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27 pages, 4682 KiB  
Article
DERIENet: A Deep Ensemble Learning Approach for High-Performance Detection of Jute Leaf Diseases
by Mst. Tanbin Yasmin Tanny, Tangina Sultana, Md. Emran Biswas, Chanchol Kumar Modok, Arjina Akter, Mohammad Shorif Uddin and Md. Delowar Hossain
Information 2025, 16(8), 638; https://doi.org/10.3390/info16080638 - 27 Jul 2025
Viewed by 139
Abstract
Jute, a vital lignocellulosic fiber crop with substantial industrial and ecological relevance, continues to suffer considerable yield and quality degradation due to pervasive foliar pathologies. Traditional diagnostic modalities reliant on manual field inspections are inherently constrained by subjectivity, diagnostic latency, and inadequate scalability [...] Read more.
Jute, a vital lignocellulosic fiber crop with substantial industrial and ecological relevance, continues to suffer considerable yield and quality degradation due to pervasive foliar pathologies. Traditional diagnostic modalities reliant on manual field inspections are inherently constrained by subjectivity, diagnostic latency, and inadequate scalability across geographically distributed agrarian systems. To transcend these limitations, we propose DERIENet, a robust and scalable classification approach within a deep ensemble learning framework. It is meticulously engineered by integrating three high-performing convolutional neural networks—ResNet50, InceptionV3, and EfficientNetB0—along with regularization, batch normalization, and dropout strategies, to accurately classify jute leaf diseases such as Cercospora Leaf Spot, Golden Mosaic Virus, and healthy leaves. A key methodological contribution is the design of a novel augmentation pipeline, termed Geometric Localized Occlusion and Adaptive Rescaling (GLOAR), which dynamically modulates photometric and geometric distortions based on image entropy and luminance to synthetically upscale a limited dataset (920 images) into a significantly enriched and diverse dataset of 7800 samples, thereby mitigating overfitting and enhancing domain generalizability. Empirical evaluation, utilizing a comprehensive set of performance metrics—accuracy, precision, recall, F1-score, confusion matrices, and ROC curves—demonstrates that DERIENet achieves a state-of-the-art classification accuracy of 99.89%, with macro-averaged and weighted average precision, recall, and F1-score uniformly at 99.89%, and an AUC of 1.0 across all disease categories. The reliability of the model is validated by the confusion matrix, which shows that 899 out of 900 test images were correctly identified and that there was only one misclassification. Comparative evaluations of the various ensemble baselines, such as DenseNet201, MobileNetV2, and VGG16, and individual base learners demonstrate that DERIENet performs noticeably superior to all baseline models. It provides a highly interpretable, deployment-ready, and computationally efficient architecture that is ideal for integrating into edge or mobile platforms to facilitate in situ, real-time disease diagnostics in precision agriculture. Full article
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20 pages, 1776 KiB  
Review
Bridging Theory and Practice: A Review of AI-Driven Techniques for Ground Penetrating Radar Interpretation
by Lilong Zou, Ying Li, Kevin Munisami and Amir M. Alani
Appl. Sci. 2025, 15(15), 8177; https://doi.org/10.3390/app15158177 - 23 Jul 2025
Viewed by 235
Abstract
Artificial intelligence (AI) has emerged as a powerful tool for advancing the interpretation of ground penetrating radar (GPR) data, offering solutions to long-standing challenges in manual analysis, such as subjectivity, inefficiency, and limited scalability. This review investigates recent developments in AI-driven techniques for [...] Read more.
