利用深度确定性策略梯度实现多旋翼无人机的部分调整 PD 控制器

Emmanuel Mosweu, Tshepo Botho Seokolo, Theddeus Tochukwu Akano, Oboetswe Seraga Motsamai
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引用次数: 0

摘要

目前经典控制系统所采用的方法具有成本高、处理要求高和灵活性差的特点。在传统做法中,当控制器在硬件上实现后表现出不稳定性时,通常会对其进行调整以达到稳定。然而,这种方法并不适合像无人机这样的批量生产系统,因为无人机具有不同的制造公差和微妙的稳定性阈值。本研究的目的是为多旋翼无人飞行器(UAV)系统设计和评估一种控制器,该控制器能够根据系统动态变化调整增益。本研究中使用的控制器采用 Simulink 构建的模型,该模型通过强化学习技术,特别是采用深度确定性策略梯度(DDPG)网络进行学习。无人机的 Simulink 模型建立了一个框架,在此框架内,飞行器通过与周围环境的互动进行学习。DDPG 算法是一种非策略强化学习技术,可在连续的行动空间中运行,不需要模型。对级联 PD 控制器和神经网络调节器的功效进行了评估。结果表明,控制器在起飞、悬停、路径跟踪和着陆等几个飞行阶段都表现出了稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of partially tuned PD controllers of a multirotor UAV using deep deterministic policy gradient
The present methodology employed in classical control systems is characterized by high costs, significant processing requirements, and inflexibility. In conventional practice, when the controller exhibits instability after being implemented on the hardware, it is often adjusted to achieve stability. However, this approach is not suitable for mass-produced systems like drones, which possess diverse manufacturing tolerances and delicate stability thresholds. The aim of this study is to design and evaluate a controller for a multirotor unmanned aerial vehicle (UAV) system that is capable of adapting its gains in accordance with changes in the system dynamics. The controller utilized in this research employs a Simulink-constructed model that has been taught by reinforcement learning techniques, specifically employing a deep deterministic policy gradient (DDPG) network. The Simulink model of the UAV establishes the framework within which the agent engages in learning through interaction with its surroundings. The DDPG algorithm is an off-policy reinforcement learning technique that operates in continuous action spaces and does not require a model. The efficacy of the cascaded PD controllers and neural network tuner is evaluated. The results revealed that the controller exhibited stability during several flight phases, including take-off, hovering, path tracking, and landing manoeuvres.
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