Multi-objective Optimization of a Hybrid Nanogrid/Microgrid: Application to Desert Camps in Hafr Al-Batin

: This paper presents an optimal design for a nanogrid/microgrid for desert camps in the city of Hafr Al-Batin in Saudi Arabia. The camps were designed to operate as separate nanogrids or to operate as an interconnected microgrid. The hybrid nanogrid/microgrid considered in this paper consists of a solar system, storage batteries, diesel generators, inverter, and load components. To offer the designer/operator various choices, the problem was formulated as a multi-objective optimization problem considering two objective functions, namely: the cost of electricity (COE) and the loss of power supply probability (LPSP). Furthermore, various component models were implemented, which offer a variety of equipment compilation possibilities. The formulated problem was then solved using the multi-objective evolutionary algorithm, based on both dominance and decomposition (MOEA/DD). Two cases were investigated corresponding to the two proposed modes of operation, i.e., nanogrid operation mode and microgrid operation mode. The microgrid was designed considering the interconnection of four nanogrids. The obtained Pareto front (PF) was re-ported for each case and the solutions forming this front were discussed. Based on this investigation, the designer/operator can select the most appropriate solution from the available set of solutions using his experience and other factors, e.g., budget, availability of equipment and customer-specific requirements. Furthermore, to assess the quality of the solutions found using the MOEA/DD, three different methods were used, and their results compared with the MOEA/DD. It was found that the MOEA/DD obtained better results (nondominated solutions), especially for the microgrid operation mode.


Introduction
A robust power grid is a vital element that ensures the sustained supply of electrical power to all customers connected to the grid, with low cost, better quality, and minimal environmental harm [1]. Establishing such a grid is very challenging in a centralized system because of long-distance transmission lines, which increase the outage threat. Moreover, factors like high carbon emission levels, high transmission losses, and the challenge of entertaining remote consumers have called reliance on an extensive grid system into question. The distributed generation (DG) concept has provided an alternative to such a situation; it deregulates highly interconnected power systems and takes care of the issues described above. This approach could significantly reduce transmission loss and increase system efficiency [2,3]. The microgrid concept is one of the DG implementation outcomes, which aims to ensure the optimal power supply to connected loads [4]. Integration of re-Toamasina was the optimal location in terms of energy efficiency. Voltage quality improvements [22] in a nanogrid system and cybersecurity insurance [23] were also addressed in some recent articles. The review article [24] gathered all the relevant works on nanogrid optimization and demonstrated a critical comparison among the attempted approaches.
Camping is a part of tradition and culture in all the gulf countries; the Kingdom of Saudi Arabia (KSA) is not an exception. Camps are established in the desert, as a large portion of the countryside is covered by bare desert land. Al-Falahi et al. and Hilden et al. [24,25] demonstrated life in a desert tent, along with the life of tribal citizens of KSA. Some tents are built for a limited period, mostly during the winter season. In contrast, some are built for an extended period, mainly to graze domestic livestock. The temporary tents are primarily established for recreation, where local people spend time with their family and friends in cold weather. This paper used Hafr Al-Batin city, located in the Eastern Province of Saudi Arabia, to study the effect of nanogrids in a desert camp. Many tent-establishing shops in the city enjoy patronage in winter, selling and setting up hundreds of tents in the desert. However, current practices utilize diesel generators in these tents, which has evident shortcomings, e.g., high cost and negative environmental impact. These tents can be considered nanogrids. Upgrading such energy-consuming units by integrating a renewable energy source has vast potential. This upgrade is what we propose in this paper. This approach is suitable for any city or country, where desert camps are present. This paper presents an optimization strategy for a single nanogrid and proposes combining multiple nanogrids to form a microgrid-and operate them optimally. Even though much research has already been conducted on grid optimization, this paper will fill the gap by addressing the practical application in desert camps, where both the concepts of nanogrids and microgrids are concurrently implemented.
A multi-objective evolutionary algorithm is used in this paper to solve the complex multi-objective optimization of the nanogrid model. This algorithm offers an acceptable balance between diversity and convergence [26]. Several optimization techniques are noted in the literature, with a shortcoming: successfully dealing with multi-objective problems is more difficult than accounting for only two or three objectives. However, this paper's adopted technique is free from such drawbacks and effectively combines the properties of dominance and decomposition. Separately, dominance [27] and decomposition [28,29]-based evolutionary techniques have been used in the literature to deal with similar problems of microgrid characteristic optimization.
The main contribution of this paper is the optimal design of a smart grid, which can be modeled as a nanogrid or microgrid, depending upon the size of the desert camp load. This was achieved as follows: first, we formulated the nanogrid/microgrid design as a multi-objective problem. Second, we solved this problem using a performant multi-objective evolutionary algorithm based on dominance and decomposition-which has not been used before to solve a similar problem. Another contribution of this paper is the adoption of a variety of models for each equipment. The combination of these equipment models will lead to better results than the traditional use of a single model for each equipment.
The remaining paper is organized as follows: the subsequent section presents the fundamentals of the problem formulation. The description of the case study is discussed in Section 4. The detailed solution strategy of the addressed problem is explained in Section 5. Section 6 discusses the attained results with the necessary explanation. Finally, Section 7 concludes the paper.

