MAÜ GCRIS Standart veritabanının içerik oluşturulması ve kurulumu Research Ecosystems (https://www.researchecosystems.com) tarafından devam etmektedir. Bu süreçte gördüğünüz verilerde eksikler olabilir.
 

A Hybrid Machine Learning Approach for Predicting Power Transformer Failures Using Internet of Things-Based Monitoring and Explainable Artificial Intelligence

No Thumbnail Available

Date

2025

Journal Title

Journal ISSN

Volume Title

Publisher

Institute of Electrical and Electronics Engineers Inc.

Open Access Color

OpenAIRE Downloads

OpenAIRE Views

Research Projects

Organizational Units

Organizational Unit
08.01. Department of Computer Engineering / Bilgisayar Mühendisliği Bölümü
Bölümde çağdaş teknolojik gelişmeler doğrultusunda, teknolojiyi yakından takip ederek yeni teknoloji ve uygulamaların geliştirilmesine katkı sağlamak amacıyla, nitelikli bilgisayar mühendisleri yetiştirilmesi amaçlanmaktadır. Eğitimler kapsamında, özellikle yapay zeka, makine öğrenmesi, derin öğrenme, görüntü işleme, sinyal işleme, büyük veri ve veri madenciliği, nesnelerin interneti gibi teknolojik konularda hem teorik hem de uygulamalı bir eğitim modeli hedeflenmektedir.

Journal Issue

Events

Abstract

Power transformers are critical components in ensuring the continuous and stable operation of power systems. Failures in these units can lead to significant power outages and costly downtime. Existing maintenance strategies often fail to accurately predict such failures, highlighting the need for novel predictive approaches. This study aims to improve the reliability of power systems by predicting transformer failures through the integration of IoT technologies and advanced machine learning techniques. The proposed hybrid model combines the LightGBM algorithm with GridSearch optimization to achieve both high predictive accuracy and computational efficiency. In addition, the model enhances interpretability by incorporating SHapley Additive exPlanations (SHAP) and Local Interpretable Model-Agnostic Explanations (LIME) for transparent decision making. The study presents a detailed comparison of different classification algorithms and evaluates their performance using metrics such as accuracy, recall, and F1 score. The results show that the hybrid model outperforms other methods, achieving an accuracy of 99.91%. The SHAP and LIME analyses provide engineers and researchers with valuable insights by highlighting the most influential features in failure prediction. In addition, the model's ability to efficiently handle large data sets enhances its practicality in real-world power systems. By proposing an innovative approach to failure prediction, this research contributes to both the theoretical foundation and practical advancement of sustainable and reliable energy infrastructures. © 2013 IEEE.

Description

Keywords

Fault Detection, Lime, Machine Learning, Power Transformers, SHAP

Turkish CoHE Thesis Center URL

Fields of Science

Citation

WoS Q

Q2

Scopus Q

Q1

Source

IEEE Access

Volume

13

Issue

Start Page

113618

End Page

113633
Google Scholar Logo
Google Scholar™

Sustainable Development Goals

SDG data could not be loaded because of an error. Please refresh the page or try again later.