Last updated: 2026-06-13 05:01 UTC
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Number of pages: 165
| Author(s) | Title | Year | Publication | Keywords | ||
|---|---|---|---|---|---|---|
| Huijuan Zhu, Chenhao Zheng, Zhongyuan Liu, Yuan Zhang | Reliable Interpretations of Deep Learning-based Malware Detectors via Deep Q-Networks | 2026 | Early Access | Malware Signal detection Modeling Application programming interfaces Operating systems Androids Training Detectors Probability Conferences Android Malware detection Interpretation Deep Q-Networks | Deep learning has become widely used in Android malware detection, but its black-box nature raises trust concerns, limiting its use in critical security areas. To address this, various interpretation methods have been proposed. Unfortunately, these solutions often suffer from inconsistent results and poor adaptability to model updates. In this work, we propose XDQNMal, a Deep Q-Networks (DQN)-based global interpretation framework designed to uncover the critical features that drive decisions in deep learning-based malware detectors. To enhance the reliability of interpretation, XDQNMal captures API call frequency features derived from the runtime behavior of each application (App). Then, it unites a DQN model with the TabPFN detection model to work collaboratively, using variations in detection results as reward signals. These signals guide the DQN model to gradually identify the most impactful features as interpretations for the detection model’s decisions. Our experimental evaluation on real-world datasets demonstrates that the proposed XDQNMal framework generates reliable interpretation for deep learning-based malware detection models. For instance, suppressing the critical features identified by XDQNMal leads to an average decrease of 20.30% in the probability that the malicious sample is predicted as malicious, highlighting the pivotal role these features play in the model’s decision-making. | 10.1109/TNSM.2026.3699408 |
| 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 |
| Sandushan Ranaweera, Ying He, Beeshanga Jayawickrama, Xu Wang, Ren Ping Liu, Wei Ni | NetMOS: Topology-Aware VoIP MOS Prediction via Attention–Recurrent GNNs | 2026 | Early Access | Modeling Graph neural networks Internet telephony ITU Simulation Fluid flow Joining processes Correlation Topology Measurement VoIP Graph Neural Networks Mean Opinion Score Quality of Experience Network modeling | The Mean Opinion Score (MOS) is a standard metric for assessing the Quality of Experience (QoE) in Voice over IP (VoIP) applications. Accurate prediction of how network conditions influence MOS is critical for network planning, operation, and optimization. This requires modeling traffic flows with application-level granularity, which significantly increases both the dimensionality and structural complexity of the learning task. The ability to achieve efficient, robust, and generalizable data-driven learning in the presence of such complexity depends critically on the careful design of model architectures. This paper presents NetMOS, a Graph Neural Network (GNN) architecture specifically crafted to model IP networks and predict VoIP MOS scores. NetMOS models IP networks as heterogeneous graphs and designs a two-stage Message Passing Neural Network (MPNN) to capture both permutation invariant and sequential dependencies in traffic flow and network interactions. It uses a Gated Recurrent Unit (GRU) layer to model the ordered influence of links along a traffic path and introduces a customized attention layer with Sigmoid activations to model the cumulative effects of multiple flows on the links. Simulations demonstrate that NetMOS consistently outperforms conventional GNN-based baselines across diverse network topologies in Mean Absolute Error (MAE), R² score, Pearson correlation, and Spearman correlation. NetMOS generalizes effectively beyond the training topology, maintaining high prediction accuracy on unseen network topologies and varying network activity durations without retraining. NetMOS also provides MOS predictions 44×–170× faster than packet-level simulations. | 10.1109/TNSM.2026.3701762 |
