Last updated: 2026-05-30 05:01 UTC
All documents
Number of pages: 164
| Author(s) | Title | Year | Publication | Keywords | ||
|---|---|---|---|---|---|---|
| Amirhosein Yari, Majid Khabbazian | SPARE: Asymmetric Proof-of-Work–Based DoS Mitigation for IoT Devices | 2026 | Early Access | Internet of Things Costing Costs Bitcoin Packaging Timing Poles and zeros Handwriting recognition Protocols Recycling DoS Mitigation Proof-of-Work Blockchain IoT | Battery-powered IoT nodes are vulnerable to signature-verification denial-of-service (DoS): an adversary can flood a device with well-formed but invalid messages, forcing expensive digital-signature verifications. A standard mitigation is to require proof-of-work (PoW) per message, but this symmetrically burdens honest and dishonest senders alike. We address this shortcoming with an asymmetric PoW-based mitigation that makes attackers pay while sparing honest parties. A designated Bitcoin miner embeds a request commitment in its coinbase transaction; any non-winning block header whose hash falls below an application-chosen threshold serves as PoW. The sender appends this header and a logarithmic-size Merkle proof; the IoT device first validates this PoW—just a handful of hash evaluations—before attempting the costly signature verification. Because proofs are bound to the miner’s payout address, adversaries cannot piggy-back on recycled work: they must grind fresh headers (or effectively mine on the designated miner’s behalf), preserving a large resource gap in the defender’s favor. We prototype the scheme on an ESP32 MCU and show that PoW verification takes 0.8 ms versus 260 ms for ECDSA (>300× speed-up); proof packages remain < 1 kB, and end-to-end latency is dominated by network RTT even with a moderate-capacity miner; power measurements likewise confirm that hash-based verifications cost orders of magnitude less energy than signatures. The mechanism requires no blockchain modifications, scales to thousands of devices per miner, and immediately hardens firmware updates, certificate rotation, and other unsolicited IoT traffic against signature-verification DoS attacks. | 10.1109/TNSM.2026.3696557 |
| Deemah H. Tashman, Soumaya Cherkaoui | Trustworthy AI-Driven Dynamic Hybrid RIS: Joint Optimization and Reward Poisoning-Resilient Control in Cognitive MISO Networks | 2026 | Early Access | Reconfigurable intelligent surfaces Reliability Optimization Security MISO Array signal processing Vectors Satellites Reflection Interference Beamforming cascaded channels cognitive radio networks deep reinforcement learning dynamic hybrid reconfigurable intelligent surfaces energy harvesting poisoning attacks | Cognitive radio networks (CRNs) are a key mechanism for alleviating spectrum scarcity by enabling secondary users (SUs) to opportunistically access licensed frequency bands without harmful interference to primary users (PUs). To address unreliable direct SU links and energy constraints common in next-generation wireless networks, this work introduces an adaptive, energy-aware hybrid reconfigurable intelligent surface (RIS) for underlay multiple-input single-output (MISO) CRNs. Distinct from prior approaches relying on static RIS architectures, our proposed RIS dynamically alternates between passive and active operation modes in real time according to harvested energy availability. We also model our scenario under practical hardware impairments and cascaded fading channels. We formulate and solve a joint transmit beamforming and RIS phase optimization problem via the soft actor-critic (SAC) deep reinforcement learning (DRL) method, leveraging its robustness in continuous and highly dynamic environments. Notably, we conduct the first systematic study of reward poisoning attacks on DRL agents in RIS-enhanced CRNs, and propose a lightweight, real-time defense based on reward clipping and statistical anomaly filtering. Numerical results demonstrate that the SAC-based approach consistently outperforms established DRL base-lines, and that the dynamic hybrid RIS strikes a superior trade-off between throughput and energy consumption compared to fully passive and fully active alternatives. We further show the effectiveness of our defense in maintaining SU performance even under adversarial conditions. Our results advance the practical and secure deployment of RIS-assisted CRNs, and highlight crucial design insights for energy-constrained wireless systems. | 10.1109/TNSM.2026.3660728 |
