Your browser does not support JavaScript!
http://iet.metastore.ingenta.com
1887

Observer-based parameter identification for vehicle dynamics assessment

Observer-based parameter identification for vehicle dynamics assessment

For access to this article, please select a purchase option:

Buy chapter PDF
£10.00
(plus tax if applicable)
Buy Knowledge Pack
10 chapters for £75.00
(plus taxes if applicable)

IET members benefit from discounts to all IET publications and free access to E&T Magazine. If you are an IET member, log in to your account and the discounts will automatically be applied.

Learn more about IET membership 

Recommend Title Publication to library

You must fill out fields marked with: *

Librarian details
Name:*
Email:*
Your details
Name:*
Email:*
Department:*
Why are you recommending this title?
Select reason:
 
 
 
 
 
Sliding Mode Control of Vehicle Dynamics — Recommend this title to your library

Thank you

Your recommendation has been sent to your librarian.

Assessment of the vehicle handling especially with respect to its lateral dynamics is an important aspect of the overall vehicle design and development process. However, an increasing rate of vehicle update cycles, a massively growing number of variants and a required high-quality comfort and/or driving reward render the evaluation process a challenging task. Consequently, virtual methods support the overall development process and increase time and cost efficiency significantly. The so-called model-based (objective) handling methodology aims to extract certain vehicle and/or driver model parameters from measurement data. These can then be used to simulate standard handling maneuvers, rather than performing them on a test track. State-of-the-art parameter identification mechanisms are commonly performed offline and require extensive instrumentation of the test vehicle. This chapter presents a novel approach exploiting observer-based parameter identification techniques. It introduces the advantages of online capability, time-efficient experiment execution and reduction of sensing devices due to estimation of specific system states. The joint estimation of states and parameters is formulated as an unknown input recovery problem. Using sliding mode mechanisms allows formulation of state observers that are invariant with respect to certain classes of perturbations. Furthermore, the attractiveness is increased considering the property of finite time convergence. Herein, higher-order sliding mode concepts are used for the task of parameter identification providing robustness, finite convergence time and stability even for non-persistently excited systems. Evaluation of the concepts is performed in a twofold way: (a)An industrial vehicle dynamics simulation tool provides data for the observation concepts. The resulting parameter estimates are integrated into the offline simulation of standard handling maneuvers, e.g., step input steering. Comparing these results with the reference data allows to draw conclusions on the expected accuracy of the method. (b) The selected concepts are evaluated on experimental facilities, i.e., standard vehicles and an electric power steering test bench.

Chapter Contents:

  • 7.1 Introduction
  • 7.1.1 Modeling of selected vehicle dynamics
  • 7.1.1.1 Lateral vehicle motion
  • 7.1.2 Chassis roll motion
  • 7.1.3 Model parameters and sensor setup
  • 7.2 State-of-the-art review
  • 7.3 Contributions
  • 7.3.1 Robust lateral dynamics parameter estimator
  • 7.3.1.1 Lateral tire force observer
  • 7.3.1.2 Lateral cornering stiffness observer
  • 7.3.2 Robust roll dynamics parameter estimator
  • 7.3.2.1 Robust exact differentiator (RED)
  • 7.3.2.2 Robust state estimation (RSE)
  • 7.3.2.3 Adaptive robust state estimation (ARSE)
  • 7.3.2.4 Parameter identification (PE)
  • 7.3.2.5 Adaptive roll angle observation (ARAO)
  • 7.3.3 Simulation-based concept evaluation
  • 7.3.3.1 Parameter identification results
  • 7.3.3.2 Handling evaluation results
  • 7.3.4 Experimental results
  • 7.4 Conclusions
  • Acknowledgment
  • References

Inspec keywords: vehicle dynamics; variable structure systems; steering systems; parameter estimation

Other keywords: finite time convergence; vehicle dynamics assessment; time-efficient experiment execution; online capability; finite convergence time; electric power steering; input recovery problem; standard handling maneuvers; sensing devices reduction; higher-order sliding mode concepts; observer-based parameter identification; sliding mode mechanisms

Subjects: Transportation system control; Vehicle mechanics; Multivariable control systems

Preview this chapter:
Zoom in
Zoomout

Observer-based parameter identification for vehicle dynamics assessment, Page 1 of 2

| /docserver/preview/fulltext/books/tr/pbtr005e/PBTR005E_ch7-1.gif /docserver/preview/fulltext/books/tr/pbtr005e/PBTR005E_ch7-2.gif

Related content

content/books/10.1049/pbtr005e_ch7
pub_keyword,iet_inspecKeyword,pub_concept
6
6
Loading
This is a required field
Please enter a valid email address