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18 pages, 35958 KiB  
Article
OpenFungi: A Machine Learning Dataset for Fungal Image Recognition Tasks
by Anca Cighir, Roland Bolboacă and Teri Lenard
Life 2025, 15(7), 1132; https://doi.org/10.3390/life15071132 - 18 Jul 2025
Abstract
A key aspect driving advancements in machine learning applications in medicine is the availability of publicly accessible datasets. Evidently, there are studies conducted in the past with promising results, but they are not reproducible due to the fact that the data used are [...] Read more.
A key aspect driving advancements in machine learning applications in medicine is the availability of publicly accessible datasets. Evidently, there are studies conducted in the past with promising results, but they are not reproducible due to the fact that the data used are closed or proprietary or the authors were not able to publish them. The current study aims to narrow this gap for researchers who focus on image recognition tasks in microbiology, specifically in fungal identification and classification. An open database named OpenFungi is made available in this work; it contains high-quality images of macroscopic and microscopic fungal genera. The fungal cultures were grown from food products such as green leaf spices and cereals. The quality of the dataset is demonstrated by solving a classification problem with a simple convolutional neural network. A thorough experimental analysis was conducted, where six performance metrics were measured in three distinct validation scenarios. The results obtained demonstrate that in the fungal species classification task, the model achieved an overall accuracy of 99.79%, a true-positive rate of 99.55%, a true-negative rate of 99.96%, and an F1 score of 99.63% on the macroscopic dataset. On the microscopic dataset, the model reached a 97.82% accuracy, a 94.89% true-positive rate, a 99.19% true-negative rate, and a 95.20% F1 score. The results also reveal that the model maintains promising performance even when trained on smaller datasets, highlighting its robustness and generalization capabilities. Full article
(This article belongs to the Section Microbiology)
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23 pages, 5644 KiB  
Article
Exploring the Performance of Transparent 5G NTN Architectures Based on Operational Mega-Constellations
by Oscar Baselga, Anna Calveras and Joan Adrià Ruiz-de-Azua
Network 2025, 5(3), 25; https://doi.org/10.3390/network5030025 - 18 Jul 2025
Abstract
The evolution of 3GPP non-terrestrial networks (NTNs) is enabling new avenues for broadband connectivity via satellite, especially within the scope of 5G. The parallel rise in satellite mega-constellations has further fueled efforts toward ubiquitous global Internet access. This convergence has fostered collaboration between [...] Read more.
The evolution of 3GPP non-terrestrial networks (NTNs) is enabling new avenues for broadband connectivity via satellite, especially within the scope of 5G. The parallel rise in satellite mega-constellations has further fueled efforts toward ubiquitous global Internet access. This convergence has fostered collaboration between mobile network operators and satellite providers, allowing the former to leverage mature space infrastructure and the latter to integrate with terrestrial mobile standards. However, integrating these technologies presents significant architectural challenges. This study investigates 5G NTN architectures using satellite mega-constellations, focusing on transparent architectures where Starlink is employed to relay the backhaul, midhaul, and new radio (NR) links. The performance of these architectures is assessed through a testbed utilizing OpenAirInterface (OAI) and Open5GS, which collects key user-experience metrics such as round-trip time (RTT) and jitter when pinging the User Plane Function (UPF) in the 5G core (5GC). Results show that backhaul and midhaul relays maintain delays of 50–60 ms, while NR relays incur delays exceeding one second due to traffic overload introduced by the RFSimulator tool, which is indispensable to transmit the NR signal over Starlink. These findings suggest that while transparent architectures provide valuable insights and utility, regenerative architectures are essential for addressing current time issues and fully realizing the capabilities of space-based broadband services. Full article
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36 pages, 7790 KiB  
Article
Pixel 5 Versus Pixel 9 Pro XL—Are Android Devices Evolving Towards Better GNSS Performance?
by Julián Tomaštík, Jorge Hernández Olcina, Šimon Saloň and Daniel Tunák
Sensors 2025, 25(14), 4452; https://doi.org/10.3390/s25144452 - 17 Jul 2025
Abstract
Smartphone GNSS technology has advanced significantly, but its performance varies considerably among Android devices due to differences in hardware and software. This study compares the GNSS capabilities of the Google Pixel 5 and Pixel 9 Pro XL (Google LLC, Mountain View, CA, USA) [...] Read more.
