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Article

Impact of a Redox Flow Battery on the Frequency Stability of a Five-Area System Integrated with Renewable Sources

1
Department of Electrical Engineering, Siksha ‘O’ Anusandhan (Deemed to be University), Bhubaneswar 751024, India
2
Department of Electrical Engineering, Graphic Era (Deemed to be University), Dehradun 248002, India
3
Department of Electrical Engineering, Graphic Era Hill University, Dehradun 248002, India
4
Applied Science Research Center, Applied Science Private University, Amman 11937, Jordan
5
ENET Centre, VSB—Technical University of Ostrava, 70800 Ostrava, Czech Republic
*
Authors to whom correspondence should be addressed.
Energies 2023, 16(14), 5540; https://doi.org/10.3390/en16145540
Submission received: 12 May 2023 / Revised: 4 July 2023 / Accepted: 19 July 2023 / Published: 21 July 2023

Abstract

:
Energy storage devices are imperative to damp out the oscillations caused by sudden magnified disturbances occurring in a power system. The presence of a small rating of storage device in each area can alleviate the system oscillations effectively. Therefore, in this work, redox flow batteries (RFBs) have been integrated in each area of a five-area interconnected system for effective load frequency control (LFC). The RFB pumps up the active power into the system quickly to meet the short-time overload; in turn, the efficacy of the LFC in the system is boosted. Despite the presence of the RFB in the power system, a secondary controller is necessary to quench the deviation of frequency and tie-line power caused by the power mismatch between demand and generation. In this perspective, a cascade controller incorporated with a fractional operator (FO) has been endorsed and designed through a nascent selfish herd optimizer technique to evaluate the transient response of the system. Besides this, the unprecedented performance of fractional-order cascade controllers has been compared with one-stage classical controllers with and without a fractional operator. Further, the robustness of the proposed controller has been inspected through subjecting it to a random load in the presence/absence of an RFB and parametric variation. Finally, the proposed model has been simulated in the OPAL-RT-4510 platform to validate the performance of the proposed controller that has produced in the MATLAB environment.

1. Introduction

An interconnected upgraded power system comprises many control areas for the exchange of scheduled power through interconnected tie-lines. Due to the incessant rise and abrupt power demand of a bulky, complex and nonlinearity-containing electric network, it is not quite easy to adhere the system frequency and tie-line power to a set value. If the frequency excursion lies under an acceptable tolerance value [1], then the system can fulfil the consumer’s need through serving secure, reliable and quality power. Under this condition, the synchronization between the interconnected areas remains unaltered. If the deviation in frequency is sustained for a longer period and/or with an unwanted magnitude, then the system performance gets worse, culminating in a blackout. Besides this, the magnetizing current of the transformer and induction machine increases sharply. The fluctuation in frequency also badly hampers timing devices. So, for the smooth and stable operation of a power system, the mismatch between power demand and generation must be narrowed [1,2]. The aforesaid problem is continuously traced using an automatic generation control (AGC) system. During normal and abnormal conditions, AGC damps out the oscillation contents present in frequency and tie-line power deviation signals, and, in turn, dynamic performance and stability are improved. The control action of AGC contributes in two stages. In the first action, AGC controls the frequency deviation with the help of the governor and turbine, due to which a steady-state error may remain. But via the complementary control action, it brings the deviation of frequency to zero with the help of different employed controllers. So, researchers are paying more attention to the design of an apposite controller which plays a key role in bringing the area control error to zero.
The presence of unavoidable non-linearities in the system is a very critical factor due to which the power and frequency signals oscillate. In this regard, the effect of the dead band [3,4] on system dynamics has been explained explicitly for different interconnected electrical networks. Another nonlinear quantity, namely, generation rate constraint (GRC), has been included in the study of a three unequal area thermal system as analysed by Nanda et al. [5]. Similarly, both GRC and GDB have been integrated to investigate the AGC issue in a two-area thermal system by Gozde et al. [6]. Morsali et al. [7] proposed an AGC system considering both GDB and GRC nonlinearity and also analysed their impact on stability. Saikia et al. [8] carried out a study of AGC in a five equal area system having thermal units with GRC. Jagatheesan et al. [9] studied AGC for a two, three and four equal area power system. Bhatt et al. [10] studied an AGC system keeping three kinds of diversified sources such as hydro, thermal and diesel. So, the problem introduced by nonlinearities to the system can be mitigated using a suitable and well-designed controller.
For the last few decades, the PID controller has carved a well-established space in modern industries profusely due to its easy implementation and simple structure. A minute review of the LFC problem has been presented by Pandey et al. [11]. Elgerd and Fosha [12] endowed an integral (I) controller in a multi-area system to stabilize the frequency. Nayak et al. [13] proposed a comparative study of AGC in a multi-area system using PID and its variants using fuzzy logic. An optimal PID controller has been designed for an LFC study in a multi-area system, which shows dominant performance over other controllers as described by Guha et al. [14]. Nanda et al. [5] worked on PID and its verities in an AGC issue for a hydro-thermal multi-area energy system. Recently, Gouran-Orimi et al. [15] addressed the effectiveness of a PID controller to tackle the LFC problem in a system having renewable sources. Here, the sturdiness of this controller has been analysed with respect to a wide variation of uncertainties, which cannot be guaranteed. To improve the performance of an electric power system, Sahu et al. [16] proposed a two-degrees-of-freedom PID controller and also cited the performance in comparison to various kinds of PID controllers. But the curious minds of researchers never stall at only PID controllers. There are also non-integer or fractional order controllers; the combination of PID controllers arrayed in two stages, named cascade controllers; and many more. In this perspective, Alomoush [17] elaborated the superiority of non-integer-based controllers over integer-based controllers. Morsali et al. [18] capitalized on an FO-PID controller for AGC in a multisource multi-area system. Zamani et al. [19] designed an FO-PID controller to study the LFC in a two-area system. Besides this, a two-stage-based controller helps researchers to bring the area control error to zero in such a way that the dynamic response of the system becomes faster and the steady-state error gets narrower. In this respect, Annamraju et al. [20] employed a PD-PI controller coordinated with a fractional operator for AGC in a micro-grid. Jena et al. [21] proposed an FO-cascade controller with a derivative filter in a three-area system under deregulated conditions. Sivalingam et al. [22] used a PDN plus (1 + PI) cascade controller for an AGC study in two-area and three-area systems. Saha et al. [23] studied the performance of the AGC of a power system in the presence of an energy-storing element, applying two degrees of freedom to support the PIDN-FOI two-stage controller. Arya [24] studied the AGC of a multi-area system employing a multistage controller aided with fuzzy logic named the FPIDF-(1 + PI) controller. A 2DOF-based PI-FOPDN cascade controller was used by Prakash et al. [25] to investigate AGC issues in the restructured power system. Recently, Pahadasingh et al. [26] illustrated that the cascade controller has great potential to regulate the frequency in a system integrated with an electric vehicle. Similarly, Mao et al. [27] described the impact of energy storing components on a system in the coordination of cascade controllers. To the best of our knowledge, FOPIDN-FOPDN is one of the novel controllers yet to be designed for the study of LFC in a five-area system. This curiosity compels the authors to use a cascade controller for LFC issues.
Despite a pertinent and effective controller, the oscillations in the system are a critical issue during large disturbances that occurs in a non-linear and intricate system. To alleviate these oscillations, fast active power injection is necessary. In this perspective, an RFB is chosen as a very crucial and influential energy source to mitigate these oscillations, through which the quality and reliability of the power increase. Generally, conventional storage systems like lithium-ion battery systems require high maintenance, lack safety features, face material unavailability, are toxic to the environment are and non-recyclable, which encourages researchers to find a competent alternative. For this, the RFB is the most suitable storage system, as discussed in [28], to use in a large scale, which has attracted researchers immensely. The key features of the RFB are illustrated below:
  • Storage capacity, both in power and energy, is very high.
  • Unlike other storage devices, power and energy are independent entities in the RFB system. Here, energy capacity depends on the electrolyte reservoir and power capacity depends on the stack size.
  • The heat produced by redox reactions is dissipated by the electrolytes, which is a major advantage over solid-state storages.
  • The manufacturing process is modular, which is quite different from solid-state batteries like those manufactured in the form of cell.
  • The life cycle is long and efficiency is high.
In spite of some disadvantages, like the addition of complexity to the system, low energy density and the difficult handling of corrosives in the electrodes, the RFB is more valuable to employ in a power system to support the stability of the power system. In this respect, Arya [29] has illustrated the contribution of RFBs in a power system. In this paper, it has been cited that the RFB has curtailed oscillations and, also, the LFC issue has been boosted. Similar kind of work has been carried out by Ramesh et al. [30] to improve the dynamic response of a deregulated system using an RFB device. Besides this, some recent works [31,32,33,34,35] have eloquently illustrated the impact and effectiveness of RFB in different systems under different circumstances.
To achieve a better response of a system, a well-designed controller is necessary. The gains should be enumerated tightly, through which the dynamic response is faster and ACE decreases to zero. So, a suitable computational technique is essential. It has been observed that not all kinds of computational algorithms are suitable for the optimization of a particular problem as stated by Wolpert et al. [36]. So, different authors are proposing and applying different algorithms to different types of problems. Abubakr et al. [37] used Jaya optimization to study LFC in a micro-grid under a variable-time-delay condition. In this work, this optimization is modified via the balloon effect modulation technique. Bhatt et al. [10] carried out the study of AGC in a multi-unit system using the GA and particle swarm optimization techniques. The firefly algorithm has been implemented for the LFC of a multi-area system by Sarma et al. [38]. A fuzzy-PID controller has been designed in [39] using a teaching–learning-based computational algorithm employed in a multi-area system for automatic generation control. Pradhan et al. [40] proposed modified Jaya optimization to investigate LFC in an integrated wind energy system. So, in this work, a selfish herd optimizer (SHO) [41], a bio-inspired algorithm, has been proposed.
Through applying the computational technique, the dynamic and transient response of a system improves substantially. To establish the improvement of undershoot, overshoot and settling time, the time response is imposed on a cost function. In this perspective, different papers [42,43,44,45] have discussed the optimum solution evaluation through different cost functions. The integral square error (ISE) index cost function has been applied in [42] to minimize the error of the system. Similarly, Abdel-Magid et al. [43] used the objective function ISE and integral time square error (ITSE) functions to enhance the stability of the proposed system with their advantages. Here, it has been cited that the ITSE index-based performance side-lines the ISE based performance. Gozde et al. [44] proposed integral absolute error (IAE), ITSE, ISE and integral time absolute error (ITAE) indexed functions to optimize PI and PD controllers using an artificial bee colony in an interconnected reheat thermal system for automatic generation control. Shabani et al. [45] developed an optimal PID controller optimized using an ICA algorithm subjecting ITAE, IAE and ISE cost functions to the LFC of an interconnected power system, and the ITAE-indexed function superseded the rest of the cost functions. In the purview of error minimization, ITAE cost function has been endorsed to enumerate the gains of the proposed controllers.
From the literature, it is reported that in a five-area system, all the three nonlinearities, i.e., GRC, GDB and boiler dynamics, have not addressed. Secondly, few papers have addressed the impact of a two-stage controller coordinated using fractional operators. So, more exploration of fractional-based cascade controllers is necessary. Regarding these aspects, in this work, the AGC of a five-area test system containing diversified sources and subjected to all sorts of non-linearities has been addressed.
The main contributions of this paper are as follows:
  • A five-area test model having two sources in each area is modelled incorporating GRC, GDB and boiler dynamics to make the interconnected power system more practical.
  • A two-stage non-integer controller, FOPIDN-FOPDN, is designed by means of conglomerating a derivative filter which neutralizes the distorted signals generated by the system. Additionally, the performance of this controller is compared with PID and FOPID controllers.
  • A nascent optimization algorithm selfish herd optimisation (SHO) is applied to tune the gain parameters of the aforementioned controllers. With this, the potential of the SHO algorithm and its performance have been compared with PSO through some benchmark functions.
  • The performance of the test model under RFB has been evaluated and compared with another BESS system.
  • The robustness of the designed controller is analysed via imposing different load conditions with/without an RFB, and finally, a sensitivity analysis has been presented through varying some crucial system parameters.
  • The feasibility of the proposed controller is examined through simulating through a real-time simulator (OPAL-RT-4510).
The remaining sections of this work are kept as follows. Section 2 describes the linearized model of the five equal area interconnected power system. Besides this, all the nonlinear models have been presented in this section. In Section 3, the proposed controller, along with its counterpart controllers, is described. A formulation of the problem is given in Section 4. The SHO algorithm is emulated in Section 5. The performance of SHO over PSO during benchmark functions is presented in Section 6. Simulation results, transient data, controller gain values and their analysis are presented in Section 7. The conclusion and futuristic development of this work are given in Section 8.

