基于多尺度机制的图计算电力设备缺陷分级

Jiao Fei, Zhenyuan Ma, Jiannan Xu, Yuanpeng Tan, Minghui Duan, Tong Jie
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引用次数: 0

摘要

电力设备检查的目的是及时发现和消除设备的缺陷和安全隐患,保证设备的安全运行。现在设备检测领域出现了大量的图结构数据,提高了知识的组织、管理和认知能力。设备缺陷分级是检测业务中的关键步骤,用于确定影响设备安全运行的严重程度,因此对模型的准确性和泛化能力要求较高。传统的图神经网络池化操作存在信息丢失的问题。为此,本文引入多尺度机制,提高模型的精度和泛化能力,实现对设备缺陷的准确分级。通过在NCI-1和CEPRI_EQUIP数据集上进行实验,并与基线方法进行比较,验证了所提算法的显著性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Computing Based Electric Power Equipment Defect Grading with Multi-scale Mechanism
Power equipment inspection aims to discover and eliminate equipment defects and potential safety hazards timely and ensure the safe operation of equipment. Now a large number of graph structure data have emerged in the equipment inspection field to improve the organization, management, and cognitive ability of knowledge. As a key step in the inspection business, equipment defect grading is used to determine the severity that affects the safe operation of equipment, so the accuracy and generalization ability of the model are required to be high. The pooling operation of traditional graph neural networks has the problem of information loss. Therefore, this paper introduces the multi-scale mechanism to improve the accuracy and generalization ability of the model and realize the accurate grading of equipment defects. By conducting experiments on NCI-1 and CEPRI_EQUIP datasets and comparing the proposed algorithm with baseline methods, the significant performance of the proposed algorithm is verified.
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