|
|
Module code: MAM.2.1.2.29 |
|
2V (2 hours per week) |
3 |
Semester: according to optional course list |
Mandatory course: no |
Language of instruction:
German |
Assessment:
Composition
[updated 04.11.2020]
|
FTM-VUQ (P241-0367, P610-0638) Automotive Engineering, Master, ASPO 01.04.2021
, optional course, technical
FTM-VUQ (P241-0367, P610-0638) Automotive Engineering, Master, ASPO 01.04.2023
, optional course, technical
MAM.2.1.2.29 (P241-0367) Engineering and Management, Master, ASPO 01.10.2019
, optional course, technical
MAM.2.1.2.29 (P241-0367) Engineering and Management, Master, ASPO 01.10.2024
, optional course, technical
|
30 class hours (= 22.5 clock hours) over a 15-week period. The total student study time is 90 hours (equivalent to 3 ECTS credits). There are therefore 67.5 hours available for class preparation and follow-up work and exam preparation.
|
Recommended prerequisites (modules):
MAM_24_A_1.01.MTS The Statistics and Theory of Numerical Simulation
[updated 29.10.2023]
|
Recommended as prerequisite for:
|
Module coordinator:
Prof. Dr. Gerald Kroisandt |
Lecturer: Prof. Dr. Gerald Kroisandt
[updated 23.03.2020]
|
Learning outcomes:
After successfully completing this module and based on the statistical knowledge they acquired in MAM_19_A_1.01.MTS, students will be able to determine confidence intervals for a wide range of mean values and variances. They will also understand how process control charts work. Students will understand tests, and in particular how to proceed when choosing a hypothesis and an alternative. As with confidence intervals, they will be able to design appropriate tests for a wide range of situations. If something depends on several factors, e.g. the load capacity of a component, students will be familiar with common methods for designing experiments and will be able to apply them. The question as to which factor(s) produce differences in quality is examined by analysis of variance, which students will also be able to apply. - Point estimator (ML estimator) and mean-squared error for quality assessment
[updated 04.11.2020]
|
Module content:
- Confidence intervals for diverse situtaions - Basics of process control charts - Hypothesis testing for different situations - Designing experiments - Analysis of variance
[updated 04.11.2020]
|
Recommended or required reading:
[still undocumented]
|