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Article

A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator

1
Department of Electrical and Electronics Engineering, SR University, Warangal 506371, India
2
Department of Electrical and Computer Engineering, Clemson University, Clemson, SC 29634, USA
3
Department of Industrial and Management Engineering, IIT Kanpur, Kanpur 208016, India
4
Department of Electrical and Electronics Engineering, University of the Ryukyus, Okinawa 903-0213, Japan
*
Authors to whom correspondence should be addressed.
Energies 2021, 14(17), 5382; https://doi.org/10.3390/en14175382
Submission received: 25 July 2021 / Revised: 23 August 2021 / Accepted: 27 August 2021 / Published: 30 August 2021
(This article belongs to the Collection Featured Papers in Electrical Power and Energy System)

Abstract

:
Load flow analysis is an essential tool for the reliable planning and operation of interconnected power systems. The constant increase in power demand, apart from the increased intermittency in power generation due to renewable energy sources without proportionate augmentation in transmission system infrastructure, has driven the power systems to function nearer to their limits. Though the power flow (PF) solution may exist in such circumstances, the traditional Newton–Raphson based PF techniques may fail due to computational difficulties owing to the singularity of the Jacobian Matrix during critical conditions and faces difficulties in solving ill-conditioned systems. To address these problems and to assess the impact of large-scale photovoltaic generator (PVG) integration in power systems on power flow studies, a derivative-free quasi-oppositional heap-based optimization (HBO) (QOHBO) technique is proposed in the present paper. In the proposed approach, the concept of quasi-oppositional learning is applied to HBO to enhance the convergence speed. The efficacy and effectiveness of the proposed QOHBO-PF technique are verified by applying it to the standard IEEE and ill-conditioned systems. The robustness of the algorithm is validated under the maximum loadability limits and high R/X ratios, comparing the results with other well-known methods suggested in the literature. The results thus obtained show that the proposed QOHBO-PF technique has less computation time, further enhancement of reliability in the presence of PVG, and has the ability to provide multiple PF solutions that can be utilized for voltage stability analysis.

