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首页> 外文期刊>Advances in materials science and engineering >Modeling and Analysis of Mechanical Properties of Aluminium Alloy (A413) Processed through Squeeze Casting Route Using Artificial Neural Network Model and Statistical Technique
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Modeling and Analysis of Mechanical Properties of Aluminium Alloy (A413) Processed through Squeeze Casting Route Using Artificial Neural Network Model and Statistical Technique

机译:挤压铸造路线铝合金(A413)力学性能的人工神经网络模型和统计技术建模与分析

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Artificial Neural Network (ANN) approach was used for predicting and analyzing the mechanical properties of A413 aluminum alloy produced by squeeze casting route. The experiments are carried out with different controlled input variables such as squeeze pressure, die preheating temperature, and melt temperature as per Full Factorial Design (FFD). The accounted absolute process variables produce a casting with pore-free and ideal fine grain dendritic structure resulting in good mechanical properties such as hardness, ultimate tensile strength, and yield strength. As a primary objective, a feed forward back propagation ANN model has been developed with different architectures for ensuring the definiteness of the values. The developed model along with its predicted data was in good agreement with the experimental data, inferring the valuable performance of the optimal model. From the work it was ascertained that, for castings produced by squeeze casting route, the ANN is an alternative method for predicting the mechanical properties and appropriate results can be estimated rather than measured, thereby reducing the testing time and cost. As a secondary objective, quantitative and statistical analysis was performed in order to evaluate the effect of process parameters on the mechanical properties of the castings.
机译:采用人工神经网络方法对挤压铸造生产的A413铝合金的力学性能进行了预测和分析。根据全因子设计(FFD),使用不同的受控输入变量(例如挤压压力,模具预热温度和熔融温度)进行实验。考虑的绝对工艺变量可产生具有无孔且理想的细晶粒树枝状组织的铸件,从而产生良好的机械性能,例如硬度,极限抗拉强度和屈服强度。作为主要目标,已经开发了具有不同体系结构的前馈传播ANN模型,以确保值的确定性。所开发的模型及其预测数据与实验数据非常吻合,从而推断出最优模型的宝贵性能。从工作中可以确定,对于通过挤压铸造路线生产的铸件,ANN是预测机械性能的替代方法,可以估算而不是测量合适的结果,从而减少了测试时间和成本。第二个目的是进行定量和统计分析,以评估工艺参数对铸件机械性能的影响。

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