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Low-Latency Oriented Joint Data Compression and Resource Allocation in NOMA-MEC Networks: A Deep Reinforcement Learning Approach. 面向低延迟的NOMA-MEC网络联合数据压缩和资源分配:一种深度强化学习方法。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010285
Fangqing Tan, Yu Zeng, Chao Lan, Zou Zhou

To alleviate communication pressure and terminal resource constraints in mobile edge computing (MEC) networks, this paper proposes a resource allocation optimization method for MEC systems that integrates data compression technology and non-orthogonal multiple access technology. This method considers practical constraints such as terminal device battery capacity and computational resource limitations. By jointly optimizing computational resource allocation, task offloading strategies, and data compression ratios, it constructs an optimization model aimed at minimizing the total task processing latency. Addressing the challenges stemming from the non-convex nature of the problem and the dynamic variations in channel conditions and task requirements, this paper proposes a softmax deep double deterministic policy gradient algorithm, where softmax operator function mitigates both overestimation and underestimation biases inherent in traditional reinforcement learning frameworks, enhancing convergence performance. Utilizing a deep reinforcement learning framework, the algorithm achieves joint decision-making optimization for computational resources, task offloading, and compression ratios, thereby minimizing the total task processing latency while satisfying transmit power and computational resource constraints. Simulation results demonstrate that the proposed scheme exhibits significant advantages over benchmark algorithms in terms of convergence speed and task processing latency.

为缓解移动边缘计算(MEC)网络中的通信压力和终端资源约束,提出了一种融合数据压缩技术和非正交多址技术的MEC系统资源优化分配方法。该方法考虑了终端设备电池容量和计算资源限制等实际约束。通过联合优化计算资源分配、任务卸载策略和数据压缩比,构建了以最小化任务处理总延迟为目标的优化模型。针对该问题的非凸性以及信道条件和任务要求的动态变化所带来的挑战,本文提出了一种softmax深度双确定性策略梯度算法,其中softmax算子函数减轻了传统强化学习框架固有的高估和低估偏差,提高了收敛性能。该算法利用深度强化学习框架,实现了对计算资源、任务卸载和压缩比的联合决策优化,从而在满足传输功率和计算资源约束的同时最小化任务处理总延迟。仿真结果表明,该方案在收敛速度和任务处理延迟方面优于基准算法。
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引用次数: 0
Robust Indoor Positioning with Hybrid WiFi RTT-RSS Signals. 基于混合WiFi RTT-RSS信号的稳健室内定位。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010284
Xu Feng, Khuong An Nguyen, Zhiyuan Luo

In 2025, there is still no ubiquitous, accurate, infrastructure-free indoor positioning system. Among existing approaches, WiFi-based positioning is highly promising as it leverages existing infrastructure. However, its performance is severely affected by WiFi signal variability and environmental dynamics. Thus, this paper presents a novel approach that combines WiFi Round Trip Time and Received Signal Strength measurements with the Conformal Prediction (CP) framework to achieve robust uncertainty-aware indoor positioning. Our proposed method does not only accurately estimate the user position, but also provides two prediction regions: a rectangular region and a circular region. We systematically evaluate our method across three real-world testbeds, which achieves a positioning accuracy of 0.6 m, while generating prediction regions with theoretical coverage guarantees for circular regions and marginal coverage guarantees for rectangular regions. To the best of our knowledge, this is one of the first work to enable uncertainty quantification on top of state-of-the-art WiFi ranging signals.

