Statistical methods of processing the experiment
Course: Physics
Structural unit: Faculty of Physics
Title
Statistical methods of processing the experiment
Code
ВК2
Module type
Вибіркова дисципліна для ОП
Educational cycle
Second
Year of study when the component is delivered
2021/2022
Semester/trimester when the component is delivered
5 Semester
Number of ECTS credits allocated
3
Learning outcomes
Mastering basic concepts such as: mathematical expectation, variance and standard deviation of continuous and discrete random values, correlation coefficient of random variables, region of joint confidence probability, laws of large numbers, central limit theorem for determining the convergence of distribution laws to the normal law.
Be able to approximate experimental data using the method of least squares in the case of equal and unequal measurements, use computer tools to approximate the data of a physical experiment, carry out statistical verification of the accuracy of various methods measurements, carry out analysis of residuals, check the adequacy of the selected model
Form of study
Full-time form
Prerequisites and co-requisites
1. Know the basic foundations of mathematical analysis and probability theory.
2. To be able to apply previous knowledge from the courses of mathematical analysis, probability theory to the array of data.
Course content
The course "Statistical methods of processing experimental results" examines modern approaches to the description of experimental results and their extension
theoretical knowledge and development of students' practical skills regarding the analysis of measurement errors of physical quantities, finding confidence intervals, statistical testing of hypotheses, correlation analysis, choosing the best model. The purpose of studying the discipline is to master the basic knowledge of probability theory and mathematical statistics with the aim of applying them to process the results of a physical experiment and choose the best model. Educational
the task of the course is to master the basic methods of analyzing errors in measuring physical quantities, finding confidence intervals, statistical testing of hypotheses, correlation analysis, and choosing the best model. Learning outcomes are the ability to find probabilities, mathematical expectation, variance, and root mean square deviation of continuous and discrete random variables, as well as to approximate experimental data using the least squares method in the case of equal and unequal measurements.
Recommended or required reading and other learning resources/tools
1. Bilotserkivskyi O. B. Probability theory and mathematical statistics: workshop / O. B. Bilotserkivskyi; National technical University "Kharkiv Polytechnic Institute". – Kharkiv: NTU "KhPI", 2018. – 170 p.
2. Pokrovsky, E. O., Pokrovsky, S. E., & Savchuk, O. V. (2021). Probability Theory and Mathematical Statistics..
3. Tyurin, O. V., Akhmerov, O. Yu., Tyurin, A. V., & Akhmerov, A. Yu. (2019). Probability Theory and Mathematical Statistics.
4. Gupta, S. C., & Kapoor, V. K. (2020). Fundamentals of mathematical statistics. Sultan Chand & Sons. 1344 pages.
5. Kondilenko O.Sh., Mishchenko M.I. Measurement errors of physical quantities. Guidelines. - Kyiv, 2018.
6. Bobyk O.I., Berehova G.I., Kopytko B.I. Probability theory and mathematical statistics.-Kyiv "Professional", 2017.
Planned learning activities and teaching methods
The total volume is 90 hours, including: Lectures - 16 hours. Practical classes - 16 hours. Independent work - 58 hours
Assessment methods and criteria
- semester assessment:
1. Survey during the first content module (10 points).
2. Modular control work 1 (30 points).
1. Survey during the second content module (10 points).
2. Modular control work 2 (30 points).
- final evaluation in the form of credit (20 points)
A student is not allowed to take credit if he scored less than 50 points during the semester
The credit score cannot be less than 10 points to obtain an overall positive score for the course.
Language of instruction
Ukrainian
Lecturers
This discipline is taught by the following teachers
Departments
The following departments are involved in teaching the above discipline