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Flank wear prediction in drilling using back propagation neural network and radial basis function network

机译:基于反向传播神经网络和径向基函数网络的钻头侧面磨损预测。

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摘要

In the present work, two different types of artificial neural network (ANN) architectures viz. back propagation neural network (BPNN) and radial basis function network (RBFN) have been used in an attempt to predict flank wear in drills. Flank wear in drill depends upon speed, feed rate, drill diameter and hence these parameters along with other derived parameters such as thrust force, torque and vibration have been used to predict flank wear using ANN. Effect of using increasing number of sensors in the efficacy of predicting drill wear by using ANN has been studied. It has been observed that inclusion of vibration signal along with thrust force and torque leads to better prediction of drill wear. The results obtained from the two different ANN architectures have been compared and some useful conclusions have been made.
机译:在本工作中,两种不同类型的人工神经网络(ANN)体系结构即。反向传播神经网络(BPNN)和径向基函数网络(RBFN)已用于尝试预测钻头的侧面磨损。钻头的侧面磨损取决于速度,进给速率,钻头直径,因此,这些参数以及其他推导参数(例如推力,扭矩和振动)已被用于使用ANN预测侧面磨损。已经研究了使用越来越多的传感器对使用ANN预测钻头磨损的功效的影响。已经观察到,包括振动信号以及推力和扭矩可以更好地预测钻头磨损。比较了从两种不同的ANN架构获得的结果,并得出了一些有用的结论。

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