Litcius/Paper detail

Fiber optic sensor embedded smart helmet for real-time impact sensing and analysis through machine learning

Yiyang Zhuang, Qingbo Yang, Taihao Han, Ryan O’Malley, Aditya Kumar, Rex E. Gerald, Jie Huang

2021Journal of Neuroscience Methods37 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Mild traumatic brain injury (mTBI) strongly associates with chronic neurodegenerative impairments such as post-traumatic stress disorder (PTSD) and mild cognitive impairment. Early detection of concussive events would significantly enhance the understanding of head injuries and provide better guidance for urgent diagnoses and the best clinical practices for achieving full recovery. NEW METHOD: A smart helmet was developed with a single embedded fiber Bragg grating (FBG) sensor for real-time sensing of blunt-force impact events to helmets. The transient signals provide both magnitude and directional information about the impact event, and the data can be used for training machine learning (ML) models. RESULTS: ∼ 0.90) the magnitudes and directions of blunt-force impact events from data not used for model training. COMPARISON WITH EXISTING METHODS: The combination of the smart helmet data with analyses using ML models provides accurate predictions of the types of impactors that caused the events, as well as the magnitudes and the directions of the impact forces, which are unavailable using existing devices. CONCLUSION: This work resulted in an ML-assisted, FBG-embedded smart helmet for real-time identification of concussive events using a highly accurate multi-metric strategy. The use of ML-FBG smart helmet systems can serve as an early-stage intervention strategy during and immediately following a concussive event.

Topics & Concepts

Optical fiberFiber optic sensorComputer scienceFiberArtificial intelligenceTelecommunicationsMaterials scienceComposite materialTraumatic Brain Injury ResearchTraumatic Brain Injury and Neurovascular DisturbancesInjury Epidemiology and Prevention