A neural network-based navigation system for mobile robots

K. Koh, H. Beom, J.S. Kim, H. cho
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引用次数: 8

Abstract

For mobile robots to be autonomous, they should have essential functional capabilities such as determination of their current location and heading angle, path control in order to follow the desired path and local path planning for uncertain environments. This paper deals with the above three issues and illustrates how the artificial neural network can be utilized to solve such problems. This neural network-based navigation system offers a method of determining the mobile robot's position-a 3D landmark sensing system with neural estimator. It also offers a neural net-based feedforward controller designed to accurately track a desired path and a sensor-based local path planning capability to adapt to complex and changing environments. System software/hardware architecture to implement the above functional capabilities are discussed and some experimental and simulation results are illustrated to show the effectiveness of the proposed navigation system.<>
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基于神经网络的移动机器人导航系统
对于自主移动机器人来说,它们应该具有基本的功能能力,例如确定其当前位置和航向角,路径控制以遵循期望的路径以及不确定环境下的局部路径规划。本文讨论了以上三个问题,并说明了如何利用人工神经网络来解决这些问题。这种基于神经网络的导航系统提供了一种确定移动机器人位置的方法——一种带有神经估计器的三维地标传感系统。它还提供了一个基于神经网络的前馈控制器,用于精确跟踪期望的路径,以及一个基于传感器的局部路径规划能力,以适应复杂和变化的环境。讨论了实现上述功能的系统软硬件架构,并给出了一些实验和仿真结果,以证明所提出的导航系统的有效性。
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