到2025年,仍然没有无所不在的、精确的、无基础设施的室内定位系统。在现有的方法中,基于wifi的定位非常有前途,因为它利用了现有的基础设施。但其性能受到WiFi信号变异性和环境动态的严重影响。因此,本文提出了一种将WiFi往返时间和接收信号强度测量与保形预测(CP)框架相结合的新方法,以实现鲁棒的不确定性感知室内定位。该方法不仅可以准确地估计用户位置,而且提供了两个预测区域:矩形区域和圆形区域。我们在三个真实世界的测试平台上系统地评估了我们的方法,该方法的定位精度达到了0.6 m,同时生成的预测区域对圆形区域具有理论覆盖保证,对矩形区域具有边际覆盖保证。据我们所知,这是第一个在最先进的WiFi测距信号上实现不确定性量化的工作之一。
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引用次数: 0
Magnetic Circuit Design and Optimization of Tension-Compression Giant Magnetostrictive Force Sensor. 张压式超磁致伸缩力传感器磁路设计与优化。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010295
Long Li, Hailong Sun, Yingling Wei, Boda Li, Hongwei Cui, Ruifeng Liu

The variable-pitch connecting rod of a helicopter bears axial tensile and compressive loads during operation. The traditional load monitoring method using strain gauge is easily affected by external conditions. Therefore, a giant magnetostrictive (GM) tension and compression force sensor with permanent magnet bias is proposed and optimized. Because the bias magnetic field plays a decisive role in the performance of the sensor, this paper has carried out in-depth research on this. Firstly, the mathematical model of the magnetic circuit is established, and the various magnetic circuits of the sensor are simulated and analyzed. Secondly, the magnetic flux uniformity of the GMM rod is used as the evaluation index, and the relative permeability of the magnetic material and the structure are systematically studied. The influence of parameters on the magnetic flux of the magnetic circuit, and finally the optimal parameter combination of the magnetic circuit is determined by orthogonal test. The results show that when the magnetic circuit without the magnetic side wall is used, the magnetic material can better guide the magnetic flux through the GMM rod; the magnetic flux uniformity of the optimized GMM force sensor is increased by 7.44%, the magnetic flux density is increased by 13.9 mT and the Hall output voltage increases linearly by 1.125% in the same proportion. This provides an important reference for improving the utilization rate of GMM rods and also improves the safety of flight operation and reduces maintenance costs.

直升机变螺距连杆在运行过程中承受轴向拉伸和压缩载荷。传统的应变片载荷监测方法容易受到外界条件的影响。为此,提出并优化了一种具有永磁偏置的超磁致伸缩(GM)张力和压缩力传感器。由于偏置磁场对传感器的性能起着决定性的作用,本文对此进行了深入的研究。首先,建立了磁路的数学模型,并对传感器的各种磁路进行了仿真分析。其次,以GMM棒的磁通均匀性为评价指标,系统研究了磁性材料和结构的相对磁导率;通过正交试验确定了各参数对磁路磁通的影响,最后确定了磁路的最佳参数组合。结果表明:采用不带磁性侧壁的磁路时,磁性材料能更好地引导磁通量通过GMM棒;优化后的GMM力传感器的磁通均匀度提高了7.44%,磁通密度提高了13.9 mT,霍尔输出电压以相同比例线性提高了1.125%。这为提高GMM棒的利用率,提高飞行运行的安全性,降低维修成本提供了重要参考。
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引用次数: 0
Sim-to-Real Domain Adaptation for Early Alzheimer's Detection from Handwriting Kinematics Using Hybrid Deep Learning. 基于混合深度学习的笔迹运动学早期阿尔茨海默病检测的模拟到真实域自适应。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010298
Ikram Bazarbekov, Ali Almisreb, Madina Ipalakova, Madina Bazarbekova, Yevgeniya Daineko

