Information Technology Group, Wageningen University, Wageningen, Netherlands.
Istanbul Kültür University, Department of Computer Engineering, Istanbul, 34156, Turkey.
Comput Methods Programs Biomed. 2018 Apr;157:31-37. doi: 10.1016/j.cmpb.2018.01.015. Epub 2018 Jan 13.
It is crucial to predict the human energy expenditure in any sports activity and health science application accurately to investigate the impact of the activity. However, measurement of the real energy expenditure is not a trivial task and involves complex steps. The objective of this work is to improve the performance of existing estimation models of energy expenditure by using machine learning algorithms and several data from different sensors and provide this estimation service in a cloud-based platform.
In this study, we used input data such as breathe rate, and hearth rate from three sensors. Inputs are received from a web form and sent to the web service which applies a regression model on Azure cloud platform. During the experiments, we assessed several machine learning models based on regression methods.
Our experimental results showed that our novel model which applies Boosted Decision Tree Regression in conjunction with the median aggregation technique provides the best result among other five regression algorithms.
This cloud-based energy expenditure system which uses a web service showed that cloud computing technology is a great opportunity to develop estimation systems and the new model which applies Boosted Decision Tree Regression with the median aggregation provides remarkable results.
在任何体育活动和健康科学应用中,准确预测人体能量消耗对于研究活动的影响至关重要。然而,测量真实的能量消耗并不是一项简单的任务,涉及到复杂的步骤。本工作的目的是通过使用机器学习算法和来自不同传感器的多组数据,改进现有的能量消耗估算模型的性能,并在基于云的平台上提供这种估算服务。
在本研究中,我们使用了来自三个传感器的呼吸率和心率等输入数据。输入通过网络表单接收,并发送到网络服务,该服务在 Azure 云平台上应用回归模型。在实验过程中,我们评估了基于回归方法的几种机器学习模型。
我们的实验结果表明,我们的新型模型应用了提升决策树回归和中位数聚合技术,在其他五种回归算法中提供了最佳结果。
这个基于云的能量消耗系统使用网络服务表明,云计算技术是开发估算系统的绝佳机会,而应用提升决策树回归和中位数聚合的新模型提供了显著的结果。