Abstract

This paper is concerned with an intelligent predictor of energy expenditure (EE) using a developed patch-type sensor module for wireless monitoring of heart rate (HR) and movement index (MI). For this purpose, an intelligent predictor is designed by an advanced linguistic model (LM) with interval prediction based on fuzzy granulation that can be realized by context-based fuzzy c-means (CFCM) clustering. The system components consist of a sensor board, the rubber case, and the communication module with built-in analysis algorithm. This sensor is patched onto the user's chest to obtain physiological data in indoor and outdoor environments. The prediction performance was demonstrated by root mean square error (RMSE). The prediction performance was obtained as the number of contexts and clusters increased from 2 to 6, respectively. Thirty participants were recruited from Chosun University to take part in this study. The data sets were recorded during normal walking, brisk walking, slow running, and jogging in an outdoor environment and treadmill running in an indoor environment, respectively. We randomly divided the data set into training (60%) and test data set (40%) in the normalized space during 10 iterations. The training data set is used for model construction, while the test set is used for model validation. The experimental results revealed that the prediction error on treadmill running simulation was improved by about 51% and 12% in comparison to conventional LM for training and checking data set, respectively.

Highlights

  • Energy expenditure (EE) refers to the amount of energy that a person uses daily to complete all bodily activities from movement to breathing

  • This paper focuses on a method for designing an intelligent predictor of EE using the developed patch-type sensor module for wireless monitoring of a given input-output data such as heart rate (HR), movement index (MI), and EE

  • We developed an intelligent TSK-linguistic model (LM) predictor of energy expenditure with the aid of a patch-type sensor module for wireless monitoring of heart rate and movement index

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Summary

Introduction

Energy expenditure (EE) refers to the amount of energy that a person uses daily to complete all bodily activities from movement to breathing. The need for wireless health monitoring and detection of emergency situations has rapidly increased [1]. Such a wireless system is used extensively, to estimate. The recent introduction of the Cosmed K4b2 portable metabolic analyzer allows measurement of VO2 outside of a laboratory setting in more typical clinical or household environments [3]. This analyzer provides measurements of VO2 and VCO2 during steady-state, submaximal exercise similar to the traditional gas exchange system [4].

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