2. Linearized Model of the Investigated System

Here, a five-area multi-source test model is considered for the study of AGC, and its linearized model is portrayed in Figure 1. The first area comprises two conventional units such as a thermal unit and a hydro unit. A hydro unit along with a wind farm is taken in area-2. The third area is integrated with a thermal unit and a diesel unit. A thermal unit combined with a gas unit is injected into the fourth area. The fifth area carries a thermal unit along with a nuclear unit. In this work, non-linearities such as GRC and GDB are endorsed in thermal and hydro units to make the power system more practical. Besides this, boiler dynamics are also included in the thermal unit in the concerned areas. The linearised models and the required parameters of the hydro-thermal unit are referred from [39]. The modelling of the gas unit, GDB and GRC used in hydro and reheat thermal units is inherited from [7]. The boiler dynamics in the thermal unit are taken from [3] and are presented in Figure 2a. The linearized model of a wind farm and diesel unit is adopted from [14]. The modelling of the nuclear unit in the Laplace domain and its required parameters are taken from [46]. The transfer function model of the nuclear unit is depicted in Appendix A, and its simplified expression is presented in the nuclear block, as shown in Figure 1.

2.1. Redox Flow Battery (RFB)

The RFB is a very promising storage device to deliver active power into the network under highly perturbed conditions. Due to some attractive features like high efficiency, flexile capacity increase, resistance to deterioration from frequent charging/discharging, more economical properties, etc., it has been used abundantly in recent years. An RFB can be designed to produce energy from some KW to a few MW [29]. Also, it is free from self-discharge as the electrolytes are kept in separate containers. In practice, the RFB is a non-linear device, but from the simplification angle, it is linearised, which is provided in Figure 1. The parameters of this storage device have been taken from [29,30] and are presented in Appendix A.

2.2. Generation Rate Constraint (GRC)

Power generation, which follows a specified maximum rate, cannot be changed suddenly. If this constraint is not considered, then the system introduces momentary disturbances which increase the instability of the system. Here, the GRC is considered for both thermal and hydro units. The maximum rate of valve opening and closing speed is restricted by the limiter, such as for raising/lowering the power generation. In a hydro unit, for generation raising/lowering, a GRC of 270%/min and −360%/min as in [14] is considered, respectively. Like hydro units, in thermal units, a ± 3%/min GRC rate as in [14] is considered. The GRC model is shown in Figure 2b,c.

2.3. Boiler Dynamics

Boiler dynamics are included in the thermal unit to study the effect produced by the flow of fuel and steam inside the boiler under pressure. In this work, a drum-type boiler is taken as reported in [3]. The drum is used to separate the steam flow from the circulated water and feeds to the super-heater. A sensor senses the changes in steam flow and deviation in pressure, and the turbine control valve and boiler controller take the corresponding action. A block diagram of boiler dynamics configuration is shown in Figure 2a.

2.4. Governor Dead Band (GDB)

The GDB is a band (range/magnitude) of speed change irrespective of valve position change. It is articulated by means of a descriptive function incurring sustained oscillation. The natural frequency of this sustained oscillation is f 0 = 0.5   Hz as illustrated by Tripathy et al. [3]. The described function has been explained below.
y o = F ( z , z )
z = M sin ( ω 0 · t )
where M and ω 0 = 2 π f 0 are magnitude and natural frequency (rad/s), respectively. The Fourier expansion is given as follows:
F ( z , z ) = F 0 + N 1 z + N 2 ω 0 z +
Here, F 0 = 0 because the backlash is symmetrical about the origin. Restricting up to the first order, Equation (3) is approximated as given in Equation (4).
F ( z , z ) = N 1 z + N 2 ω 0 z   = N 1 + N 2 ω 0 d d t z = D B z
where DB stands for the dead band. The following parameters are chosen as prescribed in [3]: b a c k l a s h = 0.05 % , N 1 = 0.8 and N 2 = 0.2 .

