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A NEURAL ARCHITECTURE FOR ONLINE PATH LEARNING IN MAZE NAVIGATION

机译:在迷宫导航中的在线路径学习的神经结构

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This paper describes a neural network architecture and the online learning policies that permits to an autonomous robot navigates though a maze in order to memorize a path that explores the entire environment, while avoiding obstacles. The state space representation is constructed by unsupervised and competitive learning as well as the mapping state-action is constructed by means of reinforcement learning, during the maze exploration. The result of learning creates a memory of states-actions that emerges an intelligent behavior, such as the path learning. The robot uses only its own infrared distance-sensors to perform obstacle detection, used as pattern recognition cues, while moving in a maze environment. In order to demonstrate the effectiveness and real-time ability of the proposed neural controller, we report a number of simulation results of navigation in unknown maze environments.
机译:本文介绍了神经网络架构和在线学习政策,允许自治机器人在迷宫中导航,以便记住探索整个环境的路径,同时避免障碍物。状态空间表示由无监督和竞争学习构成,并且在迷宫勘探期间通过加强学习构建映射状态动作。学习的结果创建了一种智能行为的状态的记忆,例如路径学习。机器人仅使用自己的红外距离传感器来执行障碍物检测,用作模式识别线索,同时在迷宫环境中移动。为了证明所提出的神经控制器的有效性和实时能力,我们报告了许多在未知迷宫环境中导航的仿真结果。

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