1. Introduction

Power flow analysis is a powerful and most widely utilized analytical tool to determine steady-state planning, operation, and energy management of the power system. The main objective of the power flow analysis is to determine the voltage phasors at all the buses by making use of the specified generation and load of the power system [1,2]. This load flow (LF) problem is solved by using various numerical computational techniques by utilizing the non-linear power injection models that are functions of bus voltage phasors and bus admittances [3]. In the literature [4], many techniques follow similar computation procedures to solve the LF problem. These techniques start with an initial guess to determine the real and reactive power injection mismatches at the nodal buses. Further, the problem variables are updated by utilizing power mismatches and the Jacobian matrix [1]. In [5], a fast load flow algorithm was suggested to solve both the transmission and distribution networks by considering a high impedance ratio of the systems. Similar to [5], the authors in [6] demonstrated a methodology that combined the fast decoupled load flow technique and complex per unit normalization method to deal with both transmission and distribution systems. The authors in [7] presented an algorithm that combined gradient descent and Newton–Raphson (NR) to solve power flow (PF) as an optimization problem. Here, in this approach, the inversion of the Jacobian matrix is eliminated using gradient descent steps. A modified traditional Gauss–Seidel method using a successive approximation technique was shown in [8]. In order to avoid the factorization of the inverse Jacobian matrix in the NR method to PF problem, an implicit formulation was suggested in [9]. Further, to enhance the robustness and L-stability of the approach, a backward Euler method was utilized in [9]. To solve uncertain PF analysis, an affine arithmetic method was explored in [10]. In [11], the application of two cubic methods, namely, Darvishi and Weerakoon-like approaches was examined to solve PF studies. An efficient and robust PF solver based on the Bulirsch–Stoer method was suggested in [12]. Among many computational techniques suggested in the literature [4], the NR technique and its variants are most widely used to solve the power flow method due to their reliable and very fast convergence characteristics. However, these techniques have various limitations such as (a) the tuning performance is highly dependent on the starting values (initialization) of the variables in the power flow problem; (b) it does not provide satisfactory results for ill-conditioned power systems, and it is incapable of providing solution during abnormal operating conditions; (c) the solution process diverges during critical operating conditions as Jacobian matrix becomes singular and during high R/X ratio; and (d) it does not provide multiple solutions [13].
In the literature [4,14], distinct efforts have been made to overcome the drawback of NR method in solving ill-conditioned power systems. The authors in [15] presented a robust four-stage PF solver. However, it was identified that even though this approach was quite effective for ill-conditioned system, it was not viable in comparison with NR for well-conditioned power systems. Similarly, in order to tackle ill-conditioned systems, a unified structure based on the Kronecker product that eliminates the truncation error is suggested in [16]. In [17], the Richardson extrapolation technique was presented not only to overcome the drawback of the conventional NR method in solving ill-conditioned systems but also during improper initialization in solving PF problems. A new technique, namely Predictor-Corrector NR was employed in [14] to PF problem to solve both well and ill-conditioned systems. It has been observed that using the mechanism of the Predictor-Corrector, the convergence speed has also been improved to 2.4 from 2 in comparison with the conventional NR method. The authors in [18] examined the behavior of current injection formulation in solving ill-conditioned systems. It was found that the stability of the system had been improved in providing the solution with little computational savings. However, as stated in [14], this methodology was more appropriate in case of PQ buses (load buses) and displays a slow convergence rate in the case of PV buses (generation buses). In [19], a robust Levenbergy–Marquardt complex-valued algorithm was suggested in solving ill-conditioned problems. It was observed that this approach exhibited a bi-quadratic convergence rate in obtaining the solution to LF problems. However, the robustness of the algorithm has not been demonstrated with respect to the initial starting point [12]. Even though the methods discussed above can tackle ill-conditioned problems, these techniques do not provide multiple solutions, which is useful for stability analysis. Further, robustness with respect to the different starting points (initialization) has not been tested in most of the methods discussed above.
To overcome the drawbacks of the conventional NR method and to provide multiple solutions, evolutionary techniques have been suggested in the literature. In [13], an advanced constrained genetic algorithm (GA) was developed by considering the minimization of the total sum of squared mismatches (active power, reactive power, and voltage magnitude) as the objective function. A constrained GA load flow with a dynamic population method was presented in [20] to solve load flow under various operating conditions. A robust local search method was suggested in [21] to solve the LF problem. Further, the method has the ability to find the maximum loadability limit, P-V/P-Q curves, and multiple optimal solutions. However, this method was not tested on ill-conditioned systems. Similar to [13,21], the authors in [22] suggested an expert algorithm based on adaptive PSO (APSO) and chaotic particle swarm optimization (PSO) (CPSO) [23] to perform LF analysis. A decoupled power flow approach using the PSO technique was suggested in [1] by embedding flexible alternating current transmission system (FACTS) devices into the power system. Hybrid differential evolution (DE) and PSO-based LF technique was presented in [24] to overcome the limitations of conventional methods and PSO technique. However, these techniques require tuning of control parameters to obtain desired and accurate solution. Further, it is observed that the impact of the integration of PVGs with the power system on the power flow has not been studied in the literature discussed above.
The growing concern for global warming and depletion of non-renewable resources has necessitated integrating the photovoltaic (PV) generators (PVGs) with the power system [25]. In the literature discussed above, LF analysis has been performed by considering the synchronous generators where the power is generated at a specified voltage magnitude. However, modification in LF analysis modeling is required with the increased use of PVGs and their integration with the power grid [2]. Unlike conventional generators, these PVGs are stochastic in nature and, thus, the effect of these sources on the reliable operation of the transmission system has become a great concern to power system operators and planners. Therefore, it is essential to carry out extensive power flow analysis to understand the impact of these PVGs. Thus, various mathematical modeling has been developed in the literature to study the impact of the integration of PVGs by performing a number of computer simulation studies [26].
In [25], the authors presented a new model that integrates PVGs to the power grid using pulse width modulation (PWM) inverter. This PWM inverter is modeled in terms of its control parameters in the power flow studies such that the injection of active power, reactive power, and voltage with the system can be controlled directly. In [26], power flow analysis with a large-scale PV power plant connected to the grid was suggested. In contrast to the existing techniques, a unified approach that incorporates the state variables of the PV system along with the state variables of the power system during the iterative process was proposed. In [27], a steady-state three-phase grid-connected PV system was interfaced with the power system through power electronics (PE) converters. Therefore, modeling of the PV system consists of three parts, namely, DC, inverter, and AC parts. These three parts are interfaced by satisfying the power balance between the PE transformation and instantaneous power. However, as these methods are solved using the NR technique, they have the same limitations mentioned above when performing PF analysis. Further, these techniques have not been tested under maximum loadability limits and higher R/X ratios.
Therefore, in order to overcome the disadvantages of conventional NR method and evolutionary methods, in the present paper, an algorithm that is free of tuning the algorithmic control parameters, namely the quasi-oppositional heap-based optimization (HBO) technique, is proposed to perform the power flow analysis. Further, the impact of considering PVGs in power flow analysis has also been studied.
The HBO [28] technique mimics the human behavior/interaction in an organization based on corporate rank hierarchy (CORH). Here, the concept of CORH is mapped to the heap data structure, hence the name HBO. This method can provide a global optimal solution to large-scale problems. This technique has three stages, namely the communication between the co-workers and their immediate supervisor, the communication between the co-workers, and the employee’s self-contribution to attain a global optimal solution. The main advantages of this technique are (i) it maintains a proper balance between exploration and exploitation, (ii) a self-adaptive parameter, which avoids the local optima and premature convergence is designed, and (iii) easy implementation. Additionally, to enhance the convergence rapidity and solution accuracy, an intelligent strategy, namely, the concept of quasi-oppositional based learning (QOBL) is incorporated into basic HBO, thus resulting a novel QOHBO.
The main contributions of the work are five-fold as follow.
  • A novel QOHBO technique is proposed to overcome the disadvantage of conventional power flow analysis.
  • The impact of large-scale PVG on LF analysis is studied.
  • The proposed method is able to provide multiple solutions that can be utilized for voltage stability analysis.
  • The efficiency of the proposed technique is tested by applying it to ill-conditioned systems.
  • Robustness of the algorithm is verified under maximum loadability limits and high R/X ratios.
The rest of the paper is organized as follows. Problem formulation of load flow analysis is provided in Section 2. Section 3 explains the solution methodology using QOHBO. LF using QOHBO is explained in Section 4. Section 5 discusses the results obtained using the proposed method. Finally, Section 6 concludes the paper.

