Performance Estimation using the Fitness-Fatigue Model with Kalman Filter Feedback

D. Kolossa, M. A. Azhar, C. Rasche, S. Endler, F. Hanakam, A. Ferrauti, M. Pfeiffer
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引用次数: 7

Abstract

Abstract Tracking and predicting the performance of athletes is of great interest, not only in training science but also, increasingly, for serious hobbyists. The increasing availability and use of smart watches and fitness trackers means that abundant data is becoming available, and the interest to optimally use this data for performance tracking and training optimization is great. One competitive model in this domain is the 3-time-constant fitness-fatigue model by Busso based on the model by Banister and colleagues. In the following, we will show that this model can be written equivalently as a linear, time-variant state-space model. With this understanding, it becomes clear that all methods for optimum tracking in statespace models are also directly applicable here. As an example, we show how a Kalman filter can be combined with the fitness-fatigue model in a mathematically consistent fashion. This gives us the opportunity to optimally consider measurements of performance to adapt the fitness and fatigue estimates in a datadriven manner. Results show that this approach is capable of clearly improving performance tracking and prediction over a range of different scenarios.
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基于卡尔曼滤波器反馈的适应度疲劳模型的性能评估
摘要跟踪和预测运动员的表现不仅在训练科学中引起了极大的兴趣,而且越来越受到业余爱好者的关注。智能手表和健身追踪器的可用性和使用率不断提高,这意味着丰富的数据正在变得可用,人们对最佳使用这些数据进行性能跟踪和训练优化非常感兴趣。该领域的一个竞争模型是Busso在Banister及其同事的模型基础上提出的3时间常数适应度疲劳模型。在下文中,我们将展示该模型可以等效地写成线性时变状态空间模型。有了这一理解,很明显,在状态空间模型中进行最佳跟踪的所有方法也可直接应用于此。作为一个例子,我们展示了卡尔曼滤波器如何以数学一致的方式与适应度疲劳模型相结合。这使我们有机会最佳地考虑性能测量,以数据驱动的方式调整适应度和疲劳估计。结果表明,这种方法能够在一系列不同的场景中明显改进性能跟踪和预测。
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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