SlideShare ist ein Scribd-Unternehmen logo
1 von 8
Downloaden Sie, um offline zu lesen
DESIGN OF FUZZY SELF-TUNED LOAD FREQUENCY CONTROLLER FOR POWER SYSTEM
T.A.S.JAGADEESH Dr.R.VIJAYA SHANTI, Asst.Professor, Andhra University
Abstract: In the present paper, Self-Tuning fuzzy Controller is
designed for a multi-machine power system. Conventional PID
gains are obtained using Ant Colony System (ACS).Basing these
gains, Fuzzy Controller gains are designed for solving Load
Frequency Control (LFC) problem in a power system. The proposed
controller is tested on different loading conditions of a practical
thermal, hydel interconnected systems. The proposed controller
shows its efficiency when compared with conventional integral
controller & ACS-PID controller under different non-linearity’s like
Generation Rate Constraint (GRC).
Key words:
Load Frequency Control; Self-Tuning fuzzy Controller,
Generation Rate Constraints.
1. Introduction:
The problem of controlling the power output of a generator of a
closely knit electric area so as to maintain the scheduled frequency.
All the generators in such an area constitute a coherent group. So
that all the generators will speed up and slow down together
maintaining their relative power angles. Such an area is identified as
a control area. The boundaries of a control area will generally
coincide with that of an individual Electric Board Company [1].
These perturbations disturb the normal operation of the power
system. A very well known PI/PID controller are used after many
investigations and these controllers are used over half a centuries in
the industrial control and automation process. The PI/PID
controllers are simple for implementation [2, 3], design and low cost
for linear systems. Whenever an operating condition change, the
PID controller which is based on linearized model parameters will
also vary the PID controller gains which are designed at operating
conditions gives an optimal response at one operating condition
gives a suboptimal response at other operating condition. And
another drawback of PID controllers is human control of an
experienced operator is essential.So,in order to overcome these
drawbacks and to get some optimal response at all operating
conditions self tuning of PID controllers using Fuzzy logic
controllers come into action. Zeigler Nicolas method the most
widely used tuning method and is very simple but it is not
guaranteed one which will gives an effective response due to the
changes that may happen during the process running time of the
operating conditions. So, in recent years, Fuzzy logic controllers and
fuzzy sets tools are used for designing of fuzzy self tuning of PID
gains. This controller is used to update the PID controller gains pK
IK DK to meet closed loop system performance.
Several control techniques based on Fuzzy and Takagi-Sugeno
(TS) Fuzzy control system theory have been applied to LFC and
Power system as a tool to improve the system performance [8, 9]
The different loading conditions which we applied to self tuned
fuzzy logic controllers in the presence of system non-linearity GRC
&uncertain parameters are taken from the Egyptian power system
load frequency control during summer and winter of 2008[12] and
the gains of pK IK DK of the system can be self-tuned on-line
using output of the system and the simulated results are designed in
the MATLAB/SIMULINK are observed on comparison of proposed
fuzzy self tuned-PID & ACS-PID controller.
2. The Conventional Integral & PID System Modeling.
Assumptions are considered for Power system installed generation
capacity and peak load are estimated as 23400MW and 18970MW,
in 2008[12].The Approximated installed capacity of Non-reheat,
Reheat, and Hydro electric Power stations are given as.
1. Non-reheat generating units represent by gas turbine Power
stations represents approximately 25% of the installed capacity.
2. Reheat generating Units represent by the majority of the thermal
stations and combined cycle Power stations which are approximated
as 63% of the installed capacity.
3. Hydro electric Power stations are approximated as 15% of
installed capacity.
Fig (1) shows the block diagram of the Power system LFC model is
represented by SIMULINK is given below.
The Parameters of this model are divided into two sets. The first set
of parameters does not depend on system operating conditions. The
other set of parameters varies with the time according to the
operating condition. The data required to calculate the changing
parameters are concerned with the data of each generator including
status (ON or OFF),type of unit (Non-reheat,reheat,hydro),unit
rating (MW),unit Output (MW) for the operating condition under
study, inertia of the unit, and spinning reserve of the unit in
percentage of the unit rating.
The simulink model considers the generating rate constraints GRC
for different units. The applied values for GRC are 0.1P.UMW/min
and 0.2p.uMW/min. for the reheat turbines and non reheat turbines,
respectively. The GRC of hydro plants is neglected since its actual
value is much greater corresponding to the time durations of
practical disturbances [2].
The dynamic equations of this model can be written in the state-
space form as:
( ) ( ) ( )x t Ax t Bu t= +& (1)
Where
1 2 2 3( ) [ ( ) ( ) ( ) ( )]x t F t P t P t V P G t t= ∆ ∆ ∆ ∆ ∆ ∆
( )F t∆ = 1( )x t = the incremental frequency deviation Hz
1( )P t∆ = 2 ( )x t = incremental change in non-reheat plant in p.u
MW.
2()P t∆ = 3()x t = incremental changes reheat plant output in p.u
MW.
2V∆ = 4()x t = incremental opening in steam valve of reheat
plant output in p.u MW
3( )P t∆ = 5( )x t = incremental change in hydro plant output in p.u
MW
()Gt∆ = 6( )x t = incremental opening in hydro plant inlet vane in
p.u MW
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
49
ISBN:378-26-138420-0255
The system model matrices A & B are displayed in the Appendix.
The three loading conditions of Power system are considered to
design ACS-based PI and PID gains.
3. Design of Fuzzy self-tuning of PID controller.
The Proposed design procedure includes two steps:
1. Finding the optimal gains of PID which Controls the system.
2. Design of fuzzy logic control (FLC), with self-tuning capabilities.
3. General Expressions for PID controller
The of a PI controller is given below:
( ) I
p D
K
K s K K s
s
= + + (2)
Where pK IK and DK are proportional, integral and differential
gains respectively.
( ) ( )*U s K s F= − ∆ (3)
Where ( )U s =output and, F∆ is the incremental frequency
deviation.
4. Design of a Controller
