EEE 102
Course Title: Advanced Topics in Energy Systems
Instructor: Dr. Parikshit
Semester: Spring 2025
Department: Electrical Engineering, IIT Roorkee
Course Description
This course explores advanced methodologies for solving complex energy system challenges. Topics include probabilistic power system operations, non-parametric methods, and the application of quantum computing to energy problems. Students will gain a deep understanding of theoretical principles and practical tools essential for modern power systems.
Learning Objectives
By the end of this course, students will be able to:
- Understand and apply probabilistic approaches in energy systems.
- Integrate machine learning techniques into power system operations.
- Analyze the potential and limitations of quantum computing in solving energy problems.
- Develop robust models for grid stability and optimal power flow.
Prerequisites
- Basics of power systems (EEE 101 or equivalent).
- Linear Algebra and Probability.
- Experience with MATLAB or Python is recommended.
Course Topics
- Introduction to Modern Power Systems
- Learning-Integrated Power System Operations
- Bayesian approaches
- Machine learning frameworks for uncertainty modeling
- Probabilistic and Non-Parametric Methods
- Stochastic optimization
- Uncertainty quantification and contextualization
- Quantum Computing in Energy Systems
- Quantum algorithms for optimization
- Current challenges and opportunities
Grading Breakdown
- Assignments: 30%
- Midterm Exam: 20%
- Project: 30%
- Final Exam: 20%
Late submission policy: A penalty of 10% per day will be applied to late submissions, up to a maximum of 3 days.
Class Schedule
| Week | Topic | Notes/Readings |
|——|——————————————-|———————————|
| 1 | Introduction to Modern Power Systems | Chapter 1 of Textbook |
| 2 | Learning-Integrated Operations | Lecture slides and paper [1] |
| 3-4 | Probabilistic Modeling and Optimization | Chapters 3 & 4, Paper [2] |
| 5-6 | Quantum Computing for Energy Systems | Lecture notes and paper [3] |
Resources
- Textbook: Power System Analysis and Design by Glover, Sarma, Overbye.
- Papers: Links to research papers will be provided on Moodle.
- Tools: Python (preferred), MATLAB, and Qiskit for quantum simulations.
Contact Information
- Instructor: Dr. Parikshit
- Office: Room 101, Electrical Engineering Building
- Email: parikshit@iitr.ac.in
- Office Hours: Monday & Wednesday, 3:00 PM - 4:00 PM
- Teaching Assistant:
- Name: [TA Name]
- Email: [TA Email]
Announcements
Please check the course Moodle page regularly for updates on assignments, lecture notes, and deadlines.
Policies
- Academic integrity is taken very seriously. Plagiarism and cheating will result in disciplinary action.
- Participation is expected in lectures and group discussions.
Project Guidelines
- Topics will be provided by the instructor, or students can propose their own (with approval).
- Teams of up to 3 students are allowed.
- Deliverables include a project proposal, midterm progress report, and final presentation.
Let’s make this a great semester of learning and discovery!