Research Article
Neural Network Generalized Predictive Control of the Unified Power Flow Controller
Laboratory LAAS, BP 1742 El M�Naouer-Oran-Algeria
Abdelkader Chaker
Not Available
Ali Feliachi
Not Available
The concept of Flexible Alternating Current Transmission Systems (FACTS) has recently gained much attention in the electric industry community and has been an area of interest and technology development during these last years.
An important FACTS device is the UPFC, which can control all three principal parameters (voltage, impedance and phase angle) that determine the power flow of a transmission line. A UPFC consists of two forced-commutated voltage inverters which are connected through a common dc link provided by a storage capacitor as shown in Fig. 1, (Gyugyi, 1992; Edris et al., 1995; Tuttas, 1999). One converter is shunt-connected and the other is connected in series with the transmission line.
Each inverter can independently generate reactive power at its own ac terminal. The dc link allows an active power exchange between both electronic circuits. Inverter 2 operates as a series compensator and injects an ac voltage Vc with variable amplitude and phase angle at power system frequency.
Fig. 1: | Basic circuit configuration of a UPFC |
The active and reactive power flow of the transmission line can be controlled. Inverter 1 provides the real power demand of inverter 2, regulates the capacitor voltage Vdc and provides reactive power.
Sen and Keri (2003) compared field results of the Inez UPFC project to an EMTP simulation. There are no details on the design of the controllers utilized, or the presence of any disturbances or uncertainties. Zhengyu et al. (2000) have discussed four principal control strategies for UPFC series element main control and their impacts on system stability. Ma (2003) demonstrated the feasibility of using a centralized optimal control scheme using an evolutionary programming algorithm. Sukumar (2006) has used a Radial Basis Function neural Network (RBFNN) as a control scheme for the UPFC to improve the transient stability performance of a multimachine power system. Schoder et al. (2000) have proposed a Fuzzy damping controller. In last years, the application of neural networks (NNs) for adaptive control has been a subject of extensive study (Xie et al., 2006; Chau et al., 2005, 2007; Lin et al., 2006).
The method proposed in this study is novel. It combines two different approaches, namely intelligent techniques that seem to work but do not provide a formal proof and analytical techniques that provide proofs under some restricted conditions and for simple systems. These limitations have been a central driving force behind the creation of hybrid systems (Henriques and Dourado, 1999) where two or more techniques are combined in a manner that overcomes the limitations of individual techniques. So, the hybrid systems are important when considering the control of the unified power flow through a transmission line using a PWM-based UPFC, because, it is a complex application. The present study intends to be a contribution in this direction. It considers the application of a Generalized Predictive Controller (GPC), with neural networks in an electric power system.
MODELLING OF A UPFC SYSTEM
The series and shunt inverters are represented by voltage sources Vc and Vp, respectively. The transmission line is modelled as a series combination of resistance, R and inductance, L, whereas the parameters Rp and Lp represent the resistance and leakage inductance of shunt transformer, respectively. The nonlinearities caused by the switching of the semiconductor devices and transformer saturation are neglected in the equivalent circuit shown in Fig. 2. It is assumed that the transmission system is symmetrical.
Fig. 2: | Equivalent circuit of UPFC system |
After the d-q transformation, a mathematical model of the transmission system including the series part of UPFC is given in (1) and (2) where isd, isq are the transmission line currents (Yu et al., 1996).
(1) |
(2) |
Similarly, the mathematical model of shunt connection of the UPFC system can be determined from Fig. 2 and is given in Eq. 3 and 4 where ipd, ipq are the shunt currents.
(3) |
(4) |
Using the power balance principle and neglecting the inverter losses, the dc bus voltage can be expressed as (5) .
(5) |
The dc link capacitor in Fig. 1 must be selected to be large enough to minimize the dc voltage ripple. Having derived the real and reactive power references P* and Q*, the following Eq. 6 can be used to determine the corresponding direct and quadrature axes reference currents at the sending and receiving ends of the two bus power system
(6) |
where the * superscript defines the reference quantities.
To control the UPFC system, ordinary simple PI-Decoupling (PI-D) controller for UPFC is good enough (Fig. 3).
Unfortunately, The PI-control fails to solve problems where it is not possible to obtain sufficiently precise processes and disturbances models.
Fig. 3: | Current step response of PI with decoupling |
CONTROL DESIGN
This section describes one of the most popular predictive control algorithms: Generalized Predictive Control (GPC) (Peri and Petrori, 1999).
The basic idea of GPC is to calculate a sequence of future control signals in such a way that it minimizes a multistage cost function defined over a prediction horizon (Fig. 4).
A CARIMA model is given by:
(7) |
with
(8) |
A, B and C are the polynomials in the backward shift operator z-1. For simplicity, in the Fig. 5 the C polynomial is chosen to be 1.
The Generalized Predictive Control (GPC) algorithm consists of applying a control sequence that minimizes a multistage cost function of the form:
(9) |
y(t+j) is an optimum j-step ahead prediction of the system output on data up to time t, where N1 ≤ j ≤ N2 (j = 1). There is no reason for choosing it smaller because first predictions depend upon past control inputs only and thus cannot be influenced. On the other hand it is not recommended to choose it bigger since this can lead to quit unpredictable results.