Alzheimer's disease (AD) is a progressive neurodegenerative disorder characterized by cognitive and motor decline. Early detection remains challenging, as traditional neuroimaging and neuropsychological assessments often fail to capture subtle, preclinical changes. Recent advances in digital health and artificial intelligence (AI) offer new opportunities to identify non-invasive biomarkers of cognitive impairment. In this study, we propose an AI-driven framework for early AD based on handwriting motion data captured using a sensor-integrated Smart Pen. The system employs an inertial measurement unit (MPU-9250) to record fine-grained kinematic and dynamic signals during handwriting and drawing tasks. Multiple machine learning (ML) algorithms-Logistic Regression, Support Vector Machine (SVM), Random Forest (RF), and k-Nearest Neighbors (kNN)-and deep learning (DL) architectures, including one-dimensional Convolutional Neural Networks (1D-CNN), Long Short-Term Memory (LSTM), and a hybrid CNN-BiLSTM network, were systematically evaluated. To address data scarcity, we implemented a Sim-to-Real Domain Adaptation strategy, augmenting the training set with physics-based synthetic samples. Results show that classical ML models achieved moderate diagnostic performance (AUC: 0.62-0.76), while the proposed hybrid DL model demonstrated superior predictive capability (accuracy: 0.91, AUC: 0.96). These findings underscore the potential of motion-based digital biomarkers for the automated, non-invasive detection of AD. The proposed framework represents a cost-effective and clinically scalable informatics solution for digital cognitive assessment.

阿尔茨海默病(AD)是一种以认知和运动能力下降为特征的进行性神经退行性疾病。早期检测仍然具有挑战性,因为传统的神经影像学和神经心理学评估往往无法捕捉到细微的临床前变化。数字健康和人工智能(AI)的最新进展为识别认知障碍的非侵入性生物标志物提供了新的机会。在这项研究中,我们提出了一个人工智能驱动的早期AD框架,该框架基于使用集成传感器的智能笔捕获的手写运动数据。该系统采用惯性测量单元(MPU-9250),在手写和绘图任务中记录细粒度的运动和动态信号。系统评估了多种机器学习(ML)算法-逻辑回归、支持向量机(SVM)、随机森林(RF)、k近邻(kNN)和深度学习(DL)架构,包括一维卷积神经网络(1D-CNN)、长短期记忆(LSTM)和CNN-BiLSTM混合网络。为了解决数据稀缺性问题,我们实施了模拟到真实的域适应策略,用基于物理的合成样本来增强训练集。结果表明,经典ML模型的诊断效果中等(AUC: 0.62-0.76),而混合DL模型的预测能力较好(准确率:0.91,AUC: 0.96)。这些发现强调了基于运动的数字生物标志物在自动、无创检测AD方面的潜力。提出的框架代表了一种具有成本效益和临床可扩展的数字认知评估信息学解决方案。
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引用次数: 0
Sparse Subsystem Discovery for Intelligent Sensor Networks. 智能传感器网络稀疏子系统发现。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010288
Heli Sun, Xuechun Liu, Miaomiao Sun, Ruichen Cao, Bin Xing, Liang He, Hui He

The Sparse Subgraph Finding (SGF) problem addresses the challenge of identifying sub-graphs with weak social interactions and sparse connections within a graph, which can be effectively modeled as discovering sparse subsystems in intelligent sensor networks. Traditional methods often rely on manually designed heuristics, which are computationally expensive and lack scalability, especially when dealing with complex sensor network systems. In this paper, we propose RL-SGF, a novel framework that integrates deep reinforcement learning and graph embedding through joint optimization to overcome these limitations. By simultaneously optimizing subsystem sparsity and representation learning within a unified framework, RL-SGF enhances both the effectiveness and robustness of the model in sensor network applications. Experimental results on synthetic and real-world datasets, including social networks, citation networks, and sensor network simulations, demonstrate that RL-SGF outperforms existing algorithms in terms of efficiency and solution quality, making it highly applicable to real-world sparse subsystem discovery scenarios in intelligent sensor networks.

