首页> 外文期刊>International Journal of Knowledge-Based in Intelligent Engineering Systems >Comparison of regression and artificial neural network models for prediction of delta ferrite content in stainless steel claddings
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Comparison of regression and artificial neural network models for prediction of delta ferrite content in stainless steel claddings

机译:回归和人工神经网络模型预测不锈钢熔覆层中δ铁素体含量的比较

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This paper discusses modeling and prediction of delta ferrite formation during the cladding of 317L flux cored wire onto the structural steel plate using artificial neural network and regression analysis. Comparison between the two models is made. Data required for modeling were obtained from the experiments conducted using a central composite rotatable design of experiments. The study revealed that modeling of delta ferrite using neural network is roughly 2.5 times more accurate compared to modeling using regression analysis. Neural network and regression models are able to predict the delta ferrite content with an average percentage error of the order of 0.29% and -0.74%, respectively.
机译:本文讨论了使用人工神经网络和回归分析方法对317L药芯焊丝在结构钢板上包覆时三角铁素体形成的建模和预测。比较两个模型。建模所需的数据是从使用中央复合可旋转设计实验进行的实验中获得的。该研究表明,与使用回归分析进行建模相比,使用神经网络进行三角铁素体建模的精度大约高2.5倍。神经网络和回归模型能够预测铁素体δ含量,平均百分比误差分别为0.29%和-0.74%。

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