Author/Authors :
Jia, Nan School of Data and Computer Science - Sun Yat-sen University - Guangzhou, China , Chen, Xiaohui School of Data and Computer Science - Sun Yat-sen University - Guangzhou, China , Yu, Liang School of Data and Computer Science - Sun Yat-sen University - Guangzhou, China , Wang, Ruomei School of Data and Computer Science - Sun Yat-sen University - Guangzhou, China , Yang, Kaixing School of Data and Computer Science - Sun Yat-sen University - Guangzhou, China , Luo, Xiaonan School of Computer and Information Security - Guilin University of Electronic Technology - Guilin, China
Abstract :
Research of healthy exercise has garnered a keen research for the past few years. It is known that participation in a regular exercise
program can help improve various aspects of cardiovascular function and reduce the risk of suffering from illness. But some
exercise accidents like dehydration, exertional heatstroke, and even sudden death need to be brought to attention. If these exercise
accidents can be analyzed and predicted before they happened, it will be beneficial to alleviate or avoid disease or mortality. To
achieve this objective, an exercise health simulation approach is proposed, in which an integrated human thermophysiological
model consisting of human thermal regulation model and a nonlinear heart rate regulation model is reported. The human
thermoregulatory mechanism as well as the heart rate response mechanism during exercise can be simulated. On the basis of
the simulated physiological indicators, a fuzzy finite state machine is constructed to obtain the possible health transition sequence
and predict the exercise health status. The experiment results show that our integrated exercise thermophysiological model can
numerically simulate the thermal and physiological processes of the human body during exercise and the predicted exercise health
transition sequence from finite state machine can be used in healthcare.
Keywords :
Human , Thermophysiological , Simulation , fuzzy