3. Control Strategies Adopted for the Study

3.1. PID Controller

The classical PID controller is an omnipresent controller which is very simple in structure, reliable to implement and popularly stands at its own niche. Despite the advent of new technologies, it is still used profusely in modern industries. The performance of the PID controller is far better than its varieties, PI and I. The PID controller is shown in Figure 3a, and its expression is given in Equation (5).
G ( s ) = k p x + k i x s + k d x s
x stands for the number of controllers.
Figure 3. (a) PID controller, (b) working region of PID and FOPID and (c) FOPID controller.
Figure 3. (a) PID controller, (b) working region of PID and FOPID and (c) FOPID controller.
Energies 16 05540 g003

3.2. Fractional Order Controller

The non-integer calculus concept rose by L’Hospital for n = 0.5 to Leib-niz, created a space for the next generation to evolve FO-calculus. A maiden attempt has been taken by Podlubny [46] to implement a P I σ D ζ controller exploring a non-integer order integrator and differentiator. Though it has five parameters to be tuned, due to non-integer order integro-differentiation accompanied by integer order gains, it is quite flexible for ascertaining spectacular performance with these gains. The non-integer calculus is provided in Equation (6).
a D t q = d q d t q ; f o r , q > 0 1 ; f o r , q = 0 a t ( d τ ) q ; f o r , q < 0
In Caputo form, i.e., when Equation (6) is applied to a function, then Equation (7) is formed.
a D t q = 1 Γ ( m q ) a t f m ( τ ) ( t τ ) ( q + 1 m ) · d τ ;     ( m 1 ) < q < m d m d t m f ( t ) ;     q = m
where Γ is a Gamma function, ‘a’ and ‘t’ are the limits of the function, ‘q’ is the order of the calculus and m > q . With the initial condition equal to zero, the Laplace transformation of non-integer derivatives and integration are provided in Equations (8) and (9).
L 0 D t q f ( t ) = s q F ( s ) [ 0 D t q 1   f ( t ) ] t = 0
L 0 D t q f ( t ) = s q F ( s )
The solution of the fractional order function is carried out via a numerical approximation [47], which is given in Equation (10).
s q = K n = 1 N 1 + s / ω z , n 1 + s / ω p , n : q > 0
The defined function in Equation (10), having gain of K, has N number of poles and zeros lying in a frequency band of ω l ω h . N value is chosen to make the fractional order function solution less complex with subsiding ripple contents in the gain and phase of the solution. The corner frequencies (poles/zeroes) of the function are given as follows:
ω z , n = ω l · n
ω p , n = ω z , n · ε
ω z , n + 1 = ω p , n · η
η = ω n ω l ( 1 q ) / N
ε = ω h ω l q / N
It is important to notice that Equation (10) becomes rational for q > 1 . Under this condition, the Oustaloup approximation [47] does not fit well. So, a complex frequency with power q is decomposed as:
s q = s n s σ
where n z and q = n + σ . Additionally, s σ is approximated, keeping the corner frequencies in between 0.01 rad/s and 100 rad/s, as demonstrated in [48].
The area under the dashed line in Figure 3b is meant for the FO calculus and the corner points stand for the integer calculus. The additive features of FO in comparison to the integer one ease the stability of linear/nonlinear systems adequately. In the P I σ D ζ controller, σ and ζ are the FO parameters, and its control signal is given in Equation (17).
u ( t ) = k p x · e ( t ) + k i x · D t σ ( e ( t ) ) + k d x · D t ζ ( e ( t ) )
where x = controllers (1, 2, …, 5) and e ( t ) is the error signal.
From Figure 3c, the transfer function of the controller is given in Equation (18).
G ( s ) = k p x + k i x s σ x + k d x · s ζ x

3.3. Cascade Controller

Due to the moderate performance of the PID controller employed in a higher-order system with nonlinearities, two-stage PID controllers have been evolved to get rid of the mentioned problem. So, in this work, PIDN and PDN controllers incorporating non-integer calculus have been cascaded to form a FOPIDN-FOPDN controller. The control structure is portrayed in Figure 4.
The integer-based cascade controller modelling is expressed as given below. The transfer functions for P I D N and P D N control structures are
G 1 ( s ) = k p x + k i x s + k d x · s N N + s and
G 2 ( s ) = k p x + k d x · s N N + s , respectively.
So, the overall transfer function for the P I D N P D N controller is formulated in Equation (19).
G ( s ) = G 1 ( s ) G 2 ( s ) = k p x + k i x s + k d x · s N N + s k p x + k d x · s N N + s
From Figure 4, the transfer functions of P I σ D ζ N and P D ζ N are written as
G 1 ( s ) = k p x + k i x · s σ + k d x · s ς N N + s ς and
G 2 ( s ) = k p x + k d x · s ς N N + s ς , respectively.
The overall transfer function is given below:
G ( s ) = G 1 ( s ) G 2 ( s ) = k p x + k i x · s σ + k d x · s ς N N + s ς k p x + k d x · s ς N N + s ς

4. Mathematical Problem Formulation

The presided five area interconnected system comprises six distinct diversified sources as depicted in Figure 1. The system is investigated through imposing three varieties of controllers such as PID, FOPID and FOPIDN-FOPDN controllers and employing six controllers, one for each type of generating unit. The gains of these controllers are calculated optimally using an emerging SHO soft-computing technique. A step load perturbation of 1% is imposed in the first area to examine the excursion of frequency and tie-line power of the proposed system. To achieve better control through minimizing the area control error, a time domain integral performance is applied. In this paper, an ITAE-indexed cost function is chosen to find the optimal gains of the proposed controllers. The fitness function ‘J’ is given below.
J cos t = 0 t Δ f 1 + Δ f 2 + Δ f 3 + Δ f 4 + Δ f 5 + Δ P t i e 1 , 2 + Δ P t i e 2 , 3 + Δ P t i e 3 , 4 + Δ P t i e 4 , 5 + Δ P t i e 5 , 1 t d t
And the constraints for the minimization of the cost function ( J cos t ) are given below.
k p x , min k p x k p x , max k i x , min k i x k i x , max k d x , min k d l k d x , max , σ x , min σ x σ x , max , ζ x , min ζ x ζ x , max , N x , min N x N x , max
where k P I D , x ( min ) and k P I D , x ( max ) are between 0 and 5, σ F O P I D , x ( min ) and σ F O P I D , x ( max ) are in the range (0, 1), ζ F O P I D , x ( min ) and ζ F O P I D , x ( max ) are in the interval of (0, 1) and the derivative filter coefficients are in between 20 and 200.

5. Selfish Herd Optimizer

Dating back to 1971, Hamilton proposed a bio-inspired theory of the selfish herd, which was further developed into an optimization technique by Fausto et al. [40] named SHO. This model projects the gregarious conduct of organisms to accumulate benefits mutually among themselves. From this perspective, it can be conceptualized that whenever a predator attacks, everyone in the herd tries not to fall into predation through seeking to be in a safe shield. Also, they never intentionally cause the other organisms to fall in danger. So, the risk of predation is greater at the periphery and less at the centre. The strongest organism occupies the centre position and the weaker are laid at the periphery. This phenomenon is articulated in the SHO program as described in different steps below.