| Lizhuang Tan, Nguyen Van Tu, Xinhang Wang, Peiying Zhang, James Won-Ki Hong | SDNIE: A Software-Defined Approach to High-Performance Network Impairment Emulation using Programmable Switches | 2026 | Early Access | Emulation Central Processing Unit Testing Delays Switches Hardware Programming Information rates Throughput Limiting Software-Defined Networking Programmable Data Plane Network Testing Network Impairment Emulation Network Management | Network testing is critical for evaluating the performance, reliability, and security of modern computer networks. A key challenge is creating an accurate, cost-effective, and high-performance network emulation environment. Network Impairment Emulators (NIEs) emulate real-world network conditions such as bandwidth constraints, latency, and packet loss, but existing CPU- and FPGA-based solutions suffer from limited performance, high costs, and poor flexibility. This paper proposes Software-Defined Network Impairment Emulation (SDNIE), a novel framework that leverages programmable switches for scalable, cost-efficient network impairment emulation. SDNIE introduces three key techniques: (1) intent-driven network impairment configuration, automating impairment modeling; (2) serial-parallel combined execution, optimizing performance; and (3) CPU-Tofino collaborative deployment, offloading complex computations. Experimental results show that SDNIE matches commercial emulators in performance while significantly reducing costs. This work demonstrates the potential of programmable switches in network testing, offering a scalable, cost-effective, and high-performance alternative for next-generation network impairment emulation. | 10.1109/TNSM.2026.3694388 |
| Ashely Li, Jeffrey Chang, Steven S. W. Lee | Modeling and Optimization Algorithm for Capacity Planning in Hose Model VPN Networks | 2026 | Early Access | Joining processes Modeling Algorithms Virtual private networks Routing Hoses Bandwidth Optimization Timing Capacity planning Capacity Planning Virtual Private Network Hose Model Water-Filling Algorithm Network Optimization | Hose-based VPNs offer greater bandwidth flexibility, as they allow traffic to and from a hose endpoint to be arbitrarily distributed across other endpoints. Existing studies on hose-based VPNs have primarily focused on VPN provisioning algorithms, while optimal capacity planning for hose-based VPN networks remains largely unexplored. Given budget constraints and forecasts of future bandwidth demands at VPN endpoints, the capacity planning problem requires the joint optimization of routing decisions and link capacity allocation. Although the problem can be formulated as a nonlinear programming model, its nonconvex nature makes direct solution computationally challenging. To address this issue, we reformulate the problem as a sequence of linear programming problems and develop a solution framework based on a water-filling algorithm. For any defined budget and relative tolerance, the proposed algorithm yields a near-optimal solution where the network expansion cost stays within the allowed margin. Numerical results demonstrate that the proposed approach efficiently solves the hose-based VPN capacity planning problem within practical computation time. | 10.1109/TNSM.2026.3694390 |
| Arman Sanaei, Massoud Reza Hashemi | Adaptive, Profit-Aware RAN Slicing for Multi-Operator Networks via Spatio-Temporal Prediction and Energy-Aware SAC | 2026 | Early Access | Cells (biology) Energy Modeling Pricing Schedules Scheduling Costing Costs Resource management Central Processing Unit energy-aware scheduling isolation pressure mobile edge computing (MEC) multi-tenant networks MVNO profit maximization RAN slicing reinforcement learning Soft Actor–Critic (SAC) spatio-temporal prediction | The proliferation of heterogeneous 5G/6G services and the emergence of multi-tenant deployments have made isolation-preserving RAN slicing a central requirement for shared infrastructures. This paper studies multi-tenant RAN slicing where multiple Mobile Virtual Network Operators (MVNOs) compete for a common pool of radio and edge-compute resources and must maximize long-term economic performance while preserving slice isolation. We propose a two-timescale framework that couples (i) prediction-driven, per-cell Long Time Slot (LTS) reservation with an isolation-aware congestion/pressure cost that coordinates competing MVNO demands, and (ii) Short Time Slot (STS) per-user allocation modeled as a Markov decision process and solved via an energy-aware Soft Actor–Critic (SAC) policy. This design separates strategic capacity planning from fast, stochastic user-level control, while retaining tractability under dynamic traffic, mobility, and channel uncertainty. Extensive simulations across small- and large-scale deployments show that the proposed approach improves MVNO profit per cell per LTS by up to 26% over representative baselines, while maintaining robust isolation under asymmetric demand and rival-tenant growth. | 10.1109/TNSM.2026.3694799 |
