Performance analysis and prediction in triathlon

J Sports Sci. 2016;34(7):607-12. doi: 10.1080/02640414.2015.1065341. Epub 2015 Jul 16.

Abstract

Performance in triathlon is dependent upon factors that include somatotype, physiological capacity, technical proficiency and race strategy. Given the multidisciplinary nature of triathlon and the interaction between each of the three race components, the identification of target split times that can be used to inform the design of training plans and race pacing strategies is a complex task. The present study uses machine learning techniques to analyse a large database of performances in Olympic distance triathlons (2008-2012). The analysis reveals patterns of performance in five components of triathlon (three race "legs" and two transitions) and the complex relationships between performance in each component and overall performance in a race. The results provide three perspectives on the relationship between performance in each component of triathlon and the final placing in a race. These perspectives allow the identification of target split times that are required to achieve a certain final place in a race and the opportunity to make evidence-based decisions about race tactics in order to optimise performance.

Keywords: Bayesian networks; decision making; race strategy; race tactics.

MeSH terms

  • Athletic Performance / physiology*
  • Athletic Performance / psychology
  • Bayes Theorem
  • Bicycling / physiology*
  • Competitive Behavior / physiology
  • Decision Making
  • Female
  • Goals
  • Humans
  • Male
  • Physical Education and Training
  • Running / physiology*
  • Sex Factors
  • Swimming / physiology*
  • Task Performance and Analysis*
  • Time Factors