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Scalable decentralized prognostics for industrial systems under data heterogeneity 数据异构下工业系统的可扩展分散预测
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-05-01 Epub Date: 2026-02-14 DOI: 10.1016/j.compeleceng.2026.111023
Jose Tupayachi, Anam Nawaz Khan, Xueping Li
Condition-Based Monitoring (CBM) plays a vital role in predictive maintenance by enabling early fault detection through real-time sensor data analysis. However, the rarity of fault events in industrial systems limits the performance of centralized learning approaches, which often overfit to normal conditions and miss rare failures. Centralized methods also raise privacy, communication, and scalability concerns. The convergence of global models in federated settings is influenced by the distribution of fault data across local devices. In practical deployments, this distribution is often non-uniform, which can hinder convergence. To address these challenges, this study introduces a federated learning (FL) benchmark tailored for condition-based monitoring of sleeve bearings under realistic data-scarce fault scenarios. Rather than relying on conventional independent and identically distributed (IID) assumptions, we design controlled non-IID data distributions using Dirichlet sampling applied to real sensor datasets. This enables systematic exploration of how varying degrees of heterogeneity influence FL performance. We benchmark multiple base, scaled-up, and novel aggregation strategies across deep network architectures, capturing both classification and remaining useful life prediction tasks. Crucially, we expose how the Dirichlet α parameter interacts with optimizer-specific dynamics, revealing failure modes under moderate non-IID conditions and identifying regimes where FL remains stable or collapses. By bridging empirical evaluation with deployment-relevant scenarios, our study provides actionable heuristics for FL-based CBM in resource-constrained, privacy-sensitive industrial environments.
状态监测(CBM)通过实时传感器数据分析实现早期故障检测,在预测性维护中发挥着至关重要的作用。然而,工业系统中故障事件的稀缺性限制了集中式学习方法的性能,这些方法通常会过度拟合正常条件并错过罕见的故障。集中式方法还会引起隐私、通信和可伸缩性问题。在联邦环境下,全局模型的收敛性受到本地设备间故障数据分布的影响。在实际部署中,这种分布通常是不均匀的,这可能会阻碍收敛。为了应对这些挑战,本研究引入了一种联邦学习(FL)基准,用于在现实数据稀缺的故障场景下对套套轴承进行基于状态的监测。与传统的独立同分布(IID)假设不同,我们使用Dirichlet采样方法设计了受控的非IID数据分布,并应用于实际传感器数据集。这使得系统地探索不同程度的异质性如何影响FL性能。我们在深度网络架构中对多个基本的、扩展的和新颖的聚合策略进行基准测试,捕获分类和剩余使用寿命预测任务。至关重要的是,我们揭示了Dirichlet α参数如何与优化器特定的动力学相互作用,揭示了中等非iid条件下的失效模式,并确定了FL保持稳定或崩溃的制度。通过将经验评估与部署相关的场景相结合,我们的研究为资源受限、隐私敏感的工业环境中基于fl的CBM提供了可操作的启发式方法。
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引用次数: 0
Mango-Mamba and VN-MangoLeaf: A lightweight Mamba model and New Dataset for Mango leaf disease classification 芒果曼巴和VN-MangoLeaf:用于芒果叶片疾病分类的轻量级曼巴模型和新数据集
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-05-01 Epub Date: 2026-02-14 DOI: 10.1016/j.compeleceng.2026.111033
Thien B. Nguyen-Tat, Binh Pham-Thanh
Mango leaf disease represents a significant threat to fruit quality and yield, necessitating highly accurate, real-time detection systems. However, existing Deep Learning approaches, particularly Transformer-based models, often suffer from prohibitive computational complexity (quadratic scaling), limiting their deployment on resource-constrained edge devices. To address this challenge, this study introduces MangoMamba, a novel lightweight hybrid architecture specifically optimized for mobile deployment. The proposed model integrates Multi-Scale Mamba Mixers with Large-Kernel Attention mechanisms within a hierarchical four-stage framework, enabling linear computational complexity while preserving global receptive fields. Experimental evaluations were conducted on the MangoLeafBD dataset and the newly curated VN-MangoLeaf dataset, which comprises 7000 images of Vietnamese mango varieties. Results demonstrate that MangoMamba achieves competitive classification accuracies of 99.75% and 98.71% on the respective datasets. Crucially, the model exhibits exceptional efficiency with only 5.8 million parameters and an inference latency of 1.46 ms per image on T4 GPU, approximately 80 times faster than recent ViX-MangoEFormer architectures. Furthermore, the practical feasibility of the proposed approach is validated through a functional Android application capable of offline inference (100–300 ms latency) on standard smartphones. These findings confirm that MangoMamba establishes a new competitive trade-off between accuracy and efficiency for smart agriculture applications.
