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首页> 外文期刊>American journal of engineering and applied sciences >ANN Based Prediction of Effect of Reinforcements on Abrasive Wear Loss and Hardness in a Hybrid MMC | Science Publications
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ANN Based Prediction of Effect of Reinforcements on Abrasive Wear Loss and Hardness in a Hybrid MMC | Science Publications

机译:基于人工神经网络的增强材料对混合MMC磨料磨损和硬度影响的预测|科学出版物

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摘要

> Problem statement: The reinforcements added to an alloy lead to variation in properties. The content and size of the reinforcement influences the properties of composites. Very little research has been carried out in hybrid composites. Work on hybrid LM6 aluminium alloy metal matrix composites (MMC) with flyash and SiC has been initiated here. The effect of the four parameters, size and weight of the reinforcements on the hardness and wear loss has been studied. Approach: Artificial neural networks, from the artificial intelligence family, is a type of information processing system, based on modeling the neural system of human brain. The effect of the parameters was investigated using ANN. Central composite rotatable method of design of experiments was used to arrive at the combination and the number of specimens. The specimens were prepared using the liquid metallurgy route and tested. Pin-on-disc apparatus was used for determining wear. Rockwell hardness on C scale was determined. The data from the experiments were used for training and testing the network. Results: The accuracy in ANN prediction was appreciable with the error estimated for wear loss and hardness being less than 2%. Conclusions/Recommendations: The ANN prediction is quick and economical way of estimating the properties.
机译: > 问题陈述:添加到合金中的增强材料会导致性能变化。增强材料的含量和大小会影响复合材料的性能。混杂复合材料方面的研究很少。此处已开始研究含粉煤灰和SiC的LM6铝合金混合金属复合材料(MMC)。研究了四个参数,增强材料的尺寸和重量对硬度和磨损损失的影响。 方法:人工智能家族的人工神经网络是一种基于人脑神经系统建模的信息处理系统。使用ANN研究了参数的影响。采用中央复合可旋转实验设计方法得出标本的组合和数量。使用液体冶金路线制备样品并进行测试。使用销盘式设备确定磨损。确定洛氏硬度在C标度上。来自实验的数据用于训练和测试网络。结果: ANN预测的准确性可观,估计的磨损和硬度误差小于2%。结论/建议: ANN预测是评估属性的快速而经济的方法。

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