Health assessment of transformers using online and offline parameters

Authors

  • Pradip Prasad Sah Department of Electronics and Computer Engineering, Thapathali Campus, Institute of Engineering, Tribhuvan University, Nepal
  • Madhusudan Nyaupane Department of Electrical Engineering, Institute of Engineering, Tribhuvan University, Nepal
  • Prabesh Babu Adhikari Department of Electronics and Computer Engineering, Thapathali Campus, Institute of Engineering, Tribhuvan University, Nepal
  • Sujal Mainali Department of Electronics and Computer Engineering, Thapathali Campus, Institute of Engineering, Tribhuvan University, Nepal
  • Ninamhang Kulung Department of Electronics and Computer Engineering, Thapathali Campus, Institute of Engineering, Tribhuvan University, Nepal

DOI:

https://doi.org/10.3126/jiee.v9i1.90400

Keywords:

Health Index (HI), Online Parameters (ONP), HI Degradation Rate, Condition Monitoring, SCADA

Abstract

Distribution transformers at substations are crucial assets in power system, whose failure can cause major operational disruptions, safety risks, and economic losses, thus making effective condition assessment essential for ensuring reliability and minimizing outages. This paper presents Supervisory Control and Data Acquisition (SCADA)-based transformer Health Index (HI) method that combines both Offline Parameters (OFPs) which include transformer age, historical loading, maintenance history, and environmental conditions and Online Parameters (ONPs) which incorporate real-time operational stresses like voltage, current, active power, oil temperature, and winding temperature. The proposed HI formulation applies a rule based, explainable scoring and weighting scheme to combine OFPs and ONPs into a single normalized metric where based on published failure statistics and utility-specific evidence, a weightage of 30% for OFPs and 70% for ONPs is adopted, emphasizing operational stress while accounting for long-term degradation. The computed HI is categorized as Good (85–100%), Fair (65–85%), Poor (50–65%), or Very Poor (0–50%). The method is tested using one year of data from two parallel 66/11 kV, 30 MVA power transformers and overall HI values of 0.598 and 0.567 for Transformer 1 and Transformer-2 respectively classify that both are in the fair condition category, suggesting the need for enhanced inspection rather than immediate replacement, while degradation-rate analysis confirms stable long-term operation.

Downloads

Download data is not yet available.
Abstract
14
PDF
8

Downloads

Published

2026-06-01

How to Cite

Sah, P. P., Madhusudan Nyaupane, Prabesh Babu Adhikari, Sujal Mainali, & Kulung, N. (2026). Health assessment of transformers using online and offline parameters. Journal of Innovations in Engineering Education, 9(1), 120–132. https://doi.org/10.3126/jiee.v9i1.90400

Issue

Section

Articles