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首页> 外文期刊>International Journal of Surface Science and Engineering >Neural network modelling of Abbott-Firestone roughness parameters in honing processes
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Neural network modelling of Abbott-Firestone roughness parameters in honing processes

机译:扶手 - 凡士通粗糙度参数在珩磨过程中的神经网络建模

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In present study, three roughness parameters defined in the Abbott-Firestone or bearing area curve, Rk, Rpk and Rvk, were modelled for rough honing processes by means of artificial neural networks (ANN). Input variables were grain size and density of abrasive, pressure of abrasive stones on the workpiece's surface, tangential or rotation speed of the workpiece and linear speed of the honing head. Two strategies were considered, either use of one network for modelling the three parameters at the same time or use of three networks, one for each parameter. Overall best neural network consists of three networks, one for each roughness parameter, with one hidden layer having 25, nine and five neurons for Rk, Rpk and Rvk respectively. However, use of one network for the three roughness parameters would allow addressing an indirect model. In this case, best solution corresponds to two hidden layers having 26 and 11 neurons.
机译:在本研究中,通过人工神经网络(ANN)为粗珩磨过程建模了三种粗糙度参数。 输入变量是磨粒的粒度和磨料密度,工件表面的表面,切向或转速的工件的切向或转速和珩磨头的线性速度。 考虑了两种策略,使用一个网络用于同时使用三个参数或使用三个网络,每个参数使用三个参数。 总体上最好的神经网络由三个网络组成,一个用于每个粗糙度参数,一个隐藏层分别具有25个,九个和五个神经元,分别为RK,RPK和RVK。 但是,为三个粗糙度参数的一个网络的使用将允许解决间接模型。 在这种情况下,最佳解决方案对应于具有26和11神经元的两个隐藏层。

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