The below Fig(1) shows the Two input and one output variables of
conventional fuzzy logic system
X1
Y
Y
X2
Fig (1) Fuzzy Logic system
The Fig (2) shows below the Fuzzy logic controller with various
control schemes
Fig (2) A fuzzy controller with control system structure
The below Fig (3) shows Designed Fuzzy self tuned PID controller
The designs steps of fuzzy self tuning can be summarized as
follows:
1-Write the PID controller by the following equation:
( )
( )p I D
de t
U K K e t dt K
dt
= + +∫ (4)
This equation can also be written as:
2 2 2
( )
( )P I D
de t
U K K e t dt K
dt
= + ∫ +
(5)
Where:
2pK = PK * 1PK , 2IK = IK * 1IK , 2DK = DK * 1DK are the gain
outputs from fuzzy controller.
The input member ship functions of e and ∆e as shown in the fig (4,
5, 6) and are represented in the rule base are:
{ PB-Positive Big, PM-Positive Medium, PS-Positive Small, Z-
Zero, NB-Negative Big, NM-Negative Medium, NS-Negative
Small} and the outputs are represented in rule base as {B-Big, VB-
Very Big, MB-Medium Big, S-Small, MS-Medium Small};
The output membership functions are:
ZE-Zero Error, MS-Medium Small, S-Small, M-Medium, B-Big,
MB-Medium Big, VB-Very Big
Where:
e : error input normalizing gain.
∆e : Change in error input
normalizing gains.
The rule base for KP1 is shown in the table below.
∆e
e NB NM NS ZE PS PM PB
NB VB VB VB VB VB VB VB
NM MB MB MB MB B MB VB
NS B B B B MB B VB
ZE ZE ZE ZE MS S S S
PS B B B B MB B VB
PM MB MB MB MB B MB VB
PB VB VB VB VB VB VB VB
Fig (4) Rule base for determining 1pK
Fuzzy Logic System
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
50
ISBN:378-26-138420-0256
∆e
e
NB NM NS ZE PS PM PB
NB M M M M M M M
NM M M M M M M M
NS S S S S S S S
ZE MS MS MS ZE MS MS MS
PS S S S S S S S
PM M M M M M M M
PB M M M M M M M
Fig (5) Fuzzy rule base for 1IK
∆e
e
NB NM NS ZE PS
PM
PB
NB ZE MS S M MB B VB
NM MS S M B B B VB
NS S M B MB VB VB VB
ZE M B MB MB VB VB VB
PS MB MB VB VB VB VB VB
PM B MB VB VB VB VB VB
PB VB VB VB VB VB VB VB
Fig(6) Fuzzy rule base for determining 1DK
3) The universe of discourse is normalized, the physical values is of
the normalizing gains is obtained by dividing the boundary values of
discourse of the input member ship functions of maximum of
original values of e and ∆e.
4) Defuzzification is a mathematical process used to convert a fuzzy
sets to real number and is a necessary step because fuzzy sets
generated by fuzzy inference in rules must be somehow
mathematically combined to come up with one single number as
output of a fuzzy controller output. Defuzzification is applied as a
final step to convert the fuzzy output to crisp value .Defuzzification
is a process which converts the range of values of output variables
into corresponding universe of discourse and it yields a non fuzzy
control action from an inferred fuzzy control action. One of the
Defuzzification methods is centroid method it is also called as centre
of gravity or centre of area defuzzification .The widely used COA
strategy the centre of gravity of the possibility distribution of a
control action.
1
1
( )
( )
r
i i
i
r
i
i
x x
u
x
µ
µ
=
=
=
∑
∑
Where ix a running point in the universe of discourse, and ( )ixµ
is its membership value in the member ship function
Results and Discussions:
The results show that system is responding effectively for
variation of uncertain parameters in the presence of nonlinearity
Generation Rate Constraints. The self tuned fuzzy controller meets
the required results of uncertain parameters over ACS –PID &
conventional Integral controller.
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
51
ISBN:378-26-138420-0257
The following conditions are:
Case 1: Small disturbance in the system dP∆ =1%:-
In this a Small disturbance of 1% is applied to the power system
and can observed that the damping of the system frequency is
improved and simulation results shows that proposed FST-PID
controller has less overshoot & Quick settling time when compared
with Integral Controller and ACS-PID controller as shown in the
fig(7)and fig(8) below.
Fig(7) ∆F
∆U
Fig (8) System dynamic response for case (1)
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
52
ISBN:378-26-138420-0258
Case 2: Disturbance Variations:
Fig (8) and fig(9) , illustrates the dynamic response of frequency
deviation F∆ and control input U∆ when a step of dP∆ = 1%
is applied,
during 5 ≤ t ≤ 30 seconds. It is clear that the oscillations are quickly
damped with the proposed FST-PID as compared to ACS-PID.
Besides,
the FST-PID settles faster whereas ACS-PID shows the opposite.
Fig (9) ∆F
∆U
Fig (10) System dynamic response for case (2)
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
53
ISBN:378-26-138420-0259
Case 3: Tracking Disturbance Variations
Fig (9) and (10) show the dynamic response of F∆ and U∆
following a variation of as seen in Fig (12) and Fig (13). This
variation covers both tracking represented by the ramp and
regulation which represented by a step change. It is obvious from
Fig (12) and (13) that the system driven by FST-PID controller,
shows better performance and clearly improved than ACS- PID fast
response with relatively small overshoots).
a) Fig(12) ∆F
∆U
Fig(13) shows the system dynamic response
Operating conditions:
Condition1 Condition2 Condition3
H 4.9598 6.0168 5.8552
Pn1 0.2730 0.3112 0.2433
Pn2 0.7007 0.5200
0.6179
Pn3 0.1364 0.1798 0.1389
Where H: Equivalent Inertia constant of the system.
&
Pn1, Pn2, and Pn3: Nominal rated regulating power output
for non-reheat, reheat and
Hydro Plants (p.u MW)
List of symbols:
1) R1, R2 - 2.5(Hz/p.u MW)
2) R3 - (Hz/p.u MW)
3) D - 0.029(p.u MW/hz)
4) T1 & T2 –0.4Sec
5) T3 - 90sec
6) Tb -6sec
7) Td -5sec
8) wT -1.0sec
9) M - 0.5
10) LT - 2.5 sec/Hz
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
54
ISBN:378-26-138420-0260
Conclusion:
In this paper Self tuned FST-PID controller is designed and its
performances are compared with conventional Integral controller
&ACS-PID controller under different loading conditions. Simulation
results prove that the proposed controller shows the robust
performance with different non-linearity like GRC under dynamic
operating conditions. The simulation results shows that FST-PID
controllers is powerful in reducing the frequency deviations under a
variety of load perturbations of LFC for proposed power system.
The dynamic equations are:
A=
1
1 1 1
2
2 2 2
2
2 2 2
3
3
1 1 1
0 0
2 2 2 2
1
0 0 0 0
1 1
0 0 0
1
0 0 0 0
2 2 2 2 2 2
2 1 0
2 2 2 2
1
1 0
2 2 2 2
h h
d d d d
w w
d d d d
D
H H H H
Pn
R T T
mPn m
R T T T T
Pn
R T T
T D aT aT aT
a
H H H H T T T
T D aT aT aT
a
H H H H T
 
