A Multisensor Respiratory Training System with Real-time Monitoring and Wireless Control


Kozina L. Duzbayev N. Musilimov Z. Mashrapov M. Tuyenbayev M. Bektemyssova G. Makashev Y.
2026Intelligent Network and Systems Society

International Journal of Intelligent Engineering and Systems
2026#19Issue 3997 - 1010 pp.

Recent advances in wearable physiological sensing and Internet of Things (IoT) technologies enable new approaches to respiratory training; however, most existing devices rely on fixed mechanical resistance. This study presents a sensor-driven respiratory training system integrating real-time acquisition of physiological and environmental data with controlled airflow regulation. The system comprises a multisensor respiratory mask, a servo-actuated airflow control chamber, and a software layer for real-time data processing, visualization, and supervisory control. Multisensor data are transmitted via a bidirectional Bluetooth link to support system-level monitoring and respiratory load modulation. Sensor modules were calibrated and evaluated against reference instruments under controlled conditions. System validation included assessment of sensor performance, wireless communication stability, and actuator response. A pilot feasibility study involving 20 amateur athletes confirmed robust operation and reproducibility of sensor-guided respiratory load modulation under real training conditions, demonstrating engineering-level feasibility.

Environmental sensing , IoT-based monitoring , Multisensor system , Physiological biofeedback , Physiological sensing , Respiratory monitoring

Text of the article Перейти на текст статьи

International Information Technology University, Almaty, Kazakhstan
Institute of Genetics and Physiology, Almaty, Kazakhstan

International Information Technology University
Institute of Genetics and Physiology

10 лет помогаем публиковать статьи Международный издатель

Книга Публикация научной статьи Волощук 2026 Book Publication of a scientific article 2026