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首页> 外文期刊>International Journal of Knowledge-Based in Intelligent Engineering Systems >Drill Wear Prediction Using Different Neural Network Architectures
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Drill Wear Prediction Using Different Neural Network Architectures

机译:使用不同神经网络架构的钻头磨损预测

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摘要

In the present work, an attempt has been made to use different artificial neural network (ANN) architectures to achieve more accurate prediction of drill wear. Large numbers of drilling operations, using mild steel as the work-piece and high speed steel (HSS) as the drill, have been performed and drill flank wear has been measured intermittently. Experimental results show a strong dependency of direct and indirect process parameters with drill wear. Experimentally obtained data have been used to train different ANN architectures using different combinations of important process parameters as input and measured flank wear as the output of the network. Relative performances of different ANN based drill wear prediction schemes in regard to prediction of drill wear have been compared. From the present work it has been observed that inclusions of more sensor signals as input to the network results a better-trained network, which can predict wear more accurately. It has also been observed from the present work that standard back propagation neural network (BPNN) predicts wear more accurately compared to fuzzy back propagation network (FBPN) and self-organizing method (SOM), through BPNN is slow in convergence.
机译:在当前的工作中,已经尝试使用不同的人工神经网络(ANN)体系结构来实现对钻头磨损的更准确的预测。使用低碳钢作为工件,使用高速钢(HSS)作为钻头,已经进行了大量的钻孔操作,并且断续地测量了钻头的侧面磨损。实验结果表明,直接和间接过程参数与钻头磨损密切相关。实验获得的数据已用于训练不同的ANN体系结构,这些过程使用重要过程参数的不同组合作为输入,而测量的侧面磨损作为网络的输出。已经比较了不同的基于ANN的钻头磨损预测方案在钻头磨损预测方面的相对性能。从目前的工作中,已经观察到,包含更多的传感器信号作为网络的输入会导致训练有素的网络,从而可以更准确地预测磨损。从目前的工作中还可以观察到,与模糊反向传播网络(FBPN)和自组织方法(SOM)相比,标准反向传播神经网络(BPNN)预测磨损更准确,因为BPNN收敛速度较慢。

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