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Application of artificial neural network (ANN) in SF/sub 6/ breakdown studies in nonuniform field gaps

机译:人工神经网络(ANN)在非均方场间隙中SF / SUB 6 /击穿研究中的应用

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In SF/sub 6/-filled electrical equipment, the electric field distribution is kept rather uniform. However in practice, the electric field in the gas gap is distorted by nonuniformities. For this reason, the inhomogeneous field breakdown in SF/sub 6/ has been extensively studied by various researchers and the breakdown characteristics of compressed SF/sub 6/ have been reported. Obtaining experimental data under all conditions is not possible. Therefore, an attempt has been made in the present work to apply an artificial neural network (ANN) to obtain such data. The projection pursuit learning network (PPLN) has been used as the ANN model. Breakdown data for four different voltage waveforms were used to train the network for SF/sub 6/ pressures of 1-5 bar and rod diameters of 1-12 mm in a rod-plane geometry. The ANN was first trained with these data so as to obtain a smooth regression surface interpolating the training data. The regression surface thus obtained, was thereafter used to generate the breakdown and corona inception voltages with in the range of gas pressures and nonuniformities studied, where no data is available.
机译:在SF / SUB 6 /填充电气设备中,电场分布保持相当均匀。然而,在实践中,气体间隙中的电场因不均匀性而畸变。因此,通过各种研究人员广泛地研究了SF / SUB 6 / SU / SUB 6 / SF / SUS 6的击穿特性的不均匀场析。在所有条件下获得实验数据是不可能的。因此,在本工作中已经尝试应用人工神经网络(ANN)以获得这些数据。投影追踪学习网络(PPLN)已被用作ANN模型。用于四种不同电压波形的击穿数据用于培训网络的SF / SUP 6 / 1-5巴的压力,杆平面几何形状为1-12mm的杆直径。 ANN首次接受这些数据训练,以便在内插训练数据中获得平滑的回归表面。之后,如此获得的回归表面,其次用于产生具有在气体压力范围内的击穿和电晕初始电压,并且在没有数据的情况下进行的不均匀性。

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