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An Improved Approach of Terrain-Aided Navigation Based on RBPF

机译:基于RBPF的地形辅助导航改进方法

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Rao-Blackwellized Particle Filter (RBPF) is suitable for solving the linear/nonlinear mixed Terrain-Aided Navigation (TAN) problem. But the Particle Filter (PF) part of RBPF is Standard Particle Filter (SPF), causing particle diversity reduction and even filter's divergence under extreme conditions. To get a better estimation of the errors of INS, this paper proposes an improved approach called Regularized Rao-Blackwellized Particle Filter (RRBPF). After updating the nonlinear state and corresponding importance weights, RRBPF resamples from the Epanechnikov kernel and then get the resampled particles through a linear transition process. Theoretically, the resampling part of RRBPF is equivalent to resampling from the approximated continuous posterior probability density function. Shuttle Radar Topography Mission (SRTM) terrain data is used in simulations to investigate the performance of RRBPF. Results show that RRBPF can provide more accurate estimation of TAN and bear larger initial position error than Sandia Inertial Terrain Aided Navigation (SITAN).
机译:Rao-Blackwellated粒子过滤器(RBPF)适用于求解线性/非线性混合地形辅助导航(TAN)问题。但RBPF的粒子过滤器(PF)部分是标准颗粒过滤器(SPF),导致颗粒分集减少甚至过滤在极端条件下的发散。为了更好地估计INS错误,本文提出了一种改进的方法,称为正规化的RAO-Blackwellized粒子过滤器(RRBPF)。在更新非线性状态和相应的重要性权重之后,RRBPF从EPANECHNIKOV内核重新开始,然后通过线性转换过程获取重采样的粒子。理论上,RRBPF的重采样部分等同于从近似连续的后验概率密度函数重采样。 Shuttle Radar地形使命(SRTM)地形数据用于模拟以研究RRBPF的性能。结果表明,RRBPF可以提供更准确的TAN估计,并且比桑迪亚惯性地形辅助导航(SITAN)承受更大的初始位置误差。

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