Synergistic effects of TiC/GNP strengthening on the mechanical and tribological properties of Al6061 matrix composites coupled with process optimization by artificial neural network

被引:3
作者
Turkoglu, Turker [1 ,2 ]
Celik, Sare [1 ]
机构
[1] Balikesir Univ, Dept Mech Engn, Balikesir, Turkiye
[2] Balikesir Univ, Dept Mech Engn, TR-10145 Balikesir, Turkiye
关键词
Tribology; composite; titanium carbide; graphene nano-platelets; powder metallurgy; artificial neural network; DRY SLIDING WEAR; GRAPHENE NANOPLATELETS; REINFORCED METAL; CARBON NANOTUBES; PARAMETERS; CNTS; BEHAVIOR; TIME;
D O I
10.1177/09544089231172899
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
This study presents the strengthening of Al6061 alloy with titanium carbide (TiC) and graphene nano-platelets (GNPs), and the synergetic effect of these reinforcements on the microstructure, mechanical, and wear properties. The raw materials were combined in powder form in a hot press under a range of conditions (sintering temperature: 450 degrees C, 500 degrees C, or 550 degrees C, sintering time: 15, 30, or 45 minutes; and sintering pressure: 50, 100, or 150 MPa) to produce strengthened alloys containing 4, 8, or 12 wt.% TiC and 0.5, 1, or 1.5 wt.% GNP. A range of scanning electron microscope (SEM) and energy dispersive x-ray spectroscopy (EDS) showed that the reinforcement was uniformly distributed across the matrix. Raman spectroscopy showed that not there were no structural defects introduced into GNP during the mixing process of composite powders. Wear tests showed that minimum wear loss was obtained with an Al6061/TiC (8 wt.%)/GNP (1 wt.%) composite sintered at 500 degrees C and 100 MPa for 15 minutes. This same composite also displayed a decrease in the coefficient of friction (COF) of up to 69% when compared to unreinforced material. Examination of the areas of wear by SEM showed mixed type wear to be the dominant wear mechanism. Artificial neural network (ANN) was used to identify the impacts of different production parameters on wear loss. The trained ANN model was found to be highly accurate in predicting the wear properties of Al6061/TiC/GNP composites and could be used to generate an optimum set of production parameters to minimize wear loss without the need for costly and time-consuming experimentation.
引用
收藏
页码:181 / 193
页数:13
相关论文
共 52 条
[1]   Graphene Family Nanomaterial Reinforced Magnesium-Based Matrix Composites for Biomedical Application: A Comprehensive Review [J].
Abazari, Somayeh ;
Shamsipur, Ali ;
Bakhsheshi-Rad, Hamid Reza ;
Ramakrishna, Seeram ;
Berto, Filippo .
METALS, 2020, 10 (08) :1-40
[2]   The Effect of Graphene Nanoplatelets on the Wear Properties of High-Frequency Induction Sintered Alumina Nanocomposites [J].
Altintas, Ayberk ;
Cavdar, Ugur ;
Kusoglu, I. Murat .
JOURNAL OF INORGANIC AND ORGANOMETALLIC POLYMERS AND MATERIALS, 2019, 29 (03) :667-675
[3]   Effect of distribution of B4C on the mechanical behaviour of Al-6061/B4C composite [J].
Asghar, Z. ;
Latif, Muhammad Adnan ;
Rafi-ud-Din ;
Nazar, Zeeshan ;
Ali, Fahad ;
Basit, Abdul ;
Badshah, S. ;
Subhani, Tayyab .
POWDER METALLURGY, 2018, 61 (04) :293-300
[4]   Developments in the aluminum metal matrix composites reinforced by micro/nano particles - A review [J].
Bhoi, Neeraj K. ;
Singh, Harpreet ;
Pratap, Saurabh .
JOURNAL OF COMPOSITE MATERIALS, 2020, 54 (06) :813-833
[5]   Tailoring and characterization of carbon nanotube dispersity in CNT/6061Al composites [J].
Chen, Malin ;
Fan, Genlian ;
Tan, Zhanqiu ;
Yuan, Chao ;
Xiong, Dingbang ;
Guo, Qiang ;
Su, Yishi ;
Naito, Makio ;
Li, Zhiqiang .
MATERIALS SCIENCE AND ENGINEERING A-STRUCTURAL MATERIALS PROPERTIES MICROSTRUCTURE AND PROCESSING, 2019, 757 :172-181
[6]  
Chester D., 1990, IJCNN 90 WASH 600, V1, P265
[7]   Wear characteristic of aluminum-based composites containing multi-walled carbon nanotubes [J].
Choi, H. J. ;
Lee, S. M. ;
Bae, D. H. .
WEAR, 2010, 270 (1-2) :12-18
[8]  
Chung YW., 2011, MICRO NANOSCALE PHEN, DOI [10.1201/b11211, DOI 10.1201/B11211]
[9]   A modified model for the prediction of yield strength of nano-ZrO2 particle-reinforced austenitic steel matrix nanocomposites [J].
Diler, Ege Anil .
MEASUREMENT, 2021, 180
[10]  
Fathi E., 2018, Deep Neural Networks for Natural Language Processing, V38, P229, DOI [10.1016/bs.host.2018.07.006, DOI 10.1016/BS.HOST.2018.07.006]