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  • Applicability of modern correlation tools for ride comfort evaluation and estimation

Cieslak, Maciej, Kanarachos, Stratis, Blundell, Mike, Diels, Cyriel and Baxendale, Anothony, 2019, Book Section, Applicability of modern correlation tools for ride comfort evaluation and estimation In: Vink, Peter, Naddeo, Alessandro, Frohriep, Susanne and Mansfield, Neil, (eds.) Proceedings of The Second International Conference on Comfort (ICC2019). Faculty of Industrial Design Engineering, Delft University of Technology, Delft, Netherlands. ISBN 978-94-6384-054-5

Abstract or Description:

The automotive world is currently shifting focus towards electric vehicles (EVs) and the market of connected, autonomous vehicles (CAVs) is steadily growing. Vehicle ride comfort is an attribute which for years now have been a factor which has a significant influence on vehicle development programmes. Due to the complexity of ride comfort, achieving a good correlation between measured data and perceived comfort is a challenging task. Creating well-handling vehicles with pleasant ride characteristics is becoming not enough, as nowadays customers expect bespoke, tailored solutions such as active suspension systems instead of more
traditional, passive solutions. The presented study aims to analyse the usability of modern correlation tools, such as artificial neural networks for objective and subjective data correlation, evaluation and explore the possibility of prediction of subjective responses based on the measured data. Data for the study was gathered on the HORIBA MIRA proving ground and public roads. Measured parameters consisted of the vehicle accelerations, anthropometric data of the experiment participants and subjective evaluations of perceived vibration magnitudes. Subjective responses were gathered using a group of 22 participants. The obtained dataset was divided into training and validation sets in the ratio of 80/20. Collected data was used in a correlation study using artificial neural networks (ANNs). The created model achieved a high correlation level of R=0.91. Presented study proves that correct use of advanced correlation techniques utilising artificial neural networks can create comfort models allowing for subjective comfort response estimation. Such an approach could significantly reduce the time required for the vehicle development process and would allow for more comfortable, bespoke vehicles in the future.

Official URL: http://www.icc.tudelft.nl/ICC2019/ICC2019_5A2.pdf
Subjects: Creative Arts and Design > W200 Design studies
School or Centre: School of Design
Date Deposited: 04 Jun 2020 17:09
Last Modified: 04 Jun 2020 17:09
URI: https://rca-9.eprints-hosting.org/id/eprint/4387
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