System Description
In this section, the components of a typical nanogrid system and their respective models are discussed. A discussion on battery management strategy follows. The nanogrid formed by the primary constituents ( Figure 1) was then extended to create a microgrid, as shown in Figure 2. An algorithm encompassing all possible conditions that a nanogrid (with available constituents) might encounter during daily operation is presented. The optimization problem is formulated in the subsequent section. The formulation developed in this work independently found the optimal design and size for standalone nanogrids, as well as microgrids formed by the interconnection of several nanogrids. Below, the fundamental constituents of the system under study are explained and modeled. All these underlying components integrate to create a basic nanogrid. These multiple nanogrids are then connected to form an isolated nanogrid that shares their resources to ensure collective benefit within the newly formed microgrid. The term "hybrid" indicates that all discussed systems are composed of renewable and nonrenewable energy resources.

Fundamental Constituents
The nanogrid under consideration was categorized as a standalone hybrid nanogrid composed of Photovoltaic (PV) panels, battery bank, DC/AC inverter, diesel generator, and a load representing the needs of a remote but fully equipped desert camp or tent [30].   PV systems have always been considered a noiseless, readily available and environmentally friendly energy resource [31]. In recent years, there has been a notable rise in worldwide deployment. Conforming to global trends, KSA has envisioned a solar contribution amounting to 40 GW by 2030 to reduce fossil fuel dependency under the government's Vision 2030 [32]. Moreover, the country enjoys year-round solar availability and an extended summer season.
Daud et al. [33] and Razmjoo et al. [34] presented a way to compute a PV panel's output power, , given the instantaneous solar radiation, G (W/m 2 ), and ambient temperature, Tamb (°C), as shown below: where: Kt is a constant equal to −3.7  10 −3 (1/°C), Gr is the reference value G taken to be of 1 kW/m 2 and PRated is the rated photovoltaic power at standard test conditions (STC). The temperature of the PV cell at STC, denoted by Tref, is 25 °C.
In a hybrid nanogrid system, the diesel generator acts as the secondary source, conducive to reducing energy storage requirements, and plays a pivotal role in nanogrid economics, stability, and reliability. Due to its dependency on fossil fuel and low energy conversion efficiency, a diesel generator works at a low loading rate. Consequently, it is operated at peak load demand when the battery is depleted, making it an unlikely option under light loading conditions [35].
The diesel generator output is modelled by Ashari et al. in [36] where the fuel consumption of a diesel generator s(t) can be defined as a function of generated power, P(t), and rated power, Prated, as given below: where x and y with values of 0.246 and 0.08415, respectively, represent consumption coefficients [37]. The efficiency of the diesel generator, , plays a crucial role in the model accuracy and is the function of thermal break efficiency, , and generator efficiency, , as defined below: In designing a hybrid nanogrid, the size of the battery plays a crucial role. Souraki et al. [38] and Parida et al. [39] highlighted three factors in determining suitable battery size. The first one was autonomy days (AD), defined as the number of consecutive days the desired load can be driven solely by the battery bank, without any external support. The second factor, the depth of discharge, (battery's maximum usable capacity), directly influences battery life. As a common practice, the battery of the system was designed with 40-80% of its regular discharge. The third factor, atmospheric temperature, displays a direct relationship with , i.e., the higher the temperature, the greater the battery's capacity, decreasing the battery's life and vice versa. To keep derate-factor, , equal to one, the batteries are recommended to be kept at 25 °C.
The equation that relates all these factors in order to give battery bank capacity in Ah is given below: .
where LAh is the Ah accumulated over a single day, having a unit of Ah/day. The number of parallel battery banks, , is calculated by dividing targeted capacity, with selected capacity, as given below: In contrast, the number of series-connected batteries, , utilizes VS and VB, the DC voltage levels of system and battery, respectively: Finally, the total number of required batteries, , is the product of NBP and NBS, as given below: Consequently, if denotes the cost of one battery, the cumulative battery bank cost, , will become: The last component enabling the conversion and power transfer between the AC and DC components of a hybrid nanogrid is the DC to AC inverter. A standalone hybrid system often requires a single inverter; however, mathematically, the precise number of inverters servicing a nanogrid, _ , can be computed by a simple equation given below: where and represent the maximum load power and maximum inverter power capability, respectively. Discussion of the number of required inverters becomes vital when smaller networks are connected to form a more extensive network [40]. Consequently, if PHyb denotes the maximum power exchanged by a hybrid system, its ration with gives the number of required inverters in a grid connected system, Ninv_grid:

