0% Complete
صفحه اصلی
/
The 4th International Conference on Electrical Machines and Drives
Prediction of Transformers Lifespan Under Thermal and Load Stresses Using Machine Learning
نویسندگان :
Mohsen Naservand
1
Abolfazl Pirayesh Neghab
2
1- دانشگاه شهید بهشتی
2- دانشگاه شهید بهشتی
کلمات کلیدی :
Transformers Lifespan Analysis،Machine learning،Random Search،Transformer Insulation aging
چکیده :
In modern power systems, efficient network planning relies on the critical role of transformers, whose longevity impacts both technical reliability and economic costs. Transformers are exposed to various environmental and operational stresses, particularly thermal and loading conditions, which accelerate the degradation of their insulation systems over time. A major factor in estimating a transformer's lifespan is the deterioration of its paper insulation, where the end of this insulation’s life defines the technical end of the transformer. This study leverages machine learning, specifically a multilayer perceptron (MLP) model, to estimate the degree of insulation degradation by predicting furfural content in transformer oil—a cost-effective alternative to direct measurement—thereby facilitating accurate technical lifespan estimation. Additionally, the study incorporates a random search algorithm to address the uncertainties in insulation degradation, refining predictions of the transformer’s end-of-life. An economic model is further developed to compare the technical and economic lifespan of transformers using the Equivalent Uniform Annual Cost (EUAC) metric. Through this approach, the optimal replacement time of transformers from an economic standpoint is identified, accounting for the balancing of technical and financial considerations. Results highlight the effectiveness of advanced machine learning methodologies in improving prediction accuracy, enhancing decision-making, and reducing costs associated with transformers.
لیست مقالات
لیست مقالات بایگانی شده
Comprehensive Investigation of Conventional and Model-Based Speed Controllers for SPMSM
Ahmad Reza Karamishahnani - Karim Abbaszadeh - Reza Nasiri-Zarandi
Asymmetric Rotor Hybrid Interior Permanent Magnet Coaxial Magnetic Gear for Torque Density and PM Utilization Ratio Improvement
Mojtaba Malakooti Khaledi - Seyed Ahmadreza Afsari Kashani
Winding Configuration in High‑Frequency Current Transformers for Partial‑Discharge Detection in Power Cables
Amirhossein Dehghan Ahangar - Asghar Akbari Azirani - Mohammad Rahimi
Data-Driven Prediction of Average Torque, Phase Resistance, and Coil Turns in 6/4 Switched Reluctance Motors Using ANN and EMDLAB
Nasrin Majlesi - Ali Jamali-Frad - Tohid Sharifi
Improving the performance of Permanent-Magnet Assisted Synchronous Reluctance Motor used in electric vehicles
Seyed Davood Hoseini robat - ُُSeyed Ebrahimُُُُ Afjei
تحلیل عیب ناهم محوری از نوع ترکیبی در ماشین شارمحوری آهنربای دائم بدون هسته
فاطمه اسلامی - مصطفی شاه نظری
Static Eccentricity Modeling in Coreless Axial Flux Permanent Magnet Machines Using Magnetic Equivalent Circuit Approach
Fatemeh Eslami - Mostafa Shahnazari - Mohammad Ebrahim Vaziri Sarashk
Optimal Design for Enhanced Torque and Efficiency of a Dual-Stator Dual-Rotor Axial-Flux Switching PM Motor for Lightweight EVs
Mohammad Farahzadi - Mohammadreza Naeimi - Amir Ebrahimi Shohani - Fariba Farrokh - Mohammad Sedigh Toulabi - Karim Abbaszadeh
A Coreless PCB Transformer-Based Edge-Type Gate Driver for High-Power IGBTs
Amirhossein Sadeghi-Bahmani - Sadegh Mohsenzade - Alireza Jaafari
A data-driven load shedding method based on generative adversarial networks considering missing data and unlearned fault
Nazanin Pourmoradi - Sasan Azad - Mohammadtaghi Ameli
بیشتر
ثمین همایش، سامانه مدیریت کنفرانس ها و جشنواره ها - نگارش 43.0.1