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Article

Power Quality Conditioners-Based Fractional-Order PID Controllers Using Hybrid Jellyfish Search and Particle Swarm Algorithm for Power Quality Enhancement

by
Abdallah Aldosary
Computer Engineering Department, College of Engineering, Prince Sattam bin Abdulaziz University, Wadi Addwasir 11991, Saudi Arabia
Fractal Fract. 2024, 8(3), 140; https://doi.org/10.3390/fractalfract8030140
Submission received: 30 January 2024 / Revised: 20 February 2024 / Accepted: 21 February 2024 / Published: 28 February 2024
(This article belongs to the Special Issue Fractional Order Controllers for Non-linear Systems)

Abstract

:
Power quality (PQ) is a major issue in today’s electrical system that affects both utilities and customers. The proliferation of power electronics devices, smart grid technology, and renewable energy sources (RES) have all contributed to the emergence of PQ concerns in today’s power system. The Unified Power Quality Conditioner (UPQC) is a versatile tool that can be used to fix distribution grid issues caused by irregular voltage, current, or frequency. Several tuning parameters, however, restrict the effectiveness of the Fractional-Order Proportional Integral Derivative (FOPID) control technique, which is proposed to improve UPQC performance. To move beyond these restrictions and find the optimal solution for the FOPID controller problem, a hybrid optimization strategy called the Hybrid Jellyfish Search Optimizer and Particle Swarm Optimizer (HJSPSO) is employed. To meet the load requirement during PQ issue periods, the suggested model incorporates a renewable energy source into the grid system. Whether the load is linear or non-linear, the design maintains PQ problems to a minimum. Furthermore, the FOPID control technique is compared with other controllers. Results show that grid-connected RES systems using the proposed FOPID control approach for UPQC have fewer PQ problems. The presented UPQC with HJSPSO strategy significantly outperformed, with the shortest computing time of 127.474 s and an objective function value of 1.423.

1. Introduction

The incorporation of renewable sources, such as photovoltaic (PV) systems, into microgrids (µGs) has gained significant attention as a means to promote sustainable and reliable energy generation [1]. However, the intermittent and fluctuating nature of renewables can present power quality (PQ) challenges, including voltage fluctuations, harmonics, and reactive power imbalances [2]. To address these issues and ensure the efficient and reliable operation of µGs, advanced control strategies for PQ enhancement are essential [3,4].
There is a growing need for environmentally friendly energy sources due to the fact that the demand for energy has been on the rise, which has increased emissions of greenhouse gases [5]. Renewable energy sources (RES) have emerged as a promising solution, offering environmentally friendly power generation without harmful emissions. Among the various RES technologies, PV systems and wind systems have gained substantial attention due to their widespread adoption. Integrating different types of distributed generation (DG) units into standalone µGs allows for the effective utilization of their complementary attributes. However, the intermittent nature of RES and load fluctuations, such as non-linear loads, unbalanced loads, and critical loads, introduces PQ issues and stability challenges in standalone µGs [6,7].
PQ issues, including disturbances, sags, harmonics, and swells, arise due to the intermittent environmental changes affecting RES and the dynamic nature of loads [8]. Addressing these issues is crucial for enhancing the dependability and stability of standalone microgrid systems [8,9]. Flexible Alternating Current Transmission Systems (FACTS) devices, such as filters and power quality custom devices, are commonly employed to mitigate PQ problems in standalone µGs. These devices include series and shunt compensators, which are integrated into µGs to regulate and correct voltage problems [10,11]. However, managing compensators effectively can be challenging, as they rely on controller output signals. Diverse control approaches, such as Fractional-Order Proportional Integral Derivative (FOPID) controllers and Fuzzy Logic Controllers (FLC), have been employed to address power quality issues.
In this work, a novel, hybrid optimization built FOPID controller for a unified power quality conditioner (UPQC) is proposed to enhance PQ in integrated microgrid systems. By combining the jellyfish optimizer (JO) and the particle swarm optimizer (PSO), a hybrid jellyfish search optimizer and particle swarm optimizer (HJSPSO) algorithm is employed. This hybrid approach reduces decision-making time and enables researchers to focus on data analysis. The principal goal of this work is to improve PQ in a hybrid RES-grid-connected non-linear distribution system using the proposed FOPID controllers for UPQCs.

