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首页> 外文期刊>Journal of guidance, control, and dynamics >Space Object Shape Characterization and Tracking Using Light Curve and Angles Data
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Space Object Shape Characterization and Tracking Using Light Curve and Angles Data

机译:利用光曲线和角度数据进行空间物体形状表征和跟踪

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摘要

This paper presents a new method, based on a multiple-model adaptive estimation approach, to determine the most probable shape of a resident space object among a number of candidate shape models while simultaneously recovering the observed resident space object's inertial orientation and trajectory. Multiple-model adaptive estimation uses a parallel bank of filters, each operating under a different hypothesis to determine an estimate of the physical system under consideration. In this work, the shape model of the resident space object constitutes the hypothesis. Estimates of the likelihood of each hypothesis, given the available measurements, are provided from the multiple-model adaptive estimation approach. The multiple-model adaptive estimation state estimates are determined using a weighted average of the individual filter estimates, whereas the shape estimate is selected as the shape model with the highest likelihood. Each filter employs the unscented estimation approach, reducing passively collected electro-optical data to infer the unknown state vector composed of the resident space object's inertial-to-body orientation, position, and respective temporal rates. Each hypothesized shape model results in a different observed optical cross-sectional area. The effects of solar radiation pressure may be recovered from accurate angles data alone, if the collected measurements span a sufficiently long period of time, so as to make the nonconservative mismodeling effects noticeable. However, for relatively short arcs of data, this effect is weak, and thus the temporal brightness of the resident space object can be used in conjunction with the angles data to exploit the fused sensitivity to both the resident space object shape model and associated trajectory. Initial simulation results show that the resident space object model and states can be recovered accurately with the proposed approach.
机译:本文提出了一种基于多模型自适应估计方法的新方法,该方法可以确定多个候选形状模型中最可能的居民空间物体形状,同时恢复观测到的居民空间物体的惯性方向和轨迹。多模型自适应估计使用并行的滤波器组,每个滤波器在不同的假设下运行,以确定所考虑物理系统的估计。在这项工作中,居住空间物体的形状模型构成了假设。给定可用的度量,可以从多模型自适应估计方法中获得每个假设的可能性估计。使用各个滤波器估计的加权平均值确定多模型自适应估计状态估计,而选择形状估计作为具有最高似然性的形状模型。每个滤波器采用无味估计方法,减少了被动收集的电光数据,以推断由居住空间物体的惯性到人体的方向,位置和相应的时间速率组成的未知状态向量。每个假设的形状模型都会导致观察到的光学横截面面积不同。如果收集的测量值跨越足够长的时间段,则可以仅从准确的角度数据中恢复太阳辐射压力的影响,从而使非保守的误建模影响显着。但是,对于较短的数据弧,此效果较弱,因此可以将常驻空间对象的时间亮度与角度数据结合使用,以利用对常驻空间对象形状模型和关联轨迹的融合敏感性。初步的仿真结果表明,该方法可以准确地恢复居民空间物体的模型和状态。

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  • 来源
    《Journal of guidance, control, and dynamics》 |2014年第1期|13-25|共13页
  • 作者单位

    University at Buffalo, State University of New York, Amherst, New York 14260-4400,Department of Mechanical & Aerospace Engineering;

    U.S. Air Force Research Laboratory, Kirtland Air Force Base, New Mexico 87117;

    University at Buffalo, State University of New York, Amherst, New York 14260-4400,Department of Mechanical & Aerospace Engineering;

    University at Buffalo, State University of New York, Amherst, New York 14260-4400,Department of Mechanical & Aerospace Engineering;

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