1. Introduction
The socioeconomic growth of nations is inextricably tied to energy availability or, in other words, it is dependent on having access to a variety of energy sources at the lowest feasible cost. Currently, only fossil fuels such as coal, crude oil and natural gas can provide this requirement. However, population expansion is hastening energy consumption and increasing the demand for and use of fossil fuels. Nonetheless, such a tendency raises pollutant emissions and exacerbates global climate change. The worldwide increase in CO
and greenhouse gas emissions, as well as the repercussions of climate change, have compelled global society to respond by demanding tangible and practical steps capable of altering how energy is generated and natural resources are managed. To this end, two worldwide treaties were signed: the Kyoto Protocol [
1] and the Paris Agreement [
2]. Despite the world treaties, only the member state of the European Union (EU) agreed to set stringent and binding targets for the years 2020 [
3], 2030 [
4] and 2050 [
5] to push the energy transition toward a renewable-based economy. Notwithstanding the achievement of the targets set for 2020 [
3] and the strenuous efforts to build a sustainable and decarbonized power generation system, more than 77% of the EU’s greenhouse gas emissions still come from the production and use of energy [
6]; a considerable share that can compromise the entire ambitious plan of becoming climate neutral by 2050. Therefore, to speed up the installations of renewable-based plants, cut CO
and greenhouse gas emissions and jump-start the economy after the devastating COVID-19 waves, the EU established the European Green Deal (EGD) [
7]. The plan set ambitious greenhouse gas emission cuts. The Paris Agreement set a reduction in CO
of at least of 40% by 2030 compared to 1990 levels, while the EGD increased that target to at least 55%. Obviously, this is a big challenge for the EU but relies on fine achievements. One above all is the emissions reduction reached in 2020 compared to the target fixed for that year in 2008. The goal was a reduction of 20%, but, already in 2019, the registered reduction was equal to 24%. The percentage increased to 31% in 2020 (partially due to the COVID-19 pandemic). Thus, although achieving carbon neutrality in fewer than 30 years may be difficult, there will be many advantages. Instead of using fossil fuels, the power industry will rely on Renewable Energy Sources (RESs). Citizens may generate their own energy and the proportion of RESs in total energy consumption may be increased up to 32%. The supplies will be secured and guaranteed to be affordable. The energy market will be digitalized, integrated and networked. The notion of energy efficiency will expand and the energy performance of the building will be improved.
We have therefore understood that the EU’s objectives are far from simple, but we must now understand what it means for a member state to implement such maneuvers. Let us take Italy as an example. To fulfill the assigned goals, Italy has to add 10 GW of wind (of which 0.9 GW will be offshore) and 30 GW
p of solar (of which 0.88 GW
p will be concentrated solar power) by 2030 [
8]. This means jumping from 10.90 GW of wind and 21.65 GW
p of solar installed in 2020 to 23.23 GW and 52 GW
p, respectively [
9], a rise that could boost renewable electricity production from 41.7% up to 55%, with significant benefits in terms of greenhouse gas reduction and security in energy supplies. Such a transition is increasingly essential, especially after 24 February, 2022, when Russia started military aggression against Ukraine. From that date, the world’s energy and economic system equilibrium has been completely disrupted and EU authorities were pushed to amend sanctions on Russia in light of supporting Ukraine’s resistance. Such a set of political maneuvers provoked a cut in Russia’s natural gas export, forcing the European Commission to act to avoid an energy crisis [
10] rapidly. The result is the REPower EU [
11]: a plan to rapidly reduce dependence on Russian fossil fuels and fast forward the green transition. This plan intends to increase wind and solar installation, particularly in countries like Italy, where these resources are abundant and the dependence on Russian natural gas is considerable compared to other EU members. However, because of such sources’ changeable and unpredictable character, a synergy between power deployment and storage capacity installations is required. This is the only measure that can assist balance supply and demand without experiencing significant and unexpected power swings, which may cause management and control issues, device malfunctions and local to worldwide blackouts. As previously stated, if Italy is taken as an example, to allow a grid-safe operation after adding other 10 GW of wind and 30 GW
p of solar, estimations indicate the need to add approximately 6 GW of centered storage and 4 GW of distributed storage [
8], a requirement of new storage capacity that can not be covered only with pumped hydro and battery energy storage. Therefore, there is a demand for conceptualizing and designing alternative energy storage systems able to be installed near renewable plants and capable of storing large amounts of energy. Additionally, it can be beneficial that these new storage facilities exhibit a low or even null environmental impact and a capability to use the fossil-based power units’ sites, devices and infrastructures. The latter features can revamp conventional plants fed by fossil fuels in storage units, an action that prevents land and raw material consumption.
