On-chain Validation of Tracking Data Messages (TDM) Using Distributed Deep Learning on a Proof of Stake (PoS) Blockchain
Yasir Latif, Anirban Chowdhury, Samya Bagchi

TL;DR
This paper presents a blockchain-based, trustless system utilizing deep learning and transformer models to validate and verify space object tracking data, enhancing space situational awareness without relying on central authorities.
Contribution
It introduces a novel blockchain-enabled framework combining distributed deep learning with transformer-based orbit propagation for secure TDM validation.
Findings
Transformer-based orbit propagator outperforms traditional methods like SGP4.
The system enables decentralized validation of tracking data.
Stake-based incentives promote honest data contribution.
Abstract
Trustless tracking of Resident Space Objects (RSOs) is crucial for Space Situational Awareness (SSA), especially during adverse situations. The importance of transparent SSA cannot be overstated, as it is vital for ensuring space safety and security. In an era where RSO location information can be easily manipulated, the risk of RSOs being used as weapons is a growing concern. The Tracking Data Message (TDM) is a standardized format for broadcasting RSO observations. However, the varying quality of observations from diverse sensors poses challenges to SSA reliability. While many countries operate space assets, relatively few have SSA capabilities, making it crucial to ensure the accuracy and reliability of the data. Current practices assume complete trust in the transmitting party, leaving SSA capabilities vulnerable to adversarial actions such as spoofing TDMs. This work introduces a…
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Taxonomy
TopicsBrain Tumor Detection and Classification
