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Bidirectional reservoir networks trained using SVM privileged information for manufacturing process modeling

机译:使用SVM特权信息用于制造过程建模的双向储层网络

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摘要

In the last decade, a wide range of machine learning approaches were proposed and experimented to model highly nonlinear manufacturing processes. However, improving the performance of such models is challenging due to the complexity and high dimensionality of the manufacturing processes in general. In this paper, we propose bidirectional echo state reservoir networks (Bi-ESNs) trained using support vector machine privileged information method (SVM) to model a winding machine process. The proposed model will be applied, tested and compared to reported models in the literature such as classical ESN with linear regression, ESN with a linear SVM readout, genetic programming, feedfoward neural network with backpropagation, radial basis function network, adaptive neural fuzzy inference system and local linear wavelet neural network. The developed results show that Bi-ESNs trained with SVM are promising. It was able to provide better generalization performance compared to other models.
机译:在过去的十年中,提出了广泛的机器学习方法,并试验了模拟高度非线性制造过程。 然而,由于制造过程的复杂性和高维度,提高了这种模型的性能是挑战的。 在本文中,我们提出了使用支持向量机特权信息方法(SVM)训练的双向回声状态储层网络(Bi-ESNS)来模拟绕组机器过程。 拟议的模型将应用,测试和比较文献中的报告模型,例如具有线性回归的古典ESN,具有线性SVM读数,遗传编程,FeedFowAdard神经网络,具有BackProjagation,径向基函数网络,自适应神经模糊推理系统 和局部线性小波神经网络。 发达的结果表明,使用SVM培训的BI-ESN是有前途的。 与其他模型相比,它能够提供更好的泛化性能。

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