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首页> 外文期刊>IEEE Transactions on Magnetics >Phase Boundary Estimation in Electrical Resistance Tomography With Weighted Multilayer Neural Networks
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Phase Boundary Estimation in Electrical Resistance Tomography With Weighted Multilayer Neural Networks

机译:加权多层神经网络在电阻层析成像中的相界估计

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摘要

This work presents a boundary estimation approach in electrical resistance imaging for binary mixture fields based on weighted multilayer neural network. The interfacial boundaries are expressed with the truncated Fourier series and the unknown Fourier coefficients are estimated with the weighted multilayer neural network. In doing so, normalized boundary voltages are used for training the neural network and the results from real experiments show that the proposed approach has strong possibility for real-time monitoring of binary mixtures.
机译:这项工作提出了基于加权多层神经网络的二元混合场电阻成像的边界估计方法。界面边界用截短的傅立叶级数表示,未知的傅立叶系数用加权多层神经网络估计。在此过程中,使用归一化的边界电压来训练神经网络,实际实验结果表明,该方法具有对二元混合物进行实时监控的强大可能性。

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