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Development and potential of robotisation and automation in Kazakhstan's automobile industry: a bibliographical and analytical review

https://doi.org/10.46914/1562-2959-2024-1-3-35-68-83

Abstract

The engineering sector, which includes automobile production, plays an important role in the national economy and industrial progress. It affects the development of production, scientific and technical progress, labor productivity, national security, quality of life. In order to increase productivity, reduce labor costs and improve product quality, industrial automation and robotization processes have been significantly developed in industrialized countries of the world. The global market for industrial robots is expected to grow 14.3% annually and reach $30.8 billion by 2027. However, Kazakhstan faces special difficulties in adopting these technologies due to the lack of development of automation infrastructure. This study aims to develop priorities and directions of advanced scientific and technological solutions for intelligent joint systems of robotics and automation, especially in the automotive industry of Kazakhstan. In this regard, the purpose of the study is to assess the current state of automation in the automotive industry of Kazakhstan, to identify challenges and opportunities associated with the introduction of robotics, and to provide a strategic basis for the advancement of these technologies. The research corresponds to the state programs of Kazakhstan on science, technology and digitization. The scientific and practical importance of this work is that it is aimed at providing solutions for increasing efficiency by adapting advanced robotic technologies to local production systems. Through the development of domestic innovations and the transfer of global technologies, research contributes to the field of industrial automation and helps Kazakhstan's industries to achieve global competitiveness. It is expected that the practical results of the research will contribute to the improvement of production quality, efficiency and productivity in the automotive sector of Kazakhstan, contributing to sustainable development in accordance with world trends. The value of the work lies in providing individual, technologically advanced solutions to meet the nation's urgent need for robotics automation and integration.

About the Authors

P. Zh. Orynbet
Turan University
Kazakhstan

PhD., research professor.

Almaty



D. I. Razakova
Turan University
Kazakhstan

C.e.s, PhD, associate professor.

Almaty



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Review

For citations:


Orynbet P.Zh., Razakova D.I. Development and potential of robotisation and automation in Kazakhstan's automobile industry: a bibliographical and analytical review. Bulletin of "Turan" University. 2024;(3):68-83. (In Kazakh) https://doi.org/10.46914/1562-2959-2024-1-3-35-68-83

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ISSN 1562-2959 (Print)
ISSN 2959-1236 (Online)