1.1. Related Works in the Literature

Several studies have been conducted to address PQ issues in integrated systems, particularly in the context of RES and µGs [4,12]. Researchers have explored various techniques and control strategies to boost the performance and stability of those schemes [13,14]. Enhancing PQ in a system is a crucial task within the power system domain. Several models have been introduced to mitigate PQ issues [15], and recent developments in these areas are reviewed as follows:
In ref. [16], a hybrid active power filter (APF) was developed to improve PQ. The adaptive ANFIS approach was employed to evaluate the PQ performance of the UPQC scheme. Although UPQC devices have some drawbacks, such as swell and sag, these issues were minimized by utilizing sophisticated hybrid techniques. In ref. [17], a FOPID controller called a distributed power flow controller (DPFC) was introduced, which serves as the drive controller. It was tuned using the black widow optimization technique. While this controller compensates for voltage and harmonics, it may not be capable of detecting power system issues. In ref. [18], an adaptive Bald Eagle optimization algorithm (ABE-OA)-based FOPID controller integrated with UPQC was proposed to reduce total harmonic distortion (THD) and tackle problems such as swell, sag, non-linear load, disturbances, and unbalanced load. Although this strategy is effective, more advanced hybrid algorithms can be employed for improved control strategies. In ref. [19], the synchronous reference frame-power angle control (SRF-PAC) strategy was developed, which divides the reactive power load between two inverters using the PI methodology. This approach’s performance was assessed under different operating circumstances, incorporating PV irradiation variation, voltage fluctuation, and voltage harmonic injection. However, the system cost is high. In ref. [20], the utilization of a Fractional-Order Proportional Integral (FOPI) and Fractional-Order Fuzzy Logic (FOFL) control strategy for the UPQC scheme was proposed. By integrating these tools through an enhanced control system, the aim is to enhance the system’s dependability, achieve a rapid dynamical response, and reduce the THD to improve the overall PQ. In ref. [21], a wind energy system coupled with UPQC to enhance the quality of energy output was developed. An adaptive Proportional-Integral (PI) controller was used for both serial and shunt-based APFs, enabling the Park control mechanism. Although the controller performs well, system stability is a concern. In ref. [22], a multi-converter, unified fuzzy-based PQ controller for enhancing PQ was proposed. The fuzzy gradual conductance approach was used to identify the peak power source. While this fuzzy-based technology improved wind energy infrastructure to some extent, there is still room for further improvement. In ref. [23], it was proposed that the implementation of a UPQC serves the purpose of improving the performing of the microgrid and resolving PQ concerns associated with the sensitive loads. In ref. [24], the PV-UPQC scheme was proposed, which was tested using a reinforcement learning algorithm and an adaptive neuro-fuzzy controller. The fuzzy model enhances system efficiency by assisting in generating reference currents and determining system parameters using linguistic rules. However, it is not suitable for grid-connected renewable energy systems. In ref. [25], an improved FOPID controller with a GS algorithm to demonstrate a method for Dynamic Voltage Restorer (DVR) was employed. This approach successfully addressed various PQ issues, including fault compensation, voltage regulation, sag, THD reduction, and swell. However, it has a complex structure. In ref. [26], a PQ strategy was proposed to mitigate light flickers, voltage stability, and harmonics in the utility of large-scale LED lighting networks. To address these PQ concerns comprehensively, a transformerless UPQC (TL-UPQC) and its control system are introduced. The PI controller’s gain values are determined through the utilization of an extended Bald Eagle search (EBES) optimizer. In ref. [27], the Cuckoo optimization method was introduced, which adjusts the parameters of the PI control strategy in shunt controllers to reduce THD and enhance PQ. Instantaneous PQ theory was employed to produce reference signals essential for shunt and series controllers, along with DQ-conversion evaluation. However, this method is not suitable for the unity power factor mode of operation. In ref. [28], a cutting-edge, three-phase, multi-objective unified power quality conditioner (MO-UPQC) that integrates interfaces for PV panels and battery energy storage was proposed. The MO-UPQC effectively addresses PQ issues in both voltage (at the load side) and current (at the grid side). Additionally, it facilitates power injection into the grid (from PV panels or batteries) and battery charging (from PV panels or the grid). In ref. [29], a groundbreaking algorithm that employs variable phase angle control optimized using the JAYA optimization technique (JAYA is a Sanskrit word signifying victory or triumph) was proposed. The primary goal was to identify the optimal power angle that minimizes the volt-ampere (VA) loading of the unified power quality conditioner (UPQC) without diminishing its compensation capabilities. In ref. [30], optimizing UPQC control strategies were focused on, particularly in unbalanced and distorted weak grid conditions. Additionally, UPQC performance under unbalanced and non-linear harmonic loads was crucial for maintaining desirable power quality.
The literature mentioned above primarily focuses on PQ issues in a single microgrid operating in grid-connected mode. However, these techniques have limitations, such as complex design, poor reliability [12], the need for improvement [13,15,16], complex structure [14], inadequate performance due to unstable voltage and current supply [17,18,20], and high cost [19,21]. To address these problems and enhance system performance in the distribution system, integration with Flexible AC Transmission Systems (FACTS) is proposed. This integration aims to mitigate power supply problems and ensure an adequate power supply. Consequently, the proposed design introduces a novel control mechanism for operating the FACTS device in a hybrid renewable system under various PQ issue scenarios.

