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首页> 外文期刊>Journal of Automation and Control >An ANN Based NARX GPS/DR System for Mobile Robot Positioning and Obstacle Avoidance
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An ANN Based NARX GPS/DR System for Mobile Robot Positioning and Obstacle Avoidance

机译:基于ANN的NARX GPS / DR系统用于移动机器人的定位和避障

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摘要

Conventional sensor integration and navigation methods are based on the Kalman filter algorithm. Kalman filter needs a pre-defined model of the dynamic system. In most of the case non-linear system modeling might be a changing computational load. Artificial Neural Network (ANN) computing is a very powerful tool for solving non-linear problems involving mapping input and output relation without any prior knowledge of the system and the environment involved. This study has investigated Global Positioning System (GPS) and Dead Reckoning (DR) sensor fusion approach using ANN Nonlinear Autoregressive with external input (NARX) model. The ANN accepts navigation sensor data and is trained throughout a pre-design training track for gathering training data set which is used to predict mobile robot position where GPS signal is lost. In addition, a simple obstacle avoidance algorithm has been added to the system because the mobile robot can find its own trajectory again by circulates around the obstacle. The experimental results for different test data examples demonstrate that the proposed ANN NARX sensor fusion model can be used for reliable position and heading estimation of the mobile robot.
机译:常规的传感器集成和导航方法基于卡尔曼滤波算法。卡尔曼滤波器需要动态系统的预定义模型。在大多数情况下,非线性系统建模可能是不断变化的计算负荷。人工神经网络(ANN)计算是一种非常强大的工具,可以解决涉及映射输入和输出关系的非线性问题,而无需事先了解系统和所涉及的环境。这项研究研究了使用ANN非线性自回归和外部输入(NARX)模型的全球定位系统(GPS)和航位推算(DR)传感器融合方法。 ANN接受导航传感器数据,并在整个预设计训练轨道上进行训练,以收集训练数据集,该数据集用于预测GPS信号丢失的移动机器人位置。此外,由于移动机器人可以通过绕障碍物循环再次找到自己的轨迹,因此已向系统中添加了一种简单的避障算法。不同测试数据示例的实验结果表明,所提出的ANN NARX传感器融合模型可用于移动机器人的可靠位置和航向估计。

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