A model predictive controller for sensor-based training optimization of a cyclist group

(Ein Prognosesteuerungsmodell zur sensorgestützten Trainingsoptimierung für eine Gruppe von Radsportlern)

Determining the optimal exercise intensity is a crucial factor in cycling to improve performance and avoid overtraining. Novel sensor technologies allow to optimize the training not only for an individual cyclist but also for an entire group. A sensor-based Team Cycling Training System (TCTS) has been developed to optimize the group training in cycling. This System consists of three major parts: a hardware platform with basic sensors for training data acquisition, a wireless ad-hoc network that establishes the communication among multiple bicycles, and a control algorithm for the optimization of the training. The focus of this paper lies on the development of the control algorithm, a Model Predictive Controller (MPC). The MPC uses a cycling performance model to predict the physical work loads of the cyclists according to various conditions such as road profile, headwind, speed and position of cyclists within the group. Based on the predicted physical exercise loads, the MPC uses a cyclist individualized dynamic heart rate prediction model to determine the physiological load of each cyclist and regulates the group training by advising the cyclists to change the position in group, to adjust the group speed, or to split the group in such a way that each cyclist can meet his training plan as exactly as possible. Training sessions with two or four group members have been conducted under different conditions. The results of the trainings indicate that the TCTS with the MPC is an effective aid for the group training in cycling.
© Copyright 2008 The Engineering of sport 7, Volume 1. Veröffentlicht von Springer. Alle Rechte vorbehalten.

Bibliographische Detailangaben
Schlagworte:
Notationen:Naturwissenschaften und Technik
Veröffentlicht in:The Engineering of sport 7, Volume 1
Sprache:Englisch
Veröffentlicht: Paris Springer 2008
Seiten:413-423
Dokumentenarten:Buch
Level:hoch