1.2. Contributions and Organization

The main contribution of this research can be briefed as follows:
  • A hybrid RES-based grid with a load model, where UPQC is connected to manage PQ.
  • The FOPID controller is utilized to generate pulse signals for the switches of the UPQC compensator by comparing the actual and reference values.
  • The parameters of the FOPID controller are regulated by utilizing the employed HJSPSO optimization algorithm.
  • The performing of the proposed model is evaluated under numerous PQ conditions, including sags, harmonics, interruptions, and swells.
  • A comparative analysis between other controllers and optimization techniques is implemented.
The manuscript is organized as follows: Section 2 outlines the general layout and procedure of the presented work. Section 3 introduces the control strategy of the presented UPQC. The problem formulated and the hybrid algorithm used are presented in Section 4. The evaluation of performance of the suggested model is introduced in Section 5. Lastly, Section 6 introduces the overall conclusions.

2. System Investigation

Figure 1 illustrates the proposed configuration, which includes a PV plant with a three-phase PWM inverter, a wind system, and a network connection to non-linear loads of 1500 kW which operates with a power factor of 0.7 lagging. Step-up transformers are employed with both the PV and wind systems to coordinate them through the network with a three-winding transformer. The PV system has a size of 750 kilowatts and is connected to a 1000 kVA, 0.6/22 kV, 50 Hz step-up transformer (T2). The DFIG wind turbine has a size of 0.5 MW and is linked to a 0.75 MVA, 0.6/22 kV, 50 Hz step-up transformer (T1).

2.1. PV Plant

The power output of a PV plant can be assessed utilizing the following equations [31,32]:
P P V = η g N P V A m G i
In Equation (1), N P V represents the number of PV modules, and η g denotes the generation efficiency. A m and G i stand to the area per module (in square meters) and the whole irradiant on the angled plane (in watts per square meter), respectively [33]. The PV efficiency, η g , can be estimated utilizing the following equation:
η g = η r η p t [ 1 β t ( T c T r ) ]
In Equation (2), η r   represents the efficiency of the PV reference, and η p t represents the efficiency of the tracked power equipment when MPPT is utilized (both assumed to be equal to 1). T r   and T c   represent the temperatures of the reference and PV cells, respectively, measured in degrees Celsius. β t signifies the efficiency temperature parameter.

2.2. Wind System

The mechanical power can be estimated using Equation (3), expressed as follows [34]:
P w = 1 2 ρ A C p λ , β V w 3
In Equation (3), ρ signifies the air density measured in kilograms per cubic meter, A represents the rotor displacement point in square meters, C p represents the power coefficient (ranging from 0.250 to 0.450) depending on λ (lambda) and the screwed angle β (beta), and Vw represents the wind velocity in meters per second.

