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Search Results (2,434)

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Keywords = paper-based diagnostics

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12 pages, 2752 KB  
Article
Label-Free Microdroplet Concentration Detector Based on a Quadruple Resonant Ring Metamaterial
by Wenjin Guo, Yinuo Cheng and Jian Li
Sensors 2026, 26(3), 1013; https://doi.org/10.3390/s26031013 - 4 Feb 2026
Abstract
This paper proposes and experimentally validates a label-free microdroplet concentration detector based on a quad-resonator metamaterial. The device exploits the linear relationship between the dielectric constant of a binary mixed solution and its concentration, mapping concentration information to absorption frequency shifts with a [...] Read more.
This paper proposes and experimentally validates a label-free microdroplet concentration detector based on a quad-resonator metamaterial. The device exploits the linear relationship between the dielectric constant of a binary mixed solution and its concentration, mapping concentration information to absorption frequency shifts with a sensitivity of 28.53 GHz/RIU. System modeling was performed through full-wave simulation. Experimental results demonstrate a highly linear relationship between resonance frequency shift and concentration across ethanol, water, and ethanol–water solutions. The relative deviation between simulation and measurement is less than 3%, validating the model’s reliability and the robustness of the detection principle. This detector supports rapid non-contact sample replacement without requiring chemical labeling or specialized packaging. It can be mass-produced on standard PDMS substrates, with each unit reusable for >50 cycles. With a single measurement time of <30 s, it meets high-throughput detection demands. Featuring low power consumption, high precision, and scalability, this device holds broad application prospects in point-of-care diagnostics, online process monitoring, and resource-constrained scenarios. Future work will focus on achieving simultaneous multi-component detection via multi-resonator arrays and integrating chip-level wireless readout modules to further enhance portability and system integration. Full article
(This article belongs to the Section Physical Sensors)
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44 pages, 4761 KB  
Article
A Crayfish Optimization Algorithm with a Random Perturbation Strategy and Removal Similarity Operation for Color Image Enhancement
by Jiquan Wang, Min Wang, Haohao Song and Jinling Bei
Agriculture 2026, 16(3), 364; https://doi.org/10.3390/agriculture16030364 - 3 Feb 2026
Abstract
Image enhancement can effectively improve the contrast, clarity, and information content of images, thereby improving visual quality. Image enhancement has significant application value in the process of identifying and diagnosing agricultural pests and diseases. This paper proposes a color image enhancement method based [...] Read more.
Image enhancement can effectively improve the contrast, clarity, and information content of images, thereby improving visual quality. Image enhancement has significant application value in the process of identifying and diagnosing agricultural pests and diseases. This paper proposes a color image enhancement method based on color space transformation, converting the image from the RGB space to the HSV space, conducting targeted enhancement on the V channel, and combining adaptive brightness adjustment and Gamma correction to further improve the visual effect. To achieve better enhancement results, this paper designs a crayfish optimization algorithm with a random perturbation strategy and removal similarity operation (COA-RPRS). This algorithm achieves a dynamic balance between exploration and exploitation through an adaptive temperature calculation formula and improves the position update mechanism in the summer escape, competition, and foraging stages, significantly enhancing convergence performance. Moreover, introducing a removal similarity operation and a random perturbation strategy based on Lévy flight effectively maintains population diversity and prevents premature convergence. Experimental verification was conducted on the CEC 2017 test functions, 20 color images, and 10 images of rice pests and diseases, showing that COA-RPRS achieves superior performance compared to eight other comparison algorithms in both global optimization and color image enhancement tasks. These results suggest its potential applicability in supporting intelligent recognition and diagnostic systems for agricultural pest and disease management. Full article
(This article belongs to the Section Artificial Intelligence and Digital Agriculture)
33 pages, 4437 KB  
Review
Electrochemical Strategies to Evaluate the Glycosylation Status of Biomolecules for Disease Diagnosis
by Roberto María-Hormigos, Olga Monago-Maraña and Agustin G. Crevillen
Chemosensors 2026, 14(2), 38; https://doi.org/10.3390/chemosensors14020038 - 3 Feb 2026
Abstract
Aberrant glycosylation is linked to several diseases, making glycoproteins and their glycoforms promising biomarkers. Traditional methods like mass spectrometry offer high sensitivity but are costly, time-consuming, and unsuitable for point-of-care testing. Electrochemical biosensors emerge as an attractive alternative due to their simplicity, affordability, [...] Read more.
