Asosiy kontentga oʻtish
AkademIndex

Mahsulotlar

Ishlab chiquvchilar uchun

AkademBasetez oradaEkotizim uchun ochiq API
Lotin
Oʻzbek
Maqola

Integration Of Computational With Physical System Through Machine Learning

Makhsimov KosimkhonFergana Polytechnic Institute,Department of Geodesy, Cartography and Cadastre,Fergana,UzbekistanKhakimova Kamolatkhon RahimjonovnaFergana Polytechnic Institute,Department of Geodesy, Cartography and Cadastre,Fergana,UzbekistanKayumov Odiljon AbduraufovichFergana Polytechnic Institute,Department of Geodesy, Cartography and Cadastre,Fergana,UzbekistanTurdikulov Khusanboy KhudoynazarovichFergana Polytechnic Institute,Department of Geodesy, Cartography and Cadastre,Fergana,Uzbekistan
2023en
ABI

Annotatsiya

The transition of a rice machine mixture from a stand - alone application to a fully integrated manufacturing system is described in this study. In this procedure, load cells that had already been installed situ were switched out, and extra sensitive and electromagnetic translation gauges were used. The Smart Joining Lab at the Division of Metallic Making completely incorporated that one after calibrating into a six-layer democratization framework. Two front-end mortal interactions were created inside this architecture, with the first one acting as a situation tracking system during the turning operation. A robust machine-learning algorithm that was created using Python and is able to not only forecast and adjust the final rolling program of a specified metal sheet but also learn from further steel production timetables executed is visualized in the main graphical interface. Utilizing data from some of the more than 1900 milled steps with various roll spacing height, sheeting size, and roughness parameters, this algorithm was developed using a black box methodology. As a consequence, the created software may extrapolate and parallelize between any of these characteristics as well as various beginning panel depths, acting as a digital system for suggestions based on data on scheduling adjustments for various trying to roll production steps. Additionally, it is conceivable to see how the settings affect the outcome of the milling operation using the third gui. Schoolchildren and other stakeholders can open the viewing because the entire layer system is running on a community college existing system. They could use surroundings to further their understanding of the features and influences of the sheet metal forming as well as computer science and particularly the fundamentals of computer science. This methodology also forms the foundation for the future integrating of data from the field of nanomaterials for the forecasting of the impact of various materials on the rolling outcome. To do this, the mechanical property of the rolled specimen, such as distortion and structural stiffness, were also examined in relation to the impact of the maximum stress route.

Mavzular

Identifikatorlar

Iqtiboslar va manbalar

Koʻrsatkichlar — AkademScholar · Tez orada