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Design of the model for the on-line control of the AWJ technology based on neural networks

机译:基于神经网络的AWJ技术在线控制模型设计

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The paper focuses on the problem of prediction of surface roughness in AWJ process and contributes to the online monitoring of the hydro-abrasive material disintegration process and its possible control. The main scope of the paper is to contribute to the usage of an artificial neural network as a decisive part in the surface roughness prediction and to outline a suitable online control mechanism. In Paper a series of experiments are conducted to predict surface roughness and to use phenomena like acoustic emission and vibrations that accompany the cutting process to use in a possible process control. The model of artificial neural network is created in the MATLAB environment. In total, 150 configurations of multilayer perceptron with different configurations of numbers of neurons in hidden layers are developed. Two training functions, the Bayesian regularization and the Levenberg-Marquardt algorithm, are used during the network training. The results of the realized experiment have shown that the network with feedforward topology is able to predict correct value of the profile roughness parameter.
机译:本文侧重于AWJ过程中表面粗糙度预测的问题,有助于水力磨料崩解过程的在线监测及其对照。本文的主要范围是有助于使用人工神经网络作为表面粗糙度预测的决定性部分,并概述合适的在线控制机制。在纸上,进行一系列实验以预测表面粗糙度,并使用像伴随切割过程的声发射和振动等现象,以便在可能的过程控制中使用。在Matlab环境中创建了人工神经网络模型。开发了总共150个,具有不同配置隐藏层中的神经元数不同的多层的Perceptron配置。在网络培训期间使用了两种训练功能,贝叶斯正则化和Levenberg-Marquardt算法。实现实验的结果表明,具有前馈拓扑的网络能够预测轮廓粗糙度参数的正确值。

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