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๐Ÿ” anna korba ๐Ÿ“‚ Engineering
Showing 176 results for "anna korba" in Engineering
Engineering Preprint PDF DOI

Distributed Snitch Digital Twin-Based Anomaly Detection for Smart Voltage Source Converter-Enabled Wind Power Systems

Mohammad Ashraf Hossain Sadi, Soham Ghosh, Siby Plathottam, Mohd. Hasan Ali ยท 2026

Existing cyberattack detection methods for smart grids such as Artificial Neural Networks (ANNs) and Deep Reinforcement Learning (DRL) often suffer from limited adaptability, delayed response, and inaโ€ฆ

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Engineering Preprint PDF DOI

On ANN-enhanced positive invariance for nonlinear flat systems

Huu-Thinh Do, Ionela Prodan ยท 2026

The concept of positively invariant (PI) sets has proven effective in the formal verification of stability and safety properties for autonomous systems. However, the characterization of such sets is cโ€ฆ

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Engineering Preprint PDF DOI

Linearized Bregman Iterations for Sparse Spiking Neural Networks

Daniel Windhager, Bernhard A. Moser, Michael Lunglmayr ยท 2026

Spiking Neural Networks (SNNs) offer an energy efficient alternative to conventional Artificial Neural Networks (ANNs) but typically still require a large number of parameters. This work introduces Liโ€ฆ

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Engineering Preprint PDF DOI

A Learnable SIM Paradigm: Fundamentals, Training Techniques, and Applications

Hetong Wang, Yashuai Cao, Tiejun Lv ยท 2026

Stacked intelligent metasurfaces (SIMs) represent a breakthrough in wireless hardware by comprising multilayer, programmable metasurfaces capable of analog computing in the electromagnetic (EM) wave dโ€ฆ

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Engineering Preprint PDF DOI

Spiking Neural Networks for Communication Systems: Encoding Schemes, Learning Algorithms, and Equalization~Techniques

Eike-Manuel Edelmann ยท 2026

Machine learning with artificial neural networks (ANNs), provides solutions for the growing complexity of modern communication systems. This complexity, however, increases power consumption, making thโ€ฆ

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Engineering Preprint PDF DOI

Event-based Heterogeneous Information Processing for Online Vision-based Obstacle Detection and Localization

Reza Ahmadvand, Sarah Safura Sharif, Yaser Mike Banad ยท 2026

This paper introduces a novel framework for robotic vision-based navigation that integrates Hybrid Neural Networks (HNNs) with Spiking Neural Network (SNN)-based filtering to enhance situational awareโ€ฆ

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Engineering Preprint PDF DOI

How is remifentanil dosed without dedicated indicator?

Bob Aubouin-Pairault (LAMIH), Mazen Alamir (GIPSA-MODUS, CNRS), Benjamin Meyer (CHUGA), Remi Wolf (UGA UFRM), Kaouther Moussa (LAMIH) ยท 2025

This study investigates the paradigm of intraoperative analgesic dosage using a data-driven approach based on retrospective clinical data. Remifentanil, an analgesic widely used during anesthesia, preโ€ฆ

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Engineering Preprint PDF DOI

SINRL: Socially Integrated Navigation with Reinforcement Learning using Spiking Neural Networks

Florian Tretter, Daniel Flogel, Alexandru Vasilache, Max Grobbel, Jurgen Becker, Soren Hohmann ยท 2025

Integrating autonomous mobile robots into human environments requires human-like decision-making and energy-efficient, event-based computation. Despite progress, neuromorphic methods are rarely applieโ€ฆ

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Engineering Preprint PDF DOI

Autonomous Reinforcement Learning Robot Control with Intel's Loihi 2 Neuromorphic Hardware

Kenneth Stewart, Roxana Leontie, Samantha Chapin, Joe Hays, Sumit Bam Shrestha, Carl Glen Henshaw ยท 2025

We present an end-to-end pipeline for deploying reinforcement learning (RL) trained Artificial Neural Networks (ANNs) on neuromorphic hardware by converting them into spiking Sigma-Delta Neural Networโ€ฆ

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Dexterity from Smart Lenses: Multi-Fingered Robot Manipulation with In-the-Wild Human Demonstrations

Irmak Guzey, Haozhi Qi, Julen Urain, Changhao Wang, Jessica Yin, Krishna Bodduluri, Mike Lambeta, Lerrel Pinto, Akshara Rai, Jitendra Malik, Tingfan Wu, Akash Sharma, Homanga Bharadhwaj ยท 2025