Smartphone GNSS technology has advanced significantly, but its performance varies considerably among Android devices due to differences in hardware and software. This study compares the GNSS capabilities of the Google Pixel 5 and Pixel 9 Pro XL (Google LLC, Mountain View, CA, USA) using five-hour static measurements under three environmental conditions: open area, canopy, and indoor. Complete raw GNSS data and the tools used for positioning are freely available. The analysis focuses on signal quality and positioning accuracy, derived using raw GNSS measurements. Results show that the Pixel 9 Pro XL provides better signal completeness, a higher carrier-to-noise density (C/N0), and improved L5 frequency reception. However, this enhanced signal quality does not always translate to superior positioning accuracy. In single-point positioning (SPP), the Pixel 5 outperformed the Pixel 9 Pro XL in open conditions when considering mean positional errors, while the Pixel 9 Pro XL performed better under canopy conditions. The precise point positioning results are modest compared to the current state of the art, only achieving accuracies of a few meters. The static method achieved sub-decimeter accuracy for both devices in optimal conditions, with Pixel 9 Pro XL demonstrating a higher fix rate. Findings highlight ongoing challenges in smartphone GNSS, particularly related to the limited quality of signals received by smartphone GNSS receivers. While newer devices show improved signal reception, precise positioning remains limited. Future research should explore software enhancements and the use of various external correction sources to optimize GNSS accuracy for mobile users. Generally, a shift from research to user-ready applications is needed. Full article
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33 pages, 534 KiB  
Review
Local AI Governance: Addressing Model Safety and Policy Challenges Posed by Decentralized AI
by Bahrad A. Sokhansanj
AI 2025, 6(7), 159; https://doi.org/10.3390/ai6070159 - 17 Jul 2025
Abstract
Policies and technical safeguards for artificial intelligence (AI) governance have implicitly assumed that AI systems will continue to operate via massive power-hungry data centers operated by large companies like Google and OpenAI. However, the present cloud-based AI paradigm is being challenged by rapidly [...] Read more.
Policies and technical safeguards for artificial intelligence (AI) governance have implicitly assumed that AI systems will continue to operate via massive power-hungry data centers operated by large companies like Google and OpenAI. However, the present cloud-based AI paradigm is being challenged by rapidly advancing software and hardware technologies. Open-source AI models now run on personal computers and devices, invisible to regulators and stripped of safety constraints. The capabilities of local-scale AI models now lag just months behind those of state-of-the-art proprietary models. Wider adoption of local AI promises significant benefits, such as ensuring privacy and autonomy. However, adopting local AI also threatens to undermine the current approach to AI safety. In this paper, we review how technical safeguards fail when users control the code, and regulatory frameworks cannot address decentralized systems as deployment becomes invisible. We further propose ways to harness local AI’s democratizing potential while managing its risks, aimed at guiding responsible technical development and informing community-led policy: (1) adapting technical safeguards for local AI, including content provenance tracking, configurable safe computing environments, and distributed open-source oversight; and (2) shaping AI policy for a decentralized ecosystem, including polycentric governance mechanisms, integrating community participation, and tailored safe harbors for liability. Full article
(This article belongs to the Section AI Systems: Theory and Applications)
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17 pages, 2769 KiB  
Article
Service-Based Architecture for 6G RAN: A Cloud Native Platform That Provides Everything as a Service
by Guangyi Liu, Na Li, Chunjing Yuan, Siqi Chen and Xuan Liu
Sensors 2025, 25(14), 4428; https://doi.org/10.3390/s25144428 - 16 Jul 2025
Viewed by 61
Abstract
The 5G network’s commercialization has revealed challenges in providing customized and personalized deployment and services for diverse vertical industrial use cases, leading to high cost, low resource efficiency and management efficiency, and long time to market. Although the 5G core network (CN) has [...] Read more.
