APPLICATION OF ARTIFICIAL NEURAL NETWORKS TO ENHANCE THE EFFICIENCY OF THE CUTTING METALWORKING PROCESS

Journal Title: International scientific journal Science and Innovation - Year 2025, Vol 4, Issue 2

Abstract

The given article discusses the application of artificial neural networks (ANNs) to enhance the efficiency of the cutting metalworking process. The main challenges related to selecting optimal processing conditions, diagnosing tool conditions and adaptive process control are outlined. A method for modeling cutting parameters based on a multilayer perceptron is presented, which allows for the prediction of cutting force and temperature in the cutting zone. The feasibility of using neural network algorithms for optimizing technological parameters, controlling tool wear and predictive maintenance is substantiated. Methods for optimizing neural network training algorithms, including network structure selection, adaptive weight adjustment, data normalization, and feature selection, are discussed. In the given research the application of these methods that enhances prediction accuracy, reduces training time, and lowers production costs are described as well. In the future, the integration of neural network technologies into CNC systems and adaptive control opens up new opportunities for automating metalworking processes.

Authors and Affiliations

D. V. Sarkisyan

Keywords

Related Articles

USING GAT WHEN DRAWING UP LAND DRAWING CARDS

The article presents data on the use of GAT in the construction of land formation cards using agricultural irrigated land productivity, restoration, assessment and management modern technologies, including space images t...

HOW TO EQUALIZE STUDENTS' PARTICIPATION IN ENGLISH CLASSES

The importance of equal student participation in English classrooms cannot be overstated. A balanced participation environment fosters inclusion, boosts confidence, and encourages diverse perspectives, contributing to al...

DIAGNOSIS OF EAR DISEASES USING A HYBRID NEURAL NETWORK

This article, focuses on the diagnosis of diseases of the inner ear. Fuzzy image processing and its efficiency are covered in the problem of image classification. The dataset was created from the processed images. An ana...

BASIC APPROACH TECHNOLOGIES TO THE ORGANIZATION AND MANAGEMENT OF PEDAGOGICAL PROCESSES IN GENERAL SECONDARY EDUCATION INSTITUTIONS

General secondary educational institutions, system, systematicity, integrity, pedagogical system, systematic approach technology, comprehensiveness, integrative, communicative, reflexive approach technology, person-activ...

DEVELOPMENT OF COOPERATION BETWEEN HIGHER EDUCATION AND THE LABOR MARKET — AS SOME ASPECTS OF SOLVING SOCIAL PROBLEMS IN THE MODERNIZATION OF UZBEKISTAN

The article puts on the agenda the issue of developing cooperation between higher education and the labor market, which examines the labor market and labor relations, the development of professional skills and knowledge,...

Download PDF file
  • EP ID EP760635
  • DOI 10.5281/zenodo.14978251
  • Views 42
  • Downloads 0

How To Cite

D. V. Sarkisyan (2025). APPLICATION OF ARTIFICIAL NEURAL NETWORKS TO ENHANCE THE EFFICIENCY OF THE CUTTING METALWORKING PROCESS. International scientific journal Science and Innovation, 4(2), -. https://europub.co.uk/articles/-A-760635