Aberrant glycosylation is linked to several diseases, making glycoproteins and their glycoforms promising biomarkers. Traditional methods like mass spectrometry offer high sensitivity but are costly, time-consuming, and unsuitable for point-of-care testing. Electrochemical biosensors emerge as an attractive alternative due to their simplicity, affordability, portability, and rapid response. This review focuses on electrochemical strategies developed to assess the glycosylation level of a specific glycoprotein or biological structure rather than merely glycoprotein or cell concentration, as in previous reviews. Approaches include the use of aptamers, boronic acid derivatives, antibodies, and lectins, often combined with nanomaterials for enhanced sensitivity. Applications span the diagnosis/prognosis of several illnesses such as diabetes, congenital disorders of glycosylation, cancer, and neurodegenerative diseases. Innovative designs incorporate microfluidic and paper-based platforms for faster, low-cost analysis, while strategies using dual-signal acquisition or competitive assays improve accuracy. Despite promising sensitivity and selectivity, most sensors require multi-step protocols and lack of validation in clinical samples. Future research should focus on simplifying procedures, integrating microfluidics, and exploring novel capture or detection probes such as metal complexes or metal–organic frameworks. Overall, electrochemical sensors hold significant potential for point-of-care testing, enabling rapid and precise evaluation of glycosylation status, which could drive cell-based biomarker discovery and disease diagnostics. Full article
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29 pages, 2671 KB  
Article
Sustainable and Reliable Smart Grids: An Abnormal Condition Diagnosis Method for Low-Voltage Distribution Nodes via Multi-Source Domain Deep Transfer Learning and Cloud-Edge Collaboration
by Dongli Jia, Tianyuan Kang, Xueshun Ye, Jun Zhou and Zhenyu Zhang
Sustainability 2026, 18(3), 1550; https://doi.org/10.3390/su18031550 - 3 Feb 2026
Abstract
The transition toward sustainable and resilient new-type power systems requires robust diagnostic frameworks for terminal power supply units to ensure continuous grid stability. To ensure the resilience of modern power systems, this paper proposes a multi-source domain deep Transfer Learning method for the [...] Read more.
The transition toward sustainable and resilient new-type power systems requires robust diagnostic frameworks for terminal power supply units to ensure continuous grid stability. To ensure the resilience of modern power systems, this paper proposes a multi-source domain deep Transfer Learning method for the abnormal condition diagnosis of low-voltage distribution nodes within a cloud-edge collaborative framework. This approach integrates feature selection based on the Categorical Boosting (CatBoost) algorithm with a hybrid architecture combining a Convolutional Neural Network (CNN) and a Residual Network (ResNet). Additionally, it utilizes a multi-loss adaptation strategy consisting of Multi-Kernel Maximum Mean Difference (MK-MMD), Local Maximum Mean Difference (LMMD), and Mean Squared Error (MSE) to effectively bridge domain gaps and ensure diagnostic consistency. By balancing global commonality with local adaptation, the framework optimizes resource efficiency, reducing collaborative training time by 19.3%. Experimental results confirm that the method effectively prevents equipment failure, achieving diagnostic accuracies of 98.29% for low-voltage anomalies and 88.96% for three-phase imbalance conditions. Full article
(This article belongs to the Special Issue Microgrids, Electrical Power and Sustainable Energy Systems)
19 pages, 4427 KB  
Review
Chest Discomfort: Could Coronary Pathology Extend Beyond Atherosclerosis?
by Ana Mladenovic Markovic, Ana Tomic, Miodrag Nisevic, Olga Nedeljkovic Arsenovic, Jelica Vukmirovic, Jelena Kostic, Aleksandar Filipovic, Ljiljana Bogdanovic and Vojislav Giga
J. Clin. Med. 2026, 15(3), 1185; https://doi.org/10.3390/jcm15031185 - 3 Feb 2026
Abstract
Background/Objectives: Non-atherosclerotic pathological findings on coronary arteries involve various disorders that might lead to myocardial ischemia, independent of plaque complications and consequent lumen narrowing and obstruction. These patients often present with non-specific symptoms such as shortness of breath, rapid fatigue, and exertional [...] Read more.