Baring in mind the requirements and the socio-economical constraints mentioned above, the authors have developed the so-called Integrated Energy Storage System (I-ESS): a storage unit embeddable into in-decommissioning fossil thermal power plants and in the location of wind or solar facilities [
12,
13]. The plant stores electricity as sensible heat in a high-temperature artificial tank consisting of a solid packed bed that acts as a Thermal Energy Storage (TES). The I-ESS plant is an open-cycle adopting air as a working fluid in both storing and regenerating mode. The storing scheme comprises a high-temperature tank, a fan, an electric heater, an electric motor and a heat exchanger. On the other hand, the re-generation unit consists of a gas turbine in which the high-temperature tank replaces the combustion chamber. Unlike other energy storage technologies such as pumped hydro and compressed air energy storage, the I-ESS plant has no geographical constraints and does not need a steady water flow like pumped hydro or a natural gas stream like compressed air energy storage. The I-ESS unit has a longer cycle life than storage batteries and its design has a lower scheme complexity than Pumped Thermal Energy Storage (PTES). Despite past tests proving the I-ESS plant’s practicality, more research into the plant’s ability to function in conjunction with a variable renewable-based facility is required. To this end, the authors selected to couple the I-ESS unit with a PhotoVoltaic (PV) facility characterized by a peak power of 10 MW. The I-ESS storage unit and the PV facility act as a Virtual Power Plant (VPP), being perceived by the electric grid as a unique generation unit. In this study, the VPP is managed so that it provides constant power to the grid for the maximum number of hours possible throughout the year. Such a management strategy avoids the typical daily power fluctuations of solar energy. To the best of the authors’ knowledge, there is no equivalent research in the literature in terms of both plant layout and management approach, making this study a genuine pioneering contribution in the field.
The vast majority of the investigations available in the literature, in fact, focused on developing new TES-based plant arrangements and evaluating their energy performance. The first investigation dated back to 2010 and was performed by Desrues et al. [
14]. The study described a PTES system for large-scale electricity storage. During the charge, the unit acts as a high-temperature heat pump cycle, while it works as a thermal engine during the delivery phase. The electricity is converted into heat through a compressor and stored in cold and hot tanks. The simulations demonstrated the plant’s capability of storing 602.6 MWh. The charge and discharge times were 6 h 3 min and 5 h 52 min, respectively, while the storage efficiency reached 66.7%. A year later, Howes [
15] presented a similar configuration, but, in his conceptualization, the PTES unit could generate 2 MW and store 16 MWh. Based on this study, the author claimed that PTES has vast potential due to its high efficiency and low costs. Simultaneously to Howes [
15], White [
16] conducted an investigation on PTES to estimate the thermal reservoirs’ thermodynamic losses. He concluded that two sources of losses could be defined: thermal losses and pressure losses. The former are associated with thermodynamics irreversibility, while frictional mechanical effects cause the latter. Both of them cannot be neglected and a set of correlations was proposed for their estimations. Considering the promising findings, in the period 2013–2018, White and his research team performed a set of investigations on PTES devoted to analyzing (i) the entire cycle performance [
17], (ii) the wave propagation and the losses in packed bed [
18], (iii) the design of the plant [
19], of the reservoirs [
20] and the backed bed flow path [
21]. In the same time frame, Thess [
22], Ni and Caram [
23], Guo et al. [
24], Abarr et al. [
25,
26] and Benato [
27] also analyzed the PTES configuration with the aim of assessing the PTES energy performance and find the best working fluid and thermodynamic conditions.
