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首页> 外文期刊>IEEE Transactions on Control Systems Technology >Bearings-Only Tracking Using Augmented Ensemble Kalman Filter
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Bearings-Only Tracking Using Augmented Ensemble Kalman Filter

机译:使用增强合奏卡尔曼滤波器的轴承跟踪

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摘要

Tracking targets with bearings-only measurement is a great challenge caused by poor observability and highly nonlinear estimation. In this brief, a novel augmented ensemble Kalman filter (AEnKF) is presented to address this bearings-only tracking problem. Different from the conventional ensemble Kalman filter (EnKF), the AEnKF overcomes the limitation of the linear measurement update rule in the linear minimum mean-square error (LMMSE) framework. The AEnKF utilizes a nonlinear transform of the measurement, called uncorrelated conversion (UC), to augment the measurement space. This conversion serves as a pseudomeasurement and is uncorrelated with the original measurement statistically. Unlike other UC filters based on the Gaussian assumption in the existing literature, the AEnKF does not impose any assumption on the probability density of the measurement by using generalized orthogonal polynomials to construct the UCs in a systematic way. The simulation results show that the AEnKF outperforms the conventional EnKF and other UC filters in the bearings-only tracking problem.
机译:跟踪具有轴承的目标,仅测量是由于可观察性和高度非线性估计造成的巨大挑战。在此简介中,提出了一种新型的增强集合卡尔曼滤波器(AENKF)以解决这种轴承的跟踪问题。与传统的集合Kalman滤波器(ENKF)不同,AENKF克服了线性最小均方误差(LMMSE)框架中的线性测量更新规则的限制。 AENKF利用了测量的非线性变换,称为不相关的转换(UC),以增加测量空间。该转换用作伪级测量,统计上具有原始测量的不相关性。与基于现有文献中的高斯假设的其他UC滤波器不同,AENKF通过使用广义正交多项式以系统方式构造UCS构建UC的测量的概率密度不施加任何假设。仿真结果表明,AENKF在轴承跟踪问题中优于传统的ENKF和其他UC滤波器。

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