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An Exploratory Study on Imaging Resolution, Operational Parameters, and Measurement Uncertainty in UAV-Based Crack Inspection. 基于无人机的裂纹检测成像分辨率、操作参数和测量不确定度的探索性研究。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-05 DOI: 10.3390/s26031031
Suk Bae Lee, Dong Ha Lee, Jisung Kim

Unmanned aerial vehicles (UAVs) are increasingly used for crack inspection of civil infrastructure. However, crack interpretation from UAV imagery is constrained by trade-offs among imaging resolution, operational efficiency, and measurement uncertainty. Higher resolution generally requires reduced flight distance, increased image quantity, and greater data-processing effort, which can limit inspection efficiency. This study presents an exploratory analysis of UAV-based crack inspection from a measurement-oriented perspective. Empirical UAV flight experiments were conducted to examine the relationships among flight distance, ground sampling distance (GSD), image quantity, and photogrammetric processing effort under controlled acquisition conditions. In addition, a dataset-based segmentation analysis was performed to investigate pixel-level uncertainty associated with crack thickness representation near the resolution limit. This analysis does not aim to estimate physical crack width, but rather to identify intrinsic limitations of image-based crack interpretation. The results indicate that while flight distance and GSD follow expected geometric relationships, image quantity and processing effort are influenced by multiple interacting factors rather than resolution alone. Pixel-level analysis further reveals substantial segmentation uncertainty for thin cracks represented by only a few pixels. These findings highlight the importance of accounting for measurement uncertainty and operational trade-offs when planning efficient UAV-based crack inspections.

无人机越来越多地用于民用基础设施的裂缝检测。然而,无人机图像的裂缝解释受到成像分辨率、操作效率和测量不确定性之间权衡的限制。更高的分辨率通常需要减少飞行距离,增加图像量和更大的数据处理工作,这可能会限制检查效率。本文从面向测量的角度对基于无人机的裂纹检测进行了探索性分析。在控制采集条件下,对无人机飞行距离、地面采样距离(GSD)、图像量和摄影测量处理工作量之间的关系进行了实证研究。此外,还进行了基于数据集的分割分析,以研究分辨率极限附近与裂纹厚度表示相关的像素级不确定性。该分析的目的不是估计物理裂缝宽度,而是确定基于图像的裂缝解释的内在局限性。结果表明,虽然飞行距离和GSD遵循预期的几何关系,但图像数量和处理工作量受多种相互作用因素的影响,而不仅仅是分辨率的影响。像素级分析进一步揭示了仅由几个像素表示的薄裂纹的大量分割不确定性。这些发现强调了在规划有效的基于无人机的裂缝检测时,考虑测量不确定性和操作权衡的重要性。
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引用次数: 0
DCDW-YOLOv11: An Intelligent Defect-Detection Method for Key Transmission-Line Equipment. DCDW-YOLOv11:关键输电在线设备缺陷智能检测方法
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031029
Dezhi Wang, Riqing Song, Minghui Liu, Xingqian Wang, Chengyu Zhang, Ziang Wang, Dongxue Zhao

The detection of defects in key transmission-line equipment under complex environments often suffers from insufficient accuracy and reliability due to background interference and multi-scale feature variations. To address this issue, this paper proposes an improved defect detection model based on YOLOv11, named DCDW-YOLOv11. The model introduces deformable convolution C2f_DCNv3 in the backbone network to enhance adaptability to geometric deformations of targets, and incorporates the convolutional block attention module (CBAM) to highlight defect features while suppressing background interference. In the detection head, a dynamic head structure (DyHead) is adopted to achieve cross-layer multi-scale feature fusion and collaborative perception, along with the WIoU loss function to optimize bounding box regression and sample weight allocation. Experimental results demonstrate that on the transmission-line equipment defect dataset, DCDW-YOLOv11 achieves an accuracy, recall, and mAP of 94.4%, 92.8%, and 96.3%, respectively, representing improvements of 2.8%, 7.0%, and 4.4% over the original YOLOv11, and outperforming other mainstream detection models. The proposed method can provide high-precision and highly reliable defect detection support for intelligent inspection of transmission lines in complex scenarios.