3. Unified Power Quality Conditioner

3.1. Configuration of UPQC

The UPQC consists of two interconnected power electronic converters using a single AC wire [35,36,37]. Power electronic devices for power conditioning play a crucial role in improving the efficiency of the power grid and addressing PQ concerns, as depicted in Figure 2. The UPQC-PQ can effectively handle PQ concerns, like harmonics, flickers, imbalance, sag, and swell. The UPQC-PQ primarily utilizes voltage source inverters (VSIs), including series and shunt APFs, along with a DC connection capacitor. The DC-link capacitor is a critical component required to regulate the voltage between the two filters. The power system of the UPQC-PQ could be split up into several distinct parts, including active filters for series and shunt circuits, as well as power generation and supply systems [38,39].
The behavior of the power supply system can be mathematically represented by Kirchhoff’s law, as shown in Equations (4) and (5):
V i f = e i L s d i s d t R s I s V i h
I i s = I i L I i h
In the above equations, I i h denotes the output current of the APF, I i L and I i s represent the load and the line currents, respectively, V i h denotes the output voltage of the series active filter, e i is the source voltage, L s represents the inductor of the transmission line (TL), R s represents the resistor of the TL, and the subscript i stands to the phases in a network (a, b, and c phases). The series and shunt active filters in the UPQC-PQ scheme regulate the source current and load voltage, respectively, to address PQ issues.
During PQ disturbances, the active filters provide the necessary voltage and current. The load and source currents are often denoted as I(ch) and I(s), respectively. I(f) represents the injecting current of the APF, while V(c) denotes the injecting voltage of the APF. The reference load voltage is indicated by V(ch), and the fluctuation in the source voltage factor can be signified by the symbol k, while the power factor can be denoted as cos(φ(n)). Equation (6) shows the percentage change between the source and the reference voltages. When the system experiences overvoltage VG, the series inverter injects the negative voltage V ( s ) into the network to mitigate it.
V ( c ) = V ( c h ) V ( s ) = k V ( c h ) < 0
To find the solution to the previous equation, one can use Equation (7).
k = V ( s ) V ( c h ) V ( c h )
In UPQC-PQ models, losses cannot be considered. The active power and load power requirements are compared to the input power requirements at the Vabc. Equation (8) illustrates the abc side current:
I ( f ) = I ( c h ) 1 + k c o s φ ( n )
The UPQC dc link voltage can noticeably maintain its reference value during transient events caused by load connecting/disconnecting or supply voltage sag/swell, even while the average DC link voltage remains constant in steady state. The size of the load voltage changes because the series injecting voltage cannot stay constant during such transients due to the significant DC link voltage fluctuations.
Under normal operating conditions, the voltage at the common bus prior to a voltage sag (VPre-sag) and the line current (Iabc) can be determined using Kirchhoff’s voltage law (KVL) applied to a typical DVR system, as shown in Equations (9) and (10):
V p r e s a g = V a b c I a b c Z a b c
I a b c = I 1 + I 2 = V p r e s a g Z t o t + Z L 2 + V p r e s a g Z t o t + Z L 1
when a fault (F) occurs on the first feeder, a high current (Ifault) flows through it. Consequently, the voltage at the common bus during the voltage sag (Vsag) can be calculated using Equations (11) and (12):
V s a g = V a b c I f a u l t Z a b c
I f a u l t = I 1 + I 2 = V s a g Z t o t + V s a g Z t o t + Z L 1
Therefore, the phasor diagram shown in Figure 3 illustrates the injected voltage (Vj) during the voltage sag condition. The magnitude and angle of the injected voltage are determined by Equations (13) and (14):
V j = V L 2 2 + V a b c 2 2 V L 2 V a b c cos ( L 2 a b c )
j = tan 1 ( V L 2 sin L V a b c sin a b c V L 2 cos L V a b c cos a b c )
This architectural design employs a series converter that injects voltage into the grid during voltage sags. This injected voltage is synchronized with the grid voltage. In the event of a voltage swell, the injected voltage is shifted out of phase with the grid voltage.
Figure 4 illustrates the phasor diagram under normal conditions, voltage swell, and voltage sag. During a voltage swell, the phasors represent the grid voltage (v′abc), grid current (v′L), injected voltage (v′A), output current (i′abc), shunt current (i′L), and shunt current (i′P). During a voltage sag, the corresponding phasors are v″abc, v″L, v″A, i″abc, i″L, and i″P. The system operates in three modes:
(a)
Reactive power mode: The UPQC functions as a reactive power compensator.
(b)
Energy absorption mode: The UPQC absorbs energy through the series converter to balance the additional power.
(c)
Energy supply mode: The UPQC uses the series converter to supply energy and restore lost power.
In steady-state operation, the shunt converter provides the active power required by the series converter in modes (b) and (c).

