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Advanced Control Systems (ACS)
Dr. Imtiaz Hussain
email: imtiaz.hussain@faculty.muet.edu.pk
URL :http://imtiazhussainkalwar.weebly.com/
Lecture-1
Introduction to Subject
&
Review of Basic Concepts of Classical control
Course Outline
• Review of basic concepts of classical control
• State Space representation
• Design of Compensators
• Design of Proportional
• Proportional plus Integral
• Proportional Integral and Derivative (PID) controllers
• Pole Placement Design
• Design of Estimators
• Linear Quadratic Gaussian (LQG) controllers
• Linearization of non-linear systems
• Design of non-linear systems
• Analysis and Design of multivariable systems
• Analysis and Design of Adaptive Control Systems
Recommended Books
1. Burns R. “Advanced Control Engineering, Butterworth
Heinemann”, Latest edition.
2. Mutanmbara A.G.O.; Design and analysis of Control
Systems, Taylor and Francis, Latest Edition
3. Modern Control Engineering, (5th Edition)
By: Katsuhiko Ogata.
4. Control Systems Engineering, (6th Edition)
By: Norman S. Nise
What is Control System?
• A system Controlling the operation of another
system.
• A system that can regulate itself and another
system.
• A control System is a device, or set of devices
to manage, command, direct or regulate the
behaviour of other device(s) or system(s).
Types of Control System
• Natural Control System
– Universe
– Human Body
• Manmade Control System
– Vehicles
– Aeroplanes
Types of Control System
• Manual Control Systems
– Room Temperature regulation Via Electric Fan
– Water Level Control
• Automatic Control System
– Room Temperature regulation Via A.C
– Human Body Temperature Control
Open-Loop Control Systems utilize a controller or control actuator to
obtain the desired response.
• Output has no effect on the control action.
• In other words output is neither measured nor fed back.
Controller
Output
Input
Process
Examples:- Washing Machine, Toaster, Electric Fan
Types of Control System
Open-Loop Control Systems
Open-Loop Control Systems
Types of Control System
• Since in open loop control systems reference input is not
compared with measured output, for each reference input there
is fixed operating condition.
• Therefore, the accuracy of the system depends on calibration.
• The performance of open loop system is severely affected by the
presence of disturbances, or variation in operating/
environmental conditions.
Closed-Loop Control Systems utilizes feedback to compare the actual
output to the desired output response.
Examples:- Refrigerator, Iron
Types of Control System
Closed-Loop Control Systems
Controller
Output
Input
Process
Comparator
Measurement
Multivariable Control System
Types of Control System
Controller
Outputs
Temp
Process
Comparator
Measurements
Humidity
Pressure
Feedback Control System
Types of Control System
• A system that maintains a prescribed relationship between the output
and some reference input by comparing them and using the difference
(i.e. error) as a means of control is called a feedback control system.
• Feedback can be positive or negative.
Controller Output
Input Process
Feedback
-
+ error
Servo System
Types of Control System
• A Servo System (or servomechanism) is a feedback control system in
which the output is some mechanical position, velocity or acceleration.
Antenna Positioning System Modular Servo System (MS150)
Linear Vs Nonlinear Control System
Types of Control System
• A Control System in which output varies linearly with the input is called a
linear control system.
5
3 
 )
(
)
( t
u
t
y
y(t)
u(t) Process
1
2 

 )
(
)
( t
u
t
y
0 2 4 6 8 10
5
10
15
20
25
30
35
y=3*u(t)+5
u(t)
y(t)
0 2 4 6 8 10
-20
-15
-10
-5
0
5
y(t)
u(t)
y=-2*u(t)+1
Linear Vs Nonlinear Control System
Types of Control System
• When the input and output has nonlinear relationship the system is said
to be nonlinear.
0 0.02 0.04 0.06 0.08
0
0.1
0.2
0.3
0.4
Adhesion Characteristics of Road
Creep
Adhesion
Coefficient
Linear Vs Nonlinear Control System
Types of Control System
• Linear control System Does not
exist in practice.
• Linear control systems are
idealized models fabricated by
the analyst purely for the
simplicity of analysis and design.
• When the magnitude of signals
in a control system are limited to
range in which system
components exhibit linear
characteristics the system is
essentially linear.
0 0.02 0.04 0.06 0.08
0
0.1
0.2
0.3
0.4
Adhesion Characteristics of Road
Creep
Adhesion
Coefficient
Linear Vs Nonlinear Control System
Types of Control System
• Temperature control of petroleum product in a distillation column.
Temperature
Valve Position
°C
% Open
0% 100%
500°C
25%
Time invariant vs Time variant
Types of Control System
• When the characteristics of the system do not depend upon time
itself then the system is said to time invariant control system.
• Time varying control system is a system in which one or more
parameters vary with time.
1
2 

 )
(
)
( t
u
t
y
t
t
u
t
y 3
2 
 )
(
)
(
Lumped parameter vs Distributed Parameter
Types of Control System
• Control system that can be described by ordinary differential equations
are lumped-parameter control systems.
• Whereas the distributed parameter control systems are described by
partial differential equations.
kx
dt
dx
C
dt
x
d
M 

