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Multipath Mitigation in Global Navigation Satellite Systems Using a Bayesian Hierarchical Model With Bernoulli Laplacian Priors

机译:使用贝努利拉普拉斯先验的贝叶斯层次模型在全球导航卫星系统中的多径缓解

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A new sparse estimation method was recently introduced in a previous work to correct biases due to multipath (MP) in GNSS measurements. The proposed strategy was based on the resolution of a LASSO problem constructed from the navigation equations using the reweighted $-ell _{1}$ method. This strategy requires to adjust the regularization parameters balancing the data fidelity term and the involved regularizations. This paper introduces a new Bayesian estimation method allowing the MP biases and the unknown model parameters and hyperparameters to be estimated directly from the GNSS measurements. The proposed method is based on Bernoulli-Laplacian priors, promoting sparsity of MP biases.
机译:最近在以前的工作中引入了一种新的稀疏估计方法,以纠正由于GNSS测量中的多径(MP)而引起的偏差。所提出的策略是基于对使用重新加权的$-\ ell _ {1} $方法从导航方程构建的LASSO问题的解决方案。此策略需要调整正则化参数,以平衡数据保真度项和所涉及的正则化。本文介绍了一种新的贝叶斯估计方法,该方法允许直接从GNSS测量中估计出MP偏差以及未知的模型参数和超参数。所提出的方法基于伯努利-拉普拉斯先验,促进了MP偏差的稀疏性。

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