Attitude UAV Stability Control Using Linear Quadratic Regulator-Neural Network (LQR-NN)
Oktaf Agni Dhewa,
Fatchul Arifin,
Ardy Seto Priyambodo
et al.
Abstract:The stability of an Unmanned Aerial Vehicle (UAV) attitude is crucial in aviation to mitigate the risk of accidents and ensure mission success. This study aims to optimize and adaptively control the flight attitude stability of a flying wing-type UAV amidst environmental variations. This is achieved through the utilization of Linear Quadratic Regulator-Neural Network (LQR-NN) control, wherein the Neural Network predicts the optimal K gain value by fine-tuning Q and R parameters to minimize system errors. An on… Show more
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