Artificial intelligence (AI) has emerged as a powerful tool for advancing the interpretation of ground penetrating radar (GPR) data, offering solutions to long-standing challenges in manual analysis, such as subjectivity, inefficiency, and limited scalability. This review investigates recent developments in AI-driven techniques for GPR interpretation, with a focus on machine learning, deep learning, and hybrid approaches that incorporate physical modeling or multimodal data fusion. We systematically analyze the application of these techniques across various domains, including utility detection, infrastructure monitoring, archeology, and environmental studies. Key findings highlight the success of convolutional neural networks in hyperbola detection, the use of segmentation models for stratigraphic analysis, and the integration of AI with robotic and real-time systems. However, challenges remain with generalization, data scarcity, model interpretability, and operational deployment. We identify promising directions, such as domain adaptation, explainable AI, and edge-compatible solutions for practical implementation. By synthesizing current progress and limitations, this review aims to bridge the gap between theoretical advancements in AI and the practical needs of GPR practitioners, guiding future research towards more reliable, transparent, and field-ready systems. Full article
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28 pages, 1858 KiB  
Article
Agriculture 5.0 in Colombia: Opportunities Through the Emerging 6G Network
by Alexis Barrios-Ulloa, Andrés Solano-Barliza, Wilson Arrubla-Hoyos, Adelaida Ojeda-Beltrán, Dora Cama-Pinto, Francisco Manuel Arrabal-Campos and Alejandro Cama-Pinto
Sustainability 2025, 17(15), 6664; https://doi.org/10.3390/su17156664 - 22 Jul 2025
Viewed by 421
Abstract
Agriculture 5.0 represents a shift towards a more sustainable agricultural model, integrating Artificial Intelligence (AI), the Internet of Things (IoT), robotics, and blockchain technologies to enhance productivity and resource management, with an emphasis on social and environmental resilience. This article explores how the [...] Read more.
Agriculture 5.0 represents a shift towards a more sustainable agricultural model, integrating Artificial Intelligence (AI), the Internet of Things (IoT), robotics, and blockchain technologies to enhance productivity and resource management, with an emphasis on social and environmental resilience. This article explores how the evolution of wireless technologies to sixth-generation networks (6G) can support innovation in Colombia’s agricultural sector and foster rural advancement. The study follows three main phases: search, analysis, and selection of information. In the search phase, key government policies, spectrum management strategies, and the relevant literature from 2020 to 2025 were reviewed. The analysis phase addresses challenges such as spectrum regulation and infrastructure deployment within the context of a developing country. Finally, the selection phase evaluates technological readiness and policy frameworks. Findings suggest that 6G could revolutionize Colombian agriculture by improving connectivity, enabling real-time monitoring, and facilitating precision farming, especially in rural areas with limited infrastructure. Successful 6G deployment could boost agricultural productivity, reduce socioeconomic disparities, and foster sustainable rural development, contingent on aligned public policies, infrastructure investments, and human capital development. Full article
(This article belongs to the Special Issue Sustainable Precision Agriculture: Latest Advances and Prospects)
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21 pages, 1420 KiB  
Article
Disaster Preparedness in Saudi Arabia’s Primary Healthcare Workers for Human Well-Being and Sustainability
by Mona Raif Alrowili, Alia Mohammed Almoajel, Fahad Magbol Alneam and Riyadh A. Alhazmi
Sustainability 2025, 17(14), 6562; https://doi.org/10.3390/su17146562 - 18 Jul 2025
Viewed by 369
Abstract
The preparedness of healthcare workers for disaster situations depends on their technical skills, disaster knowledge, and psychosocial strength, including teamwork and emotional regulation. This study aims to assess disaster preparedness among healthcare professionals in primary healthcare centers (PHCs) in Alqurayat, Saudi Arabia, with [...] Read more.
The preparedness of healthcare workers for disaster situations depends on their technical skills, disaster knowledge, and psychosocial strength, including teamwork and emotional regulation. This study aims to assess disaster preparedness among healthcare professionals in primary healthcare centers (PHCs) in Alqurayat, Saudi Arabia, with a specific focus on evaluating technical competencies, psychosocial readiness, and predictive modeling of preparedness levels. A mixed-methods approach was employed, incorporating structured questionnaires, semi-structured interviews, and observational data from disaster drills to evaluate the preparedness levels of 400 healthcare workers, including doctors, nurses, and administrative staff. The results showed that while knowledge (mean: 3.9) and skills (mean: 4.0) were generally moderate to high, notable gaps in overall preparedness remained. Importantly, 69.5% of participants reported enhanced readiness following simulation drills. Machine learning models, including Random Forest and Artificial Neural Networks, were used to predict preparedness outcomes based on psychosocial variables such as emotional intelligence, teamwork, and stress management. Sentiment analysis and topic modeling of qualitative responses revealed key themes including communication barriers, psychological safety, and the need for ongoing training. The findings highlight the importance of integrating both technical competencies and psychosocial resilience into disaster management programs. This study contributes an innovative framework for evaluating preparedness and offers practical insights for policymakers, disaster planners, and health training institutions aiming to strengthen the sustainability and responsiveness of primary healthcare systems. Full article
(This article belongs to the Special Issue Occupational Mental Health)
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34 pages, 2877 KiB  
Article
“More than a Feeling”: How Eco-Anxiety Shapes Pro-Environmental Behaviors and the Role of Readiness to Change
by Marina Baroni, Giulia Valdrighi, Andrea Guazzini and Mirko Duradoni
Sustainability 2025, 17(13), 6154; https://doi.org/10.3390/su17136154 - 4 Jul 2025
Viewed by 488
Abstract
Eco-anxiety is a complex and multifaceted construct linked with engagement in pro-environmental behaviors. However, further investigation is needed to observe the putative psychological determinants potentially supporting this kind of relationship. In line with this, the study aimed to investigate differences between individuals with [...] Read more.
