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Prediction of Welded Joint Strength in Plasma Arc Welding: A Comparative Study Using Back-Propagation and Radial Basis Neural Networks

机译:等离子电弧焊接焊接接合强度的预测:使用背部传播和径向基础神经网络的比较研究

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Welding input parameters such as current, gas flow rate and torch angle play a significant role in determination of qualitative mechanical properties of weld joint. Traditionally, it is necessary to determine the weld input parameters for every new welded product to obtain a quality weld joint which is time consuming. In the present work, the effect of plasma arc welding parameters on mild steel was studied using a neural network approach. To obtain a response equation that governs the input-output relationships, conventional regression analysis was also performed. The experimental data was constructed based on Taguchi design and the training data required for neural networks were randomly generated, by varying the input variables within their respective ranges. The responses were calculated for each combination of input variables by using the response equations obtained through the conventional regression analysis. The performances in Levenberg-Marquardt back propagation neural network and radial basis neural network (RBNN) were compared on various randomly generated test cases, which are different from the training cases. From the results, it is interesting to note that for the above said test cases RBNN analysis gave improved training results compared to that of feed forward back propagation neural network analysis. Also, RBNN analysis proved a pattern of increasing performance as the data points moved away from the initial input values.
机译:焊接的输入参数,例如电流,气体流率和焊炬角度在确定焊接接头的定性的机械性能的发挥显著作用。传统上,有必要确定用于每一个新的焊接产物以得到质量焊接接头这是耗时的焊接输入参数。另外,在本工作中,使用神经网络的方法进行了研究等离子弧焊接在软钢上的参数的效果。为了获得管辖输入输出关系的响应方程,也进行常规回归分析。实验数据的基础上田口设计和神经网络所需的训练数据进行了随机产生的,由它们各自的范围内改变输入变量构成。该应答通过使用通过常规回归分析获得的响应方程计算输入变量的每个组合。在列文伯格 - 马夸尔特反向传播神经网络和径向基神经网络(RBNN)的性能上的各种随机生成测试用例,其是从训练情况下不同进行比较。从结果来看,这是有趣的是,对于上面说的测试用例RBNN分析了改善训练效果相比前馈BP神经网络分析。此外,RBNN分析证明的提高性能的图案作为数据点从初始输入值移开。

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