INVESTIGATION OF THE ЕLASTIC DEFORMATIONS OF THE TECHNOLOGICAL SYSTEM DURING TURNING OF ROTARY SURFACES
DOI:
https://doi.org/10.17770/etr2024vol3.8128Keywords:
elastic deformations, accuracy, turningAbstract
In the development, analytical dependencies have been derived for determining the stability of the technological system during turning of rotary parts. Cases such as establishment in a chuck, in dead center and between centers have been analysed. The results of the analytical studies will contribute post-processing accuracy to be determined and predicted.
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Copyright (c) 2024 Angel Lengerov, Silviya Salapateva, Martin Bojakov
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