2. Problem Formulation

2.1. Power Flow Problem

The power flow problem models the non-linear equations, which relate the injected nodal power at system buses ( S i s p = P i s p + j Q i s p ) with the bus nodal voltages ( V i θ i ) and the system circuit parameters ( y i j ) . Using this basic information, the main aim of LF or PF analysis is to find the voltage magnitudes at (N − M) load or PQ buses and voltage phase angles at all the buses except the reference bus, i.e., (N − 1) buses [12,17]. In the process of determining these voltage phasors, the algorithm needs to satisfy both the reactive power limits of M generators (at all the PV buses) and the power injections at all the buses. The complex power injected at any bus is expressed as:
S i = P i + j Q i = V i × I i * = V i × ( j = 1 N y i j × V j )
Hence, the active and reactive power injection at a bus can be calculated as follows:
P i = j = 1 N | V i | | V j | | Y i j | cos ( θ i θ j δ i j ) Q i = j = 1 N | V i | | V j | | Y i j | sin ( θ i θ j δ i j )
In the present work, the voltage phasors at all the buses that determine the state of the power system are considered as state variables. Hence, the voltage angle at all buses except reference bus and voltage magnitude at PQ buses are formed as state vector of the PF problem, which needs to be determined. Thus, the PF state vector may be defined as:
x = { V P Q , θ P V , θ P Q }
Thus, the active power and reactive power mismatches for a bus can be given as:
Δ P i = P i s p j = 1 N | V i | | V j | | Y i j | cos ( θ i - θ j - δ i j ) = P i s p P i c a l c Δ Q i = Q i s p j = 1 N | V i | | V j | | Y i j | sin ( θ i - θ j - δ i j ) = Q i s p Q i c a l c
Hence, the objective function of the LF analysis is to minimize the square of the difference between the specified and calculated power at a bus while maintaining the voltage phasor and reactive power constraints. This is mathematically represented as
m i n   S S E = i = 2 N ( P i s p P i c a l c ) 2 + i = M + 1 N ( Q i s p Q i c a l c ) 2 Subjected   to V i m i n V i V i m a x , i = M + 1 , . . . . , N θ i m i n θ i θ i m a x , i = 2 , 3 , , N Q g e n , i m i n Q i Q g e n , i m a x , i = 1 , 2 , , M }
In the above equation, M represents the number of generators; N denotes the total number of buses in the power system, V i   and   V j signify the voltage magnitude at bus i and j respectively, P i c a l c and   Q i c a l c represent the active and reactive power calculated at ith bus, respectively, y i j denotes the admittance of the transmission line between ith bus and jth bus, P i s p and   Q i s p indicate the active and reactive power specified at ith bus, respectively, and subscripts “max” and “min” represent the corresponding maximum and minimum limits. Further, voltage magnitude at generator buses is fixed at the specified value [23].

2.2. Power Flow Embedded with PVGs

In the present work, a PVG is embedded in either a PV bus or a PQ bus of the power system under V i n v θ i n v control mode. Further, the PVG is modeled as DC current source [25]. This DC current source injects I P h current that is proportionate to the incident solar radiation (insolation) up to the rated DC voltage V D C = V n o m p h . Therefore, a fixed amount of active power, i.e., P i n j = V n o m p h × I P h is injected from the PVG if constant insolation persists. Thus, in the power flow analysis, this P i n j is considered as constant power injected at the embedded bus. Accordingly, the inverter bus is considered as an external bus with a predetermined inverter bus voltage phasors V i n v   and   θ i n v . This predetermined voltage phasors are obtained according to the method suggested in [25]. The modified active power mismatch equation with embedded PVG at a PV bus is given as follows.
P i , p v s p = ( P g e n p v + P i n j P l o a d p v )
Δ P P V = P i , p v s p P i , p v c a l c
P i , p v c a l c = V i , p v × j = 1 N + i n v   b u s V j ( G j p v c o s θ j p v + B j p v s i n θ j p v )
In V i n v θ i n v mode of operation, the modulation index, active power, and reactive power of the inverter are adjusted to retain the voltage phasor of the inverter bus at stated values. These values are predetermined when the PVG is embedded to a PV bus of the power system in the following way.
In general, the active power injected at a PV bus using the traditional generator and the voltage magnitude at this bus is maintained constant. Consequently, any additional power injected at this bus using any source requires modifying the voltage angle θ p v only. Therefore, the relationship between the power injected by the additional source and the voltage angle θ p v is expressed linearly as
θ p v = a 1 × P i n j + b 1
where, a 1   and   b 1 are the two constants that are computed offline. In order to obtain these values, the P i n j is randomly varied at the PV bus and corresponding θ p v are computed by performing power flow analysis. After obtaining these values, a graph is plotted between P i n j   and   θ i n j . The slope of this line gives the values of a 1   and   b 1 . Further, the transfer of active and reactive powers from the inverter bus to the PV bus mainly depends on the voltage magnitude at the inverter bus and the phase angle difference between the PV and the inverter buses. Furthermore, the amount of active power injected depends on the I p h , i.e., insolation. Accordingly, the relationship between inverter bus voltage V i n v and Δ I p h and between θ i n v   and   θ p v are linearly expressed as follows.
V i n v = a 2 × Δ I p h + b 2   = a 3 × Δ I p h + b 3 θ i n v = θ p v + }
where, a 2 ,   a 3 ,   b 2 ,   and   b 3 are the constants that are computed off-line for various loading conditions for the considered power system according to [25]. After obtaining the values of a 1 ,   a 2 ,   a 3 ,   b 1 ,   b 2 ,   and   b 3 offline, the values of V i n v θ i n v are calculated online for any value of I p h o using (6) to (10).

