Abstract:
Low Earth Orbit (LEO) Satellite Networks, such as SpaceX’s Starlink, are rapidly advancing technologies in the telecommunications sector. While promising global internet ...Show MoreMetadata
Abstract:
Low Earth Orbit (LEO) Satellite Networks, such as SpaceX’s Starlink, are rapidly advancing technologies in the telecommunications sector. While promising global internet access, the link parameters, such as throughputs and latency, are instable and susceptible to weather conditions. In this paper, we aim to make the Starlink performance more predictable. Precisely, we compare the capabilities of different Machine Learning (ML) models to predict Starlink’s download and upload throughput based on weather conditions such as rain and clouds. We focus our analysis on feature importances to determine which weather factor is a good predictor. We found that the Random Forest (RF) model has the best predictive power for both the download (R(exp 2) = 0.47) and upload (R(exp 2) = 0.13) throughput. Furthermore, we identified rainfall as the most important predictive factor, followed by cloudiness. Our results indicate that the Starlink download throughput is more susceptible to weather conditions than the upload throughput, validating results of earlier studies. Generally, weather conditions alone are not sufficient to precisely predict Starlink throughputs, highlighting the complexity of impact factors on satellite links.
Published in: Mobilkommunikation; 28. ITG-Fachtagung
Date of Conference: 15-16 May 2024
Date Added to IEEE Xplore: 29 August 2024
Print ISBN:978-3-8007-6382-5
Conference Location: Osnabrück
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Important Characteristics ,
- Machine Learning Models ,
- Random Forest Model ,
- Low Earth Orbit ,
- Important Predictive Factor ,
- Satellite Networks ,
- Earth Orbit Satellites ,
- Satellite Links ,
- Root Mean Square Error ,
- Model Performance ,
- Decision Tree ,
- K-nearest Neighbor ,
- Part Of The Variance ,
- Predictive Performance Of Models ,
- Target Variable ,
- Weather Data ,
- Gradient Boosting ,
- Random Forest Regression ,
- Mean Absolute Error Values ,
- Gradient Boosting Model ,
- Deutscher Wetterdienst ,
- One-minute Intervals ,
- Weak Learners ,
- Feature Importance Analysis
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Important Characteristics ,
- Machine Learning Models ,
- Random Forest Model ,
- Low Earth Orbit ,
- Important Predictive Factor ,
- Satellite Networks ,
- Earth Orbit Satellites ,
- Satellite Links ,
- Root Mean Square Error ,
- Model Performance ,
- Decision Tree ,
- K-nearest Neighbor ,
- Part Of The Variance ,
- Predictive Performance Of Models ,
- Target Variable ,
- Weather Data ,
- Gradient Boosting ,
- Random Forest Regression ,
- Mean Absolute Error Values ,
- Gradient Boosting Model ,
- Deutscher Wetterdienst ,
- One-minute Intervals ,
- Weak Learners ,
- Feature Importance Analysis