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Design of an Optimized Fuzzy Classifier for the Diagnosis of Blood Pressure with a New Computational Method for Expert Rule Optimization

机译:一种新的专家规则优化计算方法用于血压诊断的优化模糊分类器设计

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A neuro fuzzy hybrid model (NFHM) is proposed as a new artificial intelligence method to classify blood pressure (BP). The NFHM uses techniques such as neural networks, fuzzy logic and evolutionary computation, and in the last case genetic algorithms (GAs) are used. The main goal is to model the behavior of blood pressure based on monitoring data of 24 h per patient and based on this to obtain the trend, which is classified using a fuzzy system based on rules provided by an expert, and these rules are optimized by a genetic algorithm to obtain the best possible number of rules for the classifier with the lowest classification error. Simulation results are presented to show the advantage of the proposed model.
机译:提出了一种神经模糊混合模型(NFHM)作为一种新的人工智能方法来对血压(BP)进行分类。 NFHM使用诸如神经网络,模糊逻辑和进化计算之类的技术,并且在最后一种情况下使用遗传算法(GA)。主要目标是基于每位患者24小时的监测数据对血压行为进行建模,并以此为基础获得趋势,然后根据专家提供的规则使用模糊系统对趋势进行分类,并通过一种遗传算法,以最小的分类误差为分类器获得尽可能多的规则。仿真结果表明了该模型的优越性。

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