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Optimization of heat treatment technique of high-vanadium high-speed steel based on back-propagation neural networks

机译:基于反向传播神经网络的高钒高速钢热处理工艺优化

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摘要

This paper is dedicated to the application of artificial neural networks in optimizing heat treatment technique of high-vanadium high-speed steel (HVHSS), including predictions of retained austenite content (A), hardness (H) and wear resistance (ε) according to quenching and tempering temperatures (T1, T2). Multilayer back-propagation (BP) networks are created and trained using comprehensive datasets tested by the authors. And very good performances of the neural networks are achieved. The prediction results show residual austenite content decreases with decreasing quenching temperature or increasing tempering temperature. The maximum value of relative wear resistance occurs at quenching of 1000-1050 ℃ and tempering of 530-560 ℃, corresponding to the peak value of hardness and retained austenite content of about 20-40 vol%. The prediction values have sufficiently mined the basic domain knowledge of heat treatment process of HVHSS. A convenient and powerful method of optimizing heat treatment technique has been provided by the authors.
机译:本文致力于将人工神经网络应用于优化高钒高速钢(HVHSS)的热处理技术,包括根据以下公式预测残余奥氏体含量(A),硬度(H)和耐磨性(ε)。淬火和回火温度(T1,T2)。多层反向传播(BP)网络是使用作者测试的综合数据集创建和训练的。神经网络的性能非常好。预测结果表明,残余奥氏体含量随淬火温度降低或回火温度升高而降低。相对耐磨性的最大值出现在1000-1050℃的淬火和530-560℃的回火时,对应于硬度和残余奥氏体含量约20-40 vol%的峰值。预测值充分挖掘了HVHSS热处理过程的基本领域知识。作者提供了一种方便有效的优化热处理技术的方法。

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