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The Application of Adaptive Extended Kalman Filter in Mobile Robot Localization

机译:自适应扩展卡尔曼滤波器在移动机器人本地化中的应用

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An adaptive extended kalman filter (AEKF) algorithm is proposed to resolve the problem of the error accumulation in the process of mobile robot localization. We take the Taylor series of sampling time in AEKF and use the Sage-Husa time-varying noise estimator to estimate observation noise in real time. Meanwhile, the convergence and the complexity of operation of AEKF are analyzed and the experiments show that AEKF has a good comprehensive performance in terms of speed and precision. Finally, two kinds of robot localization algorithm are analyzed and the error is compared with the experiment, that shows AEKF has a better performance.
机译:提出了一种自适应扩展卡尔曼滤波器(AEKF)算法以解决移动机器人定位过程中的误差累积问题。我们在AEKF中采取泰勒系列采样时间,并使用Sage-Husa时变噪声估计器实时估计观察噪声。同时,分析了AEKF操作的收敛性和复杂性,实验表明,AEKF在速度和精度方面具有良好的综合性能。最后,分析了两种机器人定位算法,并将误差与实验进行比较,显示AEKF具有更好的性能。

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