黑盒环境下强化学习的动态屏蔽

Masaki Waga, Ezequiel Castellano, Sasinee Pruekprasert, Stefan Klikovits, Toru Takisaka, I. Hasuo
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引用次数: 3

摘要

。由于在学习过程中缺乏安全保障,在网络物理系统中使用强化学习(RL)具有挑战性。尽管有各种各样的建议来减少学习过程中的不良行为,但大多数这些技术都需要事先的系统知识,而且它们的适用性是有限的。本文的目的是在不需要任何先验系统知识的情况下减少学习过程中的不良行为。我们提出动态屏蔽:基于模型的安全强化学习技术的扩展,称为使用数据驱动的自动机学习的屏蔽。动态屏蔽技术使用RPNI算法的一种变体,与RL并行构建一个近似的系统模型,并抑制由于从学习模型构建的屏蔽而导致的不期望的探索。通过这种组合,可以在代理经历潜在的不安全行为之前预见到它们。实验表明,我们的动态屏蔽显著减少了训练过程中不希望发生的事件。以及实验结果。
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Dynamic Shielding for Reinforcement Learning in Black-Box Environments
. It is challenging to use reinforcement learning (RL) in cyber-physical systems due to the lack of safety guarantees during learning. Although there have been various proposals to reduce undesired behaviors during learning, most of these techniques require prior system knowledge, and their applicability is limited. This paper aims to reduce undesired behaviors during learning without requiring any prior system knowledge. We propose dynamic shielding : an extension of a model-based safe RL technique called shielding using data-driven automata learning . The dynamic shielding technique constructs an approximate system model in parallel with RL using a variant of the RPNI algorithm and sup-presses undesired explorations due to the shield constructed from the learned model. Through this combination, potentially unsafe actions can be foreseen before the agent experiences them. Experiments show that our dynamic shield significantly decreases the number of undesired events during training. and experiment results.
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