Background/Objectives: Non-atherosclerotic pathological findings on coronary arteries involve various disorders that might lead to myocardial ischemia, independent of plaque complications and consequent lumen narrowing and obstruction. These patients often present with non-specific symptoms such as shortness of breath, rapid fatigue, and exertional chest tightness. When the underlying causes are non-atherosclerotic, these findings are frequently overlooked in radiology reports as a possible differential diagnosis. Therefore, the objective of this paper is to present the role of multidetector computed tomography (MD CT) coronary angiography in the diagnostic work-up of patients with rare but clinically valuable non-atherosclerotic pathological conditions of coronary arteries. Methods: We performed a literature search on Medline (via PubMed) for works presenting data on rare, non-occlusive, pathological findings on coronary arteries. Results: The review of the collected literature was performed in a narrative manner, intended to summarize mainly findings of imaging characteristics of non-occlusive pathologies: myocardial bridge, coronary aneurysm, ectasia, fistula, stenosis, and dissection. MD CT images of selected cases that were examined at our department, showing non-occlusive pathological changes in the coronary arteries, are displayed in planar and/or volume-rendered formats. Conclusions: Non-atherosclerotic abnormalities of the coronary vessel wall should be considered in the differential diagnosis of coronary causes of chest pain, dyspnea, and arrhythmias, as they may lead to both acute and chronic myocardial ischemia. Based on the presented literature and specific cases from our clinical practice, MD CT is shown to be an important tool for the rapid, non-invasive evaluation of non-atherosclerotic pathologies. Full article
(This article belongs to the Special Issue Clinical Updates in Cardiovascular Computed Tomography (CT))
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26 pages, 4105 KB  
Article
Robust Dual-Stream Diagnosis Network for Ultrasound Breast Tumor Classification with Cross-Domain Segmentation Priors
by Xiaokai Jiang, Xuewen Ding, Jinying Ma, Chunyu Liu and Xinyi Li
Sensors 2026, 26(3), 974; https://doi.org/10.3390/s26030974 - 2 Feb 2026
Abstract
Ultrasound imaging is widely used for early breast cancer screening to enhance patient survival. However, interpreting these images is inherently challenging due to speckle noise, low lesion-to-tissue contrast, and highly variable tumor morphology within complex anatomical structures. Additionally, variations in image characteristics across [...] Read more.
Ultrasound imaging is widely used for early breast cancer screening to enhance patient survival. However, interpreting these images is inherently challenging due to speckle noise, low lesion-to-tissue contrast, and highly variable tumor morphology within complex anatomical structures. Additionally, variations in image characteristics across institutions and devices further impede the development of robust and generalizable computer-aided diagnostic systems. To alleviate these issues, this paper presents a cross-domain segmentation prior guided classification strategy for robust breast tumor diagnosis in ultrasound imaging, implemented through a novel Dual-Stream Diagnosis Network (DSDNet). DSDNet adopts a decoupled dual-stream architecture, where a frozen segmentation branch supplies spatial priors to guide the classification backbone. This design enables stable and accurate performance across diverse imaging conditions and clinical settings. To realize the proposed DSDNet framework, three novel modules are created. The Dual-Stream Mask Attention (DSMA) module enhances lesion priors by jointly modeling foreground and background cues. The Segmentation Prior Guidance Fusion (SPGF) module integrates multi-scale priors into the classification backbone using cross-domain spatial cues, improving tumor morphology representation. The Mamba-Inspired Linear Transformer (MILT) block, built upon the Mamba-Inspired Linear Attention (MILA) mechanism, serves as an efficient attention-based feature extractor. On the BUSI, BUS, and GDPH_SYSUCC datasets, DSDNet achieves ACC values of 0.878, 0.836, and 0.882, and Recall scores of 0.866, 0.789, and 0.878, respectively. These results highlight the effectiveness and strong classification performance of our method in ultrasound breast cancer diagnosis. Full article
(This article belongs to the Section Biomedical Sensors)
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23 pages, 660 KB  
Article
Subscription Economy as a Tool for Promoting Sustainable Consumption in Poland
by Ewa Markiewicz and Justyna Ziobrowska-Sztuczka
Sustainability 2026, 18(3), 1484; https://doi.org/10.3390/su18031484 - 2 Feb 2026
Viewed by 45
Abstract
Entities using business models that integrate sustainability principles into business practice are gaining popularity through innovative measures. One such model is the subscription economy, in which customers pay regularly for access to products or services rather than purchasing them once. The study aims [...] Read more.
