and organized across three hierarchical levels: product, layer, and material to reflect pavement system complexity. The proposed framework enables multi-level documentation. Thus, the outcome of this study majorly contributes to advancing circular economy practices and the achievement of sustainable development goals by promoting resource efficiency, sustainable infrastructure, and responsible material use across the pavement lifecycle. Full article
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18 pages, 220 KiB  
Article
Which Standards to Follow? The Plurality of Conventions of French Principals Within the School Organization
by Romuald Normand
Educ. Sci. 2025, 15(8), 998; https://doi.org/10.3390/educsci15080998 - 5 Aug 2025
Viewed by 129
Abstract
This study examines the moral agency of French secondary school headteachers through the lens of the theory of conventions. Using qualitative data from interviews with fifteen headteachers involved in professional development, this study explores how these leaders justify their practices within a centralized, [...] Read more.
This study examines the moral agency of French secondary school headteachers through the lens of the theory of conventions. Using qualitative data from interviews with fifteen headteachers involved in professional development, this study explores how these leaders justify their practices within a centralized, bureaucratic, and hierarchical education system. It identifies a variety of conventions—civic, domestic, industrial, project, market, inspired, and fame—that headteachers draw on to navigate institutional constraints, manage professional relationships, and foster pedagogical and organizational change. Particular attention is given to how civic and domestic conventions shape leadership discourse and practices, especially regarding trust building, decision making, and reform implementation. We also compare the French context with international examples from the International Successful School Principalship Project (ISSPP), focusing on Nordic countries, where leadership emphasizes democratic participation, professional trust, and shared responsibility. This study underscores the uniqueness of the French leadership model, which resists managerial and market logics while remaining rooted in republican and egalitarian ideals. It concludes by advocating for a more context-aware, ethically grounded, and dialogical approach to school leadership. Full article
20 pages, 9888 KiB  
Article
WeatherClean: An Image Restoration Algorithm for UAV-Based Railway Inspection in Adverse Weather
by Kewen Wang, Shaobing Yang, Zexuan Zhang, Zhipeng Wang, Limin Jia, Mengwei Li and Shengjia Yu
Sensors 2025, 25(15), 4799; https://doi.org/10.3390/s25154799 - 4 Aug 2025
Viewed by 333
Abstract
UAV-based inspections are an effective way to ensure railway safety and have gained significant attention. However, images captured during complex weather conditions, such as rain, snow, or fog, often suffer from severe degradation, affecting image recognition accuracy. Existing algorithms for removing rain, snow, [...] Read more.
UAV-based inspections are an effective way to ensure railway safety and have gained significant attention. However, images captured during complex weather conditions, such as rain, snow, or fog, often suffer from severe degradation, affecting image recognition accuracy. Existing algorithms for removing rain, snow, and fog have two main limitations: they do not adaptively learn features under varying weather complexities and struggle with managing complex noise patterns in drone inspections, leading to incomplete noise removal. To address these challenges, this study proposes a novel framework for removing rain, snow, and fog from drone images, called WeatherClean. This framework introduces a Weather Complexity Adjustment Factor (WCAF) in a parameterized adjustable network architecture to process weather degradation of varying degrees adaptively. It also employs a hierarchical multi-scale cropping strategy to enhance the recovery of fine noise and edge structures. Additionally, it incorporates a degradation synthesis method based on atmospheric scattering physical models to generate training samples that align with real-world weather patterns, thereby mitigating data scarcity issues. Experimental results show that WeatherClean outperforms existing methods by effectively removing noise particles while preserving image details. This advancement provides more reliable high-definition visual references for drone-based railway inspections, significantly enhancing inspection capabilities under complex weather conditions and ensuring the safety of railway operations. Full article
(This article belongs to the Section Sensing and Imaging)
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