2
2
2
2
2
1
dz
x
g
dz
x
f
dy
x
f





Continuous Data Vs Discrete Data System
Types of Control System
• In continuous data control system all system variables are function of a
continuous time t.
• A discrete time control system involves one or more variables that are
known only at discrete time intervals.
x(t)
t
X[n]
n
Deterministic vs Stochastic Control System
Types of Control System
• A control System is deterministic if the response to input is predictable
and repeatable.
• If not, the control system is a stochastic control system
y(t)
t
x(t)
t
z(t)
t
Types of Control System
Adaptive Control System
• The dynamic characteristics of most control systems
are not constant for several reasons.
• The effect of small changes on the system
parameters is attenuated in a feedback control
system.
• An adaptive control system is required when the
changes in the system parameters are significant.
Types of Control System
Learning Control System
• A control system that can learn from the
environment it is operating is called a learning
control system.
Classification of Control Systems
Control Systems
Natural Man-made
Manual Automatic
Open-loop Closed-loop
Non-linear linear
Time variant Time invariant
Non-linear linear
Time variant Time invariant
Examples of Control Systems
Water-level float regulator
Examples of Control Systems
Examples of Modern Control Systems
Examples of Modern Control Systems
Examples of Modern Control Systems
Transfer Function
• Transfer Function is the ratio of Laplace transform of the
output to the Laplace transform of the input. Assuming
all initial conditions are zero.
• Where is the Laplace operator.
Plant y(t)
u(t)
)
(
)
(
)
(
)
(
S
Y
t
y
and
S
U
t
u
If





29
Transfer Function
• Then the transfer function G(S) of the plant is given
as
G(S) Y(S)
U(S)
)
(
)
(
)
(
S
U
S
Y
S
G 
30
Why Laplace Transform?
• By use of Laplace transform we can convert many
common functions into algebraic function of complex
variable s.
• For example
Or
• Where s is a complex variable (complex frequency) and
is given as
2
2





s
t
sin

a
s
e at


 1


 j
s 
 31
Laplace Transform of Derivatives
• Not only common function can be converted into
simple algebraic expressions but calculus operations
can also be converted into algebraic expressions.
• For example
)
(
)
(
)
(
0
x
S
sX
dt
t
dx



dt
dx
x
S
X
s
dt
t
x
d )
(
)
(
)
(
)
( 0
0
2
2
2




32
Laplace Transform of Derivatives
• In general
• Where is the initial condition of the system.
)
(
)
(
)
(
)
(
0
0 1
1 




 n
n
n
n
n
x
x
s
S
X
s
dt
t
x
d


)
(0
x
33
Example: RC Circuit
• If the capacitor is not already charged then
y(0)=0.
• u is the input voltage applied at t=0
• y is the capacitor voltage
34
Laplace Transform of Integrals
)
(
)
( S
X
s
dt
t
x
1



• The time domain integral becomes division by
s in frequency domain.
35
Calculation of the Transfer Function
dt
t
dx
B
dt
t
dy
C
dt
t
x
d
A
)
(
)
(
)
(


2
2
• Consider the following ODE where y(t) is input of the system and
x(t) is the output.
• or
• Taking the Laplace transform on either sides
)
(
'
)
(
'
)
(
'
' t
Bx
t
Cy
t
Ax 

)]
(
)
(
[
)]
(
)
(
[
)]
(
'
)
(
)
(
[ 0
0
0
0
2
x
s
sX
B
y
s
sY
C
x
sx
s
X
s
A 





36
Calculation of the Transfer Function
• Considering Initial conditions to zero in order to find the transfer
function of the system
• Rearranging the above equation
)]
(
)
(
[
)]
(
)
(
[
)]
(
'
)
(
)
(
[ 0
0
0
0
2
x
s
sX
B
y
s
sY
C
x
sx
s
X
s
A 





)
(
)
(
)
( s
BsX
s
CsY
s
X
As 

2
)
(
]
)[
(
)
(
)
(
)
(
s
CsY
Bs
As
s
X
s
CsY
s
BsX
s
X
As




2
2
B
As
C
Bs
As
Cs
s
Y
s
X



 2
)
(
)
(
37
Example
1. Find out the transfer function of the RC network shown in figure-1.
Assume that the capacitor is not initially charged.
Figure-1
)
(
)
(
'
'
'
)
(
)
(
)
(
'
' t
y
t
y
dt
t
y
t
u
t
u 