3. Solution Methodology Using QOHBO

3.1. Basic Heap-Based Optimization Technique

In [28], the authors suggested a new algorithm known as a heap-based optimization technique based on the social behavior of human beings. This HBO technique was motivated based on the social interaction of human beings in an organization based on the concept of CORH. In order to map the concept of CORH, a heap-based data structure was utilized. An organization consists of a group of individual peoples who have arranged themselves in a hierarchy order, who works on a common objective to achieve the target. This CORH is similar to the structure of a tree. In this tree-like structure, the roots of a tree are considered the boss who is appointed at the top position and the staffs are considered as branches of a tree. Thus, the manager or boss is considered as a parent node and subordinates are considered as the children of the parent node. Here, each subordinate interacts with a fellow subordinate or the workers below him and follow the instructions of their boss to accomplish business-related contract in an optimal manner.
This entire process is fragmented into four different steps, which are explained in Appendix A Section.

3.2. Quasi-Oppositional Based Learning

The concept of opposition-based learning (OBL) was introduced by Tizhoosh in the year 2005. The main aim of this OBL concept is to enrich the accuracy of the solution and speed up the convergence rate to find a global solution. To perform QOBL, current candidate solution along with its quasi-opposite candidate solution is considered to attain an improved candidate solution. It has been proven by many researchers that a better opportunity to find a closer to the global minimum solution is by considering the opposite solution rather than selecting a randomly selected candidate solution [29,30]. The process to find a quasi-opposite candidate solution is elucidated by means of two key aspects, namely opposite vector, and quasi-oppositional vector.
These two aspects, i.e., opposite vector and quasi-oppositional vector, are explained in Appendix B section in detail.

4. LF Using QOHBO Technique

Similar to other meta-heuristic techniques, the proposed QOHBO is a population-based method that starts with a group of search agents known as the initial population. Each search agent in the population denotes the candidate solution to the given problem. In the present work, the QOHBO is adopted to solve the LF problem. The complete solution methodology is explained as follows:
Step 1: Initialize the parameters of the algorithm and LF problem
In the present work, voltage phasors were considered as the state variables of the power system. To perform LF, these voltage phasors need to be initialized within the specified region. To obtain multiple LF solutions, the phase angles were generated randomly within the range of 15 and −180 degrees, and voltage magnitudes at different buses were initialized randomly between 0.3 p.u. and 1.1 p.u. The algorithm control parameters such as population size (N), dimension size of variables (D), and the maximum number of iterations (Max-iter) were initialized. The algorithmic control variable, i.e., the number of cycles was calculated as Max-iter/25. The size of the population and number of iterations were decided based upon the requirement of the user.
Step 2: Initialize the population
Similar to all other evolutionary techniques, the QOHBO algorithm starts with the initialization of the population. The initial population is generated randomly according to uniform distribution within the search range. This initial population is known as the parent population.
X i , 0 = l b + r a n d ( 1 , D ) . ( u b l b ) i = 1 , 2 , N P
where D is the dimension size of the problem. Here, the size of D is twice the number of buses considered. For instance, the size of D is 28 for IEEE 14-bus system. l b   and   u b refer to the lower and upper boundary of the variable. For example, the lower and upper boundary of the voltage magnitude is 0.4 and 1.1, respectively.
Step 3: Compute the sum of the squares of mismatches
The fitness or value of each individual vector in the population is computed according to (5) by calculating the active and reactive power mismatches at each node. During this process, the voltage magnitude at each generator bus is kept fixed to the specified value.
Step 4: A ternary heap is considered to implement CORH. Even though heap is a tree-shaped data structure, it is efficiently implemented using an array [28].
Step 5: The fitness of each search agent is computed according to (5). If any search agent does not satisfy any constraints, then that infeasible search agent is penalized as discussed in Section 2.
Step 6: Now, perform quasi oppositional population for each search agent in current population.
Step 7: Select the best N search agents among the quasi-oppositional population and current population. Then update the position of each search agent till the number of iterations reaches the maximum number of iterations.
The complete algorithm of QOHBO is given in Algorithm 1.
Algorithm 1 [28]. Main body of QOHBO technique
f o r i t e r 1 t o M a x i t e r d o C a l c u l a t e g a m m a ( γ ) C a l c u l a t e selection   of   proportion   p 1 C a l c u l a t e selection   of   proportion   p 2 f o r I N t o 2 d o i h e a p [ I ] . v a l u e b i h e a p [ p a r e n t ( I ) ] . v a l u e % i n d e x o f p a r e n t o f I c i h e a p [ c o l l e a g u e ( I ) ] . v a l u e % i n d e x o f r a n d o m c o w o r k e r o f I B y b i % p o s i t i o n v e c t o r o f p a r e n t o f I S y c i % p o s i t i o n v e c t o r o f r a n d o m c o w o r k e r o f I f o r k 1 t o D d o p r a n d ( ) y t e m p k u p d a t e y t e m p k ( i t e r ) e n d f o r l 1 t o D d o B l = y l min + y l max / 2 O Y ( I , l ) = y l min + y l max y l Q O Y ( I , l ) = B l + r 1 × ( B l O Y ( I , l ) ) e n d i f f ( Q O Y ( I ) < f ( y t e m p ) ) t h e n y t e m p Q O Y ( I ) e n d i f f ( y t e m p ) < f ( y i ( i t e r ) ) t h e n y i k ( i t e r + 1 ) y i ( i t e r ) e n d H e a p i f y u p ( I ) e n d r e t u r n y h e a p [ 1 ] . v a l u e
Step 8: Check convergence
If the iteration count reaches to maximum number of iterations, then print the results, else go to step 3.

