应用人工神经网络对隔振器进行时序整定

M. Mazur, J. Michalski
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引用次数: 0

摘要

本文介绍了最近报道的将序列方法与人工神经网络(ANN)应用于铁氧体隔离器后期整定的方法和结果。对于具有R调谐元件的隔离器,基于物理测量的散射特性,采用人工神经网络作为多维逼近器,实现了所有R子器件的逆模型。子隔离器(子器件)是通过连续失谐和去除调谐螺钉得到的。对于每个子隔离器,输入和输出向量定义为物理散射特性和调谐元件的相应位置,以可控的方式失谐。在整个调谐过程中,这些逆模型用于计算将调谐元件调整到适当位置所需的调谐元件增量。该方法已成功地应用于滤波器的调谐过程中,鼓励作者在其他微波器件的调谐中采用并验证该方法。研究结果表明,上述方法可以成功地用于其他需要调谐的设备和系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The isolator tuning using sequential method with applied Artificial Neural Network
This paper presents the approach and results of utilizing sequential method, reported recently, with applied Artificial Neural Network (ANN) in postproduction ferrite isolator tuning. For isolator with R tuning elements, based on physically measured scattering characteristics, ANNs are used as a multidimensional approximators realizing inverse models for all R sub-devices. The sub-isolators (sub-devices) are obtained by successive detuning and removing tuning screws. For each subisolator, the input and output vectors are defined as physical scattering characteristics and the corresponding positions of the tuning element, detuned, in controlled way. Throughout the tuning process, these inverse models are used for calculating the tuning element increments needed for adjusting the tuning element in the proper position. Earlier that method was successfully used in filter tuning process so it encourage authors to adopt and verify that method in other microwave devices tuning. The obtained and presented results of our investigations prove that mentioned above method may be successfully used for other devices and systems that require tuning.
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