| Jiang Mo, Ke Zhao, Limei Peng, Hsiao-Chun Wu | PDO-SFCM: Prediction-Driven Orchestration for SFC Migration in SAGIN via Fine-Tuned Large Time-Series Model and DRL | 2026 | Early Access | Modeling Space-air-ground integrated networks Timing Costing Costs Tuning Delays Optimization Algorithms Joining processes Space-air-ground integrated network (SAGIN) service function chain (SFC) migration prediction-driven network orchestration large time-series model (LTM) deep reinforcement learning (DRL) cost-augmented enhanced timeexpanded graph (C-eTEG) | Space-air-ground integrated networks (SAGINs) have emerged as an appealing enabling technology for the next-generation ubiquitous connectivity. By extending terrestrial networks with aerial and space platforms, SAGIN can provide seamless coverage and flexible resource-access across various altitudes. However, dynamic link conditions, intermittent connectivity, and heterogeneous latency constraints would often introduce serious challenges to the service function chain (SFC) migration and orchestration. In this work, we introduce a novel PDO-SFCM (prediction-driven orchestration for SFC migration) approach, which utilizes a fine-tuned large time-series model (LTM) for network status prediction and a deep reinforcement learning (DRL) module for proactive SFC migration in SAGINs. In detail, the fine-tuned LTM predicts multi-horizon estimates of SFC arrivals and per virtual network function (per-VNF) resource demands, which will form the observation space of the DRL agent. The DRL module thus schedules appropriate migration actions on the cost-augmented time-expanded graph (C-eTEG), which can satisfy the feasibility subject to the bandwidth, buffering, and precedence constraints. Extensive simulation results demonstrate that our proposed new PDO-SFCM scheme consistently greatly improves the acceptance rate, reduces the end-to-end delay, and lowers the migration cost in comparison with DRL baselines under different prediction settings. Our proposed new scheme can significantly leverage the SAGIN performance by the devised foundation-level time-series prediction and learning-based orchestration mechanisms. | 10.1109/TNSM.2026.3694203 |
| Xiaomao Zhou, Zihao Shao, Qingmin Jia, Renchao Xie | ProxyLLM: Augmenting LLMs with Proxy Models for Tool Utilization in Network Service Generation | 2026 | Early Access | Tools Modeling Large language models Learning (artificial intelligence) Training Optimization Accuracy Planning Strontium Cognition Large Language Models Tool utilization knowledge distillation Deep Reinforcement Learning Network service generation Computing Power Network | This paper introduces ProxyLLM, a novel framework designed to enhance the tool utilization capabilities of Large Language Models (LLMs) by leveraging an ensemble of smaller, specialized proxy models. Specifically, instead of invoking tools directly, ProxyLLM delegates tasks to these proxy models, each of which is responsible for a distinct domain and equipped with a curated set of relevant tools. Meanwhile, ProxyLLM employs a two-step knowledge transfer mechanism, utilizing data generated by the LLM for knowledge distillation and LLM-guided Deep Reinforcement Learning (DRL) to enhance the decision-making abilities of the proxy models. During the data-driven knowledge distillation process, the introduction of rationales ensures that proxy models maintain a comprehensive understanding of tasks, thereby improving the learning effectiveness. In the DRL learning process, LLM guidance is separately integrated into both the actor and critic learning phases. This ensures consistency in strategy and uniformity in evaluating the action space, which enhances both the efficiency and effectiveness of the learning process. Extensive experiments, including real-world applications such as network service generation in a Computing Power Network (CPN) system, demonstrate that ProxyLLM significantly outperforms existing methods in terms of task accuracy and tool invocation efficiency. The proposed framework offers a promising solution for constructing generalizable, large-scale intelligent agents capable of effectively leveraging diverse tools to solve complex, cross-domain problems. | 10.1109/TNSM.2026.3695074 |