The 5G network’s commercialization has revealed challenges in providing customized and personalized deployment and services for diverse vertical industrial use cases, leading to high cost, low resource efficiency and management efficiency, and long time to market. Although the 5G core network (CN) has adopted a service-based architecture (SBA) to enhance agility and elasticity, the radio access network (RAN) keeps the traditional integrated and rigid architecture and suffers the difficulties of customizing and personalizing the functions and capabilities. Open RAN attempted to introduce cloudification, openness, and intelligence to RAN but faced limitations due to 5G RAN specifications. To address this, this paper analyzes the experience and insights from 5G SBA and conducts a systematic study on the service-based RAN, including service definition, interface protocol stacks, impact analysis on the air interface, radio capability exposure, and joint optimization with CN. Performance verification shows significant improvements of service-based user plane design in resource utilization and scalability. Full article
(This article belongs to the Special Issue Future Horizons in Networking: Exploring the Potential of 6G)
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21 pages, 877 KiB  
Article
Identity-Based Provable Data Possession with Designated Verifier from Lattices for Cloud Computing
by Mengdi Zhao and Huiyan Chen
Entropy 2025, 27(7), 753; https://doi.org/10.3390/e27070753 - 15 Jul 2025
Viewed by 79
Abstract
Provable data possession (PDP) is a technique that enables the verification of data integrity in cloud storage without the need to download the data. PDP schemes are generally categorized into public and private verification. Public verification allows third parties to assess the integrity [...] Read more.
Provable data possession (PDP) is a technique that enables the verification of data integrity in cloud storage without the need to download the data. PDP schemes are generally categorized into public and private verification. Public verification allows third parties to assess the integrity of outsourced data, offering good openness and flexibility, but it may lead to privacy leakage and security risks. In contrast, private verification restricts the auditing capability to the data owner, providing better privacy protection but often resulting in higher verification costs and operational complexity due to limited local resources. Moreover, most existing PDP schemes are based on classical number-theoretic assumptions, making them vulnerable to quantum attacks. To address these challenges, this paper proposes an identity-based PDP with a designated verifier over lattices, utilizing a specially leveled identity-based fully homomorphic signature (IB-FHS) scheme. We provide a formal security proof of the proposed scheme under the small-integer solution (SIS) and learning with errors (LWE) within the random oracle model. Theoretical analysis confirms that the scheme achieves security guarantees while maintaining practical feasibility. Furthermore, simulation-based experiments show that for a 1 MB file and lattice dimension of n = 128, the computation times for core algorithms such as TagGen, GenProof, and CheckProof are approximately 20.76 s, 13.75 s, and 3.33 s, respectively. Compared to existing lattice-based PDP schemes, the proposed scheme introduces additional overhead due to the designated verifier mechanism; however, it achieves a well-balanced optimization among functionality, security, and efficiency. Full article
(This article belongs to the Section Information Theory, Probability and Statistics)
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11 pages, 783 KiB  
Article
Effects of the Application of an Oxygen-Enriched Oil-Based Dressing (NovoX®-Drop) After Extraction of Impacted Lower Third Molars: A Randomized Controlled Study
by Valeria Mitro, Francesco Giovacchini, Massimiliano Gilli, Gabriele Monarchi, Angela Rosa Caso, Antonio Bimonte, Guido Lombardo and Antonio Tullio
J. Clin. Med. 2025, 14(14), 4986; https://doi.org/10.3390/jcm14144986 - 15 Jul 2025
Viewed by 100
Abstract
Objective: Lower third impacted molar extraction, despite being a routinary procedure for oral and maxillo-facial surgeons, may often result in a significantly negative impact in patient’s post-operatory quality of life. Among others, treatments based on oxygen-enriched oils have been shown to provide valuable [...] Read more.
