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Statistical learning techniques and their applications for condition assessment of power transformer

机译:统计学习技术及其在变压器状态评估中的应用

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The condition of power transformers has a significant impact on the reliable operation of the electric power grid. A number of techniques have been in use for condition assessment of transformers. However, interpreting measurement data obtained from these techniques is still a non-trivial task; correlating measurement data to transformer condition is even more difficult. This paper investigates statistical learning techniques, which is able to learn statistical properties of a system from known samples and to predict the system output for unknown samples. Within the statistical learning framework, this paper develops a support vector machine (SVM) algorithm, which can be utilised for automatically analyzing measurement data and assessing condition of transformers. Case studies are presented to demonstrate the applicability of the developed algorithm for condition assessment of power transformer.
机译:电力变压器的状况对电网的可靠运行有重大影响。许多技术已用于变压器状态评估。然而,解释从这些技术获得的测量数据仍然是一项艰巨的任务。将测量数据与变压器状况关联起来甚至更加困难。本文研究了统计学习技术,该技术能够从已知样本中学习系统的统计特性,并预测未知样本的系统输出。在统计学习框架内,本文开发了一种支持向量机(SVM)算法,该算法可用于自动分析测量数据和评估变压器的状态。案例研究表明了开发算法在电力变压器状态评估中的适用性。

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