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Statistical Orbit Determination using the Particle Filter for incorporating Non-Gaussian Uncertainties

机译:使用粒子滤波器合并非高斯不确定性的统计轨道确定

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The tracking of space objects requires frequent and accurate monitoring for collision avoidance. As even collision events with very low probability are important, accurate prediction of collisions require the representation of the full probability density function (PDF) of the random orbit state. Through representing the full PDF of the orbit state for orbit maintenance and collision avoidance, we can take advantage of the statistical information present in the heavy tailed distributions, more accurately representing the orbit states with low probability. The classical methods of orbit determination (i.e. Kalman Filter and its derivatives) provide state estimates based on only the second moments of the state and measurement errors that are captured by assuming a Gaussian distribution. Although the measurement errors can be accurately assumed to have a Gaussian distribution, errors with a non-Gaussian distribution could arise during propagation between observations. Moreover, unmodeled dynamics in the orbit model could introduce non-Gaussian errors into the process noise. A Particle Filter (PF) is proposed as a nonlinear filtering technique that is capable of propagating and estimating a more complete representation of the state distribution as an accurate approximation of a full PDF. The PF uses Monte Carlo runs to generate particles that approximate the full PDF representation. The PF is applied in the estimation and propagation of a highly eccentric orbit and the results are compared to the Extended Kalman Filter and Splitting Gaussian Mixture algorithms to demonstrate its proficiency.
机译:空间对象的跟踪需要频繁准确地监控碰撞避免。由于甚至概率概率非常低的概率是重要的,准确的碰撞预测需要随机轨道状态的全概率密度函数(PDF)的表示。通过代表轨道状态的轨道状态的完整PDF,我们可以利用沉重的分布中存在的统计信息,更准确地表示具有低概率的轨道状态。轨道确定的经典方法(即Kalman滤波器及其衍生物)基于仅通过假设高斯分布捕获的状态和测量误差的第二矩提供状态估计。尽管可以准确地假设测量误差具有高斯分布,但是在观测之间的传播期间可能会出现具有非高斯分布的错误。此外,轨道模型中的未铭刻动态可以将非高斯误差引入过程噪声中。粒子滤波器(PF)被提出为非线性滤波技术,其能够将状态分布的更完整的表示传播和估计为完整PDF的精确近似。 PF使用Monte Carlo运行以生成近似全PDF表示的粒子。 PF应用于高度偏心轨道的估计和传播,并将结果与​​扩展的卡尔曼滤波器和分裂高斯混合算法进行比较,以证明其熟练程度。

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