Fig. 4: | The principle of predictive control |
Fig. 5: | Representation of the CARIMA model |
N1 is the minimum prediction horizon, N2 is the maximum prediction horizon and Nu is the control horizon, λ is the weighting sequence and w(t + j) is the future reference trajectory.
The objective of predictive control is to compute the future control sequence u(t), u(t+1), in such a way that the future plant output y( t+j ) is driven close to w(t + j). This is accomplished by minimizing J (Nu, N, λ).
(10) |
The following set of j ahead optimal predictions can be written as:
(11) |
(12) |
Notice that only the first element of u is applied and the procedure is repeated at the next sampling time. The algorithm to obtain the control law described in the previous section will be used on the neural networks GPC (NNGPC). Obtaining numerical results for the parameter values a1 = -0.9231, b1 = 9.6095.10-4 and b2 = 2.1617.10-7, the horizons being: N1 = 1; N2 = 2; Nu = 1 and λ = 10-9.
The control signal is a function of the desired reference and of past inputs and outputs and is given by:
(13) |
(14) |
The training of the network consists in modifying the weights and bias in order to minimize the quadratic errors at the output by using the Windrow-Hoff law (Nguyen and Widrow, 1990). The reason for this specification choice of network is justified by the fact that in general recurrent networks are considered more suitable for modelling dynamical systems. With each step of training, the error at the output is calculated as the difference between the required target y and the estimate output y of the network. The quantity to be minimized, with each step of training k, is the variance of the error at the output of the networks. Equation 13 can be expressed as:
(15) |
where,
(16) |
(17) |
P, w et w 0 design, respectively, the input vector, the weight and the bias.
CONTROL PERFORMANCE
Simulations are performed on a Pentium PC under MATLAB/Simulink. The transmission line and the UPFC (series and shunt inverters) system are implemented with Simulink blocks.
The neural network generilized predictive controller (NNGPC) are implemented as a C-coded S-functions as shown in Fig. 7.
For each of the control systems, a simulation model is created which makes use of PWM-inverters as interface to the power system.
The parameters of the simulation model are selected to be equal to the parameters of a laboratory UPFC model (Yu et al., 1996), which are listed in Table 1.
Fig. 6: | Simulation result of step response of the series UPFC system |
Fig. 7: | Error prediction (GPC) |
Table 1: | The parameters of the laboratory UPFC model |
The PWM switching frequency is selected to be 750 Hz. The control system described above was derived by assuming that the series and shunt inverters are ideal controllable voltage sources.
Simulation results show the behaviour of the closed- loop system.
The Fig. 6 shows the step response of the UPFC system. Initially the system is in steady state with a real power of the receiving end of -1000 W and reactive power of -500 VA.
Fig. 8: | Real power response of UPFC variables |
Fig. 9: | Reactive power response of UPFC variables |
At a time 1 sec, the reactive power reference Q* is changed to 500 VA while the real power reference P* is kept constant at -1000 W until t = 0.5 sec where the real power reference P* is changed to 1000 W.
The control system has a fast dynamical response. The error prediction is equal to 0.0002 Fig. 7.
One major advantage of NNGPC is its robustness against parameter variations. This is demonstrated by change the UPFC line impedance by±25% Fig. 8 and 9.
A repeating sequence is added to the system UPFC as a perturbation. The time of this perturbation is equal to 0.02 sec with amplitude 2.
As can be seen, the controller rejected the external perturbation quite rapidly Fig. 10 a and b.
The PI-D control for UPFC has been used successfully with precise models and no disturbances. In cases of model uncertainties and disturbances, the PI-control fails as shown in Fig. 11; hence, the proposed controller is designed to handle these conditions.
The objective is to keep the sending bus voltage at its pre-specified value and to keep the reactive power constant-0.15 p.u while tracking the step changes in the real power: at time 0.2 sec real power flow reference is changed from 1.6 -1.8 p.u, at time 0.35 sec reference is set to 1.3 pu and at time 0.8 sec system returns to the initial operating condition as shown in Fig. 12.
Fig. 10: | System response in the presence of external disturbance |
Fig. 11: | PI-D power responses at - 15% XL |
A step at the reactive power affects slightly the measured real power in Fig. 12. It can be seen that the NNGPC controller acts correctly with a quite perfect decoupling between real power, reactive power and dc-link voltage.
It is natural that disturbances at both voltage and current affect the power flow, as seen in Fig. 12, despite of keeping the power reference values constant.
However, phase control voltage and phase currents responses (Fig. 13 and 14) performs well since it is able to maintain the outputs P, Q and Vdc at the desired values.
Fig. 12: | Step change in receiving end active and reactive power |
Fig. 13: | Phase control voltage response |
Fig. 14: | Phase currents response |
The performance of the UPFC under classical and hybrid method control was investigated. A UPFC located at the middle of the transmission line was modeled realistically by transforming its variables into a rotating synchronous reference frame. The developed control concept shows an excellent dynamic behaviour and behaves robust to parameter changes of the power system. Hybrid control systems may contribute to the establishment of an unifying control theory merging traditional analytic-algebraic methods with artificial intelligent tools. It is believed that neural networks can be effectively used for control design of non-linear systems and they must be seen as an extension, rather than replacement, of linear identifiers and controllers that may be already working.