稀疏子图查找(SGF)问题解决了识别具有弱社会交互和稀疏连接的子图的挑战,可以有效地建模为发现智能传感器网络中的稀疏子系统。传统的方法通常依赖于人工设计的启发式方法,这种方法计算成本高且缺乏可扩展性,特别是在处理复杂的传感器网络系统时。在本文中,我们提出了RL-SGF,这是一个通过联合优化集成深度强化学习和图嵌入的新框架,以克服这些限制。通过在统一框架内同时优化子系统稀疏性和表示学习,RL-SGF增强了模型在传感器网络应用中的有效性和鲁棒性。在社交网络、引文网络和传感器网络模拟等合成和现实数据集上的实验结果表明,RL-SGF在效率和解决方案质量方面优于现有算法,使其高度适用于智能传感器网络中真实稀疏子系统发现场景。
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引用次数: 0
High-Temperature Annealing of Random Telegraph Noise in a Stacked CMOS Image Sensor After Hot-Carrier Stress. 热载流子应力后堆叠CMOS图像传感器随机电报噪声的高温退火。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010282
Calvin Yi-Ping Chao, Thomas Meng-Hsiu Wu, Charles Chih-Min Liu, Shang-Fu Yeh, Chih-Lin Lee, Honyih Tu, Zhong-Da Wu, Joey Chiao-Yi Huang, Chin-Hao Chang

This paper studies the temperature effects on device aging, particularly the random telegraph noise (RTN) degradation and the threshold voltage (Vt) shift in a stacked CMOS image sensor (CIS) caused by hot-carrier stress (HCS). Measurements indicate that both are worse when stressed at lower temperatures. Further, the RTN traps generated by HCS can be deactivated effectively by a subsequent high-temperature annealing at 240 °C for up to 360 min. In contrast, the RTN traps in chips not stressed by hot carriers are essentially unaffected by annealing at the same temperature for the same amount of time. This suggests that the physical structure of the RTN traps caused by process-induced damage (PID) without HCS might be different from that generated by HCS. The exact microscopic nature of the differences between these two kinds of RTN traps is not clear and requires further investigation. This work also suggests that RTN degradation could be a useful indicator for device aging for reliability testing and modeling.

本文研究了温度对器件老化的影响,特别是热载流子应力(HCS)引起的堆叠CMOS图像传感器(CIS)随机电报噪声(RTN)退化和阈值电压(Vt)漂移。测量表明,在较低的温度下,这两种情况都更糟。此外,HCS产生的RTN陷阱可以通过随后在240°C下长达360分钟的高温退火有效地失活。相反,未受热载流子应力的芯片中的RTN陷阱基本上不受在相同温度下退火相同时间的影响。这表明,不含HCS的过程诱导损伤(process-induced damage, PID)引起的RTN陷阱的物理结构可能与HCS产生的RTN陷阱不同。这两种RTN圈闭之间的确切微观差异尚不清楚,需要进一步研究。这项工作还表明,RTN退化可以作为设备老化的有用指标,用于可靠性测试和建模。
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引用次数: 0
Enabling Sensor-Integrated and Sustainable Aerospace Structures Through Additively Manufactured Aluminium Mechanisms for CubeSats. 通过增材制造的立方体卫星铝机构实现传感器集成和可持续的航空航天结构。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010281
Bernardo Alves, Rafael Sousa, Ricardo Coelho, Daniel Gatões, Luís Cacho, Ricardo Branco, Vítor Miguel Santos, Patrícia Freitas Rodrigues

CubeSats are a fundamental tool of space exploration, allowing for the testing of novel ideas that can be upscaled to more efficient satellite systems. This work presents the development and characterisation of an additively manufactured aluminium mechanism designed to enable the self-functionalisation of CubeSat structures through material extrusion metal additive manufacturing, as a foundation for sensor integration. A space-grade AlSi7Mg alloy was selected and prepared as a filament to print a fully functional hinge geometry, aiming to evaluate the feasibility of producing movable metallic components using a low-cost and sustainable extrusion-based process. Produced parts were subjected to debinding and vacuum sintering, achieving a densification above 85% and an average hardness of 52.2 HV. Further characterisation, including micro-computed tomography, X-ray diffraction and dynamic mechanical analysis, was used to assess the microstructural integrity, present phase, and mechanical behaviour of the sintered components. The designed shrinkage-compensated hinge mechanism preserved its rotational mobility after sintering, validating the mechanical inter-locking strategy and the design for additive manufacturing methodology used. The results demonstrate that material extrusion enables the fabrication of lightweight, functional, and integrated aluminium mechanisms suitable for sensor incorporation and actuation in small satellite systems. This proof-of-concept highlights material extrusion as a sustainable and economically viable route for developing intelligent aero-space structures, paving the way for future adaptive and sensor-integrated CubeSat subsystems.

