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Transformer fault types and severity class prediction based on neural pattern-recognition techniques

机译:基于神经图案识别技术的变压器故障类型和严重性课程预测

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摘要

Dissolved gas analysis (DGA) is used to diagnose power transformer fault based on the concentration of dissolved gases and the ratios between them. These gases are generated in oils as a result of electrical and thermal stresses, but these DGA techniques cannot identify the severity of the fault types. In IEEE Standard C57.104, the maintenance action is taken based on the total dissolved combustible gases, which is not sufficient because it ignores the importance of the gas type and its change rate. Thermodynamic theory using different starting decomposing materials, namely, n-octane (C8H18) and eicosane (C20H42), is used to estimate the severity of transformer fault types. Two scenarios are suggested with different data transformation techniques to enhance neural pattern recognition (NPR) method accuracy for predicting transformer fault types and their severity classes. The proposed scenarios are built based on 446 samples collected from the laboratory and literature. Results refer to the role of the starting decomposing material on the severity of the transformer fault and illustrate that the proposed model has a higher accuracy (92.8%) compared with other DGA methods for diagnosing transformer fault types and superior accuracy (99.1%) to predict fault severity class.
机译:溶解气体分析(DGA)用于诊断基于溶解气体的浓度和它们之间的比率的电力变压器故障。由于电气和热应力,这些气体在油中产生,但这些DGA技术不能识别故障类型的严重程度。在IEEE标准C57.104中,基于总溶解的可燃气体采取维护作用,这是不够的,因为它忽略了气体类型的重要性及其变化率。使用不同起始分解材料的热力学理论,即N-辛烷(C8H18)和eicosane(C20H42),用于估计变压器故障类型的严重程度。用不同的数据变换技术建议两种情况,以提高神经模式识别(NPR)方法准确性,以预测变压器故障类型及其严重性等级。所提出的方案是根据从实验室和文学中收集的446个样本构建的。结果是指起动分解材料对变压器故障严重性的作用,并说明该模型的准确性更高(92.8%)与其他DGA方法相比,用于诊断变压器故障类型和高精度(99.1%)预测故障严重性类。

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