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An Analytical Approach for Comparing Linearization Methods in EKF and UKF

机译:EKF和UKF中的线性化方法比较的分析方法

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The transformation of the mean and variance of a normally distributed random variable was considered through three different nonlinear functions: sin(x), cos(x), and xk, where k is a positive integer. The true mean and variance of the random variable after these transformations is theoretically derived within, and verified with respect to Monte Carlo experiments. These statistics are used as a reference in order to compare the accuracy of two different linearization techniques: analytical linearization used in the Extended Kalman Filter (EKF) and statistical linearization used in the Unscented Kalman Filter (UKF). This comparison demonstrated the advantage of using the unscented transformation in estimating the mean after transforming through each of the considered nonlinear functions. However, the variance estimation led to mixed results in terms of which linearization technique provided the best performance. As an additional analysis, the unscented transformation was evaluated with respect to its primar...
机译:通过三个不同的非线性函数考虑了正态分布随机变量的均值和方差的转换:sin(x),cos(x)和xk,其中k是一个正整数。理论上得出这些变换之后随机变量的真实均值和方差,并相对于蒙特卡洛实验进行了验证。这些统计信息用作参考,以比较两种不同的线性化技术的准确性:扩展卡尔曼滤波器(EKF)中使用的分析线性化和无味卡尔曼滤波器(UKF)中使用的统计线性化。该比较证明了使用无味变换来估计通过每个考虑的非线性函数变换后的均值的优势。但是,在哪种线性化技术提供最佳性能方面,方差估计导致混合结果。作为额外的分析,对无味的转化进行了初步评估。

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