Forecasting time series of spacecraft telemetry based on ensembles of neural networks
Abstract
The article describes a two-level model of neural network ensembles for predicting multidimensional telemetry time series of spacecraft subsystems. The developed model is implemented in the system for identifying their state by telemetry data for the ground command-measuring complex.
About the Authors
A. DoudkinBelarus
Y. Marushko
Belarus
V. Ganchenko
Belarus
References
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Review
For citations:
Doudkin A., Marushko Y., Ganchenko V. Forecasting time series of spacecraft telemetry based on ensembles of neural networks. Science and Innovations. 2021;(5):16-22. (In Russ.)