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Navigation of mobile robot in a grid-based environment using local and target weighted neural networks

机译:使用局部和目标加权神经网络在基于网格的环境中导航移动机器人

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The basic challenge for an autonomous mobile robot is to find a collision free path while navigating from a starting position to a target position. In real-life, autonomous mobile robots are useful in many fields including traffic planning for smart cities, military operations, warehouses applications etc. A ranging sensor-based collision-free navigation and mapping of an intelligent mobile robot using neural network is presented in this paper. A topologically grid-based map is utilized in the proposed neural dynamics. With the help of the ranging sensors the robot can sense only limited range of area. The next grid cell position of the robot is achieved by determining the maximum neural activity of its neighbouring neurons or the minimum target distance from the maximum activated neurons. Through simulation we have demonstrated the effectiveness of bio-inspired neural network and compare the effect of two weight calculation algorithms. The robot is successfully reaching to the target with the help of both the weight calculation algorithms.
机译:自主移动机器人的基本挑战是在从起始位置导航到目标位置的同时找到无碰撞的路径。在现实生活中,自主移动机器人在许多领域都非常有用,包括智能城市的交通规划,军事行动,仓库应用等。本文介绍了基于范围的基于传感器的无碰撞导航以及使用神经网络的智能移动机器人地图。纸。在提出的神经动力学中使用了基于拓扑网格的图。借助测距传感器,机器人只能感知有限的区域范围。机器人的下一个网格单元位置是通过确定其相邻神经元的最大神经活动或距最大激活神经元的最小目标距离来实现的。通过仿真,我们证明了生物启发式神经网络的有效性,并比较了两种权重计算算法的效果。借助两种重量计算算法,机器人已成功到达目标。

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