复杂环境下关键输变电设备缺陷检测由于背景干扰和多尺度特征变化,往往精度和可靠性不足。针对这一问题,本文提出了一种基于YOLOv11的改进缺陷检测模型,命名为DCDW-YOLOv11。该模型在骨干网络中引入了可变形卷积C2f_DCNv3,增强了对目标几何变形的适应性,并引入了卷积块注意模块(CBAM),在抑制背景干扰的同时突出缺陷特征。在检测头部中,采用动态头部结构(DyHead)实现跨层多尺度特征融合和协同感知,并结合WIoU损失函数优化边界盒回归和样本权值分配。实验结果表明,在输电网设备缺陷数据集上,DCDW-YOLOv11的准确率、召回率和mAP分别为94.4%、92.8%和96.3%,比原YOLOv11分别提高2.8%、7.0%和4.4%,优于其他主流检测模型。该方法可为复杂场景下的输电线路智能检测提供高精度、高可靠性的缺陷检测支持。
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引用次数: 0
Wearable Biomechanics and Video-Based Trajectory Analysis for Improving Performance in Alpine Skiing. 可穿戴生物力学和基于视频的轨迹分析提高高山滑雪成绩。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031010
Denisa-Iulia Brus, Dorin-Ioan Cătană

Performance diagnostics in alpine skiing increasingly rely on integrated biomechanical and kinematic assessments to support technique optimization under real training conditions; however, many existing approaches address trajectory geometry or biomechanical variables separately, limiting their explanatory power. This study evaluates an integrated analysis framework combining OptiPath, an AI-assisted video-based trajectory analysis tool, with XSensDOT wearable inertial sensors to identify technical inefficiencies during giant slalom skiing. Thirty competitive youth athletes (n = 30; 14-16 years) performed controlled runs with predefined lateral offsets from the gates, enabling systematic examination of the relationship between spatial trajectory deviations, biomechanical execution, and performance outcomes. Skier trajectories were extracted using computer vision-based methods, while lower-limb kinematics, trunk motion, and tri-axial acceleration were recorded using inertial measurement units. Deviations from mathematically defined ideal trajectories were quantified through regression-based calibration and arc-based modeling. The results show that although OptiPath reliably detected trajectory variations, shorter skiing paths did not consistently produce faster run times. Instead, superior performance was associated with more efficient biomechanical execution, reflected by coordinated trunk-lower limb motion, controlled vertical loading, reduced lateral corrections, and higher forward acceleration, even when longer trajectories were followed. These findings indicate that trajectory geometry alone is insufficient to explain performance outcomes and support the integration of wearable biomechanics with trajectory modeling as a practical, low-cost, and field-deployable tool for alpine skiing performance diagnostics.

高山滑雪的性能诊断越来越依赖于综合生物力学和运动学评估,以支持真实训练条件下的技术优化;然而,许多现有的方法分别处理轨迹几何或生物力学变量,限制了它们的解释能力。该研究评估了将OptiPath(一种人工智能辅助视频轨迹分析工具)与XSensDOT可穿戴惯性传感器相结合的综合分析框架,以识别大回转滑雪过程中的技术效率低下。30名有竞争力的青年运动员(n = 30, 14-16岁)进行了受控的跑步,预先设定了与大门的横向偏移,从而系统地检查了空间轨迹偏差、生物力学执行和表现结果之间的关系。使用基于计算机视觉的方法提取滑雪者轨迹,同时使用惯性测量单元记录下肢运动学、躯干运动和三轴加速度。通过基于回归的校准和基于弧的建模,量化了与数学定义的理想轨迹的偏差。结果表明,尽管OptiPath可靠地检测到轨迹变化,但较短的滑雪路径并不总是产生更快的运行时间。相反,优异的表现与更有效的生物力学执行有关,体现在躯干-下肢运动的协调、垂直负荷的控制、更少的横向修正和更高的向前加速度,即使遵循更长的轨迹。这些研究结果表明,轨迹几何本身不足以解释运动结果,并支持将可穿戴生物力学与轨迹建模相结合,作为一种实用、低成本、可现场部署的高山滑雪运动诊断工具。
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引用次数: 0
Methodology for Evaluating Process Mining Tools in IoT Contexts. 评估物联网环境中流程挖掘工具的方法。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031020
Tilen Tratnjek, Gregor Polančič

