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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A SLAM Algorithm Based on Adaptive Cubature Kalman Filter
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A SLAM Algorithm Based on Adaptive Cubature Kalman Filter

机译:一种基于自适应Cubature Kalman滤波器的SLAM算法

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摘要

We need to predict mathematical model of the system and a priori knowledge of the noise statistics when traditional simultaneous localization and mapping (SLAM) solutions are used. However, in many practical applications, prior statistics of the noise are unknown or time-varying, which will lead to large estimation errors or even cause divergence. In order to solve the above problem, an innovative cubature Kalman filter-based SLAM (CKF-SLAM) algorithm based on an adaptive cubature Kalman filter (ACKF) was established in this paper. The novel algorithm estimates the statistical parameters of the unknown system noise by introducing the Sage-Husa noise statistic estimator. Combining the advantages of theCKF-SLAM and the adaptive estimator, the new ACKF-SLAM algorithm can reduce the state estimated error significantly and improve the navigation accuracy of the SLAM system effectively. The performance of this new algorithm has been examined through numerical simulations in different scenarios. The results have shown that the position error can be effectively reduced with the new adaptive CKF-SLAM algorithm. Compared with other traditional SLAM methods, the accuracy of the nonlinear SLAM system is significantly improved. It verifies that the proposed ACKF-SLAM algorithm is valid and feasible.
机译:我们需要预测系统的数学模型以及使用传统的同时定位和映射(SLAM)解决方案时噪声统计的先验知识。然而,在许多实际应用中,噪声的先前统计数据未知或时变,这将导致大的估计误差甚至导致发散。为了解决上述问题,在本文中建立了一种基于基于Cucature Kalman滤波器的SLAM(CKF-SLAM)算法,本文建立了基于自适应Cubature Kalman滤波器(Ackf)。新颖算法通过引入Sage-Husa噪声统计估计器来估计未知系统噪声的统计参数。结合TheckF-SLAM和自适应估计器的优点,新的ACKF-SLAM算法可以显着降低状态估计误差,从而有效地提高了SLAM系统的导航精度。通过不同场景中的数值模拟检查了这种新算法的性能。结果表明,通过新的自适应CKF-SLAM算法可以有效地减少位置误差。与其他传统的SLAM方法相比,非线性SLAM系统的准确性得到了显着改善。它验证了所提出的Ackf-Slam算法是有效和可行的。

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