基于神经网络的变功变频电缆精确模型确定

Abderrazak Amara, A. Gacemi, Salam Aboudura, Hamza Haouassine
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引用次数: 0

摘要

采用基于人工神经网络的技术,开发了一种方法,用于级联所需的电路部分(RC, RLC,…)的最佳数量,以表示所需精度水平的选定频率的电力电缆。作为理论上考虑的电力电缆分布参数模型的参考,本方法是在数学分析的基础上推导出一个递推公式,该公式依赖于一个无限级联单元给出增益响应。通过对分布参数模型和递推公式的比较,确定了在规定频率下代表电缆的适当单元数的识别;这个程序允许建立一个足够的计算数据库来学习人工神经网络。将人工神经网络参数随环境变化的仿真结果与数值方法进行了比较,并通过实验验证了该方法的有效性和鲁棒性。
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Exact Model Determination of a Cable with Variation of Languor and Frequency using Neural Networks
A method is developed using a technique based on artificial neural networks for the optimal number of circuit sections (RC, RLC,…) in cascade needed to represent a power cable at selected frequencies for desired levels of precision. As the model of the power cable distributed parameters considered in theory as a reference, the present approach is based on a mathematical analysis to develop a recursive formula, which depends on an infinite cascade cells giving the gain response. By comparing of the distributed parameter model and the recursive formula, the identification of the appropriate number of cells representing the cable at defined frequencies has been determined; this procedure allows to build a sufficient computed database for learning ANN. The simulated results with ANN parameter variations of the environment compared to numerical methods and validated experimentally showed the same efficiency and robustness of our method.
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