As IoT environments continue to grow in scale and complexity, the increasing number of interconnected sensors and devices makes end-to-end system behaviour progressively harder to understand. Process mining offers strong potential to address this challenge by transforming sensor-driven event data into interpretable insights at the process level. Yet, current tools are typically designed for business processes, not sensor-driven IoT workflows, which raises questions about their suitability in the IoT context. This discrepancy is evident in existing comparative studies, which often rely on feature checklists, rarely consider usability and interaction effort, or fail to evaluate support for domain-specific analytical tasks. This study introduces a structured evaluation methodology that combines a functional capability assessment derived from vendor materials with a task-based evaluation grounded in 13 representative questions from an IoT-oriented smart factory scenario, focusing on clarity, ease of use, and the ability to address context-specific analytical needs. The results highlight notable strengths and trade-offs among the investigated tools, demonstrating substantial variation in usability, effort, and analytical coverage, and showing that no single tool fully supports the breadth of process-intelligence needs in IoT contexts. The proposed methodology provides a replicable foundation for evaluating process mining tools in domain-specific settings and supports more informed tool selection for IoT-driven analytical workflows.

随着物联网环境的规模和复杂性不断增长,互连传感器和设备数量的增加使得端到端系统行为越来越难以理解。流程挖掘通过将传感器驱动的事件数据转换为流程级别上可解释的见解,为解决这一挑战提供了强大的潜力。然而,目前的工具通常是为业务流程设计的,而不是为传感器驱动的物联网工作流程设计的,这就提出了它们在物联网环境中的适用性问题。这种差异在现有的比较研究中很明显,这些研究通常依赖于特性检查表,很少考虑可用性和交互工作,或者无法评估对特定领域分析任务的支持。本研究介绍了一种结构化的评估方法,该方法结合了来自供应商材料的功能能力评估和基于面向物联网的智能工厂场景中13个代表性问题的基于任务的评估,重点关注清晰度、易用性和解决特定环境分析需求的能力。结果突出了所调查工具之间的显着优势和权衡,展示了可用性,工作量和分析覆盖范围的实质性变化,并表明没有任何一种工具完全支持物联网环境中流程智能需求的广度。所提出的方法为评估特定领域设置中的流程挖掘工具提供了可复制的基础,并为物联网驱动的分析工作流提供了更明智的工具选择。
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引用次数: 0
Assessment of PlanetScope Spectral Data for Estimation of Peanut Leaf Area Index Using Machine Learning and Statistical Methods. 利用机器学习和统计方法评估花生叶面积指数估算的行星镜光谱数据。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031018
Michael Ekwe, Hansanee Fernando, Godstime James, Oluseun Adeluyi, Jochem Verrelst, Angela Kross