5. Results and Discussion

The proposed QOHBO technique was applied to solve the load flow algorithm with an embedded PVG. To validate the efficacy and effectiveness, the proposed technique was tested on standard as well as ill-conditioned test systems [31]. The robustness of the algorithm was verified under maximum loadability limits and higher R/X ratios. Further, the performance of the proposed technique was compared with the other techniques proposed in the literature. The proposed QOHBO-LFP with embedded PVG was implemented in MATLAB version 8.1.0.604 R2013a, and the program was run on Intel (R) Core™ i5 (CPU) M480 @ 2.67 GHz processor with 4 GB RAM computer.
Unlike other evolutionary techniques suggested in the literature, QOHBO-LF depends only on two control parameters, namely population size and convergence criteria. Similar to other evolutionary techniques, the population size and convergence criteria depend on the size of the system under consideration. In the present work, a population size of 100 and the maximum number of iterations required to convergence was 10 times the size of the system considered. For example, the maximum number of iterations considered for IEEE 14-bus system is 140. The initial population of the algorithm is generated randomly between 0.3 p.u. and 1.1 p.u. for voltage magnitudes and between 15 deg. and −180 deg. for voltage phase angles.
Case Study 1: Normal operating conditions
In this case study, LF analysis was performed using the QOHBO technique under normal operating conditions by considering with and without integration of PVG. The results thus obtained are tabulated in Table 1 and Table 2 for 5-bus and IEEE 14-bus systems, respectively. Table 1 and Table 2 consist of five columns. Columns 2 and 3 of Table 1 and Table 2 represent the voltage magnitude and voltage angle obtained when PVG is not integrated with the system. For performing QOHBO-LF analysis with the integration of a PVG, a PVG having a generating capacity of 50 MW and 25 kA peak capacity at a rated voltage of 2 kV has been considered at bus 3 (PV Bus) and bus 6 (PV Bus) of 5-bus and IEEE 14-bus systems, respectively. This PVG is integrated with 5-bus and IEEE 14-bus systems through a 60 MVA PWM inverter and a 1 kV/138 kV transformer of 60 MVA having 6% impedance. After integrating the PVG at a specified bus, the values of V i n v θ i n v are computed according to (6) and (10) for specified I p h o . For obtaining the values of V i n v θ i n v for any specified I p h o , the constants in (9) and (10) are determined initially using the process explained in Section 2.2. The obtained values for both the systems are as follows.
Five bus system:IEEE 14-bus system:
a 1 = 0 . 0875 b 1 = 3 . 7031 a 1 = 0 . 1331 b 1 = 14 . 4053
a 2 = 0 . 00184 b 2 = 1 . 0691 a 2 = 5 × 10 5 b 2 = 1 . 6904
a 3 = 0 . 1034 b 3 =   2 . 6334 a 3 =   0 . 1002 b 3 =   2 . 5049
After obtaining the constants, QOHBO-LF analysis has been performed at a specified I p h o of 16. The results thus obtained using the proposed method are tabulated in columns 4 and 5 of Table 1 and Table 2 for both 5-bus and IEEE 14-bus systems, respectively.
Case Study 2: Performance under loadability limit critical conditions
In this case study, the performance of QOHBO-LF has been tested by introducing the ill-conditioning in the test system by increasing the system loading. The results thus obtained using conventional Newton–Raphson load flow (NRLF) and proposed QOHBO-LF techniques are shown in Table 3. Table 3 consists of four columns. The third column denotes the load multiplier, and the corresponding solution is given in the fourth column. Here, the load multiplier denotes the maximum value by which the system’s active and reactive power loads have been manifolded. It may be noted here that the generator settings for the base case and during increased loading conditions were modified. Further, it is assumed here that the increased load demand is supplied by the slack bus. It can be observed from this table that the proposed QOHBO-LF method provides a solution to the problem even when the conventional NRLF fails. For example, NRLF fails to provide a solution to IEEE 14-bus system beyond the load multiplication factor of 3.6. This is because the Jacobian matrix of the NRLF method becomes singular for given loading conditions or the Jacobian matrix is near singular where the NRLF technique diverges. However, the proposed QOHBO-LF, which is a derivative-free technique, provides a solution up to the load multiplication factor of 3.98. This shows the robustness of the proposed method in comparison with the conventional NRLF technique. It is to be noted here that the situation at which the QOHBO-LF fails to provide the solution is the case at which there is no solution exists. The PV/QV curve obtained using the proposed QOHBO-LF technique for IEEE 14-bus system at buses 4 and 5 for various load multipliers has been shown in Figure 1 and Figure 2, respectively.
Case Study 3: Performance under high R/X ratio critical conditions
In this case study, the performance of QOHBO-LF has been tested by introducing the ill-conditioning in the test system by either increasing the line resistance or by decreasing the line reactance. The results thus obtained using conventional NRLF and proposed QOHBO-LF techniques by increasing the line resistance and by decreasing the line reactance are shown in Table 4 and Table 5, respectively. Further, the results thus obtained using the proposed method was compared with NRLF with an optimal multiplier, local search, GA, and APSO techniques suggested in the literature. Table 4 and Table 5 consist of three columns. Columns 2 and 3 denote the line resistance or line reactance multiplier for 5-bus and IEEE 14-bus test systems, respectively. Here, line resistance or line reactance multiplier denotes the maximum by which the system line resistances or line reactances have been multiplied by keeping baseload and generation constant. From Table 4 and Table 5, it can be observed that the proposed method provides a solution to the problem even when other conventional and evolutionary techniques fail to converge. For example, the maximum line resistance multiplication factor at which NRLF, NRLF with an optimal multiplier, local search, GA, and APSO provide a solution for the IEEE 14-bus system are 4.47, 4.4225, 4.4288, 4.4371, and 4.4371 beyond which the techniques diverges, respectively. On the other hand, the proposed method even provides a solution with a line resistance multiplier of 4.5 for the IEEE 14-bus system. Further, it can be observed that this line resistance multiplier factor is increased to 4.9 when PVG is incorporated with the power system. Thus, with the integration of PVG into the system, the solution to the LF problem has been attained by satisfying the PF equations. Similarly, from Table 5, it can be observed that the proposed QOHBO-LF method provides a solution with a line reactance multiplication factor of 0.0418 where other conventional and evolutionary techniques diverge. Further, it has been observed, the line reactance multiplication factor can be further decreased from 0.0418 to 0.0406 to attain a solution when PVG is integrated into the power system, thus increasing the reliability of the power system.
Case Study 4: Performance under ill-conditioned system
In this case study, the reliability of the proposed QOHBO-LF in obtaining a solution for the ill-conditioned system has been tested. For this, LF analysis was performed on an ill-conditioned 13-bus system under normal conditions. The results thus obtained using the proposed method is given in Table 6. From Table 6, it has been observed that conventional methods such as NRLF, fast decoupled FL (FDLF), and Gauss–Seidel (GS) techniques have not converged [32]. On the other hand, the proposed method has been converged. The solution obtained for the 13-bus ill-conditioned system using the proposed method has been provided in Table 6. This shows the reliability of the proposed method.
Case Study 5: Multiple LF solutions
In this case study, one of the limitations of traditional techniques such as NRLF, FDLF, etc., that provides only a single LF solution is overcome by using the proposed QOHBO-LF technique. The proposed QOHBO-LF technique being a population-based evolutionary technique that has high exploration capability to find multiple solutions present in the entire search space. Some of the multiple LF solutions thus obtained using the proposed QOHBO-LF for IEEE 14-bus systems is shown in Table 7. This shows the effectiveness and reliability of the proposed method to provide multiple LF solutions.
Comparison of time with other techniques
The computational time taken to solve power flow analysis by various methods per iteration in seconds is tabulated in Table 8. It can be observed from this table that the proposed method provides a faster solution when compared to conventional and evolutionary techniques proposed in the literature. For example, the time taken per iteration by the proposed QOHBO-LF is 0.0105 s for 5-bus system, which is lesser when compared to other methods. This shows the computational efficiency of the proposed QOHBO-LF technique to solve power flow analysis.

