causual-structure-discovery-spacecraft-telemetry
Detecting anomalies in satellites telemetry data using Probabilistic Graphical Models
https://github.com/baimamboukar/causual-structure-discovery-spacecraft-telemetry
Science Score: 54.0%
This score indicates how likely this project is to be science-related based on various indicators:
-
✓CITATION.cff file
Found CITATION.cff file -
✓codemeta.json file
Found codemeta.json file -
✓.zenodo.json file
Found .zenodo.json file -
○DOI references
-
✓Academic publication links
Links to: arxiv.org -
○Committers with academic emails
-
○Institutional organization owner
-
○JOSS paper metadata
-
○Scientific vocabulary similarity
Low similarity (7.0%) to scientific vocabulary
Keywords
Repository
Detecting anomalies in satellites telemetry data using Probabilistic Graphical Models
Basic Info
Statistics
- Stars: 1
- Watchers: 1
- Forks: 0
- Open Issues: 0
- Releases: 0
Topics
Metadata Files
README.md
This repository implements many Probabilistic Graphical Models and Deep Learning Models, including DBNs, HMMs, GMMs, GNNs, VAEs, and iForest, for telemetry anomaly detection in spacecraft systems on the ESA-Mission1 Dataset.
$\text{●•Authors}$
| $\text{Baimam Boukar Jean Jacques}$ | $\text{Kipngeno Koech}$ |
| Carnegie Mellon University Africa | Carnegie Mellon University Africa |
|
|
bkoech@andrew.cmu.edu |
|
|
|
●• $\text{Dataset Description}$
The analysis used telemetry data from the European Space Agency's ESA-Mission1. It has over 14 million records collected across several years. This continuous multivariate time series includes 87 mission-critical channels, annotated for anomalies and rare events through iterative manual and algorithmic refinement of flight control reports. The dataset targets two event categories
●• Anomalies $\to$ Unexpected behaviors or system failures
●• Nominal Events $\to$ unusual but expected operational patterns.
The data is divided into a training set spanning 14 years of operations and a test set covering a 6-month unpublished segment.
The dataset has 87 telemetry channels, 58 target channels monitored for anomalies, 18 auxiliary environmental variables, and 11 telecommand channels that are binary control commands, prefixed with telecommand_
●• $\text{Methodology}$
●• $\text{Reproduction Steps}$
●• $\text{Cite This Paper}$
bibtex
@software{bbaimamb_bkoech_2025,
author = {Baimam Boukar Jean Jacques and Kipngeno Koech},
month = apr,
title = {{Causal Structure Analysis for Telemetry Anomaly Detection in Spacecraft Systems}},
url = {https://github.com/baimamboukar/causual-structure-discovery-spacecraft-telemetry},
version = {1.0},
year = {2025}
}
Owner
- Name: BAIMAM BOUKAR JEAN JACQUES
- Login: baimamboukar
- Kind: user
- Location: Yaoundé
- Website: baimamboukar.medium.com
- Twitter: baimamjj
- Repositories: 13
- Profile: https://github.com/baimamboukar
Mobile Developer - Open source - APIs -Cloud | AWSx1
Citation (CITATION.cff)
cff-version: 1.2.0 message: "If you use this software, please cite it as below." authors: - family-names: "Baimam Boukar Jean Jacques" - family-names: "Kipngeno Koech" title: "Causal Structure Analysis for Telemetry Anomaly Detection in Spacecraft Systems" version: 1.0 date-released: 2025-04-22 url: "https://github.com/baimamboukar/https://github.com/baimamboukar/causual-structure-discovery-spacecraft-telemetry"
GitHub Events
Total
- Watch event: 8
- Push event: 17
Last Year
- Watch event: 8
- Push event: 17
Committers
Last synced: 11 months ago
Top Committers
| Name | Commits | |
|---|---|---|
| baimamboukar | b****r@g****m | 16 |
| kkipngenokoech | 8****h | 2 |
Issues and Pull Requests
Last synced: 11 months ago
All Time
- Total issues: 0
- Total pull requests: 0
- Average time to close issues: N/A
- Average time to close pull requests: N/A
- Total issue authors: 0
- Total pull request authors: 0
- Average comments per issue: 0
- Average comments per pull request: 0
- Merged pull requests: 0
- Bot issues: 0
- Bot pull requests: 0
Past Year
- Issues: 0
- Pull requests: 0
- Average time to close issues: N/A
- Average time to close pull requests: N/A
- Issue authors: 0
- Pull request authors: 0
- Average comments per issue: 0
- Average comments per pull request: 0
- Merged pull requests: 0
- Bot issues: 0
- Bot pull requests: 0