芒果叶病对果实质量和产量构成重大威胁,需要高度精确的实时检测系统。然而,现有的深度学习方法,特别是基于transformer的模型,通常存在令人望而却步的计算复杂性(二次缩放),限制了它们在资源受限的边缘设备上的部署。为了应对这一挑战,本研究引入了MangoMamba,这是一种专门为移动部署优化的新型轻量级混合架构。该模型将多尺度曼巴混频器与大核注意机制集成在一个分层的四阶段框架内,在保持全局接受域的同时实现线性计算复杂性。对MangoLeafBD数据集和新整理的VN-MangoLeaf数据集进行了实验评估,该数据集包含7000张越南芒果品种的图像。结果表明,MangoMamba在各自的数据集上达到了99.75%和98.71%的竞争分类准确率。至关重要的是,该模型显示出卓越的效率,在T4 GPU上只有580万个参数,每张图像的推理延迟为1.46 ms,比最近的ViX-MangoEFormer架构快约80倍。此外,通过在标准智能手机上能够离线推理(100-300毫秒延迟)的功能Android应用程序验证了所提出方法的实际可行性。这些发现证实,MangoMamba在智能农业应用的准确性和效率之间建立了一种新的竞争性权衡。
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引用次数: 0
On the performance of cascaded RISs-aided hybrid PLC/WLC systems with SWIPT 基于SWIPT的级联riss辅助PLC/WLC混合系统的性能研究
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-05-01 Epub Date: 2026-02-13 DOI: 10.1016/j.compeleceng.2026.111050
Sheng Hao , Rui Chen , Jianqun Cui , Xiying Fan , Li Zhen
Hybrid Power-Line and Wireless Communication (H-PLC/WLC) systems serve as a critical architecture for smart grid networks, yet their performance has largely relied on conventional relaying techniques such as amplify-forward (AF) and decode-forward (DF). Existing studies have not fully explored the potential of Reconfigurable Intelligent Surfaces (RIS) in such hybrid systems, particularly in complex scenarios involving multi-RIS cascaded configurations integrated with Simultaneous Wireless Information and Power Transfer (SWIPT). To fill this gap, we propose a novel analytical framework for cascaded RISs-aided H-PLC/WLC systems to investigate their end-to-end (E2E) performance with SWIPT. Specifically, we develop a PLC channel model accounting for impulsive noise and a cascaded RISs-assisted wireless channel model that incorporates RIS phase configuration, wireless fading characteristics, and the strategy of SWIPT. With this, we derive tight approximate closed-form expressions for key performance metrics, including outage probability (OP), ergodic capacity (EC), harvested energy (HE), and energy efficiency (EE). Extensive simulations validate the accuracy of the proposed model and demonstrate that increasing the number of reflecting elements can effectively mitigate the multiplicative path-loss effect introduced by cascaded links, thereby enhancing transmission reliability and energy harvesting efficiency in obstructed environments. This provides theoretical support and design insights for future integrated “communication-energy synergy” networks.
