Integrating Biomechanics into Athlete Training To Improve Power of Motion Feedback Systems

Authors

  • G. Sujatha Assistant Professor, Department of EEE, G. Narayanamma Institute of Technology and Science, Shaikpet, Hyderabad, Telangana-500104, India. Author

Keywords:

Sports Biomechanics, Biomechanics in Athlete training, Motion Feedback Systems, Injury Prevention in Sports, Sports Injury, Athletic Coaching

Abstract

Sports biomechanics plays a crucial role in understanding how athletes can improve their performance and reduce injury risks. This paper introduces the Biome hedge Feedback System (BEFS), an innovative platform that uses motion capture technology combined with AI to analyze athletes' movements. The BEFS provides real-time feedback on posture, joint alignment, and muscle coordination, offering tailored corrective actions. By incorporating this system into training routines, coaches can enhance athletes’ movement efficiency and precision, leading to improved performance and minimized injury incidence.In a simulation study conducted to assess the impact of the SportFlow Analytics Engine (SFAE), 300 athletes from various sports, including basketball, soccer, and tennis, were tracked throughout a full competitive season. The SFAE system, which uses real-time data and machine learning to predict game outcomes, player performance, and injury risks, demonstrated remarkable improvements across multiple metrics. The prediction accuracy of game outcomes reached an impressive 88%, a significant increase over the 72% accuracy achieved by traditional methods. Player performance also saw substantial gains, with teams using SFAE showing a 15% improvement in key metrics like scoring efficiency in basketball, goal conversion rates in soccer, and first-serve accuracy in tennis. Furthermore, the system's ability to predict injury risks was highly effective, forecasting potential injuries with an 82% success rate, which contributed to a 20% reduction in soft tissue injuries compared to previous seasons. Coaches utilizing SFAE were able to make tactical adjustments 30% faster, leading to a 10% improvement in overall team performance. Additionally, fan engagement rose by 25% as the system provided real-time statistics and insights, increasing interaction with digital platforms.

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Published

2024-12-31

How to Cite

G. Sujatha. (2024). Integrating Biomechanics into Athlete Training To Improve Power of Motion Feedback Systems. Journal of Computing in Education, Sports and Health (JCESH), 1(1), 41-54. https://fringeglobal.com/ojs/index.php/jcesh/article/view/integrating-biomechanics-into-athlete-training-to-improve-power