| Masoumeh Safkhani, Mohammad Reza Servati, Fatemeh Rezaei | HEIoT: A Novel Three-Factor Authentication Protocol for Enhanced Security in IoT and Next-Generation Networks | 2026 | Early Access | Authentication Internet of Things Protocols Security Smart devices Elliptic curve cryptography Modeling Error correction codes Biometrics Costing of Yuan et al.’s Protocol Authentication Multi-factor authentication Desynchronization attack Insider adversary Traceability attack User impersonation attack Elliptic Curve Cryptography (ECC) | The Internet has a significant impact on contemporary society, enabling a wide range of applications, including advanced cellular networks such as 4G, 5G, and 6G. Since these communications occur over shared or open channels, ensuring secure data exchange is of critical importance, as any weakness in the communication infrastructure may compromise system reliability. Device authentication in the Internet of Things (IoT) and user authentication in smart environments, such as smart homes, remain fundamental security challenges. As the first line of defense, authentication mechanisms must be robust, since vulnerabilities at this stage can expose the entire system to serious threats. To address these challenges, numerous authentication schemes based on cryptographic primitives, including Elliptic Curve Cryptography (ECC), have been proposed. In this paper, we present a comprehensive security analysis of an ECC-based three-factor authentication protocol proposed by Yuan et al. Our analysis shows that the protocol is vulnerable to desynchronization, user impersonation, traceability, and insider attacks, all of which succeed with probability 1 by exploiting at most two protocol phases. To mitigate these weaknesses, we propose an improved authentication scheme, called HEIoT. The proposed scheme is formally analyzed under the Real-or-Random (RoR) model to establish session-key security and is further verified using the Scyther tool. Moreover, a Python-based implementation is provided to demonstrate the practicality of the proposed protocol. Comparative results indicate that HEIoT achieves stronger security while maintaining acceptable communication, computational, and storage overhead. | 10.1109/TNSM.2026.3702041 |
| Vu Khanh Quy, Abdellah Chehri, Suayb S. Arslan, Nguyen Thi Thanh Hue, Chu Thi Minh Hue | Adaptive Fog–Cloud Resource Optimization Framework for Consumer Healthcare IoT Systems | 2026 | Early Access | Internet of Things Medical services Clouds Internet of Medical Things Timing Real-time systems Servers Cloud computing Service level agreements Modeling Consumer Healthcare Internet of Things Fog Computing 6G Networks Smart Healthcare | The development of the healthcare industry is closely tied to the history of human development. The integration of sensing, communication, computing, and control technologies, along with cloud-based solutions, enables the realization of the Internet of Things concept and forms a series of Internet of Healthcare Things (IoHT) applications. However, providing realtime health services is one of the most important challenges for IoHT systems. To address this issue, a fog computing architecture (FC) is proposed as an additional computing layer to support the cloud computing layer, aiming to reduce service response time, computing costs, and energy consumption. In this study, we conduct a comprehensive evaluation to optimize resource allocation for hospitals under the constraints of scale and patient volume, as well as SLA thresholds. Then, we provide recommendations to optimize investment costs for computing infrastructure supporting real-time health services. Finally, we discuss challenges and open issues. | 10.1109/TNSM.2026.3701581 |
| Wenying Wang, Mohammad S. Obaidat, Xuxun Liu, Kuei-Fang Hsiao | Node-Differentiated Resource Allocation for Media Access Control in Wireless Body Area Networks | 2026 | Early Access | Timing Resource management Media Access Control Protocols Body area networks Fuzzy sets Distance measurement Equations Information rates Throughput Wireless body area network (WBAN) medium access control (MAC) resource allocation continuous priority fuzzy inference system | Medium access control (MAC) is crucial for resource allocation in wireless body area networks (WBANs). However, existing MAC protocols often suffer from transmission conflicts and inefficient channel utilization. To address these issues, this paper proposes a Node-Differentiated Resource Scheduling (NDRS) MAC protocol, which dynamically allocates access resources based on node-specific requirements. This protocol employs a superframe structure consisting of a contention-based phase and a contention-free phase for data transmission. A Mamdani fuzzy inference system is utilized to calculate continuous node priorities. These priorities achieve fine-grained differentiation of node importance and thus serve as the foundation for transmission conflict minimization. During