Energy Management Strategy
The intrinsic intermittency and uncertainty in both solar and load profiles requires the development of an energy management strategy for a hybrid nanogrid. In this work, condition-based energy management is proposed. These conditions act as a precursor in the optimization framework and are listed below: Condition 1: PV panels are the primary source of energy that is utilized with top priority.
Condition 2: If PV power is greater than the load, batteries are charged with the surplus power.
Condition 3: If PV and batteries combined are unable to supply the load, the diesel generator will compensate for deficit power.
Condition 4: If batteries are full, and PV has more power than required by the load, a dump load will be used to deal with the surplus power.
It is pertinent to represent these conditions in the form of a working algorithm. A framework comprising of nested if-else statements provide the workflow for the optimization formulation solved in the subsequent section. Algorithm 1 describes this framework with due linguistic convenience.

Algorithm 1:
Conditions-based priority workflow to manage energy in a nanogrid/microgrid.

Problem Formulation
The optimal sizing problem of nanogrid/microgrid constituents is formulated under the multi-objective framework [29] as follows: Subject to g( ) = 0 and h( ) ≤ 0 where ( ) and ( ) are the cost of electricity ( ) and the loss of power supply probability ( ), respectively, while represents the set of design variables. The variable g( ) denotes the set of equality constraints, whereas h( ) comprises all inequality constraints. The objective function aims to obtain a diverse set of nondominated solutions in vector , known as the PF, simultaneously satisfying both equality and inequality constraints while looking for the best possible combination of solutions.

Objective Functions
and are the two contrasting objectives of this problem. Various performance indicators assess the cost-effectiveness of a hybrid nanogrid/microgrid system. COE is one of the most common indices representing the per unit energy cost. It is evaluated using the following equation [41]: _ in the numerator consists of all significant operational costs incurred by a system, including replacement cost, and maintenance cost. Pload in the denominator represents power consumption per hour and is accumulated over one year (8760 hours) to give the cost per unit. Lastly, to incorporate the cost deterioration caused by the system's usage, the expression is multiplied by the capacity recovery factor ( ). If n denotes the life period of the PV panel-considered equal to the entire system's lifetime-and incorporates the effect of interest rate, would be: Next, the intrinsic uncertainty of a PV panel is handled as the second objective function. Due to unanticipated interruptions in the solar availability and errors in the forecast, the system might fail to supply the required instantaneous demand. Therefore, such power supply failure becomes a probabilistic event measured through . can be determined by running chronological simulations. Another approach to determine , used by Yang et al. [42] and Wang et al. [43], requires calculating the combined effect of all constituents of a nanogrid/microgrid. The chronological approach is used in this research, and the is defined as follows [43]: where T is the number of hours in this research. The power failure time is defined as the time that the load is not satisfied-when the power generated by the PV array is insufficient and the storage is depleted in [42]. It is worth mentioning that, although two objective functions have been considered for this study, many other objectives can be considered for future studies, including: minimization of emissions and pollutants, minimization of net present cost, and minimization of life cycle cost.

Design Variables
To enhance the optimization search space, manufacturing models of inverters, batteries, and PV panels are included as adjunct design variables. This feature enables the designer/operator of the hybrid system to select the most suitable manufacturer from each item's available list. Fundamentally, it provides the opportunity to choose the best combination of inverters, batteries and PV panels to work together to optimize and of equation (11). These adjunct design variables, representing various manufacturing models of PV panels, batteries, and inverters, are denoted by PV , Battery , and Inverter , respectively, and are annexed to the existing list of design variables, , as shown below: NDG is the number of diesel generators, NPV is the number of PV panels, and AD is the number of autonomy days.