混合电力线和无线通信(H-PLC/WLC)系统是智能电网网络的关键架构,但其性能在很大程度上依赖于传统的中继技术,如放大转发(AF)和解码转发(DF)。现有的研究并没有充分探索可重构智能表面(RIS)在这种混合系统中的潜力,特别是在涉及多RIS级联配置与同步无线信息和电力传输(SWIPT)集成的复杂场景中。为了填补这一空白,我们提出了一个新的分析框架,用于级联riss辅助的H-PLC/WLC系统,以研究其端到端(E2E)性能与SWIPT。具体来说,我们开发了一个考虑脉冲噪声的PLC信道模型和一个级联的riss辅助无线信道模型,该模型结合了RIS相位配置、无线衰落特性和SWIPT策略。据此,我们推导出关键性能指标的严密近似封闭形式表达式,包括停机概率(OP)、遍历容量(EC)、收获能量(HE)和能源效率(EE)。大量的仿真验证了所提出模型的准确性,并表明增加反射单元的数量可以有效地减轻级联链路带来的倍增路径损耗效应,从而提高传输可靠性和受阻环境下的能量收集效率。这为未来集成的“通信-能源协同”网络提供了理论支持和设计见解。
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引用次数: 0
Experimental study and control strategy of wind-driven DFIG and solar PV for sustainable power generation 风力DFIG和太阳能光伏可持续发电的实验研究及控制策略
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-04-01 Epub Date: 2026-02-06 DOI: 10.1016/j.compeleceng.2026.111027
Sekhar Nindra , Ravulakari kalyan , Venkatesh Boddapati , Kumaresan Natarajan
This paper presents a hybrid wind–solar energy system integrating A Doubly-Fed Induction Generator (DFIG) with solar Photovoltaic (PV) modules through a boost converter–battery–inverter interface. A closed-loop control strategy, implemented on a Field Programmable Gate Array (FPGA) (Altium Nanoboard 3000), ensures stable stator voltage and frequency for isolated load operation. Reactive power compensation is achieved via a 2 kVAR capacitor at the stator side. The solar PV subsystem features a current-sensor-based Maximum Power Point Tracking (MPPT) algorithm using the Converter Output Current Based (COCB) method, which operates independently of panel parameters and switches to constant voltage mode when the battery is fully charged. Hardware tests with a solar simulator and real panels confirm improved tracking accuracy and reduced oscillations over conventional approaches. Experimental validation confirms the system’s reliability and adaptability under varying conditions, highlighting its potential for efficient energy management in standalone applications. Results verified its effectiveness, achieving a Total Harmonic Distortion (THD) below 3% and exhibiting rapid dynamic performance.
提出了一种通过升压变换器-电池-逆变器接口将双馈感应发电机(DFIG)与太阳能光伏(PV)组件集成在一起的混合风能-太阳能系统。在现场可编程门阵列(FPGA) (Altium Nanoboard 3000)上实现的闭环控制策略确保了隔离负载运行时稳定的定子电压和频率。无功功率补偿通过定子侧的2kvar电容器实现。太阳能光伏子系统采用基于电流传感器的最大功率点跟踪(MPPT)算法,采用基于转换器输出电流(COCB)的方法,该算法独立于面板参数运行,并在电池充满电时切换到恒压模式。用太阳能模拟器和真实面板进行的硬件测试证实,与传统方法相比,跟踪精度得到提高,振荡减少。实验验证证实了该系统在不同条件下的可靠性和适应性,突出了其在独立应用中高效能源管理的潜力。实验结果验证了该方法的有效性,实现了总谐波失真(THD)低于3%,并具有快速的动态性能。
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引用次数: 0
DiMCA: A novel P4-powered framework using machine learning for adaptive defense against combined DDoS and ARP spoofing attacks in SD-IoT networks DiMCA:一种新颖的p4驱动框架,使用机器学习自适应防御SD-IoT网络中的DDoS和ARP欺骗攻击
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-04-01 Epub Date: 2026-01-28 DOI: 10.1016/j.compeleceng.2025.110929
Manal Gafar , Saied M. Abd El-atty , Mohamed S Arafa
The convergence of Software-Defined Networking (SDN) with the Internet of Things (IoT) has introduced powerful programmability but also exposed critical vulnerabilities, particularly to Address Resolution Protocol (ARP) spoofing and distributed denial-of-service (DDoS) attacks. Traditional countermeasures often focus narrowly on either ARP or L3/L4 threats, lack real-time responsiveness, and rely heavily on centralized controllers, making them unsuitable for dynamic and large-scale Software-Defined IoT (SD-IoT) deployments. This paper introduces a Distributed Multi-Contextual Architecture (DiMCA) that integrates machine learning (ML) techniques to enhance detection and mitigation capabilities. DiMCA addresses the limitations of existing methods through a holistic, scalable, and adaptive security framework. DiMCA integrates four novel components: Data Plane Stateful Inspection (DPSI), a P4-based module for line-rate detection of ARP anomalies and traffic irregularities; Multi-Controller Plane Architecture (MCPA), which enhances scalability and availability through distributed control; Control Plane Intrusion Analysis (CPIA), an ensemble ML classification engine that distinguishes between benign, ARP, DDoS, and hybrid attacks; and Coordinated Multi-Layer Mitigation (CMLM), a synchronized mitigation strategy that coordinates local and global responses in real time. Results show that DiMCA achieves up to 99.22% accuracy in binary classification and 94.77–98.92% in multi-class detection under realistic adversarial conditions. Ablation experiments confirm the contribution of each module (DPSI, MCPA, CPIA, CMLM) to overall performance, while sensitivity tests clarify trade-offs in latency and false-positive rates. Compared to baselines including OpenFlow-centric monitoring, ARP inspection, and DHCP-snooping policies, DiMCA reduces detection latency from 4.3 s to 0.21 s and lowers controller CPU and bandwidth usage by 31% and 36% without compromising accuracy. By combining real-time monitoring, distributed control, and adaptive ML-driven mitigation, DiMCA offers a practical and resilient solution for securing modern SD-IoT networks against complex and evolving threats.
软件定义网络(SDN)与物联网(IoT)的融合带来了强大的可编程性,但也暴露了关键漏洞,特别是地址解析协议(ARP)欺骗和分布式拒绝服务(DDoS)攻击。传统的对策通常只关注ARP或L3/L4威胁,缺乏实时响应能力,并且严重依赖集中式控制器,因此不适合动态和大规模软件定义物联网(SD-IoT)部署。本文介绍了一种分布式多上下文架构(DiMCA),它集成了机器学习(ML)技术,以增强检测和缓解能力。diga通过一个整体的、可伸缩的和自适应的安全框架解决了现有方法的局限性。DiMCA集成了四个新组件:数据平面状态检测(DPSI),这是一个基于p4的模块,用于检测ARP异常和流量异常;多控制器平面架构(Multi-Controller Plane Architecture, MCPA),通过分布式控制增强可扩展性和可用性;控制平面入侵分析(CPIA),一个集成的ML分类引擎,可以区分良性、ARP、DDoS和混合攻击;协调多层缓解(CMLM),这是一种同步缓解战略,可实时协调地方和全球应对措施。结果表明,在真实对抗条件下,DiMCA在二元分类上的准确率可达99.22%,在多类检测上的准确率可达94.77 ~ 98.92%。消融实验证实了每个模块(DPSI、MCPA、CPIA、CMLM)对整体性能的贡献,而灵敏度测试则阐明了延迟和假阳性率之间的权衡。与以openflow为中心的监控、ARP检查和dhcp snooping策略等基准相比,diga将检测延迟从4.3秒减少到0.21秒,在不影响准确性的情况下,将控制器CPU和带宽使用率降低了31%和36%。通过结合实时监控、分布式控制和自适应ml驱动的缓解,DiMCA为保护现代SD-IoT网络免受复杂和不断发展的威胁提供了实用且有弹性的解决方案。
{"title":"DiMCA: A novel P4-powered framework using machine learning for adaptive defense against combined DDoS and ARP spoofing attacks in SD-IoT networks","authors":"Manal Gafar ,&nbsp;Saied M. Abd El-atty ,&nbsp;Mohamed S Arafa","doi":"10.1016/j.compeleceng.2025.110929","DOIUrl":"10.1016/j.compeleceng.2025.110929","url":null,"abstract":"<div><div>The convergence of Software-Defined Networking (SDN) with the Internet of Things (IoT) has introduced powerful programmability but also exposed critical vulnerabilities, particularly to Address Resolution Protocol (ARP) spoofing and distributed denial-of-service (DDoS) attacks. Traditional countermeasures often focus narrowly on either ARP or L3/L4 threats, lack real-time responsiveness, and rely heavily on centralized controllers, making them unsuitable for dynamic and large-scale Software-Defined IoT (SD-IoT) deployments. This paper introduces a Distributed Multi-Contextual Architecture (DiMCA) that integrates machine learning (ML) techniques to enhance detection and mitigation capabilities. DiMCA addresses the limitations of existing