Leaf area index (LAI) is a key indicator of crop growth and development and is widely used in both agricultural research and precision farming applications. PlanetScope imagery is generally used for monitoring crop growth due to its high revisit frequency, broad spatial coverage, and cost-effective access to consistent high-resolution multispectral data. Therefore, we developed regression models to estimate peanut LAI, combining PlanetScope spectral bands and vegetation indices (VIs). Specifically, we compared the performance of random forest (RF), eXtreme Gradient Boosting (XGBoost), and Partial Least Squares Regression (PLSR) regression algorithms for peanut LAI estimation. Our results showed that most of the VIs exhibited strong relationships with LAI. Thirteen VIs were individually evaluated for estimating LAI using the aforementioned algorithms, and our results showed that the best single predictors of LAI are: TSAVI (RF: R2 = 0.87, RMSE = 0.83 m2/m2, RRMSE = 24.20%; XGBoost: R2 = 0.77, RMSE = 0.95 m2/m2, RRMSE = 27.96%); and RTVIcore (PLSR: R2 = 0.68, RMSE = 1.12 m2/m2, RRMSE = 32.88%). The top six ranked VIs were used to calibrate the RF, XGBoost, and PLSR algorithms. Model validation indicated that RF achieved the highest accuracy (R2 = 0.844, RMSE = 0.858 m2/m2, RRMSE = 25.17%), followed by XGBoost (R2 = 0.808, RMSE = 0.92 m2/m2, RRMSE = 26.99%), whereas PLSR showed comparatively lower performance (R2 = 0.76, RMSE = 0.983 m2/m2, RRMSE = 28.85%). Further results showed that PlanetScope VIs provided superior model accuracy in estimating peanut LAI compared to the use of spectral bands alone. Additionally, integrating spectral bands with VIs reduced LAI estimation accuracy, underscoring the importance of selecting predictor variables in ensuring optimal model performance. Overall, the presented results are significant for future crop monitoring using RF to reduce overreliance on multiple models for peanut LAI estimation.

叶面积指数(LAI)是作物生长发育的重要指标,在农业研究和精准农业应用中有着广泛的应用。PlanetScope图像通常用于监测作物生长,因为它的重访频率高,空间覆盖范围广,并且具有成本效益,可以获得一致的高分辨率多光谱数据。因此,我们结合PlanetScope光谱波段和植被指数(VIs)建立了花生LAI的回归模型。具体来说,我们比较了随机森林(RF),极端梯度增强(XGBoost)和偏最小二乘回归(PLSR)回归算法在花生LAI估计中的性能。我们的研究结果表明,大多数VIs与LAI有很强的关系。十三VIs分别进行了对估计赖用上述算法,和我们的结果表明,最好的单一预测赖:TSAVI(射频:R2 = 0.87, RMSE = 0.83平方米/ m2,推定= 24.20%;XGBoost: R2 = 0.77, RMSE = 0.95平方米/ m2,推定= 27.96%);RTVIcore (PLSR: R2 = 0.68, RMSE = 1.12 m2/m2, RRMSE = 32.88%)。排名前6位的VIs用于校准RF、XGBoost和PLSR算法。模型验证表明,RF的准确率最高(R2 = 0.844, RMSE = 0.858 m2/m2, RRMSE = 25.17%), XGBoost的准确率次之(R2 = 0.808, RMSE = 0.92 m2/m2, RRMSE = 26.99%), PLSR的准确率较低(R2 = 0.76, RMSE = 0.983 m2/m2, RRMSE = 28.85%)。进一步的结果表明,与单独使用光谱波段相比,PlanetScope VIs在估算花生LAI方面提供了更高的模型精度。此外,将光谱带与VIs集成降低了LAI估计精度,强调了选择预测变量在确保最佳模型性能方面的重要性。总的来说,本文的结果对未来使用RF进行作物监测以减少对花生LAI估计的多个模型的过度依赖具有重要意义。
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引用次数: 0
Design of a Low-Power RFID Sensor System Based on RF Energy Harvesting and Anti-Collision Algorithm. 基于射频能量采集和防碰撞算法的低功耗RFID传感器系统设计。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031023
Xin Mao, Xuran Zhu, Jincheng Lei

Passive radio frequency identification (RFID) sensing systems integrate wireless energy transfer with information identification. However, conventional passive RFID systems still face three key challenges in practical applications: low RF energy harvesting efficiency, high power consumption of sensor loads, and high complexity of tag anti-collision algorithms. To address these issues, this paper proposes a hardware-software co-optimized RFID sensor system. For hardware, low threshold RF Schottky diodes are selected, and an input inductor is introduced into the voltage multiplier rectifier to boost the signal amplitude, thereby enhancing the radio frequency to direct current (RF-DC) energy conversion efficiency. In terms of loading, a low-power management strategy is implemented for the power supply and control logic of the sensor node to minimize the overall system energy consumption. For algorithmic implementation, a Dual-Threshold Stepped Dynamic Frame Slotted ALOHA (DTS-DFSA) anti-collision algorithm is proposed, which adaptively adjusts the frame length based on the observed collision ratio, eliminating the need for complex tag population estimation. The algorithm features low computational complexity and is well suited for resource constrained embedded platforms. Through simulation validation, we compare the conversion efficiency of the RF energy harvesting circuit before and after improvement, the current of the sensor load in active and idle states, and the performance of the proposed algorithm against the low-complexity DFSA (LC-DFSA). The results show that the maximum conversion efficiency of the improved RF energy harvesting circuit has increased from 60.56% to 68.69%; specifically, the sensor load current drastically drops from approximately 2.0 mA in the active state to around 74 μA in the idle state, validating the efficacy of the proposed power gating strategy, and the proposed DTS-DFSA algorithm outperforms existing low-complexity schemes in both identification efficiency and computational complexity.