Objective: Lower third impacted molar extraction, despite being a routinary procedure for oral and maxillo-facial surgeons, may often result in a significantly negative impact in patient’s post-operatory quality of life. Among others, treatments based on oxygen-enriched oils have been shown to provide valuable therapeutic benefits in promoting wound healing, and therefore improving the immediate post-operatory symptomatology. The aim of this triple-blinded randomized controlled study is to supplement the existing evidence in the scientific literature by assessing the effectiveness of NovoX®-Drop (Moss S.p.A., Lesa, Novara), a specific type of oxygen enriched oil-based device in reducing pain and inflammatory stimulus of post-surgical wounds following the extraction of lower third impacted molars. Materials and methods: Seventy-one patients undergoing surgical extraction of a single lower third impacted molar were randomly assigned to receive either NovoX®-Drop (Group A) or a glycerin-based gel (Group B). Additionally, both patient groups followed the same standard therapy with amoxicillin-clavulanic acid and ibuprofen. Data were collected preoperative (T0) and after three (T3) and seven (T7) days postoperative in order to assess the following outcomes: mean visual analogue scale (VAS) score during the seven days protocol treatment, total duration of nonsteroidal anti-inflammatory drug (NSAID) usage, trismus (maximum mouth opening) and facial oedema. Results: Group A (treatment group) reported significatively lower pain levels at T7 compared to group B (average VAS value during the week: Group A: 3.57 ± 0.39 cm; Group B: 4.47 ± 0.40 cm; p-value = 0.0014) despite a significatively shorter period of NSAID usage (average NSAID usage duration: Group A: 2.43 ± 0.38 days; Group B: 3.38 ± 0.44 days; p-value = 0.00001). Therefore, trismus seems to be better controlled in group A, although the difference between the groups did not reach the threshold for statistical significance. Conclusions: The results of this study suggest that application of NovoX®-Drop is capable of significantly reducing the post-operatory pain as well as NSAID usage, representing a promising and effective option for third impacted molar extraction surgery management. Full article
(This article belongs to the Special Issue New Perspective of Oral and Maxillo-Facial Surgery)
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17 pages, 6145 KiB  
Article
Exploring Epigenetic Ageing Using Direct Methylome Sequencing
by Elena-Cristina Găitănaru, Roua Gabriela Popescu, Andreea-Angelica Stroe, Sergiu Emil Georgescu and George Cătălin Marinescu
Epigenomes 2025, 9(3), 25; https://doi.org/10.3390/epigenomes9030025 - 14 Jul 2025
Viewed by 177
Abstract
Background/Objectives: Advances in nanopore sequencing have opened new avenues for studying DNA methylation at single-base resolution, yet their application in epigenetic ageing research remains underdeveloped. Methods: We present a novel framework that leverages the unique capabilities of nanopore sequencing to profile [...] Read more.
Background/Objectives: Advances in nanopore sequencing have opened new avenues for studying DNA methylation at single-base resolution, yet their application in epigenetic ageing research remains underdeveloped. Methods: We present a novel framework that leverages the unique capabilities of nanopore sequencing to profile and interpret age-associated methylation patterns in native DNA. Results: Unlike conventional array-based approaches, long reads sequencing captures full CpG context, accommodates diverse and repetitive genomic regions, removes bisulfite conversion steps, and is compatible to the latest reference genome. Conclusions: This work establishes nanopore sequencing as a powerful tool for next-generation epigenetic ageing studies, offering a scalable and biologically rich platform for anti-ageing interventions monitoring and longitudinal ageing studies. Full article
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16 pages, 3999 KiB  
Article
Influence of TRISO Fuel Particle Arrangements on Pebble Neutronics and Isotopic Evolution
by Ben Impson, Mohamed Elhareef, Zeyun Wu and Braden Goddard
J. Nucl. Eng. 2025, 6(3), 27; https://doi.org/10.3390/jne6030027 - 14 Jul 2025
Viewed by 173
Abstract
Pebble Bed Reactors (PBRs) represent a new generation of nuclear reactors. However, modeling TRi-structural ISOtropic (TRISO) fuel particles employed in PBRs presents a unique challenge in comparison to most conventional reactor designs. Rapid generation of different possible fuel particle configurations for Monte-Carlo simulations [...] Read more.