Entities using business models that integrate sustainability principles into business practice are gaining popularity through innovative measures. One such model is the subscription economy, in which customers pay regularly for access to products or services rather than purchasing them once. The study aims to present the subscription economy as a model that can help promote sustainable consumption. The paper uses a diagnostic survey method and a literature analysis and critique. Based on the literature on sustainable business models, the authors have shown that subscription economics, meeting the conditions of a sustainable model, can play an important role in promoting sustainable consumption (in terms of economic, social, and environmental rationality). The authors’ own research showed that Poles are very interested in the subscription model and its greatest importance in terms of economic rationality, which is the most important element of sustainable consumption. This also applies to the younger generation, which, despite being characterized by a high awareness of growing social and environmental problems, identifies sustainability as a secondary motivation to personal benefits such as financial security. Full article
(This article belongs to the Section Economic and Business Aspects of Sustainability)
23 pages, 5043 KB  
Article
A Hybrid of ResNext101_32x8d and Swin Transformer Networks with XAI for Alzheimer’s Disease Detection
by Saeed Mohsen, Amr Yousef and M. Abdel-Aziz
Computers 2026, 15(2), 95; https://doi.org/10.3390/computers15020095 - 2 Feb 2026
Viewed by 58
Abstract
Medical images obtained from advanced imaging devices play a crucial role in supporting disease diagnosis and detection. Nevertheless, acquiring such images is often costly and storage-intensive, and it is time-consuming to diagnose individuals. The use of artificial intelligence (AI)-based automated diagnostic systems provides [...] Read more.
Medical images obtained from advanced imaging devices play a crucial role in supporting disease diagnosis and detection. Nevertheless, acquiring such images is often costly and storage-intensive, and it is time-consuming to diagnose individuals. The use of artificial intelligence (AI)-based automated diagnostic systems provides potential solutions to address the limitations of cost and diagnostic time. In particular, deep learning and explainable AI (XAI) techniques provide a reliable and robust approach to classifying medical images. This paper presents a hybrid model comprising two networks, ResNext101_32x8d and Swin Transformer to differentiate four categories of Alzheimer’s disease: no dementia, very mild dementia, mild dementia, and moderate dementia. The combination of the two networks is applied to imbalanced data, trained on 5120 MRI images, validated on 768 images, and tested on 512 other images. Grad-CAM and LIME techniques with a saliency map are employed to interpret the predictions of the model, providing transparent and clinically interpretable decision support. The proposed combination is realized through a TensorFlow framework, incorporating hyperparameter optimization and various data augmentation methods. The performance evaluation of the proposed model is conducted through several metrics, including the error matrix, precision recall (PR), receiver operating characteristic (ROC), accuracy, and loss curves. Experimental results reveal that the hybrid of ResNext101_32x8d and Swin Transformer achieved a testing accuracy of 98.83% with a corresponding loss rate of 0.1019. Furthermore, for the combination “ResNext101_32x8d + Swin Transformer”, the precision, F1-score, and recall were 99.39%, 99.15%, and 98.91%, respectively, while the area under the ROC curve (AUC) was 1.00, “100%”. The combination of proposed networks with XAI techniques establishes a unique contribution to advance medical AI systems and assist radiologists during Alzheimer’s disease screening of patients. Full article
(This article belongs to the Section AI-Driven Innovations)
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12 pages, 620 KB  
Systematic Review
The Role of Agentic AI in Musculoskeletal Radiology: A Scoping Review
by Jonathan Gibson, Praveen Chinniah, Shashank Chapala, Ojasvi Vemuri and Rajesh Botchu
Computers 2026, 15(2), 89; https://doi.org/10.3390/computers15020089 - 1 Feb 2026
Viewed by 206
Abstract
Objectives: Artificial intelligence (AI) is a transformative development in the field of medicine. In the field of musculoskeletal radiology, agentic AI is a technology that could flourish, but currently, the limited evidence base is fragmented and sparse, and we present a scoping review [...] Read more.