无源射频识别(RFID)传感系统将无线能量传输与信息识别相结合。然而,传统的无源RFID系统在实际应用中仍然面临着三个关键挑战:低射频能量收集效率、传感器负载的高功耗和标签防碰撞算法的高复杂性。针对这些问题,本文提出了一种软硬件协同优化的RFID传感器系统。在硬件方面,选择低阈值射频肖特基二极管,并在电压乘数整流器中引入输入电感来提升信号幅度,从而提高射频到直流(RF- dc)的能量转换效率。在负载方面,对传感器节点的供电和控制逻辑采用低功耗管理策略,使系统整体能耗最小化。在算法实现方面,提出了一种双阈值阶跃动态帧开槽ALOHA (DTS-DFSA)防碰撞算法,该算法根据观察到的碰撞率自适应调整帧长度,消除了复杂的标签种群估计。该算法计算复杂度低,适用于资源受限的嵌入式平台。通过仿真验证,比较了改进前后射频能量采集电路的转换效率、传感器负载在主动和空闲状态下的电流,以及所提算法对抗低复杂度DFSA (LC-DFSA)的性能。结果表明:改进后的射频能量收集电路的最大转换效率由60.56%提高到68.69%;其中,传感器负载电流从主动状态下的约2.0 mA急剧下降到空闲状态下的约74 μA,验证了所提功率门控策略的有效性,且所提DTS-DFSA算法在识别效率和计算复杂度方面均优于现有的低复杂度算法。
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引用次数: 0
Comprehensive and Region-Specific Retinal Health Assessment Using Phasor Analysis of Multispectral Images and Machine Learning. 基于多光谱图像相量分析和机器学习的全面和区域特异性视网膜健康评估。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031021
Armin Eskandarinasab, Laura Rey-Barroso, Francisco J Burgos-Fernández, Meritxell Vilaseca

This study examines the efficacy of phasor analysis in distinguishing between healthy and diseased retinas using multispectral imaging data together with machine learning approaches. Our results demonstrate that phasor analysis of multispectral images surpasses average reflectance values in classification performance, serving as an effective dimensionality reduction technique to extract essential features, with the first harmonic yielding optimal results when paired with Z-score normalization. To compare the effectiveness of multispectral images with that of a conventional color fundus camera, we extracted three spectral bands corresponding to the red, green, and blue regions and combined them to create RGB-like images, which were then subjected to the same analysis. Our study found that phasor analysis of multispectral images provided more accurate classification results than phasor analysis of RGB-like images. An examination of different regions of interest showed that using the entire retina yields the best classification performance, likely due to the advanced stage of the diseases, which had progressed to affect the entire fundus. Our findings suggest that phasor analysis of multispectral images and machine learning are a powerful tools for retinal disease classification.

