AUTOMATION OF TV-7 LATHE CONTROL SYSTEM

Main Article Content

Tuyboyov Oybek Valijonovich
Toshtemirov Kamol Qahramonovich

Abstract

This paper explores methods to modernize the control system of the TV-7 lathe based on a microcontroller. The utilization of digitally controlled workshops is becoming increasingly prevalent in contemporary manufacturing processes. Examples include metal cutting workshops, production line conveyors, and robotic manipulators. The advantages of such workshops are manifold, encompassing quality, precision, and production efficiency. We recognize that the cost of a workshop is directly proportional to its precision, quality, and production capacity. Therefore, our aim was to modernize the lathe control system, aiming for affordability while enhancing operational quality and precision. In this context, we targeted the TV-7 lathe. The TV-7 lathe has been widely used in vocational schools, technical colleges for training in metalworking processes, and in technical service sectors. The primary reasons for its widespread adoption include its affordability, ease of use, reliability, and compact size. In this paper, we demonstrate the automation and digitization of the TV-7 lathe control system using the "Mach3 CNC USB 100kHz" microcontroller.

Article Details

How to Cite
Tuyboyov Oybek Valijonovich, & Toshtemirov Kamol Qahramonovich. (2024). AUTOMATION OF TV-7 LATHE CONTROL SYSTEM. World Scientific Research Journal, 26(2), 125–134. Retrieved from http://wsrjournal.com/index.php/wsrj/article/view/3228
Section
Статьи

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