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首页> 外文期刊>Magnetics, IEEE Transactions on >Microwave Characterization Using Ridge Polynomial Neural Networks and Least-Square Support Vector Machines
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Microwave Characterization Using Ridge Polynomial Neural Networks and Least-Square Support Vector Machines

机译:使用岭多项式神经网络和最小二乘支持向量机进行微波表征

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This paper shows that Ridge Polynomial Neural Networks (RPNN) and Least-Square Support Vector Machines (LS-SVM) technique provide efficient tools for microwave characterization of dielectric materials. Such methods avoids the slow learning properties of multilayer perceptrons (MLP) which utilize computationally intensive training algorithms and can get trapped in local minima. RPNN and LS-SVM are combined in this work with the Finite Element Method (FEM) to evaluate the dielectric materials properties. The RPNN is constructed from a number of increasing orders of Pi-Sigma units, it maintains fast learning properties and powerful mapping capabilities of single layer High Order Neural Networks (HONN). LS-SVM is a statistical learning method that has good generalization capability and learning performance. The FEM is used to create the data set required to train the RPNN and LS-SVM. The performance of a LS-SVM model depends on a careful setting of its associated hyper-parameters. In this study the LS-SVM hyper-parameters are optimized by using a Bayesian regularization technique. Results show that LS-SVM can achieve good accuracy and faster speed than neural network methods.
机译:本文表明,岭多项式神经网络(RPNN)和最小二乘支持向量机(LS-SVM)技术为介电材料的微波表征提供了有效的工具。这种方法避免了多层感知器(MLP)的学习速度慢的问题,多层感知器利用计算密集型训练算法,并且可能陷入局部最小值。 RPNN和LS-SVM在这项工作中与有限元方法(FEM)相结合,以评估介电材料的性能。 RPNN由数量递增的Pi-Sigma单位构成,它保持了单层高级神经网络(HONN)的快速学习特性和强大的映射功能。 LS-SVM是一种统计学习方法,具有良好的泛化能力和学习性能。 FEM用于创建训练RPNN和LS-SVM所需的数据集。 LS-SVM模型的性能取决于其关联的超参数的仔细设置。在这项研究中,通过使用贝叶斯正则化技术优化了LS-SVM超参数。结果表明,与神经网络方法相比,LS-SVM可以达到较高的精度和更快的速度。

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