− 
 
− − 
 
 
  − −
−  
  
 − −


     − − − +    
      

− − − −  −    









a=
3
3 3
Pn
R T
B=
3 31 2 2
1 2 2 3 3
2*
0
Pn PnPn mPn Pn
T T T T T
 −− − −
 
 
Fig (14) The Simulink representation of a power system Load Frequency model
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
55
ISBN:378-26-138420-0261
References:
1) Modern Power system analysis by D.P.Kotari, I.J.Nagarath
‘Third edition’.
2) Design of a Fuzzy Self-Tuning Optimal PID Load
Frequency Controller for the Egyptian Power System.
3) C. E. Fosha, O. I. Elgerd, “The megawatt-frequency control
problem: a new approach via optimal control theory”, IEEE
Trans. PAS, vol. 89, pp. 563–567, April 1970.
4) A. Khodabakhshian, N. Golbon, “Unified PID design for
load frequency control”, In Proc. 2004 IEEE Int. Conf. on
Control Applications (CCA), Taipei, Taiwan, pp. 1627–
1632, September 2004.
5) G.J. Silva, A. Datta, et al., “New results on the synthesis of
PID controllers”, IEEE, Transactions on Automatic Control,
47(2), pp. 241-252, 2002.
6) Keven M. Passino and Stephen Yurkovich, "Fuzzy Control",
Addison Wesley longnan, Inc., 1998.
7) G.R. Chen and T.T. Pham, "Introduction to fuzzy sets, fuzzy
logic, fuzzy control system", RC. Press,Boac Raton, FL,
USA, 2000.
8) Michall Petrov, Ivan Ganchev and Ivan dragotinov, “Design
Aspects of Fuzzy PID Control”, International conference on
soft computing, Mendel “99”, Brno, Czech Republic, 9-12
June, pp. 277-282, 1999.
9) H. A. Shayanfar and H. Shayeghi A. Jalili, " Takagi-Sugeno
Fuzzy Parallel Distribution Compensation Based Three-Area
LFC Design", International Journal on Technical and
Physical Problems of Engineering, Issue 8, Volume 3,
Number 3, pp. 55-64, Sept 20.
10) R. Dhanalakshmi and S. Palaniswami, "Application of Self-
Tuning Fuzzy Logic PI Controller in Load Frequency
Control of Wind-Micro Hydro-Diesel Hybrid Power
System", European Journal of Scientific Research ISSN
1450-216X Vol. 79 No. 3, pp. 317-327, 2012.
11) Zareiegovar G., Sakhavati A. , Nabaei V. and Gharehpetian
G. B., " A New Approach for Tuning PID Controller
Parameters of Load Frequency Control Considering System
Uncertainties”, 9th International Conference on Digital
Object, pp. 333 – 336, 2008.
12) Egyptian Electricity Holding Company, 2007/2008 Annual
Report.
http://www.egelec.com/annual%20report/2007.html.
INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014
INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in
56
ISBN:378-26-138420-0262

Weitere ähnliche Inhalte

Was ist angesagt?

Determination of controller gains for frequency control
Determination of controller gains for frequency controlDetermination of controller gains for frequency control
Determination of controller gains for frequency control
IAEME Publication
 
Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...
Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...
Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...
Dr. Omveer Singh
 
Thompson tchobanian ni_li)
Thompson tchobanian ni_li)Thompson tchobanian ni_li)
Thompson tchobanian ni_li)
trtrungviet
 
Speed control of dc motor by fuzzy controller
Speed control of dc motor by fuzzy controllerSpeed control of dc motor by fuzzy controller
Speed control of dc motor by fuzzy controller
Murugappa Group
 

Was ist angesagt? (20)

Determination of controller gains for frequency control
Determination of controller gains for frequency controlDetermination of controller gains for frequency control
Determination of controller gains for frequency control
 
Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...
Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...
Hybrid Stochastic Search Technique based Suboptimal AGC Regulator Design for ...
 
Design of fuzzzy pid controller for bldc motor
Design of fuzzzy pid controller for bldc motorDesign of fuzzzy pid controller for bldc motor
Design of fuzzzy pid controller for bldc motor
 
Comprehensive Approach Towards Modelling and Simulation of Single Area Power...
Comprehensive Approach Towards Modelling and Simulation of  Single Area Power...Comprehensive Approach Towards Modelling and Simulation of  Single Area Power...
Comprehensive Approach Towards Modelling and Simulation of Single Area Power...
 
Analysis and Impact of D-STATCOM, Static Var Compensator, Fuzzy Based SVC Con...
Analysis and Impact of D-STATCOM, Static Var Compensator, Fuzzy Based SVC Con...Analysis and Impact of D-STATCOM, Static Var Compensator, Fuzzy Based SVC Con...
Analysis and Impact of D-STATCOM, Static Var Compensator, Fuzzy Based SVC Con...
 
Parallel control structure scheme for load frequency controller design using ...
Parallel control structure scheme for load frequency controller design using ...Parallel control structure scheme for load frequency controller design using ...
Parallel control structure scheme for load frequency controller design using ...
 
Pa3426282645
Pa3426282645Pa3426282645
Pa3426282645
 
Thompson tchobanian ni_li)
Thompson tchobanian ni_li)Thompson tchobanian ni_li)
Thompson tchobanian ni_li)
 
A011130109
A011130109A011130109
A011130109
 
R04601113118
R04601113118R04601113118
R04601113118
 
Fuzzy logic Technique Based Speed Control of a Permanent Magnet Brushless DC...
Fuzzy logic Technique Based Speed Control of a Permanent  Magnet Brushless DC...Fuzzy logic Technique Based Speed Control of a Permanent  Magnet Brushless DC...
Fuzzy logic Technique Based Speed Control of a Permanent Magnet Brushless DC...
 
Automatic Generation Control of Multi-Area Power System with Generating Rate ...
Automatic Generation Control of Multi-Area Power System with Generating Rate ...Automatic Generation Control of Multi-Area Power System with Generating Rate ...
Automatic Generation Control of Multi-Area Power System with Generating Rate ...
 
A Novel Methodology of Fuzzy Logic Controller for A Dynamically Interconnecte...
A Novel Methodology of Fuzzy Logic Controller for A Dynamically Interconnecte...A Novel Methodology of Fuzzy Logic Controller for A Dynamically Interconnecte...
A Novel Methodology of Fuzzy Logic Controller for A Dynamically Interconnecte...
 
Design of GCSC Stabilizing Controller for Damping Low Frequency Oscillations
Design of GCSC Stabilizing Controller for Damping Low Frequency OscillationsDesign of GCSC Stabilizing Controller for Damping Low Frequency Oscillations
Design of GCSC Stabilizing Controller for Damping Low Frequency Oscillations
 
Dz36755762
Dz36755762Dz36755762
Dz36755762
 
Speed control of dc motor by fuzzy controller
Speed control of dc motor by fuzzy controllerSpeed control of dc motor by fuzzy controller
Speed control of dc motor by fuzzy controller
 
C1102011317
C1102011317C1102011317
C1102011317
 
Fractional order-pid-controller design
Fractional order-pid-controller designFractional order-pid-controller design
Fractional order-pid-controller design
 
IRJET- Stability Enhancement using Power System Stabilizer with Optimization ...
IRJET- Stability Enhancement using Power System Stabilizer with Optimization ...IRJET- Stability Enhancement using Power System Stabilizer with Optimization ...
IRJET- Stability Enhancement using Power System Stabilizer with Optimization ...
 
