Practical application of time-motion analysis of judo female cadets’ combats between weight divisions
Bianca Miarka,
Diego Ignácio Valenzuela Pérez,
Esteban Aedo-Muñoz,
Lindsei Brabec Mota Barreto,
José Raimundo Fernandes and
Ciro José Brito
International Journal of Performance Analysis in Sport, 2020, vol. 20, issue 4, 701-708
Abstract:
The purpose of the study was to compare the female cadet`s judo weight divisions based on time-motion analysis. For this, participants were grouped by weight, according to the following criteria: Lighters (n = 32, ≤ 48 kg), Middlers (n = 24, > 48 kg and ≤ 63 kg) and Heavies (n = 14, > 63 kg) of four local judo championships. Time-motion analysis were observed, according to each combat phase (i.e. combat, standing combat, approach, gripping, attack, groundwork combat and pause phases). ANOVA and Bonferroni tests were used, p ≤.05. The results indicated differences between total combat phase, with heavies (109.6 ± 67.2 s) lighters (41.2 ± 25 s) and heavies (31.4 ± 27.7 s). In conclusion, female cadet training programmes should be adjusted according to their weight divisions with consideration for the temporal structure of the competitive environment.
Date: 2020
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DOI: 10.1080/24748668.2020.1780870
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