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자료유형
학술저널
저자정보
Amar AIT ALI YAHIA (National Institute of Higher Education in Science and Technology)
저널정보
국제무예학회 International Journal of Martial Arts International Journal of Martial Arts Volume 7
발행연도
2021.3
수록면
20 - 35 (16page)
DOI
10.51222/injoma.2021.03.7.20

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초록· 키워드

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Background: Winning an Olympic medal is a sporting accomplishment that rewards well-prepared judokas. Despite many studies devoted to understanding his performance, the elite judoka remained an attractive object of investigation. The study aimed to define the technical and tactical profile of the Olympic medalists. Methods and material: The observation of 575 matches determined 6,750 Nage-waza actions performed by 112 male medalists and their opponents in four consecutive Olympic Games (2004, 2008, 2012, and 2016). Anderson-Darling assessed the normal distribution of the data; one-way ANOVA used for inter and intra-Olympic comparisons, followed by the Post hoc Tukey test. Unbiased estimator ω² tested the effect size of the analysis of variance. Results: Medalists performed 6.4±2.4 attacks/match; opponents carried out 5.3±2.2 attacks/match. They have registered offensive effectiveness of 15.7±9.9% and defensive effectiveness of 95.7±4.2%. To achieve this performance, medalists executed 1.7±.6 attacks/min and their opponents’ 1.4±.5 attack/min. Their technical repertoire of 10.8±3.9 techniques has shown the technical requirements at these Olympic competitions. Ashi-waza was the most preferred, but Te-waza was the most effective. Conclusion: These findings improve knowledge of the technical and tactical profile of Olympic medalists. Coaches could use them as references in judoka preparedness for future competitions.

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Abstract
Introduction
Methods and Material
Results
Discussion
Conclusion
References

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