Eco-anxiety is a complex and multifaceted construct linked with engagement in pro-environmental behaviors. However, further investigation is needed to observe the putative psychological determinants potentially supporting this kind of relationship. In line with this, the study aimed to investigate differences between individuals with and without eco-anxiety in terms of their engagement in sustainable habits by also examining the psychological determinants above in terms of readiness to change (RTC). Additionally, the study also aimed to examine potential direct and indirect associations between these variables, distinguishing among the different dimensions of eco-anxiety as well as investigating the putative mediator role of RTC. Data were collected from 501 participants through an online survey. To address the research objectives, both Student’s t-tests and network analysis (NA) were conducted. Moreover, based on NA outputs, a mediation analysis was carried out. The results pointed out that certain dimensions of eco-anxiety (e.g., rumination) are directly linked to the enactment of pro-environmental behaviors. Conversely, other dimensions (e.g., behavioral symptoms) appear to be indirectly associated with sustainable behaviors through readiness to change (RTC). Moreover, the network analysis pointed out that some eco-anxiety dimensions may act differently in support of sustainable action engagement through a gender-sensitive perspective. Finally, the mediation analysis confirmed the role of some of the RTC dimensions in mediating the link between eco-anxiety factors and pro-environmental behaviors. In conclusion, this study highlighted the multidimensional nature of eco-anxiety, suggesting that, for certain dimensions, it may be necessary to target specific psychological determinants to effectively foster pro-environmental behavioral engagement. Full article
(This article belongs to the Special Issue Human Behavior, Psychology and Sustainable Well-Being: 2nd Edition)
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23 pages, 2203 KiB  
Review
Digital Academic Leadership in Higher Education Institutions: A Bibliometric Review Based on CiteSpace
by Olaniyi Joshua Olabiyi, Carl Jansen van Vuuren, Marieta Du Plessis, Yujie Xue and Chang Zhu
Educ. Sci. 2025, 15(7), 846; https://doi.org/10.3390/educsci15070846 - 2 Jul 2025
Viewed by 742
Abstract
The continuous evolution of technology compels higher education leaders to adapt to VUCA (volatile, uncertain, complex, and ambiguous) and BANI (brittle, anxious, non-linear, and incomprehensible) environments through innovative strategies that ensure institutional relevance. While VUCA emphasizes the challenges posed by rapid change and [...] Read more.
The continuous evolution of technology compels higher education leaders to adapt to VUCA (volatile, uncertain, complex, and ambiguous) and BANI (brittle, anxious, non-linear, and incomprehensible) environments through innovative strategies that ensure institutional relevance. While VUCA emphasizes the challenges posed by rapid change and uncertain decision-making, BANI underscores the fragility of systems, heightened anxiety, unpredictable causality, and the collapse of established patterns. Navigating these complexities requires agility, resilience, and visionary leadership to ensure that institutions remain adaptable and future ready. This study presents a bibliometric analysis of digital academic leadership in higher education transformation, examining empirical studies, reviews, book chapters, and proceeding papers published from 2014 to 2024 (11-year period) in the Web of Science—Science Citation Index Expanded (SCIE) and Social Science Citation Index (SSCI). Using CiteSpace software (version 6.3. R1-64 bit), we analyzed 5837 documents, identifying 24 key publications that formed a network of 90 nodes and 256 links. The reduction to 24 publications occurred as part of a structured bibliometric analysis using CiteSpace, which employs algorithmic thresholds to identify the most influential and structurally significant publications within a large corpus. These 24 documents form the core co-citation network, which serves as a conceptual backbone for further thematic interpretation. This was the result of a multi-step refinement process using CiteSpace’s default thresholds and clustering algorithms to detect the most influential nodes based on centrality, citation burst, and network clustering. Our findings reveal six primary research clusters: “Enhancing Academic Performance”, “Digital Leadership Scale Adaptation”, “Construction Industry”, “Innovative Work Behavior”, “Development Business Strategy”, and “Education.” The analysis demonstrates a significant increase in publications over the decade, with the highest concentration in 2024, reflecting growing scholarly interest in this field. Keywords analysis shows “digital leadership”, “digital transformation”, “performance”, and “innovation” as dominant terms, highlighting the field’s evolution from technology-focused approaches to holistic leadership frameworks. Geographical analysis reveals significant contributions from Pakistan, Ireland, and India, indicating valuable insights emerging from diverse global contexts. These findings suggest that effective digital academic leadership requires not only technical competencies but also transformational capabilities, communication skills, and innovation management to enhance student outcomes and institutional performance in an increasingly digitalized educational landscape. Full article