5.1. Initialization Phase

The population count (N), iteration count (itermax), lower limit x m l o w and upper limit x m h i g h are set before the initiation of this phase. A set of populations of animals A = a 1 , a 2 , a N are initialized randomly within the specified limits using Equation (22).
a l , m 0 = x m l o w + r a n d 0 , 1 · x m h i g h x m l o w
where l = (1, 2, … N) and m = (1, 2 …, n).
The herd is separated into prey ( N h ) and predator ( N p ) using the following relations:
N h = f l o o r N . r a n d 0.7 , 0.9 N p = N N h
The survival value of each animal is determined as follows:
S V a l = f a l f B f B f W
where f B and f W are evaluated as:
f B = min m = 0 , 1 k min l = 1 , 2 N f a l m f W = max m = 0 , 1 k max l = 1 , 2 N f a l m

5.2. Structurization Phase

The leader ( h L ) has minimum survival value (SV), and the organisms with a greater S V than the leader are the nearest neighbours ( h N ).
h L K = h l k H k S V h l k = max m = 1 , 2 , , N h S V h m k
h N m k = h m k H k , h m k h l k , h L k S V h m k > S V h l k , r l m = min m = 1 , 2 , N h h l k h m k        
The organisms in the herd, excluding the leader, are fragmented into followers ( H F k ) and deserters ( H D k ).
H F k = h l k h L k S V h l k r a n d 0 , 1
H D k = h l k h L k S V h l k r a n d 0 , 1
Again, depending on their survival value, the follower organisms are fragmented into dominant herd members and subordinate herd members.
H d k = h l k h F k S V h l k S V H μ k
H s k = h l k h F k S V h l k S V H μ k
where S V H μ k = l = 1 N h S V h l k N h .
The centre of mass gives the degree of safety for the position of the herd and predator groups as given in Equations (29) and (30).
h M k = l = 1 N h S V h l k · h l k m = 1 N h S V h m k
p M k = l = 1 N p S V p l k · p l k m = 1 N p S V p m k

5.3. Movement Phase of Herd

In this phase, movement of the leader of the herd and the followers as well as the desertion of the herd have been evaluated considering their SV value and the distance from other organisms. This phenomenon has been described in terms of attraction and repulsion operators as in Equations (32) and (33). Additionally, the position of the leader is evaluated by Equation (34).
ψ h l , h m = S V h m · e h l h m 2
φ h l , p M = S V p M · e h l p M 2
h L k + 1 = h L k + c k i f   S V h L k = 0 h L k + s k i f   S V h L k > 0
where c k = 2 · α · ϕ h L P M k · ( P M k h L k ) and s k = 2 · α · ψ h L x b e s t k ( x b e s t k h L k ) . The positions of other members are updated according to Formula (35).
h l k + 1 = h l k + f l k i f   h l k H F k h l k + d l k i f   h l k H D k

5.4. Movement Phase of Predator

Generally, a predator attacks the prey (selfish herd) which is more vulnerable. This is decided on the basis of the relative position between the predator and the herd member (prey) to be attacked. So, this attribute has been defined by the SHO algorithm in the movement phase of the predator. Here, the distance of the predator to the herd (prey) and the survival aptitude of the herd to be hunted play a key role. This is expressed as the pursuit probability, as given in Equation (36), between the predator and the herd to be hunted.
P p l h m = ω p l h m m = 1 N h ω p i h M
These members update their position as
p l k + 1 = p l k + 2 ρ h r k p l k

5.5. Predation Phase

The radius of the domain of danger and the threatened prey are calculated as:
R = m = 1 n x m l o w x m h i g h 2 · n
Threatened prey of a given predator is determined accordingly:
T p l = h m H S V h m < S V p l , p l h m R , h m K
where K is a null set.
The members of the threatened prey are being hunted according to the probability, determined by
H p l , h m = ω p l , h m ( h m T P l ) ω p l , h m , h m T p l
The killed members are kept in a set K such that
K = K l = ( h m H ) ,   for   l   =   1 , 2   N k   &   m   =   1 ,   2   ,   N h .

5.6. Restoration Phase

In this step, new organisms are added to keep the herd group size constant. The new members are generated based on mating probability (MB) as given in Equation (41).
M h m = S V h l ( h m M ) S V h m , h m M
To interchange the positions among ‘n’ number of individuals selected randomly from the matrix M , the roulette selection procedure is applied for MB. Following the whole process, a solution is generated. Further, the generation of new solutions is continued until the defined criteria.
Pseudocode for SHO:
# Initialisation #
Initialize the population randomly within the search range and evaluate the performance of each prey using Equation (23).
Form = 1:Maximum number of iterations
for l = 1:Number of prey
Divide the organisms/population into Herd and Predator groups.
Determine the centre of mass of herd and predator using Equations (30) and (31) respectively.
Calculate the force of attraction among the members of herd group from Equation (32).
Calculate the force of repulsion between the members of herd & predator using Equation (33).
# Updation of members of herd group#
Identify the leader of herd group and update its position using Equation (34).
Update the other members of the herd group using Equation (35).
# Updation of members of predator group #
Determine the pursuit probability of each predator using Equation (36).
Update the members of predator group using Equation (37).
# Predation Phase #
Determine the radius of the domain of danger using Equation (38).
Determine the set of threatened prey from Equation (39).
Determine the probability of threatened prey being hunted by a predator.
Identify the prey to be killed by the predator using Roulette wheel selection criteria.
Replace the killed prey by randomly generated prey within the search range.
End
end

6. Proficiency of SHO over PSO through Benchmark Function Analysis

To advocate the use of a new algorithm, SHO, over PSO, the potential of these algorithms has been evaluated and compared through some benchmark functions. These functions have been provided in Table 1. Each function’s search space and dimensions have been implemented. The convergence graphs of these functions for SHO and PSO have been shown in Figure 5. From these curves, it is evident that SHO has gained its appreciation to for better convergence. Different specifications like optimum, minimum, maximum, mean, standard deviation and computational time have been calculated and presented in Table 2. From the table data, it is clear that the minimum and maximum almost match the optimum value produced by both SHO and PSO algorithms. But, the computational time is longer for the SHO algorithm as the algorithm is executed through five different steps as discussed in the previous section. Also, the standard deviation produced by the SHO algorithm is very low in comparison to the PSO algorithm.

7. Results and Discussions

The simulation of the five-area test model has been established in the MATLAB/Simulink platform. Here, a disturbance of 0.01 puMW has been introduced to the system to investigate the transient effect. Observing the better convergence of SHO compared to PSO in the last section, here, in the first attempt, the effectiveness of the SHO-based PID controller over the PSO-based PID controller has been evaluated in the proposed test model. Then, LFC of this model has been carried out through employing integer/non-integer controllers like PID and FOPID. Further, the additional benefits of a cascade controller with an FO operator have been evaluated and compared with the PID and FOPID controllers. To ensure an enhanced and robust performance, these controllers have been designed using a nascent and influential computational technique named SHO. Finally, to validate the system response, a real-time simulator has been applied. The designed values of these controllers have been provided in Table 3.

7.1. Comparative Study of Transient Response Produced by SHO-PID and PSO-PID Controllers

In this case, a load perturbation has been given to the proposed model in the presence of a PID controller. The time-response curves of frequency and tie-line power have been presented in Figure 6. The SHO-PID controller has produced a better ameliorated response compared to PSO-PID. From this observation, it has been found that the SHO technique is better than the PSO technique. Various transient specifications have been given in Table 4. So, from this transient and convergence response, it has been perceived that the SHO technique has an upper hand to optimize a problem which has been corroborated in the rest of the work.

7.2. Comparative Study of Transient Responses Produced by SHO Based Controllers without RFB

The system is investigated through subjecting it to a perturbation of 0.01 pu in area-1. The excursion of change in frequency and the excursion of change in tie-line power are portrayed in Figure 7. Performance parameters like undershoot ( u s h ), overshoot ( o s h ) and settling time ( t s ) of the responses are amassed in Table 4. Looking into the transient responses of different area-frequencies and tie-line powers, as depicted in Figure 7, conveys that the cascaded controller is more effective than the PID and FO-PID controllers. Inspecting the specifications amassed in Table 4, it is quite evident that the undershoot ( u s h ), overshoot ( o s h ) and settling time ( t s ) with the FOPIDN-FOPDN controller are very minimal with the comparison to its rivals. The ITAE cost function has a great role to minimize the error by which the gains of the different employed controllers are enumerated, culminating in an enriched dynamic and smooth performance. The ITAE values are 3.4664, 2.7372 and 0.7136 for the PID, FOPID and FOPIDN-FOPDN controller, respectively. So, in this work, the FOPIDN-FOPDN controller employing in the proposed system leaves behind other controllers’ credibility.

