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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A Novel Probabilistic Approach for Vehicle Position Prediction in Free, Partial, and Full GPS Outages
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A Novel Probabilistic Approach for Vehicle Position Prediction in Free, Partial, and Full GPS Outages

机译:一种用于免费,部分和全部GPS中断的车辆位置预测的新型概率方法

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摘要

In this paper, a novel framework is developed with the intention of continuously predicting vehicle position even in the challenging environments such as partial and full GPS outages. To achieve this, the Bayesian-Sparse Random Gaussian Prediction (B-SRGP) approach is proposed where the sparse random Gaussian matrix which obeys the restricted isometry property with high probability is adopted to handle the measurement model. During the full GPS outages, the proposed method fuses all available INS measurements to improve the vehicle positionprediction whereas in free outages only the GPS data are processed. Besides, the Bayesian inference is used to specifically deal with the vehicle position prediction in partial GPS outages where data from both GPS and INS are taken as inputs. In all cases, measurement noises areassumed to be non-Gaussian distributed and follow the generalized error distribution. The performance of B-SRGP is evaluated with respect to real-world data collected using Smartphone-based vehicular sensing model. The proposed method is tested when measurement noises are both Gaussian and non-Gaussian distributed and also compared with the existing prediction methods. Experimental results confirm that B-SRGP presents higher accuracy prediction and lower mean-squared prediction error for vehicle position when measurement noises are non-Gaussian distributed.
机译:在本文中,开发了一种新颖的框架,旨在即使在部分和完全GPS中断等具有挑战性的环境中也可以连续预测车辆位置。为此,提出了一种贝叶斯-稀疏随机高斯预测(B-SRGP)方法,该方法采用服从受限等距特性的稀疏随机高斯矩阵来处理测量模型。在完全GPS中断期间,提出的方法融合了所有可用的INS测量值,以改善车辆位置预测,而在自由中断时,仅处理GPS数据。此外,贝叶斯推断用于专门处理局部GPS中断时的车辆位置预测,其中GPS和INS的数据均作为输入。在所有情况下,测量噪声区域均假定为非高斯分布,并且遵循广义误差分布。 B-SRGP的性能是针对使用基于智能手机的车辆感应模型收集的实际数据进行评估的。在测量噪声既是高斯分布又是非高斯分布的情况下测试了该方法,并与现有的预测方法进行了比较。实验结果证实,当测量噪声为非高斯分布时,B-SRGP对车辆位置具有更高的精度预测和更低的均方根预测误差。

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