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30 pages, 1097 KiB  
Review
Electric Vehicle Charging Infrastructure: Impacts and Future Challenges of Photovoltaic Integration with Examples from a Tunisian Case
by Nouha Mansouri, Sihem Nasri, Aymen Mnassri, Abderezak Lashab, Juan C. Vasquez, Adnane Cherif and Hegazy Rezk
World Electr. Veh. J. 2025, 16(7), 349; https://doi.org/10.3390/wevj16070349 - 24 Jun 2025
Viewed by 951
Abstract
The challenges of global warming and other environmental concerns have prompted governments worldwide to transition from fossil-fuel vehicles to low-emission electric vehicles (EVs). The energy crisis, coupled with environmental issues like air pollution and climate change, has been a driving force behind the [...] Read more.
The challenges of global warming and other environmental concerns have prompted governments worldwide to transition from fossil-fuel vehicles to low-emission electric vehicles (EVs). The energy crisis, coupled with environmental issues like air pollution and climate change, has been a driving force behind the development of EVs. In recent years, EVs have emerged as one of the most innovative and vital advancements in clean transportation. According to recent reports, EVs are gradually replacing traditional automobiles, offering benefits such as pollution reduction and the conservation of natural resources. This research focuses on analyzing and reviewing the impact of EV integration on electrical networks, with particular attention to photovoltaic (PV) energy as a sustainable charging solution. It examines both current and anticipated challenges, especially those related to power quality, harmonics, and voltage imbalance. A special emphasis is placed on Tunisia, a country with high solar energy potential and increasing interest in EV deployment. By exploring the technical and infrastructural readiness of Tunisia for PV-based EV charging systems, this paper aims to inform regional strategies and contribute to the broader goal of sustainable energy integration in developing countries as part of future work. Full article
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15 pages, 214 KiB  
Article
Electric and Autonomous Vehicles in Italian Urban Logistics: Sustainable Solutions for Last-Mile Delivery
by Abdullah Alsaleh
World Electr. Veh. J. 2025, 16(7), 338; https://doi.org/10.3390/wevj16070338 - 20 Jun 2025
Viewed by 495
Abstract
Urban logistics are facing growing sustainability challenges, particularly in last-mile delivery operations, which contribute significantly to traffic congestion, emissions and operational inefficiencies. The COVID-19 pandemic further exposed the vulnerabilities in traditional logistics systems, accelerating interest in innovative solutions such as electric vehicles (EVs) [...] Read more.
Urban logistics are facing growing sustainability challenges, particularly in last-mile delivery operations, which contribute significantly to traffic congestion, emissions and operational inefficiencies. The COVID-19 pandemic further exposed the vulnerabilities in traditional logistics systems, accelerating interest in innovative solutions such as electric vehicles (EVs) and autonomous vehicles (AVs) for last-mile delivery. This study investigates the potential of EV and AV technologies to enhance sustainable urban logistics by integrating cleaner, smarter transportation into delivery networks. Drawing on survey data from logistics professionals and consumers in Italy, the findings highlight the key benefits of EV and AV adoption, including reduced emissions, improved delivery efficiency and increased resilience during global disruptions. Autonomous delivery robots and EV fleets can reduce labor costs, traffic congestion and carbon footprints while meeting evolving consumer demands. However, barriers such as limited charging infrastructure, range constraints, and technological readiness remain critical challenges. By addressing these issues and aligning EV and AV strategies with urban mobility policies, last-mile delivery systems can play a crucial role in advancing cleaner, more efficient and sustainable urban logistics. This research emphasizes the need for continued investment, policy support and public–private collaboration to fully realize the potential of EVs and AVs in reshaping future urban delivery systems. Full article
33 pages, 3207 KiB  
Article
Machine Learning Ship Classifiers for Signals from Passive Sonars
by Allyson A. da Silva, Lisandro Lovisolo and Tadeu N. Ferreira
Appl. Sci. 2025, 15(13), 6952; https://doi.org/10.3390/app15136952 - 20 Jun 2025
Viewed by 380
Abstract
The accurate automatic classification of underwater acoustic signals from passive SoNaR is vital for naval operational readiness, enabling timely vessel identification and real-time maritime surveillance. This study evaluated seven supervised machine learning algorithms for ship identification using passive SoNaR recordings collected by the [...] Read more.