the contention-based phase, continuous and differentiated backoff times are assigned to nodes based on their priorities. These backoff times effectively reduce transmission collisions and enhance channel utilization. In the contention-free phase, time slots are preferentially allocated to nodes with higher priority, better channel utilization, and greater transmission reliability. This allocation thereby enhances channel usage efficiency and reduce transmission delays. This protocol is characterized by three key features: precise node prioritization, low transmission collisions, and high channel utilization. Extensive experimental results demonstrate that NDRS outperforms existing protocols in terms of average delay, throughput, packet loss ratio, and average energy consumption. | 10.1109/TNSM.2026.3700262 |
| Songtao Peng, Yiping Chen, Xincheng Shu, Wu Shuai, Shenhao Fang, Zhongyuan Ruan, Qi Xuan | MAD-MulW: A Multi-Window Anomaly Detection Framework for BGP Security Events | 2026 | Early Access | Modeling Windows Timing Anomaly detection Border Gateway Protocol Educational institutions Training Conferences Long short term memory Distance measurement Anomaly Detection Time Series Unsupervised Model Multi-Window | In recent years, various international security events have occurred frequently and interacted between real society and cyberspace. Traditional traffic monitoring mainly focuses on the local anomalous status of events due to a large amount of data. BGP-based event monitoring makes it possible to perform differential analysis of international events. For many existing traffic anomaly detection methods, we have observed that the window-based noise reduction strategy effectively improves the success rate of time series anomaly detection. Motivated by this, we propose an unsupervised anomaly detection model, MAD-MulW, which introduces a multi-window serial framework. The W-GAT module adaptively updates sample weights within the window to reduce noise, while the W-LAE module captures temporal trends through predictive reconstruction, enhancing inter-class separation. Our model has been experimentally validated on multiple BGP anomalous events with an average F1 score of over 90%, which demonstrates the significant improvement effect of the stage windows and adaptive strategy on the efficiency and stability of the timing model. The source code is available at://github.com/2024ChenYP/MAD-MulW. | 10.1109/TNSM.2026.3696319 |
| 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 |
| Ke Yu, Xiaofeng Tao, Shen Wang, Chaojie Guo | Game-Theoretic Defense of SYN Flood Attacks in B5G Cloud-Edge-Terminal Networks | 2026 | Early Access | The emergence of beyond-fifth-generation (B5G) networks and the increasing demand for Internet of Things (IoT) requires deploying a cloud-edge-terminal computing network with the Software Defined Network as the controller. However, this network is vulnerable to various threats, notably SYN flood attacks. This paper adopts queuing theory and game theory to explore Mobile Edge Computing (MEC) attack and defense interaction in different IoT businesses. Moreover, we propose a utility model of the packet flow in MEC networks featuring the delay and packet loss rate in the SYN flood attacks. For the attacker and defender’s strategy, we use game theory to model the interaction between strategy and resource allocation. A search algorithm analyzing MEC cell impact on strategy selection is developed, and we investigate the impact of the attacker’s possession of prior knowledge versus lack thereof regarding MEC cell characteristics under SYN flood attacks. The proposed game models are solved, and the results show that under the defender’s strategy, the attacker has no chance to launch SYN flood attacks under the defender’s defense cost of four times MEC computing resources; the cost of defense resources is lower than other related schemes. | 10.1109/TNSM.2026.3695918 | |