methods through a holistic, scalable, and adaptive security framework. DiMCA integrates four novel components: Data Plane Stateful Inspection (DPSI), a P4-based module for line-rate detection of ARP anomalies and traffic irregularities; Multi-Controller Plane Architecture (MCPA), which enhances scalability and availability through distributed control; Control Plane Intrusion Analysis (CPIA), an ensemble ML classification engine that distinguishes between benign, ARP, DDoS, and hybrid attacks; and Coordinated Multi-Layer Mitigation (CMLM), a synchronized mitigation strategy that coordinates local and global responses in real time. Results show that DiMCA achieves up to 99.22% accuracy in binary classification and 94.77–98.92% in multi-class detection under realistic adversarial conditions. Ablation experiments confirm the contribution of each module (DPSI, MCPA, CPIA, CMLM) to overall performance, while sensitivity tests clarify trade-offs in latency and false-positive rates. Compared to baselines including OpenFlow-centric monitoring, ARP inspection, and DHCP-snooping policies, DiMCA reduces detection latency from 4.3 s to 0.21 s and lowers controller CPU and bandwidth usage by 31% and 36% without compromising accuracy. By combining real-time monitoring, distributed control, and adaptive ML-driven mitigation, DiMCA offers a practical and resilient solution for securing modern SD-IoT networks against complex and evolving threats.</div></div>","PeriodicalId":50630,"journal":{"name":"Computers & Electrical Engineering","volume":"132 ","pages":"Article 110929"},"PeriodicalIF":4.9,"publicationDate":"2026-04-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"146080165","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":3,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
BMGANet: A deep learning model for source code vulnerability detection by integrating token-level and function-level features BMGANet:通过集成令牌级和功能级特性,用于源代码漏洞检测的深度学习模型
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-04-01 Epub Date: 2026-01-30 DOI: 10.1016/j.compeleceng.2026.110999
Erzhou Zhu, Xiangshan Qu, Xiaohan Liu, Xuejian Li
Deep learning is widely used in vulnerability detection due to its high accuracy. However, existing models often fail to capture both token-level and function-level features. To address this limitation, a BERT-based Multi-Granularity Attention Network (BMGANet) is proposed. In the BMGANet model, Program Dependence Graphs (PDGs) are first constructed using the Joern tool, and Abstract Syntax Trees (ASTs) are extracted according to predefined vulnerability rules. Cross-user-defined-function program slicing and code normalization are then applied to enhance analysis efficiency. Processed code slices are fed into a BERT network to extract initial token-level and function-level features. To overcome BERT’s limitation in modeling temporal dependencies, an LSTM network and a multi-head attention mechanism are sequentially employed to refine token-level features. The refined token-level features are then fused with function-level features for accurate vulnerability detection. Two pretraining tasks, namely the dynamic masked token prediction and the inter-code-line logical correlation prediction, are introduced to strengthen the model’s ability to handle semantic gaps and weak logical connections. Experimental results on both synthetic and real-world datasets show that BMGANet outperforms state-of-the-art methods.