| Haoyu Luo, Ming Liu, Shaojian Qiu, Xiao Liu | FaaSAdapter: An Adaptive Resource Configuration Framework for Serverless Workflows at the Edge | 2026 | Early Access | Optimization Resource management Modeling Timing Costing Costs Runtime Matrices Conferences Modules (abstract algebra) Serverless computing resource configuration workflow service level objective edge computing | Serverless computing has emerged as a promising deployment paradigm for edge scenarios, owing to its efficient resource utilization and flexible provisioning enabled by Function-as-a-Service (FaaS). In Serverless environment, developers are required to configure resources for functions to balance cost efficiency and performance. However, determining appropriate resource allocations for the functions running at the edge is a challenge due to the dynamic nature of the environment. This challenge is further compounded when managing serverless workflows composed of multiple interconnected functions with complex dependencies. To address such an challenge, we present FaaSAdapter, an efficient runtime resource configuration framework for workflow functions, aiming at conserving computational resources at the edge while ensuring timely response to user requests. Different from existing dynamic resource configuration methods that incrementally determine resource schemes for only the immediate subsequent workflow function, FaaSAdapter predicts the execution times of all the unexecuted functions across various resource configurations and determines an optimal configuration schema for the function instances based on the current execution progress. Then, it updates the configuration schema as needed during runtime. Comprehensive experiments demonstrate that FaaSAdapter ensures satisfactory response time of user requests with lowest resource consumption. | 10.1109/TNSM.2026.3695591 |
| Arash Heidari, Jamal N. Al-Karaki | NOVA: A Self-Supervised Graph Framework for Real-Time Anomaly Detection in Internet of Vehicles | 2026 | Early Access | Context Internet of Vehicles Modeling Timing Vehicles Labeling Anomaly detection Matrices Vectors Joining processes Internet of Vehicles V2X Security Anomaly Detection Self-Supervised Learning Graph Neural Networks | The Internet of Vehicles (IoV) enables cooperative driving and real-time Vehicle-to-Everything (V2X) communication but remains vulnerable to behavioral and structural anomalies due to its dynamic, decentralized nature. Existing deep learning methods either overlook topological inconsistencies or ignore communication feature fidelity, while random-walk sampling introduces contextual noise. In this paper, we propose Network Observation for Vehicular Anomalies (NOVA), a self-supervised graph-based framework that detects both behavioral and structural anomalies in IoV networks without labeled data. NOVA models vehicular communications as attributed graphs and employs intimacy-guided subgraph sampling to extract meaningful neighborhoods. A Graph Convolutional Network (GCN)–based generative module reconstructs node attributes to reveal behavioral deviations, while a contrastive module validates structural coherence through embedding comparisons of real and perturbed contexts. Their hybrid anomaly score enables accurate, scalable, and real-time detection of compromised nodes. Performance results show that NOVA achieves state-of-the-art performance (98.7% accuracy, 98.1% F1), real-time throughput (~4.7k events/s at 5k msg/s), and strong robustness (AUROC 0.99, AUPRC 0.98, FAR 0.05) with near-linear scalability (≤40 ms latency for 50k vehicles). By integrating generative and contrastive self-supervised learning with context-aware sampling, NOVA significantly enhances IoV security, reliability, and adaptability. | 10.1109/TNSM.2026.3696324 |
| Songshou Dong, Yanqing Yao, Huaxiong Wang, Yining Liu | LCMS: Efficient Lattice-based Conditional Privacy-preserving Multi-receiver Signcryption Scheme for Internet of Vehicles | 2026 | Early Access | Optical waveguides Optical fibers Broadcasting Broadcast technology Oscillators Circuits Feedback Circuits and systems Internet of Vehicles Communication systems Internet of Vehicles signcryption weak unlinkable certificateless revocable multi-receiver distributed decryption | Internet of Vehicles (IoV) requires robust security and privacy protection mechanisms to enable trusted traffic information exchange, while also requiring low communication and low computing overhead to meet the real-time requirements of IoV. Existing signcryption schemes suffer from quantum vulnerability, inadequate unlinkability/vehicle anonymity, absence of revocability, poor scalability, inadequate management of malicious entities, and high communication and computational overhead. So we propose an efficient lattice-based conditional privacy-preserving multi-receiver signcryption scheme (LCMS) that systematically addresses these gaps through three core innovations: 1) Privacy preservation is achieved via a pseudonym mechanism integrated with certificateless key generation, which ensures vehicle anonymity and weak unlinkability while preventing malicious key generation center and key escrow; 2) Malicious entity management through dynamic revocability