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Forward and reverse mappings of electrical discharge machining process using adaptive network-based fuzzy inference system

机译:基于自适应网络模糊推理系统的放电加工过程正反映射

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摘要

Input-output relationships of an electrical discharge machining process have been established both in forward as well as reverse directions using adaptive network-based fuzzy inference system. Three input parameters, such as peak current, pulse-on-time and pulse-duty-factor, and two outputs, namely mate-rial removal rate and surface roughness have been considered for the said mappings. A batch mode of training has been adopted with the help of 1000 data for the developed adaptive network-based fuzzy inference system, which has been designed using linear (say triangular) and non-linear (bell-shaped) membership function distributions of the input variables, separately. The performances of the developed models have been tested for both forward and reverse mappings with the help of some test cases collected through the real experiments. Adaptive network-based fuzzy inference system is found to tackle the problems of forward and reverse mappings efficiently. The fuzzy inference system utilizing non-linear membership functions is seen to perform slightly better than that with linear membership functions for the input variables.
机译:使用基于自适应网络的模糊推理系统,可以在正向和反向方向上建立放电加工过程的输入输出关系。对于所述映射,已经考虑了三个输入参数,例如峰值电流,脉冲接通时间和脉冲占空比,以及两个输出,即材料去除率和表面粗糙度。已开发的基于自适应网络的模糊推理系统在1000个数据的帮助下采用了批量训练模式,该系统已使用输入的线性(例如三角形)和非线性(钟形)隶属函数分布进行设计变量。在通过真实实验收集的一些测试案例的帮助下,已开发模型的性能已针对正向和反向映射进行了测试。发现基于自适应网络的模糊推理系统可以有效解决正向和反向映射问题。对于输入变量,使用非线性隶属度函数的模糊推理系统的性能要好于使用线性隶属度函数的模糊推理系统。

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