Constraints
The problem is constrained due to battery storage dynamics, as under: where E represents the energy stored in the battery at the i th hour, DOD represents the depth of discharge for the battery to protect the battery from over-discharge (set at 80% for this study), E and E are the minimum and maximum battery energy storage capacity, respectively.

Description of the Case Study
The countries of the Arabian Peninsula are naturally blessed with considerable solar resources. These countries have made significant efforts to utilize solar energy's copious resources [44]. Despite ample solar energy potential, KSA is still harnessing fossil fuel resources to meet energy demand. However, policymakers have noted the issue with care and are targeting the maximum use of renewable resources in the near future [45]. Figure  3 presents the horizontal solar irradiation data for the country of Saudi Arabia.
Hafr Al-Batin is an important city in the Eastern Province of Saudi Arabia that shares a border with the neighboring country of Kuwait. This city has an extended winter season and is famous for desert camping activities. Most tents for these activities are supported by diesel generators and pollute the environment by burning fossil fuel. The average horizontal irradiation per day for this city is about 5.8 kWh/m 2 , as shown in Figure 3 [46]. The hourly solar irradiation data is presented in Figure 4 [47].

Load Estimation for a Desert Camp
A desert camp may include several tents. As informed by an experienced local person, a typical camp may have up to 2 or 3 tents as living rooms, two washrooms, and one tent for the watchman. It may include surrounding fences. Table 1 summarizes the detail of all the electric loads usually present in a desert camp. In this table, the load was estimated by investigating a similar tent in the mentioned city. The average energy demands in a day were 30.93 kWh and 72.46 kWh for weekdays and weekends, respectively, as shown in the table. The total load of the camp was around 6.46 kW. The peak demand in the weekdays was 2.6 kW whereas it was 4.5 kW during the weekend. On weekdays, people may leave the tent in the morning, go to work, and return at dusk. Therefore, the demand for a typical weekday differs from a weekend day, when people often remain in the camp throughout the day. Figure 5 shows such a desert camp, whereas Figure 6 presents the estimated load variation per day for weekdays and weekends.    Figure 6. Load profile for a weekday and weekend day of a typical desert camp.

Problem Solution Approach
The approach proposed in this paper optimized the sizing of hybrid photovoltaic/diesel/battery nanogrids using a multi-objective evolutionary algorithm based on both dominance and decomposition (MOEA/DD) [26]. To solve the multi-objective problem presented in (11), MOEA/DD decomposed the problem into several scalar subproblems using classic multi-objective optimization approaches, e.g., the weighted sum, weighted Tchebycheff, and boundary intersection methods [29]. The penalty-based boundary intersection (PBI) approach, known for good performance on a large class of optimization problems, was adopted in this work [48,49].
The algorithm for MOEA/DD is presented in Algorithm 2 [26] . The MOEA/DD algorithm was initialized by generating initial solutions and their corresponding weights. The parent population was then updated using elite-preserving mechanisms-offspring generated from parents through a mating procedure. In general, MOEA/DD is made up of the initialization, reproduction, and update procedures.
The initialization procedure (Algorithm 3) began with randomly sampling for the initial parent population from Ω (= g( ) ⋃ ( )), uniformly distributed. This step was followed by the identification of the nondomination level structure of , after which a set of weight vectors was generated before the assignment of the neighborhood. Weight generation methods discussed in [46,47] were associated with the explosion of computational complexity and diversity reduction, respectively. As such, the two-layer weight vector generation, proposed by Li et al. [26] was adopted. First, the sets of weight vectors in the boundary ( = { , … , } and inside ( = { , … , } layers of a simplex were generated such that = + . A coordinate transformation was then adopted to reduce the coordinates of weight vectors in the inside layer. This allowed for the evaluation of the jth component of = ( , … ) , ∈ {1, … } according to: where 〈 ( ), 〉 is the acute angle between ( ) and , = {1, … , }, ∈ Φ . The neighborhood of each of the weight vectors , ∈ {1, … , } was made up of the closest weight vectors in a Euclidean sense. The fast nondominated sorting method [50] was used to divide the solutions in into nondomination levels ( , … , , ≤ ). Finally, each solution in was initially randomly associated with a unique subregion. The primary role of the reproduction procedure, presented in Algorithm 3 [26], was to update the parent population after generat1ing offspring solutions. This update was achieved using two main steps: mating selection and variation operation. In the mating selection, some parents are selected for offspring generation from a neighborhood. Each solution is associated with a uniquely weight-specified subregion based on Euclidean distance in the method used. This association allowed for consideration of neighboring solutions from neighboring subregions before randomly selecting mating parents from the whole population when there were no associated solutions. As proposed by Li et al. in [26] , this work adopted the binary crossover (SBX) [51] and polynomial mutation [52] for the variation operation. Any other genetic operator could also be used.
The generated offspring was used to update the parent population according to Algorithm 4 [26]. The algorithm involved identifying the subregion of the offspring solution and combing with the parent population to generate a hybrid population . The nondominated level structure of ′ was then determined using the method presented by Li et al. [53]. Other considerations for updating were adopted from [26] . The optimal values of hypermeters were determined by trial and error aided by experience working with evolutionary algorithms.  Update the nondominated level structure of ; 27 return P