and distributed decryption among roadside units, preventing unilateral message access; and 3) Post-quantum efficiency is achieved by leveraging the Learning With Rounding problem to eliminate expensive Gaussian sampling, combined with ciphertext packing techniques. This reduces time overhead, the size of signcryptexts, and communication overhead, while lowering the overall storage overhead of the scheme through the MP12 trapdoor. Security proofs show LCMS achieves Existential Unforgeability under Adaptive Identity Chosen-Message Attack and Indistinguishability under Adaptive Identity Chosen-Ciphertext Attack in the Random Oracle Model, with rigorously validated resistance against multiple IoV-specific attacks. Experimental results via SageMath implementation demonstrate that our scheme exhibits a smaller signcryptext size and lower signcryption/unsigncryption time compared to existing random lattice-based signcryption schemes. Scalability tests with 300 vehicles and 300 roadside units (RSUs) were completed within 230 seconds. Communication overhead analysis confirms practical feasibility for IEEE 802.11p vehicle communication protocol, and RSU serving capability evaluation under realistic vehicle density (100–200/km2) and speed (40–60 km/h) further validates system practicality. LCMS provides a quantum-resistant, privacy-preserving, and efficient solution for production IoV. | 10.1109/TNSM.2026.3688507 |
| Soonbeom Kwon, Yusu Noh, Youngwoo Jang, Illyoung Choi, Byungchul Tak, In-geol Chun, Young-Kyoon Suh | Scalable and Robust Resource Provisioning via Adaptive Task Scheduling for Edge Devices | 2026 | Early Access | Schedules Scheduling Cloning Timing Educational institutions Computers Transcoding Videos Tail Edge computing Edge devices Edge server Resource augmentation Task distribution Kubernetes | Edge devices, such as wearables, drones, and CCTV systems, are vital for real-time data collection in urban intelligence. However, their limited computational and storage capacities pose significant challenges. While offloading to public clouds offers scalability, it often incurs high latency and operational costs. Conversely, centralizing workloads on edge servers may result in the underutilization of high-performance edge devices. To address these limitations, we introduce ERPF, a Kubernetes-based Edge Resource Provisioning Framework that augments the capabilities of heterogeneous edge environments. ERPF orchestrates dynamic volume provisioning, GPU-aware resource allocation, execution context migration, and adaptive task distribution to improve system flexibility and efficiency. Building on this, we propose a novel adaptive task scheduling technique, termed eATS, composed of three key mechanisms: (i) Partition Smoothing Scheme for stable task granularity control, (ii) Resilient Edge Reintegration for failure detection and task reassignment, and (iii) Competitive Task Cloning for speculative execution with fastest-result commitment. The proposed eATS scheme reduces task execution time by up to 27.6%, lowers partition size variability by 8.7×, and improves scheduling robustness across heterogeneous edge devices over the baseline. | 10.1109/TNSM.2026.3694238 |
| Awaneesh Kumar Yadav, Ravi Kumar, An Braeken, Madhusanka Liyanage | A Provably Secure Multifactor Authentication and Key Exchange Protocol with Anonymity for Next-Generation IoT | 2026 | Early Access | Internet of Things Authentication Protocols Security Servers Elliptic curve cryptography Timing Error correction codes Clouds Design methodology IoT Authentication Anonymity Perfect Forward Secrecy Physical Unclonable Function (PUF) | With the rapid surge in IoT devices, communication between the IoT devices and the server becomes more frequent. Since IoT devices are considered at the edge of the networks, their communication is completely exposed to the server, making them prone to several attacks. In addition to this, IoT devices have limited energy and computational resources. Therefore, there is an impelling necessity for an authentication mechanism suitable for security and taking into account the resource constraints. This paper shows that a recently proposed protocol by Daojing et al. is prone to serious attacks such as stolen device attacks, suffers from integrity violations, and does not offer perfect forward secrecy. We propose an alternative and more secure authentication mechanism for this type of model and also show that this protocol offers better performance with respect to the state-of-the-art. The proposed protocol achieves reductions of 75%, 40%, 36%, and 71% in computational, communication, storage, and energy consumption costs, respectively. Additionally, the protocol only has two communication phases. Furthermore, prototype implementation and simulation with the NS3 tool are carried out to show the applicability of the proposed work in real-time scenarios. | 10.1109/TNSM.2026.3696671 |