Contrary to the previous studies, Benato and Stoppato [
28] studied the influence on the PTES energy and economic performance of the storage material type and the maximum cycle temperature while Wang et al. [
29] analyzed, in an initial study, the influence of the mass flow rate unbalances in the packed bed and, then, they proposed an innovative management strategy for the Brayton-cycle-based pumped heat electricity storage able to reduce by 1.8 the storage size [
30].
More recently, Zhao et al. [
31] conducted a parametric design optimization to find the best PTES configuration working fluids and storage media from a thermodynamic perspective, while Albert et al. [
32] evaluated the operation and the performance of a Brayton PTES with additional latent storage. Bahzad et al. [
33] proposed two novel energy storage systems intending to reduce the cost per unit of energy stored. The first integrates the PTES with the chemical looping technologies, while the second merges the first system with an open-cycle gas turbine. The performed techno-economic assessment shows that both systems’ round-trip efficiency reaches 77%, but the daily profit of the second integrated plant is between 4.9% and 72.9% higher than the system coupling the PTES with the chemical looping technologies. Zhang et al. [
34] compared a PTES system with indirect thermal energy storage and a direct one. The results show that, despite a lower round-trip efficiency, the Indirect PTES is advantageous owing to its low installation cost when its electricity storage duration exceeds 6 h. In terms of capital cost, the latter configuration guarantees a 40% reduction compared to Direct PTES. After this preliminary investigation, Zhang et al. [
34] designed a 10 MW Indirect PTES system and found that the optimum round-trip efficiency and energy density are approximately 65% and 26 kWh m
−3, respectively. They also noted that the research provides a theoretical basis for designing and optimizing high-efficiency and low-capital-cost PTES systems. On the other hand, Wang et al. [
35] developed an optimizer based on the exergy method for a Joule–Brayton cycle-based PTES system. The study demonstrated that the maximum working temperature and the efficiency of the turbomachines are positively correlated to the round-trip efficiency and the energy storage density. Moreover, the optimal pressure ratio must be determined to balance efficiency and energy storage density. The above-mentioned analyses and the optimization provide a theoretical approach for the future design of such systems.
In the literature, several reviews are also available. For example, Benato et al. [
36] presented the state-of-the-art and the future development of the sensible heat thermal electricity storage systems while, in a later study, they analyzed and compared the pumped thermal electricity storage with other large-scale storage technology underlying both the characteristics and the barriers that can limit the spread of this technology [
37]. Moreover, Smallbone et al. [
38] compared PTES with other storage technologies, but the yardstick is the levelized cost of storage. In 2020, Dumont et al. [
39] presented a state-of-the-art review of the Carnot Battery technology while, in 2022, Novotny et al. [
40] focused their review on the commercial development of the Carnot Battery technology. Contrary to others, Liang et al. [
41] performed a technical review of the key components for the Carnot Battery, focusing on technical barriers and the selection criteria.
Based on the performed literature survey, to the authors’ best knowledge, only Petrollese et al. [
42] conducted an investigation involving a storage unit adopting a TES-based tank and a renewable-based plant combined in a VPP. Conversely, such literature has a more corroborated tradition in other fields, such as wind and pumped-hydro [
43,
44,
45] or, more recently, wind and electric vehicle fleet [
46,
47]. In particular, Petrollese et al. [
42] aimed to thermally integrate a PTES system with a Concentrating Solar Power (CSP) plant. The two sections operate with the same working fluid, share several components and can operate simultaneously or independently of each other. A TES system composed of three thermocline packed-bed tanks is included. Specific mathematical models were developed to simulate the performance of the integrated PTES-CSP plant under design conditions and to evaluate the thermal profiles of the TES tanks. As a case study, an integrated PTES-CSP system characterized by a nameplate power of 5 MW with a design storage capacity of four equivalent hours was considered. The influence of the main design parameters, namely the pressure ratio and the operating temperatures of the TES system, on the leading performance indices was discussed. As is evident, the investigation is profoundly different from the study proposed in the present study since, in this investigation, the focus is not on the I-ESS performance but the VPP one. In addition, the renewable facility, in this case, is a PV and the storage unit is the I-ESS instead of a conventional PTES unit. The I-ESS is an authors’ patented configuration [
48].
