DESIGN NEURAL NETWORK-PID CONTROLLER FOR TRAJECTORY TRACKING OF DIFFERENTIAL DRIVE MOBILE ROBOT

Nguyễn Hồng Thái
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Abstract

This paper proposes the design of a neural network controller based on a sample controller for controlling the trajectory-tracking motion of a differential drive mobile robot (DDMR). Firstly, the trajectory tracking model for DDMR is established based on position error. Next, a perceptron neural network is designed with three hidden layers to control the trajectory tracking of DDMR. The backpropagation algorithm is used to train the neural network with training data obtained from the PID controller with time-varying parameters. The authors have developed this approach and experimentally verified it with minor tracking errors. The neural network's weight matrix (W) and bias vector (b) are updated in real-time, providing an advantage over other methods. The effectiveness of the proposed controller is demonstrated by the DDMR's NURBS trajectory tracking error, which does not exceed 2.17 cm, and the DDMR's motion error, with linear and angular velocities not exceeding 0.004 m/s and 0.0007 rad/s, respectively. The proposed controller can supplement traditional controllers in controlling the trajectory of autonomous mobile robots, thereby improving the ability to generate local trajectories to avoid dynamic obstacles by the neural network
设计用于差动驱动移动机器人轨迹跟踪的神经网络-PID 控制器
本文提出了一种基于采样控制器的神经网络控制器,用于控制差动驱动移动机器人(DDMR)的轨迹跟踪运动。首先,根据位置误差建立 DDMR 的轨迹跟踪模型。然后,设计了一个具有三个隐藏层的感知器神经网络来控制 DDMR 的轨迹跟踪。使用反向传播算法训练神经网络,训练数据来自带时变参数的 PID 控制器。作者开发了这种方法,并通过实验验证了它的跟踪误差很小。神经网络的权重矩阵 (W) 和偏置向量 (b) 是实时更新的,与其他方法相比更具优势。DDMR 的 NURBS 轨迹跟踪误差(不超过 2.17 厘米)和 DDMR 的运动误差(线速度和角速度分别不超过 0.004 米/秒和 0.0007 拉德/秒)证明了所提控制器的有效性。提出的控制器可以补充传统控制器在控制自主移动机器人轨迹方面的不足,从而提高神经网络生成局部轨迹以避开动态障碍物的能力。
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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