| Jing Zhang, Chao Luo, Rui Shao | MTG-GAN: A Masked Temporal Graph Generative Adversarial Network for Cross-Domain System Log Anomaly Detection | 2026 | Early Access | Anomaly detection Adaptation models Generative adversarial networks Feature extraction Data models Load modeling Accuracy Robustness Contrastive learning Chaos Log Anomaly Detection Generative Adversarial Networks (GANs) Temporal Data Analysis | Anomaly detection of system logs is crucial for the service management of large-scale information systems. Nowadays, log anomaly detection faces two main challenges: 1) capturing evolving temporal dependencies between log events to adaptively tackle with emerging anomaly patterns, 2) and maintaining high detection capabilities across varies data distributions. Existing methods rely heavily on domain-specific data features, making it challenging to handle the heterogeneity and temporal dynamics of log data. This limitation restricts the deployment of anomaly detection systems in practical environments. In this article, a novel framework, Masked Temporal Graph Generative Adversarial Network (MTG-GAN), is proposed for both conventional and cross-domain log anomaly detection. The model enhances the detection capability for emerging abnormal patterns in system log data by introducing an adaptive masking mechanism that combines generative adversarial networks with graph contrastive learning. Additionally, MTG-GAN reduces dependency on specific data distribution and improves model generalization by using diffused graph adjacency information deriving from temporal relevance of event sequence, which can be conducive to improve cross-domain detection performance. Experimental results demonstrate that MTG-GAN outperforms existing methods on multiple real-world datasets in both conventional and cross-domain log anomaly detection. | 10.1109/TNSM.2026.3654642 |
| Min Yuan, Qiangsheng Hu, Yuqing Zhu, Hongbing Wang | Prioritizing Critical Tasks in Microservice Clouds: A Dependency-Aware Container Scheduling Framework via Grouping and Degradation | 2026 | Early Access | Containers Optimization Algorithms Modeling Timing Gallium Scheduling Resource management Schedules Labeling Container Resource Scheduling Dependency Strength Container Grouping Critical Tasks Service Degradation | Containerized deployment serves as a pivotal technology for enhancing service performance and resource efficiency in large-scale distributed systems. However, guaranteeing the execution quality of critical tasks in resource-constrained scenarios remains a pressing challenge. This paper proposes a critical-task-prioritized container resource scheduling framework. Firstly, a dependency quantification model based on the Genetic Algorithm is designed to calculate the dependency strength between containers. Secondly, a container grouping strategy based on the Seagull Optimization Algorithm is proposed. Upon determining the optimal container group size, containers are grouped based on their dependency strengths. Finally, a service degradation mechanism for non-critical tasks is introduced. By predicting criticality rankings based on historical data, resources are released from non-critical task groups and prioritized for allocation to critical task groups, thereby ensuring the Quality of Service (QoS) of core business operations. Extensive experiments utilizing real-world datasets demonstrate that the proposed framework outperforms traditional algorithms, effectively increasing the successful request volume of critical tasks and reducing response latency. | 10.1109/TNSM.2026.3697106 |
| Yan Wang, Xingwei Wang, Hao Lu, Bo Yi, Min Huang, Yue Kou | Intelligent Cross-Domain Data Orchestration in Computing Power Networks: An Attention-Enhanced Multi-Agent Reinforcement Learning Approach | 2026 | Early Access | Modeling Delays Optimization Service level agreements Costing Costs Management Training Resource management Algorithms Computing Power Networks data orchestration multi-agent reinforcement learning attention mechanism | Computing Power Networks (CPNs) integrate heterogeneous resources across the cloud–edge–end continuum to support wide-area distributed computational services, but the geographical separation of computation and data makes cross-domain data access a major bottleneck. Intelligent cross-domain data orchestration in CPNs is difficult because replica selection and end-to-end path planning must be jointly optimized under Service Level Agreement (SLA) and resource constraints, while each domain observes only partial congestion and