| Maad Ebrahim, Abdelhakim Hafid | Fully Distributed Fog Load Balancing with Multi-Agent Reinforcement Learning | 2026 | Early Access | Distributed fog computing environments demand efficient resource management to support real-time Internet of Things (IoT) applications. This paper proposes a fully distributed load-balancing framework based on multi-agent reinforcement learning (MARL), where independent agents learn to manage heterogeneous fog resources without centralized control or inter-agent coordination. The agents jointly optimize a global objective that minimizes workload waiting delay (reduces overall fog queue accumulation) while ensuring fair resource utilization. We evaluated agents’ dynamic adaptation to unpredictable load bursts through transfer learning in simulated fog environments with heterogeneous, unbalanced, and geographically distributed fog nodes. Compared to centralized RL, learning localized policies within smaller collaboration regions allows our distributed agents to achieve superior performance (up to 70.1% reduction in average waiting delay), reduces state-action space, accelerates convergence (6× faster), and scales efficiently as the network grows. In addition, we analyze the impact of realistic interval-based state observation (using a protocol like Gossip) to evaluate the trade-off between performance and practical deployment constraints. Compared to the unrealistic assumption of real-time state availability before every decision, a Gossip interval of 3 seconds in our simulations reduces the state observation overhead by a factor of 9.5×, ensuring the solution is viable for real-world deployment. | 10.1109/TNSM.2026.3702570 | |
| Brijesh Kotaria, Anand Prakash Rawal, Om Jee Pandey, Prasenjit Chanak | Gain-Based Ant Colony Optimization–Driven Data Routing Mechanism for IoT-Enabled Sensor Networks | 2026 | Early Access | A Wireless Sensor Network (WSN) is a major component of any Internet of Things (IoT)-based system. In WSNs, a Mobile Sink (MS) collects sensed data from deployed sensor nodes by visiting Rendezvous Points (RPs) in an energy-efficient manner. The presence of mobile obstacles in WSNs significantly reduces network performance by increasing data transmission delay and degrading overall operation. This paper proposes an Energy-Efficient Intelligent Obstacle Avoidance Data Routing Scheme (EEIOADRS) for IoT-enabled WSNs. It effectively identifies and avoids mobile obstructions with minimal message passing and low delay. A heuristic-based Minimum Spanning Tree algorithm is used to find an optimal path among all Grid Cell Heads (GCHs) for MS-based data gathering. Furthermore, Gain-Based Dynamic Ant Colony Optimization is used to construct an optimal mobile obstacle-free path for MS-based data collection. It significantly reduces data transmission delay and enhances overall network performance. Extensive simulations demonstrate that the proposed scheme significantly improves network performance. The proposed approach improves network lifetime by 50.84% relative to OMCSO, 42.34% relative to CSOBUG, and 39.83% relative to OASPP. Additionally, simulation results indicate that the proposed scheme enhances network throughput by 47.15% compared to OMCSO, 36.69% compared to CSOBUG, and 33.76% compared to OASPP. | 10.1109/TNSM.2026.3702432 | |
| 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 |
| 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 |
| Kunpeng Zheng, Huibin Zhang, Yongli Zhao, Yuan Cao, Wei Wang, Xin Li, Zhuangzhuang Ma, Lihan Zhao, Jie Zhang | Sun-Outage-Aware Topology Modeling and Adaptive Routing for Optical Satellite Networks | 2026 | Early Access | Sun Interrupters Joining processes Satellites Routing Algorithms Modeling Timing Topology Interference Optical inter-satellite links optical service connections optical satellite network sun outage topology modeling | Optical satellite networks, supported by optical inter-satellite links (OISLs), provide reliable and low-latency optical connectivity. However, periodic and predictable sun outage events significantly compromise OISL availability, leading to frequent OISL interruptions and reduced network reliability. Existing routing algorithms often overlook the regularity of sun outage-induced interrupts and their differentiated impacts on services, resulting in degraded service performance. To address this challenge, this paper proposes a sun outage-enhanced time discretization OISL model and introduces a sun outage link-aware routing (SOLR) algorithm. By incorporating joint awareness of sun outage patterns and service requirements, SOLR employs an adaptive optimization mechanism to dynamically adjust routing decisions within temporal windows. Experimental results demonstrate that SOLR extends stable path durations by 39.9%, reduces interruption rates by 28.5%, and decreases blocking rates by 36.4%, significantly outperforming link-state-based routing algorithms. By effectively mitigating the impact of sun outages, SOLR ensures continuous optical service connections. This interruption-tolerant framework bridges network modeling and service provisioning, offering a robust solution for mission-critical service in optical satellite networks. | 10.1109/TNSM.2026.3697856 |
