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Efficient Estimation of Variance and Covariance Components: A Case Study for GPS Stochastic Model Evaluation

机译:方差和协方差分量的有效估计:以GPS随机模型评估为例

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The variance and covariance component estimation (VCE) has been extensively investigated. However, in real application, the bottleneck problem is the huge computation burden, particularly when many variance and covariance components are involved for many heterogeneous observations. The objective of this paper is to develop a new method allowing the efficient estimation of variance and covariance components. The core of the new method is to construct an orthogonal complement matrix of the coefficient matrix in a Gauss–Markov model using only the coefficient matrix itself. Therefore, the constructed matrix and the computed discrepancies of measurements with each other, which are the essential inputs for the VCE, are invariant in the iterative procedure of computing the variance and covariance components. As a result, the computation efficiency is significantly improved. As a case study, we apply the new method to evaluate the GPS stochastic model with 15 variance and covariance components demonstrating its superior performance. Comparing with the traditional VCE method, the equivalent results are achievable, and the computation efficiency is improved by 34.2%. In the future, much more sensors will be available, and plentiful data can be acquired. Therefore, the new method will be very promising to efficiently estimate the variance and covariance components of the measurements from the different sensors and reasonably balance their contributions to the fused solution, benefiting the higher time-resolution solutions.
机译:方差和协方差分量估计(VCE)已被广泛研究。然而,在实际应用中,瓶颈问题是巨大的计算负担,尤其是当许多异构观测涉及许多方差和协方差成分时。本文的目的是开发一种新方法,可以有效估计方差和协方差分量。新方法的核心是仅使用系数矩阵本身在高斯-马尔可夫模型中构造系数矩阵的正交补矩阵。因此,作为VCE的基本输入的构造矩阵和计算的彼此的测量差异在计算方差和协方差分量的迭代过程中是不变的。结果,大大提高了计算效率。作为案例研究,我们应用新方法评估了具有15个方差和协方差分量的GPS随机模型,证明了其优越的性能。与传统的VCE方法相比,可以获得等效结果,计算效率提高了34.2%。将来,将会有更多的传感器可用,并且可以获取大量数据。因此,该新方法将很有希望有效地估计来自不同传感器的测量结果的方差和协方差分量,并合理地平衡其对融合解决方案的贡献,从而受益于更高的时间分辨率解决方案。

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