COVID-19 CORONAVIRUS SCREENING ANALYSIS NEURAL NETWORK TECHNOLOGY
DOI:
https://doi.org/10.26906/SUNZ.2021.2.053Keywords:
neural network, recognition, signs-symptoms, adaptation, modification, pre-processingAbstract
Low-cost, reliable and quick screening diagnosis of coronavirus can be implemented on the basis of intelligent technologies for analyzing a set of signs and symptoms with solving the problem of pattern recognition in the basis of artificial neural networks. The high degree of coronavirus infection diagnostic procedure uncertainty, the vector dimension of input factor-symptoms, fuzzy conditioning and poor formalizability of the subject condition connection with these symptoms require appropriate analytical tools. An analysis of the problem and possible solutions allows justifying the feasibilit y of implementing screening diagnostics as a solution to the problem of nonlinear optimization in a multidimensional space of high-dimensional factors and states. Artificial neural networks with compulsory training on a representative sample were chosen as a tool for implementing the project. The proposed technology brings diagnostics of coronavirus infection closer to full automation, robotization and intellectualization of complex monitoring (diagnostic) systems as the most promising technology for pattern recognition in systems with a high degree of entropy and allows you to solve the problem at the lowest cost and required performance indicators.Downloads
References
Haikin, S. Neural Networks: Full course. 2nd edition / Haikin S.M.: "Williams," 2006. 1104 s.
Galushkin A.I. Neurocomputers and their use at the turn of the millennium in China. T.1 and 2 / A.I. Galushkin. M., 2004. 367 p., 464 p.
Gorban A.N., Rossiev D.A. Neural Networks on a personal computer / Novosibirsk: Science, 1996. 276 p.
Alyoshin S.P. Neuronet base of support solutions in the space of factors and states of high dimension / Monograph - Poltava: Izd. Skytech, 2013. 208 p.
Neuronet control of the dynamics of processes as space states of high dimension / S.P. Alyoshin, E.A. Borodina // Herald of RGUPS. 2013. No 4. P. 35 - 42.
Neuronet recognition of classes in real time (Electronic resource) / S.P. Alyoshin, E.A. Borodina // Don's Engineer Gazette. 2013. No 1. Access mode: http://www. ivdon.ru magazine/archive/n1y 2013/1494.
Neuronet modification of the current space features to the target set of classes / A.L. Lyakhov, S.P. Alyoshin, E.A. Borodina // Vysnik Donbass power machine-first academy. 2012. No 4 (29). P. 99 – 104