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Deep neural networks for improved, impromptu trajectory tracking of quadrotors

机译:深度神经网络可改善四旋翼的即兴轨迹跟踪

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Trajectory tracking control for quadrotors is important for applications ranging from surveying and inspection, to film making. However, designing and tuning classical controllers, such as proportional-integral-derivative (PID) controllers, to achieve high tracking precision can be time-consuming and difficult, due to hidden dynamics and other non-idealities. The Deep Neural Network (DNN), with its superior capability of approximating abstract, nonlinear functions, proposes a novel approach for enhancing trajectory tracking control. This paper presents a DNN-based algorithm as an add-on module that improves the tracking performance of a classical feedback controller. Given a desired trajectory, the DNNs provide a tailored reference input to the controller based on their gained experience. The input aims to achieve a unity map between the desired and the output trajectory. The motivation for this work is an interactive “fly-as-you-draw” application, in which a user draws a trajectory on a mobile device, and a quadrotor instantly flies that trajectory with the DNN-enhanced control system. Experimental results demonstrate that the proposed approach improves the tracking precision for user-drawn trajectories after the DNNs are trained on selected periodic trajectories, suggesting the method's potential in real-world applications. Tracking errors are reduced by around 40-50% for both training and testing trajectories from users, highlighting the DNNs' capability of generalizing knowledge.
机译:四旋翼的轨迹跟踪控制对于从测量和检查到电影制作的各种应用都很重要。但是,由于隐藏的动力学和其他非理想性,设计和调整经典控制器(例如比例积分微分(PID)控制器)以实现高跟踪精度可能既耗时又困难。深度神经网络(DNN)具有逼近抽象的非线性函数的出色功能,提出了一种增强轨迹跟踪控制的新颖方法。本文提出了一种基于DNN的算法作为附加模块,该模块可提高经典反馈控制器的跟踪性能。给定所需的轨迹,DNN根据其获得的经验为控制器提供量身定制的参考输入。输入旨在实现所需轨迹与输出轨迹之间的统一映射。进行这项工作的动机是一个交互式的“按需绘制”应用程序,其中用户在移动设备上绘制轨迹,而四旋翼飞行器通过DNN增强的控制系统立即飞行该轨迹。实验结果表明,在选择的周期性轨迹上训练DNN后,该方法提高了用户绘制轨迹的跟踪精度,这表明该方法在实际应用中具有潜力。用户的训练和测试轨迹的跟踪误差都减少了约40-50%,这突显了DNN推广知识的能力。

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