7.3. Extension Work

Transient response of with RFB and Li-ion-based battery energy storage system (BESS).
To support the RFB technology in a large scale in a power system, another BESS (Li-ion) system has been considered in the proposed system. Here, a one-time constant model of a Li-ion battery [49,50,51] as shown in Figure 8 has been taken. The terminal voltage has been given in Equation (42). The transfer-function-based BESS model has been adapted from [52].
V b a t t ( t ) = Q ( 0 ) C e ( t R C ) + V O C I b a t t R 0 I b a t t R 1 e ( t R C )
where Q ( 0 ) = charge capacity of the cell and V O C = nominal open circuit voltage, which depends on the state of charging.
The test model has been integrated with an RFB and another BESS (Li-ion) system separately in all areas. The effect of these storage components with the proposed FOPIDN-FOPDN controller has been illustrated. The performance of the frequency deviation in area-1 and tie-line power deviation between area-1 and 2 with/without an RFB or BESS has been given in Figure 9. The peak values of undershoots for frequency and tie-line power deviation under an RFB are −5 mHz and −6.7 mpu, respectively. The FOPIDN-FOPDN controller with the RFB approach has improved the system response nearly four and 3 times for frequency and tie-line, respectively, which is more evident from Figure 9a,b. Simultaneously, the dynamic response of the RFB is better than the other BESS system, which is clear from the response presented in Figure 9.

7.4. Transient Response of the Test Model against Sporadic Load Variation under RFB

An arbitrary step load perturbation as depicted in Figure 10 is injected into the test model in area-1. Through endorsing the highly credible FOPIDN-FOPDN controller in the presence/absence of an RFB, the dynamic response has been evaluated. From this perspective, only the area-1 frequency deviation response and the tie-line power response traded off between area-1 and area-2, as illustrated in Figure 10. From Figure 10, it is quite noticeable that the unusual deviation in frequency and tie-line power die out within a very short-lived period. In addition to this, the peaks of undershoot/overshoot have been diminished significantly, which is obvious from the inset figure of Figure 10. So, the analysis suggests that the dynamic stability of the system remains intact and the robustness of the designed FOPIDN-FOPDN controller is firmly perceived through introducing an arbitrary step load variation in the presence of an RFB.

7.5. Robustness of the Proposed FOPIDN-FOPDN Controller under RFB

Parameter variation during normal/disturbed operation of the power system is unavoidable, which affects the stability of the system immensely. But, this variation of parameters can be tightened using an optimally designed controller. To establish this, different crucial parameters of the system are varied keeping the same designed values of the FOPIDN-FOPDN controller as in Table 3. The responses measured via undershoot ( u s h ), overshoot ( o s h ) and settling time ( t s ) are given in Table 5 and Table 6. Here, specifications of the frequency and tie-line power deviation are given in Table 5 and Table 6, respectively. From these tables, it has been observed that the variation of these specifications is insignificant in comparison to the data observed under constant parameters as in Table 4. Along with this, the standard deviation of these specifications ( o s h / u s h / t s ), evaluated and presented in Table 5 and Table 6, supports the potency of the controller adequately.

7.6. Validation of the Transient Response through OPALRT (OP4510) Platform

The feasibility of the proposed model is simulated in the OPAL RT (OP4510) platform to validate the real-time dynamic response of different controllers. The real-time simulation set up has been given in Figure 11. The excursion of frequency/tie-line power deviation has been given in Figure 12. Figure 12 elucidates that the FOPIDN-FOPDN controller ameliorates the dynamic response of the PID and FOPID controllers, which is almost similar to the response observed in the MATLAB/SIMULINK environment.

8. Conclusions

In this comprehensive work, the LFC of the proposed system is intuited through enumerating different time domain specifications in a MATLAB/SIMULINK environment. AGC issues and the benefit of a secondary controller for this problem have been addressed prudentially. The ameliorated and prominent performance of the FOPIDN-FOPDN controller compared to the PID and FOPID controllers has been profoundly observed. The storage component, an RFB and another BESS system with a FOPIDN-FOPDN controller improved the dynamic response adequately. The SHO technique has shown better performance compared to PSO, as discussed in the benchmark analysis. The recommended SHO has gained an upper hand to evaluate the gains of controllers, by which the proposed controller has bestowed a fast and smooth response. The feasibility of the proposed controller is examined through simulating it in a real-time simulator, OPAL-RT (OP4510), which has given a similar response to that evaluated in the MATLAB platform. As the designed controller has preserved the stability of the system under chaotic step load perturbation and parametric variations of the system, hence, the robustness of the system affirms promisingly. Also, the RFB has strongly supported the dynamic response against sporadic load variation. In a nutshell, the proposed SHO-FOPIDN-FOPDN controller has stabilized the system remarkably, effortlessly and proficiently under normal/abnormal environments in the presence/absence of an RFB. Further, the AGC issues of this model can be addressed using fuzzy-logic-based intelligent controllers, sliding mode controllers and model predictive controllers under cyber threat or communication delay.

Author Contributions

Conceptualization, N.K.J., S.S., M.B., V.B. and L.P.; Methodology, N.K.J., A.K.N. and S.M.; Validation, N.K.J., S.S. and S.M.; Formal analysis, N.K.J., S.S. and M.B.; Investigation, B.K.S.; Resources, B.K.S. and V.B.; Data curation, A.K.N., V.B. and L.P.; Writing—review & editing, B.K.S., M.B. and V.B.; Supervision, M.B., S.M. and L.P.; Project administration, A.K.N., S.M. and L.P.; Funding acquisition, L.P. All authors have read and agreed to the published version of the manuscript.

