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http://dx.doi.org/10.5140/JASS.2012.29.4.389

Preliminary Test of Adaptive Neuro-Fuzzy Inference System Controller for Spacecraft Attitude Control  

Kim, Sung-Woo (Astrodynamics and Control Laboratory, Department of Astronomy, Yonsei University)
Park, Sang-Young (Astrodynamics and Control Laboratory, Department of Astronomy, Yonsei University)
Park, Chan-Deok (Astrodynamics and Control Laboratory, Department of Astronomy, Yonsei University)
Publication Information
Journal of Astronomy and Space Sciences / v.29, no.4, 2012 , pp. 389-395 More about this Journal
Abstract
The problem of spacecraft attitude control is solved using an adaptive neuro-fuzzy inference system (ANFIS). An ANFIS produces a control signal for one of the three axes of a spacecraft's body frame, so in total three ANFISs are constructed for 3-axis attitude control. The fuzzy inference system of the ANFIS is initialized using a subtractive clustering method. The ANFIS is trained by a hybrid learning algorithm using the data obtained from attitude control simulations using state-dependent Riccati equation controller. The training data set for each axis is composed of state errors for 3 axes (roll, pitch, and yaw) and a control signal for one of the 3 axes. The stability region of the ANFIS controller is estimated numerically based on Lyapunov stability theory using a numerical method to calculate Jacobian matrix. To measure the performance of the ANFIS controller, root mean square error and correlation factor are used as performance indicators. The performance is tested on two ANFIS controllers trained in different conditions. The test results show that the performance indicators are proper in the sense that the ANFIS controller with the larger stability region provides better performance according to the performance indicators.
Keywords
adaptive neuro-fuzzy inference system; state-dependent Riccati equation; Lyapunov stability theory; stability region estimation;
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