首页> 外文会议>ASME International Mechanical Engineering Congress and Exposition >ESTIMATION AND COMPARISON OF MACHINING PERFORMANCES USING GROUP METHOD DATA HANDLING TECHNIQUE AND ANN IN WIRE EDM OF STAVAX MATERIAL
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ESTIMATION AND COMPARISON OF MACHINING PERFORMANCES USING GROUP METHOD DATA HANDLING TECHNIQUE AND ANN IN WIRE EDM OF STAVAX MATERIAL

机译:基于塔克达材料钢丝铸造技术处理技术和ANN的加工性能的估计与比较

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Wire Electrical Discharge Machining (WEDM) is a specialized thermal machining process capable of accurately machining parts with varying hardness or complex shapes, which have sharp edges that are very difficult to be machined by the main stream machining processes. This study outlines the development of model and its application to estimation of machining performances using Group Method Data Handling Technique (GMDH) and Artificial Neural Network (ANN). Experimentation was performed as per Taguchi's L'_(16) orthogonal array for Stavax (modified AISI 420 steel) material. Each experiment has been performed under different cutting conditions of pulse-on, pulse-off current and bed speed. Among different process parameters voltage and flush rate were kept constant. Molybdenum wire having diameter of 0.18 mm was used as an electrode. Four responses namely accuracy, surface roughness. Volumetric Material Removal Rate (VMRR) and Electrode Wear (EW) have been considered for each experiment. Estimation and comparison of responses was carried out using GMDH and ANN. Group method data handling technique is ideal for complex, unstructured systems where the investigator is only interested in obtaining a high-order input-output relationship. Also, the method is heuristic in nature and is not based on a solid foundation as in regression analysis. The GMDH algorithm is designed to learn the process by training the algorithm with the experimental data. The experimental observations are divided into two sets viz., the training set and testing set. The training set is used to make the GMDH learn the process and the testing set will check the performance of GMDH. Different models can be obtained bv varying the percentage of data in the training set and the best model can be selected from these, viz., 50%, 62.5% & 75%. The best model is selected from the said percentages of data. Number of variables selected at each layer is usually taken as a fixed number or a constantly increasing number. It is usually given as fractional increase in number of independent variables present in the previous level. Three different criterion functions, viz., Root Mean Square (Regularity) criterion, Unbiased criterion and Combined criterion were considered for estimation. The choice of the criterion for node selection is another important parameter for proper modeling. The Artificial Neural Network is used to study and predict the machining responses. Input data are fed into the neural network and corresponding weights and bias are extracted. Then weights and bias are integrated in the program which is used to calculate and predict the machining responses. Estimation of machining performances was obtained by using ANN for various cutting conditions. ANN estimates were obtained for various percentages of total data in the training set viz., 50%, 60% & 70%. The best model is selected from the said percentages of data. Estimation and comparison of machining performances were carried out using GMDH and ANN. Estimates from GMDH and ANN were compared and it was observed that ANN with 70% of data in training set gives better results than GMDH.
机译:电线电气放电加工(WEDM)是一种专用热加工工艺,能够精确加工具有不同硬度或复杂形状的零件,这具有锋利的边缘,非常难以通过主流加工过程加工。本研究概述了模型的开发及其应用于使用组方法数据处理技术(GMDH)和人工神经网络(ANN)估计加工性能的应用。根据Taguchi的L'_(16)正交阵列进行实验,用于静止(改性AISI 420钢)材料。每个实验都是在不同的脉冲导通,脉冲截止电流和床速的不同切削条件下进行的。在不同的过程参数中,电压和冲洗速率保持恒定。使用直径为0.18mm的钼丝用作电极。四个响应即精度,表面粗糙度。每次实验都考虑了体积材料去除率(VMRR)和电极磨损(EW)。使用GMDH和ANN进行响应的估计和比较。组方法数据处理技术是复杂的,非结构化系统的理想选择,其中调查员仅对获得高阶输入输出关系感兴趣。此外,该方法本质上是启发性的,并且不是基于稳固基础,如回归分析。 GMDH算法旨在通过使用实验数据训练算法来学习该过程。实验观察分为两组viz。,训练集和测试集。训练集用于使GMDH了解过程,测试集将检查GMDH的性能。可以获得不同的模型,BV改变训练集中的数据百分比,最佳型号可以选自这些,viz,50%,62.5%和75%。从所述数据的百分比中选择了最佳模型。每层选择的变量数通常被视为固定数量或不断越来越多的数字。它通常作为前一级存在的独立变量的数量分数增加。考虑了三种不同的标准函数,ZiZ,螺根均线(规则性)标准,取消偏见的标准和组合标准进行估计。节点选择标准的选择是正确建模的另一个重要参数。人工神经网络用于研究和预测加工响应。输入数据被馈送到神经网络中,并提取相应的权重和偏置。然后在用于计算和预测加工响应的程序中集成了权重和偏差。通过使用ANN用于各种切割条件获得加工性能的估计。 ANN估计是在培训集VIZ中的各项数据的各种百分比获得,50%,60%和70%。从所述数据的百分比中选择了最佳模型。使用GMDH和ANN进行加工性能的估计和比较。比较了GMDH和ANN的估计,并观察到ANN,70%的训练集数据比GMDH提供了更好的结果。

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