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New algorithms for estimating spacecraft position using scanning techniques for Deep Space Network antennas

机译:使用深空网络天线扫描技术估算航天器位置的新算法

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As more and more nonlinear estimation techniques become available, our interest is in finding out what performance improvement, if any, they can provide for practical nonlinear problems that have been traditionally solved using linear methods. In this paper we examine the problem of estimating spacecraft position using conical scan (conscan) for NASA's Deep Space Network antennas. We show that for additive disturbances on antenna power measurement, the problem can be transformed into a linear one, and we present a general solution to this problem, with the least square solution reported in literature as a special case. We also show that for additive disturbances on antenna position, the problem is a truly nonlinear one, and we present two approximate solutions based on linearization and Unscented Transformation respectively, and one "exact" solution based on Markov Chain Monte Carlo (MCMC) method. Simulations show that, with the amount of data collected in practice, linear methods perform almost the same as MCMC methods. It is only when we artificially reduce the amount of collected data and increase the level of noise that nonlinear methods offer better accuracy than that achieved by linear methods, at the expense of more computation.
机译:随着越来越多的非线性估计技术的出现,我们的兴趣是找出性能上的改进(如果有的话)可以解决传统上使用线性方法解决的实际非线性问题。在本文中,我们研究了使用锥形扫描(conscan)估算NASA的深空网络天线的航天器位置的问题。我们表明,对于天线功率测量中的附加扰动,该问题可以转化为线性问题,并且我们针对此问题提出了一种通用解决方案,其中文献报道了最小二乘解作为特例。我们还表明,对于天线位置的附加扰动,该问题是一个真正的非线性问题,我们分别提出了两个基于线性化和无味变换的近似解,以及一个基于马尔可夫链蒙特卡罗(MCMC)方法的“精确”解。仿真显示,在实践中收集的数据量中,线性方法的执行几乎与MCMC方法相同。只有当我们人为地减少收集的数据量并提高噪声水平时,非线性方法才能提供比线性方法更高的准确性,但要付出更多的计算成本。

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