Topological Gaussian ARTs with Short-Term and Long-Term Memory for Map Building and Fuzzy Motion Planning

Chin Wei Hong, L. C. Kiong, Kubota Naoyuki
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引用次数: 2

Abstract

This paper proposes a cognitive architecture for building a topological map incrementally inspired by beta oscillations during place cell learning in hippocampus. The proposed architecture consists of two layer: the short-term memory layer and the long-term memory layer. The short-term memory layer emulates the entorhinal and the ? is the orientation system; the long-term memory layer emulates the hippocampus. Nodes in the topological map represent place cells robot location, links connect nodes and store robot action i.e. adjacent angle between connected nodes. The proposed method is formed by multiple Gaussian Adaptive Resonance Theory to receive data from various sensors for the map building. It consists of input layer and memory layer. The input layer obtains sensor data and incrementally categorizes the acquired information as topological nodes temporarily short-term memory. In the long-term memory layer, the categorized information will be associated with robot actions to form the topological map long-term memory. The advantages of the proposed method are: 1 it is a cognitive model that does not require human defined information and advanced knowledge to implement in a natural environment; 2 it can generate the map by processing various sensors data simultaneously in continuous space that is important for real world implementation; and 3 it is an incremental and unsupervised learning approach. Thus, the authors combine their Topological Gaussian ARTs method TGARTs with fuzzy motion planning to constitute a basis for mobile robot navigation in environment with slightly changes. Finally, the proposed approach was verified with several simulations using standardized benchmark datasets and real robot implementation.
具有短期和长期记忆的拓扑高斯艺术用于地图构建和模糊运动规划
本文提出了一种认知架构,用于在海马体位置细胞学习过程中建立受β振荡启发的增量拓扑图谱。提出的体系结构包括两层:短期记忆层和长期记忆层。短期记忆层模拟了内嗅和?是定位系统;长期记忆层模拟海马体。拓扑图中的节点表示机器人的位置单元,链路连接节点并存储机器人的动作,即连接节点之间的相邻角度。该方法采用多重高斯自适应共振理论,接收各种传感器的数据,用于地图绘制。它由输入层和存储层组成。输入层获取传感器数据,并将获取的信息增量分类为拓扑节点临时短期记忆。在长时记忆层,将分类后的信息与机器人的动作联系起来,形成长时记忆的拓扑图。该方法的优点是:1 .它是一种不需要人类定义的信息和高级知识就能在自然环境中实现的认知模型;2 .通过在连续空间中同时处理各种传感器数据来生成地图,这对现实世界的实现很重要;第三,它是一种渐进的、无监督的学习方法。因此,作者将拓扑高斯ARTs方法TGARTs与模糊运动规划相结合,构成了移动机器人在微小变化环境中导航的基础。最后,使用标准化基准数据集和真实机器人实现进行了多次仿真验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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