Study on Automatic PID Gain Adjustment for a Four-rotor Flying Robot using Neural Network

Bin Zhang, S. Furukawa, Hun-ok Lim
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Abstract

A PID-gain auto-adjustment method using the neural network method with little computational complexity is proposed. The automatic PID gain adjustment technique based on the neural network can adapt to modeling errors and unknown disturbances by performing on-line learning during flight. When the robot becomes unstable due to overlearning, learning process is reset once. In addition, the object tracking, and obstacle avoidance systems are also developed to make the robot adapt to complex environment.
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基于神经网络的四旋翼飞行机器人PID增益自动调节研究
提出了一种计算复杂度小的神经网络pid增益自整定方法。基于神经网络的PID增益自动调节技术通过在飞行过程中进行在线学习来适应建模误差和未知干扰。当机器人因过度学习而变得不稳定时,学习过程重置一次。此外,还开发了目标跟踪和避障系统,使机器人能够适应复杂的环境。
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