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Transcript
A Neuro-Control Approach for Flexible AC Transmission Systems
N. M. HANOON, B.P.KARTIK & O. M. AHTIWASH
Faculty of Engineering,
Multimedia University,
63100 Cyberjaya, Selangor
MALAYSIA
Abstract: - A neuro-control approach for flexible AC transmission systems (FACTS) based on radial basis
function neural network (RBFNN) is presented in this paper. The proposed scheme consists of a single neuron
network whose input is derived from the active or reactive power or voltage derivation at the power system bus,
where the FACTS device (in this case an unified power flow controller) is located. The performance and
usefulness of this approach is tested and evaluated using both single-machine infinite-bus and two-machine
power system subjected to various transient disturbances. It was found that the new intelligent controller for
FACTS exhibits a superior dynamic performance in compensation to the existing classical control schemes. Its
simple architecture reduces the computational overhead, thereby real-time implementation.
Key Words: - Neuro-control, radial basis function, FACTS, real and reactive power, and transient stability.
1 Introduction
Transient and dynamic stability are very important to
secure a smooth operation of power systems. FACTS
devices with a suitable strategy have the potential to
significantly improve the transient stability margin.
This allows increased utilization of existing network
closer to its thermal loading capacity, and thus
avoiding the need to construct new transmission
lines. Amongst the available FACTS devices, the
UPFC (Unified Power Flow Controller) is the most
versatile one and can be used to enhance system
stability. The UPFC is capable of both supplying and
absorbing real and reactive power and consists of
two AC/DC converters. One of the two converters is
connected in series with the transmission line
through a series transformer and the other in parallel
with the line through a shunt transformer. The DC
side of the two converters is connected through a
common capacitor which provides DC voltage for
the converter operation. Various control strategies to
control the series voltage magnitude and angle and
the shunt current magnitude have been presented in
the references [1-7]. The series converter voltage
pharos can be decomposed into in-phase and
quadrate components with respect to the
transmission line current. The in-phase and quadratevoltage component are more readily related to the
reactive and real power flows in the transmission
system. During short-circuit and transient conditions,
the decrease in real power can be arrested by
controlling the quadrate component of the series
converter voltage and hence the improvement in
transient stability. The series voltage in phase
component is either controlled by the reactive power
flow deviation or voltage deviation at the injected
bus where the UPFC is located.
The co-ordination of the real and reactive power
control schemes of the UPFC through an analytical
approach is difficult due to their interactions through
the DC link between the converters and also due to
the nonlinear nature of the problem. The PI regulator
used for the purpose has inadequacies of providing
robust control and transient stability over a wide
range of power system operating conditions
Use of ANNs (Artificial Neural Networks) for
plant identification and control is gaining interest [89]. In power systems, the use of these controllers is
increasing whereas any worthy publication is not
available for FACTS devices. A potential advantage
of the ANN is its ability to handle the nonlinear
mapping of the input-output space. The output of the
proposed controller is a neuron output which maybe
either the quadrate or the real voltage component of
the series inverter. The single neuron output will be a
function of the change either real power or change in
the bus-voltage or reactive power. This provides a
nonlinear FACTS controller, which can significantly
improve the transient performance of the power
system. A similar neuron controller is used for the
shunt current if both series and shunt converters are
controllers. The developed neuron controller (radial
basis function neuron network) for the FACTS is for
a single-machine infinite-bus and two- power system
subjected to a wide range of transient disturbances.
2
The proposed Model Structure
To study the new control strategy for the UPFC, both
single-machine infinite bus and two-machine system
are considered for transient simulations. The power
systems are shown in Fig.1. & Fig.2.
Bus1
Bus2
and,
UPFC.
G1
~
G2
~
~
Gen.
L1
F
L2

