Prediction of Austenite Formation Temperatures Using Artificial Neural Networks

被引:2
|
作者
Schulze, P. [1 ]
Schmidl, E. [1 ]
Grund, T. [1 ]
Lampke, T. [1 ]
机构
[1] Tech Univ Chemnitz, Inst Mat Sci & Engn, Mat & Surface Engn Grp, D-09125 Chemnitz, Germany
关键词
D O I
10.1088/1757-899X/118/1/012029
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
For the modeling and design of heat treatments, in consideration of the development/transformation of the microstructure, different material data depending on the chemical composition, the respective microstructure/phases and the temperature are necessary. Material data are, e.g. the thermal conductivity, heat capacity, thermal expansion and transformation data etc. The quality of thermal simulations strongly depends on the accuracy of the material data. For many materials, the required data - in particular for different microstructures and temperatures - are rare in the literature. In addition, a different chemical composition within the permitted limits of the considered steel alloy cannot be predicted. A solution for this problem is provided by the calculation of material data using Artificial Neural Networks (ANN). In the present study, the start and finish temperatures of the transformation from the bcc lattice to the fcc lattice structure of hypoeutectoid steels are calculated using an Artificial Neural Network. An appropriate database containing different transformation temperatures (austenite formation temperatures) to train the ANN is selected from the literature. In order to find a suitable feedforward network, the network topologies as well as the activation functions of the hidden layers are varied and subsequently evaluated in terms of the prediction accuracy. The transformation temperatures calculated by the ANN exhibit a very good compliance compared to the experimental data. The results show that the prediction performance is even higher compared to classical empirical equations such as Andrews or Brandis. Therefore, it can be assumed that the presented ANN is a convenient tool to distinguish between bcc and fcc phases in hypoeutectoid steels.
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页数:7
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