3.2. Control Strategy of UPQC

The controller of the UPQC’s APF is depicted clearly in Figure 5.
Two controllers, one for voltage and one for current, form the shunt APF. A FOPID controller modifies the DC link voltage in the external voltage control loop. The internal control loop uses hysteresis control to compare the input current to a reference signal that is created by the external loop and a phase-locked loop (PLL). The internal loop uses this reference signal to determine the input current.
Switching conditions for S1 = on and S2 = off are as follows: when the lower band of the inductor current can be retrieved, the hysteresis control changes the operating styles of the switches, turning S1 on while S2 is off, allowing the inductor current time to start charging. The switching criteria can be expressed as:
i P t   i P * t I p 2
where I p signifies the hysteresis zone in the reactor current, and i P * t is the reference reactor current.
Switching criteria for S1 = off and S2 = on are as follows: upon attainment of the upper band of the inductor current, the controller activates to adjust the operational conditions of the switches, turning S1 off while S2 is on, enabling the discharge of the reactor current. The switching specifications can be expressed as:
i P t   i P * t + I p 2
Figure 3 shows that the APF scheme and the UPQC system operate in parallel. The network ripple and reactor currents are equivalent under the assumption of a constant load current. As a result, it is possible to create a reference signal for the grid current that can be compared to the real network current. The following is another way to rewrite Equations (15) and (16) for the two switches cases:
i a b c t   i a b c * t I a b c 2 ,   S 1 = on   and   S 2 = off
i a b c t   i a b c * t + I a b c 2 ,   S 1 = on   and   S 2 = off
Here, I a b c   represents the hysteresis ripple band of the reactor current, and i a b c * t represents the reference network current.
Passive mechanism voltages and currents can be predicted using the switching trajectory. Based on these predictions, the inverter’s switching decisions (gate signals) are timed correctly. This proactive strategy guarantees a quick and adaptable reaction to any outside disturbances. For the basic HBVSI topology, the following switching requirements were determined:
Switching criteria for S3 = on and S4 = off are given as
v A t v A , m i n k A v D C 2 v A t i C 2 t 0
i C t 0
Switching criteria for S3 = off and S4 = on are given as
v A t v A , m a x + k A v D C 2 + v A t i C 2 t 0
i C t 0
Here, k A   denotes a constant value defined as k A = L A 2 C A . The values v A , m i n and v A , m a x   denote the minimum and maximum boundaries of the reference signal, respectively. The term ΔV corresponds to the hysteresis voltage ripple.
v A , m i n = v A * t V
v A , m a x = v A * t + V
The control target of the UPQC is to keep a constant value of the load voltage ( v L ). Therefore, the reference signal can be modified to be associated with Equation (4) as follows:
v A * t = v L * t v a b c t
where v O * t   represents the reference load voltage. Thus, the switch criteria are re-obtained as follows:
Switching criteria for S3 = on and S4 = off:
v L t v L , m i n k A v D C 2 v L + v a b c i C 2 t 0
i C t 0
Switching criteria for S3 = off and S4 = on:
v L t v L , m a x + k A v D C 2 + v L v a b c i C 2 t 0
i C t 0
v L , m i n = v L * t V
v L , m a x = v L * t + V
Like the regulation of the network’s frequency and volage, v L * t is controlled to achieve the required RMS value. The load reference voltage v L * is generated by the PLL from the sinusoidal input voltage v a b c . The switch conditions from Equations (26)–(31) determine the gate pulses for the switches. Using feedback signals from the UPQC power circuit, the switching procedures can be carried out while simultaneously satisfying the fluctuations in switching conditions. The production of high-quality voltage at the load is enabled by using the externally assigned reference voltage value as the output.
Thus, UPQC is a versatile device with applications across diverse engineering domains. It addresses PQ issues such as voltage sags, swells, harmonics, and interruptions in electrical systems, simultaneously regulating both voltage and current to enhance power factor and reduce harmonic distortion. In renewable energy systems, UPQC facilitates the integration of intermittent sources like wind and solar, ensuring a stable power supply. In industrial settings, it protects sensitive equipment by preventing voltage fluctuations, improving overall manufacturing efficiency. UPQC is also integral in smart grids, contributing to stability and reliability amid complex grid structures and the rise of distributed energy resources. Additionally, it plays a crucial role in electric vehicle charging stations, maintaining consistent and high-quality power supply. UPQC’s adaptability makes it a valuable tool for improving PQ and reliability in diverse engineering applications.

4. Optimization Problem: Formulation and Algorithm

4.1. Objective Function

Applying a fitness function to fine-tune the gains of the proposed UPQC-FOPID controllers is the objective of the optimization problem. As the minimum of the integral time square error (ITSE), represented by J, the fitness function is given by:
min J = min I T S E
Here, J represents the overall error of the presented UPQC controller and the ITSE performance index is mathematically represented as:
I T S E = 0 t 2 e t d t
where e t denotes the error signal. The transfer function CFOPID for the controller is expressed by Equation (34).
C F O P I D ( S ) = K p + K i S λ + K d S μ
where the FOPID controller variables (Kp, Ki, Kd, λ, and μ), as well as λ and μ, represent the fractional power of integral and differential control, respectively [39]; the contribution signal (iabc_ref) generated by the FOPID control strategy in the dq0 framework to the PWM of the UPQC in the time domain is determined by Equation (35) and can be described as follows:
V c , d q 0 = K p   e t , d q 0 + K i   D λ   e t , d q 0 + K d   D μ   e t , d q 0
The optimization problem can be subjected to certain non-linear constraints.

4.2. Constraints

The voltage level of the load, denoted as V L , must fall within a restricted range determined by the minimum and maximum values specified in Equation (36), as follows:
0.95 V L 1.05
The total harmonic distortion of the voltage (THDv), calculated using Equation (37), should not exceed the maximum value ( T H D v , m a x ) defined in IEEE Standard 519 [27,28], thus
T H D v = h = 2 n V h 2 V 1
T H D v T H D v , m a x

