Research of Heart Rate Variability Analysis System Based on Cloud Model

The heart rate variability (HRV) has been used to analysis many diseases due to the non-invasive characteristic. In recent years, researches show that there exists relationship between mental stress and HRV. With the development of science and technology, health monitoring is becoming more and more intelligent. In this paper, a heart rate variability based on cloud model has been proposed. The HRV analysis system has been deployed on the cloud platform, which can realize the basic analysis of HRV. Meanwhile, this paper presents a quantitative model of mental stress based on fuzzy analytic hierarchy process (FAHP). The results demonstrate that the system can well realize the above analyses. It is significant to human health.

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