Efficient reconfigurable architecture of baseband demodulator in sdr
Efficient reconfigurable architecture of baseband demodulator in sdrEfficient reconfigurable architecture of baseband demodulator in sdr
Efficient reconfigurable architecture of baseband demodulator in sdr
 

Andere mochten auch

Andere mochten auch (8)

Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLABDesign of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
Design of Fuzzy Logic Controller for Speed Regulation of BLDC motor using MATLAB
 
1.[1 5]implementation of pre compensation fuzzy for a cascade pid controller ...
1.[1 5]implementation of pre compensation fuzzy for a cascade pid controller ...1.[1 5]implementation of pre compensation fuzzy for a cascade pid controller ...
1.[1 5]implementation of pre compensation fuzzy for a cascade pid controller ...
 
Fuzzy load frequency controller in
Fuzzy load frequency controller inFuzzy load frequency controller in
Fuzzy load frequency controller in
 
Load frequency control in co ordination with frequency controllable hvdc link...
Load frequency control in co ordination with frequency controllable hvdc link...Load frequency control in co ordination with frequency controllable hvdc link...
Load frequency control in co ordination with frequency controllable hvdc link...
 
Project ppt
Project pptProject ppt
Project ppt
 
Load frequency control
Load frequency controlLoad frequency control
Load frequency control
 
Power Systems Engineering - Load Frequency Control Derivation & Calculatio...
Power Systems Engineering - Load Frequency  Control  Derivation  & Calculatio...Power Systems Engineering - Load Frequency  Control  Derivation  & Calculatio...
Power Systems Engineering - Load Frequency Control Derivation & Calculatio...
 
Load Frequency Control of Two Area System
Load Frequency Control of Two Area SystemLoad Frequency Control of Two Area System
Load Frequency Control of Two Area System
 

Ähnlich wie Iaetsd design of fuzzy self-tuned load frequency controller for power system

Speed control of dc motor using relay feedback tuned pi
Speed control of dc motor using relay feedback tuned piSpeed control of dc motor using relay feedback tuned pi
Speed control of dc motor using relay feedback tuned pi
Alexander Decker
 
Optimal tuning of pid power system stabilizer in simulink environment
Optimal tuning of pid power system stabilizer in simulink environmentOptimal tuning of pid power system stabilizer in simulink environment
Optimal tuning of pid power system stabilizer in simulink environment
IAEME Publication
 
D0255033039
D0255033039D0255033039
D0255033039
theijes
 
Servo Fundamentals
Servo FundamentalsServo Fundamentals
Servo Fundamentals
purnima saha
 
Optimized coordinated economic dispatch and automatic generation control for ...
Optimized coordinated economic dispatch and automatic generation control for ...Optimized coordinated economic dispatch and automatic generation control for ...
Optimized coordinated economic dispatch and automatic generation control for ...
SANJAY SHARMA
 

Ähnlich wie Iaetsd design of fuzzy self-tuned load frequency controller for power system (20)

Speed control of dc motor using relay feedback tuned pi
Speed control of dc motor using relay feedback tuned piSpeed control of dc motor using relay feedback tuned pi
Speed control of dc motor using relay feedback tuned pi
 
IRJET- Load Frequency Control in Two Area Power Systems Integrated with S...
IRJET-  	  Load Frequency Control in Two Area Power Systems Integrated with S...IRJET-  	  Load Frequency Control in Two Area Power Systems Integrated with S...
IRJET- Load Frequency Control in Two Area Power Systems Integrated with S...
 
Study of PID Controllers to Load Frequency Control Systems with Various Turbi...
Study of PID Controllers to Load Frequency Control Systems with Various Turbi...Study of PID Controllers to Load Frequency Control Systems with Various Turbi...
Study of PID Controllers to Load Frequency Control Systems with Various Turbi...
 
J010346786
J010346786J010346786
J010346786
 
Comparative Analysis of Different Controllers in Two–Area Hydrothermal Power ...
Comparative Analysis of Different Controllers in Two–Area Hydrothermal Power ...Comparative Analysis of Different Controllers in Two–Area Hydrothermal Power ...
Comparative Analysis of Different Controllers in Two–Area Hydrothermal Power ...
 
Tuning PID Controller Parameters for Load Frequency Control Considering Syste...
Tuning PID Controller Parameters for Load Frequency Control Considering Syste...Tuning PID Controller Parameters for Load Frequency Control Considering Syste...
Tuning PID Controller Parameters for Load Frequency Control Considering Syste...
 
IRJET- Simultaneous Microgrid Voltage and Current Harmonics Compensation usin...
IRJET- Simultaneous Microgrid Voltage and Current Harmonics Compensation usin...IRJET- Simultaneous Microgrid Voltage and Current Harmonics Compensation usin...
IRJET- Simultaneous Microgrid Voltage and Current Harmonics Compensation usin...
 
IRJET- An Investigative Study of Generator-Load Tie-Line Model of Speed Gover...
IRJET- An Investigative Study of Generator-Load Tie-Line Model of Speed Gover...IRJET- An Investigative Study of Generator-Load Tie-Line Model of Speed Gover...
IRJET- An Investigative Study of Generator-Load Tie-Line Model of Speed Gover...
 
Optimal tuning of pid power system stabilizer in simulink environment
Optimal tuning of pid power system stabilizer in simulink environmentOptimal tuning of pid power system stabilizer in simulink environment
Optimal tuning of pid power system stabilizer in simulink environment
 
D0255033039
D0255033039D0255033039
D0255033039
 
IRJET- Analysis of 3-Phase Induction Motor with High Step-Up PWM DC-DC Conver...
IRJET- Analysis of 3-Phase Induction Motor with High Step-Up PWM DC-DC Conver...IRJET- Analysis of 3-Phase Induction Motor with High Step-Up PWM DC-DC Conver...
IRJET- Analysis of 3-Phase Induction Motor with High Step-Up PWM DC-DC Conver...
 
IRJET- Design and Analysis of Fuzzy and GA-PID Controllers for Optimized Perf...
IRJET- Design and Analysis of Fuzzy and GA-PID Controllers for Optimized Perf...IRJET- Design and Analysis of Fuzzy and GA-PID Controllers for Optimized Perf...
IRJET- Design and Analysis of Fuzzy and GA-PID Controllers for Optimized Perf...
 
Design of a discrete PID controller based on identification data for a simsca...
Design of a discrete PID controller based on identification data for a simsca...Design of a discrete PID controller based on identification data for a simsca...
Design of a discrete PID controller based on identification data for a simsca...
 
