无人机快速敏捷飞行的人工神经网络辅助控制器:机载实现与实验结果

Siddharth Patel, Andriy Sarabakha, Dogan Kircali, Giuseppe Loianno, E. Kayacan
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引用次数: 3

摘要

在这项工作中,我们使用人工神经网络(ANN)辅助的常规控制器来解决无人机(uav)的快速敏捷机动控制问题。尽管对无人机几乎完美控制精度的需求将操作推向了性能极限,但安全性和可靠性方面的考虑迫使研究人员在调整控制器时更加保守。作为上述权衡的替代解决方案,通过在线学习系统动力学,为无人机的轨迹跟踪设计了可靠而精确的控制器。此外,所提出的在线学习机制有助于我们处理未建模的动态和操作不确定性。实验结果验证了所提出的方法,并显示了与传统控制器相比,我们的方法在快速灵活机动方面的优势,速度高达20米/秒。基于滑模控制理论的自适应规则的机载实现用于所提出的人工神经网络的训练是计算效率高的,这使我们能够使用低成本和低功耗的计算机即时学习系统动力学和操作变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network-Assisted Controller for Fast and Agile UAV Flight: Onboard Implementation and Experimental Results
In this work, we address fast and agile manoeuvre control problem of unmanned aerial vehicles (UAVs) using an artificial neural network (ANN)-assisted conventional controller. Whereas the need for having almost perfect control accuracy for UAVs pushes the operation to boundaries of the performance envelope, safety and reliability concerns enforce researchers to be more conservative in tuning their controllers. As an alternative solution to the aforementioned trade-off, a reliable yet accurate controller is designed for the trajectory tracking of UAVs by learning system dynamics online over the trajectory. What is more, the proposed online learning mechanism helps us to deal with unmodelled dynamics and operational uncertainties. Experimental results validate the proposed approach and show the superiority of our method compared to the conventional controller for fast and agile manoeuvres, at speeds as high as 20m/s. An onboard implementation of the sliding mode control theory-based adaptation rules for the training of the proposed ANN is computationally efficient which allows us to learn system dynamics and operational variations instantly using a low-cost and low-power computer.
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