Coursecode: wb2300/5
Coursename: Systems, signals, stochastics
This course is
replaced by wb2307
DUT creditpoints: 3
ECTS creditpoints: 5 |
Faculty
of Mechanical Engineering and Marine Technology |
Lecturer(s):
Stassen, prof.dr.ir. H.G., Dankelman, mw.dr. J. |
Tel.: 015-2783607,
5565 |
Catalog data:
Identification of linear systems in time and frequency domain with deterministic signals.
Probability and estimation theory. Description of stochastic processes in time and
frequency domain. Identification of linear and non-linear systems with stochastic inputs
and outputs. Measurement in open and closed loop systems. |
Courseyear:
3
Semester: 0/0/4/0
Hours p/w: 4
Other hours:
Assessment: written
Assessm.period(s): 3, 4
(see academic calendar) |
Prerequisites:
wb2203, wb2204, wi380 |
Follow
up: wb2301/5, wb2403/5 |
Detailed
description of topics:
Reasons and argumentation to introduce stochastic
processes in the identification of systems.
Identification of (non)linear systems with
deterministic input and outputs in frequency and time domain. A recapitulation of system
theory, be it now from the viewpoint of the problem of system identification (wb2203 and
wb2204).
Probability theory. A recapitulation of the
mathematics of the probability theory, with a physical interpretation (wi380)
Introduction of the estimation theory. Properties of
different estimators. The relation between probability domain and time or frequency
domain.
Stochastic processes. Description of stochastic
processes by means of probability density functions. First and second order moments of
stochastic processes: mean value, variance, covariance and correlation functions (auto- as
well as cross covariance) Spectral density.
Identification of linear and non-linear systems with
stochastic inputs and outputs. Identification in open and closed loop systems.
Many examples and industrial or medical applications
will be discussed.
|
Course
material:
A. van Lunteren. Systems, Signals and Stochastic
processes. WbMT report w-70. June 1990. |
References
from literature:
A. Papoulis. Probability, Random Variables and
Stochastic Processes. McGraw-Hill Book Comp. New York 1995, 583 pp.
L. Ljung. System Identification Theory for the user.
Prentice-Hall Inc. NJ 1987, 519 pp.
|
Remarks
(specific information about assesment, entry requirements, etc.):
Essential course for all students with interests in
system identification. |
Goals:
The major goal is to introduce and interprete the
theory of the stochastic processes. The actual use of this theory is explained in the
courses wb2301 (identification without a-priori knowledge) and wb2403 (parameter
estimation) |
Computer
use: |
Laboratory
project(s): |
Design
content: |
Percentage
of design: n.a. |