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Ferroelectret-based Hydrophone Employed in Oil Identification—A Machine Learning Approach

机译:油识别中基于铁电驻极体的水听器-一种机器学习方法

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摘要

This work focuses on acoustic analysis as a way of discriminating mineral oil, providing a robust technique, immune to electromagnetic noise, and in some cases, depending on the applied sensor, a low-cost technique. Thus, we propose a new method for the diagnosis of the quality of mineral oil used in electrical transformers, integrating a ferroelectric-based hydrophone and an acoustic transducer. Our classification solution is based on a supervised machine learning technique applied to the signals generated by an in-home built hydrophone. A total of three statistical datasets entries were collected during the acoustic experiments on four types of oils. The first, the second, and third datasets contain 180, 240, and 420 entries, respectively. Eighty-four features were considered from each dataset to apply to two classification approaches. The first classification approach is able to distinguish the oils from the four possible classes with a classification error less than 2%, while the second approach is able to successfully classify the oils without errors (e.g., with a score of 100%).
机译:这项工作着重于声学分析,作为一种区分矿物油的方法,提供了一种鲁棒的技术,对电磁噪声具有免疫力,并且在某些情况下(取决于所应用的传感器)是一种低成本技术。因此,我们提出了一种基于铁电水听器和声换能器的诊断变压器中矿物油质量的新方法。我们的分类解决方案基于有监督的机器学习技术,该技术适用于家用内置水听器生成的信号。在针对四种类型的油的声学实验期间,总共收集了三个统计数据集条目。第一,第二和第三数据集分别包含180、240和420个条目。每个数据集中考虑了84个特征,以应用于两种分类方法。第一种分类方法能够以小于2%的分类误差将油与四种可能的类别进行区分,而第二种方法则能够成功地对油进行正确分类而没有错误(例如,分数为100%)。

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