Moving in a Simulated Environment Through Deep Reinforcement Learning

Javier Esarte, Pablo Daniel Folino, Juan Carlos Gómez
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Abstract

Reinforcement learning is a field of artificial intelligence that is continuously evolving and has a wide variety of applications. In recent years major progress has been made in the application of deep reinforcement learning to high-dimensional problems with continuous state and action spaces. This paper presents a complete analysis of the application of the soft actor-critic algorithm to teach a four legged robot with three joints on each leg how to move towards the center of a virtually simulated environment. The general formulation of the reinforcement learning problem is first presented, followed by the description of the environment under analysis and the applied algorithm. Afterwards, the obtained results are compared against those of a manually programmed policy, closing with a discussion of some key design choices and common challenges.
通过深度强化学习在模拟环境中移动
强化学习是人工智能的一个不断发展的领域,具有广泛的应用。近年来,深度强化学习在具有连续状态和动作空间的高维问题中的应用取得了重大进展。本文完整地分析了应用软演员评论算法来教一个四条腿、每条腿上有三个关节的机器人如何向虚拟模拟环境的中心移动。首先给出了强化学习问题的一般公式,然后描述了被分析的环境和应用的算法。然后,将获得的结果与手动编程策略的结果进行比较,最后讨论了一些关键的设计选择和常见的挑战。
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