Application, Results and Discussion
The details of the models used for PV panels, batteries and inverters are tabulated in Table A1, Table A2 and Table A3 of the Appendix A, respectively. The design variables were constrained as follows: NPV ∈ [2, 100], NDG ∈ [1,10], AD ∈ [1,3], PV.
∈ [1,13], Battery ∈ [1,27] and Inverter ∈ [1,8]. The proposed approach was applied to the following two case studies using a population size of 100 for 200 iterations: CASE 1: Nanogrid operation mode CASE 2: Microgrid operation mode The following subsections describe the investigated cases and discuss the obtained results with some analysis and recommendations.

CASE 1: Nanogrid Operation Mode
This case investigated the operation of each tent separately (i.e., as a nanogrid). The MOEA/DD was run to solve the formulated problem for this case, and the obtained Pareto front was plotted in Figure 7. In this figure, the MOEA/DD generated 23 solutions; all of which occured between (COE = 0.3396 $/kWh, LPSP = 0.3015%) and (COE = 0.5544 $/kWh, LPSP = 0.1946%). It can be seen that the designer/operator can use a variety of solutions for this case.
In addition to that, the obtained PF solutions are given in Table 2. For convenience, these solutions are sorted in ascending order based on their COEs. If the designer/operator selects solution # 1, the nanogrid will be made of 2 PV panels and two diesel generators and will have an autonomy of 24 hours. The models for PV panel, battery and inverter are model # 7, model # 1 and model # 3, respectively, for this case. Finally, the objective functions obtained for this solution are COE = 0.3396 $/kWh and LPSP = 0.3015%.
A second example can be the selection of solution # 8. The designed nanogrid has an autonomy of more than 26 hours. It comprises 13 PV panels (Model #1), two diesel generators, the PV panel, battery, and inverter model are model # 1, mode #5 and model # 3, respectively. This solution yields a COE of 0.4182 $/kWh and an LPSP of 0.2383%.
A third example can be illustrated by solution #23. The sized nanogrid, composed of 30 PV panels and two diesel generators, has more than 25 hours of autonomy for this solution. The optimized component models are model #1, model #3 and model #3 for the PV panel, battery, and inverter, respectively. The solution has a COE of 0.5544 $/kWh and an LPSP of 0.1946%. The COE obtained for this solution is the most expensive due to the high number of PV panels used. Furthermore, Figure 8 exposes each component's contribution (i.e., PV panels, diesel generator, and battery) to the nanogrid over 50 hours for solution #23.   Power (kW)

