antenna
Radiometer Calibration using Machine Learning
Leeney, S. A. K., Bevins, H. T. J., Acedo, E. de Lera, Handley, W. J., Kirkham, C., Patel, R. S., Zhu, J., Molnar, D., Cumner, J., Anstey, D., Artuc, K., Bernardi, G., Bucher, M., Carey, S., Cavillot, J., Chiello, R., Croukamp, W., de Villiers, D. I. L., Ely, J. A., Fialkov, A., Gessey-Jones, T., Kulkarni, G., Magro, A., Meerburg, P. D., Mittal, S., Pattison, J. H. N., Pegwal, S., Pieterse, C. M., Pritchard, J. R., Puchwein, E., Razavi-Ghods, N., Roque, I. L. V., Saxena, A., Scheutwinkel, K. H., Scott, P., Shen, E., Sims, P. H., Spinelli, M.
Radiometers are crucial instruments in radio astronomy, forming the primary component of nearly all radio telescopes. They measure the intensity of electromagnetic radiation, converting this radiation into electrical signals. A radiometer's primary components are an antenna and a Low Noise Amplifier (LNA), which is the core of the ``receiver'' chain. Instrumental effects introduced by the receiver are typically corrected or removed during calibration. However, impedance mismatches between the antenna and receiver can introduce unwanted signal reflections and distortions. Traditional calibration methods, such as Dicke switching, alternate the receiver input between the antenna and a well-characterised reference source to mitigate errors by comparison. Recent advances in Machine Learning (ML) offer promising alternatives. Neural networks, which are trained using known signal sources, provide a powerful means to model and calibrate complex systems where traditional analytical approaches struggle. These methods are especially relevant for detecting the faint sky-averaged 21-cm signal from atomic hydrogen at high redshifts. This is one of the main challenges in observational Cosmology today. Here, for the first time, we introduce and test a machine learning-based calibration framework capable of achieving the precision required for radiometric experiments aiming to detect the 21-cm line.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Asia > China > Beijing > Beijing (0.04)
- North America > United States > Arizona (0.04)
- (10 more...)
The best outdoor TV antennas
How to lose cable, but keep your local channels. We may earn revenue from the products available on this page and participate in affiliate programs. All you need to pull it down into your home theater is a solid outdoor TV antenna. We've chosen the Antennas Direct 8-Element Bowtie TV Antenna as the best overall for its massive range, durability, and easy installation. But, there are tons of solid options on the market.
- Media > Television (1.00)
- Leisure & Entertainment (1.00)
- Retail (0.68)
- Information Technology > Communications > Networks (0.47)
- Information Technology > Artificial Intelligence (0.47)
The best TV antennas for rural areas to get live television
Streaming is great, but still has local programming gaps. We may earn revenue from the products available on this page and participate in affiliate programs. Streaming can be difficult in rural areas, but there's likely still lots of free over-the-air HD content you can access with a solid antenna. When dealing with long distances and tricky terrain, you'll want a robust antenna to pull in those sweet signals. We have chosen the Antennas Direct 8-Element Bowtie as our best overall option for its exceptional range, excellent build quality, and easy of installation.
- Leisure & Entertainment (1.00)
- Retail (0.69)
- Government (0.69)
- Media > Television (0.47)
The best TV antennas
You don't have to pay a cable company for broadcast TV. We may earn revenue from the products available on this page and participate in affiliate programs. Streaming services are fantastic for some things, but when it comes to local programming and live sporting events, they can be more of a pain than they're worth. A simple antenna can grant you access to tons of HD content for free, including your local broadcast affiliates and sports. We've chosen the Antop AT-800SBS-J HD Smart Panel Antenna as our best overall antenna for its combination of features, easy installation, and price.
