Use of artificial neural network for prediction of mechanical properties of α-Al2O3 particulate-reinforced Al-Si10Mg alloy composites prepared by using stir casting process

被引:24
作者
Altinkok, Necat [1 ]
机构
[1] Sakarya Univ, Tec Educ Fac, Dept Med Educ, TR-54187 Esentepe, Sakarya, Turkey
关键词
particulate-reinforced composites; stir casting; tensile strengths; hardness; density; artificial neural networks;
D O I
10.1177/0021998305055547
中图分类号
TB33 [复合材料];
学科分类号
摘要
In this article, the tensile strength, hardening behavior, and density properties of different alpha-Al2O3 particle size (mu m)-reinforced metal matrix composites (MMCs), produced by using stir casting process, are predicted by designing a backpropagation (BP) neural network that used gradient-descent learning algorithm. Artificial neural network (ANN) is an intelligent technique that can solve nonlinear problems by learning from the samples. Therefore, some experimental samples are prepared at first to train the ANN to provide (to estimate) tensile strength, hardening behavior, and density properties of the MMCs produced for any given alpha-Al2O3 particle size (pm). The most important point is that after the ANN has been trained using some experimental samples, it gives approximately correct outputs for some of the experimental inputs that have not been used in the training. First, to prepare the training and test (checking) set of the network, some results are experimentally obtained and recorded in a file on a computer. In the experiments, alpha-Al2O3 particles are supplied commercially. alpha-Al2O3 ceramic powder of a varying particle size of 10 vol% is prepared, and then this ceramic powder with different alpha-Al2O3 particle sizes is added to Al-Si10Mg alloy in melt condition by stir casting process. The effect of reinforced particle size on the tensile strength, hardness resistance, and density properties of alpha-Al2O3-reinforced MMCs have been investigated. Mechanical tests reveal that tensile strength and hardness resistance of the alpha-Al2O3 ceramic powder composites decrease with increasing reinforced alpha-Al2O3 particle size. Then, neural network is trained using the prepared training set, also known as the learning set. In the preparation of the ANN training module, the aim of the use of the model is to predict the tensile strength, hardening behavior, and density properties for any given alpha-Al2O3 particle size by using some experimental results. Different alpha-Al2O3 particle sizes (mu m) are used as the input, and tensile strength, hardening behavior, and density properties are used as outputs in the neural network training module. The tensile strength, hardening behavior, and density properties of the produced MMCs are estimated for different alpha-Al2O3 particle sizes using neural network efficiently instead of time-consuming experimental processes. At the end of the training process, the test data are used to check the system accuracy. Simulation results confirm the feasibility of this approach and show a good agreement with experimental results for a wide range of MMCs produced.
引用
收藏
页码:779 / 796
页数:18
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