Learning multi-fingered robot policies from humans performing daily tasks in natural environments has long been a grand goal in the robotics community. Achieving this would mark significant progress tโ€ฆ

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Engineering Preprint PDF DOI

Population-Coded Spiking Neural Networks for High-Dimensional Robotic Control

Kanishkha Jaisankar, Xiaoyang Jiang, Feifan Liao, Jeethu Sreenivas Amuthan ยท 2025

Energy-efficient and high-performance motor control remains a critical challenge in robotics, particularly for high-dimensional continuous control tasks with limited onboard resources. While Deep Reinโ€ฆ

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Engineering Preprint PDF DOI

Low-cost Pyranometer-Based ANN Approach for MPPT in Solar PV Systems

Luiz Fernando M. Arruda, Moises Ferber, Diego Greff ยท 2025

This article presents a study on the application of artificial neural networks (ANNs) for maximum power point tracking (MPPT) in photovoltaic (PV) systems using low-cost pyranometer sensors. The propoโ€ฆ

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Engineering Preprint PDF DOI

Identifying the Multimodal Hierarchy of Public Transit Systems Using Itinerary Data

Junhee Lee, Seungmo Kang, Jinwoo Lee ยท 2025

As urban mobility integrates traditional and emerging modes, public transit systems are becoming increasingly complex. Some modes complement each other, while others compete, influencing users' multimโ€ฆ

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Superstructure Optimization with Embedded Neural Networks for Sustainable Aviation Fuel Production

Alexander Klimek, Christoph Plate, Sebastian Sager, Kai Sundmacher, Caroline Ganzer ยท 2025

This study presents a multi-objective optimization framework for sustainable aviation fuel (SAF) production, integrating artificial neural networks (ANNs) within a mixed-integer quadratically constraiโ€ฆ

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Engineering Preprint PDF DOI

Fully Spiking Actor-Critic Neural Network for Robotic Manipulation

Liwen Zhang, Heng Deng, Guanghui Sun ยท 2025

This study proposes a hybrid curriculum reinforcement learning (CRL) framework based on a fully spiking neural network (SNN) for 9-degree-of-freedom robotic arms performing target reaching and graspinโ€ฆ

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Engineering Preprint PDF DOI

ANN-Based Grid Impedance Estimation for Adaptive Gain Scheduling in VSG Under Dynamic Grid Conditions

Quang-Manh Hoang, Van Nam Nguyen, Taehyung Kim, Guilherme Vieira Hollweg, Wencong Su, Van-Hai Bui ยท 2025

In contrast to grid-following inverters, Virtual Synchronous Generators (VSGs) perform well under weak grid conditions but may become unstable when the grid is strong. Grid strength depends on grid imโ€ฆ

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Engineering Preprint PDF DOI

General-Purpose Robotic Navigation via LVLM-Orchestrated Perception, Reasoning, and Acting

Bernard Lange, Anil Yildiz, Mansur Arief, Shehryar Khattak, Mykel Kochenderfer, Georgios Georgakis ยท 2025

Developing general-purpose navigation policies for unknown environments remains a core challenge in robotics. Most existing systems rely on task-specific neural networks and fixed information flows, lโ€ฆ

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Engineering Preprint PDF DOI

Enhancing eLoran Timing Accuracy via Machine Learning with Meteorological and Terrain Data

Taewon Kang, Seunghyeon Park, Pyo-Woong Son, Jiwon Seo ยท 2025

The vulnerabilities of global navigation satellite systems (GNSS) to signal interference have increased the demand for complementary positioning, navigation, and timing (PNT) systems. To address this,โ€ฆ

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Engineering Preprint PDF DOI

Meta-analysis of Life Cycle Assessments for Li-Ion Batteries Production Emissions

Maurizio Clemente, Prapti Maharjan, Mauro Salazar, Theo Hofman ยท 2025

This paper investigates the environmental impact of Li-Ion batteries by quantifying manufacturing-related emissions and analyzing how electricity mix and production scale affect emission intensity. Toโ€ฆ

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Engineering Preprint PDF DOI

Realistic Counterfactual Explanations for Machine Learning-Controlled Mobile Robots using 2D LiDAR

Sindre Benjamin Remman, Anastasios M. Lekkas ยท 2025

This paper presents a novel method for generating realistic counterfactual explanations (CFEs) in machine learning (ML)-based control for mobile robots using 2D LiDAR. ML models, especially artificialโ€ฆ

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