The rest of the work is organized as follows.
Section 2 describes the power plant in terms of the I-ESS characteristics, numerical modeling and VPP arrangements. Results are presented in
Section 3, while concluding remarks are given in
Section 4.
2. The Power Plant Description
2.1. The Integrated Energy Storage System
The key element of the present VPP proposal is the I-ESS unit. This is a patented configuration established by the authors based on the PTES idea but with the key benefits and shortcomings of that technology in mind. The authors also wanted to suggest a low-complexity storage unit that uses a freely accessible, non-toxic and non-flammable fluid, as well as a storage facility that can be installed near renewable facilities or embedded in underutilized/decommissioned fossil-based units. Furthermore, during the I-ESS conception, the authors contemplated using largely market-available energy-sector components (such as compressors, turbines, fans, tanks and so on) to make their storage system readily buildable. In the past, the authors first analyzed the complete storage plant [
12,
13] to assess the proposal’s performance and technical and economic feasibility. They then shifted their focus to the TES tank [
49]. Both branches of the same study subject revealed the need for thorough mathematical models, particularly in putting the suggested technology to work for a variable renewable plant to smooth its production curve and minimize grid instabilities.
Figure 1 displays the I-ESS scheme. The design incorporates the components necessary to store electricity in the form of sensible heat as well as those that enable the thermal energy stored in the tank to be converted back into electricity. To store the power in the form of sensible heat, the system needs a fan (FAN), a heat exchanger (HX), an electric heater (EH) and a high-temperature storage tank (TANK). The plant is an open cycle, with air serving as the heat transfer fluid. The fan draws air from the surrounding environment (point 1) and pushes it to follow the path indicated by points 2 to 6. The operational fluid exiting the fan passes via the heat exchanger (way 2–3) and the electric heater (route 3–4). The electric heater is the heart of the storage unit because it turns excess power, such as that produced by solar or wind energy, into heat. In actuality, the device employs electrical energy to raise the air temperature from the state reached in point 3 to the highest possible value in the cycle (point 4). T
4 corresponds to T
max, the maximum cycle temperature.
This is an I-ESS plant design parameter that is chosen during the engineering phase based on the physical properties of the TES-packed bed storage material and the electric heater manufacturing technology. The latter is crucial since market-available electric heaters cannot attain temperatures greater than 1200 °C owing to a shortage of high-performance materials, limiting I-ESS performance. In contrast to PTES systems where the compressor turns power into heat, the electric heater enables T4 to remain constant and equal to Tmax regardless of the value assumed by the temperature in point 3. This distinguishing feature of the I-ESS unit ensures that the fluid is heated directly with electricity rather than employing the compression process irreversibly. A high-pressure ratio is obviously required to obtain a high temperature in PTES, which means high purchase costs for both the compressor and the storage tank. In the I-ESS plant, on the other hand, the design pressure established during the charge is equivalent to one that ensures airflow through the components while accounting for pressure losses. In a word, the electric heater insertion enables you to choose a low-pressure setting while retaining a high maximum cycle temperature.
The heated air that exits the electric heater in condition 4 enters the tank, which serves as the thermal energy storage unit. The tank is vertically structured to minimize buoyancy-driven thermal front instabilities and is composed of three elements: (i) The upper plenum. A crucial component for balancing the airflow and lowering its velocity. (ii) The packed bed, i.e., the TES device’s core. The packed bed stores electricity in the form of sensible heat and is composed of randomly packed spheres or a solid matrix with airflow channels. Aluminum oxide, titanium oxide, limestone, concrete, sand, masonry material and silica may all be used to make the solid matrix or the spheres. Depending on the specific heat and density of the material, the TES may be used to store heat at high or low temperatures and for a long or short period of time [
50]. As a result, choosing the packed bed material and shape is critical for properly designing the TES and optimizing the I-ESS plant’s performance depending on the function needed by the grid. (iii) The plenum at the bottom. This tank section catches air and then delivers it through the pipe.
