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Improved relocatable over-the-horizon radar detection and tracking using the maximum likelihood adaptive neural system algorithm

机译:使用最大似然自适应神经系统算法改进的可重定位超视距雷达检测和跟踪

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An advanced detection and tracking system is being developed for the U.S. Navy's Relocatable Over-the-Horizon Radar (ROTHR) to provide improved tracking performance against small aircraft typically used in drug-smuggling activities. The development is based on the Maximum Likelihood Adaptive Neural System (MLANS), a model-based neural network that combines advantages of neural network and model-based algorithmic approaches. The objective of the MLANS tracker development effort is to address user requirements for increased detection and tracking capability in clutter and improved track position, heading, and speed accuracy. The MLANS tracker is expected to outperform other approaches to detection and tracking for the following reasons. It incorporates adaptive internal models of target return signals, target tracks and maneuvers, and clutter signals, which leads to concurrent clutter suppression, detection, and tracking (track-before-detect). It is not combinatorial and thus does not require any thresholding or peak picking and can track in low signal-to-noise conditions. It incorporates superresolution spectrum estimation techniques exceeding the performance of conventional maximum likelihood and maximum entropy methods. The unique spectrum estimation method is based on the Einsteinian interpretation of the ROTHR received energy spectrum as a probability density of signal frequency. The MLANS neural architecture and learning mechanism are founded on spectrum models and maximization of the “Einsteinian” likelihood, allowing knowledge of the physical behavior of both targets and clutter to be injected into the tracker algorithms. The paper describes the addressed requirements and expected improvements, theoretical foundations, engineering methodology, and results of the development effort to date.
机译:美国海军正在开发一种先进的检测和跟踪系统,用于可移动的超视距雷达(ROTHR),以提高对通常用于毒品走私活动的小型飞机的跟踪性能。该开发基于最大似然自适应神经系统(MLANS),这是一种基于模型的神经网络,将神经网络和基于模型的算法方法的优点相结合。 MLANS跟踪器开发工作的目标是满足用户对在混乱中增强检测和跟踪能力以及改善跟踪位置,航向和速度精度的要求。出于以下原因,预计MLANS跟踪器的性能将优于其他检测和跟踪方法。它结合了目标返回信号,目标跟踪和操纵以及杂波信号的自适应内部模型,从而导致同时进行杂波抑制,检测和跟踪(检测前跟踪)。它不是组合的,因此不需要任何阈值或峰值拾取,并且可以在低信噪条件下进行跟踪。它结合了超分辨率频谱估计技术,其性能超过了传统的最大似然和最大熵方法。独特的频谱估计方法基于ROTHR接收到的能谱作为信号频率的概率密度的爱因斯坦解释。 MLANS神经体系结构和学习机制建立在频谱模型和“爱因斯坦”可能性最大化的基础上,从而允许将有关目标和杂物的物理行为的知识注入到跟踪器算法中。本文介绍了已解决的需求和预期的改进,理论基础,工程方法论以及迄今为止的开发成果。

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