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首页> 外文期刊>Mathematical Problems in Engineering >Trajectory Planning for Nonholonomic Mobile Robot Using Extended Kalman Filter
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Trajectory Planning for Nonholonomic Mobile Robot Using Extended Kalman Filter

机译:基于扩展卡尔曼滤波的非完整移动机器人的轨迹规划

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摘要

In the mobile robotic systems, a precise estimate of the robot pose with the intention of the optimization in the path planning is essential for the correct performance, on the part of the robots, for tasks that are destined to it. This paper describes the use of RF digital signal interacting with beacons for computational triangulation in the way to provide a pose estimative at bidimensional indoor environment, where GPS system is out of range. This methodology takes advantage of high-performance multicore DSP processors to calculate ToF of the order about ns. Sensors data like odometry, compass, and the result of triangulation Cartesian estimative, are fused for better position estimative. It uses a mathematical and computational tool for nonlinear systems with time-discrete sampling for pose estimative calculation of mobile robots, with the utilization of extended Kalman filter (EKF). A mobile robot platform with differential drive and nonholonomic constraints is used as a base for state space, plants and measurements models that are used in the simulations and validation of the experiments.
机译:在移动机器人系统中,要进行路径规划的优化,精确估计机器人的姿势对于正确执行机器人的性能至关重要,对于机器人而言,这是针对目标任务的。本文介绍了如何将RF数字信号与信标交互以进行计算三角测量,以便在GPS系统超出范围的二维室内环境中提供姿势估计。该方法利用高性能多核DSP处理器来计算大约ns的ToF。诸如里程计,指南针和三角测量笛卡尔估计结果之类的传感器数据经过融合,以获得更好的位置估计。它使用带有离散离散采样的非线性系统的数学和计算工具,利用扩展卡尔曼滤波器(EKF)来对移动机器人的姿态进行估算。具有差动驱动和非完整约束的移动机器人平台用作状态空间,工厂和测量模型的基础,这些模型用于仿真和实验验证。

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