AliAmini93 / Fault-Detection-in-DC-microgrids
Using DIgSILENT, a smart-grid case study was designed for data collection, followed by feature extraction using FFT and DWT. Post-extraction, feature selection. CNN-based and extensive machine learning techniques were then applied for fault detection.
☆35Updated 2 months ago
Related projects ⓘ
Alternatives and complementary repositories for Fault-Detection-in-DC-microgrids
- Developed TactileNet, the first deep-learning model designed for surface roughness recognition using EEG data. This project leverages CNN…☆30Updated 2 years ago
- Developed a churn prediction model using XGBoost, with comprehensive data preprocessing and hyperparameter tuning. Applied SHAP for featu…☆17Updated 3 months ago
- The optimization of Wireless Sensor Networks (WSNs) using low-power nodes focused on energy efficiency, introducing a routing strategy fo…☆19Updated 2 years ago
- Developed a Windows tool using PyQt5, integrating K-means clustering for data analysis. The application recommends optimal cluster number…☆25Updated last year
- An algorithm for robot navigation was designed, accounting for random obstacles and determining optimal paths. It leverages a genetic alg…☆14Updated 2 years ago
- Autoencoders (AEs) were developed for high-resolution image reconstruction from TinyImageNet and pair recovery from averaged CIFAR-10 com…☆10Updated last year
- Projects with Genetic Algorithm (GA), Ant Colony Optimization (ACO), and Particle Swarm Optimization (PSO)☆29Updated 2 months ago
- Developed the ViViT model for medical video classification, enhancing 3D organ image analysis using transformer-based architectures.☆27Updated 6 months ago
- A 3D Attention U-Net model is developed, aimed at segmenting and tracking Multiple Sclerosis lesions in MRI images.☆39Updated 3 months ago
- Developed a custom application of the Segment Anything Model (SAM) for breast cancer tissue segmentation, utilizing Hugging Face's Transf…☆36Updated 2 months ago
- Developed a reinforcement learning framework using Deep Q-Networks (DQN) to optimize scheduling in Wireless Sensor Networks (WSN), enhanc…☆20Updated 3 months ago
- ADHDeepNet is a model that integrates temporal and spatial characterization, attention modules, and explainability techniques, optimized …☆34Updated 4 months ago
- Implementing a Graph Neural Network in PyTorch for edge prediction on MNIST images, showcasing a novel approach in connectivity analysis.☆13Updated 11 months ago
- Developed an AI-driven project for Printed Circuit Board (PCB) analysis, incorporating computer vision for image registration, IC detecti…☆57Updated 2 months ago
- ☆3Updated 7 months ago