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首页> 外文期刊>Materials & design >Prediction Of The Flow Stress Of 6061 Al-15% Sic - Mmc Composites Using Adaptive Network Based Fuzzy Inference System
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Prediction Of The Flow Stress Of 6061 Al-15% Sic - Mmc Composites Using Adaptive Network Based Fuzzy Inference System

机译:基于自适应网络的模糊推理系统预测6061 Al-15%Sic-Mmc复合材料的流变应力

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摘要

Silicon carbide reinforced aluminium composite materials are increasingly used in many engineering fields. Flow stress prediction for these materials is increasingly important. In the present work, flow stress of 1.0Mg - 0.6% Si - 0.3% Cu - 0.2% Cr rest Al with 15% SiC_p during hot deformation is carried out using the conventional regression method, artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) method. The temperature at which the aluminium is compressed are 300-500 ℃ with strain rates ranging from 0.00857 to 2.7 s~(-1) and for the strains of 0.1-0.5. Simulation studies are carried out for analysis. By comparing the performances of various modeling techniques, ANFIS modeling can effectively be employed for prediction of flow stress of 6061 Al-15% SiC composites. The convergence speed of this algorithm is higher than that of the ANN.
机译:碳化硅增强铝复合材料越来越多地用于许多工程领域。这些材料的流变应力预测越来越重要。在目前的工作中,采用传统的回归方法,人工神经网络(ANN)和自适应神经网络方法,在热变形过程中对1.0Mg-0.6%Si-0.3%Cu-0.2%Cr残余Al与15%SiC_p的流动应力进行了研究。模糊推理系统(ANFIS)方法。铝被压缩的温度为300-500℃,应变速率为0.00857至2.7 s〜(-1),应变为0.1-0.5。进行仿真研究以进行分析。通过比较各种建模技术的性能,可以将ANFIS建模有效地用于6061 Al-15%SiC复合材料的流变应力预测。该算法的收敛速度高于人工神经网络。

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