Publication detail
Development of a Data-Driven Methodology for Rapid Identification of Key Performance Indicators in Motorcycle Racing
FOJTÁŠEK, J. BÖHM, M.
English title
Development of a Data-Driven Methodology for Rapid Identification of Key Performance Indicators in Motorcycle Racing
Type
Scopus Article
Language
en
Original abstract
This study presents a novel method for the rapid identification of key performance indicators (KPIs) from measured riding data of a Ducati Panigale V2 motorcycle, aimed at enhancing racing performance through a deeper understanding of rider-vehicle interaction. The methodology involves the design and implementation of mathematical tools within the RaceStudio3 software to analyze data from the motorcycle’s sensor system. This approach facilitates the swift detection of critical events, including gearshift delays, improper throttle control, and suspension issues. The fusion of data from the motorcycle enables a comprehensive evaluation of the rider’s influence on performance. The results demonstrate the potential of the proposed method to provide valuable insights for optimizing motorcycle setup and rider technique.
Keywords in English
data analysis; key performance indicators (KPIs); mathematical modeling; motorcycle dynamics; performance optimization; rider-vehicle interaction
Released
2025-10-28
Volume
113
Number
1
Pages from–to
1–10
Pages count
10
BIBTEX
@article{BUT200050,
author="Jan {Fojtášek} and Michael {Böhm}",
title="Development of a Data-Driven Methodology for Rapid Identification of Key Performance Indicators in Motorcycle Racing",
journal="Engineering Proceedings",
year="2025",
volume="113",
number="1",
pages="10",
doi="10.3390/engproc2025113012",
url="https://www.mdpi.com/2673-4591/113/1/12"
}