立方体卫星是太空探索的基本工具,可以测试可以升级为更有效的卫星系统的新想法。这项工作介绍了增材制造铝机构的发展和特征,旨在通过材料挤压金属增材制造实现立方体卫星结构的自功能化,作为传感器集成的基础。选择了一种空间级AlSi7Mg合金作为打印全功能铰链几何形状的丝材,旨在评估使用低成本和可持续的挤压工艺生产可移动金属部件的可行性。生产的零件经过脱脂和真空烧结,密度达到85%以上,平均硬度达到52.2 HV。进一步的表征,包括显微计算机断层扫描、x射线衍射和动态力学分析,用于评估烧结部件的显微组织完整性、当前相和力学行为。所设计的收缩补偿铰链机构在烧结后保持了其旋转迁移性,验证了机械互锁策略和所使用的增材制造方法的设计。结果表明,材料挤压可以制造轻量级,功能性和集成的铝机构,适用于小型卫星系统中的传感器集成和驱动。这一概念验证强调了材料挤压是开发智能航空航天结构的可持续和经济可行的途径,为未来的自适应和传感器集成立方体子系统铺平了道路。
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引用次数: 0
Decomposing Juggling Skill into Sequencing, Prediction, and Accuracy: A Computational Model with Low-Gravity VR Training. 将杂耍技巧分解为顺序,预测和准确性:低重力VR训练的计算模型。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010294
Wanhee Cho, Makoto Kobayashi, Hiroyuki Kambara, Hirokazu Tanaka, Takahiro Kagawa, Makoto Sato, Hyeonseok Kim, Makoto Miyakoshi, Scott Makeig, John Rehner Iversen, Natsue Yoshimura

Juggling is a complex motor skill that requires multiple sub-skills and cannot be mastered without extensive practice. Although prior studies have quantified performance differences between novice and expert jugglers, none have attempted to quantitatively decompose these components or model their contribution to juggling performance. This longitudinal study presents a multimodal evaluation system that integrates computer vision, motion capture, and biosensing to quantify three key elements of juggling ability: Sequencing, Prediction, and Accuracy. Twenty beginners completed a 10-day, three-ball juggling experiment combining visuo-haptic virtual reality (VR) and real-world practice, with half training in reduced gravity, previously shown to enhance early-stage motor learning. The fitted Gamma-Log generalized linear model (GLM) indicated that Sequencing is the dominant factor of early skill acquisition, followed by Prediction and Accuracy. This study provides the first computational decomposition of juggling, demonstrates how multiple elements jointly contribute to performance, and results in a principled approach to characterizing motor learning in complex real-world tasks.