 3
3
6
2. u(t) and y(t) are the input and output respectively of a system defined by
following ODE. Determine the Transfer Function. Assume there is no any
energy stored in the system.
38
Transfer Function
• In general
• Where x is the input of the system and y is the output of
the system.
39
Transfer Function
• When order of the denominator polynomial is greater
than the numerator polynomial the transfer function is
said to be ‘proper’.
• Otherwise ‘improper’
40
Transfer Function
• Transfer function helps us to check
– The stability of the system
– Time domain and frequency domain characteristics of the
system
– Response of the system for any given input
41
Stability of Control System
• There are several meanings of stability, in general
there are two kinds of stability definitions in control
system study.
– Absolute Stability
– Relative Stability
42
Stability of Control System
• Roots of denominator polynomial of a transfer
function are called ‘poles’.
• And the roots of numerator polynomials of a
transfer function are called ‘zeros’.
43
Stability of Control System
• Poles of the system are represented by ‘x’ and
zeros of the system are represented by ‘o’.
• System order is always equal to number of
poles of the transfer function.
• Following transfer function represents nth
order plant.
44
Stability of Control System
• Poles is also defined as “it is the frequency at which
system becomes infinite”. Hence the name pole
where field is infinite.
• And zero is the frequency at which system becomes
0.
45
Stability of Control System
• Poles is also defined as “it is the frequency at which
system becomes infinite”.
• Like a magnetic pole or black hole.
46
Relation b/w poles and zeros and frequency
response of the system
• The relationship between poles and zeros and the frequency
response of a system comes alive with this 3D pole-zero plot.
47
Single pole system
Relation b/w poles and zeros and frequency
response of the system
• 3D pole-zero plot
– System has 1 ‘zero’ and 2 ‘poles’.
48
Relation b/w poles and zeros and frequency
response of the system
49
Example
• Consider the Transfer function calculated in previous
slides.
• The only pole of the system is
50
B
As
C
s
Y
s
X
s
G



)
(
)
(
)
(
0

 B
As
is
polynomial
r
denominato
the
A
B
s 

Examples
• Consider the following transfer functions.
– Determine
• Whether the transfer function is proper or improper
• Poles of the system
• zeros of the system
• Order of the system
51
)
(
)
(
2
3



s
s
s
s
G
)
)(
)(
(
)
(
3
2
1 



s
s
s
s
s
G
)
(
)
(
)
(
10
3
2
2



s
s
s
s
G
)
(
)
(
)
(
10
1
2



s
s
s
s
s
G
i) ii)
iii) iv)
Stability of Control Systems
• The poles and zeros of the system are plotted in s-plane
to check the stability of the system.
52
s-plane
LHP RHP


j

 j
s 

Recall
Stability of Control Systems
• If all the poles of the system lie in left half plane the
system is said to be Stable.
• If any of the poles lie in right half plane the system is said
to be unstable.
• If pole(s) lie on imaginary axis the system is said to be
marginally stable.
53
s-plane
LHP RHP


j
• Absolute stability does not
depend on location of
zeros of the transfer
function
Examples
54
-5 -4 -3 -2 -1 0 1 2 3 4 5
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
stable
-5 -4 -3 -2 -1 0 1 2 3 4 5
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
Examples
55
stable
-5 -4 -3 -2 -1 0 1 2 3 4 5
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
Examples
56
unstable
-5 -4 -3 -2 -1 0 1 2 3 4 5
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
Examples
57
stable
-5 -4 -3 -2 -1 0 1 2 3 4 5
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
Examples
58
Marginally stable
-3 -2 -1 0 1 2 3
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
Examples
59
stable
-2 -1.5 -1 -0.5 0 0.5 1 1.5 2
-4
-3
-2
-1
0
1
2
3
4
Pole-Zero Map
Real Axis
Imaginary
Axis
Examples
60
Marginally stable
-5 -4 -3 -2 -1 0 1 2 3 4 5
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
Examples
61
stable
-6 -4 -2 0 2 4
-5
-4
-3
-2
-1
0
1
2
3
4
5
Pole-Zero Map
Real Axis
Imaginary
Axis
stable
• Relative Stability
Stability of Control Systems
• For example
• Then the only pole of the system lie at
62
10
3
1 



 C
and
B
A
B
As
C
s
G if ,
,
)
(
3


pole
s-plane
LHP RHP


j
X
-3
Examples
• Consider the following transfer functions.
 Determine whether the transfer function is proper or improper
 Calculate the Poles and zeros of the system
 Determine the order of the system
 Draw the pole-zero map
 Determine the Stability of the system
63
)
(
)
(
2
3



s
s
s
s
G
)
)(
)(
(
)
(
3
2
1 



s
s
s
s
s
G
)
(
)
(
)
(
10
3
2
2



s
s
s
s
G
)
(
)
(
)
(
10
1
2



s
s
s
s
s
G
i) ii)
iii) iv)
Another definition of Stability
• The system is said to be stable if for any bounded
input the output of the system is also bounded
(BIBO).
• Thus the for any bounded input the output either
remain constant or decrease with time.
64
u(t)
t
1
Unit Step Input
Plant
y(t)
t
Output
1
overshoot
Another definition of Stability
• If for any bounded input the output is not
bounded the system is said to be unstable.
65
u(t)
t
1
Unit Step Input
Plant
y(t)
t
Output
at
e
BIBO vs Transfer Function
• For example
3
1
)
(
)
(
)
(
1



s
s
U
s
Y
s
G
3
1
)
(
)
(
)
(
2



s
s
U
s
Y
s
G
-4 -2 0 2 4
-4
-3
-2
-1
0
1
2
3
4
Pole-Zero Map
Real Axis
Imaginary
Axis
-4 -2 0 2 4
-4
-3
-2
-1
0
1
2
3
4
Pole-Zero Map
Real Axis
Imaginary
Axis
stable
unstable
BIBO vs Transfer Function
• For example
3
1
)
(
)
(
)
(
1



s
s
U
s
Y
s
G
3
1
)
(
)
(
)
(
2



s
s
U
s
Y
s
G
)
(
)
(
3
1
)
(
)
(
)
(
3
1
1
1
1
t
u
e
t
y
s
s
U
s
Y
s
G
t








 


