key: cord-0785994-mpbwewm6 authors: Nivethitha, T.; Kumar Palanisamy, Satheesh; Mohanaprakash, K.; Jeevitha, K. title: Comparative study of ANN and Fuzzy classifier for forecasting Electrical activity of Heart to diagnose Covid-19 date: 2020-10-27 journal: Mater Today Proc DOI: 10.1016/j.matpr.2020.10.400 sha: e15185932f4cb4284d746162ff5a7c1355b62cad doc_id: 785994 cord_uid: mpbwewm6 Covid-19 is a dangerous communicable virus which lets down the world economy. Severe respiratory syndrome SARS-COV-2 leads to Corona Virus Disease (COVID-19) and has the capability of transmission through human-to-human and surface-to-human transmission leads the world to catastrophic phase. Computational system based biological signal analysis helps medical officers in handling COVID-19 tasks like ECG monitoring at Intensive care, fatal ventricular fibrillation, etc., This paper is on diagnosing heart dysfunctions such as tachycardia, bradycardia, ventricular fibrillation, cardiac arrhythmia using fuzzy relations and artificial intelligence algorithm. In this study, the heart pulse base signal and features like spectral entropy, largest lyapunov exponent, Poincare plot and detrended fluctuation analysis are extracted and presented for classification purpose. The RR intervals of Poincare plot summarize RR time series obtained from an ECG in one picture, and a time interval quantities derives information duration of HRV. This analysis eases the prediction of heart rate fluctuation due to Covid or other heart disorders. The better accuracy level in diagnosing heart pulse irregularity using Artificial Neural network(ANN) is an integer value (0 to 4)but for Fuzzy Classifier, it is 0.8 to 0.9.The processing time for analyzing heart dysfunctionalties is 0.05s using ANN which is far better than Fuzzy classifier. Nowadays, the world has been suffering from epidemic and pandemic issues periodically. The wake of epidemic destroyed millions of lives. This year has literally stopped the entire world with the outbreak of Covid-19 and the world is continuously fighting against the virus devastation. The covid targets the respiratory organs and the critical issues leads to malfunctioning of heart. The heart's "natural pacemaker" generates electrical pulse originating from Sino Atrial node(SA) situated at the top of the right Atrium (RA). This electric signal branches via atria, triggers to contracts and dilates to pump blood to the ventricles. If the pacemaker gets affected, the heart, beats at an abnormal rate, influences the irregular circulation of blood. Fig.1 shows ECG waveform components [3] . The heart beat is a series of electrical waves characterized by positive and negative peaks which has two distinct information are measured by Eelectrocardiogram(ECG) where each. First, by measuring time intervals, the total time of electrical wave from the heart can be found and able to find whether the electrical activity is abnormal or normal. Second, by measuring the quantity of electrical pulse over the heart muscle. A pediatric cardiologist able to find, if the heart pumping is overworked or not. The normal rate of ECG signal ranged as [0.05 -100] Hz and its pulse level is [1-10] mV [3] . The characterization of ECG is derived by positive and negative peaks by successive alphabetical letters as P, Q, R, S and T. The duration and amplitude of the different segments in the electrocardiogram are given in the table 1.1. The accuracy and reliability of the QRS complex, T and P waves determines the performance of ECG analyzing system. The P wave signifies the activating status of upper chambers of the heart, while the QRS wave (or complex) and T wave represents the excitation of the ventricles. The need of QRS complex is essential in automatic signal analysis and detailed study of ECG. Cuiwei Li et al. (1995) comprehends the multiple scaling information in wavelets to analyse the ECG electric waves. The time interval between P and T waves, drift in baseline, noise and interference were identified [18] . Senhadi et al. (1995) examined wavelet transforms for characterizing cardiac waves and discusses the usage of analyzing function and wavelet family in the Daubechies decompositions given by the complex wavelet (10 levels) and the spline wavelet (6 levels) and [19] . Amara Graps (1995) symbolizes the analytical computation capability and complexity level is very high in D6 algorithm and analyses the importance of Harr wavelet algorithm, which is less complex and less mathematical computation. D6 of Debauchees and QRS complex are similar in the characteristics and its spectrum level of energy is more concentrated at lower frequencies of heart pulse [20] . Zong and Jiang (1998) sophisticated for ECG, beat and rhythm extraction and classification using fuzzy reasoning approach. For single channel ECG beat and rhythm extraction and categorization, using fuzzy logic approach is discussed [21] . Sugiura et al. (1998) shows the new innovative technique to detect cardiac arrhythmias based on fuzzy to separate NSR from VF [22] . emphasizes on fuzzy equivalence for extraction and categorization of four cardiac arrhythmias based on heart rate variability. The classification was accurate [23] , [16] , [9] , [10] , [11] . Kannathal et al. (2005) uses three parameters as inputs in proposed Artificail Neural Network(ANN) classifier for classification of heart beat dysfunctionalities [24] . R.J.Adams(2009) updated a report from American Heart Association to classify heart disease [25] . Abhishek Murthy, et.,al,, (2013) analysed the cardiac excitation of wavefront [1], [2] , [4] , [13] .V.C.Veera, et. al., (2008) classified the Cardiac arrhythmia based on fuzzy classifiers [3] . S.Z. Mohmoodabadi, et.,al,,(2005) extracted the ECG feature using daubechies waveletets [8] . Woo.M.A,et.al.,(1992) classifies the Patterns of variations in time interval of heart rate in fatal heart dysfunctions [5] , [6] . Demir BE, Yorulmaz F, Guler .I. (2010) simulated ECG in Microcontroller [7] . Normally, heartbeats originate as electrical impulse in the sino atrial node, and the sequence of heartbeats is called as sinus rhythm. Arrhythmia is nothing but an abnormality in the pulse. Electrical pulse instability and abnormal mechanical activity of the heart are associated with cardiac Arrythmia. Arrhythmias categorized based on origin of the abnormal electrical activity, usually, abnormal heart beats originates from the atria, the ventricles, or the atrio ventricular node [2] . The complexity nature of the HRV signal is defined by spectral entropy, H (0