Отрывок: (1) Second layer performs a fuzzification operation. Activation function of the neurons of this layer is a membership function of the corresponding term of the linguistic variable. In this case, the Gaussian function is selected as the activation function: g = Mxij (mij,σij)2 = − (ui(2)−mij)2σij2 , a = eg, j = 1, hı�����. (2) Number of neurons of the third layer is equal to the number of ...
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dc.contributor.authorA.V. Nikonov-
dc.contributor.authorA.M. Vulfin-
dc.contributor.authorM.M. Gayanova-
dc.contributor.authorM.U. Sapozhnikova-
dc.date.accessioned2018-05-22 10:04:47-
dc.date.available2018-05-22 10:04:47-
dc.date.issued2018-
dc.identifierDspace\SGAU\20180518\69647ru
dc.identifier.citationA.V. Nikonov. Development of the Structure of the Knowledge Base for Neuro-Fuzzy Diagnostic System / A.V. Nikonov, A.M. Vulfin, M.M. Gayanova, M.U. Sapozhnikova // Сборник трудов IV международной конференции и молодежной школы «Информационные технологии и нанотехнологии» (ИТНТ-2018) - Самара: Новая техника, 2018. - С.2534-2545.ru
dc.identifier.urihttp://repo.ssau.ru/handle/Informacionnye-tehnologii-i-nanotehnologii/Development-of-the-Structure-of-the-Knowledge-Base-for-NeuroFuzzy-Diagnostic-System-69647-
dc.descriptionОсновная статьяru
dc.description.abstractСardiovascular diseases are one of the leading causes of death worldwide. People suffering from or at high risk of such diseases need constant supervision, early diagnosis and timely assistance. It is shown that the achievement of high accuracy performance in real-time arrhythmias recognition is associated with significant hardware costs. Detection accuracy of arrhythmias recognition does not exceed 80%. An approach, which is offered to solve the problem of high-precision arrhythmia diagnosis on the basis of electrocardiosignal is based on the data mining methods. Application of such methods is necessary for processing large amounts of data with complex structure of the features. Determination of the arrhythmia type with the use of fuzzy inference tools needs to specify the technique of the original data preprocessing. Feature selection, formalization and coding is considered in this paper. The issue of the knowledge base construction – coding, generation and selection of the features (database) as well as the construction of the rules base – as the part of the neuro-fuzzy diagnostic system is also considered. The research goal is to improve the intelligent systems of arrhythmia diagnostics on the basis of neural network classifiers by developing a solution explanation subsystem based on neuro-fuzzy models.ru
dc.language.isoen_USru
dc.publisherНовая техникаru
dc.subjectdata miningru
dc.subjectneural networkru
dc.subjectfuzzy logicru
dc.subjectelectrocardiosignalru
dc.subjectarrhythmiaru
dc.titleDevelopment of the Structure of the Knowledge Base for Neuro-Fuzzy Diagnostic Systemru
dc.typeArticleru
dc.textpart(1) Second layer performs a fuzzification operation. Activation function of the neurons of this layer is a membership function of the corresponding term of the linguistic variable. In this case, the Gaussian function is selected as the activation function: g = Mxij (mij,σij)2 = − (ui(2)−mij)2σij2 , a = eg, j = 1, hı�����. (2) Number of neurons of the third layer is equal to the number of ...-
Располагается в коллекциях: Информационные технологии и нанотехнологии

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