深度学习以其较高的准确率在漏洞检测中得到了广泛的应用。然而,现有的模型常常不能同时捕获令牌级和功能级的特性。为了解决这一问题,提出了一种基于bert的多粒度注意力网络(BMGANet)。在BMGANet模型中,首先使用Joern工具构建程序依赖图(PDGs),并根据预定义的漏洞规则提取抽象语法树(ast)。然后应用跨用户定义函数的程序切片和代码规范化来提高分析效率。处理后的代码片被馈送到BERT网络中,以提取初始的令牌级和功能级特征。为了克服BERT在建模时间依赖性方面的局限性,本文采用LSTM网络和多头注意机制来改进标记级特征。然后将改进的令牌级特征与功能级特征融合,以实现准确的漏洞检测。引入动态掩码令牌预测和代码行间逻辑关联预测两项预训练任务,增强模型对语义间隙和弱逻辑连接的处理能力。在合成数据集和真实数据集上的实验结果表明,BMGANet优于最先进的方法。
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引用次数: 0
DSaC-ViT: Multi-scale guided upsampling fusion and parallel fusion vision transformer for hyperspectral image classification DSaC-ViT:用于高光谱图像分类的多尺度制导上采样融合与并行融合视觉转换器
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-04-01 Epub Date: 2026-02-07 DOI: 10.1016/j.compeleceng.2026.111021
Yuqing Li , Yansong Song , Keyan Dong , Gong Zhang , Yun Fu , Gangqi Yan , Yanbo Wang , Lei Zhang , Tianci Liu
Hyperspectral images (HSI) capture rich spectral information for accurate land-cover classification. Recently, models based on hybrid architectures of convolutional neural networks (CNNs) and Transformers have been widely utilized for hyperspectral classification. However, a significant challenge is fully integrating the local features from CNN with the global features from Transformers. To alleviate this problem, we proposed an upsampling dual-scale fusion and self-attention convolutional parallel fusion vision Transformer (DSaC-ViT), which consists of a parallel self-attention convolutional vision Transformer (PSCViT) and a plug-and-play multi-scale guided upsampling feature fusion module (MGUFFM). PSCViT integrates the convolution and self-attention modules in parallel. Interacting between different patches via global token obtains global information representation. Adaptive parameters are then utilized to fuse this representation with local information extracted by CNN, thereby achieving granularity alignment. PSCViT can effectively extract and fuse local and global features. MGUFFM extracts spatial-spectral guidance features via a dual-branch structure to guide the upsampling fusion of high-level feature maps. This process effectively recovers missing spatial and spectral information. Four representative HSI datasets, encompassing agricultural, forest, urban, and wetland, were utilized in our extensive experiments. The results indicate that our proposed model outperforms other classification methods for HSI classification.