As said, the air enters the tank at condition 4 and flows through the packed bed. At the begging of the charging process, the packed bed material is at ambient temperature. Therefore, during its flow, the hot air heats the packed bed and, when it leaves the tank, its temperature (T5) and pressure (p5) are both lower than those reached in point 4. It is also worth noting that, in comparison to the PTES, the I-ESS plant has a single tank (the hot one), while the PTES has both cold and hot storage. Before being discharged into the environment, the air is driven via a heat exchanger to enable pre-heating of the air entering the electric heater and further cooling the air exiting the I-ESS unit. In contrast to PTES, as previously stated, the I-ESS is an open cycle utilizing air rather than a closed loop using argon.
When the grid needs electricity, the I-ESS plant operates in discharging mode. The re-generation unit consists of a gas turbine with thermal storage in place of a combustion chamber. The compressor draws air from the surroundings at ambient conditions (point 11). The compressed air is then transported to the TES tank to be heated by the heat stored in the packed bed material (point 12). The air leaving the storage at condition 13 is expanded by the air turbine. After the expansion, the air is released into the environment. As for the charge layout, the delivery arrangement is also an open loop with unique storage. So, compared to PTES, the number of components is reduced, the working fluid is air and the plant management is less complex, with the gas turbine power unit being without the combustion chamber. There are also benefits in terms of costs compared to PTES and plant availability.
2.2. The Virtual Power Plant
A VPP is an aggregator that connects generators, loads and storage systems as a single entity to the grid. The VPP concept is vast since it may combine numerous types of distributed energy sources and can serve a variety of direct and indirect goals depending on the players involved and the marketplaces in which it works. The VPP in this study combines a variable renewable solar PV plant with the I-ESS unit specified in
Section 2.1. The VPP’s goal is to prevent the traditional peak power during intense solar radiation times and the nighttime hours of null output. System operators, in fact, dislike situations that might cause instabilities in the electric grid. Thus, to achieve this purpose, a portion of the energy generated by the PV plant during peak output hours is immediately transferred to the electric grid, while the remainder is utilized to charge the I-ESS system’s storage tank when circumstances permit. During non-productive PV hours, the energy stored in the I-ESS tank as sensible heat is converted to electricity and provided to the grid at a steady power output. As a consequence of the PV aggregation with the I-ESS storage, the grid’s power profile becomes mostly constant. In the case under consideration, a management strategy is developed that allows the VPP to be viewed as a plant that provides programmable and constant power to the grid for the maximum number of hours per day, even though the generation comes from a variable renewable energy source. This is a network-related problem, as will be explained later.
Figure 2 reports a sketch of the VPP.
As can be seen, the plant also includes a battery pack. Such a device is required to store energy when the power provided by the PV is less than a predefined power and is also insufficient to charge the TES tank. Thus, the energy stored in batteries is utilized to start the I-ESS power train when the re-conversion phase begins. Considering the PV and I-ESS design characteristics, the battery pack capacity has been estimated in 10 MWh [
51]. The VPP design considers an operational PV plant installed at Portoscuso, Sardinia, Italy. The PV power is 10.316 MW
p, the panels are oriented by 32° and the annual mean energy output is about 16 GWh. The plant owner supplied the data for the present research. According to discussions with the plant operators, the electric node suffers from significant fluctuations in PV output, from approximately 4 MW to 7.5 MW. Thus, grid stability may be achieved if the node obtains a steady power in the range 800 ÷ 850 kW. In the present study, we choose 800 kW as the power that must be provided to ensure network stability and minimize PV plant disconnections. According to such constraints, the I-ESS plant is developed to maximize the number of hours per day at which 800 kW is guaranteed, preventing both output loss and grid congestion. Obviously, after evaluating the VPP feasibility and capability of providing constant power to the grid, other management strategies can be tested, e.g., the economic issues or different market scenarios that are overlooked at this phase. Moreover, comparisons among the proposal and configurations using, e.g., a battery pack or PTES as a unique storage device, can be helpful to establish the proposed VPP arrangement viability.
