Non-intrusive temperature rise fault-identification of distribution cabinet based on tensor block-matching

IF 1.9 Q4 ENERGY & FUELS Global Energy Interconnection Pub Date : 2023-06-01 DOI:10.1016/j.gloei.2023.06.006
Jie Tong, Yuanpeng Tan, Zhonghao Zhang, Qizhe Zhang, Wenhao Mo, Yingqiang Zhang, Zihao Qi
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Abstract

In this study, a novel non-intrusive temperature rise fault-identification method for a distribution cabinet based on tensor block-matching is proposed. Two-stage data repair is used to reconstruct the temperature-field information to support the demand for temperature rise fault-identification of non-intrusive distribution cabinets. In the coarse-repair stage, this method is based on the outside temperature information of the distribution cabinet, using tensor block-matching technology to search for an appropriate tensor block in the temperature-field tensor dictionary, filling the target space area from the outside to the inside, and realizing the reconstruction of the three-dimensional temperature field inside the distribution cabinet. In the fine-repair stage, tensor super-resolution technology is used to fill the temperature field obtained from coarse repair to realize the smoothing of the temperature-field information inside the distribution cabinet. Non-intrusive temperature rise fault-identification is realized by setting clustering rules and temperature thresholds to compare the location of the heat source with the location of the distribution cabinet components. The simulation results show that the temperature- field reconstruction error is reduced by 82.42% compared with the traditional technology, and the temperature rise fault- identification accuracy is greater than 86%, verifying the feasibility and effectiveness of the temperature-field reconstruction and temperature rise fault-identification.

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基于张量块匹配的配电柜非侵入式温升故障识别
提出了一种基于张量块匹配的配电柜温升故障非侵入式识别方法。采用两阶段数据修复的方法重构温度场信息,以满足非侵入式配电柜温升故障识别的需求。在粗修阶段,该方法基于配电柜外部温度信息,利用张量块匹配技术,在温度场张量字典中搜索合适的张量块,由外向内填充目标空间区域,实现配电柜内部三维温度场的重建。在细修阶段,利用张量超分辨技术对粗修得到的温度场进行填充,实现配电柜内部温度场信息的平滑处理。通过设置聚类规则和温度阈值,将热源位置与配电柜部件位置进行比较,实现非侵入式温升故障识别。仿真结果表明,与传统技术相比,温度场重构误差减小了82.42%,温升故障识别准确率大于86%,验证了温度场重构和温升故障识别的可行性和有效性。
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来源期刊
Global Energy Interconnection
Global Energy Interconnection Engineering-Automotive Engineering
CiteScore
5.70
自引率
0.00%
发文量
985
审稿时长
15 weeks
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