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Error Distribution And Confidence Bounds For Recursive Estimators In Nonlinear State-space Models

机译:非线性状态空间模型中递归估计的误差分布和置信界

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Consider a nonlinear dynamic system where one wishes to estimate a state vector using noisy measurements. Many algorithms have been proposed to address this problem, among them the extended Kalman filter (and its variants) and constant gain stochastic approximation. To quantify the efficacy of these algorithms, it is necessary to describe the distribution of the state estimation error. Typically, performance has been measured by the estimation error covariance alone, which does not provide enough information to probabilistically quantify the estimation accuracy. By casting the estimation error in an autoregressive form, this pa- per addresses the broader question of the distribution of the error for a general class of recursive algorithms.
机译:考虑一种非线性动态系统,其中希望使用噪声测量来估计状态向量。已经提出了许多算法来解决这个问题,其中包括扩展的卡尔曼滤波器(及其变型)和恒定增益随机逼近。为了量化这些算法的有效性,有必要描述状态估计误差的分布。通常,仅通过估计误差协方差来衡量性能,这不能提供足够的信息来概率性地估计估计精度。通过将估计误差转换为自回归形式,该论文解决了一般递归算法类别中误差分布的更广泛问题。

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