Academic year 2018/2019 |
Supervisor: | Ing. Josef Bednář, Ph.D. | |||
Supervising institute: | ÚM | |||
Teaching language: | Czech | |||
Aims of the course unit: | ||||
We want to show the importance of statistics in engineering and we have taken two specific measures to accomplish this goal. First, to explain that statistics is an integral part of engineer's work. Second, we try to present a practical example of each topic as soon as possible. | ||||
Learning outcomes and competences: | ||||
Data analysis, descriptive statistics, sample, population, testing hypothesis | ||||
Prerequisites: | ||||
basic mathematics | ||||
Course contents: | ||||
Technicians sometimes use statistics to describe the results of an experiment. This process is referred to as data analysis or descriptive statistics. Technicians also use statistics another way. If the entire population of interest is not accessible to them, they often observe only a portion of the population (a sample) and use statistics to answer questions about the whole population. This process called inferential statistics is the main focus of the course. | ||||
Teaching methods and criteria: | ||||
The course is taught through lectures explaining the basic principles and theory of the discipline. Exercises are focused on practical topics presented in lectures. | ||||
Assesment methods and criteria linked to learning outcomes: | ||||
Course-unit credit omly | ||||
Controlled participation in lessons: | ||||
Make ones own work | ||||
Type of course unit: | ||||
Guided consultation | 1 × 13 hrs. | optionally | ||
Controlled Self-study | 1 × 26 hrs. | optionally | ||
Course curriculum: | ||||
Guided consultation | 1. Collection of data. 2. Variance. 3. Pareto analysis. 4. Probability density and probability distribution. 5. Normal distribution. 6. Distribution of averages 7. Estimation of parameters. 8. Hypothesis testing. 9. Analysis of variances. One way testing, 10. Two way testing. 11. Tukey's method. Scheffe method. 12. Linear model. 13. Coefficient of correlation. Partial coefficient of correlation. 14. Statistics modelling. Monte Carlo method. |
|||
Controlled Self-study | 1. Collection of data. 2. Variance. 3. Pareto analysis. 4. Probability density and probability distribution. 5. Normal distribution. 6. Distribution of averages 7. Estimation of parameters. 8. Hypothesis testing. 9. Analysis of variances. One way testing, 10. Two way testing. 11. Tukey's method. Scheffe method. 12. Linear model. 13. Coefficient of correlation. Partial coefficient of correlation. 14. Statistics modelling. Monte Carlo method. |
|||
Literature - fundamental: | ||||
1. Egermayer,F.-Boháč,M.:Statistika pro techniky, SNTL,1984 | ||||
2. Bakytová,H.: Základy štatistiky, ALFA, 1975 | ||||
Literature - recommended: | ||||
1. J. Anděl: Statistické metody, , 0 | ||||
2. A. Linczenyi: Inžinierska štatistika, , 0 |
The study programmes with the given course: | |||||||||
Programme | Study form | Branch | Spec. | Final classification | Course-unit credits | Obligation | Level | Year | Semester |
M2I-K | combined study | M-STM Manufacturing Technology and Management in Industry | -- | Cr,Ex | 5 | Compulsory | 2 | 1 | S |
M2I-K | combined study | M-STM Manufacturing Technology and Management in Industry | P linked to branch B-STG | Cr,Ex | 4 | Compulsory | 2 | 1 | S |
Faculty of Mechanical Engineering
Brno University of Technology
Technická 2896/2
616 69 Brno
Czech Republic
+420 541 14n nnn
+420 726 81n nnn – GSM Telef. O2
+420 604 07n nnn – GSM T-mobile
Operator: nnnn = 1111