Transformer Mechanical Condition Assessment Method Based on Improved Grey Similarity Correlation

Ju Ping, Zhang Hongru, Liu Yuesong, Lian Qingquan
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Abstract

Transformer mechanical condition assessment methods based on transformer vibration signals have received a lot of attention due to their non-stop, safe and other characteristics. At present, many studies of transformer body vibration signals are based on their amplitude, which has a high mistaken judgment rate. At the same time, for different loads and types of transformers, their single frequency varies widely, making it difficult to reflect the mechanical condition of the transformer effectively. In this paper, the energy share of the vibration signal is calculated in frequency bands according to the vibration characteristics of the transformer body to reduce the influence of signal fluctuations in low frequency bands on the assessment of the mechanical condition. Combining the energy distribution and frequency components of the vibration signal in different frequency bands, an improved grey similarity correlation is used to assess the mechanical condition of the transformer.
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基于改进灰色相似关联的变压器机械状态评估方法
基于变压器振动信号的变压器机械状态评估方法因其不停机、安全等特点而受到广泛关注。目前,许多变压器本体振动信号的研究都是基于其幅值进行的,误判率很高。同时,对于不同负载、不同类型的变压器,其单频变化较大,难以有效反映变压器的机械状况。本文根据变压器本体的振动特性,按频带计算振动信号的能量占比,以减少低频信号波动对机械状态评估的影响。结合振动信号在不同频段的能量分布和频率分量,采用改进的灰色相似关联法对变压器的机械状态进行评估。
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