inf513 - Energy Informatics Lab (Complete module description)

inf513 - Energy Informatics Lab (Complete module description)

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Module label Energy Informatics Lab
Modulkürzel inf513
Credit points 6.0 KP
Workload 180 h
Institute directory Department of Computing Science
Verwendbarkeit des Moduls
  • Master's Programme Business Informatics (Master) > Akzentsetzungsmodule der Informatik
  • Master's Programme Computing Science (Master) > Angewandte Informatik
Zuständige Personen
  • Lehrenden, Die im Modul (Prüfungsberechtigt)
  • Lehnhoff, Sebastian (module responsibility)
Prerequisites
  • Programming with Java
  • Programming with Python
Skills to be acquired in this module
Successfully completing this lecture will enable the students to mathematically model simple controllable electrical generators and consumers and to simulate them together with appropriate control algorithms within smart grid scenarios. To achieve this goal, students will start with deriving computational models from physical models and evaluate them. In order to manage the integration of control algorithms, students are taught the principles of cosimulation using the "mosaik" smart grid co-simulation framework as an example. Students will be able to understand and apply distributed, agent-based control schemes to decentralized energy generators and/ or consumers. As a result, students are able to analyze the requirements for successful application to real power balancing regarding capacity utilization, robustness, and flexibility. In addition, students learn the foundations of planning and conducting simulation based experiments as well as the interpretation of the results. Special attention will be paid on establishing a balance between the results' precision and robustness and the necessary effort (design of experiments) in order to gain as much insight into interdependencies with as few experiments as possible.
Professional competence
The students:
  • derive and evaluate computational models from physical models
  • use the "mosaik" smart grid co-simulation framework
  • analyze the requirements for successful applications to real power balancing regarding capacity utilization, robustness, and flexibility
  • name the foundations of planning and conducting simulation based experiments as well as the interpretation of the results
  • are aware of the balance between the results' precision and robustness and the necessary effort (design of experiments) in order to gain as much insight into interdependencies with as few experiments.
Methodological competence
The students:
  • model simple controllable electrical generators and consumers
  • simulate simple controllable electrical generators and consumers with appropriate control algorithms within smart grid scenarios
  • apply distributed agent-based control schemes to decentralized energy generators and/ or consumers
  • evaluate simulation results
  • search information and look into methods to implement models
  • propose hyphothesis and check their validity with design of experiments methods
Social competence
The students:
  • apply the pair progamming development technique
  • discuss design decisions
  • identify work packages and are responsible for it
Self-competence
The students:
  • reflect on their own use of power as a limited resource
  • accept and use criticism to develop their own behaviour
Module contents
In this practical course students:
  • model controllable, modulating electrical energy generators and consumers,
  • put their hands on mosaik (installation, description and configuration of scenarios, conduction of simulations),
  • learn the principles of agent-based heuristics for optimization problems in future smart grid scenarios,
  • learn about the challenges of implementing agent-based mechanisms (multi-criticality, convergency, quality) on the training,
  • learn the foundations for choice and design of simulation based experiments.
Literaturempfehlungen
Suggested reading:
Smart Grids:
  • Konstantin, P.: "Praxisbuch Energiewirtschaft", Springer, 2006
  • Schwab, A.: "Elektroenergiesysteme", Springer, 2009
Multiagentensysteme:
  • Sutton, R. S.; Barto, A. G.: "Reinforcement Learning", MIT Press, 1998
  • Weiss, G.: "Multiagent Systems", MIT Press, 2013
  • Ferber J.; Kirn, S.: "Multiagentensysteme: eine Einführung in die Verteilte Künstliche lntelligenz", Addison-Wesley, 2001
Co-Simulation:
  • Ptolemaeus, C.: "System Design, Modeling, and Simulation", UC Berkeley, 2013
  • Law, A.: "Simulation Modeling and Analysis", McGraw-Hill, 2015
Versuchsplanung:
  • Kleppmann, W.: "Versuchsplanung", Hanser, 2013
  • Klein, B.: "Versuchsplanung - DoE", Oldenbourg, 2011
  • Goos, P.; Jones, B.: "Optimal Design of Experiments", Wiley, 2014
  • Box, G. E. P.; Hunter, J. S.; Hunter, W. G.: "Statistics for Experimenters", Wiley, 2005
  • Forrester, A.; Sobester, A.; Keane, A.: "Engineering Design via Surrogate Modelling", Wiley, 2008
Links
http://mosaik.offis.de
Language of instruction German
Duration (semesters) 1 Semester
Module frequency annual
Module capacity unlimited
Reference text
Elective module in the master specialization area (energy computer science).
Associated with the modules:
  • Energieinformationssysteme
  • Smart Grid Management
Teaching/Learning method 1P
Previous knowledge - Programming with Java
- Programming with Python
Examination Prüfungszeiten Type of examination
Final exam of module
At the end of the semester
Oral exam
Lehrveranstaltungsform Practical training
SWS 4
Frequency SoSe