6. Conclusions

In the present work, the QOHBO technique with an embedded PVG is proposed to solve the LF problem. The efficiency, reliability, and robustness of the proposed method have been validated by applying it to standard and ill-conditioned systems under different conditions. The results obtained using the proposed method has been compared with other conventional and evolutionary techniques suggested in the literature. It has been observed that the proposed method delivers better performance when compared to other methods and provides a solution where other methods fail. The major findings of the proposed method are as follows.
  • The proposed method has the ability to provide multiple solutions simultaneously. For instance, the proposed QOHBO has provided three solutions in a single run for the IEEE 14-bus system when compared to the single solution provided by the conventional NR method.
  • The proposed method provides a solution to ill-conditioned systems where conventional techniques fail. For example, the proposed QOHBO has been able to provide a solution for ill-conditioned 13-bus system where conventional methods such as NRLF, FDLF, and GS failed to produce the solution.
  • The proposed QOHBO method provides better performance under maximum loadability and higher R/X ratios conditions. This performance is further enhanced with the integration of PVG. For instance, the line resistance multiplier for the critical conditions provided by QOHBO with PVG has been increased by 1, i.e., 5.9, when compared to NRLF and QOHBO, without PVG, is 4.9.
  • The computational efficiency of the proposed method is higher when compared to other techniques. For example, the time taken by the proposed QOHBO to provide solution to IEEE 14-bus system is 0.0129 s when compared to 0.0684 s provided by GA.
The proposed method is very useful and promising for solving practical problems that are non-linear and complex in nature. Further investigations can be carried out in applying the proposed method in solving LF problems by incorporating FACTS devices and reactive power planning.

Author Contributions

Conceptualization, C.K.S. and V.B.; methodology, C.K.S. and V.B.; software, S.V.; validation, S.S.R.; formal analysis, R.E.C.; investigation, R.E.C. and T.S.; writing—original draft preparation, C.K.S. and V.B.; writing—review and editing, S.S.R.; visualization, S.V. All authors have read and agreed to the published version of the manuscript.

Funding

The author(s) received no specific funding for this work by any funding agency. This is the authors own research work.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data sharing is not applicable to this article.

Acknowledgments

The authors are grateful to their respective organizations for providing research opportunities and providing necessary resources towards completion of this paper.