)
(
)
(
3
1
)
(
)
(
)
(
3
1
1
2
1
t
u
e
t
y
s
s
U
s
Y
s
G
t




 





BIBO vs Transfer Function
• For example
)
(
)
( 3
t
u
e
t
y t

 )
(
)
( 3
t
u
e
t
y t

0 1 2 3 4
0
0.2
0.4
0.6
0.8
1
exp(-3t)*u(t)
0 2 4 6 8 10
0
2
4
6
8
10
12
x 10
12
exp(3t)*u(t)
BIBO vs Transfer Function
• Whenever one or more than one poles are in
RHP the solution of dynamic equations
contains increasing exponential terms.
• Such as .
• That makes the response of the system
unbounded and hence the overall response of
the system is unstable.
t
e3
Types of Systems
• Static System: If a system does not change
with time, it is called a static system.
• Dynamic System: If a system changes with
time, it is called a dynamic system.
70
Dynamic Systems
• A system is said to be dynamic if its current output may depend on
the past history as well as the present values of the input variables.
• Mathematically,
Time
Input, :
:
]
),
(
[
)
(
t
u
t
u
t
y 

 

 0
Example: A moving mass
M
y
u
Model: Force=Mass x Acceleration
u
y
M 


Ways to Study a System
72
System
Experiment with a
model of the System
Experiment with actual
System
Physical Model Mathematical Model
Analytical Solution
Simulation
Frequency Domain Time Domain Hybrid Domain
Model
• A model is a simplified representation or
abstraction of reality.
• Reality is generally too complex to copy
exactly.
• Much of the complexity is actually irrelevant
in problem solving.
73
Types of Models
Model
Physical Mathematical Computer
74
Static Dynamic Static Dynamic
Static Dynamic
What is Mathematical Model?
A set of mathematical equations (e.g., differential eqs.) that
describes the input-output behavior of a system.
What is a model used for?
• Simulation
• Prediction/Forecasting
• Prognostics/Diagnostics
• Design/Performance Evaluation
• Control System Design
Classification of Mathematical Models
• Linear vs. Non-linear
• Deterministic vs. Probabilistic (Stochastic)
• Static vs. Dynamic
• Discrete vs. Continuous
• White box, black box and gray box
76
Black Box Model
• When only input and output are known.
• Internal dynamics are either too complex or
unknown.
• Easy to Model
77
Input Output
Black Box Model
• Consider the example of a heat radiating system.
78
Black Box Model
• Consider the example of a heat radiating system.
79
Valve
Position
Room
Temperature
(oC)
0 0
2 3
4 6
6 12
8 20
10 33 0 2 4 6 8 10
0
5
10
15
20
25
30
35
Valve Position
Temperature
in
Degree
Celsius
Heat Raadiating System
Room Temperature
0 2 4 6 8 10
0
5
10
15
20
25
30
35
Valve Position (x)
Temperature
in
Degree
Celsius
(y)
Heat Raadiating System
y = 0.31*x2
+ 0.046*x + 0.64
Room Temperature
quadratic Fit
Grey Box Model
• When input and output and some information
about the internal dynamics of the system is
known.
• Easier than white box Modelling.
80
u(t) y(t)
y[u(t), t]
White Box Model
• When input and output and internal dynamics
of the system is known.
• One should know have complete knowledge
of the system to derive a white box model.
81
u(t) y(t)
2
2
3
dt
t
y
d
dt
t
du
dt
t
dy )
(
)
(
)
(


Mathematical Modelling Basics
Mathematical model of a real world system is derived using a
combination of physical laws and/or experimental means
• Physical laws are used to determine the model structure (linear
or nonlinear) and order.
• The parameters of the model are often estimated and/or
validated experimentally.
• Mathematical model of a dynamic system can often be expressed
as a system of differential (difference in the case of discrete-time
systems) equations
Different Types of Lumped-Parameter Models
Input-output differential equation
State equations
Transfer function
Nonlinear
Linear
Linear Time
Invariant
System Type Model Type
Approach to dynamic systems
• Define the system and its components.
• Formulate the mathematical model and list the necessary
assumptions.
• Write the differential equations describing the model.
• Solve the equations for the desired output variables.
• Examine the solutions and the assumptions.
• If necessary, reanalyze or redesign the system.
84
Simulation
• Computer simulation is the discipline of
designing a model of an actual or theoretical
physical system, executing the model on a
digital computer, and analyzing the execution
output.
• Simulation embodies the principle of
``learning by doing'' --- to learn about the
system we must first build a model of some
sort and then operate the model.
85
Advantages to Simulation
 Can be used to study existing systems without
disrupting the ongoing operations.
 Proposed systems can be “tested” before committing
resources.
 Allows us to control time.
 Allows us to gain insight into which variables are
most important to system performance.
86
Disadvantages to Simulation
 Model building is an art as well as a science. The
quality of the analysis depends on the quality of the
model and the skill of the modeler.
 Simulation results are sometimes hard to interpret.
 Simulation analysis can be time consuming and
expensive.
 Should not be used when an analytical method would
provide for quicker results.
87
END OF LECTURE-1
To download this lecture visit
http://imtiazhussainkalwar.weebly.com/

