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Internet of things enabled deep learning monitoring system for realtime performance metrics and athlete feedback in college sports

Yang Hu, Yaxing Li, Benlai Cui, Hao Su, Pan Zhu

2025Scientific Reports12 citationsDOIOpen Access PDF

Abstract

This study presents an Internet of Things (IoT)-enabled Deep Learning Monitoring (IoT-E-DLM) model for real-time Athletic Performance (AP) tracking and feedback in collegiate sports. The proposed work integrates advanced wearable sensor technologies with a hybrid neural network combining Temporal Convolutional Networks, Bidirectional Long Short-Term Memory (TCN + BiLSTM) + Attention mechanisms. It is designed to overcome key challenges in processing heterogeneous, high-frequency sensor data and delivering low-latency, sport-specific feedback. The system deployed edge computing for real-time local processing and cloud setup for high-complexity analytics, achieving a balance between responsiveness and accuracy. Extensive research was tested with 147 student-athletes across numerous sports, including track and field, basketball, soccer, and swimming, over 12 months at Shangqiu University. The proposed model achieved a prediction accuracy of 93.45% with an average processing latency of 12.34 ms, outperforming conventional and state-of-the-art approaches. The system also demonstrated efficient resource usage (CPU: 68.34%, GPU: 72.56%), high data capture reliability (98.37%), and precise temporal synchronization. These results confirm the model's effectiveness in enabling real-time performance monitoring and feedback delivery, establishing a robust groundwork for future developments in Artificial Intelligence (AI)-driven sports analytics.

Topics & Concepts

Computer scienceLatency (audio)Deep learningCloud computingAnalyticsLow latency (capital markets)Big dataWearable computerReal-time computingArtificial intelligenceMachine learningMultimediaData scienceEmbedded systemData miningComputer networkOperating systemTelecommunicationsSports Performance and TrainingPhysical Activity and HealthCardiovascular and exercise physiology
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