Deep Learning for Rain Fade Prediction in Satellite Communications
Aidin Ferdowsi, David Whitefield

TL;DR
This paper introduces a deep learning architecture that predicts rain fade in satellite communications using satellite and radar imagery, outperforming existing models for near and long-term forecasts.
Contribution
The paper presents a novel deep learning model that integrates satellite and radar data for improved rain fade prediction over various time horizons.
Findings
Deep learning model outperforms existing algorithms in rain fade forecasting.
Radar data is more effective for short-term predictions.
Satellite data enhances long-term forecast accuracy.
Abstract
Line of sight satellite systems, unmanned aerial vehicles, high-altitude platforms, and microwave links that operate on frequency bands such as Ka-band or higher are extremely susceptible to rain. Thus, rain fade forecasting for these systems is critical because it allows the system to switch between ground gateways proactively before a rain fade event to maintain seamless service. Although empirical, statistical, and fade slope models can predict rain fade to some extent, they typically require statistical measurements of rain characteristics in a given area and cannot be generalized to a large scale system. Furthermore, such models typically predict near-future rain fade events but are incapable of forecasting far into the future, making proactive resource management more difficult. In this paper, a deep learning (DL)-based architecture is proposed that forecasts future rain fade…
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Taxonomy
TopicsPrecipitation Measurement and Analysis · Radio Wave Propagation Studies · Aerospace Engineering and Energy Systems
Methodstravel james
