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Warning and control for vehicle rollover prevention.

机译:防止车辆侧翻的警告和控制。

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摘要

This dissertation focuses on the development of a Time-To-Rollover (TTR) metric that can accurately assess the rollover threat under a wide range of vehicle speeds and steering patterns. There are two conflicting requirements to implement TTR in real-time. On one hand, a faster-than-real-time vehicle model is needed. On the other hand, the TTR predicted by this model needs to be accurate enough under all driving scenarios. An innovative approach using hybrid models-Neural Networks (NN) is proposed to solve this dilemma.; Two case studies are presented in this dissertation. In the first case study, the TTR metric was utilized as the basis of rollover warning for an articulated heavy truck. A simple decoupled yaw-roll model was developed for TTR calculation. A NN was then developed and trained to mitigate the accuracy problem of this simple model. The NN-TTR metric was found to be accurate across an array of test scenarios.; In the second case study, the TTR metric is utilized as the basis of rollover warning and anti-rollover control for sport utility vehicles. The test data of a 1997 Jeep Cherokee was used to construct a TruckSim model and to verify the TTR and NN-TTR metrics. The TruckSim model was used to verify the anti-rollover control algorithm and to simulate the vehicle dynamics in the UM-Oakland driving simulator. The proposed control algorithm was compared with other threshold-based control algorithms in TruckSim. A human-in-the-loop experiment was then conducted to study the performance of the proposed control algorithm by using the driving simulator. The first control algorithm we tested was found to perform unsatisfactorily. It was then redesigned by using direct yaw moment control and the control gain was optimized by using the UMTRI driver model. The redesigned control showed significant improvement for the new human-in-the-loop experiment.; The robustness of the TTR metric was studied against selected variations and uncertainties. The TTR metric was found to be robust against vehicle load variation (for SUVs). With some extra measurements, the robustness against low tire pressure, superelevation, and measurement noises were found to be acceptable.
机译:本论文着重于开发可在各种车速和转向模式下准确评估翻车威胁的翻车时间(TTR)指标。实时实施TTR有两个相互矛盾的要求。一方面,需要一种比实时更快的车辆模型。另一方面,此模型预测的TTR在所有驾驶情况下都必须足够准确。提出了一种使用混合模型神经网络(NN)的创新方法来解决这一难题。本文提出了两个案例研究。在第一个案例研究中,TTR指标被用作铰接式重型卡车的侧翻警告的基础。开发了一个简单的解耦偏航角模型用于TTR计算。然后开发了一个神经网络并对其进行了训练,以减轻该简单模型的准确性问题。发现NN-TTR度量标准在一系列测试方案中都是准确的。在第二个案例研究中,TTR指标被用作运动型多功能车的侧翻警告和防侧翻控制的基础。使用1997年吉普切诺基的测试数据构建了TruckSim模型,并验证了TTR和NN-TTR指标。 TruckSim模型用于验证防倾翻控制算法,并在UM-Oakland驾驶模拟器中模拟车辆动力学。将所提出的控制算法与TruckSim中其他基于阈值的控制算法进行了比较。然后进行了一个在环实验,通过使用驾驶模拟器来研究所提出的控制算法的性能。发现我们测试的第一个控制算法的执行效果不理想。然后使用直接偏航力矩控制对其进行重新设计,并使用UMTRI驱动器模型优化控制增益。重新设计的控件显示了新的“在环实验”的显着改进。针对选定的变化和不确定性,研究了TTR指标的鲁棒性。发现TTR指标可抵抗车辆负载变化(对于SUV)。通过一些额外的测量,发现低轮胎气压,超高和测量噪声的鲁棒性是可以接受的。

著录项

  • 作者

    Chen, Bo-Chiuan.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 133 p.
  • 总页数 133
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;
  • 关键词

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