用人工神经网络研究锻造铬镍铁合金的磨损行为

Q4 Engineering
Vaishak Nl, T. Prashanth, S. Suhas
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引用次数: 0

摘要

本研究的目的是研究半锻Inconel 690的磨损性能。根据ASTM标准G99,即干滑动销盘式磨损试验装置,研究了锻造Inconel 690的干滑动磨损行为。研究中考虑了正常载荷、滑动距离和滑动速度三个磨损参数。磨损试验是按照田口试验设计进行的。采用L27正交阵列进行实验。利用MATLAB R2015a的神经网络工具箱,采用Levenberg-Marquardt (trainlm)算法对具有3-6-1(3个输入神经元,单个隐藏层6个隐藏神经元,1个输出神经元)的前馈神经网络进行预测,得到As Forged Inconel 690的磨损量。利用L27正交阵列得到的实验数据集来开发人工神经网络。结果表明,实验数据与神经网络预测结果的误差在10%以内
本文章由计算机程序翻译,如有差异,请以英文原文为准。
INVESTIGATION OF WEAR BEHAVIOR OF AS FORGED INCONEL 690 SUPER ALLOY USING ARTIFICIAL NEURAL NETWORKS
The present study aims to study the wear properties of as forged Inconel 690. The dry sliding wear behavior of as forged Inconel 690 is studied in accordance with ASTM standards G99 i.e. dry sliding on pin on disc wear test apparatus. Three wear parameters namely normal load, sliding distance and sliding velocity were considered in this study. The experiments for wear loss have been conducted as per Taguchi Design of experiments. An L27 Orthogonal array was employed for this purpose. The wear loss obtained for As Forged Inconel 690 is predicted by the Neural Network Toolbox of MATLAB R2015a using the Levenberg-Marquardt (trainlm) algorithm which trains the feed forward neural network having 3-6-1 (three input neurons, six hidden neurons in the single hidden layer and one output neuron). Experimental data sets from obtained from L27 Orthogonal array have been utilized to develop ANN. The results concluded that error for wear loss of As Forged Inconel 690 lies within 10% between experimental data and neural network prediction
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来源期刊
Academic Journal of Manufacturing Engineering
Academic Journal of Manufacturing Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
0.40
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0.00%
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