EPN

PENG9620 Smart cities for a Sustainable Energy Future - From Design to Practice Emneplan

Engelsk emnenavn
Smart cities for a Sustainable Energy Future - From Design to Practice
Studieprogram
PhD Programme in Engineering Science
Omfang
5.0 stp.
Studieår
2019/2020
Timeplan
Emnehistorikk

Innledning

This course covers contemporary topics in smart energy systems such as smart power grid, smart buildings, vehicle-to-grid (V2G) and communication technologies for and network security in smart energy systems, including emerging approaches towards energy intelligence such as machine learning and blockchain.

The course will be offered once a year, provided 5 or more students sign up for the course. If less than 5 students sign up for a course, the course will be cancelled for that year

Anbefalte forkunnskaper

Bachelor's or master's degree in engineering or science.

Forkunnskapskrav

None.

Læringsutbytte

Knowledge

On successful completion of the course, the student:

  • is at the forefront of knowledge about smart energy systems, both at the system level and at the specific component/application level.
  • understands what different technologies can be used at what level in energy generation, transmission, distribution and consumption networks.
  • knows about communication technologies and their performance limits for enabling energy intelligence in smart energy systems.

Skills

On successful completion of the course, the student can:

  • solve resource optimisation problems for the energy information network.
  • apply optimisation techniques and machine learning-based approaches for residential demand response management and vehicle-to-grid.

General competence

On successful completion of the course, the student can:

  • communicate and collaborate with experts from other disciplines on larger interdisciplinary and multidisciplinary research projects.
  • Recognise and assess a project's potential and value
  • participate in debates and communicate results through recognised international channels, such as academic conferences.
  • can construct and develop relevant models and discuss the model's validity.
  • Disseminate knowledge to broader audiences

Innhold

The course is divided into three modules.

The first module covers lectures on economic interactions for the energy market, focusing mainly on applications such as demand response management (DRM), and vehicle-to-grid (V2G), etc.

The second module consists of lectures on current and emerging approaches such as machine learning and blockchain for energy intelligence and network security.

The third module will be a seminar which will include a hands-on session on tools such as optimisation and machine learning for solving specific problems in future energy information networks, and will conclude with a project assignment to be submitted by a given deadline.

Arbeids- og undervisningsformer

Module 1 and 2 will take the form of a series of lectures. Module 3 will be a combination of hands-on sessions along with the project assignment.

Practical training

The students will solve specific problems using optimisation or machine learning techniques. The students will submit a brief report with results for the problem in the assignment, also describing the process they used for solving the assignment, including the code.

Arbeidskrav og obligatoriske aktiviteter

None.

Vurdering og eksamen

The results for the project assignment, process description, and the code will be assessed by the course leader. The exam can be appealed.

Hjelpemidler ved eksamen

All aids are permitted.

Vurderingsuttrykk

Pass or fail.

Sensorordning

One examiner. External examiner is used periodically.