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Vorlesungsverzeichnis >> Technische Fakultät (TF) >>

Seminar Machine Learning and Data Analytics for Industry 4.0 for IuK (SemMLDA-IuK)2.5 ECTS
(englische Bezeichnung: Seminar Machine Learning and Data Analytics for Industry 4.0 for IuK)

Modulverantwortliche/r: An Nguyen
Lehrende: An Nguyen


Startsemester: SS 2019Dauer: 1 SemesterTurnus: jährlich (SS)
Präsenzzeit: 30 Std.Eigenstudium: 45 Std.Sprache: Englisch

Lehrveranstaltungen:


Inhalt:

Companies in all kinds of industries are producing and collecting rapidly more and more data from various sources. This is enabled by technologies such as the Internet of Things (IoT), Cyber-physical system (CPS) and cloud computing. Hence there is an increasing demand in industry and research for students and graduates with machine learning and data analytics skills in the Industry 4.0 context. In this Seminar the Industry 4.0 term will include the medical device sector. Aim of this seminar is to give students insights about state-of-the-art machine learning and data analytics methods in the Industry 4.0 and Healthcare context. Topics covered will include but are not limited to:
• Best practices for presentation and scientific work
• Overview of current hot topics in the field of machine learning and data analytics for Industry 4.0 (e.g. deep learning for predictive maintenance and process mining for usage analysis) • Data acquisition (what kind of data can be acquired?) and storage (how can data be stored efficiently?)
• Machine learning and data analytics methodologies (Support vector machines, Hidden Markov models, Deep learning, Process mining) for industrial data (sensor data, event logs) The seminar will include talks by corresponding lecturer and invited experts in the domain. Furthermore, students will present results from literature research and/or data analytics projects (provided or open source datasets).

Lernziele und Kompetenzen:

• Students will develop an understanding of the current hot field of machine learning and data analytics for Industry 4.0
• Students will learn to research and present a topic within the context of machine learning and data analytics for Industry 4.0 independently in a team • Students will learn to identify opportunities, challenges and limitations of corresponding ML approaches for Industry 4.0
• Students will develop the skill to identify and understand relevant literature and to present their finding in a structured manner

Literatur:

• Lei, Yaguo, Naipeng Li, Liang Guo, Ningbo Li, Tao Yan, and Jing Lin. “Machinery Health Prognostics: A Systematic Review from Data Acquisition to RUL Prediction.” Mechanical Systems and Signal Processing 104 (May 2018): 799–834. https://doi.org/10.1016/j.ymssp.2017.11.016.
• Rojas, Eric, Jorge Munoz-Gama, Marcos Sepúlveda, and Daniel Capurro. “Process Mining in Healthcare: A Literature Review.” Journal of Biomedical Informatics 61 (June 1, 2016): 224–36. https://doi.org/10.1016/j.jbi.2016.04.007.
• Wil M. P. van der Aalst. „Process Mining: Data Science in Action” 2nd edition, Springer 2016. ISBN 978-3-662-49851-4
• Wang, Lihui, and Xi Vincent Wang. Cloud-Based Cyber-Physical Systems in Manufacturing. Cham: Springer International Publishing, 2018. https://doi.org/10.1007/978-3-319-67693-7.

Organisatorisches:

Application via studOn


Studien-/Prüfungsleistungen:

Seminar Machine Learning and Data Analytics for Industry 4.0 for IuK (Prüfungsnummer: 456800)

(englischer Titel: Seminar Machine Learning and Data Analytics for Industry 4.0 for IuK)

Prüfungsleistung, Seminarleistung, benotet, 2.5 ECTS
Anteil an der Berechnung der Modulnote: 100.0 %
weitere Erläuterungen:
Final presentation with demo and paper according to IEEE standards (4 pages excluding references)

Erstablegung: SS 2019, 1. Wdh.: WS 2019/2020
1. Prüfer: Björn Eskofier

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