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lecture_1_introduction__review_of_classical_control.pptx

  • 1. Advanced Control Systems (ACS) Dr. Imtiaz Hussain email: imtiaz.hussain@faculty.muet.edu.pk URL :http://imtiazhussainkalwar.weebly.com/ Lecture-1 Introduction to Subject & Review of Basic Concepts of Classical control
  • 2. Course Outline • Review of basic concepts of classical control • State Space representation • Design of Compensators • Design of Proportional • Proportional plus Integral • Proportional Integral and Derivative (PID) controllers • Pole Placement Design • Design of Estimators • Linear Quadratic Gaussian (LQG) controllers • Linearization of non-linear systems • Design of non-linear systems • Analysis and Design of multivariable systems • Analysis and Design of Adaptive Control Systems
  • 3. Recommended Books 1. Burns R. “Advanced Control Engineering, Butterworth Heinemann”, Latest edition. 2. Mutanmbara A.G.O.; Design and analysis of Control Systems, Taylor and Francis, Latest Edition 3. Modern Control Engineering, (5th Edition) By: Katsuhiko Ogata. 4. Control Systems Engineering, (6th Edition) By: Norman S. Nise
  • 4. What is Control System? • A system Controlling the operation of another system. • A system that can regulate itself and another system. • A control System is a device, or set of devices to manage, command, direct or regulate the behaviour of other device(s) or system(s).
  • 5. Types of Control System • Natural Control System – Universe – Human Body • Manmade Control System – Vehicles – Aeroplanes
  • 6. Types of Control System • Manual Control Systems – Room Temperature regulation Via Electric Fan – Water Level Control • Automatic Control System – Room Temperature regulation Via A.C – Human Body Temperature Control
  • 7. Open-Loop Control Systems utilize a controller or control actuator to obtain the desired response. • Output has no effect on the control action. • In other words output is neither measured nor fed back. Controller Output Input Process Examples:- Washing Machine, Toaster, Electric Fan Types of Control System Open-Loop Control Systems
  • 8. Open-Loop Control Systems Types of Control System • Since in open loop control systems reference input is not compared with measured output, for each reference input there is fixed operating condition. • Therefore, the accuracy of the system depends on calibration. • The performance of open loop system is severely affected by the presence of disturbances, or variation in operating/ environmental conditions.
  • 9. Closed-Loop Control Systems utilizes feedback to compare the actual output to the desired output response. Examples:- Refrigerator, Iron Types of Control System Closed-Loop Control Systems Controller Output Input Process Comparator Measurement
  • 10. Multivariable Control System Types of Control System Controller Outputs Temp Process Comparator Measurements Humidity Pressure
  • 11. Feedback Control System Types of Control System • A system that maintains a prescribed relationship between the output and some reference input by comparing them and using the difference (i.e. error) as a means of control is called a feedback control system. • Feedback can be positive or negative. Controller Output Input Process Feedback - + error
  • 12. Servo System Types of Control System • A Servo System (or servomechanism) is a feedback control system in which the output is some mechanical position, velocity or acceleration. Antenna Positioning System Modular Servo System (MS150)
  • 13. Linear Vs Nonlinear Control System Types of Control System • A Control System in which output varies linearly with the input is called a linear control system. 5 3   ) ( ) ( t u t y y(t) u(t) Process 1 2    ) ( ) ( t u t y 0 2 4 6 8 10 5 10 15 20 25 30 35 y=3*u(t)+5 u(t) y(t) 0 2 4 6 8 10 -20 -15 -10 -5 0 5 y(t) u(t) y=-2*u(t)+1
  • 14. Linear Vs Nonlinear Control System Types of Control System • When the input and output has nonlinear relationship the system is said to be nonlinear. 0 0.02 0.04 0.06 0.08 0 0.1 0.2 0.3 0.4 Adhesion Characteristics of Road Creep Adhesion Coefficient
  • 15. Linear Vs Nonlinear Control System Types of Control System • Linear control System Does not exist in practice. • Linear control systems are idealized models fabricated by the analyst purely for the simplicity of analysis and design. • When the magnitude of signals in a control system are limited to range in which system components exhibit linear characteristics the system is essentially linear. 0 0.02 0.04 0.06 0.08 0 0.1 0.2 0.3 0.4 Adhesion Characteristics of Road Creep Adhesion Coefficient
  • 16. Linear Vs Nonlinear Control System Types of Control System • Temperature control of petroleum product in a distillation column. Temperature Valve Position °C % Open 0% 100% 500°C 25%
  • 17. Time invariant vs Time variant Types of Control System • When the characteristics of the system do not depend upon time itself then the system is said to time invariant control system. • Time varying control system is a system in which one or more parameters vary with time. 1 2    ) ( ) ( t u t y t t u t y 3 2   ) ( ) (