resource information. This paper presents AE-MAAC, an attention-enhanced multi-agent reinforcement learning framework that formulates cross-domain data orchestration as a Multi-Agent Markov Decision Process (MMDP) with a hierarchical composite action space and constraint-aware masking under a centralized-training–decentralized-execution paradigm. An attention-based state representation captures heterogeneous cross-domain topology and resource information, an attention-enhanced centralized critic strengthens inter-domain credit assignment in large-scale settings, and parallel dual-policy actors together with a parallel experience ensemble and prioritized sampling improve training stability in large constrained action spaces. Extensive simulations across three CPN scales show that AE-MAAC achieves the highest average episode reward. In the representative 5×10 network, it reaches an average episode reward of 431.7 with a 94.2% request success rate and a 259.8 ms average end-to-end delay, while yielding a lower multi-objective cost than state-of-the-art RL baselines. | 10.1109/TNSM.2026.3696950 |
| Mariusz Głąbowski, Sławomir Hanczewski, Damian Kmiecik, Maciej Stasiak, Joanna Weissenberg | Modeling of multi-service queueing systems with traffic overflow | 2026 | Early Access | Modeling Probability Servers Streams Telecommunications Clouds Educational institutions Erbium Resource management Cells (biology) analytical modeling queuing systems overflow traffic multi-service systems | This article proposes an analytical model of a multi-service hierarchical system with multi-service overflow traffic. To model the primary and secondary resources of this system, the state-dependent queue service discipline was used. In order to model the secondary resources with the dedicated queue for overflow traffic, the Hayward’s approach was generalized and applied. To evaluate its accuracy, the results of analytical modeling were compared with the data obtained during the simulation experiments carried out in the study. Both the data presented in the article and the results obtained by the present authors in numerous comparative studies clearly indicate that the proposed model makes it possible to evaluate the values of the blocking probability with the accuracy that provides its reliable practical application at the stage of network dimensioning. The overflow mechanism has particular significance in networks with limited resources, such as mobile networks. | 10.1109/TNSM.2026.3696894 |
| Emilio Paolini, Andrea Pinto, Luca Valcarenghi, Flavio Esposito | Programmable In-Network Aggregation for Communication-Aware Federated Learning in 5G RANs | 2026 | Early Access | Modeling Timing Training Federated learning Accuracy 5G mobile communication Convergence Aggregates Labeling Point cloud compression Federated Learning Mobile Networks Wireless In-Network Aggregation Grouping | Federated Learning (FL) enables collaborative model training without sharing raw data, making it attractive for privacy-preserving applications at the wireless edge. However, when executed over real 5G networks, FL performance degrades due to uplink congestion, heterogeneous client capabilities, and intermittent connectivity. Most existing approaches attempt to mitigate these issues indirectly by optimizing clients (through adaptive participation, local training, or selection strategies) or by optimizing models (via pruning, quantization, or compression), but they ignore potential network bottlenecks. This paper introduces FLAG, an FL architecture that embeds innetwork aggregation directly into 5G gNodeBs, transforming the network into an active participant in the learning process. In particular, FLAG performs parameter aggregation at line rate within the 5G Service Data Adaptation Protocol layer and incorporates three mechanisms: Partial-Contribution Correction for loss-tolerant averaging, a timer-driven pipeline for real-time scheduling, and a deadline-based grouping strategy to mitigate stragglers. Experiments with realistic wireless emulation show that FLAG achieves up to 5.1× faster time-to-accuracy and maintains accuracy within 0.8% of a loss-free baseline, while reducing gNB-to-server bandwidth by aggregating pergNB rather than per-client. FLAG requires no modifications to clients or the parameter server, demonstrating how 5G-aware system design can make federated learning scalable, efficient, and resilient under real-world wireless conditions. | 10.1109/TNSM.2026.3697723 |
