A New Method for Crosstalk Prediction Between Triple-twisted Strand (Uniform and Non-uniform) and Signal Wire based on CDBAS-BPNN Algorithm

IF 0.6 4区 计算机科学 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Yanxing Ji, Wei Yan, Yang Zhao, Chao Huang, Shijin Li, Jianming Zhou, Xingfa Liu
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引用次数: 0

Abstract

This paper proposes a novel crosstalk prediction method between the triple-twisted strand (uniform and non-uniform) and the signal wire, that is, using back-propagation neural network optimized by the beetle antennae search algorithm based on chaotic disturbance mechanism (CDBAS-BPNN) to extract the per unit length (p.u.l) parameter matrix, and combined with the chain parameter method to obtain crosstalk. Firstly, the geometric model and cross-sectional model between the uniform triple-twisted strand and the signal wire are established, and the corresponding model between the non-uniform triple-twisted strand and the signal wire is obtained by the Monte Carlo (MC) method. Then, the beetle antennae search algorithm based on chaotic disturbance mechanism (CDBAS) and backpropagation neural network (BPNN) are combined to construct a new extraction network of the p.u.l parameter matrix, and the chain parameter method is combined to predict crosstalk. Finally, in the verification and analysis part of the numerical experiments, comparing the crosstalk results of CDBAS-BPNN, BAS-BPNN and Transmission Line Matrix (TLM) algorithms, it is verified that the proposed method has better accuracy for the prediction of the model.
基于CDBAS-BPNN算法的均匀和非均匀三绞线与信号线串扰预测新方法
本文提出了一种新的三捻线(均匀和非均匀)与信号线之间串扰预测方法,即利用基于混沌扰动机制的甲虫天线搜索算法优化的反向传播神经网络(CDBAS-BPNN)提取单位长度(p.u.l)参数矩阵,并结合链参数法获得串扰。首先,建立了均匀三绞线与信号线之间的几何模型和截面模型,采用蒙特卡罗(MC)方法得到了非均匀三绞线与信号线之间的对应模型。然后,将基于混沌扰动机制的甲虫天线搜索算法(CDBAS)与反向传播神经网络(BPNN)相结合,构建了新的p.u.l参数矩阵提取网络,并结合链参数法进行串扰预测。最后,在数值实验的验证与分析部分,对比了CDBAS-BPNN、BAS-BPNN和传输线矩阵(TLM)算法的串扰结果,验证了本文方法对模型的预测具有更好的精度。
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来源期刊
CiteScore
1.60
自引率
28.60%
发文量
75
审稿时长
9 months
期刊介绍: The ACES Journal is devoted to the exchange of information in computational electromagnetics, to the advancement of the state of the art, and to the promotion of related technical activities. A primary objective of the information exchange is the elimination of the need to "re-invent the wheel" to solve a previously solved computational problem in electrical engineering, physics, or related fields of study. The ACES Journal welcomes original, previously unpublished papers, relating to applied computational electromagnetics. All papers are refereed. A unique feature of ACES Journal is the publication of unsuccessful efforts in applied computational electromagnetics. Publication of such material provides a means to discuss problem areas in electromagnetic modeling. Manuscripts representing an unsuccessful application or negative result in computational electromagnetics is considered for publication only if a reasonable expectation of success (and a reasonable effort) are reflected. The technical activities promoted by this publication include code validation, performance analysis, and input/output standardization; code or technique optimization and error minimization; innovations in solution technique or in data input/output; identification of new applications for electromagnetics modeling codes and techniques; integration of computational electromagnetics techniques with new computer architectures; and correlation of computational parameters with physical mechanisms.
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