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A Comprehensive Analysis of Surface Roughness, Vibration, and Acoustic Emissions Based on Machine Learning during Hard Turning of AISI 4140 Steel

Metals · Şubat 2023

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YÖKSİS Kayıtları
A Comprehensive Analysis of Surface Roughness, Vibration, and Acoustic Emissions Based on Machine Learning during Hard Turning of AISI 4140 Steel
Metals · 2023 SCI-Expanded
DOÇENT MUSTAFA KUNTOĞLU →

Makale Bilgileri

DergiMetals
Yayın TarihiŞubat 2023
Cilt / Sayfa13
Erişim🔓 Açık Erişim
Özet Industrial materials are materials used in the manufacture of products such as durable machines and equipment. For this reason, industrial materials have importance in many aspects of human life, including social, environmental, and technological elements, and require further attention during the production process. Optimization and modeling play an important role in achieving better results in machining operations, according to common knowledge. As a widely preferred material in the automotive sector, hardened AISI 4140 is a significant base material for shaft, gear, and bearing parts, thanks to its remarkable features such as hardness and toughness. However, such properties adversely affect the machining performance of this material system, due to vibrations inducing quick tool wear and poor surface quality during cutting operations. The main focus of this study is to determine the effect of parameter levels (three levels of cutting speed, feed, and cutting depth) on vibrations, surface roughness, and acoustic emissions during dry turning operation. A fuzzy inference system-based machine learning approach was utilized to predict the responses. According to the obtained findings, fuzzy logic predicts surface roughness (88%), vibration (86%), and acoustic emission (87%) values with high accuracy. The outcome of this study is expected to make a contribution to the literature showing the impact of turning conditions on the machining characteristics of industrially important materials.

Yazarlar (5)

1
İlhan Asiltürk
ORCID: 0000-0002-8302-6577
2
Mustafa Kuntoğlu
ORCID: 0000-0002-7291-9468
3
Rüstem Binali
ORCID: 0000-0003-0775-3817
4
Harun Akkuş
ORCID: 0000-0002-9033-309X
5
Emin Salur

Anahtar Kelimeler

acoustic emissions AISI 4140 machine learning surface roughness turning vibration

Kurumlar

Necmettin Erbakan Üniversitesi
Meram Turkey
Niğde Ömer Halisdemir University
Nigde Turkey
Selçuk Üniversitesi
Selçuklu Turkey

Metrikler

17
Atıf
5
Yazar
6
Anahtar Kelime