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首页> 外文期刊>International Journal of Machining and Machinability of Materials >Neural network based prediction of drill wear from theoretically analysed and experimentally measured values of thrust force and torque
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Neural network based prediction of drill wear from theoretically analysed and experimentally measured values of thrust force and torque

机译:根据推力和扭矩的理论分析和实验测量值,基于神经网络的钻头磨损预测

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摘要

This work introduces a new approach of drill wear monitoring by combining model-based and experimental values of thrust force and torque. The drill wear prediction performance of the neural network using the difference of experimental and theoretical values of thrust force and torque is shown to be better than the performance of the same using only experimental values. Experimental data were acquired from strain gauge type dynamometer during drilling on mild steel work piece with high-speed steel (HSS) drill bits. In this work, Williams' orthogonal model has been implemented for the theoretical prediction of thrust force and torque in drilling under different cutting conditions.
机译:这项工作通过结合基于模型的推力和扭矩的实验值以及实验值,引入了一种新的钻头磨损监测方法。结果表明,使用推力和扭矩的实验值和理论值之差的神经网络对钻头的磨损预测性能要优于仅使用实验值时的性能。在使用高速钢(HSS)钻头在低碳钢工件上钻孔期间,从应变仪式测功机获取了实验数据。在这项工作中,威廉姆斯的正交模型已经被实现用于在不同切削条件下钻进时的推力和扭矩的理论预测。

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