~ Esh
Figure 1 Single-machine
infinite-bus power system
Figure 2 two-machine
power system.
The synchronous generator is represented by a
rd
3 order machine model and the generator excitation
system has a simple automatic voltage regulator
(AVR). The series converter injected a variable
voltage source VC and the shunt converter is a
variable current is.
3
Neuro-controller for UPFC
It is well known that a multi-layer feed forward
neural network with back propagation (BP) training
algorithm is the most widely used ANN model for
nonlinear control of a power system. However, the
PB algorithm does not have a mechanism to detect
when the operating state of the power system falls in
a region with no training data. This produces s
serious drawback of the BP algorithm, as the
operating condition covers a wide range of system
and fault conditions. Recently researchers have
begun to examine the use of radial basis function
(RBF) network for nonlinear control of plants and
systems as they offer a simple topological structure
and give insight as to how learning proceeds in an
explicit
manner.
Further
for
real-time
implementation of a FACTS controller, a single
neuron RBF neuron network (RBFNN) will be
adequate.
Hidden layer
x
Fig.3, shows the structure of the RBFNN, where
the hidden layer comprises a single neuron refereed
to as the computing unit. In order to utilize a limited
knowledge of the power system dynamics to design
the RBFNN controller for the series converter
(control of voltage outputs Vsp and Vsq) a
reinforcement method of weight adaption in used in
this paper. Fig.4, shows the schematic diagram of the
proposed controller for Vsp and Vsq respectively (Z-1
in the shift operator). Vsp and Vsq are expressed as
Vsp  Vcd sin   Vq cos   Vcq sin  ,
Output layer
x
(x)
0
Figure 3 Single-neuron RBFNN structure
F(x)
  tan -1 icd icq 
Vcd , Vcq and icd , icq are the d-q axes component of
the injected series voltage and the line current ic.
In obtaining the control signal Vsq, the input to the
signal neuron RBF controller is the
real power deviation signal P and weight
adjustment is done in using the error surface p(k) as
 p (k )  C1 p P(k )  C 2 p P(k )  C3 pVsq (k  1) (1)
in the above equation
P(k )  Pref  P1 (k ), P1 (k )
is the real power flowing into transmission line at the
kth instant. The derivative term is
.
(2)
ΔP(k)is Δ P(k)  ΔP(k)-ΔP(k-1 )
The quadrate voltage component is used in equation
(1) as it influences the real power error.
In a similar way, the weight adjustment for the
single neuron RBF controller to obtain the signal Vsp
is done using the error surface p(k) as
.
 q  C1q Q(k )  C 2 q  Q(k )  C 3qVsp (k  1)
Q(k)  Q ref  Q1 (k )
and,
.
(3)
(4)
 Q(k )  Q(k )  Q(k  1)
Instead of reactive power deviation, the voltage
deviation at bus-1 can be taken as a control input.
Since an error surface is used to update the
parameters of the controller any network training is
not required for generating the control voltage
components Vsp and Vsq. Further the constants C1p,
C2p, C3p, etc. are to be chosen suitably for the best
performance of UPFC in stabilizing power system
oscillations.
In case the PI regulator is used in controlling Vsp
and Vsq, the equations are:
K iq 

