基于鲁棒神经网络的微波建模与设计,采用先进的模型外推

Jianjun Xu, M. Yagoub, R. Ding, Qi-jun Zhang
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引用次数: 11

摘要

第一次,直接解决了使用远超出其训练范围的基于神经的微波模型的问题。一个标准的神经模型只有在它被训练的特定输入范围之外才有意义,而在这个范围之外使用就变得不可靠了。本文提出了一种结合先进外推的鲁棒神经建模技术来解决这个问题。在训练中加入了一个新的过程,以形成一组基点来表示规则或不规则的训练区域。针对任意给定的模型输入值,提出了一种自适应基点选择方法来识别最重要的基点子集。该方法结合了利用神经网络输出及其导数的二次外推法。通过基于神经网络的耦合传输线设计解空间分析和基于神经网络的功率放大器行为建模与仿真实例验证了该方法的有效性。结果表明,该方法可以使基于神经网络的微波模型的使用范围远远超出其原始训练范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust neural based microwave modelling and design using advanced model extrapolation
For the first time, the issue of using neural-based microwave models far outside their training range is directly addressed. A standard neural model is meaningful only outside the particular range of inputs for which it is trained, and becomes unreliable when used outside this range. This paper presents a robust neural modelling technique incorporating advanced extrapolation to address this problem. A new process is incorporated in training to formulate a set of base points to represent a regular or irregular training region. An adaptive base point selection method is developed to identify the most significant subset of base points upon any given value of model input. This method is combined with quadratic extrapolation utilizing neural network outputs and their derivatives. The proposed technique is demonstrated by examples of neural based design solution space analysis of coupled transmission lines and neural based behaviour modelling and simulation of power amplifiers. It is demonstrated that the proposed technique allows the neural based microwave models to be used far beyond their original training range.
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