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Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models

Our aim was to compare non-linear and linear mathematical model responses for backstroke start performance prediction. Ten swimmers randomly completed eight 15 m backstroke starts with feet over the wedge, four with hands on the highest horizontal and four on the vertical handgrip. Swimmers were vid...

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Detalles Bibliográficos
Autores principales: de Jesus, Karla, Ayala, Helon V. H., de Jesus, Kelly, Coelho, Leandro dos S., Medeiros, Alexandre I.A., Abraldes, José A., Vaz, Mário A.P., Fernandes, Ricardo J., Vilas-Boas, João Paulo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: De Gruyter Open 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5873334/
https://www.ncbi.nlm.nih.gov/pubmed/29599857
http://dx.doi.org/10.1515/hukin-2017-0133
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author de Jesus, Karla
Ayala, Helon V. H.
de Jesus, Kelly
Coelho, Leandro dos S.
Medeiros, Alexandre I.A.
Abraldes, José A.
Vaz, Mário A.P.
Fernandes, Ricardo J.
Vilas-Boas, João Paulo
author_facet de Jesus, Karla
Ayala, Helon V. H.
de Jesus, Kelly
Coelho, Leandro dos S.
Medeiros, Alexandre I.A.
Abraldes, José A.
Vaz, Mário A.P.
Fernandes, Ricardo J.
Vilas-Boas, João Paulo
author_sort de Jesus, Karla
collection PubMed
description Our aim was to compare non-linear and linear mathematical model responses for backstroke start performance prediction. Ten swimmers randomly completed eight 15 m backstroke starts with feet over the wedge, four with hands on the highest horizontal and four on the vertical handgrip. Swimmers were videotaped using a dual media camera set-up, with the starts being performed over an instrumented block with four force plates. Artificial neural networks were applied to predict 5 m start time using kinematic and kinetic variables and to determine the accuracy of the mean absolute percentage error. Artificial neural networks predicted start time more robustly than the linear model with respect to changing training to the validation dataset for the vertical handgrip (3.95 ± 1.67 vs. 5.92 ± 3.27%). Artificial neural networks obtained a smaller mean absolute percentage error than the linear model in the horizontal (0.43 ± 0.19 vs. 0.98 ± 0.19%) and vertical handgrip (0.45 ± 0.19 vs. 1.38 ± 0.30%) using all input data. The best artificial neural network validation revealed a smaller mean absolute error than the linear model for the horizontal (0.007 vs. 0.04 s) and vertical handgrip (0.01 vs. 0.03 s). Artificial neural networks should be used for backstroke 5 m start time prediction due to the quite small differences among the elite level performances.
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spelling pubmed-58733342018-03-29 Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models de Jesus, Karla Ayala, Helon V. H. de Jesus, Kelly Coelho, Leandro dos S. Medeiros, Alexandre I.A. Abraldes, José A. Vaz, Mário A.P. Fernandes, Ricardo J. Vilas-Boas, João Paulo J Hum Kinet Section I – Kinesiology Our aim was to compare non-linear and linear mathematical model responses for backstroke start performance prediction. Ten swimmers randomly completed eight 15 m backstroke starts with feet over the wedge, four with hands on the highest horizontal and four on the vertical handgrip. Swimmers were videotaped using a dual media camera set-up, with the starts being performed over an instrumented block with four force plates. Artificial neural networks were applied to predict 5 m start time using kinematic and kinetic variables and to determine the accuracy of the mean absolute percentage error. Artificial neural networks predicted start time more robustly than the linear model with respect to changing training to the validation dataset for the vertical handgrip (3.95 ± 1.67 vs. 5.92 ± 3.27%). Artificial neural networks obtained a smaller mean absolute percentage error than the linear model in the horizontal (0.43 ± 0.19 vs. 0.98 ± 0.19%) and vertical handgrip (0.45 ± 0.19 vs. 1.38 ± 0.30%) using all input data. The best artificial neural network validation revealed a smaller mean absolute error than the linear model for the horizontal (0.007 vs. 0.04 s) and vertical handgrip (0.01 vs. 0.03 s). Artificial neural networks should be used for backstroke 5 m start time prediction due to the quite small differences among the elite level performances. De Gruyter Open 2018-03-23 /pmc/articles/PMC5873334/ /pubmed/29599857 http://dx.doi.org/10.1515/hukin-2017-0133 Text en © 2018 Editorial Committee of Journal of Human Kinetics
spellingShingle Section I – Kinesiology
de Jesus, Karla
Ayala, Helon V. H.
de Jesus, Kelly
Coelho, Leandro dos S.
Medeiros, Alexandre I.A.
Abraldes, José A.
Vaz, Mário A.P.
Fernandes, Ricardo J.
Vilas-Boas, João Paulo
Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models
title Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models
title_full Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models
title_fullStr Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models
title_full_unstemmed Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models
title_short Modelling and Predicting Backstroke Start Performance Using Non-Linear and Linear Models
title_sort modelling and predicting backstroke start performance using non-linear and linear models
topic Section I – Kinesiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5873334/
https://www.ncbi.nlm.nih.gov/pubmed/29599857
http://dx.doi.org/10.1515/hukin-2017-0133
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