Penalaan Mandiri Full State Feedback dengan LQR dan JST Pada Kendali Quadrotor

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

Abstract

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.
基于LQR和JST的全状态反馈自反馈控制
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。
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