Pebble Bed Reactors (PBRs) represent a new generation of nuclear reactors. However, modeling TRi-structural ISOtropic (TRISO) fuel particles employed in PBRs presents a unique challenge in comparison to most conventional reactor designs. Rapid generation of different possible fuel particle configurations for Monte-Carlo simulations provides improved insights into the effects of particle distribution irregularities on the neutron economy. Defective pebbles could cause changes in the neutron flux in a nuclear reactor due to increased or decreased moderating effects. Different configurations of particle fuel also impact isotope production within the nuclear reactor. This study simulates several TRISO configurations representing limited capabilities of randomization algorithms, manufacturing defects configurations and/or special pebble design. All predictions are compared to an equivalent homogenized model used as baseline. The results show that the TRISO configuration has a non-negligible impact on the parameters under consideration. To explain these results, the ratio of the thermal flux of each model to the thermal flux of the homogeneous model is calculated. A clear pattern is observed in the data: as irregularities in the moderator medium emerge due to the distribution of TRISO particles, the neutron spectrum softens, leading to higher values of k and better fuel utilization. This dependence of the spectrum on the TRISO configuration is used to explain the pattern observed in the depletion calculation. The results open the possibility of optimizing the TRISO configuration in manufactured pebbles for fuel utilization and safeguards. Future work should focus on full core simulations to determine the extent of these findings. Full article
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13 pages, 323 KiB  
Article
Application-Oriented Study of Next-Generation Alternant Codes over Gaussian Integers for Secure and Efficient Communication
by Muhammad Sajjad and Nawaf A. Alqwaifly
Mathematics 2025, 13(14), 2263; https://doi.org/10.3390/math13142263 - 13 Jul 2025
Viewed by 208
Abstract
This paper presents the construction and analysis of a novel class of alternant codes over Gaussian integers, aimed at enhancing error correction capabilities in high-reliability communication systems. These codes are constructed using parity-check matrices derived from finite commutative local rings with unity, specifically [...] Read more.
This paper presents the construction and analysis of a novel class of alternant codes over Gaussian integers, aimed at enhancing error correction capabilities in high-reliability communication systems. These codes are constructed using parity-check matrices derived from finite commutative local rings with unity, specifically Zn[i], where i2=1. A detailed algebraic investigation of the polynomial xn1 over these rings is conducted to facilitate the systematic construction of such codes. The proposed alternant codes extend the principles of classical BCH and Goppa codes to complex integer domains, enabling richer algebraic structures and greater error-correction potential. We evaluate the performance of these codes in terms of error correction capability, and redundancy. Numerical results show that the proposed codes outperform classical short-length codes in scenarios requiring moderate block lengths, such as those applicable in certain segments of 5G and IoT networks. Unlike conventional codes, these constructions allow enhanced structural flexibility that can be tuned for various application-specific parameters. While the potential relevance to quantum-safe communication is acknowledged, it is not the primary focus of this study. This work demonstrates how extending classical coding techniques into non-traditional algebraic domains opens up new directions for designing robust and efficient communication codes. Full article
(This article belongs to the Special Issue Mathematics for Algebraic Coding Theory and Cryptography)
22 pages, 1070 KiB  
Article
Methods for Measuring Open Innovation’s Impact on Innovation Ecosystems in the Context of the European Innovation Scoreboard
by Kristaps Banga and Elina Gaile-Sarkane
Businesses 2025, 5(3), 29; https://doi.org/10.3390/businesses5030029 - 12 Jul 2025
Viewed by 183
Abstract
In today’s globalized and rapidly evolving technological landscape, innovation serves as a critical driver of economic growth and competitive advantage. The concept of an innovation ecosystem has emerged to elucidate the complex interactions among various stakeholders—including public sectors, startups, academia, businesses, NGOs, and [...] Read more.