Objectives: Artificial intelligence (AI) is a transformative development in the field of medicine. In the field of musculoskeletal radiology, agentic AI is a technology that could flourish, but currently, the limited evidence base is fragmented and sparse, and we present a scoping review of it. Methods: Parallel searches were conducted in four databases: PubMed, Embase, Scopus, and Web of Science. Search terms included all agentic AI and autonomous AI agents, as well as radiology. All papers underwent screening by two independent reviewers, with conflicts resolved through consensus. Initially, inclusion criteria involved all papers on general radiology, which were later stratified for musculoskeletal radiology and applicable papers to ensure inclusion of all suitable studies. A thematic analysis was undertaken by two independent reviewers. Results: Eleven studies met the inclusion criteria, comprising two MSK (musculoskeletal)-specific and nine general radiology papers applicable to MSK workflows. Four key themes emerged. Agentic decision support was demonstrated across five studies, showing improved diagnostic coordination, pathway navigation, and reduced clinician workload. Workflow optimisation was highlighted in four studies, with agentic systems enhancing administrative efficiency, modality selection, and overall radiology throughput. Image analysis and reconstruction were improved in three studies, with multi-agent systems enabling enhanced image quality and automated interpretation. Finally, four studies addressed conceptual, ethical, and governance considerations, emphasising the need for transparency, safety frameworks, and clinician oversight. Conclusion: Agentic AI shows considerable promise for enhancing MSK radiology through improved decision support, image analysis, and workflow efficiency; however, the current evidence remains limited and largely theoretical. Full article
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45 pages, 1364 KB  
Review
Deep Learning for Short-Circuit Fault Diagnostics in Power Distribution Grids: A Comprehensive Review
by Fathima Razeeya Mohamed Razick and Petr Musilek
Computers 2026, 15(2), 76; https://doi.org/10.3390/computers15020076 - 1 Feb 2026
Viewed by 97
Abstract
In modern power distribution networks, robust and intelligent fault management techniques are increasingly important as system complexity grows with the integration of distributed energy resources. This article reviews the use of deep learning methods for short-circuit fault detection, classification, and localization in power [...] Read more.
In modern power distribution networks, robust and intelligent fault management techniques are increasingly important as system complexity grows with the integration of distributed energy resources. This article reviews the use of deep learning methods for short-circuit fault detection, classification, and localization in power distribution systems, including symmetrical, asymmetrical, and high-impedance faults. The approaches examined include convolutional neural networks, recurrent neural networks, deep reinforcement learning, graph neural networks, and hybrid architectures. A comprehensive taxonomy of these models is presented, followed by an analysis of their application across the stages of fault diagnostics. Major contributions to the field are highlighted, and research gaps are identified in relation to data scarcity, model interpretability, real-time responsiveness, and deployment scalability. The paper provides an in-depth technical and performance comparison of deep learning approaches based on current research trends, and it also outlines the limitations of previous review studies. The objective of this work is to support researchers in selecting and implementing appropriate deep learning techniques for fault analytics in complex smart electricity grids with significant penetration of distributed energy resources. The review is intended to serve as an initial foundation for continued research and development in intelligent fault analytics for reliable and sustainable power distribution systems. Full article
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22 pages, 50957 KB  
Article
Mechanism Analysis and Integrated Optimization for Reducing Low-Speed Starting Noise in Electric Vehicles
by Wei Huang, Youjun Yin, Xinkun Xu, Qiucheng Xia and Keying Luo
World Electr. Veh. J. 2026, 17(2), 63; https://doi.org/10.3390/wevj17020063 - 30 Jan 2026
Viewed by 189
Abstract
To address the low-speed starting noise in a small electric vehicle, this study proposes and validates a systematic diagnostic and optimization methodology. A novel objective testing method, based on energy tracking and matching, is first employed for precise noise source localization. Combined with [...] Read more.
