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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Modeling adhesive wear resistance of Al-Si-Mg-/SiCp PM compacts fabricated by hot pressing process, by means of ANN
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Modeling adhesive wear resistance of Al-Si-Mg-/SiCp PM compacts fabricated by hot pressing process, by means of ANN

机译:人工神经网络模拟热压法制备的Al-Si-Mg- / SiC p PM压块的胶粘剂耐磨性

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摘要

In this study, modeling adhesive wear resistance of Al-Si-Mg/SiCp MMC compacts were performed by ANN, using a back-propagation neural network that uses gradient descent learning algorithm. Powder compacts were fabricated by PM hot pressing process with 5–10–20% SiCp fractions and contents of specimens (N1, N2, N3 andN4) were given in Table 1. The wear tests were carried out under 10, 20 and 30 N variable loads, while disk rotation speed 90 rpm kept unchanged. Adhesive wear looses were measured and recorded for 250, 500, 1,000 and 1,500 m distances. Microstructure examination at wear surface was investigated by optical microscopy and EDS for metallographic evaluations. In neural networks training module, SiCp reinforcement fractions (wt), loads and wear distances (m) were used as input, lost mass (g) of specimens were recorded as outputs. Then, the neural network was trained using the prepared training set (also known as learning set). At the end of the training process, the test data were used to check the system accuracy. As a result ANN was found successful in modeling of adhesive wear behavior and lost mass values of Al/SiCp PM compacts. Table 1 Mixture rations and density of specimens
机译:在这项研究中,使用反向下降神经网络和梯度下降学习算法,通过ANN对Al-Si-Mg / SiC p MMC压块的粘合剂耐磨性进行建模。粉末压坯是通过PM热压工艺制成的,其中SiC p 分数为5-10%至20%,样品(N1,N2,N3和N4)的含量列于表1。进行了磨损测试。在10、20和30 N可变负载下,而磁盘转速90 rpm保持不变。测量并记录250、500、1,000和1,500 m距离的粘合剂磨损松动。通过光学显微镜和EDS对磨损表面的显微组织检查进行了金相评估。在神经网络训练模块中,使用SiC p 增强分数(wt),载荷和磨损距离(m)作为输入,记录试样的失重(g)作为输出。然后,使用准备好的训练集(也称为学习集)对神经网络进行训练。在培训过程结束时,将使用测试数据来检查系统的准确性。结果发现,ANN成功地模拟了Al / SiC p PM压块的粘着磨损行为和质量损失值。表1混合比和样品密度

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