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Deep Learning-Based Hardness Prediction of Novel Refractory High-Entropy Alloys with Experimental Validation

机译:基于深度学习的实验验证新型耐火高熵合金的硬度预测

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摘要

Hardness is an essential property in the design of refractory high entropy alloys (RHEAs). This study shows how a neural network (NN) model can be used to predict the hardness of a RHEA, for the first time. We predicted the hardness of several alloys, including the novel C0.1Cr3Mo11.9Nb20Re15Ta30W20 using the NN model. The hardness predicted from the NN model was consistent with the available experimental results. The NN model prediction of C0.1Cr3Mo11.9Nb20Re15Ta30W20 was verified by experimentally synthesizing and investigating its microstructure properties and hardness. This model provides an alternative route to determine the Vickers hardness of RHEAs.
机译:硬度是难熔高熵合金(RHEAS)设计中的重要属性。本研究表明,最初可以使用神经网络(NN)模型来预测RHEA的硬度。我们预测了几种合金的硬度,包括使用NN模型的新型CO.1CR3MO11.9NB20RE15TA30W20。从NN模型预测的硬度与可用的实验结果一致。通过通过实验合成和研究其微观结构性能和硬度来验证CO.1CR3MO11.9NB20RA30W20的NN模型预测。该模型提供了一种确定RHEAS的维氏硬度的替代路线。

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