本研究使用多光谱成像数据和机器学习方法检验相量分析在区分健康和病变视网膜方面的功效。我们的研究结果表明,多光谱图像的相量分析在分类性能上优于平均反射率值,可以作为一种有效的降维技术来提取基本特征,当与Z-score归一化匹配时,一阶谐波产生最佳结果。为了比较多光谱图像与传统彩色眼底相机的有效性,我们提取了红色、绿色和蓝色区域对应的三个光谱带,并将它们组合成类似rgb的图像,然后对这些图像进行相同的分析。我们的研究发现,多光谱图像的相量分析比类rgb图像的相量分析提供了更准确的分类结果。对不同感兴趣区域的检查表明,使用整个视网膜可以产生最佳的分类性能,这可能是由于疾病进展到晚期,已经影响到整个眼底。我们的研究结果表明,多光谱图像的相量分析和机器学习是视网膜疾病分类的有力工具。
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引用次数: 0
Paper-Based Analytical Devices Coupled with Fluorescence Detection and Smartphone Imaging: Advances and Applications. 基于纸张的分析设备与荧光检测和智能手机成像:进展和应用。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031012
Constantinos K Zacharis

Paper-based analytical devices have emerged as a versatile and cost-effective platform for on-site chemical and biological analysis. The integration of fluorescence detection with smartphone imaging has significantly enhanced the analytical performance and portability of these systems, enabling sensitive, rapid, and user-friendly detection of diverse analytes. This review highlights recent advancements in paper-based fluorescence sensing technologies, focusing on their design principles, materials, and detection strategies. Emphasis is placed on the use of nanomaterials, quantum dots, and carbon-based fluorophores that improve sensitivity and selectivity in food, bioanalytical, and environmental applications. The role of smartphones as optical detectors and data processing tools is explored, underscoring innovations in image analysis, calibration algorithms, and app-based quantification methods.

基于纸张的分析设备已经成为现场化学和生物分析的多功能和经济高效的平台。荧光检测与智能手机成像的集成显著提高了这些系统的分析性能和便携性,实现了对各种分析物的敏感、快速和用户友好的检测。本文综述了基于纸张的荧光传感技术的最新进展,重点介绍了它们的设计原理、材料和检测策略。重点放在纳米材料、量子点和碳基荧光团的使用上,以提高食品、生物分析和环境应用中的灵敏度和选择性。探讨了智能手机作为光学探测器和数据处理工具的作用,强调了图像分析,校准算法和基于应用程序的量化方法的创新。
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引用次数: 0
A Comparative Study of RQA-Guided Attention Mechanisms with LSTM Autoencoder for Bearing Anomaly Detection. rqa引导注意机制与LSTM自编码器在方位异常检测中的比较研究。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031015
Ayşenur Hatipoğlu, Ersen Yılmaz

Accurate anomaly detection in rotating machinery under noisy conditions remains challenging in Prognostics and Health Management (PHM). Existing deep learning autoencoders and attention mechanisms rely primarily on data-driven similarity measures and fail to explicitly incorporate nonlinear dynamical characteristics of degradation. In this study, we propose a Recurrence Quantification Analysis-Aware Attention (RQAA) framework that systematically injects chaos-theoretic descriptors into the attention mechanism of LSTM-based autoencoders for unsupervised anomaly detection. Specifically, RQA metrics including recurrence rate, determinism, laminarity, entropy, and trapping time are computed at the window level and embedded into the query-key-value attention scoring to guide the model toward dynamically informative temporal patterns. Three attention variants are developed to investigate different fusion strategies between learned representations and RQA-driven structural cues. The proposed framework is evaluated on three widely used bearing vibration datasets, which are IMS, CWRU, and HUST. Experimental results demonstrate that RQAA consistently outperforms conventional LSTM autoencoders and classical attention-based models, achieving up to 99.85% F1-score and 99.00% AUC while exhibiting superior robustness in low signal-to-noise scenarios. Further analysis reveals that explicit dynamical guidance enhances anomaly separability and reduces false alarms, particularly in early-stage fault detection. These findings indicate that integrating nonlinear dynamical information directly into attention scoring offers a principled and effective pathway for advancing unsupervised anomaly detection in rotating machinery and safety-critical industrial systems.

