0

Full Content is available to subscribers

Subscribe/Learn More  >

Application of Artificial Neural Networks (ANN) Based Model for Monitoring of Vehicle Longitudinal Dynamic Performance

[+] Author Affiliations
Albert Albers, Jiangang Wang, Sascha Ott, Tobias Düser, Sarawut Lerspalungsanti

University of Karlsruhe, Karlsruhe, Germany

Paper No. DETC2008-49083, pp. 711-717; 7 pages
doi:10.1115/DETC2008-49083
From:
  • ASME 2008 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference
  • Volume 5: 13th Design for Manufacturability and the Lifecycle Conference; 5th Symposium on International Design and Design Education; 10th International Conference on Advanced Vehicle and Tire Technologies
  • Brooklyn, New York, USA, August 3–6, 2008
  • Conference Sponsors: Design Engineering Division and Computers in Engineering Division
  • ISBN: 978-0-7918-4329-1 | eISBN: 0-7918-3831-5
  • Copyright © 2008 by ASME

abstract

Nowadays, with the integration of diverse driver assistance systems the vehicle has become a complex mechatronic system. The goal of this improvement is to help a driver to manage his vehicle and to perceive his environment. The functional capability of these driver assistance systems is mostly influenced by the functionality of mechanical and/or hydraulic components in the vehicle and the sensors, which are essential elements for the estimation of external and internal state of the vehicle. To ensure the reliability of the vehicle there is a great need to develop a monitoring system to meet the new requirements. In a complex mechatronic system the functionality and reliability of the whole system depend not only on those of the subsystems. To monitor the functionality of a system, it is necessary to understand how the system works. Thus it becomes more difficult for the driver to monitor the functionality and the working state of modern vehicle. In order to help a driver to monitor the performance of his/her vehicle, an appropriate condition monitoring system is required. This paper outlines an approach to estimate the vehicle longitudinal performance for the purpose of developing a fault monitoring system based on simulation technique. Firstly, the necessity of this monitoring system is expounded. After introduction of diverse methods for the analysis of the system safety, structure of this monitoring system is introduced. The kernel of this system is a vehicle model and an observer model. Regarding the requirements of a real-time operating system, the vehicle model in this work is built by applying an artificial neural network (ANN). The achieved structure of the network and simulation results are presented in this paper. Furthermore the real-time capability of the networks is verified within this work.

Copyright © 2008 by ASME

Figures

Tables

Interactive Graphics

Video

Country-Specific Mortality and Growth Failure in Infancy and Yound Children and Association With Material Stature

Use interactive graphics and maps to view and sort country-specific infant and early dhildhood mortality and growth failure data and their association with maternal

NOTE:
Citing articles are presented as examples only. In non-demo SCM6 implementation, integration with CrossRef’s "Cited By" API will populate this tab (http://www.crossref.org/citedby.html).

Some tools below are only available to our subscribers or users with an online account.

Related Content

Customize your page view by dragging and repositioning the boxes below.

Related eBook Content
Topic Collections

Sorry! You do not have access to this content. For assistance or to subscribe, please contact us:

  • TELEPHONE: 1-800-843-2763 (Toll-free in the USA)
  • EMAIL: asmedigitalcollection@asme.org
Sign In