The accurate automatic classification of underwater acoustic signals from passive SoNaR is vital for naval operational readiness, enabling timely vessel identification and real-time maritime surveillance. This study evaluated seven supervised machine learning algorithms for ship identification using passive SoNaR recordings collected by the Brazilian Navy. The dataset encompassed 12 distinct ship classes and was processed in two ways—full-resolution and downsampled inputs—to assess the impacts of preprocessing on the model accuracy and computational efficiency. The classifiers included standard Support Vector Machines, K-Nearest Neighbors, Random Forests, Neural Networks and two less conventional approaches in this context: Linear Discriminant Analysis (LDA) and the XGBoost ensemble method. Experimental results indicate that data decimation significantly affects classification accuracy. LDA and XGBoost delivered the strongest performance overall, with XGBoost offering particularly robust accuracy and computational efficiency suitable for real-time naval applications. These findings highlight the promise of advanced machine learning techniques for complex multiclass ship classification tasks, enhancing acoustic signal intelligence for military maritime surveillance and contributing to improved naval situational awareness. Full article
(This article belongs to the Section Marine Science and Engineering)
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23 pages, 20322 KiB  
Article
An Intelligent Path Planning System for Urban Airspace Monitoring: From Infrastructure Assessment to Strategic Optimization
by Qianyu Liu, Wei Dai, Zichun Yan and Claudio J. Tessone
Smart Cities 2025, 8(3), 100; https://doi.org/10.3390/smartcities8030100 - 19 Jun 2025
Viewed by 400
Abstract
Urban Air Mobility (UAM) requires reliable communication and surveillance infrastructures to ensure safe Unmanned Aerial Vehicle (UAV) operations in dense metropolitan environments. However, urban infrastructure is inherently heterogeneous, leading to significant spatial variations in monitoring performance. This study proposes a unified framework that [...] Read more.
Urban Air Mobility (UAM) requires reliable communication and surveillance infrastructures to ensure safe Unmanned Aerial Vehicle (UAV) operations in dense metropolitan environments. However, urban infrastructure is inherently heterogeneous, leading to significant spatial variations in monitoring performance. This study proposes a unified framework that integrates infrastructure readiness assessment with Deep Reinforcement Learning (DRL)-based UAV path planning. Using Singapore as a representative case, we employ a data-driven methodology combining clustering analysis and in situ measurements to estimate the citywide distribution of surveillance quality. We then introduce an infrastructure-aware path planning algorithm based on a Double Deep Q-Network (DQN) with a convolutional architecture, which enables UAVs to learn efficient trajectories while avoiding surveillance blind zones. Extensive simulations demonstrate that the proposed approach significantly improves path success rates, reduces traversal through poorly monitored regions, and maintains high navigation efficiency. These results highlight the potential of combining infrastructure modeling with DRL to support performance-aware airspace operations and inform future UAM governance systems. Full article
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26 pages, 2845 KiB  
Article
Short-Term Energy Consumption Forecasting Analysis Using Different Optimization and Activation Functions with Deep Learning Models
by Mehmet Tahir Ucar and Asim Kaygusuz
Appl. Sci. 2025, 15(12), 6839; https://doi.org/10.3390/app15126839 - 18 Jun 2025
Viewed by 707
Abstract
Modelling events that change over time is one of the most difficult problems in data analysis. Forecasting of time-varying electric power values is also an important problem in data analysis. Regression methods, machine learning, and deep learning methods are used to learn different [...] Read more.
