Self-tuning precompensation of PID based heading control of a flying robot

S. Puntunan, M. Parnichkun
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引用次数: 6

Abstract

In this paper, an online self-tuning precompensation for a proportional-integral-derivative (PID) controller is proposed to control heading direction of a flying robot. The flying robot is a highly nonlinear plant, it is a modified X-Cell 60 radio-controlled helicopter. Heading direction is controlled to evaluate efficiency of the proposed precompensation algorithm. The heading control is based on the conventional PID control combined with an online self-tuning precompensation so that both the desired transient and steady state responses can be achieved. The precompensation is applied to compensate unsatisfied performances of the conventional PID controller by adjusting reference command of the conventional PID controller. The precompensator is based on Takagi-Sugeno's type fuzzy model, which learns to tune itself online. The main contribution of the proposed controller is to enhance the controlled performance of the conventional PID controller by adding a self-tuning precompensator on the existing conventional PID controller. The results show that the conventional PID controller with an online self-tuning precompensation has a superior performance than the conventional PID controller. In addition, the online self-tuning precompensation algorithm is implemented simply by adding the precompensator to the existing conventional PID controller and letting the self-tuning mechanism tune itself online.
基于PID的飞行机器人航向控制自整定预补偿
针对飞行机器人的航向控制问题,提出了一种基于比例-积分-导数(PID)控制器的在线自整定预补偿方法。飞行机器人是一种高度非线性装置,它是一种改进的X-Cell 60无线电控制直升机。通过控制航向来评估预补偿算法的有效性。航向控制是在传统PID控制的基础上,结合在线自整定预补偿,以达到期望的瞬态和稳态响应。预补偿是通过调整常规PID控制器的参考指令来补偿常规PID控制器不满意的性能。该预补偿器基于Takagi-Sugeno型模糊模型,可在线学习自我调整。该控制器的主要贡献是通过在现有的传统PID控制器上添加自整定预补偿器来提高传统PID控制器的控制性能。结果表明,采用在线自整定预补偿的传统PID控制器比传统PID控制器具有更好的控制性能。此外,在线自整定预补偿算法是通过在现有的传统PID控制器上加入预补偿器,让自整定机构在线自整定来实现的。
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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