A New Control Method for the Multi-Area LFC System Based on Port-Hamiltonian ...
A New Control Method for the Multi-Area LFC System Based on Port-Hamiltonian ...A New Control Method for the Multi-Area LFC System Based on Port-Hamiltonian ...
A New Control Method for the Multi-Area LFC System Based on Port-Hamiltonian ...
 
Correlative Study on the Modeling and Control of Boost Converter using Advanc...
Correlative Study on the Modeling and Control of Boost Converter using Advanc...Correlative Study on the Modeling and Control of Boost Converter using Advanc...
Correlative Study on the Modeling and Control of Boost Converter using Advanc...
 
A Fuzzy PID Controller for Induction Heating Systems with LLC Voltage Source ...
A Fuzzy PID Controller for Induction Heating Systems with LLC Voltage Source ...A Fuzzy PID Controller for Induction Heating Systems with LLC Voltage Source ...
A Fuzzy PID Controller for Induction Heating Systems with LLC Voltage Source ...
 
Servo Fundamentals
Servo FundamentalsServo Fundamentals
Servo Fundamentals
 
Design of Adaptive Sliding Mode Control with Fuzzy Controller and PID Tuning ...
Design of Adaptive Sliding Mode Control with Fuzzy Controller and PID Tuning ...Design of Adaptive Sliding Mode Control with Fuzzy Controller and PID Tuning ...
Design of Adaptive Sliding Mode Control with Fuzzy Controller and PID Tuning ...
 
Optimized coordinated economic dispatch and automatic generation control for ...
Optimized coordinated economic dispatch and automatic generation control for ...Optimized coordinated economic dispatch and automatic generation control for ...
Optimized coordinated economic dispatch and automatic generation control for ...
 
IRJET-Robust Intelligent Controller for Voltage Stabilization of dc-dc Boost ...
IRJET-Robust Intelligent Controller for Voltage Stabilization of dc-dc Boost ...IRJET-Robust Intelligent Controller for Voltage Stabilization of dc-dc Boost ...
IRJET-Robust Intelligent Controller for Voltage Stabilization of dc-dc Boost ...
 

Mehr von Iaetsd Iaetsd

iaetsd Survey on cooperative relay based data transmission
iaetsd Survey on cooperative relay based data transmissioniaetsd Survey on cooperative relay based data transmission
iaetsd Survey on cooperative relay based data transmission
Iaetsd Iaetsd
 
iaetsd Software defined am transmitter using vhdl
iaetsd Software defined am transmitter using vhdliaetsd Software defined am transmitter using vhdl
iaetsd Software defined am transmitter using vhdl
Iaetsd Iaetsd
 
iaetsd Health monitoring system with wireless alarm
iaetsd Health monitoring system with wireless alarmiaetsd Health monitoring system with wireless alarm
iaetsd Health monitoring system with wireless alarm
Iaetsd Iaetsd
 
iaetsd Equalizing channel and power based on cognitive radio system over mult...
iaetsd Equalizing channel and power based on cognitive radio system over mult...iaetsd Equalizing channel and power based on cognitive radio system over mult...
iaetsd Equalizing channel and power based on cognitive radio system over mult...
Iaetsd Iaetsd
 
iaetsd Economic analysis and re design of driver’s car seat
iaetsd Economic analysis and re design of driver’s car seatiaetsd Economic analysis and re design of driver’s car seat
iaetsd Economic analysis and re design of driver’s car seat
Iaetsd Iaetsd
 
iaetsd Design of slotted microstrip patch antenna for wlan application
iaetsd Design of slotted microstrip patch antenna for wlan applicationiaetsd Design of slotted microstrip patch antenna for wlan application
iaetsd Design of slotted microstrip patch antenna for wlan application
Iaetsd Iaetsd
 
REVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBS
REVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBSREVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBS
REVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBS
Iaetsd Iaetsd
 
A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...
A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...
A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...
Iaetsd Iaetsd
 
iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...
iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...
iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...
Iaetsd Iaetsd
 
iirdem Surveillance aided robotic bird
iirdem Surveillance aided robotic birdiirdem Surveillance aided robotic bird
iirdem Surveillance aided robotic bird
Iaetsd Iaetsd
 
iirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growth
iirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growthiirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growth
iirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growth
Iaetsd Iaetsd
 
iirdem Design of Efficient Solar Energy Collector using MPPT Algorithm
iirdem Design of Efficient Solar Energy Collector using MPPT Algorithmiirdem Design of Efficient Solar Energy Collector using MPPT Algorithm
iirdem Design of Efficient Solar Energy Collector using MPPT Algorithm
Iaetsd Iaetsd
 
iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...
iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...
iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...
Iaetsd Iaetsd
 
iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...
iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...
iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...
Iaetsd Iaetsd
 
iaetsd Shared authority based privacy preserving protocol
iaetsd Shared authority based privacy preserving protocoliaetsd Shared authority based privacy preserving protocol
iaetsd Shared authority based privacy preserving protocol
Iaetsd Iaetsd
 
iaetsd Secured multiple keyword ranked search over encrypted databases
iaetsd Secured multiple keyword ranked search over encrypted databasesiaetsd Secured multiple keyword ranked search over encrypted databases
iaetsd Secured multiple keyword ranked search over encrypted databases
Iaetsd Iaetsd
 
iaetsd Robots in oil and gas refineries
iaetsd Robots in oil and gas refineriesiaetsd Robots in oil and gas refineries
iaetsd Robots in oil and gas refineries
Iaetsd Iaetsd
 
iaetsd Modeling of solar steam engine system using parabolic
iaetsd Modeling of solar steam engine system using paraboliciaetsd Modeling of solar steam engine system using parabolic
iaetsd Modeling of solar steam engine system using parabolic
Iaetsd Iaetsd
 

Mehr von Iaetsd Iaetsd (20)

iaetsd Survey on cooperative relay based data transmission
iaetsd Survey on cooperative relay based data transmissioniaetsd Survey on cooperative relay based data transmission
iaetsd Survey on cooperative relay based data transmission
 
iaetsd Software defined am transmitter using vhdl
iaetsd Software defined am transmitter using vhdliaetsd Software defined am transmitter using vhdl
iaetsd Software defined am transmitter using vhdl
 
iaetsd Health monitoring system with wireless alarm
iaetsd Health monitoring system with wireless alarmiaetsd Health monitoring system with wireless alarm
iaetsd Health monitoring system with wireless alarm
 
iaetsd Equalizing channel and power based on cognitive radio system over mult...
iaetsd Equalizing channel and power based on cognitive radio system over mult...iaetsd Equalizing channel and power based on cognitive radio system over mult...
iaetsd Equalizing channel and power based on cognitive radio system over mult...
 
iaetsd Economic analysis and re design of driver’s car seat
iaetsd Economic analysis and re design of driver’s car seatiaetsd Economic analysis and re design of driver’s car seat
iaetsd Economic analysis and re design of driver’s car seat
 
iaetsd Design of slotted microstrip patch antenna for wlan application
iaetsd Design of slotted microstrip patch antenna for wlan applicationiaetsd Design of slotted microstrip patch antenna for wlan application
iaetsd Design of slotted microstrip patch antenna for wlan application
 
REVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBS
REVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBSREVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBS
REVIEW PAPER- ON ENHANCEMENT OF HEAT TRANSFER USING RIBS
 
A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...
A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...
A HYBRID AC/DC SOLAR POWERED STANDALONE SYSTEM WITHOUT INVERTER BASED ON LOAD...
 