Funding

These results were supported by projects LTI20004 “Environmental Research and Development Information Centre” funded by the Ministry of Education, Youth, and Sports of the Czech Republic; program INTER-EXCELLENCE, subprogram INTER-INFORM, and project TN02000025 National Centre for Energy II.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Parameters are taken for different units
K p s = 120 , T p s = 20 s , R x = R y = 2.4 , T 12 , T 13 , T 14 , T 15 , T 23 , T 24 , T 25 , T 34 , T 35 & T 45 = 0.0707   a 12 , a 13 , a 14 , a 15 , a 23 , a 24 , a 25 , a 34 , a 35 & a 45 = 1 , B 1 , B 2 , B 3 , B 4 & B 5 = 0.425
Thermal Units:
T g 1 = 0.2 s , T t = 0.3 s , T r = 10 s , K r = 0.333 , N 1 = 0.8 , N 2 = 0.2 , K 1 = 0.85 , K 2 = 0.095 , K 3 = 0.92 , c B = 200 , K i b = 0.5 , T i b = 26 s , T r b = 69 s , T D = 0 , T F = 10 s , T t = 0.3 s .
Hydro Units:
T g .2 = 48.7 s , T 1 = 0.513 s , T 2 = 10 s , T w = 1 s
Gas Unit:
C G S = 1 , B G S = 0.05 , X G S = 0.6 , Y G S = 1 , T C R = 0.01 s , T F R = 0.23 s , T C D = 0.2 s
Wind Farm and Diesel Unit:
k 2 = 1.25 , k 3 = 1.4 , T p 1 = 0.6 s , T p 2 = 0.041 s , k d i e s e l = 16.5 .
Nuclear Unit:
T g n = 0.03 , k h n = 2 , T t n = 0.5 s , k r n = 0.3 , T r h n 1 = 7 s , T r h n 2 = 9 s
RFB component
K R . F . B . = 1.8 . , T R . F . B . = 0 .
Figure A1. Nuclear power plant.
Figure A1. Nuclear power plant.
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Figure 1. Model of a five-area interconnected power system.
Figure 1. Model of a five-area interconnected power system.
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Figure 2. (a) Model of boiler, (b) model of GRC for thermal unit and (c) model of GRC for hydro unit.
Figure 2. (a) Model of boiler, (b) model of GRC for thermal unit and (c) model of GRC for hydro unit.
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Figure 4. FOPIDN-FOPDN controller.
Figure 4. FOPIDN-FOPDN controller.
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Figure 5. Convergence rate of SHO and PSO algorithms for different benchmark functions. (a) Hartmann function ( F 1 ). (b) Styblinski-Tang function ( F 2 ). (c) Rotated hyper-ellipsoid function ( F 3 ). (d) Schaffer function ( F 4 ). (e) Mccormick function ( F 5 ). (f) Sum-squares function ( F 6 ).
Figure 5. Convergence rate of SHO and PSO algorithms for different benchmark functions. (a) Hartmann function ( F 1 ). (b) Styblinski-Tang function ( F 2 ). (c) Rotated hyper-ellipsoid function ( F 3 ). (d) Schaffer function ( F 4 ). (e) Mccormick function ( F 5 ). (f) Sum-squares function ( F 6 ).
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Figure 6. Deviation of frequency and tie-line power under SHO- and PSO-based PID controllers. (a) Frequency, Δ f 1 in area-1. (b) Tie-line power, Δ P t i e 12 between area-1 and 2. (c) Frequency, Δ f 2 in area-2. (d) Tie-line power, Δ P t i e 23 between area-2 and 3. (e) Frequency, Δ f 3 in area-3. (f) Tie-line power, Δ P t i e 34 between area-3 and 4. (g) Frequency, Δ f 4 in area-4. (h) Tie-line power, Δ P t i e 45 between area-4 and 5. (i) Frequency, Δ f 5 in area-5. (j) Tie-line power, Δ P t i e 51 between area-5 and 1.
Figure 6. Deviation of frequency and tie-line power under SHO- and PSO-based PID controllers. (a) Frequency, Δ f 1 in area-1. (b) Tie-line power, Δ P t i e 12 between area-1 and 2. (c) Frequency, Δ f 2 in area-2. (d) Tie-line power, Δ P t i e 23 between area-2 and 3. (e) Frequency, Δ f 3 in area-3. (f) Tie-line power, Δ P t i e 34 between area-3 and 4. (g) Frequency, Δ f 4 in area-4. (h) Tie-line power, Δ P t i e 45 between area-4 and 5. (i) Frequency, Δ f 5 in area-5. (j) Tie-line power, Δ P t i e 51 between area-5 and 1.
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Figure 7. Deviation of frequency and tie-line power under SHO based controllers without RFB integration in the system. (a) Frequency, Δ f 1 in area-1. (b) Tie-line power, Δ P t i e 12 between area-1 and 2. (c) Frequency, Δ f 2 in area-2. (d) Tie-line power, Δ P t i e 23 between area-2 and 3. (e) Frequency, Δ f 3 in area-3. (f) Tie-line power, Δ P t i e 34 between area-3 and 4. (g) Frequency, Δ f 4 in area-4. (h) Tie-line power, Δ P t i e 45 between area-4 and 5. (i) Frequency, Δ f 5 in area-5. (j) Tie-line power, Δ P t i e 51 between area-5 and 1.
Figure 7. Deviation of frequency and tie-line power under SHO based controllers without RFB integration in the system. (a) Frequency, Δ f 1 in area-1. (b) Tie-line power, Δ P t i e 12 between area-1 and 2. (c) Frequency, Δ f 2 in area-2. (d) Tie-line power, Δ P t i e 23 between area-2 and 3. (e) Frequency, Δ f 3 in area-3. (f) Tie-line power, Δ P t i e 34 between area-3 and 4. (g) Frequency, Δ f 4 in area-4. (h) Tie-line power, Δ P t i e 45 between area-4 and 5. (i) Frequency, Δ f 5 in area-5. (j) Tie-line power, Δ P t i e 51 between area-5 and 1.
Energies 16 05540 g007aEnergies 16 05540 g007b
Figure 8. One-time constant model of Li-ion battery.
Figure 8. One-time constant model of Li-ion battery.
Energies 16 05540 g008
Figure 9. Response of deviation of frequency and tie-line power. (a) Frequency, Δ f 1 in area-1. (b) Tie-line power, Δ P t i e 12 between area-1 and area-2. (c) Frequency, Δ f 2 in area-2. (d) Tie-line power, Δ P t i e 23 between area-2 and area-3. (e) Frequency, Δ f 3 in area-2. (f) Tie-line power, Δ P t i e 34 between area-3 and area-4. (g) Frequency, Δ f 4 in area-2. (h) Tie-line power, Δ P t i e 45 between area-4 and area-5. (i) Frequency, Δ f 5 in area-2. (j) Tie-line power, Δ P t i e 51 between area-5 and area-1.
Figure 9. Response of deviation of frequency and tie-line power. (a) Frequency, Δ f 1 in area-1. (b) Tie-line power, Δ P t i e 12 between area-1 and area-2. (c) Frequency, Δ f 2 in area-2. (d) Tie-line power, Δ P t i e 23 between area-2 and area-3. (e) Frequency, Δ f 3 in area-2. (f) Tie-line power, Δ P t i e 34 between area-3 and area-4. (g) Frequency, Δ f 4 in area-2. (h) Tie-line power, Δ P t i e 45 between area-4 and area-5. (i) Frequency, Δ f 5 in area-2. (j) Tie-line power, Δ P t i e 51 between area-5 and area-1.
Energies 16 05540 g009aEnergies 16 05540 g009b
Figure 10. Frequency and tie-line power deviation response against sporadic load variation.
Figure 10. Frequency and tie-line power deviation response against sporadic load variation.
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Figure 11. Experimental set up.
Figure 11. Experimental set up.
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Figure 12. Frequency ( Δ f 1 ) and tie-line power ( Δ P t i e 12 ) excursion.