- Media > Television (1.00)
- Leisure & Entertainment (1.00)
Multimodal Wireless Foundation Models
Aboulfotouh, Ahmed, Abou-Zeid, Hatem
Wireless foundation models (WFMs) have recently demonstrated promising capabilities, jointly performing multiple wireless functions and adapting effectively to new environments. However, while current WFMs process only one modality, depending on the task and operating conditions, the most informative modality changes and no single modality is best for all tasks. WFMs should therefore be designed to accept multiple modalities to enable a broader and more diverse range of tasks and scenarios. In this work, we propose and build the first multimodal wireless foundation model capable of processing both raw IQ streams and image-like wireless modalities (e.g., spectrograms and CSI) and performing multiple tasks across both. We introduce masked wireless modeling for the multimodal setting, a self-supervised objective and pretraining recipe that learns a joint representation from IQ streams and image-like wireless modalities. We evaluate the model on five tasks across both modality families: image-based (human activity sensing, RF signal classification, 5G NR positioning) and IQ-based (RF device fingerprinting, interference detection/classification). The multimodal WFM is competitive with single-modality WFMs, and in several cases surpasses their performance. Our results demonstrates the strong potential of developing multimodal WFMs that support diverse wireless tasks across different modalities. We believe this provides a concrete step toward both AI-native 6G and the vision of joint sensing, communication, and localization.
Hybrid Neural Network-Based Indoor Localisation System for Mobile Robots Using CSI Data in a Robotics Simulator
Ballesteros-Jerez, Javier, Martínez-Gómez, Jesus, García-Varea, Ismael, Orozco-Barbosa, Luis, Castillo-Cara, Manuel
We present a hybrid neural network model for inferring the position of mobile robots using Channel State Information (CSI) data from a Massive MIMO system. By leveraging an existing CSI dataset, our approach integrates a Convolutional Neural Network (CNN) with a Multilayer Perceptron (MLP) to form a Hybrid Neural Network (HyNN) that estimates 2D robot positions. CSI readings are converted into synthetic images using the TINTO tool. The localisation solution is integrated with a robotics simulator, and the Robot Operating System (ROS), which facilitates its evaluation through heterogeneous test cases, and the adoption of state estimators like Kalman filters. Our contributions illustrate the potential of our HyNN model in achieving precise indoor localisation and navigation for mobile robots in complex environments. The study follows, and proposes, a generalisable procedure applicable beyond the specific use case studied, making it adaptable to different scenarios and datasets.
- Europe > Spain > Castilla-La Mancha > Albacete Province > Albacete (0.05)
- North America > Canada > Quebec > Montreal (0.04)
- Europe > France > Auvergne-Rhône-Alpes > Puy-de-Dôme > Clermont-Ferrand (0.04)
- Europe > Belgium > Flanders > Antwerp Province > Antwerp (0.04)
Attention-Based Fusion of IQ and FFT Spectrograms with AoA Features for GNSS Jammer Localization
Heublein, Lucas, Wielenberg, Christian, Nowak, Thorsten, Feigl, Tobias, Mutschler, Christopher, Ott, Felix
Jamming devices disrupt signals from the global navigation satellite system (GNSS) and pose a significant threat by compromising the reliability of accurate positioning. Consequently, the detection and localization of these interference signals are essential to achieve situational awareness, mitigating their impact, and implementing effective counter-measures. Classical Angle of Arrival (AoA) methods exhibit reduced accuracy in multipath environments due to signal reflections and scattering, leading to localization errors. Additionally, AoA-based techniques demand substantial computational resources for array signal processing. In this paper, we propose a novel approach for detecting and classifying interference while estimating the distance, azimuth, and elevation of jamming sources. Our benchmark study evaluates 128 vision encoder and time-series models to identify the highest-performing methods for each task. We introduce an attention-based fusion framework that integrates in-phase and quadrature (IQ) samples with Fast Fourier Transform (FFT)-computed spectrograms while incorporating 22 AoA features to enhance localization accuracy. Furthermore, we present a novel dataset of moving jamming devices recorded in an indoor environment with dynamic multipath conditions and demonstrate superior performance compared to state-of-the-art methods.
