机械臂三维仿真环境下深度强化学习的验证方法

M. Gruosso, N. Capece, U. Erra, Flavio Biancospino
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引用次数: 0

摘要

近年来,深度强化学习对机器人应用的发展做出了越来越大的贡献,并推动了机器人技术的研究。深度学习和无模型、无策略、基于价值的强化学习算法使代理能够通过试错过程和视觉输入成功学习复杂的机器人技能。本文的目的是通过设计一个深度q -网络(DQN)来关注机器人在模拟环境中的训练,该网络详细阐述了3D模拟环境中RGB视觉传感器获得的图像,并输出机器人手臂在给定当前状态下可以执行的每个动作的值。特别是,机器人必须在不了解环境和自身位置的情况下将球推入足球网。此外,我们的进一步目标是在训练期间执行代理验证并评估其泛化水平。尽管强化学习取得了许多进步,但它仍然是一个挑战。因此,我们设计了一种类似于监督学习方法的验证策略,并在已知和未知经验上对代理进行了测试,获得了有趣且有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Validation Approach for Deep Reinforcement Learning of a Robotic Arm in a 3D Simulated Environment
In recent years, deep reinforcement learning has increasingly contributed to the development of robotic applications and boosted research in robotics. Deep learning and model-free, off-policy, value-based reinforcement learning algorithms enabled agents to successfully learn complex robotic skills through trial and error process and visual inputs. The aim of this paper concerns the training of a robot in a simulation environment by designing a Deep Q-Network (DQN) that elaborates images acquired by an RGB vision sensor inside a 3D simulated environment and outputs a value for each action the robotic arm can execute given the current state. In particular, the robot has to push a ball into a soccer net without any knowledge of the environment and its own location. In addition, our further goal was to perform agent validation during training and assess its generalization level. Despite the many advances in reinforcement learning, it is still a challenge. Therefore, we devised a validation strategy similar to the method applied in supervised learning and tested the agent both on known and unknown experiences, achieving interesting and promising results.
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