Fabrication of dual power bike
Fabrication of dual power bikeFabrication of dual power bike
Fabrication of dual power bike
 
Blue brain technology
Blue brain technologyBlue brain technology
Blue brain technology
 
iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...
iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...
iirdem The Livable Planet – A Revolutionary Concept through Innovative Street...
 
iirdem Surveillance aided robotic bird
iirdem Surveillance aided robotic birdiirdem Surveillance aided robotic bird
iirdem Surveillance aided robotic bird
 
iirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growth
iirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growthiirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growth
iirdem Growing India Time Monopoly – The Key to Initiate Long Term Rapid Growth
 
iirdem Design of Efficient Solar Energy Collector using MPPT Algorithm
iirdem Design of Efficient Solar Energy Collector using MPPT Algorithmiirdem Design of Efficient Solar Energy Collector using MPPT Algorithm
iirdem Design of Efficient Solar Energy Collector using MPPT Algorithm
 
iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...
iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...
iirdem CRASH IMPACT ATTENUATOR (CIA) FOR AUTOMOBILES WITH THE ADVOCATION OF M...
 
iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...
iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...
iirdem ADVANCING OF POWER MANAGEMENT IN HOME WITH SMART GRID TECHNOLOGY AND S...
 
iaetsd Shared authority based privacy preserving protocol
iaetsd Shared authority based privacy preserving protocoliaetsd Shared authority based privacy preserving protocol
iaetsd Shared authority based privacy preserving protocol
 
iaetsd Secured multiple keyword ranked search over encrypted databases
iaetsd Secured multiple keyword ranked search over encrypted databasesiaetsd Secured multiple keyword ranked search over encrypted databases
iaetsd Secured multiple keyword ranked search over encrypted databases
 
iaetsd Robots in oil and gas refineries
iaetsd Robots in oil and gas refineriesiaetsd Robots in oil and gas refineries
iaetsd Robots in oil and gas refineries
 
iaetsd Modeling of solar steam engine system using parabolic
iaetsd Modeling of solar steam engine system using paraboliciaetsd Modeling of solar steam engine system using parabolic
iaetsd Modeling of solar steam engine system using parabolic
 

Kürzlich hochgeladen

VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
dharasingh5698
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
dollysharma2066
 
notes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.pptnotes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.ppt
MsecMca
 
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoorTop Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
dharasingh5698
 
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak HamilCara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
Cara Menggugurkan Kandungan 087776558899
 
Call Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 

Kürzlich hochgeladen (20)

Bhosari ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For ...
Bhosari ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For ...Bhosari ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For ...
Bhosari ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For ...
 
Generative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPTGenerative AI or GenAI technology based PPT
Generative AI or GenAI technology based PPT
 
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordCCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
 
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
 
Intze Overhead Water Tank Design by Working Stress - IS Method.pdf
Intze Overhead Water Tank  Design by Working Stress - IS Method.pdfIntze Overhead Water Tank  Design by Working Stress - IS Method.pdf
Intze Overhead Water Tank Design by Working Stress - IS Method.pdf
 
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Wakad Call Me 7737669865 Budget Friendly No Advance Booking
 
(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7
(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7
(INDIRA) Call Girl Bhosari Call Now 8617697112 Bhosari Escorts 24x7
 
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 BookingVIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
VIP Call Girls Ankleshwar 7001035870 Whatsapp Number, 24/07 Booking
 
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Mahipalpur Delhi Contact Us 8377877756
 
notes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.pptnotes on Evolution Of Analytic Scalability.ppt
notes on Evolution Of Analytic Scalability.ppt
 
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoorTop Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
Top Rated Call Girls In chittoor 📱 {7001035870} VIP Escorts chittoor
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdf
 
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak HamilCara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
 
Unit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdfUnit 1 - Soil Classification and Compaction.pdf
Unit 1 - Soil Classification and Compaction.pdf
 
Design For Accessibility: Getting it right from the start
Design For Accessibility: Getting it right from the startDesign For Accessibility: Getting it right from the start
Design For Accessibility: Getting it right from the start
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performance
 
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdfONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
ONLINE FOOD ORDER SYSTEM PROJECT REPORT.pdf
 
Call Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Netaji Nagar, Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghly
 
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort ServiceCall Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
Call Girls in Ramesh Nagar Delhi 💯 Call Us 🔝9953056974 🔝 Escort Service
 