In today’s globalized and rapidly evolving technological landscape, innovation serves as a critical driver of economic growth and competitive advantage. The concept of an innovation ecosystem has emerged to elucidate the complex interactions among various stakeholders—including public sectors, startups, academia, businesses, NGOs, and venture capitalists—who collaborate and compete to foster technological advancements and economic growth. Open innovation emphasizes leveraging external ideas alongside internal efforts to enhance innovation capabilities, fostering more dynamic and resilient systems. Additionally, learning from innovation failures plays a crucial role in shaping effective strategies for growth, as startups often translate these learnings into robust innovation frameworks. Given the increasing complexity and interconnectedness of innovation ecosystems, traditional metrics often fail to capture their dynamic and collaborative nature. The European Innovation Scoreboard (EIS) provides a comprehensive framework for assessing the innovation performance of EU countries, offering insights into the overall health and performance of innovation ecosystems. This review article addresses the need to identify metrics and methods for measuring open innovation’s impact on innovation ecosystems. Building upon foundational theories and empirical findings, this study proposes a framework for evaluating the impact of open innovation on innovation ecosystems. It integrates insights from the academic literature with EIS metrics to develop robust methods for assessing open innovation’s multifaceted influence. This review article is particularly relevant as firms and policymakers strive to understand which metrics are most affected by open innovation and how these can be leveraged to enhance the performance and sustainability of innovation ecosystems. Full article
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28 pages, 549 KiB  
Review
Large Language Models for Knowledge Graph Embedding: A Survey
by Bingchen Liu, Yuanyuan Fang, Naixing Xu, Shihao Hou, Xin Li and Qian Li
Mathematics 2025, 13(14), 2244; https://doi.org/10.3390/math13142244 - 10 Jul 2025
Viewed by 304
Abstract
Large language models (LLMs) have attracted a lot of attention in various fields due to their superior performance, aiming to train hundreds of millions or more parameters on large amounts of text data to understand and generate natural language. As the superior performance [...] Read more.
Large language models (LLMs) have attracted a lot of attention in various fields due to their superior performance, aiming to train hundreds of millions or more parameters on large amounts of text data to understand and generate natural language. As the superior performance of LLMs becomes apparent, they are increasingly being applied to knowledge graph embedding (KGE)-related tasks to improve the processing results. Traditional KGE representation learning methods map entities and relations into a low-dimensional vector space, enabling the triples in the knowledge graph to satisfy a specific scoring function in the vector space. However, based on the powerful language understanding and semantic modeling capabilities of LLMs, which have recently been invoked to varying degrees in different types of KGE-related scenarios such as multi-modal KGE and open KGE according to their task characteristics, researchers are increasingly exploring how to integrate LLMs to enhance knowledge representation, improve generalization to unseen entities or relations, and support reasoning beyond static graph structures. In this paper, we investigate a wide range of approaches for performing LLMs-related tasks in different types of KGE scenarios. To better compare the various approaches, we summarize each KGE scenario in a classification. In the article we also discuss the applications in which the methods are mainly used and suggest several forward-looking directions for the development of this new research area. Full article
(This article belongs to the Special Issue Data-Driven Decentralized Learning for Future Communication Networks)
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19 pages, 1293 KiB  
Article
Open-Source Real-Time SDR Platform for Rapid Prototyping of LANS AFS Receiver
by Rion Sobukawa and Takuji Ebinuma
Aerospace 2025, 12(7), 620; https://doi.org/10.3390/aerospace12070620 - 10 Jul 2025
Viewed by 324
Abstract
The Lunar Augmented Navigation Service (LANS) is the lunar equivalent of GNSS for future lunar explorations. It offers users accurate position, navigation, and timing (PNT) capabilities on and around the Moon. The Augmented Forward Signal (AFS) is a standardized signal structure for LANS, [...] Read more.
The Lunar Augmented Navigation Service (LANS) is the lunar equivalent of GNSS for future lunar explorations. It offers users accurate position, navigation, and timing (PNT) capabilities on and around the Moon. The Augmented Forward Signal (AFS) is a standardized signal structure for LANS, and its recommended standard was published online on 7 February 2025. This work presents software-defined radio (SDR) implementations of the LANS AFS simulator and receiver, which were rapidly developed within a month of the signal specification release. Based on open-source GNSS software, including GPS-SDR-SIM and Pocket SDR, our system provides a valuable platform for future algorithm research and hardware-in-the-loop testing. The receiver can operate on embedded platforms, such as the Raspberry Pi 5, in real-time. This feature makes it suitable for lunar surface applications, where conventional PC-based SDR systems are impractical due to their size, weight, and power requirements. Our approach demonstrates how open-source SDR frameworks can be rapidly applied to emerging satellite navigation signals, even for extraterrestrial PNT applications. Full article
(This article belongs to the Section Astronautics & Space Science)
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15 pages, 1213 KiB  
Article
A Lightweight Certificateless Authenticated Key Agreement Scheme Based on Chebyshev Polynomials for the Internet of Drones
by Zhaobin Li, Zheng Ju, Hong Zhao, Zhanzhen Wei and Gongjian Lan
Sensors 2025, 25(14), 4286; https://doi.org/10.3390/s25144286 - 9 Jul 2025
Viewed by 156
Abstract
The Internet of Drones (IoD) overcomes the physical limitations of traditional ground networks with its dynamic topology and 3D spatial flexibility, playing a crucial role in various fields. However, eavesdropping and spoofing attacks in open channel environments threaten data confidentiality and integrity, posing [...] Read more.
