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首页> 外文期刊>La Metallurgia Italiana >Neural networks-based prediction of hardenability of high performance carburizing steels for automotive applications
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Neural networks-based prediction of hardenability of high performance carburizing steels for automotive applications

机译:基于神经网络的汽车应用高性能渗碳钢的淬透性预测

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摘要

The new quenching processes for automotive applications, which follow the cementation stage, include the applica- tion of pressurized gas for cooling during quenching. Therefore, it is of utmost importance to have an accurate estima-te of the hardenability behavior of carburizing steels, which show a higher Carbon content with respect to traditional materials. These new cooling processes also require properly designed new steels in terms of alloying contents, which ensure a proper response to heat treatment. In the present paper a neural network-based approach to the prediction of the hardenability profile is proposed, which can be applied both for the design of the steel chemistry and for assessing the suitability of the steel at the steel shop level, in order to suitable adjusting the cooling process after quenching.
机译:遵循胶结阶段的汽车应用的新淬火过程包括在淬火期间进行加压气体的应用。因此,对于渗碳钢的淬透性行为具有精确的估计性,这是至关重要的,这表明了相对于传统材料的碳含量较高。这些新的冷却过程还要求在合金内容物方面需要适当设计的新钢,这确保了对热处理的适当反应。在本文中,提出了一种基于神经网络的预测预测性曲线预测的方法,可以应用于钢化学的设计和用于评估钢在钢制车间的适用性,以便适当淬火后调整冷却过程。

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