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首页> 外文期刊>Journal of Geodesy >A generalized Kalman filter with its precision in recursive form when the stochastic model is misspecified
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A generalized Kalman filter with its precision in recursive form when the stochastic model is misspecified

机译:当Senchastic模型被遗漏时,通过其精度以递归形式进行精度的广义卡尔曼滤波器

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摘要

In this contribution, we introduce a generalized Kalman filter with precision in recursive form when the stochastic model is misspecified. The filter allows for a relaxed dynamic model in which not all state vector elements are connected in time. The filter is equipped with a recursion of the actual error-variance matrices so as to provide an easy-to-use tool for the efficient and rigorous precision analysis of the filter in case the underlying stochastic model is misspecified. Different mechanizations of the filter are presented, including a generalization of the concept of predicted residuals as needed for the recursive quality control of the filter.
机译:在这一贡献中,我们在误操作时,我们在递抄模型时介绍了一个具有精度的递归形式的通用卡尔曼滤波器。 过滤器允许放松的动态模型,其中并非所有状态向量元素都在时间上连接。 该滤波器配备有实际误差方差矩阵的递归,以便为底层随机模型被遗漏,提供易于使用的工具,以便在底层随机模型进行筛选。 呈现过滤器的不同机械化,包括根据滤波器递归质量控制的预测残留概念的概念。

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