  • 18. Lumped parameter vs Distributed Parameter Types of Control System • Control system that can be described by ordinary differential equations are lumped-parameter control systems. • Whereas the distributed parameter control systems are described by partial differential equations. kx dt dx C dt x d M   2 2 2 2 2 1 dz x g dz x f dy x f     
  • 19. Continuous Data Vs Discrete Data System Types of Control System • In continuous data control system all system variables are function of a continuous time t. • A discrete time control system involves one or more variables that are known only at discrete time intervals. x(t) t X[n] n
  • 20. Deterministic vs Stochastic Control System Types of Control System • A control System is deterministic if the response to input is predictable and repeatable. • If not, the control system is a stochastic control system y(t) t x(t) t z(t) t
  • 21. Types of Control System Adaptive Control System • The dynamic characteristics of most control systems are not constant for several reasons. • The effect of small changes on the system parameters is attenuated in a feedback control system. • An adaptive control system is required when the changes in the system parameters are significant.
  • 22. Types of Control System Learning Control System • A control system that can learn from the environment it is operating is called a learning control system.
  • 23. Classification of Control Systems Control Systems Natural Man-made Manual Automatic Open-loop Closed-loop Non-linear linear Time variant Time invariant Non-linear linear Time variant Time invariant
  • 24. Examples of Control Systems Water-level float regulator
  • 26. Examples of Modern Control Systems
  • 27. Examples of Modern Control Systems
  • 28. Examples of Modern Control Systems
  • 29. Transfer Function • Transfer Function is the ratio of Laplace transform of the output to the Laplace transform of the input. Assuming all initial conditions are zero. • Where is the Laplace operator. Plant y(t) u(t) ) ( ) ( ) ( ) ( S Y t y and S U t u If      29
  • 30. Transfer Function • Then the transfer function G(S) of the plant is given as G(S) Y(S) U(S) ) ( ) ( ) ( S U S Y S G  30
  • 31. Why Laplace Transform? • By use of Laplace transform we can convert many common functions into algebraic function of complex variable s. • For example Or • Where s is a complex variable (complex frequency) and is given as 2 2      s t sin  a s e at    1    j s   31
  • 32. Laplace Transform of Derivatives • Not only common function can be converted into simple algebraic expressions but calculus operations can also be converted into algebraic expressions. • For example ) ( ) ( ) ( 0 x S sX dt t dx    dt dx x S X s dt t x d ) ( ) ( ) ( ) ( 0 0 2 2 2     32
  • 33. Laplace Transform of Derivatives • In general • Where is the initial condition of the system. ) ( ) ( ) ( ) ( 0 0 1 1       n n n n n x x s S X s dt t x d   ) (0 x 33
  • 34. Example: RC Circuit • If the capacitor is not already charged then y(0)=0. • u is the input voltage applied at t=0 • y is the capacitor voltage 34
  • 35. Laplace Transform of Integrals ) ( ) ( S X s dt t x 1    • The time domain integral becomes division by s in frequency domain. 35
  • 36. Calculation of the Transfer Function dt t dx B dt t dy C dt t x d A ) ( ) ( ) (   2 2 • Consider the following ODE where y(t) is input of the system and x(t) is the output. • or • Taking the Laplace transform on either sides ) ( ' ) ( ' ) ( ' ' t Bx t Cy t Ax   )] ( ) ( [ )] ( ) ( [ )] ( ' ) ( ) ( [ 0 0 0 0 2 x s sX B y s sY C x sx s X s A       36
  • 37. Calculation of the Transfer Function • Considering Initial conditions to zero in order to find the transfer function of the system • Rearranging the above equation )] ( ) ( [ )] ( ) ( [ )] ( ' ) ( ) ( [ 0 0 0 0 2 x s sX B y s sY C x sx s X s A       ) ( ) ( ) ( s BsX s CsY s X As   2 ) ( ] )[ ( ) ( ) ( ) ( s CsY Bs As s X s CsY s BsX s X As     2 2 B As C Bs As Cs s Y s X     2 ) ( ) ( 37
  • 38. Example 1. Find out the transfer function of the RC network shown in figure-1. Assume that the capacitor is not initially charged. Figure-1 ) ( ) ( ' ' ' ) ( ) ( ) ( ' ' t y t y dt t y t u t u       3 3 6 2. u(t) and y(t) are the input and output respectively of a system defined by following ODE. Determine the Transfer Function. Assume there is no any energy stored in the system. 38
  • 39. Transfer Function • In general • Where x is the input of the system and y is the output of the system. 39
  • 40. Transfer Function • When order of the denominator polynomial is greater than the numerator polynomial the transfer function is said to be ‘proper’. • Otherwise ‘improper’ 40
  • 41. Transfer Function • Transfer function helps us to check – The stability of the system – Time domain and frequency domain characteristics of the system – Response of the system for any given input 41
  • 42. Stability of Control System • There are several meanings of stability, in general there are two kinds of stability definitions in control system study. – Absolute Stability – Relative Stability 42
