Litcius/Paper detail

RBF Neural Network-Based Cooperative Electromagnetic Takeover Control for Large-Scale Failed Spacecraft

Chuang Liu, Jiayi Xu, Xiaokui Yue

2025IEEE Transactions on Aerospace and Electronic Systems9 citationsDOI

Abstract

To achieve precise and smooth docking, this paper proposes a sliding mode control strategy for cooperative electromagnetic takeover involving multiple servicing spacecraft. First, a relative motion dynamics model for electromagnetic takeover between servicing and failed spacecraft is established based on a far-field electromagnetic force model. Next, an intelligent sliding mode controller is developed based on a radial basis function (RBF) neural network. The controller ensures fixed-time convergence and prescribed-time stability, with system stability rigorously proven using Lyapunov theory. Finally, an appropriate communication topology and control parameters are selected to conduct numerical simulations of multi-servicing spacecraft for cooperative electromagnetic takeover. Simulation results demonstrate that the proposed RBF neural network-based sliding mode control approach enables high-precision and smooth electromagnetic takeover under strong disturbance conditions, while maintaining the stability of the system's center of mass throughout the takeover process.

Topics & Concepts

Control theory (sociology)SpacecraftController (irrigation)Lyapunov functionConvergence (economics)Sliding mode controlMode (computer interface)Stability (learning theory)Computer scienceControl engineeringEngineeringRadial basis functionArtificial neural networkMotion controlLyapunov stabilityControl systemIntelligent controlVehicle dynamicsTrajectoryFunction (biology)ElectromagneticsControl (management)Adaptive controlComputer simulationInertial Sensor and NavigationAdaptive Control of Nonlinear SystemsSpace Satellite Systems and Control