基于循环节奏的前馈神经网络心率预测

K. Mutijarsa, M. Ichwan, Dina Budhi Utami
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引用次数: 15

摘要

在骑车过程中监测心率是很重要的。通过监测骑行过程中的心率,骑行者可以控制骑行节奏等骑行过程,从而确定运动强度。通过控制骑车的强度,骑自行车的人可以避免过度训练和心脏病发作的风险。运动强度可以通过骑车者的心率来测量。心率可通过穿戴式传感器测量。但也有一些数据不是由传感器在固定时间记录的,比如一秒、两秒等。因此,我们需要一个心率预测模型来弥补缺失的数据。本研究的目的是利用前馈神经网络建立一个基于骑行节奏的心率预测模型。第二个输入是心率(HRt)和节奏(cadt)。输出是下一秒心率的预测值(HRt+1)。采用前馈神经网络作为心率与骑行节奏关系的数学模型。预测模型使用1号骑行者在一次骑行过程中的10000个数据进行训练。测试数据使用6个骑行者的数据集。实验表明,该预测模型生成的心率预测值与传感器测量的心率值接近。训练数据的误差为2.43,测试数据的平均误差为3.02。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heart rate prediction based on cycling cadence using feedforward neural network
It is important to monitor heart rate during cycling. By monitoring heart rate during cycling, cyclists can control the cycling session such as cycling cadence to determine the intensity of exercise. By controlling the intensity of cycling, cyclists can avoid the risks of over training and heart attack. Exercise intensity can be measured by heart rate of cyclist. The heart rate can be measured by wearable sensor. But there are data that are not recorded by the sensor at a regular time for example, one second, two seconds, etc. So we need a prediction model of heart rate to complete the missing data. The purpose of this study is to create a predictive model for heart rate based on cycling cadence using Feedforward Neural Network. The inputs are heart rate (HRt) and cadence (cadt) on the second. The output is the predictive value of heart rate on the next second (HRt+1). Feedforward Neural Network is used as a mathematical model of the relationship between heart rate and cycling cadence. The prediction model was trained using 10000 data of cyclist number 1 in a cycling session. The test data use dataset of 6 cyclists. Experiments show that the prediction model generates the predictive value of heart rate that is close to the value of heart rate measured by the sensor. The error of training data is 2.43 while the average error of test data is 3.02.
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