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Determination of residual stresses based on heat treatment conditions and densities on a hybrid (FLN2-4405) powder metallurgy steel using artificial neural network

机译:基于热处理条件和密度的混合神经(FLN2-4405)粉末冶金钢的残余应力确定的神经网络方法

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This paper presents a new approach based on artificial neural networks (ANNs) to determine the residual stresses in PM steel based nickel (FLN2-4405). This study consists of two cases: (ⅰ) The experimental analysis: The measurements of residual stresses were carried out by electrochemical layer removal technique. The values and distributions of residual stresses occurring in PM steel processed under various densities (6.8, 7.05, 7.2 and 7.4 g/cm~3) and heat treatment conditions (sintered at 2050℉, sintered at 2300℉, quenching-tem-pered, and sinter-hardened) were determined. In most of the experiments, tensile residual stresses were recorded in surface of samples. The residual stress distribution on the surface of the PM steels is affected by the heat treatment conditions and density. Maximum values of residual stresses on the surface were observed sinter hardened condition and 7.4 g/cm~3 density, (ⅱ) The mathematical modeling analysis: The use of ANN has been proposed to determine the residual stresses based on heat treatment conditions and densities in PM steel using results of experimental analysis. The back propagation learning algorithm with two different variants and logistic sigmoid transfer function were used in the network. In order to train the neural network, limited experimental measurements were used as training and test data. The best fitting training data set was obtained with four and five neurons in the hidden layer, which made it possible to predict residual stress with accuracy at least as good as that of the experimental error, over the whole experimental range. After training, it was found the R~2 values are 0.999244, 0.999025, 0.999664 and 0.999322 for sintered at 2050℉, sintered at 2300℉, quenching-tempered, and sinter-hardened, respectively. Similarly, these values for testing data are 0.998354, 0.99706, 0.999607 and 0.999205, respectively. As seen from the results of mathematical modeling, the calculated residual stresses are obviously within acceptable uncertainties.
机译:本文提出了一种基于人工神经网络(ANN)的新方法来确定PM钢基镍(FLN2-4405)中的残余应力。本研究包括两种情况:(ⅰ)实验分析:残余应力的测量是通过电化学层去除技术进行的。在不同密度(6.8、7.05、7.2和7.4 g / cm〜3)和热处理条件(2050°C烧结,2300°C烧结,淬火温度,和烧结硬化)。在大多数实验中,拉伸残余应力记录在样品表面。 PM钢表面的残余应力分布受热处理条件和密度的影响。在烧结硬化条件和7.4 g / cm〜3的密度下观察到表面残余应力的最大值,(ⅱ)数学模型分析:提出了使用ANN根据热处理条件和密度确定残余应力的方法。使用PM钢的实验分析结果。网络中使用了具有两个不同变体和逻辑S型传递函数的反向传播学习算法。为了训练神经网络,有限的实验测量值被用作训练和测试数据。在隐藏层中有四个和五个神经元获得了最佳拟合训练数据集,这使得在整个实验范围内预测残余应力的准确性至少与实验误差的准确性一样成为可能。训练后,发现在2050℃烧结,在2300℃烧结,淬火回火和烧结硬化的R〜2值分别为0.999244、0.999025、0.9999664和0.999322。同样,测试数据的这些值分别为0.998354、0.99706、0.999607和0.999205。从数学建模的结果可以看出,计算出的残余应力显然在可接受的不确定性范围内。

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