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A Hybrid Machine Learning Based Low Cost Approach for Real Time Vehicle Position Estimation in a Smart City

机译:基于混合机器学习的低成本智能城市实时车辆位置估计方法

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The Global Positioning System (GPS) enhanced with low cost Dead Reckoning (DR) sensors allows to estimate in real time a vehicle position with more accuracy while maintaining a low cost. The Extended Kalman Filter (EKF) is generally used to predict the position using the sensor's measures and the GPS position as a helper. However, the filter performance tails off during periods of GPS failure and may quickly diverge (e.g., in tunnels or due to multipath phenomenon). In this paper, we propose a novel hybrid approach based on neural networks (NN) and autoregressive integrated moving average (ARIMA) models to circumvent the EKF limitations and improve the accuracy of vehicle position estimation. While GPS signals are available, we train NN and ARIMA models to learn the non-linear and linear structures in the vehicle position; therefore they can provide good predictions during GPS signal outages. We obtain empirically an improvement of up to 95 % over the simple EKF predictions in case of GPS failures.
机译:借助低成本航位推算(DR)传感器增强的全球定位系统(GPS),可以在保持低成本的前提下实时更准确地估算车辆位置。扩展卡尔曼滤波器(EKF)通常用于使用传感器的测量值和GPS位置作为辅助来预测位置。但是,在GPS失效期间,滤波器的性能会降低,并且可能会迅速发散(例如,在隧道中或由于多径现象而导致)。在本文中,我们提出了一种基于神经网络(NN)和自回归综合移动平均(ARIMA)模型的新型混合方法,以规避EKF限制并提高车辆位置估计的准确性。当GPS信号可用时,我们训练NN和ARIMA模型来学习车辆位置中的非线性和线性结构。因此,它们可以在GPS信号中断期间提供良好的预测。在GPS故障的情况下,根据经验,我们比简单的EKF预测提高了95%。

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