1. Introduction
The wide deployment of micro-grids-based renewable energies systems (RES) is the solution for energy challenges all over the world. The integration of micro-grids in national and regional strategies is the way to increase energy access, thus leading to sustainable development. The small-scale and standalone micro-grid systems are well-adapted for energy supply in rural and remote areas. These systems, in such cases, could be used for electrification, cooking, and water supply.
The main problem with using renewable energy systems is actually the low conversion efficiency and the high-cost energy storage devices (ESD) used for blackouts or lower production periods. The use of an energy storage system (ESS) is mandatory for the continuous availability of the energy demanded. The actual most-used energy storage system is the battery.
Water and energy supply from micro-grids for household applications could significantly improve the living conditions of people in rural and remote areas. Many studies used battery energy storage in water-pumping system-based renewable energies for electricity and water supply. Hegazy et al. [
1] optimally designed a PV/battery system to supply water for irrigation in an isolated area of Egypt. The obtained results were found to be better than using a diesel generator or utility grid. Thapelo et al. [
2] developed multi-criteria decision-making to select the optimal micro-grid configuration for water pumping. The PV/battery system has been detected as the best configuration. Malla et al. [
3] studied a PV/battery water-pumping system for applications in the agricultural sector. The performance of the proposed study approach was demonstrated by the reliability of the system to respond efficiently to the load demand. The performance of a PV/battery system for electricity and water supply has been evaluated by Bhayo et al. [
4]. Muralidhar and Rajasekar [
5] demonstrated the feasibility of a PV/battery system for both lighting and water supply in a village in India. An energy management platform has been developed for this purpose. The techno-economic study of a standalone photovoltaic/water-pumping system for the water supply in rural and remote areas was performed by Falama et al. [
6]. The optimally designed system was able to fulfill the water demand of 328 households. Ibrahim et al. [
7] developed a computer program to create a comprehensive design of solar pumping-system components with different water demands. Verma et al. [
8] reviewed the water pumping system powered by solar PV. It was found that the PV water pumping system was more advantageous than diesel-powered water pumps. An optimal detailed analysis of a standalone photovoltaic/battery system was realized by Falama et al. [
9] for the electricity supply in rural and remote areas. The batteries’ size was identified as the most influential component on the studied system’s cost, while the reliability of the system was mostly influenced by the PV size.
Because of the high cost of the batteries and the high CO
2 emissions during battery manufacturing, another alternative for energy storage is being explored and implemented by researchers and industrialists. Some of the energy storage solutions proposed in the literature are the hydrogen energy storage system, the flywheel energy storage, the water-pumped energy system, the thermal energy storage system, etc. Since water pumping is already integrated into an energy-system-based water supply, it is possible to suppress the battery and consider the energy storage based on the water pumping by integrating mini-hydroelectric power generation. Such a kind of study was developed by Sanna et al. [
10], who realized the continuous operation of the high energy efficiency of a brackish water reverse-osmosis desalination plant based on photovoltaics and water-pumped energy storage. Gilton et al. [
11] also demonstrated the importance of coupling the photovoltaic with pumped hydro energy storage for developing countries.
Different methods are used in the literature for the optimal design of power systems [
12,
13,
14,
15,
16]. However, recently, metaheuristics algorithms have gained more attention for the optimization of energy systems [
17,
18,
19,
20].
Some research gaps have to be highlighted in the present study: (1) Many studies are performed in the literature for electricity and water supply in rural and remote areas communities, using two systems separately. The combination of the two systems in one could be more advantageous; (2) since pumped hydropower energy storage is expensive, the possibility of reducing the cost of renewable energy systems-based pumped hydropower energy storage should be explored in order to allow the extension of this clean energy production systems; and (3) few studies have considered the Firefly algorithm for performing multi-objective optimization of power systems; however, based on the performance of this method [
21,
22], it should also be widely used.
The aim of this research paper is to optimally design a cost-effective and reliable PV-system-based water-pumped energy storage for household electricity and water supply applications using a multi-objective Firefly algorithm. The contribution of this work is to (1) explore the benefits of using the PV-based water-pumped energy storage (WPES) system, (2) compare the PV/WPES with the PV energy battery energy storage for optimal decision-making, and (3) detail the operation of a PV/WPES and explore the possibility of his economic improvement, in order to increase the consideration and the interest of developing this system.
3. Mathematical Modeling
The proposed methods of analysis used to determine the optimal parameters of the system are based on model-based design and optimization methods, which are increasingly used for transdisciplinary analyzes of complex systems not only of a stationary nature, such as the proposed system, but also of complex mobile systems, i.e., land vehicles [
23], mobile robots [
24], or aircraft [
25]. All the necessary abbreviations, symbols, and Greek symbols definitions are provided in Abbreviation section of the manuscript.
3.1. PV Output Calculation
The PV power output is calculated by the equation:
where
Ppv,ref is the power of the PV generator at the maximum point in standard test conditions given by the constructor, and Xpv is the number of PV modules.
3.2. Pump Modeling
The pump’s nominal power is calculated as follows:
Xp is the multiplication factor of the pump’s nominal power.
At any time
t, the volumetric flow rate of the pumped water is given as:
In Equation (4), Ht is the total dynamic head.
3.3. Mini-Hydroelectric Turbine Modeling
The turbine power supply at any time
t is given as:
The water volumetric flow rate input into the turbine is deduced from Equation (5) as:
3.4. The Household Water Supply Modeling
At any time
t, the water supply for household uses is given as follows:
Qw is the volumetric flow rate of the household water supply.
3.5. The Upper Reservoir Modeling
The maximum volume of the upper reservoir is modeled as follows:
ED is the daily electrical load demand, VD_t is the total daily water demand for household uses, and Xres is the multiplication factor of the upper reservoir volume.
The volume of water in the storage reservoir at any time
t is determined by the relationship:
The instantaneous state of charge of the water tank is given as follows:
3.6. The Electrical Load Demand Modeling
The instantaneous total power demand is given in Equation (11):
The total annual energy demand is calculated as follows:
In Equation (11), Peld represents the power demand for household electrification.
3.7. Battery Modeling
The storage capacity of the batteries can be determined from the following relationship:
The storage capacity and the state of charge of the batteries at any time
t are respectively given by Equations (14) and (15).
Cbatt,n is the nominal capacity of the batteries.
3.8. Economic Modeling
The net present cost of the system includes the investment cost, the replacement cost, and the operation and maintenance costs. The net present cost of any component
X of the system is given by Equation (16). Thus, the net present costs of the PV generator, the pump, the turbine, the reservoir, the battery, and the inverter, are respectively obtained by replacing, in Equation (16),
X with PV, Pump, Turbine, Reservoir, Battery, and Inverter. The total net present cost of the system-based water-pumped energy storage is given in Equation (17). The total net present cost of the system-based battery storage is obtained by replacing Turbine with Battery in Equation (17).
The salvage values of the PV generator, pump, turbine, reservoir, battery, and inverter are respectively obtained by replacing, in Equation (18),
Y with PV, Pump, Turbine, Reservoir, Battery, and Inverter.
In the equations above, “floor” is a MATLAB function to obtain the integer part of a number, f is the annual inflation rate, i’ is the nominal interest rate, N is the project lifetime (years), and LifeY is the lifetime of the component Y.