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Module (6 Credits)

Data Science in Energy and Environment

Name in diploma supplement
Data Science in Energy and Environment
Responsible
Admission criteria
See exam regulations.
Workload
180 hours of student workload, in detail:
  • Attendance: 30 hours
  • Preparation, follow up: 110 hours
  • Exam preparation: 40 hours
Duration
The module takes 1 semester(s).
Qualification Targets

The students

  • have an advanced understanding of forecasting concepts and techniques applied in energy markets
  • will use statistical software R to fit estimation and forecasting algorithms to real world data
  • can visualize and interpret obtained results
Module Exam

Weighted average of a group R-project and a presentation (usually about 20 minutes).

In Bezug auf das Niveau der zu erbringenden Leistung erfolgt eine Binnendifferenzierung nach Bachelor- bzw. Masterstudiengang.

Die Prüfung in diesem Modul darf nicht abgelegt werden, wenn "Advanced Forecasting in Energy Markets" bereits bestanden ist.

Usage in different degree programs
  • BWLVertiefungsstudiumSeminarbereich4.-6. Sem, Elective
  • BWL EaFSeminarbereich2.-3. Sem, Elective
  • ECMXWahlpflichtbereichME5 Economics1.-3. Sem, Elective
  • MuUSeminarbereich Märkte und Unternehmen2.-3. Sem, Elective
  • VWLVertiefungsstudiumWahlpflichtbereichVertiefungsbereich Zusatzseminar4.-6. Sem, Elective
  • VWLSeminarbereich2.-3. Sem, Elective
Elements
Name in diploma supplement
Advanced Forecasting in Energy Markets
Organisational Unit
Lecturers
SPW
2
Language
English
Cycle
irregular
Participants at most
20
Preliminary knowledge

Good knowledge of linear models and autoregressive processes. Experienced R knowledge. Sucessful participation in Econometrics of Electricity Markets is very helpful.

Abstract

The purpose of this seminar is to provide an advanced understanding of modeling and forecasting methods in energy markets, esp. concerning probabilistic forecasting. The students apply sophisticated forecasting methods to real data (e.g. electricity or natural gas prices, electricity load, wind and solar power production) using the statistical Software R. They write a report and present their findings.

The focus of the seminar is placed especially on probabilistic forecasting with different applications in e.g. electricity price and electricity load or wind and solar power production forecasting. A particular attention is given to regression-based modeling methods for electricity market data.

Contents
  1. Introduction to selected statistical/machine learning/forecasting concepts and techniques
  2. Evaluation frameworks
  3. Applications to problems in energy (markets) or the environment.
Literature
  • Hong, T., Pinson, P., Fan, S., Zareipour, H., Troccoli, A., & Hyndman, R. J. (2016). Probabilistic energy forecasting: Global energy forecasting competition 2014 and beyond.
  • Nowotarski, J., & Weron, R. (2017). Recent advances in electricity price forecasting: A review of probabilistic forecasting. Renewable and Sustainable Energy Reviews.
  • Petropoulos, F., Apiletti, D., Assimakopoulos, V., Babai, M. Z., Barrow, D. K., Taieb, S. B., ... & Ziel, F. (2022). Forecasting: theory and practice. International Journal of Forecasting, 38(3), 705-871.
Teaching concept

In the first few weeks the students learn the concepts of probabilistic forecasting in classes. Afterwards they apply the methods to energy market data using R, write a report and present their results.

Participants
Seminar: Data Science in Energy and Environment (WIWI‑C1106)
Module: Data Science in Energy and Environment (WIWI‑M0796)