Narmadha G, Deivasigamani S, Muthukumar Vellaisamy, Lídio Inácio Freitas, Badlishah Ahmad R, Sakthivel B
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引用次数: 0
摘要
人类的自律神经系统(ANS)主要受到心理压力的影响。自律神经系统的变化可能导致人类多种慢性疾病。心电图(ECG)信号可用于观察自律神经系统的变化。针对心电图压力信号处理特征提取和分类提出了许多技术。这项工作管理从较小的峰值波形(如 P、Q、S 和 T 波)中获取的心率变异性特征。此外,还检测到了 R 峰,这是心电图波形的重要组成部分。在这项工作中,拟议的压力分类工作主要分为两个过程:特征选择(FS)和分类。这项工作的主要目的是提出一种优化的 FS 和分类器模型,用于检测心电信号中的压力。提出了非洲秃鹫优化(AVO)技术的元启发式模型来执行 FS。这种选择是为了选择所需的特征并尽量减少分类数据。提出了基于 AVO 的修正 Elman 循环神经网络(MERNN)技术,以执行高效分类。AVO 用于微调 MERNN 技术的权重。该技术的实验结果以召回率(91.56%)、准确率(92.43%)、精确率(92.78%)和 F1 分数(95.86%)进行评估。因此,建议的性能比传统技术取得了更优异的结果。
Detection of Human Stress Using Optimized Feature Selection and Classification in ECG Signals
An autonomic nervous system (ANS) of humans is majorly affected by psychological stress. The changes in ANS may cause several chronic diseases in humans. The electrocardiogram (ECG) signal is used to observe the variation in ANS. Numerous techniques are presented for an ECG stress signal handling feature extraction and classification. This work managed a heart rate variability feature acquired from smaller peak waveforms such as P, Q, S, and T waves. Also, the R peak is detected, which is a significant part of the ECG waveform. In this work, the proposed stress classification work has been categorized into two main processes: feature selection (FS) and classification. The main aim of the proposed work is to propose an optimized FS and classifier model for the detection of stress in ECG signals. The Metaheuristics model of the African vulture optimization (AVO) technique is presented to perform an FS. This selection is made to choose the required features and minimize the data for classification. The AVO-based modified Elman recurrent neural network (MERNN) technique is proposed to perform an efficient classification. The AVO is used for fine-tuning the weight of the MERNN technique. The experimental result of this technique is evaluated in terms of Recall (91.56%), Accuracy (92.43%), Precision (92.78%), and F1 score (95.86%). Thus, the proposed performance achieved a superior result than the conventional techniques.
期刊介绍:
Mathematical Problems in Engineering is a broad-based journal which publishes articles of interest in all engineering disciplines. Mathematical Problems in Engineering publishes results of rigorous engineering research carried out using mathematical tools. Contributions containing formulations or results related to applications are also encouraged. The primary aim of Mathematical Problems in Engineering is rapid publication and dissemination of important mathematical work which has relevance to engineering. All areas of engineering are within the scope of the journal. In particular, aerospace engineering, bioengineering, chemical engineering, computer engineering, electrical engineering, industrial engineering and manufacturing systems, and mechanical engineering are of interest. Mathematical work of interest includes, but is not limited to, ordinary and partial differential equations, stochastic processes, calculus of variations, and nonlinear analysis.