This paper presents an algorithm for the preprocessing of observation data aimed at improving the robustness of orbit determination tools. Two objectives are fulfilled: obtain a refined solution to the initial orbit determination problem and detect possible outliers in the processed measurements. The uncertainty on the initial estimate is propagated forward in time and progressively reduced by exploiting sensor data available in said propagation window. Differential algebra techniques and a novel automatic domain splitting algorithm for second-order Taylor expansions are used to efficiently propagate uncertainties over time. A multifidelity approach is employed to minimize the computational effort while retaining the accuracy of the propagated estimate. At each observation epoch, a polynomial map is obtained by projecting the propagated states onto the observable space. Domains that do no overlap with the actual measurement are pruned thus reducing the uncertainty to be further propagated. Measurement outliers are also detected in this step. The refined estimate and pruned observations are then used to improve the robustness of batch orbit determination tools. The effectiveness of the algorithm is demonstrated for a geostationary transfer orbit object using synthetic and real observation data from the TAROT network.
翻译:本文件介绍了旨在改进轨道确定工具稳健性的观测数据预处理前的算法。实现了两个目标:对最初的轨道确定问题找到一个精细的解决方案,并发现在经过处理的测量中可能存在的异常点。初步估计的不确定性会及时传播,并通过利用上述传播窗口中现有的传感器数据逐步减少。不同代数技术和用于第二阶泰勒扩张的新型自动域分割算法被用于在一段时间内有效传播不确定性。采用了多纤维性方法尽量减少计算努力,同时保留所传播的估计的准确性。在每一次观测中,通过在可观测空间上预测传播的状态获得一个多元图。与实际测量没有重叠的域被切割,从而减小了有待进一步推广的不确定性。在这一步骤中,还检测了测量外端。随后,将精确的估计数和经调整的观测用于提高批次轨道确定工具的稳健性。该算法的有效性表现在利用TAROT网络的合成和真实观测数据对地静止转移轨道物体进行了论证。</s>