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The two-step optimal estimator and example applications

机译:两步最优估计器和示例应用

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The two-step filter is a new approach for nonlinear recursive estimation that substantially improves the estimate error relative to the extended Kalman Filter (EKF) or the iterated extended Kalman filter (IEKF). Historically, when faced with an optimal estimation problem involving a set of nonlnear measurements, designers have been forced to choose between optimal, but off-line, iterative batch techniques or sub-optimal, approximate techniques, typically the EKF or IEKF. These techniques linearize the measurements and dynamics to take advantage of the well known Kalman filter equations. While broadly used, these filters typically resutl in sub-optimal and biased estiamtes and often can go unstable. The two-step estimator, introduced in 1996, provides a dramatic improvement over these filters for situations with nonlinear measurements. It accomplishes this by dividing the estimation problem (a quadratic minimization) into two-steps - a linear first step and a non-linear second step. The resutl is a filter that comes much closer to minimzing the desired cost, virtually eliminating any biases and dramatically reducing the mean-square error relative to the EKF. This paper presents an overview of the two-step estimator, outlining the derivation of the two-step measurement update and cost function minimization. It also presents the newest time update, resulting in a robust and accurate estimation technique. This presentation is followed by several simple aerospace examples to illustrate the utility of the filter and its improvement over the EKF and IEKF. These include both open loop estimation and closed loop control applications.
机译:两步滤波器是一种用于非线性递归估计的新方法,相对于扩展卡尔曼滤波器(EKF)或迭代扩展卡尔曼滤波器(IEKF),该方法大大提高了估计误差。从历史上看,当面对涉及一组非在线测量的最佳估计问题时,设计人员不得不选择最佳但离线的迭代批处理技术或次优近似技术(通常为EKF或IEKF)之间进行选择。这些技术使测量和动力学线性化,以利用众所周知的卡尔曼滤波器方程式。虽然这些滤波器得到广泛使用,但通常会导致其效果欠佳且存在偏见,并且经常会变得不稳定。 1996年推出的两步估算器在非线性测量情况下对这些滤波器进行了重大改进。它通过将估计问题(二次最小化)分为两步来完成:线性第一步和非线性第二步。结果是一种滤波器,它更接近于最小化所需的成本,实际上消除了任何偏差,并相对于EKF大大降低了均方误差。本文概述了两步估算器,概述了两步测量更新和成本函数最小化的推导。它还提供了最新的时间更新,从而实现了强大而准确的估算技术。在此演示之后,将提供几个简单的航空示例,以说明该过滤器的用途及其相对于EKF和IEKF的改进。这些包括开环估计和闭环控制应用。

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