End-to-end deep reinforcement learning for control of an autonomous underwater robot with an undulating propulsor

Ahmad Aws, Arkadij Yuschenko, Vladimir Soloviev
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Abstract

This paper focuses on the development and implementation of control algorithms for positioning an Autonomous Underwater Vehicle (AUV) with an undulating propulsor, using reinforcement learning methods. It provides an analysis and overview of works incorporating reinforcement learning methods such as Actor-only, Critic-only, and Actor-Critic. The paper primarily focuses on the Deep Deterministic Policy Gradient method and its implementation using deep neural networks to train the Actor-Critic agent. In the agent's architecture, a replay buffer and target neural networks were utilized to address the data correlation issue that induces training instability. An adaptive ar-chitecture was proposed for training the agent to force the robot to move from the initial point to any target point. Additionally, a random target point generator was incorporated at the training stage so as not to retrain the agent when the target points change. The training objective is to optimize the actor's policy by optimizing the critic and maximizing the reward function. Reward function is determined as the distance from the robot's center of mass to the target points. Consequently, the reward received by the agent increases when the robot gets closer to the target point and becomes maximal when the target point is reached with an acceptable error.
端到端深度强化学习用于控制带起伏推进器的自主水下机器人
本文重点介绍利用强化学习方法开发和实施控制算法,用于定位带有起伏推进器的自主潜水器(AUV)。论文分析并概述了采用强化学习方法(如纯演员法、纯批评法和演员批评法)的作品。论文主要关注深度确定性策略梯度法及其使用深度神经网络训练 Actor-Critic 代理的实现。在代理架构中,利用重放缓冲区和目标神经网络来解决导致训练不稳定的数据相关性问题。为训练代理提出了一种自适应架构,以迫使机器人从初始点移动到任意目标点。此外,还在训练阶段加入了随机目标点生成器,以便在目标点发生变化时不对代理进行重新训练。训练目标是通过优化批判者和最大化奖励函数来优化机器人的策略。奖励函数由机器人质心到目标点的距离决定。因此,当机器人接近目标点时,代理获得的奖励就会增加;当机器人以可接受的误差到达目标点时,代理获得的奖励就会达到最大值。
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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