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Applying hierarchical fuzzy automatons to automatic diagnosis

机译:应用层次模糊自动化自动诊断

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Hierarchical fuzzy automatons (HFAs) are employed to perform automatic diagnosis on a signal represented as set of discrete time measurements. The HFA incorporates two levels of hierarchy with the lower level identifying structures within the signal and the top level integrating the results from lower level automatons. An adaptive resonance theory (ART) artificial neural network (ANN) is used to determine input tokens and to tokenize the input. The tokens generated by the ANN are given fuzzy memberships using information derived from the state of the ANN. In addition, a general methodology is presented for constructing HFAs. HFAs are applied to the problem of determining whether an ECG recording is normal or shows atrial fibrillation.
机译:采用分层模糊自动化(HFAS)对表示为离散时间测量集的信号进行自动诊断。 HFA与信号内的较低级别识别结构的两级层次结构包含了两级层次结构,顶层与较低级别自动化的结果集成。自适应谐振理论(ART)人工神经网络(ANN)用于确定输入令牌并令授权输入。 ANN生成的令牌是使用从ANN状态的信息提供模糊的成员资格。此外,提出了一种用于构建HFA的一般方法。 HFA应用于确定ECG记录是否正常或显示心房颤动的问题。

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