4.3. Hybrid Jellyfish Search Optimizer and Particle Swarm Optimizer (HJSPSO)

The HJSPSO algorithm is a hybrid algorithm that combines the merits of the Jellyfish Optimizer (JO) [40] and the Particle Swarm Optimization (PSO) algorithm [41] in exploration of the global solutions. By combining these two methods, the search for a solution becomes more efficient and effective. By utilizing a time control strategy, the algorithm may switch between the two approaches and obtain the best answer [42]. The parameters used in the hybrid technique strike a balance between exploration and exploitation. In Figure 6, one can see the HJSPSO procedure’s flowchart.
For the start of the food search, the HJSPSO algorithm uses the following to initialize the jellyfish positions:
X i = L B + U B L B L i ,                     1 i N
L i t + 1 = η L i t 1 L i t ,                               0 < L i 0 < 1
In the above equations, X i denotes the current position of the ith jellyfish, L B and U B denote the lower and upper limits of the gains, L i is the logistic value of the ith jellyfish, L i 0 is the initial logistic number of the jellyfish, N is the swarm amount, and t is the current iteration. Additionally, η is set to 4. The fitness values are estimated employing the following procedure.
To decide between selecting PSO or JO for upgrading the position, the following equations can be processed:
w = w m i n + w m a x w m i n 1 t T β 1
c 1 =   c m i n + c m a x c m i n sin π 2 1 t T
c 2 = c m i n + c m a x c m i n cos π 2 1 t T
c ( t ) = 1 t T 2 r 1
In the above equations, r denotes a random value generated between [0, 1], and T represents the number of iterations performed. If c ( t ) 0.5 , PSO is chosen for renovating the position using the following equations:
V i t + 1 = w V i t + c 1 r 1 P b e s t i t X i t + c 2 r 2 G b e s t t X i t                  
X i t + 1 = X i t + V i t + 1 ,                     1 i N
In the above equations, w m i n ,   w m a x ,   β 1 ,   c m i n , and c m a x are set to 0.4, 0.9, 0.1, 0.5, and 2.5, respectively. Additionally, r 1 and r 2   are random values generated in the range [0, 1]. Moreover, V i denotes the velocity of the ith particle, P b e s t represents the optimum personal position, and G b e s t represents the global optimum position. Furthermore, the JO can be utilized to renew the position. The JO comprises passive movements (around the current position) and active movements (updating corresponding to a randomly chosen jth jellyfish). The position renovate for these two procedures is stated as follows:
X i t + 1 = X i t + w r 1 X * 3 r 2 X i t ,                       1 i N ,   passive   when   1 c t > r
X i t + 1 = X i t + w r 1 S t e p ,                                                         1 i N ,   active   when   1 c t < r
S t e p = X i t X j t ,     i f   f X i t < f ( X j t ) X j t X i t ,     i f   f X j t < f ( X i t )
where X *   represents the current swarm’s best position. The optimum quantities attained utilizing the HJSPSO for FOPID are given in Table 1.
The following section will describe how the fine-tuned parameters of the FOPID controller effectively control the system’s performance in different events.

5. Results and Discussions

5.1. Power Quality Issues

5.1.1. Event #1: Balanced Sag

In a three-phase balanced sag, when specific heavy loads can be switched off in each of the three phases, a sag mode occurs. Therefore, it was decided to utilize the sag mode for the test conducted between t = 0.15 and t = 0.25 s. The simulation findings explain the voltage at the VL bus for each of the three phases through this circumstance. Figure 7 depicts the load voltage before and after connecting the FOPID-UPQC to the system. The presence of harmonics in a system generated by the sag event is shown in Figure 8 by the study of the THD. The THD values of the load voltage (VL) in the suggested controller-based approach are 6.31% and 1.74%, respectively.

5.1.2. Event #2: Balanced Swell

The three-phase balanced swell occurs when different heavy loads are turned off. For that reason, it seemed probable that the swell mode would be applied during the test from t = 0.15 s to t = 0.25 s. Each of the three phases’ voltage at the VL is depicted in the simulation results for this event. Figure 9 illustrates the load voltage with and without enhancement utilizing the FOPID-UPQC.
As shown in Figure 10, a look at the THD indicates the presence of harmonics in a system generated by a swell event [43]. With no enhancement, the VL’s THD value in the suggested controller-based model is 10.70%, while with enhancement, it is 1.68%.

5.1.3. Event #3: Three-Phase Faults

Three-phase faults, which are a PQ concern, impact the components on the load side of the system. Figure 11 depicts the interruption status along with the injected current and voltage, as well as the load voltage. The figure illustrates that the interruption occurs, interrupting the power flow for a period of 0.15 to 0.25 s, as determined by the controller. Figure 12 presents the analysis of the THD, which represents the presence of harmonics in a system caused by interruption condition. In the proposed controller-based model, the THD values of the VL with and without enhancement are 7.76% and 1.74%, respectively.

5.1.4. Event #4: Double Line to Ground

Between t = 0.15 s and t = 0.25 s, a double line to ground fault arises at the first feeder, specifically between phase A and B. In response to this fault, the controller swiftly injects the necessary voltage. Figure 13 illustrates the voltage before and after enhancement, along with the injected voltage.
Figure 14 presents the analysis of the THD, which represents the presence of harmonics in the system in the DLG condition. Using the proposed controller-based model, the THD values of the voltage before and after enhancement are 7.14% and 1.73%, respectively.

5.2. Comparative Investigation

To improve the UPQC scheme’s robustness, this section presents two comparison studies that evaluate several optimization approaches and an alternative controller.

