EPN-V2

MOKV3400 Produksjon for streaming og nett-tv Emneplan

Engelsk emnenavn
Production for streaming and web-TV
Omfang
15.0 stp.
Studieår
2025/2026
Emnehistorikk
Timeplan
  • Innledning

    Students who complete the course are expected to have the following learning outcomes, defined in terms of knowledge, skills and general competence:

    Knowledge:

    • Understand the principles of systems engineering and their relevance to energy systems and predictive maintenance.
    • Gain a comprehensive overview of energy systems, from fossil fuels to renewables, and the unique challenges they present.
    • Acquire advanced knowledge of probabilistic machine learning techniques, including Gaussian processes, hidden Markov models, probabilistic graphical models, and deep belief networks.
    • Understand the integration of machine learning techniques into predictive maintenance frameworks and their impact on system reliability.

    Skills:

    • Apply systems engineering principles to design and analyze energy systems, ensuring efficient integration of predictive maintenance strategies.
    • Develop and implement predictive maintenance frameworks tailored to energy systems, transitioning from reactive to proactive maintenance approaches.
    • Employ probabilistic machine learning techniques, such as Gaussian processes and graphical models, to model system behavior, predict failures, and optimize performance.

    Competence:

    • Collaborate effectively across disciplines to design solutions for predictive maintenance in diverse energy system contexts.
    • Evaluate uncertainties in predictions and make informed decisions to improve the reliability and efficiency of energy systems through predictive maintenance strategies.
    • Demonstrate proficiency in implementing probabilistic machine learning algorithms using Python and relevant libraries for energy system predictive maintenance tasks.
  • Forkunnskapskrav

    Teaching methods will include lectures, group work and guest lectures from industry personnel.

  • Læringsutbytte

    The following coursework requirements must be approved in order for the student to take the exam:

    One assignment project. The assignment project should include a detailed project report (1500-2000 words) and a Python-based implementation of the model.

    Students must analyze real-world or simulated datasets to identify failure patterns, apply probabilistic machine learning techniques, and propose a maintenance strategy for a selected energy system (such as wind turbine).

  • Arbeids- og undervisningsformer

    All aids are permitted.

  • Arbeidskrav og obligatoriske aktiviteter

    Pass or Fail

  • Vurdering og eksamen

    Arvind Keprate

  • Hjelpemidler ved eksamen

    A course in Statistical Learning similar to ACIT4510

    A course in Python Programming similar to MEK1300

  • Vurderingsuttrykk

    The course overlaps 2.5 ECTS with PENG9560 - Topics in Artificial Intelligence and Machine Learning. Completing both courses will result in a total of 17,5 ECTS.

  • Sensorordning

    Det vert nytta intern og ekstern sensor ved sensurering.

  • Emneansvarlig

    Frode Nordås