Modeling the restoration of biological and biotechnical systems using hardware analog and software artificial neural networks
Автор: Turovskii Ya. A., Bogatikov E.V., Tikhomirov S.G., Adamenko A.A.
Статья в выпуске: 2 (76), 2018 года.
A hardware analog model of an artificial neural network was developed, based on a specially trained software artificial neural network, for modeling the process of recovering damaged biological and biotechnical systems using neurochips based on the evolutionary method of training. A series of 12 computational experiments on the restoration of a damaged hardware analog artificial neural network with the help of a software artificial neural network was carried out. To restore a damaged network, an evolutionary approach is used. In most cases, it is possible to restore a damaged hardware analog neural network to 100% accuracy. The obtained results confirm the efficiency of the proposed approach in the framework of modeling the restoration of damaged biological and biotechnical systems using a neurochipon the basis of the evolutionary method using the "isolation" mechanism. The proposed recovery method opens up prospects for such areas as neuroprosthetics, self-learning and self-adapting systems; reverse-engineering; restoration of damaged data banks, image restoration; decision making and management, and so on.
Neurochip, evolutionary algorithm, isolates, artificial neural networks, hardware analog artificial neural network, software artificial neural network
Короткий адрес: https://readera.ru/140238614
IDR: 140238614 | DOI: 10.20914/2310-1202-2018-2-86-92