5.2.1. Comparison of HJSPSO and Other Optimization Methods

The performance of various optimization strategies, such as the Grasshopper Optimization Algorithm (GOA) [12], the Salp Swarm Algorithm (SSA), and the proposed HJSPSO approach, is evaluated to simulate the tuning of the presented UPQC scheme. Table 2 illustrates the differences between these three methods, which are in line with the objective. Results show the HJSPSO effectiveness. Figure 15 depicts the GOA, SSA, and HJSPSO convergence curves. According to the results, HJSPSO always finds the best values for the objective function with the fewest iterations.

5.2.2. Comparative Evaluation of Two Different Controllers

A comparison was conducted between the UPQC-FOPID performance and another controller known as the fuzzy logic controller (FLC) to assess their effectiveness and robustness. To handle balanced swells, sags, and other fault conditions, the suggested model was tested on the MATLAB/Simulink platform. In Table 3, the results and comparative analysis between the presented UPQC-FOPID controller and the UPQC-FLC typology under diverse grid conditions like voltage sag, swell, and fault circumstances are displayed and evaluated. The obtained findings demonstrate the superiority of the UPQC-FOPID control strategy according to its fast response and minimal fitness.

6. Conclusions

In this study, a novel hybrid RES was introduced. The system consisted of PV-wind farms capable of accommodating non-linear loads. To address PQ issues commonly associated with RESs, such as voltage sag, swell, and harmonics, a UPQC was utilized. The control of UPQC was achieved by employing a FOPID controller with the HJSPSO, which allowed for determining optimal gain values across various PQ issues.
Two comparative investigations were included in the study. The first step was to evaluate the provided HJSPSO optimization approach against two optimization techniques. The results showed that compared to previous optimization approaches, the suggested HJSPSO strategy significantly outperformed them, with the shortest computing time of 127.474 s and an objective function value of 1.423. Second, under various conditions, such as voltage swells, sags, and fault scenarios, the proposed FOPID controller was compared to another controller known as the FLC. The results showed that the UPQC-FOPID controller was superior to the FLC thanks to its quick response and low objective function values. Results showed that the suggested control method worked well when subjected to changes in network voltage in terms of both voltage response and harmonic reduction.
Last but not least, PQ conditioners and harmonics management are critical components in modern power systems, addressing issues related to unwanted frequencies. These unwanted frequencies can compromise system stability, reduce equipment reliability, and lead to energy inefficiencies. PQ conditioners play a pivotal role in mitigating harmonics, ensuring a clean power supply that promotes stability and reliability, particularly with the growing use of electric vehicles and RES. By preventing voltage distortion, avoiding energy losses, and safeguarding sensitive electronic devices, these systems contribute to improved efficiency, reduced operational costs, and compliance with industry standards. In essence, their presence is essential for maintaining a consistent, reliable, and efficient power supply, ultimately preventing downtime and protecting the longevity of electrical equipment in diverse applications.
Finally, suggestions for future works are to conduct further experimental validation in a larger-scale power system setup or in a real-world distribution system to evaluate the performance of the proposed approach under more realistic operating conditions. This will provide valuable insights into the scalability and effectiveness of the proposed approach in practical applications.

Funding

This study is supported via funding from Prince Sattam bin Abdulaziz University, project number (PSAU/2024/R/1445).

Data Availability Statement

The data presented in this study are available on request from the corresponding author. The data are not publicly available due to their large size.

Acknowledgments

The author acknowledges Prince Sattam bin Abdulaziz University, project number (PSAU/2024/R/1445), for their technical and financial support.

Conflicts of Interest

The author declares no conflicts of interest.

Correction Statement

This article has been republished with a minor correction to the existing affiliation information. This change does not affect the scientific content of the article.

