Literature DB >> 22755464

Application of regression and neural models to predict competitive swimming performance.

Adam Maszczyk1, Robert Roczniok, Zbigniew Waśkiewicz, Miłosz Czuba, Kazimierz Mikołajec, Adam Zajac, Arkadiusz Stanula.   

Abstract

This research problem was indirectly but closely connected with the optimization of an athlete-selection process, based on predictions viewed as determinants of future successes. The research project involved a group of 249 competitive swimmers (age 12 yr., SD = 0.5) who trained and competed for four years. Measures involving fitness (e.g., lung capacity), strength (e.g., standing long jump), swimming technique (turn, glide, distance per stroke cycle), anthropometric variables (e.g., hand and foot size), as well as specific swimming measures (speeds in particular distances), were used. The participants (n = 189) trained from May 2008 to May 2009, which involved five days of swimming workouts per week, and three additional 45-min. sessions devoted to measurements necessary for this study. In June 2009, data from two groups of 30 swimmers each (n = 60) were used to identify predictor variables. Models were then constructed from these variables to predict final swimming performance in the 50 meter and 800 meter crawl events. Nonlinear regression models and neural models were built for the dependent variable of sport results (performance at 50m and 800m). In May 2010, the swimmers' actual race times for these events were compared to the predictions created a year prior to the beginning of the experiment. Results for the nonlinear regression models and perceptron networks structured as 8-4-1 and 4-3-1 indicated that the neural models overall more accurately predicted final swimming performance from initial training, strength, fitness, and body measurements. Differences in the sum of absolute error values were 4:11.96 (n = 30 for 800m) and 20.39 (n = 30 for 50m), for models structured as 8-4-1 and 4-3-1, respectively, with the neural models being more accurate. It seems possible that such models can be used to predict future performance, as well as in the process of recruiting athletes for specific styles and distances in swimming.

Entities:  

Mesh:

Year:  2012        PMID: 22755464     DOI: 10.2466/05.10.PMS.114.2.610-626

Source DB:  PubMed          Journal:  Percept Mot Skills        ISSN: 0031-5125


  16 in total

1.  Physiological, physical and on-ice performance criteria for selection of elite ice hockey teams.

Authors:  R Roczniok; A Stanula; A Maszczyk; A Mostowik; M Kowalczyk; O Fidos-Czuba; A Zając
Journal:  Biol Sport       Date:  2015-11-19       Impact factor: 2.806

2.  Regression shrinkage and neural models in predicting the results of 400-metres hurdles races.

Authors:  K Przednowek; J Iskra; A Maszczyk; M Nawrocka
Journal:  Biol Sport       Date:  2016-11-10       Impact factor: 2.806

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

Authors:  Karla de Jesus; Helon V H Ayala; Kelly de Jesus; Leandro Dos S Coelho; Alexandre I A Medeiros; José A Abraldes; Mário A P Vaz; Ricardo J Fernandes; João Paulo Vilas-Boas
Journal:  J Hum Kinet       Date:  2018-03-23       Impact factor: 2.193

4.  Relationships between Physical Activity Levels, Self-Identity, Body Dissatisfaction and Motivation among Spanish High School Students.

Authors:  Pedro Antonio Sánchez-Miguel; Francisco Miguel Leo; Diana Amado; Juan José Pulido; David Sánchez-Oliva
Journal:  J Hum Kinet       Date:  2017-10-20       Impact factor: 2.193

5.  The Effects of Two Different Resisted Swim Training Load Protocols on Swimming Strength and Performance.

Authors:  José María González Ravé; Alejandro Legaz-Arrese; Fernando González-Mohíno; Inmaculada Yustres; Rubén Barragán; Francisco de Asís Fernández; Daniel Juárez; Juan Jaime Arroyo-Toledo
Journal:  J Hum Kinet       Date:  2018-10-15       Impact factor: 2.193

6.  Predictive Modeling in Race Walking.

Authors:  Krzysztof Wiktorowicz; Krzysztof Przednowek; Lesław Lassota; Tomasz Krzeszowski
Journal:  Comput Intell Neurosci       Date:  2015-08-03

7.  Comparison of Designated Coefficients and their Predictors in Functional Evaluation of Wheelchair Rugby Athletes.

Authors:  Anna Zwierzchowska; Ewa Sadowska-Krępa; Marta Głowacz; Aleksandara Mostowik; Adam Maszczyk
Journal:  J Hum Kinet       Date:  2015-01-12       Impact factor: 2.193

8.  Planning Training Loads for the 400 M Hurdles in Three-Month Mesocycles using Artificial Neural Networks.

Authors:  Krzysztof Przednowek; Janusz Iskra; Krzysztof Wiktorowicz; Tomasz Krzeszowski; Adam Maszczyk
Journal:  J Hum Kinet       Date:  2017-12-28       Impact factor: 2.193

9.  Neuromuscular Control During the Bench Press Movement in an Elite Disabled and Able-Bodied Athlete.

Authors:  Artur Gołaś; Anna Zwierzchowska; Adam Maszczyk; Michał Wilk; Petr Stastny; Adam Zając
Journal:  J Hum Kinet       Date:  2017-12-28       Impact factor: 2.193

10.  Butterfly Sprint Swimming Technique, Analysis of Somatic and Spatial-Temporal Coordination Variables.

Authors:  Marek Strzała; Arkadiusz Stanula; Piotr Krężałek; Andrzej Ostrowski; Marcin Kaca; Grzegorz Głąb
Journal:  J Hum Kinet       Date:  2017-12-28       Impact factor: 2.193

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