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首页> 外文期刊>SN Applied Sciences >Artificial neural networks and adaptive neuro‑fuzzy models for predicting WEDM machining responses of Nitinol alloy: comparative study
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Artificial neural networks and adaptive neuro‑fuzzy models for predicting WEDM machining responses of Nitinol alloy: comparative study

机译:预测镍钛诺合金电火花线切割加工响应的人工神经网络和自适应神经模糊模型:对比研究

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This article reports a comparative study of artificial neural network (ANN) and adaptive neuro-fuzzy inference system(ANFIS) models for better prediction of wire electro-discharge machining (WEDM) responses like material removal rateand surface roughness of a Nitinol alloy. Pulse on time (T_(on)), pulse off time (T_(off)), peak current (I_(peak)) and gap voltage(V) were selected as input attributes. Experimental results were performed to verify the results from ANN and ANFISmodels. ANN model, back-propagation with three different algorithms Levenberg–Marquardt (LM), Elman regressionneural network and generalized regression neural network and ANFIS model, were developed using the same inputvariables. The most suitable algorithm and neuron number in the hidden layer were found as LM with 10 neurons forANN models whereas the most suitable membership functions and number of membership functions are found to begauss and two, respectively. The statistical validation measures such as root mean square error, mean square error andmean absolute percentage error are obtained through ANN and ANFIS models. The statistical values are given in thetables. As per the statistical measures perspective, the ANFIS model will have better accuracy for anticipation of WEDMattributes of a Nitinol alloy.
机译:本文报告了人工神经网络(ANN)和自适应神经模糊推理系统的比较研究(ANFIS)模型可更好地预测线材放电加工(WEDM)响应,例如材料去除率和镍钛诺合金的表面粗糙度。脉冲开启时间(T_(on)),脉冲关闭时间(T_(off)),峰值电流(I_(peak))和间隙电压选择(V)作为输入属性。进行实验结果以验证ANN和ANFIS的结果楷模。 ANN模型,使用三种不同算法的反向传播Levenberg–Marquardt(LM),Elman回归相同的输入来开发神经网络,广义回归神经网络和ANFIS模型变量。发现隐藏层中最合适的算法和神经元数为LM,其中有10个神经元用于ANN模型,而最合适的隶属函数和隶属函数的数量被发现是高斯和两个。统计验证措施,例如均方根误差,均方根误差和平均绝对百分比误差是通过ANN和ANFIS模型获得的。统计值在表。从统计量度的角度来看,ANFIS模型在预测WEDM方面将具有更好的准确性镍钛诺合金的特性。

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