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Figure 1. The system investigated in this study.
Figure 1. The system investigated in this study.
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Figure 2. The presented UPQC scheme.
Figure 2. The presented UPQC scheme.
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Figure 3. Thevenin equivalent circuit of UPQC scheme.
Figure 3. Thevenin equivalent circuit of UPQC scheme.
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Figure 4. Phasor diagram of UPQC scheme: (a) normal operation, (b) swell mode, and (c) sag mode.
Figure 4. Phasor diagram of UPQC scheme: (a) normal operation, (b) swell mode, and (c) sag mode.
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Figure 5. Control circuit of the UPQC scheme.
Figure 5. Control circuit of the UPQC scheme.
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Figure 6. Flowchart of HJSPSO.
Figure 6. Flowchart of HJSPSO.
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Figure 7. The simulated outcomes for the sag mode using the UPQC: (a) the network voltage without enhancement, (b) the injected voltage, and (c) the load voltage with enhancement.
Figure 7. The simulated outcomes for the sag mode using the UPQC: (a) the network voltage without enhancement, (b) the injected voltage, and (c) the load voltage with enhancement.
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Figure 8. THDv analysis in voltage: (a) before enhancement, and (b) after enhancement in sag condition.
Figure 8. THDv analysis in voltage: (a) before enhancement, and (b) after enhancement in sag condition.
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Figure 9. The simulated outcomes for the swell mode using the UPQC: (a) the network voltage without enhancement, (b) the injected voltage, and (c) the load voltage with compensation.
Figure 9. The simulated outcomes for the swell mode using the UPQC: (a) the network voltage without enhancement, (b) the injected voltage, and (c) the load voltage with compensation.
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Figure 10. THDv analysis: (a) before enhancement, and (b) after enhancement under swell condition.
Figure 10. THDv analysis: (a) before enhancement, and (b) after enhancement under swell condition.
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Figure 11. The simulated results for a three-phase faults mode using the UPQC: (a) the second feeder voltage during fault, (b) the network voltage without compensation, (c) the injected voltage, and (d) the load voltage with compensation.
Figure 11. The simulated results for a three-phase faults mode using the UPQC: (a) the second feeder voltage during fault, (b) the network voltage without compensation, (c) the injected voltage, and (d) the load voltage with compensation.
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Figure 12. THDv analysis in voltage: (a) before enhancement, and (b) after enhancement in the interruption condition.
Figure 12. THDv analysis in voltage: (a) before enhancement, and (b) after enhancement in the interruption condition.
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Figure 13. The simulated outcomes for the double line to ground (DLG) mode using the UPQC: (a) the grid voltage without compensation, (b) the injected voltage, and (c) the load voltage with compensation.
Figure 13. The simulated outcomes for the double line to ground (DLG) mode using the UPQC: (a) the grid voltage without compensation, (b) the injected voltage, and (c) the load voltage with compensation.
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Figure 14. THDv analysis: (a) before enhancement, and (b) after enhancement in DLG condition.
Figure 14. THDv analysis: (a) before enhancement, and (b) after enhancement in DLG condition.
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Figure 15. Convergence rates in the sag event.
Figure 15. Convergence rates in the sag event.
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Table 1. Optimum controller factors of the FOPID utilizing the HJSPSO method.
Table 1. Optimum controller factors of the FOPID utilizing the HJSPSO method.
Operating ConditionsFOPID Control StrategyTime (s)Objective fn.
KpKiKdλμ
Sag event3.5411.4680.3071.67830.1523127.4741.423
Swell event3.3480.4760.2311.84410.3061128.8461.890
3-phase fault3.3040.5860.5151.68910.5704129.4761.168
Double line to ground fault4.0512.0450.0871.68010.5690125.4761.378
Table 2. A comparative analysis of numerous FOPID controllers’ optimization approaches.
Table 2. A comparative analysis of numerous FOPID controllers’ optimization approaches.
Optimization MethodsGOASSAHJSPSO
Max. iteration250250250
Number of search agents100100100
Computing time (s)159.544212.405127.474
Objective function1.7471.9871.423
Kp2.2613.7663.541
Ki1.9911.8981.468
Kd0.5410.4680.307
λ1.47861.78941.6783
μ0.24870.14790.1523
Table 3. The findings with UPQC-FLC and presented UPQC-FOPID.
Table 3. The findings with UPQC-FLC and presented UPQC-FOPID.
ScenariosComputing Time (s)Comparative Index (J)
UPQC-FLCUPQC-FOPIDUPQC-FLCUPQC-FOPID
Event #1: Balanced sag187.474127.4742.8311.423
Event #2: Balanced swell188.011128.8462.0921.890
Event #3: 3-phase fault158.505129.4762.0381.168
Event #4: Double line to ground fault204.112125.4762.4781.378
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Aldosary, A. Power Quality Conditioners-Based Fractional-Order PID Controllers Using Hybrid Jellyfish Search and Particle Swarm Algorithm for Power Quality Enhancement. Fractal Fract. 2024, 8, 140. https://doi.org/10.3390/fractalfract8030140

AMA Style

Aldosary A. Power Quality Conditioners-Based Fractional-Order PID Controllers Using Hybrid Jellyfish Search and Particle Swarm Algorithm for Power Quality Enhancement. Fractal and Fractional. 2024; 8(3):140. https://doi.org/10.3390/fractalfract8030140

Chicago/Turabian Style

Aldosary, Abdallah. 2024. "Power Quality Conditioners-Based Fractional-Order PID Controllers Using Hybrid Jellyfish Search and Particle Swarm Algorithm for Power Quality Enhancement" Fractal and Fractional 8, no. 3: 140. https://doi.org/10.3390/fractalfract8030140

APA Style

Aldosary, A. (2024). Power Quality Conditioners-Based Fractional-Order PID Controllers Using Hybrid Jellyfish Search and Particle Swarm Algorithm for Power Quality Enhancement. Fractal and Fractional, 8(3), 140. https://doi.org/10.3390/fractalfract8030140

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