A Novel Tuning Approach of the H∞ Filter for Longitudinal Tracking of Automated Vehicles

Jasmina Zubaca, M. Stolz, D. Watzenig
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引用次数: 2

Abstract

This paper contributes to the challenging field of reliable vehicle tracking as a pivotal part of automated driving. The Kalman filter is an optimal state estimator based on the assumption of an accurate dynamical model and known noise statistic. In order to achieve a fast, robust and efficient vehicle state estimation in the omnipresence of model imperfections and measurement noise, a synergetic combination of the Kalman filter and H∞ filter is proposed, making optimal usage of their advantages. The performance of the filters and their combination is analyzed throughout a sensor data fusion example. Based on the determination of the position and velocity of a vehicle, the improvements, but also the limits of the different approaches are discussed. Additionally, the possibility to detect sensor faults such as time-varying offsets by augmenting the state-space model is explained.
一种用于自动驾驶车辆纵向跟踪的H∞滤波器的新调谐方法
作为自动驾驶的关键部分,本文对具有挑战性的车辆可靠跟踪领域做出了贡献。卡尔曼滤波是一种基于精确动力学模型和已知噪声统计量假设的最优状态估计器。为了在模型缺陷和测量噪声无所不在的情况下实现快速、鲁棒和高效的车辆状态估计,提出了一种卡尔曼滤波器和H∞滤波器的协同组合,充分利用两者的优点。通过一个传感器数据融合实例,分析了滤波器及其组合的性能。在确定车辆位置和速度的基础上,讨论了不同方法的改进和局限性。此外,还解释了通过增加状态空间模型来检测传感器故障(如时变偏移)的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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