- Europe > Germany (0.14)
- North America > United States > Colorado > Denver County > Denver (0.04)
- North America > United States > Maryland > Baltimore (0.04)
- North America > United States > Louisiana > Orleans Parish > New Orleans (0.04)
- Overview (1.00)
- Research Report > Promising Solution (0.54)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning (0.94)
- Information Technology > Data Science > Data Quality > Data Transformation (0.69)
- Information Technology > Artificial Intelligence > Natural Language (0.68)
PASS-Enhanced MEC: Joint Optimization of Task Offloading and Uplink PASS Beamforming
Hu, Zhaoming, Zhong, Ruikang, Mu, Xidong, Li, Dengao, Liu, Yuanwei
A pinching-antenna system (PASS)-enhanced mobile edge computing (MEC) architecture is investigated to improve the task offloading efficiency and latency performance in dynamic wireless environments. By leveraging dielectric waveguides and flexibly adjustable pinching antennas, PASS establishes short-distance line-of-sight (LoS) links while effectively mitigating the significant path loss and potential signal blockage, making it a promising solution for high-frequency MEC systems. We formulate a network latency minimization problem to joint optimize uplink PASS beamforming and task offloading. The resulting problem is modeled as a Markov decision process (MDP) and solved via the deep reinforcement learning (DRL) method. To address the instability introduced by the $\max$ operator in the objective function, we propose a load balancing-aware proximal policy optimization (LBPPO) algorithm. LBPPO incorporates both node-level and waveguide-level load balancing information into the policy design, maintaining computational and transmission delay equilibrium, respectively. Simulation results demonstrate that the proposed PASS-enhanced MEC with adaptive uplink PASS beamforming exhibit stronger convergence capability than fixed-PA baselines and conventional MIMO-assisted MEC, especially in scenarios with a large number of UEs or high transmit power.
- Asia > China > Shaanxi Province > Xi'an (0.04)
- Asia > China > Hong Kong (0.04)
- Europe > United Kingdom (0.04)
- Asia > China > Shanxi Province (0.04)
- Energy (0.70)
- Telecommunications (0.46)
Machine Learning-Based Localization Accuracy of RFID Sensor Networks via RSSI Decision Trees and CAD Modeling for Defense Applications
Shull, Curtis Lee, Green, Merrick
Radio Frequency Identification (RFID) tracking may be a viable solution for defense assets that must be stored in accordance with security guidelines. However, poor sensor specificity (vulnerabilities include long range detection, spoofing, and counterfeiting) can lead to erroneous detection and operational security events. We present a supervised learning simulation with realistic Received Signal Strength Indicator (RSSI) data and Decision Tree classification in a Computer Assisted Design (CAD)-modeled floor plan that encapsulates some of the challenges encountered in defense storage. In this work, we focused on classifying 12 lab zones (LabZoneA-L) to perform location inference. The raw dataset had approximately 980,000 reads. Class frequencies were imbalanced, and class weights were calculated to account for class imbalance in this multi-class setting. The model, trained on stratified subsamples to 5,000 balanced observations, yielded an overall accuracy of 34.2% and F1-scores greater than 0.40 for multiple zones (Zones F, G, H, etc.). However, rare classes (most notably LabZoneC) were often misclassified, even with the use of class weights. An adjacency-aware confusion matrix was calculated to allow better interpretation of physically adjacent zones. These results suggest that RSSI-based decision trees can be applied in realistic simulations to enable zone-level anomaly detection or misplacement monitoring for defense supply logistics. Reliable classification performance in low-coverage and low-signal zones could be improved with better antenna placement or additional sensors and sensor fusion with other modalities.
- North America > United States > Colorado (0.04)
- Europe > Germany (0.04)
- Government > Military (0.68)
- Information Technology > Security & Privacy (0.48)
- Information Technology > Communications > Networks > Sensor Networks (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Decision Tree Learning (0.94)
- Information Technology > Artificial Intelligence > Machine Learning > Performance Analysis > Accuracy (0.49)