To address the low-speed starting noise in a small electric vehicle, this study proposes and validates a systematic diagnostic and optimization methodology. A novel objective testing method, based on energy tracking and matching, is first employed for precise noise source localization. Combined with electromagnetic force wave analysis, this method identifies the coupling between a 24th-order motor excitation and a powertrain structural mode as the root cause. Subsequently, a low-cost, integrated optimization scheme is presented, which synergistically combines three strategies: motor control refinement, powertrain natural frequency tuning, and mount isolation enhancement. Experimental validation demonstrates that this multi-domain approach reduces the sound pressure level at the driver’s ear by 4–6 dB(A), effectively eliminating the abnormal audible noise during starting and significantly improving the in-cabin sound quality. This paper offers a cost-effective engineering framework for resolving low-speed, low-frequency noise problems in electric vehicles. Full article
(This article belongs to the Section Manufacturing)
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24 pages, 8934 KB  
Article
Vision Transformer-Based Identification for Early Alzheimer’s Disease and Mild Cognitive Impairment
by Yang Li, Biao Xu, Qiang Bai, Zhenghong Liu, Junfeng Zhu and Qipeng Chen
Information 2026, 17(2), 129; https://doi.org/10.3390/info17020129 - 30 Jan 2026
Viewed by 107
Abstract
Distinguishing Alzheimer’s Disease (AD) from Mild Cognitive Impairment (MCI) is challenging due to their subtle morphological similarities in MRI, yet distinct therapeutic strategies are required. To assist junior clinicians with limited diagnostic experience, this paper proposes Vi-ADiM, a Vision Transformer framework designed for [...] Read more.
Distinguishing Alzheimer’s Disease (AD) from Mild Cognitive Impairment (MCI) is challenging due to their subtle morphological similarities in MRI, yet distinct therapeutic strategies are required. To assist junior clinicians with limited diagnostic experience, this paper proposes Vi-ADiM, a Vision Transformer framework designed for the early differentiation of AD and MCI. Leveraging cross-domain feature adaptation and task-specific data augmentation, the model ensures rapid convergence and robust generalization even in data-limited regimes. By optimizing a two-stage encoding module, Vi-ADiM efficiently extracts both global and local MRI features. Furthermore, by integrating SHAP and Grad-CAM++, the framework offers multi-granular interpretability of pathological regions, providing intuitive visual evidence for clinical decision-making. Experimental results demonstrate that Vi-ADiM outperforms the standard ViT-Base/16, improving accuracy, precision, recall, and F1 score by 0.444%, 0.486%, 0.476%, and 0.482%, respectively, while reducing standard deviations by approximately 0.06–0.29%. Notably, the model achieves these gains with a 48.96% reduction in parameters and a 49.65% decrease in computational cost (FLOPs), offering a reliable, efficient, and interpretable solution for computer-aided diagnosis. Full article
(This article belongs to the Special Issue Advances in Human–Robot Interactions and Assistive Applications)
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40 pages, 47306 KB  
Review
Advances in EMG Signal Processing and Pattern Recognition: Techniques, Challenges, and Emerging Applications
by Lasitha Piyathilaka, Jung-Hoon Sul, Sanura Dunu Arachchige, Amal Jayawardena and Diluka Moratuwage
Electronics 2026, 15(3), 590; https://doi.org/10.3390/electronics15030590 - 29 Jan 2026
Viewed by 340
Abstract
Electromyography (EMG) has become essential in biomedical engineering, rehabilitation, and human–machine interfacing due to its ability to capture neuromuscular activation for control, monitoring, and diagnosis. Recent advances in sensing hardware, high-density and flexible electrodes, and embedded acquisition modules combined with modern signal processing [...] Read more.