Iaetsd design of fuzzy self-tuned load frequency controller for power system

  • 1. DESIGN OF FUZZY SELF-TUNED LOAD FREQUENCY CONTROLLER FOR POWER SYSTEM T.A.S.JAGADEESH Dr.R.VIJAYA SHANTI, Asst.Professor, Andhra University Abstract: In the present paper, Self-Tuning fuzzy Controller is designed for a multi-machine power system. Conventional PID gains are obtained using Ant Colony System (ACS).Basing these gains, Fuzzy Controller gains are designed for solving Load Frequency Control (LFC) problem in a power system. The proposed controller is tested on different loading conditions of a practical thermal, hydel interconnected systems. The proposed controller shows its efficiency when compared with conventional integral controller & ACS-PID controller under different non-linearity’s like Generation Rate Constraint (GRC). Key words: Load Frequency Control; Self-Tuning fuzzy Controller, Generation Rate Constraints. 1. Introduction: The problem of controlling the power output of a generator of a closely knit electric area so as to maintain the scheduled frequency. All the generators in such an area constitute a coherent group. So that all the generators will speed up and slow down together maintaining their relative power angles. Such an area is identified as a control area. The boundaries of a control area will generally coincide with that of an individual Electric Board Company [1]. These perturbations disturb the normal operation of the power system. A very well known PI/PID controller are used after many investigations and these controllers are used over half a centuries in the industrial control and automation process. The PI/PID controllers are simple for implementation [2, 3], design and low cost for linear systems. Whenever an operating condition change, the PID controller which is based on linearized model parameters will also vary the PID controller gains which are designed at operating conditions gives an optimal response at one operating condition gives a suboptimal response at other operating condition. And another drawback of PID controllers is human control of an experienced operator is essential.So,in order to overcome these drawbacks and to get some optimal response at all operating conditions self tuning of PID controllers using Fuzzy logic controllers come into action. Zeigler Nicolas method the most widely used tuning method and is very simple but it is not guaranteed one which will gives an effective response due to the changes that may happen during the process running time of the operating conditions. So, in recent years, Fuzzy logic controllers and fuzzy sets tools are used for designing of fuzzy self tuning of PID gains. This controller is used to update the PID controller gains pK IK DK to meet closed loop system performance. Several control techniques based on Fuzzy and Takagi-Sugeno (TS) Fuzzy control system theory have been applied to LFC and Power system as a tool to improve the system performance [8, 9] The different loading conditions which we applied to self tuned fuzzy logic controllers in the presence of system non-linearity GRC &uncertain parameters are taken from the Egyptian power system load frequency control during summer and winter of 2008[12] and the gains of pK IK DK of the system can be self-tuned on-line using output of the system and the simulated results are designed in the MATLAB/SIMULINK are observed on comparison of proposed fuzzy self tuned-PID & ACS-PID controller. 2. The Conventional Integral & PID System Modeling. Assumptions are considered for Power system installed generation capacity and peak load are estimated as 23400MW and 18970MW, in 2008[12].The Approximated installed capacity of Non-reheat, Reheat, and Hydro electric Power stations are given as. 1. Non-reheat generating units represent by gas turbine Power stations represents approximately 25% of the installed capacity. 2. Reheat generating Units represent by the majority of the thermal stations and combined cycle Power stations which are approximated as 63% of the installed capacity. 3. Hydro electric Power stations are approximated as 15% of installed capacity. Fig (1) shows the block diagram of the Power system LFC model is represented by SIMULINK is given below. The Parameters of this model are divided into two sets. The first set of parameters does not depend on system operating conditions. The other set of parameters varies with the time according to the operating condition. The data required to calculate the changing parameters are concerned with the data of each generator including status (ON or OFF),type of unit (Non-reheat,reheat,hydro),unit rating (MW),unit Output (MW) for the operating condition under study, inertia of the unit, and spinning reserve of the unit in percentage of the unit rating. The simulink model considers the generating rate constraints GRC for different units. The applied values for GRC are 0.1P.UMW/min and 0.2p.uMW/min. for the reheat turbines and non reheat turbines, respectively. The GRC of hydro plants is neglected since its actual value is much greater corresponding to the time durations of practical disturbances [2]. The dynamic equations of this model can be written in the state- space form as: ( ) ( ) ( )x t Ax t Bu t= +& (1) Where 1 2 2 3( ) [ ( ) ( ) ( ) ( )]x t F t P t P t V P G t t= ∆ ∆ ∆ ∆ ∆ ∆ ( )F t∆ = 1( )x t = the incremental frequency deviation Hz 1( )P t∆ = 2 ( )x t = incremental change in non-reheat plant in p.u MW. 2()P t∆ = 3()x t = incremental changes reheat plant output in p.u MW. 2V∆ = 4()x t = incremental opening in steam valve of reheat plant output in p.u MW 3( )P t∆ = 5( )x t = incremental change in hydro plant output in p.u MW ()Gt∆ = 6( )x t = incremental opening in hydro plant inlet vane in p.u MW INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 49 ISBN:378-26-138420-0255
  • 2. The system model matrices A & B are displayed in the Appendix. The three loading conditions of Power system are considered to design ACS-based PI and PID gains. 3. Design of Fuzzy self-tuning of PID controller. The Proposed design procedure includes two steps: 1. Finding the optimal gains of PID which Controls the system. 2. Design of fuzzy logic control (FLC), with self-tuning capabilities. 3. General Expressions for PID controller The of a PI controller is given below: ( ) I p D K K s K K s s = + + (2) Where pK IK and DK are proportional, integral and differential gains respectively. ( ) ( )*U s K s F= − ∆ (3) Where ( )U s =output and, F∆ is the incremental frequency deviation. 4. Design of a Controller The below Fig(1) shows the Two input and one output variables of conventional fuzzy logic system X1 Y Y X2 Fig (1) Fuzzy Logic system The Fig (2) shows below the Fuzzy logic controller with various control schemes Fig (2) A fuzzy controller with control system structure The below Fig (3) shows Designed Fuzzy self tuned PID controller The designs steps of fuzzy self tuning can be summarized as follows: 1-Write the PID controller by the following equation: ( ) ( )p I D de t U K K e t dt K dt = + +∫ (4) This equation can also be written as: 2 2 2 ( ) ( )P I D de t U K K e t dt K dt = + ∫ + (5) Where: 2pK = PK * 1PK , 2IK = IK * 1IK , 2DK = DK * 1DK are the gain outputs from fuzzy controller. The input member ship functions of e and ∆e as shown in the fig (4, 5, 6) and are represented in the rule base are: { PB-Positive Big, PM-Positive Medium, PS-Positive Small, Z- Zero, NB-Negative Big, NM-Negative Medium, NS-Negative Small} and the outputs are represented in rule base as {B-Big, VB- Very Big, MB-Medium Big, S-Small, MS-Medium Small}; The output membership functions are: ZE-Zero Error, MS-Medium Small, S-Small, M-Medium, B-Big, MB-Medium Big, VB-Very Big Where: e : error input normalizing gain. ∆e : Change in error input normalizing gains. The rule base for KP1 is shown in the table below. ∆e e NB NM NS ZE PS PM PB NB VB VB VB VB VB VB VB NM MB MB MB MB B MB VB NS B B B B MB B VB ZE ZE ZE ZE MS S S S PS B B B B MB B VB PM MB MB MB MB B MB VB PB VB VB VB VB VB VB VB Fig (4) Rule base for determining 1pK Fuzzy Logic System INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 50 ISBN:378-26-138420-0256
