The next generation Python API for STK
-
Updated
Oct 23, 2025 - Python
The next generation Python API for STK
An ontology of space situational awareness.
Data Driven Thermospheric Density Modeling with Machine Learning
The Orbital Debris Ontology (ODO) is an ontology of the orbital debris domain, containing classes for orbital entities and concepts, such as the types of orbital debris.
This repository includes all the necessary routines to run the CAM optimization with the method described in Pavanello et al. 2024.
Proyecto del Máster en Ingeniería de Telecomunicaciones (UAM) sobre clasificación de satélites y debris orbital usando datos TLE y Machine Learning (SVM, RF, XGBoost) en Python.
The OSEO (or OSO-Orbital Space Ontology) is conceived as an alternative to the SSAO. The latter was originally described as the overall domain, but by demarcating the domain more precisely the OSEO/OSO name may better capture the overall domain. Name change is TBD, pending further researcher and domain demarcation.
Add a description, image, and links to the space-situational-awareness topic page so that developers can more easily learn about it.
To associate your repository with the space-situational-awareness topic, visit your repo's landing page and select "manage topics."