{rfName}
In

License and use

Altmetrics

Analysis of institutional authors

Ye-Lin, YCorresponding AuthorNieto-Del-Amor, FAuthorFuster-Roig, VAuthor

Share

Publications
>
Article

Inception 1D-convolutional neural network for accurate prediction of electrical insulator leakage current from environmental data during its normal operation using long-term recording

Publicated to:Engineering Applications Of Artificial Intelligence. 119 105799- - 2023-03-01 119(), DOI: 10.1016/j.engappai.2022.105799

Authors: Bueno-Barrachina, Jose-M; Ye-Lin, Yiyao; Nieto-del-Amor, Felix; Fuster-Roig, Vicente

Affiliations

Univ Politecn Valencia, Ctr Invest Innovac Bioingn Ci2B, Camino Vera S-N Ed 7F - Author
Univ Politecn Valencia, Inst Tecnol Elect - Author

Abstract

Contamination flashover remains one of the biggest challenges for power grid designers and maintenance engineers. Insulator leakage current contains relevant information about their state so that continuous monitoring is considered the most effective way to prevent contamination flashover. In this work, we attempted to accurately predict insulator leakage current in real time during normal operations based on environmental data using long-term recordings. We first confirmed that the history of environmental data also contained relevant information to predict leakage current by conditional Granger analysis and determined that 20 was the optimal number of previous samples for this purpose. We then compared the performance of typical regression models and convolutional neural network (CNN), when using both current and the last 21 samples as input features. We confirmed that the model with the last 21 samples might perform significantly better. Input features pre-processing by cascaded inception architecture was fundamental to capture the complex dynamic interaction between environmental data and leakage current and significantly improved the model performance. CNN based on inception architecture performed much better, achieving an average R2 of 0.94 +/- 0.03. The proposed model could be used to predict leakage current in both porcelain insulators with or without coatings and silicone composite insulators. Our results pave the way for creating an on-line pre-warning system adapted to individual installations, can anticipate the negative consequences of weather and/or pollution deposits and is useful for designing a strategic high-voltage electrical insulator preventive maintenance plan for preventing contamination flashover and thus increase power grid reliability and resilience.

Keywords

Conditional granger causalityContamination flashoverConvolutionConvolutional neural networkConvolutional neural networksDegradationElectrical insulatorsEnvironmental dataFlashoverFlashover voltageForecastingGranger causalityIdentificationImpactInception architectureInsulator contaminationInsulator leakage current predictionInsulator leakage currentsLeakage currentsMechanismNetwork architecturePreventive maintenanceRecognitionRegression analysisSiliconesSirStructural damage detectionSupport vector regressionSupport vector regressions

Quality index

Bibliometric impact. Analysis of the contribution and dissemination channel

The work has been published in the journal Engineering Applications Of Artificial Intelligence due to its progression and the good impact it has achieved in recent years, according to the agency WoS (JCR), it has become a reference in its field. In the year of publication of the work, 2023, it was in position 5/181, thus managing to position itself as a Q1 (Primer Cuartil), in the category Engineering, Multidisciplinary. Notably, the journal is positioned above the 90th percentile.

From a relative perspective, and based on the normalized impact indicator calculated from World Citations provided by WoS (ESI, Clarivate), it yields a value for the citation normalization relative to the expected citation rate of: 2.27. This indicates that, compared to works in the same discipline and in the same year of publication, it ranks as a work cited above average. (source consulted: ESI Nov 14, 2024)

This information is reinforced by other indicators of the same type, which, although dynamic over time and dependent on the set of average global citations at the time of their calculation, consistently position the work at some point among the top 50% most cited in its field:

  • Weighted Average of Normalized Impact by the Scopus agency: 1.58 (source consulted: FECYT Feb 2024)
  • Field Citation Ratio (FCR) from Dimensions: 10.2 (source consulted: Dimensions Jun 2025)

Specifically, and according to different indexing agencies, this work has accumulated citations as of 2025-06-29, the following number of citations:

  • WoS: 14
  • Scopus: 16

Impact and social visibility

From the perspective of influence or social adoption, and based on metrics associated with mentions and interactions provided by agencies specializing in calculating the so-called "Alternative or Social Metrics," we can highlight as of 2025-06-29:

  • The use of this contribution in bookmarks, code forks, additions to favorite lists for recurrent reading, as well as general views, indicates that someone is using the publication as a basis for their current work. This may be a notable indicator of future more formal and academic citations. This claim is supported by the result of the "Capture" indicator, which yields a total of: 38 (PlumX).

Leadership analysis of institutional authors

There is a significant leadership presence as some of the institution’s authors appear as the first or last signer, detailed as follows: First Author (Bueno-Barrachina, JM) and Last Author (Fuster Roig, Vicente Luis).

the author responsible for correspondence tasks has been Ye Lin, Yiyao.