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Tracking maneuvering targets with a soft bound on the number of maneuvers

机译:跟踪机动目标,并限制机动次数

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We revisit the problem of tracking the state of a hybrid system capable of performing a bounded number of mode switches. In a previous paper we have addressed a version of the problem where we have assumed the existence of a deterministic, known hard bound on the number of mode transitions. In addition, it was assumed that the system can possess only two modes, e.g., the maneuvering and non-maneuvering regimes of a tracked target. In the present paper we relax both assumptions: we assume a soft, stochastic bound on the number of mode transitions, and altogether remove the restriction on the number of modes of the system (thus, e.g., the target can have multiple different maneuvering modes, in addition to the non-maneuvering one). Similarly to the case where the number of transition was deterministically hard-bounded, the existence of the bound renders the mode switching mechanism non-Markov. Thus, the two formulations address similar, though not identical, problems, that cannot be solved by direct application of standard algorithms for hybrid systems. The novel solution approach is based on transforming the non-Markovian mode switching mechanism to an equivalent Markovian one, at the price of augmenting the mode definition. A standard interacting multiple model (IMM) filter is then applied to the transformed problem in a straightforward manner. The performance of the new method is demonstrated via a simulation study comprising three examples, in which the new method is compared with 1) the filter for hard-bounded mode transitions, and 2) a standard IMM filter directly applied to the original problem. The study shows that even when working outside its operating envelope, the new filter closely approximates the best filter for the scenario.
机译:我们再次探讨了跟踪能够执行有限数量的模式切换的混合系统状态的问题。在上一篇文章中,我们讨论了该问题的一种版本,其中我们假定存在模式转换数量上的确定性已知硬边界。另外,假设该系统只能具有两种模式,例如被跟踪目标的机动和非机动状态。在本文中,我们放宽了两个假设:我们假设对模式转换的数量具有柔和的随机约束,并且完全消除了对系统模式数量的限制(因此,例如,目标可以具有多种不同的操纵模式,除了非机动性之一)。与确定过渡次数是硬性限制的情况类似,该限制的存在使模式切换机制成为非马尔可夫机制。因此,这两种表述解决了相似但并非完全相同的问题,这些问题无法通过直接将标准算法应用于混合系统来解决。新颖的解决方案方法基于将非马尔可夫模式切换机制转换为等效的马尔可夫模式,其代价是增加了模式定义。然后,以简单的方式将标准的交互多模型(IMM)过滤器应用于转换后的问题。通过包含三个示例的仿真研究证明了该新方法的性能,其中将新方法与1)用于硬边界模式转换的滤波器以及2)直接应用于原始问题的标准IMM滤波器进行了比较。研究表明,即使在超出其工作范围的情况下工作,新的过滤器也可以非常接近该情况下的最佳过滤器。

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