In this paper, pragmatic implementation of an indoor autonomous delivery system that exploits Reinforcement Learning algorithms for path planning and collision avoidance is audited. The proposed system is a cost-efficient approach that is implemented to facilitate a Raspberry Pi controlled four-wheel-drive non-holonomic robot map a grid. This approach computes and navigates the shortest path from a source key point to a destination key point to carry out the desired delivery. Q learning and Deep-Q learning are used to find the optimal path while avoiding collision with static obstacles. This work defines an approach to deploy these two algorithms on a robot. A novel algorithm to decode an array of directions into accurate movements in a certain action space is also proposed. The procedure followed to dispatch this system with the said requirements is described, ergo presenting our proof of concept for indoor autonomous delivery vehicles.
翻译:在本文中,对利用强化学习算法进行路径规划和避免碰撞的室内自主交付系统的实际实施进行了审计。拟议系统是一种成本效率高的方法,用于促进Raspberry Pi控制四轮驱动非单轮驱动机器人的网格图。这种方法计算和导航从一个源关键点到一个目的地关键点的最短路径,以完成预期的交付。Q学习和深Q学习被用来寻找最佳路径,同时避免与静态障碍发生碰撞。这项工作界定了在机器人上部署这两种算法的方法。还提出了将一系列方向解码用于某些行动空间的新型算法。按照上述要求发送这一系统所遵循的程序被描述为室内自主交付车辆提供我们概念的证明。