Intuitive and helpful models for
statistical analysis and shortterm forecasting
of measurement data.
- Introduction
- Tech stack
- Folder Structure
- Dataset
- Forecasting Models
- CONTACT Elements for IoT Integration
- Installation
- Usage
- References
- License
Onshore wind already provides a substantial part of the energy mix β‘ today. In order to further reduce the costs π², the installation process in particular should be improved. The installation of the blades is the greatest challenge. Relative movements between the nacelle and the blade root make the installation difficult. If the relative movement exceeds a certain threshold value, installation is no longer possible and there is an expensive delay. Based on measurement data π that were recorded during the installation of wind turbines, machine learning π€ models and neuronal networks are intended to predict the oscillation kinematics for a defined period of time.
This repository contains three different forecasting models, which are available as jupyter notebooks, a CONTACT Elements for IoT integration and an associated thesis.
Front-End
Back-End
Database
Machine Learning & Neuronal Networks
This repository uses the MIT license. Please see the LICENSE.md file for more details.