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New algorithm for continuous-discrete filtering with randomly delayed measurements

机译:具有随机延迟测量的连续离散滤波的新算法

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摘要

The filtering of non-linear continuous-discrete systems is widely applicable in real-life and extensive literature is available to deal with such problems. However, all of these approaches are constrained with the assumption that the current measurement is available at every time step, although delay in measurement is natural in real-life applications. To deal with this problem, the authors re-derive the conventional Bayesian approximation framework for solving the continuous-discrete filtering problems. In practice, the delay is often smaller than one sampling time, which is the main case considered here. During the filtering of such systems, the actual time of correspondence should be known for a measurement received at the kth time instant. In this study, a simple and intuitively justified cost function is used to decide the time to which the measurement at the kth time instant actually corresponds. The performance of the proposed filter is compared with a conventional filter based on numerical integration which ignores random delays for a continuous-discrete tracking problem. They show that the conventional filter fails to track the target while the modification proposed in this study successfully deals with random delays. The proposed method may be seen as a valuable addition to the tools available for continuous-discrete filtering in non-linear systems.
机译:非线性连续离散系统的滤波可广泛应用于现实生活中,并且有大量文献可以解决此类问题。但是,尽管在实际应用中自然会出现测量延迟,但所有这些方法都受到这样一个假设的约束:当前测量在每个时间步均可用。为了解决这个问题,作者重新推导了传统的贝叶斯近似框架,以解决连续离散滤波问题。实际上,延迟通常小于一个采样时间,这是此处考虑的主要情况。在此类系统的过滤过程中,应该知道第k个时刻接收到的测量的实际对应时间。在这项研究中,使用了一个简单直观的合理成本函数来确定第k个时刻的测量实际对应的时间。将所提出的滤波器的性能与基于数值积分的常规滤波器进行比较,后者忽略了连续离散跟踪问题的随机延迟。他们表明,常规滤波器无法跟踪目标,而本研究中提出的修改成功地解决了随机延迟问题。所提出的方法可以看作是对非线性系统中连续离散滤波可用工具的宝贵补充。

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