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Research Article | Open Access

Augmented temporal grid for graph neural networks and anomaly detection in spacecraft

Gamze Naz Kiprit1,3,*Andreas Koch2,3,*( )Michael Petry2,3Martin Werner2
Department of Electrical Engineering, School of Computation, Information and Technology, Technical University of Munich, Munich 80333, Germany
Department of Aerospace and Geodesy, TUM School of Engineering and Design, Technical University of Munich, Munich 80333, Germany
Space Systems Engineering (Product Realisation Germany), Airbus Defence and Space GmbH, Taufkirchen 82024, Germany

* Gamze Naz Kiprit and Andreas Koch contributed equally to this work

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Abstract

Graph neural networks (GNN) for spatiotemporal problems incorporate a temporal module operating on a temporal grid of interconnected subsequent time steps. In this work, we explore adding connections to future time steps to the temporal grid in order to extract unique features for the task of anomaly detection in time series. We introduce strategies for determining future connections utilizing the autocorrelation function and different random sampling techniques. The effectiveness of resulting graph neural networks is demonstrated on multiple anomaly detection benchmarks, including spacecraft telemetry datasets. A selection of graph neural network models is further deployed on the AMD-Xilinx Versal AI Core SoC to measure the execution time and resource utilization when processing telemetry data.

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Astrodynamics
Pages 403-416

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Cite this article:
Kiprit GN, Koch A, Petry M, et al. Augmented temporal grid for graph neural networks and anomaly detection in spacecraft. Astrodynamics, 2026, 10(3): 403-416. https://doi.org/10.1007/s42064-025-0278-0

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Received: 01 March 2025
Accepted: 12 May 2025
Published: 25 May 2026
© The Author(s) 2026

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