Conflicts of Interest

The authors declared that they have no competing interest exist and have no conflict of interest among them.

Appendix A

The four different steps of the conventional HBO technique is explained as follows:
1. Modeling the CORH
In modeling the CORH, the concept of heap-based data structure is utilized. Here, a heap is considered as a complete tree that maps to complete the organization. Thus, the complete CORH is reflected as the population and each individual in the organization with the formal designation is considered as the search agent. Further, for min-heap, every parent fitness is either small or equal to its children. During implementation, the fitness of a search agent is conceived as the key of the corresponding node and the position of the agent is considered as the value of that node [28]. Thus, positions of the individuals in the organization are based on their fitness in the heap structure.
2. Modeling the interaction among the subordinates and their immediate supervisor/boss
In an organization, policies and rules are formed at the higher levels, and subordinates follow the order of their immediate supervisor/boss [28]. Therefore, the position of each search agent, i.e., subordinates, is updated regarding their immediate supervisor.
3. Modeling the interaction between the co-workers/colleagues
The individuals in the organization with the same designation are considered as colleagues or co-workers. These individuals interact among themselves to achieve the tasks assigned to them. Thus, it can be stated that each individual in the organization interacts with randomly selected other individuals of the same rank [28].
4. Modeling the individual contribution to the work
In this stage, the contribution of an individual search agent to the task is considered.
The detailed explanation of the HBO technique, including algorithms and flowchart, can be found in [28].

Appendix B

The two aspects, i.e., opposite vector and quasi-oppositional vector, are explained as follows.

Appendix B.1. Opposite Vector

As the name suggests, it generates a mirror solution to the current solution from the center of the search region. Therefore, the mirror image of ith candidate solution of an n-dimensional vector is generated according to (A1)
O Y i = y i min + y i max y i
where y i min   and   y i max denotes the minimum and maximum frontiers of parameters under study.

Appendix B.2. Quasi-Oppositional Vector

It is defined as the method of generating a random number between the opposite vector ( O Y i ) and the center of the search region ( y i min + y i max 2 ) . It is mathematically defined as follows:
Q O Y i = r a n d ( y i min + y i max 2 , y i min + y i max y i )
After generating the quasi-opposition solution for each candidate solution of the given population, the fitness of quasi-opposition solutions is computed [29,30]. Then, based on the fitness value of the current population and quasi-opposition population, fittest N individuals are selected { Y Q O Y } as the current population.
The pseudo-code for procurement of quasi oppositional number is presented below:
B = y min + y max / 2 i f ( O Y < B ) Q O Y = B + r 1 × ( O Y B ) ; e l s e Q O Y = O Y + r 1 × ( B O Y ) ; e n d
where, r1 denotes a random number generated between (0,1).