高光谱图像(HSI)捕获丰富的光谱信息,用于准确的土地覆盖分类。近年来,基于卷积神经网络(cnn)和变压器混合架构的模型被广泛应用于高光谱分类。然而,一个重大的挑战是如何将CNN的局部特征与变形金刚的全局特征完全整合起来。为了解决这一问题,我们提出了一种上采样双尺度融合自注意卷积并行融合视觉变压器(DSaC-ViT),它由一个并行自注意卷积视觉变压器(PSCViT)和一个即插式多尺度引导上采样特征融合模块(MGUFFM)组成。PSCViT将卷积和自关注模块并行集成。不同补丁之间通过全局令牌进行交互,获得全局信息表示。然后利用自适应参数将该表示与CNN提取的局部信息融合,从而实现粒度对齐。PSCViT可以有效地提取和融合局部和全局特征。MGUFFM通过双分支结构提取空间光谱制导特征,引导高阶特征图的上采样融合。该过程有效地恢复了缺失的空间和光谱信息。在我们广泛的实验中,使用了四个具有代表性的HSI数据集,包括农业、森林、城市和湿地。结果表明,该模型在HSI分类中优于其他分类方法。
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引用次数: 0
An energy-efficient privacy-preserving framework for intrusion detection in the internet of vehicles 一种节能的车联网入侵检测隐私保护框架
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-04-01 Epub Date: 2026-02-02 DOI: 10.1016/j.compeleceng.2026.111003
Arash Heidari , Ahmad Khonsari , Seyed Hamed Rastegar
Connected vehicles rely on continuous Vehicle-to-Everything (V2X) communication, which exposes the Internet of Vehicles (IoV) to latency-sensitive and privacy-critical cyberattacks. This paper presents Federated Learning with Intelligent Traffic-aware Energy optimization (FLITE), an energy-efficient, privacy-preserving framework for intrusion detection that trains a lightweight Gated Recurrent Unit (GRU) detector on vehicles using federated learning while keeping raw telemetry local. A deep reinforcement learning–based scheduler at roadside units selects clients and transmit powers based on data quality, channel state, and device energy, reducing redundant communication. Experiments on multiple vehicular and network intrusion datasets show that FLITE achieves up to 99.8% accuracy and improves F1-score and recall by about 2–3 percentage points over strong baselines, while reducing energy consumption by 36–45%, communication overhead by more than 60%, and detection delay by up to 60%. These results demonstrate that FLITE enables real-time, fleet-wide intrusion detection for large-scale IoV deployments under realistic resource constraints.
联网汽车依赖于持续的车联网(V2X)通信,这使得车联网(IoV)容易受到延迟敏感和隐私关键型网络攻击。本文提出了具有智能交通感知能量优化(FLITE)的联邦学习,这是一种节能,隐私保护的入侵检测框架,它使用联邦学习在车辆上训练轻量级门控循环单元(GRU)检测器,同时保持原始遥测本地。基于深度强化学习的路边单元调度程序根据数据质量、信道状态和设备能量选择客户端和传输功率,从而减少冗余通信。在多个车辆和网络入侵数据集上的实验表明,FLITE的准确率高达99.8%,比强基线提高了f1分数和召回率约2-3个百分点,同时能耗降低36-45%,通信开销降低60%以上,检测延迟降低60%。这些结果表明,FLITE能够在现实资源约束下实现大规模车联网部署的实时、全车队入侵检测。
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引用次数: 0
A novel EEG motor imagery classification model using feature fusion of temporal convolution and attention 基于时间卷积和注意力特征融合的脑电运动图像分类模型
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-04-01 Epub Date: 2026-02-03 DOI: 10.1016/j.compeleceng.2026.110990
Mohammad Bdaqli, Saeed Meshgini, Reza Afrouzian
Motor imagery classification using electroencephalography (EEG) signals is a fundamental component of Brain-Computer Interface (BCI) systems. It enables individuals with physical disabilities to control robotic limbs and perform various movements. However, the inherently noisy nature of EEG signals poses significant challenges for their effective utilization in this domain. In this study, we propose a novel end-to-end deep learning model based on feature fusion of multiple deep learning blocks, including a Convolutional Neural Network (CNN), Temporal Convolutional Network (TCN), and Squeeze and Excitation (SE) attention mechanism, enabling the model to learn discriminative features for classifying raw motor imagery signals without any preprocessing. The proposed architecture employs novel feature fusion strategies to maximize classification performance and computational efficiency. The CNN extracts initial spatial features, the TCN captures temporal dependencies, and the SE attention mechanism emphasizes the most informative features from the CNN output. The model was evaluated on the BCI Competition IV 2a and 2b datasets. Training was conducted for 500 epochs (2a dataset) and 200 epochs (2b dataset), using only the first session of each subject for training and validation. The average classification accuracies on the completely isolated test sets (second session) were 78.12 % and 85.72 % for the 2a and 2b datasets, respectively. These results demonstrate that the proposed model effectively classifies multi-class motor imagery signals.