| Li Zhang, Chan Xu, Yuan Huang, Bing Tang, Zijun Peng, Wenhui He, Buqing Cao, Mingdong Tang | Elastic Scaling for Microservices in Cloud-Edge Collaborative Environments: A Workload Prediction-Driven Approach | 2026 | Early Access | Cloud computing optimizes service quality and resource efficiency via centralized hardware and computational resources. However, the predominantly centralized deployment and operation of cloud data centers increase the physical distance to end-users, leading to degraded service quality. Edge computing addresses this by offloading data processing and analysis tasks directly to devices at the network edge, reducing reliance on backhaul transmission and thus offering a more responsive solution for latency-sensitive applications. Nevertheless, ensuring that applications meet predefined Service Level Agreement (SLA) in resource-constrained edge environments remains challenging. To tackle these issues, this paper investigates elastic scaling strategies in cloud-edge collaborative settings. We propose an attention-enhanced bidirectional LSTM model (A-Bi-LSTM) for microservice workload prediction, and design an adaptive elastic scaling system named XScale. This system incorporates a fall-back scaling mechanism when predictions are unreliable and introduces a proactive load forwarding strategy to enhance overall edge node performance. Experimental results show that, compared to existing elastic scaling methods, XScale reduces SLA violations by 82.3%, increases average resource utilization by 17.4%, decreases average response time by 21.1%, and improves overall edge node performance by 36.3%. | 10.1109/TNSM.2026.3696137 | |
| Shuyun Luo, Dongmiao Ying, Zhiyi Luo, Weiqiang Xu | Edge-based Approximate Caching for Fast and Scalable Text-to-Image Diffusion Models | 2026 | Early Access | Modeling Clouds Servers Algorithms Image synthesis Text to image Silicon Diffusion models Costing Costs Approximate Caching Edge Computing Diffusion Models Text-to-image Generation | Text-to-image generation applications based on diffusion models face substantial challenges in computational efficiency and latency, particularly in time-sensitive scenarios, due to the inherently iterative denoising process. Although approximate caching techniques can reduce denoising iterations by reusing intermediate states of diffusion models, existing approaches fail to adequately capture user request behaviors. It is observed that users tend to issue a large number of prompt requests within short time intervals (bursty patterns), and that prompts from the same user often exhibit high similarity over short time periods (temporal locality). In this work, we define and formalize the Intermediate State Selection (ISS) problem to minimize denoising iterations. We further prove the NP-hardness of the ISS problem via a polynomial-time reduction from the Dominating Set problem. We then exploit both characteristics of prompt requests and present EdgeDiffusion, a novel edge-cloud cooperative framework in which the cloud retains image generation, while prompts caching and intermediate state selection are offloaded to edge servers. Specifically, we design an ISS algorithm that optimizes state reuse by leveraging temporal locality and an adaptive caching strategy tailored to bursty patterns. Experimental results on real-world datasets demonstrate that EdgeDiffusion achieves 18.3%-77.3% computational savings over baseline strategies (NIRVANA, qLRU-AC, LRU and LFU), while maintaining 98% quality of images. | 10.1109/TNSM.2026.3697787 |
| Arad Kotzer, Tom Azoulay, Yoad Abels, Aviv Yaish, Ori Rottenstreich | SoK: DeFi Lending and Yield Aggregation Protocol Taxonomy, Empirical Measurements, and Security Challenges | 2026 | Early Access | Filtering Application specific integrated circuits Filters Protocols Smart contracts Communication systems Proof of stake Proof of Work Internet Amplitude shift keying Blockchain Decentralized Finance (DeFi) Lending Yield Aggregation | Decentralized Finance (DeFi) lending protocols implement programmable credit markets without intermediaries. This paper systematizes the DeFi lending ecosystem, spanning collateralized lending (including over- and under- collateralized designs, and zero-liquidation loans), uncollateralized primitives (e.g., flashloans), and yield aggregation protocols which allocate capital across underlying lending platforms. Beyond a taxonomy of mechanisms and comparing protocols, we provide empirical on-chain measurements of lending activity and user behavior, using Compound V2 and AAVE V2 as case studies, and connect empirical observations to protocol design choices (e.g., interestrate models and liquidation incentives). We then characterize vulnerabilities that arise due to notable designs, focusing on interestrate setting mechanisms and time-measurement approaches. Finally, we outline open questions at the intersection of mechanism design, empirical measurement and security for future research. | 10.1109/TNSM.2026.3682174 |