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Veranstaltung

Machine Learning and Optimization in Energy Systems [WS232581050]

Typ
Vorlesung / Übung (VÜ)
Präsenz
Semester
WS 23/24
SWS
3
Sprache
Englisch
Termine
22
Links
ILIAS

Dozent/en

Einrichtung

  • Energiewirtschaft

Bestandteil von

Veranstaltungstermine

  • 25.10.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 26.10.2023 09:45 - 11:15 - Room: 10.50 HS 102
  • 08.11.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 09.11.2023 09:45 - 11:15 - Room: 10.50 HS 102
  • 15.11.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 22.11.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 23.11.2023 09:45 - 11:15 - Room: 10.50 HS 102
  • 29.11.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 06.12.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 07.12.2023 09:45 - 11:15 - Room: 10.50 HS 102
  • 13.12.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 20.12.2023 11:30 - 13:00 - Room: 10.50 HS 102
  • 21.12.2023 09:45 - 11:15 - Room: 10.50 HS 102
  • 10.01.2024 11:30 - 13:00 - Room: 10.50 HS 102
  • 17.01.2024 11:30 - 13:00 - Room: 10.50 HS 102
  • 18.01.2024 09:45 - 11:15 - Room: 10.50 HS 102
  • 24.01.2024 11:30 - 13:00 - Room: 10.50 HS 102
  • 31.01.2024 11:30 - 13:00 - Room: 10.50 HS 102
  • 01.02.2024 09:45 - 11:15 - Room: 10.50 HS 102
  • 07.02.2024 11:30 - 13:00 - Room: 10.50 HS 102
  • 14.02.2024 11:30 - 13:00 - Room: 10.50 HS 102
  • 15.02.2024 09:45 - 11:15 - Room: 10.50 HS 102

Anmerkung

Goals:
Participants should know about the most common optimization and machine learning approaches for the application in energy systems. They should understand the basic principles of the methods and should be able to apply them for solving important problems of future energy systems with high shares of renewable energy sources.

Content:
In the beginning, the essential transition of the energy system into a smart grid and the need for methods from the field of optimization and machine learning are explained. The course can be subdivided into an optimization part and a larger machine learning part. In the optimization part, the basics of optimization approaches that are used in energy systems are shown. Further, heuristic methods and approaches from the field of multiobjective optimization are introduced. In the machine learning part, the most important methods from the field of unsupervised learning, supervised learning and reinforcement learning are introduced and their application in future energy systems are investigated.

Amongst the considered applications are power plant dispatch, intelligent heating with heat pumps, charging strategies for electric vehicles, clustering of energy data for energy system models and electricity demand and renewable generation forecasting.

We also offer a voluntary computer exercise that deepens the understanding of the methods and applications covered in the lecture. The students will have the opportunity to solve problems from the energy domain by using optimization and machine learning approaches implemented in the programming language Python.


The course's general focus is on the application of the methods in the energy field and not on the mathematical details of the different approaches.

The total workload for this course is approximately 105 hours:

  • Attendance: 30 hours
  • Self-study: 30 hours
  • Exam preparation: 45 hours