  • 43. Stability of Control System • Roots of denominator polynomial of a transfer function are called ‘poles’. • And the roots of numerator polynomials of a transfer function are called ‘zeros’. 43
  • 44. Stability of Control System • Poles of the system are represented by ‘x’ and zeros of the system are represented by ‘o’. • System order is always equal to number of poles of the transfer function. • Following transfer function represents nth order plant. 44
  • 45. Stability of Control System • Poles is also defined as “it is the frequency at which system becomes infinite”. Hence the name pole where field is infinite. • And zero is the frequency at which system becomes 0. 45
  • 46. Stability of Control System • Poles is also defined as “it is the frequency at which system becomes infinite”. • Like a magnetic pole or black hole. 46
  • 47. Relation b/w poles and zeros and frequency response of the system • The relationship between poles and zeros and the frequency response of a system comes alive with this 3D pole-zero plot. 47 Single pole system
  • 48. Relation b/w poles and zeros and frequency response of the system • 3D pole-zero plot – System has 1 ‘zero’ and 2 ‘poles’. 48
  • 49. Relation b/w poles and zeros and frequency response of the system 49
  • 50. Example • Consider the Transfer function calculated in previous slides. • The only pole of the system is 50 B As C s Y s X s G    ) ( ) ( ) ( 0   B As is polynomial r denominato the A B s  
  • 51. Examples • Consider the following transfer functions. – Determine • Whether the transfer function is proper or improper • Poles of the system • zeros of the system • Order of the system 51 ) ( ) ( 2 3    s s s s G ) )( )( ( ) ( 3 2 1     s s s s s G ) ( ) ( ) ( 10 3 2 2    s s s s G ) ( ) ( ) ( 10 1 2    s s s s s G i) ii) iii) iv)
  • 52. Stability of Control Systems • The poles and zeros of the system are plotted in s-plane to check the stability of the system. 52 s-plane LHP RHP   j   j s   Recall
  • 53. Stability of Control Systems • If all the poles of the system lie in left half plane the system is said to be Stable. • If any of the poles lie in right half plane the system is said to be unstable. • If pole(s) lie on imaginary axis the system is said to be marginally stable. 53 s-plane LHP RHP   j • Absolute stability does not depend on location of zeros of the transfer function
  • 54. Examples 54 -5 -4 -3 -2 -1 0 1 2 3 4 5 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis stable
  • 55. -5 -4 -3 -2 -1 0 1 2 3 4 5 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis Examples 55 stable
  • 56. -5 -4 -3 -2 -1 0 1 2 3 4 5 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis Examples 56 unstable
  • 57. -5 -4 -3 -2 -1 0 1 2 3 4 5 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis Examples 57 stable
  • 58. -5 -4 -3 -2 -1 0 1 2 3 4 5 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis Examples 58 Marginally stable
  • 59. -3 -2 -1 0 1 2 3 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis Examples 59 stable
  • 60. -2 -1.5 -1 -0.5 0 0.5 1 1.5 2 -4 -3 -2 -1 0 1 2 3 4 Pole-Zero Map Real Axis Imaginary Axis Examples 60 Marginally stable
  • 61. -5 -4 -3 -2 -1 0 1 2 3 4 5 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis Examples 61 stable -6 -4 -2 0 2 4 -5 -4 -3 -2 -1 0 1 2 3 4 5 Pole-Zero Map Real Axis Imaginary Axis stable • Relative Stability
  • 62. Stability of Control Systems • For example • Then the only pole of the system lie at 62 10 3 1      C and B A B As C s G if , , ) ( 3   pole s-plane LHP RHP   j X -3
  • 63. Examples • Consider the following transfer functions.  Determine whether the transfer function is proper or improper  Calculate the Poles and zeros of the system  Determine the order of the system  Draw the pole-zero map  Determine the Stability of the system 63 ) ( ) ( 2 3    s s s s G ) )( )( ( ) ( 3 2 1     s s s s s G ) ( ) ( ) ( 10 3 2 2    s s s s G ) ( ) ( ) ( 10 1 2    s s s s s G i) ii) iii) iv)
  • 64. Another definition of Stability • The system is said to be stable if for any bounded input the output of the system is also bounded (BIBO). • Thus the for any bounded input the output either remain constant or decrease with time. 64 u(t) t 1 Unit Step Input Plant y(t) t Output 1 overshoot
  • 65. Another definition of Stability • If for any bounded input the output is not bounded the system is said to be unstable. 65 u(t) t 1 Unit Step Input Plant y(t) t Output at e
  • 66. BIBO vs Transfer Function • For example 3 1 ) ( ) ( ) ( 1    s s U s Y s G 3 1 ) ( ) ( ) ( 2    s s U s Y s G -4 -2 0 2 4 -4 -3 -2 -1 0 1 2 3 4 Pole-Zero Map Real Axis Imaginary Axis -4 -2 0 2 4 -4 -3 -2 -1 0 1 2 3 4 Pole-Zero Map Real Axis Imaginary Axis stable unstable
  • 67. BIBO vs Transfer Function • For example 3 1 ) ( ) ( ) ( 1    s s U s Y s G 3 1 ) ( ) ( ) ( 2    s s U s Y s G ) ( ) ( 3 1 ) ( ) ( ) ( 3 1 1 1 1 t u e t y s s U s Y s G t             ) ( ) ( 3 1 ) ( ) ( ) ( 3 1 1 2 1 t u e t y s s U s Y s G t           
  • 68. BIBO vs Transfer Function • For example ) ( ) ( 3 t u e t y t   ) ( ) ( 3 t u e t y t  0 1 2 3 4 0 0.2 0.4 0.6 0.8 1 exp(-3t)*u(t) 0 2 4 6 8 10 0 2 4 6 8 10 12 x 10 12 exp(3t)*u(t)
