Machine Learning for Power Engineers
SCHEDULED OFFERINGS
Course Code: 16-0204-ONL26 / Online / Feb 18 - 19, 2026 | More Info REGISTER NOW |
14 Professional Development Hours
After participating in this course, you will have an understanding of:
- The basics of machine learning algorithms
- The overall implementation of machine learning from collecting the data to the classification process
- Sources of machine learning errors
- New trends in machine learning
- The use of available machine learning software
- Application of machine learning to different power engineering problems
Description
The application of machine learning in the power system is an integral part of the smart grid. This course introduces the basic knowledge of machine learning for power engineers with an emphasis on applications related to the power industry. The types of machine learning algorithms, such as supervised and unsupervised learning, classification, and regression problems, will be discussed. Also, the practical problems that diminish the efficiency of machine learning, like overfitting and imbalance of data, will be highlighted. The application of deep learning as a new trend in machine learning will be introduced. The main focus of the course is on the practical application of machine learning to the power grid without going deep into the math or the statistics behind the different algorithms. Hands-on tutorials using free software will be utilized to demonstrate the application of machine learning to the power industry.
Who Should Attend
This course is intended as an introduction to machine learning and its application to the power industry for power managers and engineers who are dealing with different parts of the power grid. The course does not require any background in programming, math, or statistics.
Course Syllabus
Day I (Theory)
Introduction
- Type of machine learning algorithms
- Supervised vs Unsupervised learning
- Classification vs regression problems
- The overall machine-learning process
- Data collection
- Extracting features
- Learning process
- Application of machine learning algorithms
Examples of Machine Learning Applications in Power Engineering
- Predicting the output of renewable energy sources
- Identifying the source of partial discharge in electrical equipment
- Estimating the transformer health index
- Detecting the source of transient in the power grid
- Enhancing the operation of the distribution system using data from smart meters
- Quantifying the damage in outdoor ceramic and non-ceramic insulators
Problems With Machine Learning and Their Remedies
- Overfitting
- Data imbalance
- Curse of dimensionality
New Trends in Machine Learning
- Big data
- Deep learning
- Multi label problems
- Applications on edge devices
Day II (Application)
Introduction To FREE Commercial Machine Learning Software
- Hands-on tutorial on using WEKA to explore the following:
- Application of supervised learning
- Regression
- Classification
- Application of unsupervised learning
- Clustering
Hands-on Study Cases (Using WEKA):
- Detecting different defects in outdoor ceramic insulators:
- Problems with ceramic insulators: crack, pollution discharge, etc.
- Sensor application and data gathering
- Classifying the different insulator defects.
- Predicting transformer oil parameters:
- Importance and types of transformer oil tests
- Predicting transformer oil interfacial tension and furan content.
Course Rating
Overall rating of this course by its previous attendees!
SCHEDULED OFFERINGS
This course is currently scheduled on the following date. Click to learn even more details about this offering.
COURSE CREDIT
Almost all of EPIC's courses offer :
- Continuing Education Units (CEUs) and
- Professional Development Hours (PDHs)
These course credits will help attendees earn training requirements for their associations or provincial governing bodies.
ON-SITE TRAINING
REQUEST A QUOTE