Modelling Training Adaptation in Swimming Using Artificial Neural Network Geometric Optimisation

被引:9
|
作者
Carrard, Justin [1 ,2 ]
Kloucek, Petr [3 ]
Gojanovic, Boris [4 ,5 ]
机构
[1] Univ Lausanne, Fac Biol & Med, Doctoral Sch, CH-1015 Lausanne, Switzerland
[2] Univ Basel, Div Sports & Exercise Med, Dept Sport Exercise & Hlth, CH-4052 Basel, Switzerland
[3] Lausanne Univ Hosp, CAMPsyN, Hop Cery, CH-1008 Prilly, Switzerland
[4] Hop La Tour, Sports Med, Swiss Olymp Med Ctr, CH-1217 Meyrin, Switzerland
[5] Lausanne Univ Hosp, Swiss Olymp Med Ctr, Sports Med, CH-1011 Lausanne, Switzerland
关键词
training monitoring; online tool; machine learning; MOOD STATES; VALIDITY; PROFILE; RISK;
D O I
10.3390/sports8010008
中图分类号
G8 [体育];
学科分类号
04 ; 0403 ;
摘要
This study aims to model training adaptation using Artificial Neural Network (ANN) geometric optimisation. Over 26 weeks, 38 swimmers recorded their training and recovery data on a web platform. Based on these data, ANN geometric optimisation was used to model and graphically separate adaptation from maladaptation (to training). Geometric Activity Performance Index (GAPI), defined as the ratio of the adaptation to the maladaptation area, was introduced. The techniques of jittering and ensemble modelling were used to reduce overfitting of the model. Correlation (Spearman rank) and independence (Blomqvist beta) tests were run between GAPI and performance measures to check the relevance of the collected parameters. Thirteen out of 38 swimmers met the prerequisites for the analysis and were included in the modelling. The GAPI based on external load (distance) and internal load (session-Rating of Perceived Exertion) showed the strongest correlation with performance measures. ANN geometric optimisation seems to be a promising technique to model training adaptation and GAPI could be an interesting numerical surrogate to track during a season.
引用
收藏
页数:15
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