Figure 12. Frequency ( Δ f 1 ) and tie-line power ( Δ P t i e 12 ) excursion.
Energies 16 05540 g012aEnergies 16 05540 g012b
Table 1. Benchmark functions with it’s dimensions and search space.
Table 1. Benchmark functions with it’s dimensions and search space.
Name ExpressionDimensions (d)Search Space
Hartmann f ( x ) = i = 1 4 α i exp j = 1 3 A i j ( x j P i j ) 2 3[0, 1]
Styblinski-Tang f ( x ) = 1 2 i = 1 d ( x i 4 16 x i 2 + 5 x i ) 2[5, 5]
Rotated hyper-ellipsoid f ( x ) = i = 1 d j = 1 i ( x j 2 ) 2[−65.536, 65.536]
Schaffer f ( x ) = 0.5 + cos 2 ( sin ( x 1 2 x 2 2 ) ) 0.5 [ 1 + 0.001 ( x 1 2 + x 2 2 ) ] 2 2[−100, 100]
Mccormick f ( x ) = sin ( x 1 + x 2 ) + ( x 1 x 2 ) 2 1.5 x 1 + 2.5 x 2 + 1 2 x 1 [ 1.5 , 4 ]
x 2 [ 3 , 4 ]
Sum-Squares f ( x ) = i = 1 d i x i 2 2[−10, 10]
Table 2. Specifications of different benchmark functions produced by SHO and PSO algorithms.
Table 2. Specifications of different benchmark functions produced by SHO and PSO algorithms.
FunctionsOptimum ValueAlgorithmMinimum ValueMaximum ValueMean ValueStandard DeviationComputation Time
F1−3.862779SHO−3.862779−3.8627795−3.862779 5.06756 × 10 13 0.0907
PSO−3.862779−3.8627795−3.862779 1.50773 × 10 12 0.0545
F2−78.332334SHO−78.332334−78.332332−78.33233 4.78651 × 10 14 0.06173
PSO−78.332334−78.332331−78.33233 2.27205 × 10 13 0.0429
F30SHO0 4.06 × 10 61 1.42 × 10 62 7.40457 × 10 62 0.2116
PSO0 2.28 × 10 55 7.60 × 10 57 4.16291 × 10 56 0.1199
F40.292578SHO0.2925780.2925840.292579 1.11252 × 10 6 0.1816
PSO0.2925780.2925820.292579 1.12883 × 10 6 0.1015
F5−1.913334SHO−1.913334−1.913334−1.913334 6.77522 × 10 16 0.0644
PSO−1.913334−1.913334−1.913334 6.77523 × 10 16 0.0535
F60SHO0 3.70 × 10 105 1.26 × 10 106 6.76254 × 10 106 0.0753
PSO0 6.74 × 10 69 2.24 × 10 70 1.23215 × 10 69 0.0534
Table 3. Optimised controller gains.
Table 3. Optimised controller gains.
ControllersGainsController: −1Controller: −2Controller: −3Controller: −4Controller: −5Controller: −6
PSO-PID k p 2.01003.70150.88412.31532.73544.7410
k i 2.85844.82861.29671.2134.24181.9342
k d 0.9173.0221.4152.49124.6573.1582
SHO-PID k p 2.44893.70060.88422.41532.73544.7510
k i 2.58464.82871.29681.21384.24191.9340
k d 0.81703.02211.41252.49124.65713.1580
SHO-FOPID k p 1.77685.00003.22964.53743.30032.2579
k i 2.47974.47334.02185.00000.82704.0797
k d 0.10005.00005.00002.62605.00005.0000
σ 0.98000.98000.55130.98000.98000.9800
ζ 0.98000.98000.98000.98000.98000.9710
SHO-FOPIDN-FOPDN k p 1 0.56040.64630.81731.92641.76000.9897
k i 1 2.14120.18890.05000.05000.73870.3839
k d 1 0.05000.20342.20001.10850.83120.9342
k p 11 1.45492.20000.68311.94510.52842.2000
k d 11 0.05000.05002.04270.52761.45211.1862
N 1 96.9082150.0000119.805470.668863.881074.4698
N 11 101.367579.003385.611248.8753110.76500.1000
σ 1 0.66410.85000.78870.72030.42130.1000
ζ 0.10000.85000.55030.42300.79160.8500
σ 2 0.15580.10000.25280.51320.76620.1586
Table 4. Specifications of deviation of frequency and tie-line power subjecting 1% step load in area-1 (Bold font represents superior results).
Table 4. Specifications of deviation of frequency and tie-line power subjecting 1% step load in area-1 (Bold font represents superior results).
ControllersIndices∆f1∆f2∆f3∆f4∆f5∆ptie12∆ptie23∆ptie34∆ptie45∆ptie51ITAE
PSO-PID u s h × 10 3 −26.126−16.971−14.968−23.547−18.4469−22.409−2.5375−2.7180−4.5306−2.92233.8215
o s h × 10 3 12.31207.80345.581014.98439.88368.45025.66817.38956.28665.4693
t s in sec20.162317.753716.018320.627917.916842.83826.549126.818230.001830.1412
SHO-PID u s h × 10 3 −26.134−17.180−15.245−23.659−18.6990−22.645−1.8188−2.0814−4.5360−2.95563.4664
o s h × 10 3 12.81908.62585.171515.530710.58265.77235.75347.52226.01645.5312
t s in sec14.185714.712514.641414.704114.758531.93118.680618.806120.318320.6083
SHO-FOPID u s h × 10 3 −21.647−13.459−13.013−18.105−14.9512−18.929−0.9913−0.9913−0.7558−0.95002.7372
o s h × 10 3 2.36142.21892.21852.13472.21833.24293.24295.29664.53444.7235
t s in sec11.590012.020012.030011.530011.980031.93817.538517.538522.338518.3385
SHO-FOPIDN-FOPDN u s h × 10 3 −20.938−13.416−13.005−17.598−15.8579−18.468−0.0880−0.1380−1.376200.7136
o s h × 10 3 0.60260.27430.27730.25240.27160.03435.29446.23224.46804.3739
t s in s2.19352.74172.74172.19352.478711.0426.98236.665011.75488.7749
Table 5. Specifications of deviation in frequency after parametric variation.
Table 5. Specifications of deviation in frequency after parametric variation.
Parameter Variation in %∆f1∆f2∆f3∆f4∆f5
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
B −20−20.82860.72672.6384−15.2490.29853.1983 −14.7044 0.30243.1983 −19.4950 0.42533.0380 −17.61430.29703.1182
−10−20.87260.79842.5341 −14.2480.28752.9472 −13.7965 0.29112.9472 −18.4848 0.26662.5980 −16.6816 0.28472.8446
+10−20.9991 0.32311.5176 −12.6880.25802.5589 −12.3125 0.26092.5589 −16.8051 0.47852.1007 −15.1245 0.25302.2357
+20−21.06181.61591.4269 −12.0670.24132.3863 −11.6996 0.24392.4776 −16.1019 1.48642.0827 −14.4684 0.36582.1586
R −20−21.0851 0.86451.6508 −13.3290.23702.5511 −12.9019 0.24102.5511 −17.6109 0.22632.1123 −15.7778 0.24052.2519
−10−21.0034 0.70961.7651 −13.3770.25592.6491 −12.9591 0.25902.6491 −17.6041 0.23942.1889 −15.8224 0.25772.3302
+10−20.8857 0.49752.3583 −13.4470.28612.7609 −13.0403 0.28792.8601 −17.5930 0.26532.2947 −15.8862 0.28482.5819
+20−20.8418 0.41032.4673 −13.4740.30032.8339 −13.0736 0.30242.9396 −17.5892 0.27512.3336 −15.9105 0.29572.6412
T 12 −20−23.8967 3.53332.4711 −13.9750.64532.5556 −13.5270 0.52022.5556 −18.7717 3.72124.5676 −16.7940 1.88022.3318
−10−22.2790 0.34811.6126−13.6670.27302.5864 −13.2497 0.27562.6826 −18.1363 1.25172.1867 −16.2851 0.27412.3466
+10−19.8070 0.54822.3590 −13.1870.27492.8493 −12.7760 0.27752.9484 −17.1076 0.25512.6511 −15.4528 0.27262.8493
+20−18.8337 0.32362.4080 −12.988 0.27572.9282 −12.5650 0.27802.9282 −16.7056 0.25762.7369 −15.1052 0.27372.8326
k p s −20−18.8372 0.68522.6743 −12.740 0.27422.9037 −12.3515 0.27683.0020 −16.6333 0.25202.3684 −15.0252 0.27102.5978
−10−19.9218 0.63232.4114 −13.1070.27622.8040 −12.7042 0.27892.8997 −17.1481 0.25552.2629 −15.4692 0.27392.5598
+10−21.8991 0.58752.0478 −13.6820.27122.6491 −13.2644 0.27442.6491 −18.0001 0.24842.1836 −16.2025 0.26852.4018
+20−22.8108 0.57981.8858 −13.9120.26622.6287 −13.4954 0.26942.6287 −18.3579 0.24372.0832 −16.5006 0.26432.3803
T p s −20−23.1771 0.52691.8448 −13.9600.26062.5832 −13.5291 0.26382.5832 −18.4272 0.23862.1034 −16.5669 0.25932.3341
−10−21.9693 0.56582.0440 −13.6780.26982.6544 −13.2610 0.27302.6544 −17.9949 0.24752.1810 −16.1985 0.26752.4020
+10−20.0328 0.64842.4185 −13.1640.27322.7943 −12.7558 0.27552.8926 −17.2330 0.25392.2861 −15.5422 0.27272.5509
