Adaptive Gain Scheduling using Reinforcement Learning for Quadcopter
Control
Main:5 Pages
1 Figures
Bibliography:1 Pages
Abstract
The paper presents a technique using reinforcement learning (RL) to adapt the control gains of a quadcopter controller. Specifically, we employed Proximal Policy Optimization (PPO) to train a policy which adapts the gains of a cascaded feedback controller in-flight. The primary goal of this controller is to minimize tracking error while following a specified trajectory. The paper's key objective is to analyze the effectiveness of the adaptive gain policy and compare it to the performance of a static gain control algorithm, where the Integral Squared Error and Integral Time Squared Error are used as metrics. The results show that the adaptive gain scheme achieves over 40 decrease in tracking error as compared to the static gain controller.
View on arXivComments on this paper
