Department of IT Fusion Technology, Graduate School, Chosun University, 375 Seosuk-dong, Gwangju, Korea.
Sensors (Basel). 2012 Oct 25;12(11):14382-96. doi: 10.3390/s121114382.
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.
本文提出了一种使用开发的贴片式传感器模块对心率(HR)和运动指数(MI)进行无线监测的能量消耗(EE)智能预测器。为此,通过基于模糊粒度的区间预测的先进语言模型(LM)设计了智能预测器,该预测器可以通过基于上下文的模糊 C 均值(CFCM)聚类来实现。系统组件包括传感器板、橡胶外壳和内置分析算法的通信模块。该传感器贴片在用户胸部,以在室内和室外环境中获取生理数据。通过均方根误差(RMSE)来演示预测性能。随着上下文和聚类的数量分别从 2 增加到 6,预测性能得到提高。从朝鲜大学招募了 30 名参与者参加这项研究。数据集分别在室外正常行走、快速行走、慢跑和缓跑以及室内跑步机跑步期间记录。在 10 次迭代中,我们在归一化空间中随机将数据集分为训练(60%)和测试数据集(40%)。训练数据集用于模型构建,而测试集用于模型验证。实验结果表明,与传统的 LM 相比,在跑步机模拟跑步时,预测误差提高了约 51%和 12%,分别用于训练和检查数据集。