  • 69. BIBO vs Transfer Function • Whenever one or more than one poles are in RHP the solution of dynamic equations contains increasing exponential terms. • Such as . • That makes the response of the system unbounded and hence the overall response of the system is unstable. t e3
  • 70. Types of Systems • Static System: If a system does not change with time, it is called a static system. • Dynamic System: If a system changes with time, it is called a dynamic system. 70
  • 71. Dynamic Systems • A system is said to be dynamic if its current output may depend on the past history as well as the present values of the input variables. • Mathematically, Time Input, : : ] ), ( [ ) ( t u t u t y       0 Example: A moving mass M y u Model: Force=Mass x Acceleration u y M   
  • 72. Ways to Study a System 72 System Experiment with a model of the System Experiment with actual System Physical Model Mathematical Model Analytical Solution Simulation Frequency Domain Time Domain Hybrid Domain
  • 73. Model • A model is a simplified representation or abstraction of reality. • Reality is generally too complex to copy exactly. • Much of the complexity is actually irrelevant in problem solving. 73
  • 74. Types of Models Model Physical Mathematical Computer 74 Static Dynamic Static Dynamic Static Dynamic
  • 75. What is Mathematical Model? A set of mathematical equations (e.g., differential eqs.) that describes the input-output behavior of a system. What is a model used for? • Simulation • Prediction/Forecasting • Prognostics/Diagnostics • Design/Performance Evaluation • Control System Design
  • 76. Classification of Mathematical Models • Linear vs. Non-linear • Deterministic vs. Probabilistic (Stochastic) • Static vs. Dynamic • Discrete vs. Continuous • White box, black box and gray box 76
  • 77. Black Box Model • When only input and output are known. • Internal dynamics are either too complex or unknown. • Easy to Model 77 Input Output
  • 78. Black Box Model • Consider the example of a heat radiating system. 78
  • 79. Black Box Model • Consider the example of a heat radiating system. 79 Valve Position Room Temperature (oC) 0 0 2 3 4 6 6 12 8 20 10 33 0 2 4 6 8 10 0 5 10 15 20 25 30 35 Valve Position Temperature in Degree Celsius Heat Raadiating System Room Temperature 0 2 4 6 8 10 0 5 10 15 20 25 30 35 Valve Position (x) Temperature in Degree Celsius (y) Heat Raadiating System y = 0.31*x2 + 0.046*x + 0.64 Room Temperature quadratic Fit
  • 80. Grey Box Model • When input and output and some information about the internal dynamics of the system is known. • Easier than white box Modelling. 80 u(t) y(t) y[u(t), t]
  • 81. White Box Model • When input and output and internal dynamics of the system is known. • One should know have complete knowledge of the system to derive a white box model. 81 u(t) y(t) 2 2 3 dt t y d dt t du dt t dy ) ( ) ( ) (  
  • 82. Mathematical Modelling Basics Mathematical model of a real world system is derived using a combination of physical laws and/or experimental means • Physical laws are used to determine the model structure (linear or nonlinear) and order. • The parameters of the model are often estimated and/or validated experimentally. • Mathematical model of a dynamic system can often be expressed as a system of differential (difference in the case of discrete-time systems) equations
  • 83. Different Types of Lumped-Parameter Models Input-output differential equation State equations Transfer function Nonlinear Linear Linear Time Invariant System Type Model Type
  • 84. Approach to dynamic systems • Define the system and its components. • Formulate the mathematical model and list the necessary assumptions. • Write the differential equations describing the model. • Solve the equations for the desired output variables. • Examine the solutions and the assumptions. • If necessary, reanalyze or redesign the system. 84
  • 85. Simulation • Computer simulation is the discipline of designing a model of an actual or theoretical physical system, executing the model on a digital computer, and analyzing the execution output. • Simulation embodies the principle of ``learning by doing'' --- to learn about the system we must first build a model of some sort and then operate the model. 85
  • 86. Advantages to Simulation  Can be used to study existing systems without disrupting the ongoing operations.  Proposed systems can be “tested” before committing resources.  Allows us to control time.  Allows us to gain insight into which variables are most important to system performance. 86
  • 87. Disadvantages to Simulation  Model building is an art as well as a science. The quality of the analysis depends on the quality of the model and the skill of the modeler.  Simulation results are sometimes hard to interpret.  Simulation analysis can be time consuming and expensive.  Should not be used when an analytical method would provide for quicker results. 87
  • 88. END OF LECTURE-1 To download this lecture visit http://imtiazhussainkalwar.weebly.com/