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Surface roughness prediction using artificial neural networks when drilling Udimet 720

机译:钻孔时,使用人工神经网络的表面粗糙度预测720

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Article deals with design of appropriate control strategy for prediction of surface roughness as one of the important indicators of machined surface quality applying artificial intelligence. Test sample was nickel based super alloy UDIMET 720, which is used as material of jet engines components such as discs etc. Experimental data collected from tests were used as input parameters into neural network to identify the sensitivity among cutting conditions, tool wear and monitoring parameters and surface roughness. Selected parameters were used to design a suitable algorithm for control and monitoring of the drilling process. Moreover, the developed software for implementation to machine tool control system for surface roughness on-line identification through monitoring indices is described.
机译:文章涉及设计适当的控制策略,用于预测表面粗糙度,作为应用人工智能的加工表面质量的重要指标之一。测试样品是基于镍的超合物UDIMET 720,其用作喷射发动机部件的材料,例如从测试中收集的实验数据作为输入参数作为神经网络,以识别切割条件,工具磨损和监测参数之间的灵敏度。和表面粗糙度。选择参数用于设计合适的控制和监控钻井过程的算法。此外,描述了用于实现对机床控制系统的开发软件通过监视指标进行表面粗糙度在线识别。

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