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Internet of Things (elective)

Niveau

Master's course

Learning outcomes of the courses/module

Students: - know basic IOT architectures. - know methods of data generation. - know the basics of data transmission. - know the options of data storage. - know the forms of data visualization. - understand challenges of data security.

Prerequisites for the course

not applicable

Course content

Introduction - IoT architecture (e.g. reference models) - Requirements for IOT systems - IOT data transmission protocols - Use of IOT in an industrial context (examples) - Basics of sensor technology - Basics of embedded systems Implementation - Procedure for implementing IOT - Prototypical implementation of IOT - Selection of sensors - Data collection, visualization and evaluation - Challenges in implementation

Recommended specialist literature

Perry L.; Internet of Things for Architects: Architecting IoT solutions by implementing sensors, communication infrastruc-ture, edge computing, analytics, and security; Birmingham; 2018 Sinclair B.; IoT Inc: How Your Company Can Use the Internet of Things to Win in the Outcome Economy; 2017 Thomas O., Nüttgens M., Fellmann M. (editor); Smart Service Engineering: Konzepte und Anwendungsszenarien für die digitale Transformation; Wiesbaden; 2017

Assessment methods and criteria

Written exam or seminar thesis

Language

German

Number of ECTS credits awarded

4

Share of e-learning in %

15

Semester hours per week

2.0

Planned teaching and learning method

Lecture, individual work with software, group work, presentation and discussion of tasks

Semester/trimester in which the course/module is offered

3

Name of lecturer

Prof. (FH) Dipl.-Ing. Thomas Schmiedinger, PhD

Academic year

2. study year

Key figure of the course/module

WPF.3

Type of course/module

integrated lecture

Type of course

Compulsory

Internship(s)

none