RFID tag antenna quick design and optimization by using Artificial Neural Network modeling technique

Ning Zhang, Xiuping Li
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引用次数: 2

Abstract

This paper presents RFID tag antenna quick design and optimization of by using the Artificial Neural Network (ANN) modeling technique. The proposed antenna presents at least 90MHz (840∼930MHz) bandwidth for microchip impedance between (10-j50) Ω and (40-j300) Ω under the condition of return loss less than −10dB by changing the antenna's two key parameters. These two key parameters are used to capture critical input-output relationships in the ANN model. Once fully developed, the ANN model has been shown to be as accurate as an EM simulator and much more efficient in the design and optimization of the RFID tag antenna.
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基于人工神经网络建模技术的RFID标签天线快速设计与优化
利用人工神经网络(ANN)建模技术对RFID标签天线进行快速设计与优化。通过改变天线的两个关键参数,在回波损耗小于- 10dB的条件下,在(10-j50) Ω和(40-j300) Ω之间的微芯片阻抗下,该天线的带宽至少为90MHz (840 ~ 930MHz)。这两个关键参数用于捕获人工神经网络模型中的关键输入-输出关系。一旦完全开发,人工神经网络模型已被证明与EM模拟器一样准确,并且在RFID标签天线的设计和优化方面效率更高。
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