Electromyography (EMG) has become essential in biomedical engineering, rehabilitation, and human–machine interfacing due to its ability to capture neuromuscular activation for control, monitoring, and diagnosis. Recent advances in sensing hardware, high-density and flexible electrodes, and embedded acquisition modules combined with modern signal processing and machine learning have significantly enhanced the robustness and applicability of EMG-based systems. This review provides an integrated overview of EMG generation, acquisition standards, and preprocessing techniques, including adaptive filtering, wavelet denoising, and empirical mode decomposition. Feature extraction methods across the time, frequency, time–frequency, and nonlinear domains are compared with respect to computational efficiency and suitability for real-time systems. The review synthesizes classical and contemporary pattern-recognition approaches, from statistical classifiers to deep architectures such as CNNs, RNNs, hybrid CNN–RNN models, transformer-based networks, and graph neural networks. Key challenges, including signal non-stationarity, electrode displacement, muscle fatigue, and poor cross-user or cross-session generalization, are examined alongside emerging strategies such as transfer learning, domain adaptation, and multimodal fusion with IMU or FMG signals. Finally, the paper surveys rapidly growing EMG applications in prosthetics, rehabilitation robotics, human–machine interfaces, clinical diagnostics, and sports analytics. The review highlights ongoing limitations and outlines future pathways toward robust, adaptive, and deployable EMG-driven intelligent systems. Full article
(This article belongs to the Special Issue Image and Signal Processing Techniques and Applications)
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21 pages, 3170 KB  
Article
Reliable Communication in Distributed Photovoltaic Sensor Networks: A Large Language Model-Driven Approach
by Wu Dong, Xu Liu, Qing Liu, Guanghui Zhang, Ji Shi, Xun Zhao, Zhongming Lei and Wei Wang
Sensors 2026, 26(3), 838; https://doi.org/10.3390/s26030838 - 27 Jan 2026
Viewed by 248
Abstract
Distributed photovoltaic (DPV) systems present a cost-effective and sustainable industrial energy solution, yet their reliable monitoring faces significant technological constraints. This paper proposes a hierarchical optimization framework that integrates hysteresis-based traffic shaping at the network layer with Large Language Model (LLM)-driven diagnostics at [...] Read more.
Distributed photovoltaic (DPV) systems present a cost-effective and sustainable industrial energy solution, yet their reliable monitoring faces significant technological constraints. This paper proposes a hierarchical optimization framework that integrates hysteresis-based traffic shaping at the network layer with Large Language Model (LLM)-driven diagnostics at the application layer. The proposed dynamic algorithm minimizes latency and downtime by prioritizing critical fault data. Priority-based scheduling ensures this critical data is transmitted preferentially over routine sensor readings. At the application layer, the system utilizes physics-informed prompt engineering to perform zero-shot root cause analysis, circumventing the training data requirements of traditional classifiers. Under a 10 Mbps gateway bandwidth, our method achieves a 46.08% to 49.87% reduction in P50 latency compared to traditional approaches. Moreover, the LLM-powered diagnostic system provides detailed assessments, enabling precise fault diagnosis for DPV systems. Full article
(This article belongs to the Special Issue Sensors for Enabling Wireless Spectrum Access)
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26 pages, 8387 KB  
Article
Machine Learning as a Lens on NWP ICON Configurations Validation over Southern Italy in Winter 2022–2023—Part I: Empirical Orthogonal Functions
by Davide Cinquegrana and Edoardo Bucchignani
Atmosphere 2026, 17(2), 132; https://doi.org/10.3390/atmos17020132 - 26 Jan 2026
Viewed by 127
Abstract
Validation of ICON model configurations optimized over a limited domain is essential before accepting new semi-empirical parameters that influence the behavior of subgrid-scale schemes. Because such parameters can modify the dynamics of a numerical weather prediction (NWP) model in highly nonlinear ways, we [...] Read more.
Validation of ICON model configurations optimized over a limited domain is essential before accepting new semi-empirical parameters that influence the behavior of subgrid-scale schemes. Because such parameters can modify the dynamics of a numerical weather prediction (NWP) model in highly nonlinear ways, we analyze one season of forecasts (December 2022, January and February 2023) generated with the NWP ICON-LAM through the lens of machine learning–based diagnostics as a complement to traditional evaluation metrics. The goal is to extract physically interpretable information on the model behavior induced by the optimized parameters. This work represents the first part of a wider study exploring machine learning tools for model validation, focusing on two specific approaches: Empirical Orthogonal Functions (EOFs), which are widely used in meteorology and climate science, and autoencoders, which are increasingly adopted for their nonlinear feature extraction capability. In this first part, EOF analysis is used as the primary tool to decompose weather fields from observed reanalysis and forecast datasets. Hourly 2-m temperature forecasts for winter 2022–2023 from multiple regional ICON configurations are compared against downscaled ERA5 data and in situ observations from ground station. EOF analyses revealed that the optimized configurations demonstrate a high skill in predicting surface temperature. From the signal error decomposition, the fourth EOF mode is effective particularly during night-time hours, and contributes to enhancing the performance of ICON. Analyses based on autoencoders will be presented in a companion paper (Part II). Full article
(This article belongs to the Special Issue Highly Resolved Numerical Models in Regional Weather Forecasting)
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