Horvath Marton, Andersson Erik P
Department of Health Sciences, Swedish Winter Sports Research Centre, Mid Sweden University, Östersund, Sweden.
Front Sports Act Living. 2025 Aug 18;7:1599319. doi: 10.3389/fspor.2025.1599319. eCollection 2025.
Power profiling is widely used in cycling performance analysis, but both absolute and mass-normalized power outputs have limitations as performance indicators, as they neglect external factors such as terrain, wind, aerodynamic drag, and pacing strategy. To address these limitations, this study introduced a numerical method to quantify how external forces acting on the cyclist influence the conversion of power output into race velocity. Thus, the study aimed to enable accurate prediction of cycling performance based on estimated mean power output over complex time-trial courses.
Time-trial performances of five elite-level road cyclist profiles-a sprinter, climber, all-rounder, general classification (GC) contender, and a time trialist-were estimated using the power-duration relationship and previously published normative data. These performance estimates were applied to both simplified hypothetical courses and complex real-world time-trial courses. Optimal mass exponents for the power-to-mass ratio were determined based on the estimated average speeds over the respective course sections, cyclist morphology, and external factors such as gradient and wind velocity.
Across two recent Grand Tour individual time-trial courses, stage 21 of the 2024 Tour de France and stage 7 of the 2024 Giro d'Italia, the duration-weighted optimally mass-normalized power output metrics were and , respectively. These metrics accurately predicted the estimated performances of the five defined cyclist profiles ( for both).
The results indicate that the duration-weighted optimal mass exponents for the power-to-mass ratio are course-specific. By deriving optimal mass exponents across various modeled courses and wind conditions, the study was able to precisely quantify the influence of road gradient, headwind speed, and bicycle mass on the conversion of power output relative to body mass into speed. Further research is needed to validate the presented method for determining optimal mass exponents in real-world performance settings.
功率剖析在自行车运动表现分析中被广泛应用,但绝对功率输出和体重标准化功率输出作为表现指标都存在局限性,因为它们忽略了地形、风、空气阻力和配速策略等外部因素。为解决这些局限性,本研究引入了一种数值方法,以量化作用于自行车手的外力如何影响功率输出向比赛速度的转换。因此,本研究旨在基于复杂计时赛段的估计平均功率输出,实现对自行车运动表现的准确预测。
利用功率-持续时间关系和先前发表的标准数据,估计了五名精英级公路自行车手(一名冲刺手、一名爬坡手、一名全能手、一名总成绩(GC)竞争者和一名计时赛选手)的计时赛表现。这些表现估计被应用于简化的假设赛道和复杂的现实世界计时赛赛道。根据各赛道段的估计平均速度、自行车手形态以及坡度和风速等外部因素,确定功率与质量比的最佳质量指数。
在最近的两个大环赛个人计时赛段,即2024年环法自行车赛第21赛段和2024年环意大利自行车赛第7赛段中,持续时间加权的最佳体重标准化功率输出指标分别为 和 。这些指标准确预测了五名定义的自行车手的估计表现(两者均为 )。
结果表明,功率与质量比的持续时间加权最佳质量指数是特定于赛道的。通过推导各种模拟赛道和风况下的最佳质量指数,本研究能够精确量化道路坡度、逆风速度和自行车质量对相对于体重的功率输出向速度转换的影响。需要进一步研究来验证所提出的在实际表现环境中确定最佳质量指数的方法。