Optimization and statistical modeling of the thermal conductivity of a pumice powder and carbonated coal particle hybrid reinforced aluminum metal matrix composite for brake disc application: a Taguchi approach

IF 3.1 Q2 MATERIALS SCIENCE, COMPOSITES
T. Ibrahim, D. Yawas, Bashar Danasabe, A. A. Adebisi
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Abstract

Aluminum metal matrix composites have been gaining traction in recent years due to their good mechanical properties and low weight. Particulate reinforcements for the improvement of its properties have been explored. This research aimed to determine the optimal composition of the reinforcement content (pumice powder and carbonated coal particles) and processing parameters (stirring speed, processing temperature, and stirring time) on the thermal conductivity of the developed material and also to characterize the constituents using x-ray fluorescence, x-ray diffraction, and scanning electron microscope/energy dispersive x-ray. The Taguchi optimization approach and regression analysis were used for the optimization and statistical analysis, respectively. The Taguchi optimization results gave an optimum thermal conductivity of 111.5, 112.5, 111.7, 112.9, and 112.4 W m−1 °C for pumice, carbonated coal, stirring speed, processing temperature, and stirring time respectively. The optimization also revealed the optimum setting for reinforcements and stir casting process factors as regards thermal conductivity to be 2.5%, 5.0%, 300 rpm, 850 °C, and 5 min for pumice powder, carbonated coal particles, stirring speed, temperature, and time, respectively. The optimal thermal conductivity of 120.40 W m−1 °C was obtained for the hybrid composite which gives a 131.54% improvement over the conventional grey cast iron brake disc. The particulate reinforcements (pumice powder and carbonated coal particles) and the processing factors all had significant effects on the thermal conductivity of the material, with the carbonated coal particles having the highest percentage contribution of 16.51%, as established by the analysis of variance. A model for predicting the thermal conductivity was developed using regression analysis, and high prediction accuracy was established with R-Square, R-Square (adj), and R-Square (pred) values of 94.68%, 88.60%, and 79.94%, respectively. The results of the characterization show the presence of hard compounds such as silica, iron oxide, and alumina in pumice powder and carbonated coal particles.
浮石粉和碳化煤颗粒混合增强铝金属基复合材料制动盘导热性能的优化和统计建模:田口方法
近年来,铝金属基复合材料因其良好的力学性能和较轻的重量而受到越来越多的关注。研究了颗粒增强剂改善其性能的方法。本研究旨在确定增强量(浮石粉和碳化煤颗粒)的最佳组成和工艺参数(搅拌速度、加工温度和搅拌时间)对所制备材料导热性的影响,并利用x射线荧光、x射线衍射和扫描电镜/能量色散x射线对所制备材料的成分进行表征。采用田口优化法进行优化,采用回归分析进行统计分析。Taguchi优化结果表明,浮石、碳酸煤、搅拌速度、加工温度和搅拌时间的最佳导热系数分别为111.5、112.5、111.7、112.9和112.4 W m−1°C。优化结果表明,浮石粉、碳化煤颗粒、搅拌速度、搅拌温度、搅拌时间的最佳参数为2.5%、5.0%、300 rpm、850℃、5min。复合材料的最佳导热系数为120.40 W m−1°C,比传统灰口铸铁制动盘的导热系数提高了131.54%。颗粒增强剂(浮石粉和碳化煤颗粒)和加工因素对材料导热系数均有显著影响,其中碳化煤颗粒对材料导热系数的贡献率最高,达到16.51%。利用回归分析建立了导热系数预测模型,R-Square、R-Square (adj)和R-Square (pred)分别为94.68%、88.60%和79.94%,预测精度较高。表征结果表明,浮石粉和碳酸煤颗粒中存在二氧化硅、氧化铁和氧化铝等硬质化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Functional Composites and Structures
Functional Composites and Structures Materials Science-Materials Science (miscellaneous)
CiteScore
4.80
自引率
10.70%
发文量
33
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