首页> 外文期刊>Transactions of the Indian Institute of Metals >Intelligent Modeling Using Adaptive Neuro Fuzzy Inference System (ANFIS) for Predicting Weld Bead Shape Parameters During A-TIG Welding of Reduced Activation Ferritic- Martensitic (RAFM) Steel
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Intelligent Modeling Using Adaptive Neuro Fuzzy Inference System (ANFIS) for Predicting Weld Bead Shape Parameters During A-TIG Welding of Reduced Activation Ferritic- Martensitic (RAFM) Steel

机译:使用自适应神经模糊推理系统(ANFIS)进行智能建模,以预测还原活化铁素体-马氏体(RAFM)钢的A-TIG焊接过程中的焊道形状参数

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摘要

Reduced-activated ferritic-martensitic steels are considered to be the prime candidate for structural material of the fusion power plant reactor design. Tungsten inert gas (TIG) welding is preferred for welding of those structural materials. However, the depth of penetration achievable during autogenous TIG welding is very limited and hence productivity is poor. Therefore, activated-flux tungsten inert gas (A-TIG) welding, a new variant of TIG welding process has been developed in-house to increase the depth of penetration in single pass welding. In structural materials produced by A-TIG welding process, weld bead width, depth of penetration and HAZ width decide the mechanical properties and in turn the performance of the weld joints during service. To obtain the desired weld bead geometry, HAZ width and make a reliable quality weld, it becomes important to develop predictive tools using soft computing techniques. In this work, adaptive neuro fuzzy inference system is used to develop independent models correlating the welding parameters like current, voltage and torch speed with bead shape parameters like weld bead width, depth of penetration, and HAZ width. During ANFIS modeling, various membership functions were used. Triangular membership function provided the minimum RMS error for prediction and hence, ANFIS model with triangular membership functions were chosen for predicting for weld bead shape parameters as a function of welding process parameters.
机译:还原活化铁素体-马氏体钢被认为是聚变电站反应堆设计的结构材料的主要候选材料。钨极惰性气体保护(TIG)焊接优选用于那些结构材料的焊接。然而,在自体TIG焊接过程中可达到的熔深非常有限,因此生产率很差。因此,内部已开发出TIG焊接工艺的新变种-活性焊剂钨极惰性气体保护(A-TIG)焊接,以增加单道次焊接的熔深。在通过A-TIG焊接工艺生产的结构材料中,焊缝宽度,熔深和HAZ宽度决定了机械性能,进而决定了维修过程中焊接接头的性能。为了获得所需的焊缝几何形状,HAZ宽度并进行可靠的焊接质量,使用软计算技术开发预测工具变得很重要。在这项工作中,自适应神经模糊推理系统用于开发独立模型,将焊接参数(例如电流,电压和焊枪速度)与焊缝形状参数(例如焊缝宽度,熔深和HAZ宽度)相关联。在ANFIS建模期间,使用了各种隶属函数。三角形隶属度函数为预测提供了最小的RMS误差,因此,选择具有三角形隶属度函数的ANFIS模型来预测焊缝形状参数作为焊接工艺参数的函数。

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