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An algorithm for reducing atmospheric density model errors using satellite observation data in real-time

机译:一种利用卫星观测数据实时降低大气密度模型误差的算法

摘要

Atmospheric density mismodeling is a large source of errors in satellite orbit determination and prediction in the 200-600 kilometer range. Algorithms for correcting or "calibrating" an existing atmospheric density model to improve accuracy have been seen as a major way to reduce these errors. This thesis examines one particular algorithm, which does not require launching special "calibration satellites" or new sensor platforms. It relies solely on the large quantity of observations of existing satellites, which are already being made for space catalog maintenance. By processing these satellite observations in near real-time, a linear correction factor can be determined and forecasted into the near future. As a side benefit, improved estimates of the ballistic coefficients of some satellites are also produced. Also, statistics concerning the accuracy of the underlying density model can also be extracted from the correction. This algorithm had previously been implemented and the implementation had been partially validated using simulated data. This thesis describes the completion of the validation process using simulated data and the beginning of the real data validation process. It is also intended to serve as a manual for using and modifying the implementation of the algorithm.
机译:在200-600公里范围内,大气密度模型失误是造成卫星轨道确定和预测误差的主要原因。纠正或“校准”现有大气密度模型以提高精度的算法已被视为减少这些误差的主要方法。本文研究了一种特殊的算法,该算法不需要发射特殊的“校准卫星”或新的传感器平台。它仅依靠对现有卫星的大量观测,而这些卫星已经用于空间目录维护。通过近实时地处理这些卫星观测,可以确定线性校正因子并将其预测到不久的将来。作为附带的好处,还产生了对某些卫星弹道系数的改进估计。同样,还可以从校正中提取与基础密度模型的准确性有关的统计信息。该算法先前已实现,并且使用模拟数据已部分验证了实现。本文描述了使用模拟数据完成验证过程以及实际数据验证过程的开始。它还旨在用作使用和修改算法实现的手册。

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