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Efficient in-plane tire mode identification by radial-tangential eigenvector compounding [conference paper]

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conference contribution
posted on 2014-06-04, 13:20 authored by Vasileios Tsinias, Georgios MavrosGeorgios Mavros
Tyre modal testing is frequently used for validation of numerical tyre models and identification of structural tyre model parameters. Most studies deal with the case of a tyre fitted to a rigidly mounted rim and focus primarily on in-plane dynamic behaviour. Here, an identification method of in-plane tire dynamics is developed for the case of a free tyre-rim combination. This particular case is important when the aim is to construct a full tyre model from modal testing, capable of predicting ride and NVH phenomena involving the whole vehicle. Key attributes of the proposed approach include ease of implementation and efficient processing of measurements. For each type of excitation, i.e. radial and tangential, both radial and tangential responses are recorded. Compounding of the corresponding radial/tangential eigenvectors results in smooth mode shapes, which are found to agree with those published in other analytical and experimental studies.

History

School

  • Aeronautical, Automotive, Chemical and Materials Engineering

Department

  • Aeronautical and Automotive Engineering

Citation

TSINIAS, V. and MAVROS, G., 2013. Efficient in-plane tire mode identification by radial-tangential eigenvector compounding. IN: 32nd Tire Science and Technology Conference, Akron, Ohio, 10-11 September 2013

Publisher

Tire Society

Version

  • AM (Accepted Manuscript)

Publication date

2013

Notes

Presented at the 32nd Annual Meeting and Conference on Tire Science and Technology Hilton Akron Fairlawn - Akron, OH Tuesday, September 10, 2013 - Wednesday, September 11, 2013.

Language

  • en

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