杂耍是一项复杂的运动技能,需要多个子技能,没有广泛的实践是无法掌握的。虽然先前的研究已经量化了新手和专家之间的表现差异,但没有人试图定量地分解这些成分或模拟它们对杂耍表现的贡献。这项纵向研究提出了一个多模态评估系统,该系统集成了计算机视觉、运动捕捉和生物传感,以量化杂耍能力的三个关键要素:排序、预测和准确性。20名初学者完成了一项为期10天的三球杂耍实验,结合了视觉触觉虚拟现实(VR)和现实世界的练习,其中一半的训练是在减少重力的情况下进行的,之前的研究表明,这种训练可以增强早期的运动学习。拟合的Gamma-Log广义线性模型(GLM)表明,排序是早期技能习得的主导因素,其次是预测和准确性。这项研究首次提供了杂耍的计算分解,展示了多个元素如何共同影响表演,并得出了一种原则性的方法来表征复杂现实世界任务中的运动学习。
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引用次数: 0
Muscle Synergy Analysis of Different PAPE Protocols on Side Kick Performance in Elite Sanda Athletes: A Repeated Measures Study. 不同PAPE方案对优秀散打运动员侧踢性能的肌肉协同分析:重复测量研究。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010296
Ziwen Ning, Zihao Chen, Tianfen Zhou
<p><p><b>Background:</b> Post-activation potentiation (PAPE) enhances athletic performance through brief, high-intensity reactivation and holds significant application value in competitive sports. As a core offensive and defensive technique in Sanda, the side kick demands exceptional neuromuscular coordination. However, current research on PAPE applications in specialized techniques for competitive sports remains limited. There is a lack of comparative analysis on neuromuscular activation characteristics of the side kick in high-level Sanda athletes across different PAPE protocols, and the optimal adaptation scheme remains unidentified. Muscle coordination analysis based on non-negative matrix factorization (NMF) offers an objective perspective to elucidate the neuromuscular control mechanisms underlying this technique, thereby addressing this research gap. <b>Methods:</b> Eighteen high-level Sanda athletes (National Level 1 or above) participated in a randomized crossover design, sequentially undergoing three PAPE protocols-ESG, RBG, and SQG-with 10-day intervals between each intervention. Using the Noraxon wireless surface electromyography system, high-speed cameras, and the MY JUMP APP, we simultaneously collected vertical jump height data at different time points (6, 8, 10 min) post-intervention, along with electromyography and kinematic data of the side kick movement 6 min post-intervention. The NMF algorithm was employed to extract muscle coordination features (activation weights, activation coefficients), and repeated measures ANOVA or Friedman tests were used to assess intergroup differences. <b>Results:</b> Vertical jump height was significantly higher in the ESG group than in the RBG group at 6, 8, and 10 min post-intervention (<i>p</i> < 0.05). At 6 min post-intervention, it was also significantly higher than in the SQG group (<i>p</i> < 0.05). SQG showed significantly higher ESG than RBG at 8 min post-intervention (<i>p</i> < 0.05), with no significant differences from the other two groups at 10 min. Regarding muscle coordination, ESG and SQG exhibited significantly higher right rectus femoris activation weights than RBG (<i>p</i> < 0.05); ESG's gluteus maximus and rectus femoris activation weights were significantly higher than RBG (<i>p</i> < 0.05), with generally longer activation durations across all synergistic modules compared to the other two groups. Although RBG's vastus lateralis and gluteus medius activation weights were significantly higher than some groups, this did not translate into overall performance advantages. <b>Conclusions:</b> Different PAPE protocols exert distinct effects on vertical jump height and muscle coordination patterns during side kicks in elite Sanda athletes. The combined electrical stimulation protocol, which combines the immediate and sustained effects of PAPE, effectively enhances key muscle activation weights and prolongs coordination module activation duration. It represents the optimal solution
背景:激活后增强(PAPE)通过短暂的、高强度的再激活来提高运动成绩,在竞技体育中具有重要的应用价值。作为散打的核心攻防技术,侧踢需要特殊的神经肌肉协调能力。然而,目前关于PAPE在竞技体育专业技术中的应用研究仍然有限。高水平散打运动员侧踢的神经肌肉激活特征在不同PAPE方案下缺乏对比分析,最佳适应方案仍未确定。基于非负矩阵分解(NMF)的肌肉协调分析为阐明该技术背后的神经肌肉控制机制提供了一个客观的视角,从而弥补了这一研究空白。方法:18名高水平散打运动员(国家一级及以上)采用随机交叉设计,依次接受3种PAPE方案——esg、RBG和sqg,每项干预间隔10天。利用Noraxon无线体表肌电图系统、高速摄像机和MY JUMP APP,我们同时收集了干预后不同时间点(6、8、10分钟)的垂直起跳高度数据,以及干预后6分钟侧踢腿运动的肌电图和运动学数据。采用NMF算法提取肌肉协调特征(激活权值、激活系数),并采用重复测量方差分析或弗里德曼检验评估组间差异。结果:干预后6、8、10 min, ESG组垂直跳高显著高于RBG组(p < 0.05)。干预后6 min,亦显著高于SQG组(p < 0.05)。干预后8 min时,SQG组ESG显著高于RBG组(p < 0.05),干预后10 min时与其他两组无显著差异。在肌肉协调性方面,ESG和SQG的右股直肌激活重量显著高于RBG (p < 0.05);ESG的臀大肌和股直肌激活重量显著高于RBG (p < 0.05),与其他两组相比,ESG的所有协同模块的激活持续时间普遍更长。虽然RBG的股外侧肌和臀中肌激活重量显著高于某些组,但这并没有转化为整体性能优势。结论:不同的PAPE方案对优秀散打运动员侧踢时的垂直起跳高度和肌肉协调模式有不同的影响。联合电刺激方案结合了PAPE的即时和持续效果,有效地增强了关键肌肉的激活重量,延长了协调模块的激活持续时间。它代表了最佳的解决方案,优化神经肌肉的激活特性,在伙伴。
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引用次数: 0
PBZGNet: A Novel Defect Detection Network for Substation Equipment Based on Gradual Parallel Branch Architecture. 基于渐进式并行支路结构的变电站设备缺陷检测网络PBZGNet。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-01-02 DOI: 10.3390/s26010300
Mintao Hu, Yang Zhuang, Jiahao Wang, Yaoyi Hu, Desheng Sun, Dawei Xu, Yongjie Zhai