Modelling events that change over time is one of the most difficult problems in data analysis. Forecasting of time-varying electric power values is also an important problem in data analysis. Regression methods, machine learning, and deep learning methods are used to learn different patterns from data and develop a consumption prediction model. The aim of this study is to determine the most successful models for short-term power consumption prediction with deep learning and to achieve the highest prediction accuracy. In this study, firstly, the data was evaluated and organized with exploratory data analysis (EDA) on a ready dataset and the features of the data were extracted. Studies were carried out on long short-term memory (LSTM), gated recurrent unit (GRU), simple recurrent neural networks (SimpleRNN) and bidirectional long short-term memory (BiLSTM) architectures. First, four architectures were used with 11 different optimization methods. In this study, it was seen that a high success rate of 0.9972 was achieved according to the R2 score index. In the following, the first study was tried with different epoch numbers. Afterwards, this study was carried out with 264 separate models produced using four architectures, 11 optimization methods, and six activation functions in order. The results of all these studies were obtained according to the root mean square error (RMSE), mean absolute error (MAE), and R2_score indexes. The R2_score indexes graphs are presented. Finally, the 10 most successful applications are listed. Full article
(This article belongs to the Section Computing and Artificial Intelligence)
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23 pages, 6031 KiB  
Article
Assessment of the PPP-AR Strategy for ZTD and IWV in Africa: A One-Year GNSS Study
by Moustapha Gning Tine, Pierre Bosser, Ngor Faye, Lila Jean-Louis and Mapathé Ndiaye
Atmosphere 2025, 16(6), 741; https://doi.org/10.3390/atmos16060741 - 17 Jun 2025
Viewed by 492
Abstract
With the increasing demand for near real-time atmospheric water vapor monitoring, this study evaluates the performance of the open-source PRIDE PPP-AR software (version 3.0.5) for retrieving Zenith Total Delay (ZTD) and Integrated Water Vapor (IWV) over the African continent over a one-year period. [...] Read more.
With the increasing demand for near real-time atmospheric water vapor monitoring, this study evaluates the performance of the open-source PRIDE PPP-AR software (version 3.0.5) for retrieving Zenith Total Delay (ZTD) and Integrated Water Vapor (IWV) over the African continent over a one-year period. PRIDE PPP-AR is compared with established PPP-AR and PPP solutions, including CSRS-PPP, IGN-PPP, and NGL and using GipsyX, ERA5, and IGS products as references. A robust methodology combining time series processing and statistical evaluation was adopted. Multiple tools were leveraged to ensure a comprehensive performance analysis of GNSS data from seven stations in Africa, where such studies remain scarce. The results show that PRIDE PPP-AR achieves ZTD accuracy comparable to GipsyX (RMSE < 6 mm, R2 ≈ 0.99) and performs at a similar level to NGL and CSRS-PPP. Compared to the other solutions, PRIDE PPP-AR has an accuracy similar to CSRS-PPP and NGL, but slightly better than IGN-PPP, in line with ERA5 and IGS references. For IWV retrieval, comparisons with ERA5 indicate RMSE values of about 1.5 to 2.7 kg/m2, depending on station location and climatic conditions. IWV variability tends to increase towards the equator, where the recorded fluctuations are higher than in subtropical zones. In addition, collocated radiosonde (RS) measurements in Abidjan confirm good agreement, further validating the reliability of the software. This study highlights the potential of GNSS meteorology, in providing reliable spatiotemporal IWV monitoring and indicates that the PRIDE PPP-AR is ready for the high precision meteorological applications in African regions. These results offer promising prospects for spatiotemporal studies through African multi-GNSS networks and the PRIDE PPP-AR approach. Full article
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26 pages, 429 KiB  
Article
The Administrative Burden Experienced by U.S. Rural Residents Accessing Social Security Administration Benefit Programs in 2024
by Debra L. Brucker, Stacia Bach, Megan Henly, Andrew Houtenville and Kelly Nye-Lengerman
Soc. Sci. 2025, 14(6), 379; https://doi.org/10.3390/socsci14060379 - 16 Jun 2025
Viewed by 506
Abstract
Grounded in the existing literature on administrative burden and using a qualitative and community-engaged research approach, the research examined the administrative burden experienced in accessing disability, retirement, and survivor benefits from the Social Security Administration (SSA). The research team held in person and [...] Read more.