The PV production for each day of the year is reconstructed by quarters of hour to investigate the VPP’s capacity to deliver 800 kW to the grid and calculate the number of hours during this circumstance. To this end and considering the PV plant coordinates the authors’ acquired the solar irradiance data from the Global Solar Atlas tool [
52] while the weather and climate conditions are taken from “Il Meteo” [
53]. To speed up the computations and reduce the data management, a production profile is created for the mean day of each month. Considering the grid needs, the available space in the PV facility and that the I-ESS tank size has to correspond to the amount of energy that needs to be stored at the required temperature, the TES tank is designed as well as the power unit made of an air compressor and turbine is selected. In particular, the power train selection is an easy task since only market-available in-decommissioning gas turbines are considered. After a market review, the Pratt and Whitney Power Systems’ ST6L-816 (1978) gas turbine is taken into account. The design mass flow rate and the maximum operating temperature are 3.9 kg s
−1 and 975 °C, respectively, while the nameplate power at ISO conditions is equal to 848 kW. Considering the grid needs, the power unit is de-rated at 800 kW.
According to Singh et al. [
54], the size of the packed bed comprising the thermal energy storage must be adjusted such that the bed absorbs the greatest amount of energy made available by the heat transfer fluid passing through the bed during the charge. For this purpose, the authors conducted a parametric study to design the tank. According to this, T
4 is fixed at 975 °C, while the bed volume is kept equal to 250 m
3 of randomly packed spheres of Alumina oxide. Given the power train mass flow rate and the necessity to charge the TES in the smallest amount of time, the charging scheme includes two fans with a design mass flow rate of 3.5 kg s
−1. Such a design configuration ensures a wide variety of charging flow rates as well as the ability to better use the energy provided by the PV panels. Thus, two fans cause the air flow during the charge. The storage is considered fully charged when the air temperature exiting the storage tank is 10 K lower than T
max. Note that, at the time being and to the authors’ best knowledge, there is no precise criterion for designing the TES-packed bed or selecting the gas turbine and the fan machines. However, the authors are working on it and, with these preliminary investigations, they want to identify parameters and variables that can help in the design and selection of the components.
2.3. The Virtual Power Plant Numerical Model
The VPP numerical model is developed in a Matlab [
55] environment; a coding platform that ensures that the produced model can be readily interfaced with both fluid libraries, such as CoolProp [
56] and databases for the PV meteorological data. Particular efforts are made in the mathematical modeling of both the PV facility and the I-ESS plant.
In particular, the numerical model of the PV computes the quarter-hour power production profiles on a mean day of each month starting from the solar irradiance, the temperature, the PV panel characteristics and the ambient temperature.
Figure 3 reports the four-month quarter-hour power production profiles. The PV power generation is considered the same for each day of a single month. The estimated profile of each day of each month allows computing both the monthly and the annual mean production of the PV plant. Comparisons between the electricity production estimations and the confidential data provided by the PV owner indicate a mismatch lower than 2% on both monthly and annual bases.
Despite using a monthly average PV production profile, the VPP model is wholly dynamic since the temperature distribution within the I-ESS storage tank varies depending on the quantity of energy stored and restored over the day. As a result, the performance of the VPP is calculated using a yearlong simulation.
Note that the TES temperature profiles—after an adjustment period occurring in the first days of the month (the day-by-day difference of the thermal profiles is caused by the change in the PV production profile at the beginning of each month)—became regular despite the TES tank loss change based on the ambient temperature. In the model, this value changes on an hourly basis. It is also essential to highlight that the simulations cannot perfectly match the real PV production behavior since meteorological variability cannot be considered in a mathematical model. However, the arrangement represents a good starting point to simulate the coupling of the two systems and estimate the potential of storing the PV electricity as sensible heat.