The Internet of Drones (IoD) overcomes the physical limitations of traditional ground networks with its dynamic topology and 3D spatial flexibility, playing a crucial role in various fields. However, eavesdropping and spoofing attacks in open channel environments threaten data confidentiality and integrity, posing significant challenges to IoD communication. Existing foundational schemes in IoD primarily rely on symmetric cryptography and digital certificates. Symmetric cryptography suffers from key management challenges and static characteristics, making it unsuitable for IoD’s dynamic scenarios. Meanwhile, elliptic curve-based public key cryptography is constrained by high computational complexity and certificate management costs, rendering it impractical for resource-limited IoD nodes. This paper leverages the low computational overhead of Chebyshev polynomials to address the limited computational capability of nodes, proposing a certificateless public key cryptography scheme. Through the semigroup property, it constructs a lightweight authentication and key agreement protocol with identity privacy protection, resolving the security and performance trade-off in dynamic IoD environments. Security analysis and performance tests demonstrate that the proposed scheme resists various attacks while reducing computational overhead by 65% compared to other schemes. This work not only offers a lightweight certificateless cryptographic solution for IoD systems but also advances the engineering application of Chebyshev polynomials in asymmetric cryptography. Full article
(This article belongs to the Special Issue UAV Secure Communication for IoT Applications)
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23 pages, 439 KiB  
Article
Evaluating Proprietary and Open-Weight Large Language Models as Universal Decimal Classification Recommender Systems
by Mladen Borovič, Eftimije Tomovski, Tom Li Dobnik and Sandi Majninger
Appl. Sci. 2025, 15(14), 7666; https://doi.org/10.3390/app15147666 - 8 Jul 2025
Viewed by 205
Abstract
Manual assignment of Universal Decimal Classification (UDC) codes is time-consuming and inconsistent as digital library collections expand. This study evaluates 17 large language models (LLMs) as UDC classification recommender systems, including ChatGPT variants (GPT-3.5, GPT-4o, and o1-mini), Claude models (3-Haiku and 3.5-Haiku), Gemini [...] Read more.
Manual assignment of Universal Decimal Classification (UDC) codes is time-consuming and inconsistent as digital library collections expand. This study evaluates 17 large language models (LLMs) as UDC classification recommender systems, including ChatGPT variants (GPT-3.5, GPT-4o, and o1-mini), Claude models (3-Haiku and 3.5-Haiku), Gemini series (1.0-Pro, 1.5-Flash, and 2.0-Flash), and Llama, Gemma, Mixtral, and DeepSeek architectures. Models were evaluated zero-shot on 900 English and Slovenian academic theses manually classified by professional librarians. Classification prompts utilized the RISEN framework, with evaluation using Levenshtein and Jaro–Winkler similarity, and a novel adjusted hierarchical similarity metric capturing UDC’s faceted structure. Proprietary systems consistently outperformed open-weight alternatives by 5–10% across metrics. GPT-4o achieved the highest hierarchical alignment, while open-weight models showed progressive improvements but remained behind commercial systems. Performance was comparable between languages, demonstrating robust multilingual capabilities. The results indicate that LLM-powered recommender systems can enhance library classification workflows. Future research incorporating fine-tuning and retrieval-augmented approaches may enable fully automated, high-precision UDC assignment systems. Full article
(This article belongs to the Special Issue Advanced Models and Algorithms for Recommender Systems)
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