INVESTIGATION OF THE POSSIBILITY OF USING NEUROFUZZY NETWORK TO DETERMINE THE EXTENT OF DoS ATTACK

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https://doi.org/10.30888/2663-5712.2023-21-01-037

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Abstract

As a research method, ANFIS configurations 4-5-8-16-16-1 were used, where 4 is the number of input neurons; 5 – total number of layers; 8 – the number of neurons of the first hidden layer; 16 – the number of neurons of the second hidden layer; 16 – the nu

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References

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Published

2023-09-30

How to Cite

Пахомова, В., & Ковальов, Р. (2023). INVESTIGATION OF THE POSSIBILITY OF USING NEUROFUZZY NETWORK TO DETERMINE THE EXTENT OF DoS ATTACK. SWorldJournal, 1(21-01), 92–98. https://doi.org/10.30888/2663-5712.2023-21-01-037

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Articles