在预测和健康管理(PHM)中,噪声条件下旋转机械的准确异常检测仍然是一个挑战。现有的深度学习自编码器和注意机制主要依赖于数据驱动的相似性度量,未能明确地纳入退化的非线性动态特征。在这项研究中,我们提出了一个递归量化分析感知注意(RQAA)框架,该框架系统地将混沌理论描述符注入到基于lstm的自编码器的注意机制中,用于无监督异常检测。具体来说,RQA指标包括复发率、确定性、层次性、熵和捕获时间在窗口级别计算,并嵌入到查询键值注意力评分中,以指导模型走向动态信息的时间模式。本研究发展了三种注意变体,以探讨习得表征与rqa驱动的结构线索之间的不同融合策略。在IMS、CWRU和HUST三种广泛使用的轴承振动数据集上对该框架进行了评估。实验结果表明,RQAA始终优于传统的LSTM自编码器和经典的基于注意力的模型,达到99.85%的f1分数和99.00%的AUC,同时在低信噪比场景下表现出优异的鲁棒性。进一步分析表明,显式动态引导增强了异常可分离性,减少了误报,特别是在早期故障检测中。这些发现表明,将非线性动态信息直接集成到注意力评分中,为推进旋转机械和安全关键工业系统的无监督异常检测提供了一条原则性和有效的途径。
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引用次数: 0
Square Split-Ring Resonator as a Sensor for Detection of Nanoparticles in PVDF-Based Nanocomposites at Ultra-High Frequencies: MXenes and MoS2 Concentrations. 方形劈开环谐振器在pvdf基纳米复合材料中检测纳米粒子的超高频率:MXenes和MoS2浓度。
IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2026-02-04 DOI: 10.3390/s26031028
Jorge Simon, Jacobo Jimenez-Rodriguez, Emmanuel Hernandez-Gonzalez, Jose L Alvarez-Flores, Walter A Mata-Lopez, John A Franco-Villafañe, J R Gomez-Rodriguez, Marco Cardenas-Juarez, Oscar F Olea-Mejia, Ana L Martinez-Hernandez, Carlos Velasco Santos

The performance of a printed square split-ring resonator as a sensor for quantifying nanoparticle concentrations in PVDF-based nanocomposites was evaluated at UHF frequencies. The sensing mechanism was based on the frequency response of parameter S21, observing the shift in the resonant frequency and a variation in S21 level, while samples were placed on the ring split and compared to the sensor without a sample. Experiments with samples of PVDF-based nanocomposites combined with different concentrations of both MoS2 and MXenes, ranging from 0.01% to 0.2%, were conducted. In general, considering both types of samples studied, it was observed that, as the concentration increases, S21 (dB) increases from -6.35 to -6 dB. At the same time, the resonance frequency in the S21 plot went from 500.4 to 498.25 MHz. Although the concentrations and their variations were relatively low, shifts in the resonance frequency of S21 were evident, demonstrating the ability of the sensor to detect low concentrations and variations of MoS2 and MXenes, being the detection of samples with higher concentrations feasible as future work, and concluding that the sensor had a relatively acceptable performance. In this study, MXenes were the concentrations that produced more noticeable shifts in the resonance frequency of S21. Likewise, characterizations based on SEM and TEM were performed to corroborate the ones at UHF frequencies.

在UHF频率下,对印制方形劈裂环谐振器作为pvdf基纳米复合材料中纳米颗粒浓度传感器的性能进行了评价。传感机制基于参数S21的频率响应,观察谐振频率的移位和S21电平的变化,同时将样品放置在环裂片上,并与没有样品的传感器进行比较。对pvdf基纳米复合材料样品进行了实验,样品中加入了不同浓度的MoS2和MXenes,浓度从0.01%到0.2%不等。总的来说,考虑到所研究的两种类型的样品,可以观察到,随着浓度的增加,S21 (dB)从-6.35增加到-6 dB。同时,S21小区的共振频率从500.4 MHz上升到498.25 MHz。虽然浓度及其变化相对较低,但S21共振频率的变化很明显,表明该传感器具有检测低浓度MoS2和MXenes的能力,可以在未来的工作中检测更高浓度的样品,并得出该传感器具有相对可接受的性能。在本研究中,MXenes是引起S21共振频率更明显变化的浓度。同样,基于扫描电镜和透射电镜的表征也证实了UHF频率的表征。
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