Adaptive Navigation Method for Mobile Robots in Various Environments using Multiple Control Policies

Kanako Amano, Anna Komori, Saki Nakazawa, Yuka Kato
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Abstract

In recent years, to achieve safe and efficient navigation for autonomous mobile robots, several methods have been proposed to switch between multiple policies (action decision methods), including deep reinforcement learning, depending on the situation. We have also proposed methods to introduce new policy-switching criteria and to add new policies to avoid freezing conditions. Compared to existing methods, we have shown that the method improves safety metric values (e.g., collision rate) even in narrow corridors; however, there are still challenges in achieving sufficient performance because safety and efficiency metric values fluctuate depending on the environment. In this paper, we propose an adaptive navigation method that uses sensing results to classify robot deployment environments into several groups and adaptively changes the policy-switching algorithm according to the environment. Specifically, we use collision risk and congestion level for the environment classification and associate the environment classes with appropriate control parameter values (i.e., parameter tuning) to achieve adaptive navigation. Furthermore, we verify the effectiveness of the proposed method by conducting simulation experiments.
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基于多控制策略的移动机器人自适应导航方法
近年来,为了实现自主移动机器人的安全高效导航,人们提出了几种方法来根据情况在多个策略(行动决策方法)之间切换,包括深度强化学习。我们还提出了引入新的政策切换标准和增加新政策以避免冻结条件的方法。与现有方法相比,我们已经证明,即使在狭窄的走廊中,该方法也能提高安全度量值(例如,碰撞率);然而,要实现足够的性能仍然存在挑战,因为安全和效率度量值会随着环境的变化而波动。在本文中,我们提出了一种自适应导航方法,该方法利用感知结果将机器人部署环境划分为若干组,并根据环境自适应地改变策略切换算法。具体来说,我们使用碰撞风险和拥塞级别进行环境分类,并将环境类与适当的控制参数值(即参数调优)相关联,以实现自适应导航。最后,通过仿真实验验证了所提方法的有效性。
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