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Artificial Neural Networks (ANN) and Genetic Algorithm Modeling and Identification of arc parameter in Insulators Flashover Voltage and leakage Current

机译:绝缘子闪络电压和漏电流中弧形参数的人工神经网络(ANN)和遗传算法建模与识别

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Flashover phenomenon in polluted insulators has not yet been described accurately through a mathematical model. The main difficulty lies in the definition of arc constants, which is formed in the dry bands when the voltage exceeds its critical value. We have present an optimization method based on genetic algorithms and Artificial Neural Networks (ANN) experimental data from artificially polluted insulators for the determination of the arc constants and Dielectric properties in the surface. In this work a pollution flashover generalized model is used. The obtained results show that the mathematical model with optimized arc constants simulates accurately the experimental data and Corroborate the inverse Relationship between flashover voltage and pre-flashover leakage current. For this purpose, an ANN was constructed in MATLAB and has been trained with several MATLAB training functions, while tests regarding the number of neurons, the number of epochs and the value of learning rate have taken place, in order to find which net architecture and which value of the other parameters give the best result.
机译:通过数学模型尚未准确地描述污染绝缘体中的闪络现象。主要困难在于当电压超过其临界值时形成在干频带中的弧常数的定义。我们本发明了一种基于遗传算法和人工神经网络(ANN)实验数据的优化方法,该实验数据来自人工污染绝缘体,用于测定表面中的弧常数和电介质性质。在这项工作中,使用污染闪络广泛模型。所获得的结果表明,具有优化电弧常数的数学模型精确模拟实验数据,并证实了闪络电压和预闪络漏电流之间的反向关系。为此目的,在Matlab中构建了一个Ann,并已被几个Matlab训练功能培训,而关于神经元数量,时代数量和学习率的价值的测试,以找到哪些净架构和哪个其他参数的值提供了最佳结果。

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