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Identification and location of PIM faults in radio-frequency circuits with multiple coaxial connectors using a neural network approach

机译:使用神经网络方法识别和定位具有多个同轴连接器的射频电路中的PIM故障

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摘要

Coaxial connectors are widely used in radio-frequency circuits and are a major non-linear source of passive intermodulation (PIM), especially when they are subjected to environmental degradation. Accordingly, an effective and accurate method to locate the position of the PIM source in a communication system is of substantial value. By analysing the characteristics of different connectors, equivalent circuit models were developed to generate dynamic harmonics powers. On the basis of transmission line theory and simulations, the features of the IM products (IM3, IM5, and IM7) in a series circuit with the selected PIM source points were investigated. Using this information, a PIM fault diagnosis method for coaxial connectors in a circuit was developed employing a neural network. The IM products powers were obtained as feature parameters using a scattering parameter simulation of series circuit for three different connectors. Simulations were then conducted to generate training and testing samples. Finally, using the back-propagation neural network algorithm, the fault modes were classified and the results show diagnosis accuracy was 96.72%.
机译:同轴连接器广泛用于射频电路中,并且是无源互调(PIM)的主要非线性来源,尤其是在环境恶化的情况下。因此,在通信系统中定位PIM源位置的有效而准确的方法具有重要价值。通过分析不同连接器的特性,开发了等效电路模型以生成动态谐波功率。根据传输线理论和仿真,研究了具有选定PIM源点的串联电路中IM产品(IM3,IM5和IM7)的特性。利用该信息,采用神经网络开发了用于电路中同轴连接器的PIM故障诊断方法。使用三个不同连接器的串联电路的散射参数模拟,获得IM产品的功率作为特征参数。然后进行仿真以生成训练和测试样本。最后,使用BP神经网络算法对故障模式进行分类,结果表明诊断准确率为96.72%。

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