Study on Breaking Load of Single Lap Joint Using Hybrid Joining Techniques for Alloy Steel AISI 4140 and Mild Steel: Taguchi and Neural Network Approach

Q3 Engineering
Prasad Lalta, Khantwal Rahul
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引用次数: 4

Abstract

Abstract The present investigation carried out to analyze the breaking load of single lap joint using hybrid joining techniques for alloy steel AISI 4140 and mild steel as base material by experimentally and optimized by Taguchi method and neural network. The six samples of lap joints were prepared namely: bolted joint (BJ); adhesive joint (AJ); welded joint (WJ); bolted-welded joint (BWJ); adhesive-welded joint (AWJ) and adhesivebolted joint (ABJ). The breaking load of the joints in terms of breaking load and elongation were evaluated for each joint. The effect of the adjustment attached to the joint on the breaking load and elongation were evaluated. Taguchi method was applied for given input parameters and L4 design of experiments was used. The breaking load and elongation were taken as output response. The predicted values by Taguchi method were used as target values in neural network fitting curve. Neural network fitting tool was used to check whether the obtained values were near the target value or not. Based on the achieved results, the maximum breaking load and elongation were found for bolted-welded joint.
合金钢AISI4140与低碳钢混合连接单搭接断裂载荷的研究——田口和神经网络方法
摘要本研究以合金钢AISI 4140和低碳钢为基体材料,采用混合连接技术对单搭接接头的断裂载荷进行了实验分析,并采用田口法和神经网络进行了优化。制备了六个搭接接头样品,即:螺栓接头(BJ);粘接接头;焊接接头(WJ);螺栓焊接接头(BWJ);胶粘焊接接头(AWJ)和胶粘螺栓接头(ABJ)。根据断裂载荷和伸长率对每个接头的断裂载荷进行评估。评估了连接处的调整对断裂载荷和伸长率的影响。给定的输入参数采用田口方法,实验采用L4设计。断裂载荷和伸长率作为输出响应。将田口方法的预测值作为神经网络拟合曲线的目标值。使用神经网络拟合工具来检查获得的值是否接近目标值。在此基础上,确定了螺栓焊接接头的最大断裂载荷和伸长率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Strojnicky Casopis
Strojnicky Casopis Engineering-Mechanical Engineering
CiteScore
2.00
自引率
0.00%
发文量
33
审稿时长
14 weeks
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