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Distributed sensing and observer design for vehicles state estimation.

机译:用于车辆状态估计的分布式传感和观测器设计。

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摘要

A solution to the vehicle state estimation problem is given using the Kalman filtering and the Particle filtering theories. Vehicle states are necessary for an active or a semi-active suspension control system, which is intended to enhance ride comfort, road handling and stability of the vehicle. Due to a lack of information on road disturbances, conventional estimation techniques fail to provide accurate estimates of all the required states. The proposed estimation algorithm, named Supervisory Kalman Filter (SKF), consists of a Kalman filter with an extra update step which is inspired by the particle filtering technique. The extra step, called a supervisory layer, operates on the portion of the state vector that cannot be estimated by the Kalman filter. First, it produces N randomly generated state vectors, the particles, which are distributed based on the Kalman filter's last updated estimate. Then, a resampling stage is implemented to collect the particles with higher probability. The effectiveness of the SKF is demonstrated by comparing its estimation results with that of the Kalman filter and the particle filter when a test vehicle is passing over a bump. The estimation results confirm that the SKF precisely estimates those states of the vehicle that cannot be estimated by either the Kalman filter or the particle filter, without any direct measurement of the road disturbance inputs.Once the vehicle states are provided, a suspension control law, the Skyhook strategy, processes the current states and adjusts the damping forces accordingly to provide a better and safer ride for the vehicle passengers. This thesis presents a novel systematic and practical methodology for the design and implementation of the Skyhook control strategy for vehicle's semi-active suspension systems. Typically, the semi-active control strategies (including the Skyhook strategy) have switching natures. This makes the design process difficult and highly dependent on extensive trial and error. The proposed methodology maps the discontinuous control system model to a continuous linear region, where all the time/frequency design techniques, established in the conventional control system theory, can be applied. If the semiactive control law is designed to satisfy ride and stability requirements, an inverse mapping offers the ultimate control law. The effectiveness of the proposed methodology in the design of a semi-active suspension control system for a Cadillac SRX 2005 is demonstrated by real-time road tests. The road tests results verify that the use of the newly developed systematic design methodology reduces the required time and effort in real industrial problems.
机译:使用卡尔曼滤波和粒子滤波理论给出了车辆状态估计问题的解决方案。对于主动或半主动悬架控制系统,车辆状态是必需的,该系统旨在提高车辆的乘坐舒适性,道路操纵性和稳定性。由于缺乏有关道路干扰的信息,传统的估算技术无法提供所有所需状态的准确估算。所提出的估计算法称为监督卡尔曼滤波器(SKF),由具有额外更新步骤的卡尔曼滤波器组成,该更新步骤受粒子滤波技术的启发。额外的步骤称为监控层,对状态向量无法通过卡尔曼滤波器估计的部分进行操作。首先,它会产生N个随机生成的状态矢量,即粒子,这些粒子基于卡尔曼滤波器的最新更新估算值进行分布。然后,执行重采样阶段以更高的概率收集粒子。当测试车辆经过颠簸时,通过将SKF的估计结果与Kalman滤波器和粒子滤波器的估计结果进行比较,可以证明SKF的有效性。估算结果证实了SKF可以精确估算那些无法通过卡尔曼滤波器或粒子滤波器无法估算的车辆状态,而无需直接测量道路干扰输入。一旦提供了车辆状态,就会获得悬架控制律, Skyhook策略,处理当前状态并相应地调整阻尼力,以为车辆乘客提供更好,更安全的乘坐。本文为车辆半主动悬架系统的Skyhook控制策略的设计和实现提供了一种新颖的系统实用方法。通常,半主动控制策略(包括Skyhook策略)具有切换性质。这使设计过程变得困难,并且高度依赖大量的反复试验。所提出的方法将不连续控制系统模型映射到一个连续的线性区域,在该区域中可以应用常规控制系统理论中建立的所有时间/频率设计技术。如果将半主动控制律设计为满足行驶和稳定性要求,则逆映射将提供最终控制律。实时路试证明了所提出方法在设计凯迪拉克SRX 2005半主动悬挂控制系统中的有效性。路试结果证明,使用新开发的系统设计方法可以减少实际工业问题中所需的时间和精力。

著录项

  • 作者

    Bolandhemmat, Hamidreza.;

  • 作者单位

    University of Waterloo (Canada).;

  • 授予单位 University of Waterloo (Canada).;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 200 p.
  • 总页数 200
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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