Predicting centre of mass horizontal speed in low to severe swimming intensities with linear and non-linear models.

Journal: Journal of sports sciences
PMID:

Abstract

We aimed to compare multilayer perceptron (MLP) neural networks, radial basis function neural networks (RBF) and linear models (LM) accuracy to predict the centre of mass (CM) horizontal speed at low-moderate, heavy and severe swimming intensities using physiological and biomechanical dataset. Ten trained male swimmers completed a 7 × 200 m front crawl protocol (0.05 m.s increments and 30 s intervals) to assess expiratory gases and blood lactate concentrations. Two surface and four underwater cameras recorded independent images subsequently processed focusing a three-dimensional reconstruction of two upper limb cycles at 25 and 175 m laps. Eight physiological and 13 biomechanical variables were inputted to predict CM horizontal speed. MLP, RBF and LM were implemented with the Levenberg-Marquardt algorithm (feed forward with a six-neuron hidden layer), orthogonal least squares algorithm and decomposition of matrices. MLP revealed higher prediction error than LM at low-moderate intensity (2.43 ± 1.44 and 1.67 ± 0.60%), MLP and RBF depicted lower mean absolute percentage errors than LM at heavy intensity (2.45 ± 1.61, 1.82 ± 0.92 and 3.72 ± 1.67%) and RBF neural networks registered lower errors than MLP and LM at severe intensity (2.78 ± 0.96, 3.89 ± 1.78 and 4.47 ± 2.36%). Artificial neural networks are suitable for speed model-fit at heavy and severe swimming intensities when considering physiological and biomechanical background.

Authors

  • Kelly de Jesus
    a Centre of Research, Education, Innovation and Intervention in Sport (CIFI2D), Faculty of Sport , University of Porto (FADE-UP) , Porto , Portugal.
  • Karla de Jesus
    a Centre of Research, Education, Innovation and Intervention in Sport (CIFI2D), Faculty of Sport , University of Porto (FADE-UP) , Porto , Portugal.
  • Helon Vicente Hultmann Ayala
    e Department of Mechanical Engineering , Pontifical Catholic University of Rio de Janeiro , Rio de Janeiro , Brazil.
  • Leandro Dos Santos Coelho
    f Industrial and Systems Engineering Graduate Program (PPGEPS) , Pontifical Catholic University of Paraná , Curitiba , Brazil.
  • João Paulo Vilas-Boas
    a Centre of Research, Education, Innovation and Intervention in Sport (CIFI2D), Faculty of Sport , University of Porto (FADE-UP) , Porto , Portugal.
  • Ricardo Jorge Pinto Fernandes
    a Centre of Research, Education, Innovation and Intervention in Sport (CIFI2D), Faculty of Sport , University of Porto (FADE-UP) , Porto , Portugal.