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Published byLesley Charles Modified over 6 years ago
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Spacecraft Anomaly Analysis and Prediction System – SAAPS
Peter Wintoft1), Henrik Lundstedt1), Lars Eliasson2), Leif Kalla2), and Alain Hilgers3) 1)Swedish Institute of Space Physics – Lund 2)Swedish Institute of Space Physics – Kiruna 3)ESA/ESTEC
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SAAPS Spacecraft Anomaly Analysis and Prediction System
ESA Contract 11974/96/NL/JG(SC): Development of AI Methods in Spacecraft Anomaly Predictions Extension of the SPEE study Two year project (April June 2001) Database and software
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Purpose Develop tools for the analysis and prediction of spacecraft anomalies.
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Approach Statistical methods for the analysis.
Artificial intelligence (AI) based models, such as neural networks, for predictions. Real time operation. Database of space weather data and spacecraft anomalies.
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The model
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SAAPS Data Sources
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The model
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SAAM Spacecraft Anomaly Analysis Module
Plotting tools Statistics Superposed epoch analysis Correlations (linear and entropy based) Cluster analysis Pattern definition and search Guidelines Estimate best prediction model
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The model
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SAPM Spacecraft Anomaly Prediction Module
Neural network based prediction models Real time forecast Connects to SAAM for analysis Anomaly index (?) and/or Spacecraft dependent anomaly predictions
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SKp based predictions Satellite specific model (geostationary)
Kp(t-8*24h) SKp(t-8d) A(t+1d) SKp(t) Kp(t) Satellite specific model (geostationary) Fraction of correct classifications is 0.65 on balanced test set
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Mutual information between average SKp and ESD anomaly data
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Mutual information between SKp and ESD anomaly data
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Anomaly index?
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I(X;Y)/H(Y)=0.80 I(X;Y)/H(X)=0.55
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Predicting MeV electron flux
Inputs: Daily average solar wind velocity and density Local time Outputs: Hourly average GOES-08 >2 MeV electron flux
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Nowcast 1-day forecast
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Daily Hourly Forecast Observed NN
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Summary Database with Analysis module to perform
solar wind data, geosynchronous particle data, geomagntic indices, and anomaly data. Analysis module to perform event studies and statistics. Predictions module for anomalies and environment.
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Prediction module
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