+20−19.2569 0.70092.5931 −12.9240.27442.9193 −12.5279 0.27692.9193 −16.8946 0.25312.3641 −15.2380 0.27222.5931
T 1 −20−20.9419 0.59902.1910 −13.4150.27352.7381 −13.0038 0.27602.7381 −17.5993 0.25402.1910 −15.8593 0.27292.4764
−10−20.9398 0.59802.1993 −13.4160.27472.7502 −13.0066 0.27752.7502 −17.5973 0.25402.1993 −15.8559 0.27302.4844
+10−20.9368 0.59792.1898 −13.4150.27412.7366 −13.0031 0.27722.7366 −17.5968 0.25142.1898 −15.8580 0.27062.4753
+20−20.9349 0.60402.2535 −13.4130.27522.7258 −12.9999 0.27802.8118 −17.5943 0.25442.1820 −15.8570 0.27342.4680
T 2 −20−20.9310 0.61042.2491 −13.4100.28762.7220 −12.9981 0.29052.8153 −17.5903 0.26662.2491 −15.8540 0.28572.4638
−10−20.9353 0.59942.1892 −13.0020.28312.7357 −12.9971 0.29032.8227 −17.5954 0.25732.1892 −15.8568 0.27652.4747
+10−20.9407 0.59792.1986 −13.4160.26932.7493 −13.0072 0.27212.7493 −17.5984 0.24872.1986 −15.8571 0.26772.4838
+20−20.9433 0.59162.1896 −13.4160.26392.7361 −13.0041 0.26702.7361 −17.6005 0.24182.1896 −15.8610 0.26092.4750
T w −20 −20.9440.61102.1935 −13.4210.27482.7419 −13.0096 0.27752.7419 −17.6037 0.25482.1935 −15.8632 0.27382.4788
−10−20.9410 0.60692.1935 −13.4180.27472.7418 −13.0073 0.27732.7418 −17.6007 0.25462.1935 −15.8604 0.27362.4788
+10−20.9363 0.59812.1935 −13.4140.27422.7417 −13.0031 0.27692.7417 −17.5957 0.25422.1935 −15.8557 0.27312.4787
+20−20.9344 0.59372.1934 −13.4120.27392.7416 −13.0014 0.27662.7416 −17.5936 0.25392.1934 −15.8537 0.27292.4787
Standard deviation0.05350.02780.31980.02640.00330.1490.02490.00220.15650.03260.03280.45520.02900.01420.1952
Table 6. Specifications of deviation in tie-line power after parametric variation.
Table 6. Specifications of deviation in tie-line power after parametric variation.
Parameter Variation in %∆Ptie12∆Ptie23∆Ptie34∆Ptie45∆Ptie51
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
Ush × 10−3
(Hz)
Osh × 10−3
(Hz)
Ts
(s)
B −20−17.5469 0.18326.2441 −0.0736 4.87832.6384 −0.1281 5.81052.7023 −1.1957 4.61841.2604 −0.0268 4.34451.4360
−10−18.0120 0.18196.1302 −0.0816 5.09262.4702 −0.1342 6.03042.5341 −1.2702 4.53561.2524 −0.0276 4.3539 1.4748
+10−18.9028 0.17995.9143 −0.0921 5.48772.3032 −0.1407 6.41892.3884 −1.4917 4.41441.2357 −0.0288 4.40091.5176
+20−19.3202 0.17905.7094 −0.0956 5.66642.2345 −0.1412 6.59312.3104 −1.6271 4.37861.2694 −0.0293 4.4421 1.4899
R −20−18.6795 0.18285.9466 −0.0699 5.37542.3217 −0.1224 6.36092.3915 −1.4586 4.47021.2650 −0.0266 4.40001.4928
−10−18.5622 0.18196.0339 −0.0769 5.33042.3302 −0.1304 6.28952.4008 −1.4127 4.46901.2624 −0.0275 4.38891.4919
+10−18.3928 0.18025.9398 −0.0979 5.26572.4220 −0.1429 6.18552.5019 −1.3452 4.46731.2577 −0.0289 4.36181.4681
+20−18.3296 0.17966.0059 −0.1057 5.24142.4005 −0.1481 6.14592.4673 −1.3135 4.46671.2581 −0.0294 4.35181.4718
T 12 −20−19.3239 0.18035.9878 −0.0835 5.58592.3318 −0.1357 6.49762.4014 −2.1239 4.47623.5621 −0.02164.48831.6353
−10−18.8740 0.18075.8280 −0.0856 5.43432.3466 −0.1374 6.35962.4265 −1.7135 4.47001.3436 −0.0282 4.42421.5488
+10−18.1054 0.18126.0464 −0.0896 5.17212.4227 −0.1380 6.11632.4865 −1.09594.47821.1791 −0.0283 4.33251.4255
+20−17.7906 0.18135.8744 −0.0906 5.06012.5175 −0.1385 6.00902.5723 −0.8688 4.48901.1398 −0.0283 4.3034 1.3574
k p s −20−18.1370 0.18105.9467 −0.0934 5.06542.5214 −0.1387 5.93792.6743 −1.7496 4.59191.3883 −0.0283 4.38871.6139
−10−18.3084 0.18085.9607 −0.0910 5.19002.4856 −0.1395 6.09692.5598 −1.5483 4.52641.3296 −0.0283 4.37981.5619
+10−18.6000 0.18085.9397 −0.0852 5.38812.3193 −0.1358 6.34832.4018 −1.2154.41631.1915 −0.0282 4.36571.4431
+20−18.7181 0.18085.7847 −0.0821 5.46752.2147 −0.1319 6.44672.2975 −1.0781 4.37291.1269 −0.0282 4.36321.3797
T p s −20−18.7159 0.18085.7230 −0.0806 5.48102.1681 −0.1302 6.46362.2511 −0.9898 4.34321.1174 −0.0282 4.35221.3682
−10−18.5873 0.18085.9085 −0.0845 5.38672.3179 −0.1347 6.34562.4020 −1.1867 4.40721.1848 −0.0282 4.36121.4359
+10−18.3547 0.18106.0270 −0.0916 5.20902.4185 −0.1391 6.12382.5509 −1.5442 4.52641.3175 −0.0283 4.3816 1.5238
+20−18.2446 0.18105.9759 −0.0936 5.12852.5168 −0.1394 6.01752.5931 −1.7109 4.57771.3486 −0.0283 4.39191.592
T 1 −20−18.4708 0.18135.8303 −0.0883 5.29372.4050 −0.1360 6.23232.4764 −1.3784 4.46811.2575 −0.0284 4.37431.4870
−10−18.4671 0.18125.8762 −0.0880 5.29552.3418 −0.1375 6.23082.4844 −1.3751 4.46951.2659 −0.0283 4.37431.4971
+10−18.4692 0.18075.8974 −0.0875 5.29432.4039 −0.1386 6.23282.4753 −1.3764 4.46661.2556 −0.0282 4.37331.4848
+20−18.4688 0.18075.8766 −0.0881 5.29542.3965 −0.1378 6.23302.4680 −1.3767 4.46601.2510 −0.0282 4.37271.4772
T 2 −20−18.4656 0.17505.8893 −0.0934 5.29522.3922 −0.1442 6.23222.4638 −1.3745 4.46571.2491 −0.0269 4.37181.4740
−10−18.4680 0.17795.8950 −0.0900 5.29422.4033 −0.1416 6.23252.4747 −1.3754.46611.2551 −0.0276 4.3730 1.4840
+10−18.4684 0.18375.8743 −0.0858 5.29572.3412 −0.1347 6.23132.4838 −1.3760 4.46961.2653 −0.0289 4.37451.4963
+20−18.4729 0.18615.8927 −0.0832 5.29452.4037 −0.1331 6.23312.4750 −1.3798 4.46791.2557 −0.0294 4.3745 1.4848
T w −20−18.4751 0.18005.8542 −0.0884 5.29622.4075 −0.1371 6.23442.4788 −1.3782 4.46921.2601 −0.0280 4.37521.4900
−10−18.4718 0.18055.8535 −0.0884 5.29532.4074 −0.1370 6.23322.4788 −1.3771 4.46861.2601 −0.0282 4.37451.4901
+10−18.4663 0.18155.8513 −0.0883 5.29372.4074 −0.1368 6.23122.4787 −1.3755 4.46761.2601 −0.0284 4.37341.4901
+20−18.4640 0.18205.8502 −0.0882 5.29302.4074 −0.1366 6.23032.4787 −1.3754.46721.2601 −0.0285 4.37291.4901
Standard deviation0.01768.9 × 10−50.10713.42 × 10−40.00780.09372.42 × 10−40.00830.09480.01180.00290.41266.66 × 10−50.00160.061
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Jena, N.K.; Sahoo, S.; Sahu, B.K.; Naik, A.K.; Bajaj, M.; Misak, S.; Blazek, V.; Prokop, L. Impact of a Redox Flow Battery on the Frequency Stability of a Five-Area System Integrated with Renewable Sources. Energies 2023, 16, 5540. https://doi.org/10.3390/en16145540

AMA Style

Jena NK, Sahoo S, Sahu BK, Naik AK, Bajaj M, Misak S, Blazek V, Prokop L. Impact of a Redox Flow Battery on the Frequency Stability of a Five-Area System Integrated with Renewable Sources. Energies. 2023; 16(14):5540. https://doi.org/10.3390/en16145540

Chicago/Turabian Style

Jena, Narendra Kumar, Subhadra Sahoo, Binod Kumar Sahu, Amiya Kumar Naik, Mohit Bajaj, Stanislav Misak, Vojtech Blazek, and Lukas Prokop. 2023. "Impact of a Redox Flow Battery on the Frequency Stability of a Five-Area System Integrated with Renewable Sources" Energies 16, no. 14: 5540. https://doi.org/10.3390/en16145540

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