Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Authors

  • Zygimantas Ziaukas
  • Alexander Busch
  • Mark Wielitzka

Research Organisations

View graph of relations

Details

Original languageEnglish
Title of host publication2021 IEEE Conference on Control Technology and Applications (CCTA)
Pages986-991
Number of pages6
ISBN (electronic)978-1-6654-3643-4
Publication statusPublished - 2021

Publication series

NameControl Technology and Applications
ISSN (Print)2768-0762
ISSN (electronic)2768-0770

Abstract

The side-slip angle is one of several crucial states in vehicle dynamics allowing to judge the current status of stability and the ride comfort for the subsequent usage in active assistance systems. Unfortunately, the measurement of side-slip angle is very costly and therefore it is usually not provided in production vehicles. As an alternative, the side-slip angle can be estimated based on the available sensors. The most common approach is model-based state estimation using different forms of Kalman filters (KF). However, this method comprises the complex steps of system identification and robust filter design. In recent years, data-based approaches gain popularity among researchers throughout different fields of research including the state estimation in vehicle dynamics. These allow direct extraction of an estimation algorithm from recorded data. This contribution presents the utilization of recurrent artificial neural networks (RANN) to side-slip angle estimation in a Volkswagen Golf GTE Plug-In Hybrid on varying road surfaces. The inputs to the RANN are signals from sensors in serial production configuration. In comparison to the model-based approach of a sensitivity-based unscented Kalman filter (sUKF) from previous works, the data-based approach shows competitive experimental results.

ASJC Scopus subject areas

Cite this

Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network. / Ziaukas, Zygimantas; Busch, Alexander; Wielitzka, Mark.
2021 IEEE Conference on Control Technology and Applications (CCTA). 2021. p. 986-991 (Control Technology and Applications).

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Ziaukas, Z, Busch, A & Wielitzka, M 2021, Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network. in 2021 IEEE Conference on Control Technology and Applications (CCTA). Control Technology and Applications, pp. 986-991. https://doi.org/10.1109/ccta48906.2021.9658710
Ziaukas, Z., Busch, A., & Wielitzka, M. (2021). Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network. In 2021 IEEE Conference on Control Technology and Applications (CCTA) (pp. 986-991). (Control Technology and Applications). https://doi.org/10.1109/ccta48906.2021.9658710
Ziaukas Z, Busch A, Wielitzka M. Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network. In 2021 IEEE Conference on Control Technology and Applications (CCTA). 2021. p. 986-991. (Control Technology and Applications). doi: 10.1109/ccta48906.2021.9658710
Ziaukas, Zygimantas ; Busch, Alexander ; Wielitzka, Mark. / Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network. 2021 IEEE Conference on Control Technology and Applications (CCTA). 2021. pp. 986-991 (Control Technology and Applications).
Download
@inproceedings{274910724aa44c3593d75105ee87b1b2,
title = "Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network",
abstract = "The side-slip angle is one of several crucial states in vehicle dynamics allowing to judge the current status of stability and the ride comfort for the subsequent usage in active assistance systems. Unfortunately, the measurement of side-slip angle is very costly and therefore it is usually not provided in production vehicles. As an alternative, the side-slip angle can be estimated based on the available sensors. The most common approach is model-based state estimation using different forms of Kalman filters (KF). However, this method comprises the complex steps of system identification and robust filter design. In recent years, data-based approaches gain popularity among researchers throughout different fields of research including the state estimation in vehicle dynamics. These allow direct extraction of an estimation algorithm from recorded data. This contribution presents the utilization of recurrent artificial neural networks (RANN) to side-slip angle estimation in a Volkswagen Golf GTE Plug-In Hybrid on varying road surfaces. The inputs to the RANN are signals from sensors in serial production configuration. In comparison to the model-based approach of a sensitivity-based unscented Kalman filter (sUKF) from previous works, the data-based approach shows competitive experimental results.",
author = "Zygimantas Ziaukas and Alexander Busch and Mark Wielitzka",
note = "Funding Information: This work is supported by Leibniz Young Investigator Grants provided by Leibniz Universitat Hannover.",
year = "2021",
doi = "10.1109/ccta48906.2021.9658710",
language = "English",
isbn = "978-1-6654-3644-1",
series = "Control Technology and Applications",
pages = "986--991",
booktitle = "2021 IEEE Conference on Control Technology and Applications (CCTA)",

}

Download

TY - GEN

T1 - Estimation of Vehicle Side-Slip Angle at Varying Road Friction Coefficients Using a Recurrent Artificial Neural Network

AU - Ziaukas, Zygimantas

AU - Busch, Alexander

AU - Wielitzka, Mark

N1 - Funding Information: This work is supported by Leibniz Young Investigator Grants provided by Leibniz Universitat Hannover.

PY - 2021

Y1 - 2021

N2 - The side-slip angle is one of several crucial states in vehicle dynamics allowing to judge the current status of stability and the ride comfort for the subsequent usage in active assistance systems. Unfortunately, the measurement of side-slip angle is very costly and therefore it is usually not provided in production vehicles. As an alternative, the side-slip angle can be estimated based on the available sensors. The most common approach is model-based state estimation using different forms of Kalman filters (KF). However, this method comprises the complex steps of system identification and robust filter design. In recent years, data-based approaches gain popularity among researchers throughout different fields of research including the state estimation in vehicle dynamics. These allow direct extraction of an estimation algorithm from recorded data. This contribution presents the utilization of recurrent artificial neural networks (RANN) to side-slip angle estimation in a Volkswagen Golf GTE Plug-In Hybrid on varying road surfaces. The inputs to the RANN are signals from sensors in serial production configuration. In comparison to the model-based approach of a sensitivity-based unscented Kalman filter (sUKF) from previous works, the data-based approach shows competitive experimental results.

AB - The side-slip angle is one of several crucial states in vehicle dynamics allowing to judge the current status of stability and the ride comfort for the subsequent usage in active assistance systems. Unfortunately, the measurement of side-slip angle is very costly and therefore it is usually not provided in production vehicles. As an alternative, the side-slip angle can be estimated based on the available sensors. The most common approach is model-based state estimation using different forms of Kalman filters (KF). However, this method comprises the complex steps of system identification and robust filter design. In recent years, data-based approaches gain popularity among researchers throughout different fields of research including the state estimation in vehicle dynamics. These allow direct extraction of an estimation algorithm from recorded data. This contribution presents the utilization of recurrent artificial neural networks (RANN) to side-slip angle estimation in a Volkswagen Golf GTE Plug-In Hybrid on varying road surfaces. The inputs to the RANN are signals from sensors in serial production configuration. In comparison to the model-based approach of a sensitivity-based unscented Kalman filter (sUKF) from previous works, the data-based approach shows competitive experimental results.

UR - http://www.scopus.com/inward/record.url?scp=85124793812&partnerID=8YFLogxK

U2 - 10.1109/ccta48906.2021.9658710

DO - 10.1109/ccta48906.2021.9658710

M3 - Conference contribution

SN - 978-1-6654-3644-1

T3 - Control Technology and Applications

SP - 986

EP - 991

BT - 2021 IEEE Conference on Control Technology and Applications (CCTA)

ER -