Transformer fault diagnosis based on DBO-BiLSTM algorithm and LIF technology

Peng-cheng Yan, JingBao Wang, Wenchang Wang, Guo-dong Li, Yuting Zhao, Ziming Wen
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Abstract

In response to the deficiencies of traditional power transformer fault detection techniques, such as low sensitivity and the inability for online monitoring, a novel transformer fault diagnosis model combining Laser-Induced Fluorescence (LIF) technology with deep learning is proposed. Initially, the spectral data of transformer insulation oil is acquired using LIF technology, yielding spectral data for various fault types. Subsequently, MinMaxScaler (MMS) and Standard Normalized Variate (SNV) methods are employed for denoising and preprocessing the spectral data. The preprocessed data is then subjected to dimensionality reduction using Linear Discriminant Analysis (LDA) and T-distributed Stochastic Neighbor Embedding (T-SNE) to ensure that the spectral data retains maximal feature information while minimizing its dimensionality. Following this, Long Short-Term Memory (LSTM), Bi-directional Long Short-Term Memory (BiLSTM), Dung Beetle Optimizer-Bi-directional Long Short Term Memory (DBO-BiLSTM), Convolutional Neural Network (CNN), and Support Vector Machine (SVM) models are constructed. The reduced-dimensional data is fed into each of the five models for training to facilitate transformer fault diagnosis. Through comparative analysis among the five models, the optimal model is selected. Experimental results indicate that the DBO-BiLSTM model is the most suitable for transformer fault diagnosis in this experiment, underscoring its significant implications for ensuring the safety of power systems.
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基于 DBO-BiLSTM 算法和 LIF 技术的变压器故障诊断
针对传统电力变压器故障检测技术灵敏度低、无法在线监测等缺陷,提出了一种结合激光诱导荧光(LIF)技术和深度学习的新型变压器故障诊断模型。首先,利用激光诱导荧光技术获取变压器绝缘油的光谱数据,得到各种故障类型的光谱数据。随后,采用 MinMaxScaler(MMS)和标准归一化变量(SNV)方法对光谱数据进行去噪和预处理。然后使用线性判别分析法(LDA)和 T 分布随机邻域嵌入法(T-SNE)对预处理后的数据进行降维处理,以确保频谱数据在最小化维数的同时保留最大的特征信息。然后,构建长短期记忆(LSTM)、双向长短期记忆(BiLSTM)、蜣螂优化器-双向长短期记忆(DBO-BiLSTM)、卷积神经网络(CNN)和支持向量机(SVM)模型。将降维数据分别输入五个模型进行训练,以促进变压器故障诊断。通过对五个模型的比较分析,选出了最优模型。实验结果表明,在本实验中,DBO-BiLSTM 模型最适合用于变压器故障诊断,凸显了其对确保电力系统安全的重要意义。
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