CASE 2: Microgrid Operation Mode
In tthehis second case study, four tents were connected to form one microgrid. The proposed approach based on MOEA/DD was applied to this case, and the obtained PF is plotted in Figure 9. The number of obtained solutions was 37, and they are well spread between the extreme points with the following objectives (COE = 0.1933 $/kWh, LPSP = 0.4541%) and (COE = 0.278 $/kWh, LPSP = 0.3028%). This solution offers the designer/operator many options to operate the tents together as a microgrid, instead of 4 separate nanogrids.
Furthermore, Table 3 tabulates the final set of PF solutions sorted in ascending COEbased order. Many options can be selected for this case. One option could be solution #1, where the resulting microgrid will be composed of 60 PV panels based on model # 1, and 5 diesel generators. The batteries have autonomy for almost one and a half days. The battery model #16 and inverter model #1 are the best options for this solution. The objective functions for this solution are COE = 0.1933 $/kWh and LPSP = 0.4541%.
Similarly, if solution #12 is selected, the microgrid will be composed of 77 PV panels, five diesel generators and the system will have an autonomy of fewer than 30 hours. For this solution scheme, the PV panel, battery, and inverter models are model #1, model #16, and model #1, respectively. The objective functions for this solution are COE = 0.1998 $/kWh and LPSP = 0.4272%.
Another solution could be solution #29. This solution is composed of 98 PV panels of model 1 and 5 diesel generators. The models for battery and inverter are model #16 and model #1, respectively.
It can also be seen from Table 3 that for almost all the cases the best models for PV panels are model #1, the best model among batteries is model #16, and the best model for the inverter is model #1.
Furthermore, solutions from 30 to 37 are not very acceptable. Although they are part of the PF numerically, they represent nonfeasible solutions.

Comparative Study
A comparative study with other multi-objective optimization algorithms was conducted to assess the quality of the obtained results. Three well-known algorithms were selected for this study: 1) multi-objective evolutionary algorithm based on decomposition (MOEA/D), 2) novel multi-objective particle swarm optimization (NMPSO) and 3) speedconstrained multi-objective particle swarm optimization (SMPSO). Figures 10 and 11 show the comparison of the PFs obtained using the four algorithms for CASE 1 and CASE 2, respectively.
For CASE 1, MOEA/DD, MOEA/D, NMPSO and SMPSO generated a set of 23 solutions, 15 solutions, 11 solutions and 11 solutions, respectively. When these results were compared to each other to determine which solutions were nondominated, it was found that:


Among the 23 solutions generated using MOEA/DD, 16 were nondominated by any other solutions found using the remaining algorithms.  Among the 15 solutions generated using MOEA/D, 5 were nondominated by any other solutions found using the remaining algorithms.
 Among the 11 solutions generated using NMPSO, all were dominated by the solutions found using the remaining algorithms.  All 11 solutions generated using SMPSO were nondominated.
For CASE 2, the four used algorithms-MOEA/DD, MOEA/D, NMPSO and SMPSO-generated 37 solutions, 28 solutions, 4 solutions, and 4 solutions, respectively. These results were compared to each other to determine which solutions were nondominated. In this case, (i.e., they are part of the PF), the 37 solutions generated using MOEA/DD were nondominated by any other solutions found using the remaining algorithms. In contrast, all solutions generated using MOEA/D, NMPSO and SMPSO were dominated by those obtained using the MOEA/DD. Therefore, it can be concluded that the proposed approach, using MOEA/DD, is the most performant one for both operation modes. This conclusion was verified in the microgrid operation mode case (i.e., CASE 2.)

Conclusion
This paper presents a dominance and decomposition-based multi-objective evolutionary algorithm to optimize a hybrid nanogrid/microgrid's size and operation. Hafr Al-Batin, a city of the Eastern Province of Saudi Arabia, was selected for implementation. The reason behind choosing that particular city is the common practice of using desert camps, which can easily be considered nanogrid units. The nanogrid consisted of a solar system, storage batteries, diesel generators, invertor, and load components. Two different modes of operation were investigated in this paper: one with the single nanogrid and the second a combination of nanogrids, coordinated to form a microgrid. In the formulation of the optimization problem, the reliability and the cost of the system were considered. A set of diverse, acceptable, and widespread solutions were obtained from the developed program for both the case studies, which will guide the designer/operator of a nanogrid/microgrid to model such a system. The obtained results offered competitive and practical solutions to the addressed problem using a multi-objective optimization strategy.
However, the addressed issue of desert camping is not a regional problem; rather, it can be implemented in any part of the world. The designed nanogrid/microgrid concept applies to desert camps, but is suitable for any islanded load of a similar kind. Moreover, using such desert camps is widely seen in all the world's desert areas, particularly in the Gulf countries. Therefore, the paper's aspect is global, even though it addresses a particular region of the globe.
The presented work can be further continued to investigate possible recovery strategies, subject to the failure of a source like a PV panel or diesel generator. The effect of ageing on associated equipment (PV system, diesel generator, batteries, inverter, etc.) or of equipment modification (due to the connection of a new tent, for example) of load size can be considered future work of this research.

Conflicts of Interest:
The authors declare no conflict of interest.
Appendix A Table A1. PV panels models and information [54].