The I-ESS model governing equations are widely detailed in Refs. [
12,
13]. Compared to Refs. [
12,
13], the TES mathematical model is updated with the so-called TES-PD model, a TES system numerical model developed in house at the Industrial Engineering Department of the University of Padova by the present research group. The interested reader can refer to Refs. [
49,
57,
58] for a complete description of the model, while in the following, only a quick rundown is given. The tank model behaves according to the following set of Partial Differential Equations (PDE):
This set of equations consists of the fluid’s mass conservation equation, the fluid energy conservation equation and the solid energy conservation equation. The model’s closure is made by a constitutive expression for the pressure drop and the ideal gas equation of state:
Here
t,
x and
L denote the time, the axial tank coordinate and the length, respectively;
,
,
and
p are the fluid density, velocity, temperature and thermodynamic pressure.
and
are the storage material density and temperature.
and
are the fluid and the solid effective thermal conductivity, while
and
are the fluid and the solid specific heat coefficient at constant pressure.
is the void fraction,
is the ambient temperature and
r is the specific gas constant. The
and
coefficients assume different values depending on the storage material geometry. The present case concerns sphere packing, then
where
d is the particle equivalent diameter.
denotes the external surface to volume ratio while
is the overall heat loss coefficient.
when the considered geometry is sphere packing.
is the Nusselt number and
is the friction coefficient. The TES-PD model employs a first-order explicit Euler scheme for temporal integration and a first-order generalized upwind finite difference approach for spatial terms. A second-order central approximation based on the method proposed by De Vanna et al. [
59] is used for diffusive terms accounting for cell variability of the physical parameters. Such integration strategies are selected based on computational correctness and efficiency. As said, Ref. [
49] offers further information concerning boundary conditions, model validation and numerical implementation issues.
During the charging phase, the PV power availability drives the power profile through a mass flow rate control, which becomes a TES-PD model boundary condition. Because of the operational constraints of each system’s components, not all mass flow rate values are allowed. Thus, multiple fans are employed to reach the mass flow rates necessary for power generation while maintaining an appropriate functioning range. The operational range of turbine mass flow rate is significantly more limited. An approach for meeting these criteria is to impose two mass flow rate constraints (specified on the nominal mass flow rate of the gas turbine used). The first limitation is the minimum mass flow rate during the charging phase, which must be greater than . The constant power output ensures a minimal mass flow rate throughout the discharging phase, but when the temperature of the air outflow from the tank begins to decline, the mass flow rate begins to climb. As a result, a maximum mass flow rate limitation must be imposed, i.e., the mass flow rate must not exceed , i.e., 105% of the value for the gas turbine. In both situations, is enforced to the gas turbine design mass flow rate. These constraints affect the charging and discharging processes: charging occurs when the plant’s power output surpasses a value that allows the mass flow rate to be greater than the minimum, while discharging occurs when the mass flow rate ensures exceeds the maximum. The ambient temperature, which is important in thermal heat exchange with the tank’s coating and even indicates the temperature of the inflow air into the system, is selected differently for each month according to meteorological data.
To evaluate the VPP performance, some mathematical identities need to be defined. At first, energy is defined as
where
is the time-varying power.
and
denote the total amount of energy involved in the charging and discharging processes, respectively, while
is the total production of the PV power plant and
is the total amount of energy injected into the grid by the VPP plant.
is the total amount of energy produced by the PV and directly injected into the grid. Thus,
is related to
and
as
is energy stored in the battery pack. Concerning performance parameters,
is the storage efficiency
while
is the overall VPP efficiency, so the following equation holds
In addition, some regularity indices are also defined. Thus, the
net regularity index,
,
represents the percentage of the hours of the year in which the VPP provides constant power to the grid. Its value is computed according to the following equation: The
regularity index,
, instead,
denotes the percentage of the hours of the year in which the VPP provides the constant power to the grid plus the hours that the energy is stored in the battery pack.