The distribution network relies on a critical electric component, the cable joint (CJ), for expansion and post-fault repairs. In some parts of the network, a CJ can be found every few 100 m, making it a crucial element that requires thorough study. Additionally, the CJ is highly vulnerable, and its failure often results in explosions following a fault in a problematic network branch. Unfortunately, the exact relationship between CJ parameters and their health index (HI) is unknown. This work aims to enhance existing knowledge by proposing a new and flexible HI and using a machine learning-based approach to estimate CJ aging. The proposed HI considers numerous factors, detailed in the text, and is adaptable to the information available to system operators (SOs). By means of a public dataset with condition monitoring data, the machine learning algorithm is validated to demonstrate its efficacy in estimating the HI and forecasting future CJ parameters.

Negri, V., Mingotti, A., Tinarelli, R., Peretto, L., Ray, L.S.S., Zhou, B.o., et al. (2025). A Novel Health Index for MV Cable Joint Aging Prediction Based on Dynamic Graph Attention Model. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 74, 1-8 [10.1109/tim.2025.3550602].

A Novel Health Index for MV Cable Joint Aging Prediction Based on Dynamic Graph Attention Model

Negri, Virginia;Mingotti, Alessandro
;
Tinarelli, Roberto;Peretto, Lorenzo;
2025

Abstract

The distribution network relies on a critical electric component, the cable joint (CJ), for expansion and post-fault repairs. In some parts of the network, a CJ can be found every few 100 m, making it a crucial element that requires thorough study. Additionally, the CJ is highly vulnerable, and its failure often results in explosions following a fault in a problematic network branch. Unfortunately, the exact relationship between CJ parameters and their health index (HI) is unknown. This work aims to enhance existing knowledge by proposing a new and flexible HI and using a machine learning-based approach to estimate CJ aging. The proposed HI considers numerous factors, detailed in the text, and is adaptable to the information available to system operators (SOs). By means of a public dataset with condition monitoring data, the machine learning algorithm is validated to demonstrate its efficacy in estimating the HI and forecasting future CJ parameters.
2025
Negri, V., Mingotti, A., Tinarelli, R., Peretto, L., Ray, L.S.S., Zhou, B.o., et al. (2025). A Novel Health Index for MV Cable Joint Aging Prediction Based on Dynamic Graph Attention Model. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 74, 1-8 [10.1109/tim.2025.3550602].
Negri, Virginia; Mingotti, Alessandro; Tinarelli, Roberto; Peretto, Lorenzo; Ray, Lala Shakti Swarup; Zhou, Bo; Lukowicz, Paul
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1014352
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