ROAIAug 11, 2021

Low-level Pose Control of Tilting Multirotor for Wall Perching Tasks Using Reinforcement Learning

arXiv:2108.05457v1
Originality Incremental advance
AI Analysis

This addresses the need for unmanned aerial vehicles that can attach to walls, offering a solution for applications like inspection or surveillance, though it is an incremental advance in applying reinforcement learning to more complex systems.

The paper tackles the problem of controlling tilting multirotors for wall perching tasks by proposing a reinforcement learning-based method with a novel reward function and state representation, achieving robust controllability in real-world experiments.

Recently, needs for unmanned aerial vehicles (UAVs) that are attachable to the wall have been highlighted. As one of the ways to address the need, researches on various tilting multirotors that can increase maneuverability has been employed. Unfortunately, existing studies on the tilting multirotors require considerable amounts of prior information on the complex dynamic model. Meanwhile, reinforcement learning on quadrotors has been studied to mitigate this issue. Yet, these are only been applied to standard quadrotors, whose systems are less complex than those of tilting multirotors. In this paper, a novel reinforcement learning-based method is proposed to control a tilting multirotor on real-world applications, which is the first attempt to apply reinforcement learning to a tilting multirotor. To do so, we propose a novel reward function for a neural network model that takes power efficiency into account. The model is initially trained over a simulated environment and then fine-tuned using real-world data in order to overcome the sim-to-real gap issue. Furthermore, a novel, efficient state representation with respect to the goal frame that helps the network learn optimal policy better is proposed. As verified on real-world experiments, our proposed method shows robust controllability by overcoming the complex dynamics of tilting multirotors.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes