Nonparametric Hammerstein Model Based Model Predictive Control for Heart Rate Regulation

Steven W. Su, Shoudong Huang, Lu Wang, Branko G. Celler, Andrey V. Savkin, Ying Guo, Teddy Cheng
2007 IEEE Engineering in Medicine and Biology Society. Conference Proceedings  
This paper proposed a novel nonparametric model based model predictive control approach for the regulation of heart rate during treadmill exercise. As the model structure of human cardiovascular system is often hard to determine, nonparametric modelling is a more realistic manner to describe complex behaviours of cardiovascular system. This paper presents a new nonparametric Hammerstein model identification approach for heart rate response modelling. Based on the pseudo-random binary sequence
more » ... periment data, we decouple the identification of linear dynamic part and input nonlinearity of the Hammerstein system. Correlation analysis is applied to acquire step response of linear dynamic component. Support Vector Regression is adopted to obtain a nonparametric description of the inverse of input static nonlinearity that is utilized to form an approximate linear model of the Hammerstein system. Based on the established model, a model predictive controller under predefined speed and acceleration constraints is designed to achieve safer treadmill exercise. Simulation results show that the proposed control algorithm can achieve optimal heart rate tracking performance under predefined constraints. Index Terms-Hammerstein model identification, Model Predictive Control, Nonparametric model, Support Vector Regression, Heart rate control.
doi:10.1109/iembs.2007.4352956 pmid:18002622 fatcat:thsro7nnybgudo6unksnwx2abe