首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Modelling of micro-electrodischarge machining during machining of titanium alloy Ti-6Al-4V using response surface methodology and artificial neural network algorithm
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Modelling of micro-electrodischarge machining during machining of titanium alloy Ti-6Al-4V using response surface methodology and artificial neural network algorithm

机译:钛合金Ti-6Al-4V加工过程中微放电加工的响应面法和人工神经网络算法建模

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摘要

Micro-electrodischarge machining (EDM) can produce microhole and other complex three-dimensional features on a wide range of conductive engineering materials such as titanium super alloy, inconel, etc. The micromachining of titanium super alloy (Ti-6Al-4V) is in very high demand because of its various applications in aerospace, automotive, biomedical, and electronics industries, owing to its good strength-to-weight ratio and excellent corrosion resistant properties. The present research study deals with the response surface methodology (RSM) and artificial neural network (ANN) with back-propagation-algorithm-based mathematical modelling. Furthermore, optimization of the machining characteristics of micro-EDM during the microhole machining operation on Ti-6Al-4V has been carried out. The matrix experiments have been designed based on rotatable central composite design. Peak-current (Ip), pulse-on time (Ton), and dielectric flushing pressure have been considered as process parameters during the microhole machining operation and these parameters were utilized for developing the ANN predicting model. The performance measures for optimization were material removal rate (MRR), tool wear rate (TWR), and overcut (OC). The ANN model was developed using a back-propagation neural network algorithm, which was trained with response values obtained from the experimental results. The Levenberg-Marquardt training algorithm has been used for a multilayer feed-forward network. The developed model was validated using data obtained by conducting a set of test experiments. The optimal combination of process parametric settings obtained are pulse-on-time of 14.2093 µs, peak current of 0.8363 A, and flushing pressure of 0.10 kg/cm^sup 2^ for achieving the desired MRR, TWR, and OC. The output of RSM optimal data was validated through experimentation and the ANN predicted model. A close agreement was observed among the actual experimental, RSM, and ANN predictive results. [PUBLICATION ABSTRACT]
机译:微放电加工(EDM)可以在多种导电工程材料(例如钛超级合金,铬镍铁合金等)上产生微孔和其他复杂的三维特征。钛超级合金(Ti-6Al-4V)的微加工工艺是由于其良好的强度重量比和出色的耐腐蚀性能,由于其在航空航天,汽车,生物医学和电子行业的各种应用,因此具有很高的需求。本研究涉及响应面方法(RSM)和人工神经网络(ANN),并基于反向传播算法进行数学建模。此外,已经进行了在Ti-6Al-4V上的微孔加工操作期间的微EDM的加工特性的优化。矩阵实验是基于可旋转的中央复合设计而设计的。在微孔加工过程中,峰值电流(Ip),脉冲接通时间(Ton)和电介质冲洗压力已被视为工艺参数,这些参数被用于开发ANN预测模型。优化的性能指标是材料去除率(MRR),工具磨损率(TWR)和过切(OC)。 ANN模型是使用反向传播神经网络算法开发的,该算法使用从实验结果中获得的响应值进行训练。 Levenberg-Marquardt训练算法已用于多层前馈网络。使用通过进行一组测试实验获得的数据验证了开发的模型。获得的过程参数设置的最佳组合是:开启时间为14.2093 µs,峰值电流为0.8363 A,冲洗压力为0.10 kg / cm ^ sup 2 ^,以获得所需的MRR,TWR和OC。通过实验和ANN预测模型验证了RSM最佳数据的输出。在实际实验,RSM和ANN的预测结果之间观察到了密切的一致性。 [出版物摘要]

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