Q,
Vsp   K pq 
P 

K ip 

P
Vsq   K pp 

P


Qref
+
(5)
4.1.1
Q
-
Z-1
-
C2q
+
+
+ +
C3q
C1
q
Z-1
RBFN
N
Pref
+
-
Vsp
Plant
P
Z-1
-
C2p
+
+ +
+
C3p
C1
p
Z-1
RBFN
N
4.1 Single-Machine Infinite-Bus Power
System
Vsq
Plant
Figure 4 RBFNN Controller
4 Simulation Results
The single-machine infinite-bus power system
shown in Fig.1, and two-machine power system in
Fig.2, are taken for digital simulation studies. The
UPFC control scheme consists of controlling voltage
components Vsp and Vsq by using real and reactive
power deviations or real power or voltage deviations.
The current of the shunt converter is obtained from
the power balance equations at every control instant.
The following large disturbance cases are considered
for evaluating the performance of these controllers:
Case 1: P-Q control (only series)
C1p= 0.15; C2p= 0.15; C3p= -0.05; C1q=0.01;
C2q=0.01; C3q= -1, Kpp=0.3; Kip=3; Kpp=0.1; Kiq=1
The synchronous generator is assumed to operate at
low power output condition (P=0.1 p.u, and Q=0.2
p.u.) and a 3-phase fault occurs near the infinite-bus.
The fault is cleared after 0.1 sec. Of its inception and
Fig. 5 shows the transient response of the system
with a conventional PI regulator for the UPFC and
the new single neuron RBF controller. From the
results it can be seen that the significant first swing
stability is achieved by using the new neural network
controller in comparison to the conventional PI
controller. The d.c. voltage excursions are also
rapidly stabilized using the new controller and this is
a very important criterion for successful operation of
series and shunt voltage inverters.
The operating level of the generator is then
changed to a high power case with P = 1.4 p.u., and
Q = 0.6 p.u. and a 3-phase fault is initiated near the
infinite-bus and cleared after 0.1 second of its
inception. Fig. 6 shows transient response of the
power system for this operating condition with either
PI or the RBF neural controller. From the response,
it can be ascertained that the electromechanical are
damped very quickly in case of the new controller
proving its superiority over the conventional PI
controllers used for the UPFC control.
4.1.2
Case 2: Both series and shunt control
C1p=0.21; C2p=0.21; C3p= -0.03; C1i=0.01; C2i=0.01,
C3i= -1
In this case the effectiveness of both series and
shunt converter controls of the UPFC are tested to
damp electromechanical oscillations of a singlemachine infinite-bus power system subjected to 3phase fault. The power loading of the generator is
kept at P = 1.4 p.u. and Q = 0.6 p.u. and the real
power deviation is used to control Vsq (Vsp is not
controlled) for the series converter. The shunt
converter on the other hand is used to control the
shunt current IQ from the UPFC-bus voltage
deviation. The error surface used
for this control is
.
 i  C1i V (k )  C2i  V (k )  C3i iQ (k  1).
Fig. 8 shows the transient response for the 3phase fault case from which it can be seen that the
performance is found to be excellent in the case of
control of both the converters of UPFC. The first
swing excursions and settling time are improved
using the control on both the converters.
than one neuron has also been used for providing
control voltages, however, the improvement in
transient stability performance has been minimal in
comparison to the single neuron case. The simple
architecture of the controller has the potentiality of
implementation on a DSP chip in real-time
environment.
4.2 Two-Machine Power System
The 2-machine power system shown in Fig. 2 is used
to study the interaction between the generators with
the UPFC located on one of the lines of a parallel
transmission system. The real and reactive power
injections at bus 1 are 0.9082 p.u. and 0.4186 p.u.
and at bus 2 are 0.3634 p.u. and 0.3435 p.u.
respectively. A 3-phase fault is initiated at the point
F and cleared in 0.1 sec.
For the UPFC control, a single-neuron RBF
controller is used as in the case of single-machine
infinite-bus. A modulating signal based on either the
speed deviation between the two generators or the
UPFC bus angle  is used to improve the damping.
In that case the signal P (change in real power in
the transmission line after UPFC from the reference)
is to be replaced by P + K. (1 - 2)
Fig. 9 shows the performance of the 2-machine
power system in which the RBFNN controller is
found to provide significant improvement in
damping inter area oscillations in comparison to the
conventional PI regulators.
The first swing
overshoot is significantly reduced in case of the new
UPFC controller.
5 Conclusions
A new neuro-controller system based Radial Basis
Function Controller (RBFNN) for the UPFC control
in a single machine-infinite-bus and two-machine
power system is presented. The single neuron
controller uses either the real and reactive power
deviations or the real power and voltage deviations at
the UPFC injection bus to provide the magnitude and
phase angle of the variable voltage source for the
series converter. The shunt converter current can be
similarly controlled using a RBFNN and the UPFC
with both series and shunt controls provides the best
transient stability performance of the power system.
The parameters of the single neuron RBF controller
are adjusted using an extended Kalman filter. More
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