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Classification of Heart Diseases Using Fuzzy Inference System (FIS) with Adaptive Noise Cancellation (ANC) Technique for Electrocardiogram (ECG) Signals

机译:使用模糊推理系统(FIS)对心电图(ANC)技术的模糊推理系统(FIS)进行心脏疾病的分类

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Today, the use of computer technology is increasing in the fields of medical diagnosis and treatment of illnesses and patients. The electrocardiogram is the bio-electrical signal that records the activity of the heart against the electrical time. An electrocardiogram is a significant diagnosis device in order to detect the functions of the heart. Electrocardiography is the electrical activity record in the heart to examine the operation of the cardiac muscle and the neural transmission system. In clinical practice, ECG is a very substantial diagnostic device. It is especially useful in the diagnosis of rhythm diseases, changes in electrical conduction and diagnosis of myocardial ischemia and infarction. Fuzzy logic is a combination of people's experiences, by using the obtained values with certain algorithms, depending on each rule that will be created, certain mathematical with the help of functions. ANC (Recursive Least Squares algorithm) is proposed to remove artifacts that preserve the low-frequency components and tiny properties of the electrocardiogram. When new arriving signal samples are received at each iteration, the least-squares problem solution can be computed in a recursive form resulting in RLS algorithms. It is known that RLS algorithms maintain fast convergence. The aim of this manuscript is to detect the heart diseases in the person by using Fuzzy Logic Inference System. This manuscript suggests filtering method Adaptive Noise Cancellation (RLS Algorithm) that detect the heart diseases in the person by using Fuzzy Logic Inference System to help decrease noise interference in Electrocardiogram signals and better diagnose outcomes.
机译:如今,计算机技术的使用在医学诊断和疾病和患者的治疗领域正在增加。心电图是生物电信号,记录心脏的活动抵抗电气时间。心电图是一个重要的诊断装置,以便检测心脏的功能。心电图是心脏中的电活动记录,以检查心肌和神经传输系统的操作。在临床实践中,ECG是一个非常实质的诊断装置。它特别有用于诊断节律疾病,导电变化和心肌缺血和梗死的诊断。模糊逻辑是人们的经验组合,通过使用具有某些算法的所获得的值,具体取决于每个将创建的规则,在功能的帮助下某些数学。 ANC(递归最小二乘算法)被提出去除保存低频分量和心电图的微小特性的伪影。当在每次迭代接收到新的到达信号样本时,可以以递归形式计算最小二乘问题解决方案,从而产生RLS算法。已知RLS算法保持快速收敛。该稿件的目的是通过使用模糊逻辑推断系统来检测人心脏病。此稿件建议滤波方法自适应噪声消除(RLS算法),通过使用模糊逻辑推理系统在心电图信号有助于减少噪音的干扰,更好的诊断结果检测出人的心脏疾病。

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