ECG signal classification method based on improved BP neural network

Accurate identification of ECG signals is the key to intelligent diagnosis of ECG monitoring systems. In order to improve the classification accuracy of ECG signals, an improved ECG signal classification algorithm based on BP neural network was studied. Firstly, statistical analysis was performed on...

Full description

Bibliographic Details
Main Authors: Wang Li, Guo Xiaodong, Hui Yanbo
Format: Article
Language:zho
Published: National Computer System Engineering Research Institute of China 2019-06-01
Series:Dianzi Jishu Yingyong
Subjects:
Online Access:http://www.chinaaet.com/article/3000104202
id doaj-b514f7fe877347818b44459697cf068d
record_format Article
spelling doaj-b514f7fe877347818b44459697cf068d2020-11-25T01:12:18ZzhoNational Computer System Engineering Research Institute of ChinaDianzi Jishu Yingyong0258-79982019-06-0145610811210.16157/j.issn.0258-7998.1900303000104202ECG signal classification method based on improved BP neural networkWang Li0Guo Xiaodong1Hui Yanbo2School of Electrical Engineering,Henan University of Technology,Zhengzhou 450001,ChinaSchool of Electrical Engineering,Henan University of Technology,Zhengzhou 450001,ChinaSchool of Electrical Engineering,Henan University of Technology,Zhengzhou 450001,ChinaAccurate identification of ECG signals is the key to intelligent diagnosis of ECG monitoring systems. In order to improve the classification accuracy of ECG signals, an improved ECG signal classification algorithm based on BP neural network was studied. Firstly, statistical analysis was performed on the MIT-BIH Arrhythmia Database sample experts. The normal heart beat, ventricular premature beat, left bundle branch block heart beat and right bundle branch block heart beat were selected as neural network recognition targets, and extracted by principal component analysis. 25 heart beat features are used as sample vectors. The simulation results show that the improved BP neural network has better classification and recognition ability, and the accuracy of the whole sample classification is 98.4%. The algorithm has fast convergence speed and high classification accuracy, which is helpful for detecting and diagnosing heart diseases.http://www.chinaaet.com/article/3000104202ECG signalimproved BP neural networkprincipal component analysisintelligent diagnosis
collection DOAJ
language zho
format Article
sources DOAJ
author Wang Li
Guo Xiaodong
Hui Yanbo
spellingShingle Wang Li
Guo Xiaodong
Hui Yanbo
ECG signal classification method based on improved BP neural network
Dianzi Jishu Yingyong
ECG signal
improved BP neural network
principal component analysis
intelligent diagnosis
author_facet Wang Li
Guo Xiaodong
Hui Yanbo
author_sort Wang Li
title ECG signal classification method based on improved BP neural network
title_short ECG signal classification method based on improved BP neural network
title_full ECG signal classification method based on improved BP neural network
title_fullStr ECG signal classification method based on improved BP neural network
title_full_unstemmed ECG signal classification method based on improved BP neural network
title_sort ecg signal classification method based on improved bp neural network
publisher National Computer System Engineering Research Institute of China
series Dianzi Jishu Yingyong
issn 0258-7998
publishDate 2019-06-01
description Accurate identification of ECG signals is the key to intelligent diagnosis of ECG monitoring systems. In order to improve the classification accuracy of ECG signals, an improved ECG signal classification algorithm based on BP neural network was studied. Firstly, statistical analysis was performed on the MIT-BIH Arrhythmia Database sample experts. The normal heart beat, ventricular premature beat, left bundle branch block heart beat and right bundle branch block heart beat were selected as neural network recognition targets, and extracted by principal component analysis. 25 heart beat features are used as sample vectors. The simulation results show that the improved BP neural network has better classification and recognition ability, and the accuracy of the whole sample classification is 98.4%. The algorithm has fast convergence speed and high classification accuracy, which is helpful for detecting and diagnosing heart diseases.
topic ECG signal
improved BP neural network
principal component analysis
intelligent diagnosis
url http://www.chinaaet.com/article/3000104202
work_keys_str_mv AT wangli ecgsignalclassificationmethodbasedonimprovedbpneuralnetwork
AT guoxiaodong ecgsignalclassificationmethodbasedonimprovedbpneuralnetwork
AT huiyanbo ecgsignalclassificationmethodbasedonimprovedbpneuralnetwork
_version_ 1725167156195229696