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首页> 外文期刊>Nature reviews Cancer >Algorithm with Patterned Singular Value Approach for Highly Reliable Autonomous Star Identification
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Algorithm with Patterned Singular Value Approach for Highly Reliable Autonomous Star Identification

机译:具有高可靠性自主星识别的图案奇异值方法的算法

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摘要

In the work reported in this paper, a lost-in-space star pattern identification algorithm for agile spacecraft was studied. Generally, the operation of a star tracker is known to exhibit serious degradation or even failure during fast attitude maneuvers. While tracking methods are widely used solutions to handle the dynamic conditions, they require prior information about the initial orientation. Therefore, the tracking methods may not be adequate for autonomy of attitude and control systems. In this paper a novel autonomous identification method for dynamic conditions is proposed. Additional constraints are taken into account that can significantly decrease the number of stars imaged and the centroid accuracy. A strategy combining two existing classes for star pattern identification is proposed. The new approach is intended to provide a unique way to determine the identity of stars that promises robustness against noise and rapid identification. Moreover, representative algorithms implemented in actual space applications were utilized as counterparts to analyze the performance of the proposed method in various scenarios. Numerical simulations show that the proposed method is not only highly robust against positional noise and false stars, but also guarantees fast run-time, which is appropriate for high-speed applications.
机译:在本文报道的工作中,研究了敏捷宇宙飞船的空间丢失的星形模式识别算法。通常,已知星形跟踪器的操作在快速姿态操纵期间表现出严重的降解甚至发生故障。虽然跟踪方法是广泛使用的解决方案来处理动态条件,但它们需要有关初始方向的先前信息。因此,跟踪方法可能不适合姿态和控制系统的自主权。本文提出了一种新的动态条件的自主识别方法。考虑其他约束,可以显着降低成像的恒星数量和质心精度。提出了一种结合两个现有的星形模式识别类别的策略。新方法旨在提供一种独特的方法来确定承诺对抗噪声和快速识别的稳健性的恒星的身份。此外,在实际空间应用中实现的代表性算法被用作分析在各种场景中提出的方法的性能。数值模拟表明,该方法不仅对位置噪声和假恒星的高度稳健,而且还可以保证快速的运行时间,这适用于高速应用。

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