UAV Navigation System with Obstacle Detection using Deep Reinforcement Learning with Noise Injection

Alonica R. Villanueva, Arnel C. Fajardo
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引用次数: 1

Abstract

This paper is an application of deep reinforcement learning and noise injection to the navigation of the Unmanned Aerial Vehicle. Recent studies take advantage of the enhancement of the exploratory of its navigation to the environment like civilian missions such as disaster monitoring and, search and rescue. Some research studies include noise injection in the deep learning algorithm to improve its performance. Therefore, this study applied the ad compared two ways to inject Gaussian noise namely Gaussian Noise Layer and Noisy Network in Double Dueling Deep Q Network. The tests conducted with the Gaussian Noise Layer with a standard deviation of 1.0 gives stable exploration performance in terms of q learning, loss and flight navigation. The noticeable results give the significance to further research in Gaussian Noise injection in optimizing the deep reinforcement algorithm of unmanned aerial vehicles where can be further applied to future technology of navigation.
基于噪声注入深度强化学习的无人机障碍物检测导航系统
本文是深度强化学习和噪声注入技术在无人机导航中的应用。最近的研究利用了增强其对环境导航的探索性,如灾害监测和搜救等民用任务。一些研究包括在深度学习算法中注入噪声以提高其性能。因此,本研究在双决斗深度Q网络中应用并比较了高斯噪声层和噪声网络两种注入高斯噪声的方式。使用标准差为1.0的高斯噪声层进行的测试在q学习、损失和飞行导航方面都有稳定的探索性能。研究结果对进一步研究高斯噪声注入对无人机深度强化算法的优化具有重要意义,并可进一步应用于未来的导航技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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