利用累积态密度的轨道到轨道聚变的精确解决方案

W. Koch, F. Govaers, A. Charlish
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引用次数: 9

摘要

积累态密度(ASD)最初被提出是为了精确解决无序测量问题。为此,推导了单个传感器场景下所有状态随时间累积的关节密度的后验。T2TF的精确解已经发表为分布式卡尔曼滤波器(DKF)。然而,DKF只有在所有传感器的测量模型方面的全局知识在本地处理器上可用时才是准确的。本文证明T2TF的精确解也可以通过在分布式传感器系统中每个节点生成的局部asd的凸组合来实现。这种方法与DKF的关键区别在于,在不要求每个处理平台了解全局信息的情况下,可以获得精确的解决方案。因此,这一理论发展对于在实际问题中实现精确的T2TF具有重要的潜力。产生的算法称为分布式累积状态密度(DASD)过滤器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An exact solution to track-to-track fusion using accumulated state densities
Originally the Accumulated State Density (ASD) has been proposed to provide an exact solution to the out-of-sequence measurement problem. To this end, the posterior of the joint density of all states accumulated over time was derived for a single sensor scenario. An exact solution for T2TF has been published as the Distributed Kalman Filter (DKF). However, the DKF is exact only if global knowledge in terms of the measurement models for all sensors are available at a local processor. This paper demonstrates that an exact solution for T2TF can also be achieved as a convex combination of local ASDs generated at each node in a distributed sensor system. This method crucially differs from the DKF, in that an exact solution is achieved without each processing platform being required to have knowledge of the global information. Therefore, this theoretical development has significant potential for achieving exact T2TF in practical problems. The resulting algorithm is called the Distributed Accumulated State Density (DASD) filter.
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