Session 2a: Machine Learning & Big Data

Telemetry Anomaly Detection System using Machine Learning to Streamline Mission Operations

Michela Muñoz1, Yisong Yue2, Romann Weber2

Jet Propulsion Laboratory/California Institute of Technology (USA)1
California Institute of Technology (USA)2

Date: September 29, 15:15 - 15:45
Room: Sala de Relaciones Internacionales

Spacecraft housekeeping telemetry is monitored at flight control centers by the operations engineers using tools that can perform limit checking or simple trend analysis. Recent developments in machine learning techniques for anomaly detection enables the implementation of more sophisticated systems that aim to augment current state-of-theart mission tools to provide valuable decision support for the spacecraft operators, assisting in anomaly detection and potentially saving console time for the engineers. We will show some results of the implementation of an anomaly detection tool for the NASA Mars Science Laboratory mission.