基于LQR和JST的全状态反馈自反馈控制

Faisal Fajri Rahani, Tri Kuntoro Priyambodo
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引用次数: 2

摘要

四旋翼飞行器是一种具有垂直起降能力的无人机。在本研究中,设计了一个系统,通过使用人工神经网络(ANN)的LQR全状态反馈来保持四旋翼在飞行状态下的滚转角、俯仰角、偏航角以及x、y和z轴位置来稳定四旋翼,俯仰和偏航以及x、y和z轴。人工神经网络方法使用12个输入层、12个隐藏层和1个输出层。用ANN进行的测试将滚转角的上升时间提高到±2.18秒,俯仰角的上升速度提高到±1.23秒,偏航角的上升距离提高到±0.31秒。在滚转角时,沉降时间值提高至±2.41秒,在俯仰角时提高至±1.23秒,在偏航角时提高为±1.07秒。在横摇角、俯仰角和偏航角分别提高了±0.61%、±4.88%和±0.82%的稳态eror值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Penalaan Mandiri Full State Feedback dengan LQR dan JST Pada Kendali Quadrotor
Quadrotor is one type of unmanned aerial vehicle that has the ability to vertical takeoff and landing. In this research, a system designed to stabilize quadrotor during flight condition by maintaining at angle of roll, pitch, yaw, and x, y, and z axis position using LQR full state feedback with artificial neural network (ANN).The LQR full state feedback method uses 12 states with each K constant being tuned with ANN. This research implements ANN method to change feedback constant at angle of roll, pitch, and yaw and x, y, and z axis. The artificial neural network method uses 12 input layers, 12 hidden layers, and 1 output layer.Testing with ANN improved the rise time to ± 2.18 seconds at the roll angle, ± 1.23 seconds at the pitch angle, and ± 0.31 seconds at the yaw angle. Improved settling time value up to ± 2.41 seconds at roll angle, ± 1.23 seconds at pitch angle, and ± 1.07 seconds at yaw angle. Improved steady state eror value of ± 0.61% at roll angle, ± 4.88% at pitch angle, and ± 0.82% at the yaw angle.
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