  • 3. ∆e e NB NM NS ZE PS PM PB NB M M M M M M M NM M M M M M M M NS S S S S S S S ZE MS MS MS ZE MS MS MS PS S S S S S S S PM M M M M M M M PB M M M M M M M Fig (5) Fuzzy rule base for 1IK ∆e e NB NM NS ZE PS PM PB NB ZE MS S M MB B VB NM MS S M B B B VB NS S M B MB VB VB VB ZE M B MB MB VB VB VB PS MB MB VB VB VB VB VB PM B MB VB VB VB VB VB PB VB VB VB VB VB VB VB Fig(6) Fuzzy rule base for determining 1DK 3) The universe of discourse is normalized, the physical values is of the normalizing gains is obtained by dividing the boundary values of discourse of the input member ship functions of maximum of original values of e and ∆e. 4) Defuzzification is a mathematical process used to convert a fuzzy sets to real number and is a necessary step because fuzzy sets generated by fuzzy inference in rules must be somehow mathematically combined to come up with one single number as output of a fuzzy controller output. Defuzzification is applied as a final step to convert the fuzzy output to crisp value .Defuzzification is a process which converts the range of values of output variables into corresponding universe of discourse and it yields a non fuzzy control action from an inferred fuzzy control action. One of the Defuzzification methods is centroid method it is also called as centre of gravity or centre of area defuzzification .The widely used COA strategy the centre of gravity of the possibility distribution of a control action. 1 1 ( ) ( ) r i i i r i i x x u x µ µ = = = ∑ ∑ Where ix a running point in the universe of discourse, and ( )ixµ is its membership value in the member ship function Results and Discussions: The results show that system is responding effectively for variation of uncertain parameters in the presence of nonlinearity Generation Rate Constraints. The self tuned fuzzy controller meets the required results of uncertain parameters over ACS –PID & conventional Integral controller. INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 51 ISBN:378-26-138420-0257
  • 4. The following conditions are: Case 1: Small disturbance in the system dP∆ =1%:- In this a Small disturbance of 1% is applied to the power system and can observed that the damping of the system frequency is improved and simulation results shows that proposed FST-PID controller has less overshoot & Quick settling time when compared with Integral Controller and ACS-PID controller as shown in the fig(7)and fig(8) below. Fig(7) ∆F ∆U Fig (8) System dynamic response for case (1) INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 52 ISBN:378-26-138420-0258
  • 5. Case 2: Disturbance Variations: Fig (8) and fig(9) , illustrates the dynamic response of frequency deviation F∆ and control input U∆ when a step of dP∆ = 1% is applied, during 5 ≤ t ≤ 30 seconds. It is clear that the oscillations are quickly damped with the proposed FST-PID as compared to ACS-PID. Besides, the FST-PID settles faster whereas ACS-PID shows the opposite. Fig (9) ∆F ∆U Fig (10) System dynamic response for case (2) INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 53 ISBN:378-26-138420-0259
  • 6. Case 3: Tracking Disturbance Variations Fig (9) and (10) show the dynamic response of F∆ and U∆ following a variation of as seen in Fig (12) and Fig (13). This variation covers both tracking represented by the ramp and regulation which represented by a step change. It is obvious from Fig (12) and (13) that the system driven by FST-PID controller, shows better performance and clearly improved than ACS- PID fast response with relatively small overshoots). a) Fig(12) ∆F ∆U Fig(13) shows the system dynamic response Operating conditions: Condition1 Condition2 Condition3 H 4.9598 6.0168 5.8552 Pn1 0.2730 0.3112 0.2433 Pn2 0.7007 0.5200 0.6179 Pn3 0.1364 0.1798 0.1389 Where H: Equivalent Inertia constant of the system. & Pn1, Pn2, and Pn3: Nominal rated regulating power output for non-reheat, reheat and Hydro Plants (p.u MW) List of symbols: 1) R1, R2 - 2.5(Hz/p.u MW) 2) R3 - (Hz/p.u MW) 3) D - 0.029(p.u MW/hz) 4) T1 & T2 –0.4Sec 5) T3 - 90sec 6) Tb -6sec 7) Td -5sec 8) wT -1.0sec 9) M - 0.5 10) LT - 2.5 sec/Hz INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 54 ISBN:378-26-138420-0260
  • 7. Conclusion: In this paper Self tuned FST-PID controller is designed and its performances are compared with conventional Integral controller &ACS-PID controller under different loading conditions. Simulation results prove that the proposed controller shows the robust performance with different non-linearity like GRC under dynamic operating conditions. The simulation results shows that FST-PID controllers is powerful in reducing the frequency deviations under a variety of load perturbations of LFC for proposed power system. The dynamic equations are: A= 1 1 1 1 2 2 2 2 2 2 2 2 3 3 1 1 1 0 0 2 2 2 2 1 0 0 0 0 1 1 0 0 0 1 0 0 0 0 2 2 2 2 2 2 2 1 0 2 2 2 2 1 1 0 2 2 2 2 h h d d d d w w d d d d D H H H H Pn R T T mPn m R T T T T Pn R T T T D aT aT aT a H H H H T T T T D aT aT aT a H H H H T   −    − −        − − −       − −        − − − +             − − − −  −              a= 3 3 3 Pn R T B= 3 31 2 2 1 2 2 3 3 2* 0 Pn PnPn mPn Pn T T T T T  −− − −     Fig (14) The Simulink representation of a power system Load Frequency model INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 55 ISBN:378-26-138420-0261
  • 8. References: 1) Modern Power system analysis by D.P.Kotari, I.J.Nagarath ‘Third edition’. 2) Design of a Fuzzy Self-Tuning Optimal PID Load Frequency Controller for the Egyptian Power System. 3) C. E. Fosha, O. I. Elgerd, “The megawatt-frequency control problem: a new approach via optimal control theory”, IEEE Trans. PAS, vol. 89, pp. 563–567, April 1970. 4) A. Khodabakhshian, N. Golbon, “Unified PID design for load frequency control”, In Proc. 2004 IEEE Int. Conf. on Control Applications (CCA), Taipei, Taiwan, pp. 1627– 1632, September 2004. 5) G.J. Silva, A. Datta, et al., “New results on the synthesis of PID controllers”, IEEE, Transactions on Automatic Control, 47(2), pp. 241-252, 2002. 6) Keven M. Passino and Stephen Yurkovich, "Fuzzy Control", Addison Wesley longnan, Inc., 1998. 7) G.R. Chen and T.T. Pham, "Introduction to fuzzy sets, fuzzy logic, fuzzy control system", RC. Press,Boac Raton, FL, USA, 2000. 8) Michall Petrov, Ivan Ganchev and Ivan dragotinov, “Design Aspects of Fuzzy PID Control”, International conference on soft computing, Mendel “99”, Brno, Czech Republic, 9-12 June, pp. 277-282, 1999. 9) H. A. Shayanfar and H. Shayeghi A. Jalili, " Takagi-Sugeno Fuzzy Parallel Distribution Compensation Based Three-Area LFC Design", International Journal on Technical and Physical Problems of Engineering, Issue 8, Volume 3, Number 3, pp. 55-64, Sept 20. 10) R. Dhanalakshmi and S. Palaniswami, "Application of Self- Tuning Fuzzy Logic PI Controller in Load Frequency Control of Wind-Micro Hydro-Diesel Hybrid Power System", European Journal of Scientific Research ISSN 1450-216X Vol. 79 No. 3, pp. 317-327, 2012. 11) Zareiegovar G., Sakhavati A. , Nabaei V. and Gharehpetian G. B., " A New Approach for Tuning PID Controller Parameters of Load Frequency Control Considering System Uncertainties”, 9th International Conference on Digital Object, pp. 333 – 336, 2008. 12) Egyptian Electricity Holding Company, 2007/2008 Annual Report. http://www.egelec.com/annual%20report/2007.html. INTERNATIONAL CONFERENCE ON CIVIL AND MECHANICAL ENGINEERING, ICCME-2014 INTERNATIONAL ASSOCIATION OF ENGINEERING & TECHNOLOGY FOR SKILL DEVELOPMENT www.iaetsd.in 56 ISBN:378-26-138420-0262