利用脑电图(EEG)信号进行运动图像分类是脑机接口(BCI)系统的基本组成部分。它使身体残疾的人能够控制机械肢体并进行各种运动。然而,脑电信号固有的噪声特性对其在该领域的有效利用提出了重大挑战。在这项研究中,我们提出了一种新的端到端深度学习模型,该模型基于多个深度学习模块的特征融合,包括卷积神经网络(CNN)、时间卷积网络(TCN)和挤压和激励(SE)注意机制,使模型能够在不进行任何预处理的情况下学习判别特征,用于对原始运动图像信号进行分类。该体系结构采用新颖的特征融合策略,最大限度地提高分类性能和计算效率。CNN提取初始空间特征,TCN捕获时间依赖性,SE注意机制强调CNN输出中信息量最大的特征。该模型在BCI Competition IV 2a和2b数据集上进行了评估。对500个epoch (2a数据集)和200个epoch (2b数据集)进行训练,仅使用每个主题的第一个会话进行训练和验证。对于2a和2b数据集,完全隔离测试集(第二次)的平均分类准确率分别为78.12%和85.72%。结果表明,该模型能有效地对多类运动图像信号进行分类。
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引用次数: 0
QR-MRMC-CLPAS: Quantum-resistant multi-replica and multi-cloud certificateless public auditing scheme based on module lattices QR-MRMC-CLPAS:基于模块格的抗量子多副本多云无证书公共审计方案
IF 4.9 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Pub Date : 2026-04-01 Epub Date: 2026-02-03 DOI: 10.1016/j.compeleceng.2026.111000
Renuka Cheeturi , Syam Kumar Pasupuleti , Rashmi Ranjan Rout
Multi-replica and multi-cloud public auditing (MRMC-PA) is a method used to ensure data availability and integrity by verifying multiple copies of data stored across multiple cloud environments. However, existing MRMC-PA schemes are vulnerable to quantum attacks and incur high computational and communication overhead due to their reliance on pairing-based cryptography (PBC). In addition, they provide limited support for dynamic data operations across all replicas and suffer from either the certificate management problem (CMP) or the key escrow problem (KEP). To address these limitations, this paper proposes a quantum-resistant, multi-replica, and multi-cloud certificateless public auditing scheme (QR-MRMC-CLPAS) based on lattice-based cryptography over module lattices instead of PBC. The security of QR-MRMC-CLPAS is proven under the Module Learning With Errors (M-LWE) and Module Small Integer Solution (M-SIS) assumptions. To support data dynamics, we introduce a dynamic replica version table that ensures both consistency and integrity of multiple replicas across multi-cloud environments. Furthermore, the use of certificateless cryptography eliminates CMP and KEP. Performance analysis and experimental results demonstrate that QR-MRMC-CLPAS achieves significantly higher computational and communication efficiency compared to existing MRMC-PA schemes while ensuring strong quantum resilience.
多副本和多云公共审计(MRMC-PA)是一种通过验证存储在多个云环境中的数据的多个副本来确保数据可用性和完整性的方法。然而,现有的MRMC-PA方案容易受到量子攻击,并且由于依赖基于配对的加密(PBC)而导致高计算和通信开销。此外,它们对跨所有副本的动态数据操作提供有限的支持,并且存在证书管理问题(CMP)或密钥托管问题(KEP)。为了解决这些限制,本文提出了一种基于模块格而不是PBC的基于格加密的抗量子、多副本和多云无证书公共审计方案(QR-MRMC-CLPAS)。在有误差模块学习(M-LWE)和模块小整数解(M-SIS)假设下证明了QR-MRMC-CLPAS的安全性。为了支持数据动态,我们引入了一个动态副本版本表,以确保跨多云环境的多个副本的一致性和完整性。此外,使用无证书加密消除了CMP和KEP。性能分析和实验结果表明,与现有的MRMC-PA方案相比,QR-MRMC-CLPAS方案在保证强量子弹性的同时,实现了更高的计算和通信效率。
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Computers & Electrical Engineering
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