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Figure 1. PV/PQ Curve for IEEE 14-bus system at bus 4.
Figure 1. PV/PQ Curve for IEEE 14-bus system at bus 4.
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Figure 2. PV/PQ Curve for IEEE 14-bus system at bus 5.
Figure 2. PV/PQ Curve for IEEE 14-bus system at bus 5.
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Table 1. Load flow solutions for the five-bus system under normal operating conditions.
Table 1. Load flow solutions for the five-bus system under normal operating conditions.
Bus No.Without Embedded PVGWith Embedded PVG
Voltage Magnitude (P.U.)Voltage Angle (rad)Voltage Magnitude (P.U.)Voltage Angle (rad)
11.04000.00001.04000.0000
20.9614−0.11030.9621−0.0720
31.0200−0.06481.02000.0026
40.9203−0.19000.9203−0.1437
50.9683−0.10750.9692−0.0779
Table 2. Load flow solutions for IEEE 14-bus system under normal operating conditions.
Table 2. Load flow solutions for IEEE 14-bus system under normal operating conditions.
Bus No.Without Embedded PVGWith Embedded PVG
Voltage Magnitude (P.U.)Voltage Angle (rad)Voltage Magnitude (P.U.)Voltage Angle (rad)
11.06000.00001.06000.0000
21.0450−0.08701.0450−0.0620
31.0100−0.22241.0100−0.1818
41.0142−0.17901.0211−0.1267
51.0172−0.15301.0262−0.1000
61.0700−0.25161.0700−0.1033
71.0503−0.23131.0500−0.1553
81.0900−0.23131.0900−0.1553
91.0337−0.25891.0284−0.1706
101.0326−0.26251.0273−0.1635
111.0475−0.25911.0437−0.1356
121.0535−0.26651.0535−0.1223
131.0471−0.26721.0455−0.1271
141.0213−0.28041.0171−0.1695
Table 3. Maximum load multiplier for loadability limit.
Table 3. Maximum load multiplier for loadability limit.
MethodTest SystemLoad MultiplierSolution
NRLFIEEE 5-bus System1.91V(P.U.) = [1.0400 0.7914 0.9700 0.5566 0.7541]
Angle (rad) = [0.0000 −0.5019 −0.5736 −0.8800 −0.4367]
IEEE 14-Bus System3.6V(P.U.) = [1.0600 0.9950 0.9600 0.7436 0.7348 1.0200 0.8092 1.0400 0.7241 0.7386 0.8611 0.9364 0.8942 0.6964];
Angle (rad)= [0.0000 −0.5722 −1.3463 −1.0868 −0.9253 −1.5826 −1.4169 −1.4169 −1.5969 −1.6249 −1.6101 −1.6504 −1.6522 −1.7465];
Proposed QOHBOIEEE 5-bus System2V(P.U.)= [1.0400 0.8037 1.0200 0.5828 0.7606];
Angle (rad) = [0.0000 −0.5490 −0.6390 −0.9226 −0.4752];
IEEE 14-Bus System3.98V(P.U.) = [1.0600 1.0450 1.0100 0.7073 0.6798 1.0700 0.8002 1.0900 0.7044 0.7268 0.8784 0.9766 0.9269 0.6862];
Angle (rad) = [0.0000 −0.7270 −1.5901 −1.3247 −1.1363 −1.9355 −1.7197 −1.7197 −1.9291 −1.9654 −1.9573 −2.0046 −2.0052 −2.1044];
Table 4. Line resistance multiplier for the critical condition.
Table 4. Line resistance multiplier for the critical condition.
Solution MethodIEEE 5-Bus SystemIEEE 14-Bus System
NRLF4.94.47
NRLF with Optimal multiplier [22]-4.4225
Local search [22]-4.4288
GA [22]-4.4371
APSO [22]-4.4371
Proposed QOHBO without PVG4.94.5
Proposed QOHBO with PVG5.94.9
Table 5. Line reactance multiplier for the critical condition.
Table 5. Line reactance multiplier for the critical condition.
Solution MethodIEEE 5-Bus SystemIEEE 14-Bus System
NRLF0.0120.043
NRLF with Optimal multiplier [22]-0.0479
Local search [22] 0.0428
GA [22]-0.0419
APSO [22]-0.0419
Proposed QOHBO without PVG0.0010.0418
Proposed QOHBO with PVG0.00010.0406
Table 6. Load flow solution for an ill-conditioned 13-bus system under normal conditions.
Table 6. Load flow solution for an ill-conditioned 13-bus system under normal conditions.
Bus No.Proposed QOHBO-LFNRLF [32]FDLF [32]GS [32]
Voltage Magnitude (P.U.)Voltage Angle (rad)Voltage Magnitude (P.U.)Voltage Angle (rad)Voltage Magnitude (P.U.)Voltage Angle (rad)Voltage Magnitude (P.U.)Voltage Angle (rad)
11.00000.0000NCNCNCNCNCNC
20.97450.0409
30.94260.0425
41.06300.1588
51.04420.0933
61.06720.1433
71.01770.2134
80.94300.2525
91.10000.1476
101.10000.1438
111.00000.0440
121.03700.1723
130.96930.0265
NC: Not Converged.
Table 7. Multiple Load flow solutions for IEEE 14-bus system under normal conditions.
Table 7. Multiple Load flow solutions for IEEE 14-bus system under normal conditions.
Bus No.Solution 1Solution 2Solution 3
Voltage Magnitude (P.U.)Voltage Angle (rad)Voltage Magnitude (P.U.)Voltage Angle (rad)Voltage Magnitude (P.U.)Voltage Angle (rad)
11.06000.00001.06000.00001.06000.0000
21.0450−0.25981.0450−0.08701.0450−2.4130
31.0100−0.58561.0100−0.22241.0100−2.5765
40.5607−0.49671.0142−0.17900.8014−2.4474
50.4906−0.30761.0172−0.15300.6721−2.3380
61.0700−3.21091.0700−0.25161.0700−2.5282
70.5750−1.41331.0503−0.23130.9537−2.5039
81.0900−1.41331.0900−0.23131.0900−2.5039
90.4426−1.98471.0337−0.25890.9402−2.5299
100.4554−2.38851.0326−0.26250.9548−2.5344
110.7016−2.95961.0475−0.25911.0075−2.5326
120.9857−3.21131.0535−0.26651.0465−2.5439
130.9215−3.16581.0471−0.26721.0331−2.5429
140.5129−2.79321.0213−0.28040.9613−2.5556
Table 8. Computational time taken per iteration in seconds for various methods.
Table 8. Computational time taken per iteration in seconds for various methods.
Solution Method5-Bus SystemIEEE 14-Bus SystemIll-Conditioned 13-Bus System
NRLF0.0282 s0.0522 s-
FDLF [1]0.0518 s0.0776 s-
NRLF with Optimal multiplier [22]0.0365 s0.0632 s-
Local search [22]0.0360 s0.585 s-
GA [22]0.0372 s0.0684 s-
PSO method [1]0.0318 s0.0603 s-
APSO [22]0.0370 s0.0598 s-
PSO with update [1]0.0498 s0.0601 s-
Proposed QOHBO0.0105 s0.0129 s0.0101 s
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Basetti, V.; Rangarajan, S.S.; Kumar Shiva, C.; Verma, S.; Collins, R.E.; Senjyu, T. A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator. Energies 2021, 14, 5382. https://doi.org/10.3390/en14175382

AMA Style

Basetti V, Rangarajan SS, Kumar Shiva C, Verma S, Collins RE, Senjyu T. A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator. Energies. 2021; 14(17):5382. https://doi.org/10.3390/en14175382

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Basetti, Vedik, Shriram S. Rangarajan, Chandan Kumar Shiva, Sumit Verma, Randolph E. Collins, and Tomonobu Senjyu. 2021. "A Quasi-Oppositional Heap-Based Optimization Technique for Power Flow Analysis by Considering Large Scale Photovoltaic Generator" Energies 14, no. 17: 5382. https://doi.org/10.3390/en14175382

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