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首页> 外文期刊>International journal of numerical modelling >Knowledge based response correction method for design of reconfigurable N-shaped microstrip patch antenna using inverse ANNs
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Knowledge based response correction method for design of reconfigurable N-shaped microstrip patch antenna using inverse ANNs

机译:基于逆ANN的可重构N形微带贴片天线的基于知识的响应校正方法

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摘要

Artificial neural networks (ANNs) have been often used for engineering design problems. In this work, an inverse model of a reconfigurable N-shaped microstrip patch antenna which is formed by ANN is considered to find design parameters. For this task, knowledge-based response correction consists of two steps, which include generating response using multilayer perceptron as a first step and correcting this response using knowledge based methods such as source difference, prior knowledge input, and prior knowledge input with difference as a second step. The proposed antenna has four states of operation controlled by two Positive-Intrinsic-Negative (PIN) diodes with ON/OFF states. The two-step ANN models are inversely trained using the optimum of the resonant frequency parameter as the input and the physical dimensions of the proposed antenna as outputs of the multilayer perceptron. The outputs and, in some methods, the input parameters of the multilayer perceptron are sent as input to the knowledge-based models while the obtained outputs from the two steps are the results of the new physical dimensions of the redesigned reconfigurable antenna that will be compared and analyzed. This input/output complexity of the proposed reconfigurable antenna allows an accurate and fast inverse model to be developed with less training data. Users may use this antenna and its ANN models to develop new products in the market where any frequency in the operating region can be given to the input to result an appropriate form of the new reconfigurable antenna. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:人工神经网络(ANN)通常用于解决工程设计问题。在这项工作中,考虑了由ANN形成的可重构N形微带贴片天线的逆模型,以找到设计参数。对于此任务,基于知识的响应校正包括两个步骤,其中包括使用多层感知器生成响应作为第一步,并使用基于知识的方法(例如源差异,先验知识输入和先验知识输入,以差异为基础)校正此响应。第二步。所提出的天线具有四个工作状态,由两个具有开/关状态的正-本征-负(PIN)二极管控制。使用谐振频率参数的最佳值作为输入,并使用拟议天线的物理尺寸作为多层感知器的输出,对两步ANN模型进行逆训练。输出和在某些方法中多层感知器的输入参数作为输入发送到基于知识的模型,而从两步获得的输出是将重新设计的可重新配置天线的新物理尺寸的结果并进行分析。所提出的可重构天线的这种输入/输出复杂度允许以较少的训练数据来开发准确且快速的逆模型。用户可以使用该天线及其ANN模型来开发市场上的新产品,在该产品中,可以将工作区域中的任何频率提供给输入,以形成合适形式的新可重构天线。版权所有(c)2015 John Wiley&Sons,Ltd.

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