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Autopilot Design for Unmanned Combat Aerial Vehicles (UCAVs) via Learning-based Approach

机译:通过基于学习的方法的无人战斗机(UCAV)的自动驾驶仪设计

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This paper deals with the autopilot design methodology for UCAVs (Unmanned Combat Aerial Vehicles) using the learning-based approach. In this study, the acceleration control is considered for the UCAV’s autopilot design, and the reinforcement learning, especially deep deterministic policy gradient (DDPG) method, is used to design the autopilot. To this end, we establish the autopilot design problem based on the reinforcement learning framework. First, we define an actor, an environment, an observation, and a reward. And then, we design appropriate observation and reward function for the autopilot design problems using the reinforcement learning framework. In order to validate the proposed method, the numerical simulation is performed using tensor flow. The potential importance of the proposed approach is that it can learn the autopilot algorithm from scratch without any model information of the UCAV systems. Therefore, the proposed method can allow to significantly reduce time and effort for identifying the model information in the autopilot design process. This ability of the proposed method could also be useful for improving the safety of the systems against the unexpected system failure or damage of the UCAVs during their operations.
机译:本文涉及使用基于学习的方法的UCAVS(无人战斗机)的自动驾驶仪设计方法。在这项研究中,加速控制被考虑为UCAV的自动驾驶仪设计,以及加强学习,特别是深度确定性政策梯度(DDPG)方法用于设计自动驾驶仪。为此,我们根据加强学习框架建立自动驾驶仪设计问题。首先,我们定义演员,环境,观察和奖励。然后,我们使用加强学习框架设计适当的观察和奖励功能,以便使用加强学习框架进行自动驾驶仪设计问题。为了验证所提出的方法,使用张量流来执行数值模拟。所提出的方法的潜在重要性是它可以从划痕中学习自动驾驶仪算法而没有UCAV系统的任何模型信息。因此,所提出的方法可以允许显着缩短用于识别自动驾驶仪设计过程中的模型信息的时间和精力。该方法的这种能力也可用于提高系统的安全性,以防止在其运营期间对UCAV的意外故障或损坏。

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