As power systems expand and grow smarter, the safe and steady operation of substation equipment has become a prerequisite for grid reliability. In cluttered substation scenes, however, existing deep learning detectors still struggle with small targets, multi-scale feature fusion, and precise localization. To overcome these limitations, we introduce PBZGNet, a defect-detection network that couples a gradual parallel-branch backbone, a zoom-fusion neck, and a global channel-recalibration module. First, BiCoreNet is embedded in the feature extractor: dual-core parallel paths, reversible residual links, and channel recalibration cooperate to mine fault-sensitive cues. Second, cross-scale ZFusion and Concat-CBFuse are dynamically merged so that no scale loses information; a hierarchical composite feature pyramid is then formed, strengthening the representation of both complex objects and tiny flaws. Third, an attention-guided decoupled detection head (ADHead) refines responses to obscured and minute defect patterns. Finally, within the Generalized Focal Loss framework, a quality rating scheme suppresses background interference while distribution regression sharpens the localization of small targets. Across all scales, PBZGNet clearly outperforms YOLOv11. Its lightweight variant, PBZGNet-n, attains 83.9% mAP@50 with only 2.91 M parameters and 7.7 GFLOPs-9.3% above YOLOv11-n. The full PBZGNet surpasses the current best substation model, YOLO-SD, by 7.3% mAP@50, setting a new state of the art (SOTA).

随着电力系统规模的不断扩大和智能化程度的不断提高,变电站设备的安全稳定运行已成为电网可靠性的先决条件。然而,在混乱的变电站场景中,现有的深度学习检测器仍在努力解决小目标、多尺度特征融合和精确定位问题。为了克服这些限制,我们引入了PBZGNet,这是一种缺陷检测网络,它耦合了一个渐进的并行分支主干、一个变焦融合颈部和一个全局信道重新校准模块。首先,将BiCoreNet嵌入到特征提取器中:双核并行路径、可逆残留链路和通道重新校准协同挖掘故障敏感线索。其次,跨尺度ZFusion和Concat-CBFuse进行动态融合,使尺度不丢失信息;然后形成一个分层复合特征金字塔,加强了复杂物体和微小缺陷的表示。第三,一个注意力引导的解耦检测头(ADHead)改进了对模糊和微小缺陷模式的响应。最后,在广义焦损框架下,质量评级方案抑制了背景干扰,而分布回归则增强了小目标的定位。在所有尺度上,PBZGNet明显优于YOLOv11。它的轻量化变体PBZGNet-n达到83.9% mAP@50,只有2.91 M参数,比YOLOv11-n高7.7 GFLOPs-9.3%。完整的PBZGNet比目前最好的变电站模型YOLO-SD高出7.3% mAP@50,创下了新的技术水平(SOTA)。
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