| 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 |
| Aziz Kord, Mary Gregg, M. Keith Forsyth, Julia L. Sharp, Jason B. Coder, Vu Le | Towards Improved Standards for Open RAN Interoperability: A Factor Screening Experiment | 2026 | Early Access | As Open Radio Access Networks (Open RAN) move toward large-scale deployment, the industry requires a transition from binary “pass/fail” conformance testing to a rigorous performance metrology that characterizes system stability in multi-vendor environments. This study introduces a statistical factor screening methodology, utilizing a Resolution V fractional factorial design, to isolate the key configuration parameters that govern interoperability in a commercial-grade 7.2x functional split testbed. By executing a 1,024-run automated experimental campaign, we identify critical non-linear "performance boundaries" where specific combinations of modulation coding, power control, and UE scaling cause functional decoupling between disaggregated O-DU and O-RU components. Our results demonstrate that O-RU interoperability is not a static state but a dynamic boundary of functional invariance. This work provides a mathematically grounded framework for Mobile Network Operators (MNOs) to prioritize high-impact factors in certification and badging, accelerating the maturity of secure, high-capacity Open RAN ecosystems. | 10.1109/TNSM.2026.3703354 | |
| Zhiyuan Ren, Xinke Jian, Wenchi Cheng, Kun Yang | The Landscape of Fairness: An Axiomatic and Predictive Framework for Network QoE Sensitivity | 2026 | Early Access | Evaluating network-wide fairness is challenging because it is not a static property but one highly sensitive to Service Level Agreement (SLA) parameters. This paper introduces a complete analytical framework to transform fairness evaluation from a single-point measurement into a proactive engineering discipline centered on a predictable sensitivity landscape. Our framework is built upon a QoE-Imbalance metric whose form is not an ad-hoc choice, but is uniquely determined by a set of fundamental axioms of fairness, ensuring its theoretical soundness. To navigate the fairness landscape across the full spectrum of service demands, we first derive a closed-form covariance rule. This rule provides an interpretable, local compass, expressing the fairness gradient as the covariance between a path’s information-theoretic importance and its parameter sensitivity. We then construct phase diagrams to map the global landscape, revealing critical topological features such as robust “stable belts” and high-risk “dangerous wedges”. Finally, an analysis of the landscape’s curvature yields actionable, topology-aware design rules, including an optimal “Threshold-First” tuning strategy. Ultimately, our framework provides the tools to map, interpret, and navigate the landscape of system sensitivity, enabling the design of more robust and resilient networks. | 10.1109/TNSM.2026.3702766 | |
| Ehsan Etezadi, Farhad Arpanaei, Carlos Natalino, Erik Agrell, Paolo Monti, Marija Furdek | Fragmentation- and QoT-Aware RBMSA with Spectrum Defragmentation in Dynamic Multi-Band Elastic Optical Networks | 2026 | Early Access | Multi-band elastic optical networks (MB-EONs) transmit information in multiple bands to increase the available capacity. However, they suffer from quality of transmission (QoT) degradation caused by the inter-channel stimulated Raman scattering effect, which requires addressing through tailored resource assignment. Additionally, dynamically arriving and departing optical service requests generate spectrum fragmentation (SF), where spectrum resources become scattered into non-continuous chunks and aggravate service blocking ratio (SBR) even when the total available bandwidth is sufficient. To jointly address these challenges, we propose an SF- and QoT-aware algorithm for routing, band, modulation format, and spectrum assignment (RBMSA), along with proactive spectrum defragmentation (SD), referred to as SFQA-defrag. The algorithm considers SF metrics and QoT levels of available channels across multiple candidate paths to ensure that the QoT requirements are met while minimizing the SF. The SD process proactively reorganizes spectrum allocation to reduce fragmentation by consolidating the spectrum gaps, which leads to lower blocking of future requests. The SFQA-defrag algorithm is evaluated against benchmark algorithms that independently consider either QoT or SF in three reference backbone topologies. The results demonstrate that SFQA-defrag significantly reduces the SBR and SF compared to benchmarks, albeit with a slight increase in the average path length. | 10.1109/TNSM.2026.3702377 | |
