Intellectual computer technologies in designing vehicles


  • O. Nikonov Kharkiv National Automobile and Highway University, Ukraine


Ключові слова:

computer technology, vehicles, critical technologies, artificial intelligence, synergistic approach, evolutionary methods


Problem. Today, the scientific and technological sphere has become the main arena of competition of states in the world, and the possession of so-called “critical technologies” (CT) is used as one of the important instruments of geopolitics. Such technologies are crucial for expanding the possibilities of the state defense and achieving the goals of national security, primarily military, military-economic and scientific as well as technological security. Selection of CT is used to determine the priorities of scientific and technological development of states and military-technical policy and are crucial for the process of creating promising weapons and military equipment. Goal. The purpose of the article is to analyze the main trends and approaches to the concept of vehicle development based on the convergence of intellectual critical technologies. Methodology. For the effective development of vehicles it is necessary to use the technology of virtual reality, synergistic approach, evolutionary methods of modeling, methods of deep learning of artificial multilayer neural networks. Results. Advanced technology allows us to reduce the cost of developing new models by cutting the number of real prototypes, each of which is created individually and requires significant costs. Originality. Despite all the disadvantages, improved methods of deep learning open up new opportunities for an effective analysis of large volumes of unstructured data. Companies that use deep training in their tasks will be able to get more accurate analytics results without having to spend a lot of time learning the system. The main tendencies and approaches to the concept of the development of vehicles on the basis of convergence of intellectual critical technologies are analyzed. Practical value. National CTs are of key importance for expanding resources of Ukraine and achieving the goals of national security, in particular, scientific and technological security


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