Grounded in the existing literature on administrative burden and using a qualitative and community-engaged research approach, the research examined the administrative burden experienced in accessing disability, retirement, and survivor benefits from the Social Security Administration (SSA). The research team held in person and virtual focus groups and interviews with 40 adults with disabilities, older adults, and family members of people with disabilities who resided in rural areas of the U.S. State of New Hampshire in 2024. The qualitative analysis revealed that rural residents, regardless of type of SSA benefit receipt, were experiencing high levels of administrative burden in their interactions with the SSA and preferred to turn to in-person assistance at local SSA field offices (rather than phone, mail, or web-based service options) to address these concerns. Overall, people living in rural counties that do not have local SSA field offices voiced a distinct disadvantage in terms of knowing where to turn with questions about their benefits. A lack of ready and reliable access to information and advice led to endangering their own economic stability and to increased calls and visits to the SSA. Persons with stronger social networks were better able to overcome these barriers to services. Full article
(This article belongs to the Section Social Policy and Welfare)
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15 pages, 1166 KiB  
Article
A Multidimensional Assessment of CO2-Intensive Economies Through the Green Economy Index Framework
by Halina Falfushynska
Environments 2025, 12(6), 195; https://doi.org/10.3390/environments12060195 - 9 Jun 2025
Viewed by 558
Abstract
Despite growing international consensus on the urgency of climate action, global CO2 emissions have continued to rise, exposing a critical implementation gap between environmental ambition and reality. This study explores the readiness and structural capacity of the world’s most CO2-intensive [...] Read more.
Despite growing international consensus on the urgency of climate action, global CO2 emissions have continued to rise, exposing a critical implementation gap between environmental ambition and reality. This study explores the readiness and structural capacity of the world’s most CO2-intensive countries to transition toward a green and hydrogen-based economy. We introduce and apply the Green Economy Index, a composite measure integrating 31 indicators across four core dimensions—political and regulatory efficiency, socio-economic status, infrastructure, and sustainable targets. Using data from 29 countries emitting over 200 Mt of CO2 in 2022, the analysis combines principal component analysis, Random Forest modeling, and network-based correlation analysis to classify nations into frontrunners, transitional performers, and structural laggers. The results reveal significant disparities in green economy readiness, with high-income countries showing institutional maturity and infrastructural robustness, while middle-income nations remain constrained by fossil fuel dependencies and governance challenges. Importantly, we highlight the growing utility of machine learning and multivariate statistics in capturing complex sustainability interdependencies. The Green Economy Index framework offers a relevant tool to benchmark progress, diagnose barriers, and guide targeted interventions in global decarbonization efforts. Full article
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29 pages, 1302 KiB  
Review
Artificial Intelligence (AI) in Surface Water Management: A Comprehensive Review of Methods, Applications, and Challenges
by Jerome G. Gacu, Cris Edward F. Monjardin, Ronald Gabriel T. Mangulabnan, Gerald Christian E. Pugat and Jerose G. Solmerin
Water 2025, 17(11), 1707; https://doi.org/10.3390/w17111707 - 4 Jun 2025
Cited by 1 | Viewed by 3351
Abstract
Surface water systems face unprecedented stress due to climate variability, urbanization, land-use change, and growing water demand—prompting a shift from traditional hydrological modeling to intelligent, adaptive systems. This review critically explores the integration of Artificial Intelligence (AI) in surface flow management, encompassing applications [...] Read more.
Surface water systems face unprecedented stress due to climate variability, urbanization, land-use change, and growing water demand—prompting a shift from traditional hydrological modeling to intelligent, adaptive systems. This review critically explores the integration of Artificial Intelligence (AI) in surface flow management, encompassing applications in streamflow forecasting, sediment transport, flood prediction, water quality monitoring, and infrastructure operations such as dam and irrigation control. Drawing from over two decades of interdisciplinary literature, this study synthesizes recent advances in machine learning (ML), deep learning (DL), the Internet of Things (IoT), remote sensing, and hybrid AI–physics models. Unlike earlier reviews focusing on single aspects, this paper presents a systems-level perspective that links AI technologies to their operational, ethical, and governance dimensions. It highlights key AI techniques—including Long Short-Term Memory (LSTM), Convolutional Neural Networks (CNNs), Graph Neural Networks (GNNs), Transformer models, and Reinforcement Learning—and discusses their strengths, limitations, and implementation challenges, particularly in data-scarce and climate-uncertain regions. Novel insights are provided on Explainable AI (XAI), algorithmic bias, cybersecurity risks, and institutional readiness, positioning this paper as a roadmap for equitable and resilient AI adoption. By combining methodological analysis, conceptual frameworks, and future directions, this review offers a comprehensive guide for researchers, engineers, and policy-makers navigating the next generation of intelligent surface flow management. Full article
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