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Distribution Transformer Parameters Detection Based on Low-Frequency Noise Machine Learning Methods and Evolutionary Algorithm

机译:基于低频噪声机器学习方法和进化算法的分配变压器参数检测

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摘要

The paper proposes a method of automatic detection of parameters of a distribution transformer (model, type, and power) from a distance, based on its low-frequency noise spectra. The spectra are registered by sensors and processed by a method based on evolutionary algorithms and machine learning. The method, as input data, uses the frequency spectra of sound pressure levels generated during operation by transformers in the real environment. The model also uses the background characteristic to take under consideration the changing working conditions of the transformers. The method searches for frequency intervals and its resolution using both a classic genetic algorithm and particle swarm optimization. The interval selection was verified using five state-of-the-art machine learning algorithms. The research was conducted on 16 different distribution transformers. As a result, a method was proposed that allows the detection of a specific transformer model, its type, and its power with an accuracy greater than 84%, 99%, and 87%, respectively. The proposed optimization process using the genetic algorithm increased the accuracy by up to 5%, at the same time reducing the input data set significantly (from 80% up to 98%). The machine learning algorithms were selected, which were proven efficient for this task.
机译:本文提出了一种基于其低频噪声光谱从远处自动检测分配变压器(型号,型号和功率)参数的方法。光谱由传感器注册并通过基于进化算法和机器学习的方法处理。该方法作为输入数据,使用变压器在实际环境中操作期间产生的声压水平的频谱。该模型还使用背景特性来考虑变压器的变化工作条件。该方法使用经典遗传算法和粒子群优化搜索频率间隔及其分辨率。使用五种最先进的机器学习算法验证了间隔选择。该研究是在16种不同的分配变压器上进行的。结果,提出了一种方法,其允许检测特定变压器模型,其类型及其功率,其精度分别大于84%,99%和87%。所提出的优化过程使用遗传算法将精度提高至5%,同时减少输入数据明显(从80%高达98%)。选择了机器学习算法,从而证明了此任务的效率。

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