| Mohamad Khattar Awad, Marwa Kandil Mohammed, Eiman Mohammed Alotaibi | A Knowledge Transfer-enabled Reinforcement Learning-based Approach for Services Routing in Software-defined Networks | 2026 | Early Access | The increasing demand for energy-aware, yet service-assured networking has expanded the importance of Software-Defined Networks (SDN), where it emerged as a promising paradigm to improve the flexibility of communication networks by separating the network control plane from the data plane. However, achieving energy-efficient routing while guaranteeing Quality of Service (QoS) remains a challenging task for effective network management, as traditional algorithms fail to adapt to dynamic traffic demands. This paper introduces the Double critics with Priority Replay Buffer DDPG agent-based Routing framework (DP-DRRouting), an energy-efficient and QoS-aware routing architecture for SDN. Unlike existing Reinforcement Learning (RL)-based solutions that suffer from scalability limitations, unstable learning behavior, and slow convergence, particularly in dynamic environments. The proposed architecture core is a Double-Critic with Priority Replay Buffer Deep Deterministic Policy Gradient (DP-DDPG) agent that reduces reward overestimation and enhances stability. To further enhance adaptability, we integrate a direct-policy transfer learning mechanism that enables the agent to fine-tune its knowledge under topology changes without retraining from scratch. DP-DRRouting operates on path-level decisions, optimizing simultaneously for delay, packet loss ratio, throughput, and energy efficiency. The results show that DP-DRRouting achieves up to 12% energy efficiency and 50% throughput improvement compared to Open Shortest Path First (OSPF), while adapting to link failures with 40% throughput gains. These improvements confirm that the proposed framework provides a stable and adaptive routing solution that achieves near-optimal performance under varying traffic loads and topology changes. | 10.1109/TNSM.2026.3702330 | |
| Ziyi Liu, Dengpan Ye, Changsong Yang, Yong Ding, Yueling Liu, Long Tang, Chuanxi Chen | Take Attention as Gate: An Associative Recurrent Network-Based Intrusion Detection Method for Industrial Control Network | 2026 | Vol. 23, Issue | Feeds Antennas Integrated circuits Filtering Central Processing Unit Circuits Filters Communication systems Internet of Things Protocols Network security industrial control network intrusion detection associative recurrent network | The Industrial Control Network (ICN), which is characterized by real-time responsiveness and reliability, plays a key role in increasing production speed, ensuring efficient processing, and managing industrial processes. Despite tremendous advantages, ICN inevitably struggles with some challenges, such as malicious user intrusion and hacker attacks. To detect malicious intrusions in ICN, Intrusion Detection Systems (IDS) have been deployed. However, network traffic in ICN often exhibits significant temporal periodicity, and computational resources are limited on edge nodes and infrastructure gateway devices. These characteristics pose significant challenges to the design and performance of IDS. To properly solve these problems, we design a new intrusion detection method for ICN. Specifically, we first design a novel neural network model called Associative Recurrent Network (ARN), which can properly handle the relationship between previous hidden state and current input. Then, we construct a novel intrusion detection method based on the ARN, which avoids gating conflicts in traditional Recurrent Neural Network (RNN), effectively captures the temporal characteristics of ICN traffic, and maintains slightly higher computational overhead than GRU, thus demonstrating good adaptability to industrial control networks. Subsequently, through theoretical analysis of computational complexity, we demonstrate that the proposed method achieves high computational efficiency, comparable to mainstream RNN methods and superior to Transformer methods. Finally, we implement a prototype system to evaluate detection accuracy. Experimental results show that our method achieves state-of-the-art performance on the industrial control systems datasets (ICS-ADD and SWaT) and the conventional network dataset (UNSW-NB15), with average accuracies of 98.93%, 95.57%, and 98.27%, respectively. | 10.1109/TNSM.2026.3688982 |