飞艇在阿格尔地形上自动降落的深度强化学习

Hani Khaldi, Drifa Benlamnoua, Belal Khaldi, Yacine Khaldi, Hanane Azzaoui
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引用次数: 0

摘要

阿尔及利亚是一个幅员辽阔的国家,拥有许多有待开发的旅游区。这个问题是由于这些地区的硬性质导致飞艇在其中一些地区着陆困难。本文首次讨论了飞艇在亚哈加尔环境中危险地形上的自动降落问题。由于其有效性,深度q学习(deep Q-learning, DQL)被用于实现这一任务。我们提出的着陆模型在正常情况下取得了令人满意的结果。为了检验所提出的模型的稳定性,它受到了两种随机力,即风和发动机故障。所提出的模型已被证明在一定程度上是稳定的,超过一定程度后着陆就会变得危险。所提出的模型可用于两个任务,一是飞艇在Ahagar上的自动降落,二是在随机力存在的情况下对降落结果的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning for automatic landing of airships on Ahagar terrains
Algeria is a vast country holding many touristic areas that need to be discovered. The problem arises from the difficulties of landing an airship in some of these areas due to their hard nature. In this paper, we discuss, for the first time, the problem of automatically landing an airship on dangerous terrain in the Ahagar environment. Due to its effectiveness, deep Q-learning (DQL) has been employed for realizing such a task. Our proposed landing model has yielded satisfactory results in normal cases. To examine the stability of the proposed model, it has been subjected to two random forces which are wind and engine failure. The proposed model has proven stability to a certain extent after which the landing becomes dangerous. The proposed model can be employed for two tasks, the first one is the automatic landing of airships on Ahagar, and the second one is the prediction of landing outcomes in case of the presence of random forces.
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