共同训练观察者和回避目标

André Brandenburger, Folker Hoffmann, A. Charlish
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引用次数: 0

摘要

强化学习(RL)已经广泛应用于机器人等应用,但在传感器管理中只得到很少的应用。在本文中,我们将流行的近端策略优化(PPO)方法应用于多智能体无人机跟踪场景。虽然真实场景的记录数据可以准确地反映真实世界,但所需的数据量并不总是可用的。然而,生成模拟数据的成本通常很低,但是所利用的目标行为通常很幼稚,只能模糊地表示现实世界。在本文中,我们利用多智能体强化学习来共同生成主角和对抗性策略,并克服了数据生成问题,因为策略是动态生成的,并且不断适应。通过这种方式,我们能够明显优于基准方法,并稳健地生成具有竞争力的政策。此外,我们通过解释特征显著性和生成易于阅读的决策树作为简化策略来研究可解释的人工智能(XAI)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Co-Training an Observer and an Evading Target
Reinforcement learning (RL) is already widely applied to applications such as robotics, but it is only sparsely used in sensor management. In this paper, we apply the popular Proximal Policy Optimization (PPO) approach to a multi-agent UAV tracking scenario. While recorded data of real scenarios can accurately reflect the real world, the required amount of data is not always available. Simulation data, however, is typically cheap to generate, but the utilized target behavior is often naive and only vaguely represents the real world. In this paper, we utilize multi-agent RL to jointly generate protagonistic and antagonistic policies and overcome the data generation problem, as the policies are generated on-the-fly and adapt continuously. This way, we are able to clearly outperform baseline methods and robustly generate competitive policies. In addition, we investigate explainable artificial intelligence (XAI) by interpreting feature saliency and generating an easy-to-read decision tree as a simplified policy.
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