Based on the proposed methodology and factor analysis of regional RE development, this section substantiates the optimal amount and mechanisms of state investment support for constructing household solar and wind energy facilities on the example of Ukraine’s region.
4.2. Considering the Regional Development Goals for Choosing RE Investment Directions
The primary goals of regulating investments in the regional RE advancement are to ensure sustainable development of local energy industries, reduce the territories’ dependence on external energy resources, use local resource and energy base efficiently, improve the regions’ environment, meet the energy needs of population and businesses, and provide a reliable energy supply.
Firstly, state regulation should ensure relatively even placement of RE facilities in regions with deteriorating, intense and catastrophic environmental situations [
44]. Secondly, investment policy should stimulate the development of new RE technologies poorly represented or absent in the domestic RE market (for example, geothermal energy, offshore wind farms, etc.). Thirdly, the state should encourage spreading the cheapest green energy facilities. The latter will reduce the feed-in tariff payments from the national budget and decrease the weighted average electricity price on the market.
Using the methodology from
Section 2, let us determine the share of the interest-free loan in the total investment costs per 1 MW of the generating facility
() on the example of home 30-kW solar photovoltaic (
) and wind power
() plants located in the Sumy region, Ukraine.
When calculating for the two mentioned technologies, the following assumptions were applied:
- −
weights of factors , and weights x, y, z, q were taken equal to each other when calculating coefficients , i.e., for example, x1 = x2 = x3 = 1/3, q1 = q2 = 1/2, etc.;
- −
cost values calculations were performed in euros to avoid the impact of Ukraine’s national currency (the hryvnia) exchange rate fluctuations. Moreover, due to hryvnia’s instability, the feed-in tariff is legally fixed in euros;
- −
in the absence of available official data, alternative information was used to calculate the indicators, or they were replaced by others that best met the calculation objectives. If the data was completely absent, the indices were not calculated;
- −
calculations were performed as of 31 December 2020, as most of the indicators were available on this date. The official exchange rate of hryvnia to euro on this date was UAH 34.74 for 1 EUR. It was used to assess cost values in euros [
56].
Calculation of the coefficient of the unimplemented economically feasible solar energy potential for the Sumy region (
) was performed using the formula (2).
Table 3 presents the indicators to assess
. Due to a lack of regional data, the number of sunny days was replaced with two other parameters: specific photovoltaic power output and air temperature.
A formula similar to the formula (2) was used to process the coefficient of the unimplemented economically feasible wind energy potential for the Sumy region (
). However, the number of sunny days and insolation were replaced with mean power density and mean wind speed (see
Table 3).
In the absence of local targets for various RE technologies development in Ukraine’s regions, it was impossible to determine the relevant indicators, so they were excluded from consideration.
According to calculation results, and . These values are less than one. Thus, the available economically feasible potential of the considered RE technologies is slightly lower than the average Ukrainian one. Therefore, financing solar and wind energy deployment in the region is less effective than, for example, in the southern territories because of less favorable natural and climatic conditions.
The calculation of the coefficients of solar and wind energy economic stimulation for the Sumy region () was carried out using the formula (3).
The algorithms specified in [
59] were applied to process the feed-in tariff rates. The feed-in tariff coefficients corresponded to residential solar and wind power plants put into operation from 1 January 2020 to 31 December 2024 [
60].
Table 4 summarizes the calculation results.
LCOE for household 30-kW solar and wind power plants was estimated in the study [
61]. Recent scientific literature has no coherent data on the world average cost of electricity generation by home solar and wind power plants. Therefore, we used the electricity generation cost data for the mentioned RE technologies on the world market in 2020 [
54]. The calculation results are shown in
Table 4.
The feed-in tariff payments shares in the national budget for solar and wind power plants were calculated by multiplying electricity volumes generated by households in Ukraine (regional average indicator) and the Sumy region using each RE technology in 2020 [
62,
63] and the feed-in tariff rates for the mentioned technologies (see
Table 4). The open sources do not contain data on electricity generation by household solar power plants in the Sumy region in 2020, but information on their installed capacity of 16.58 MW [
64]. Therefore, we calculated the indicator based on forecasted annual volumes of electricity generated by solar power plants in the Sumy region, namely 1169 MWh/year per 1 MW of installed capacity [
65].
As for wind power plants, there are no small wind turbines with a feed-in tariff in the local households [
66]. Thus, it is impossible to calculate the ratio of feed-in tariff payments shares (
). Therefore, this indicator for wind energy was excluded from consideration.
Table 5 presents the calculation data.
According to the calculations, and . The indicators’ values are more than one. Thus, additional preferential funding is feasible for two RE technologies development in local households. At the same time, wind energy needs more economic support.
The energy provision coefficient of the Sumy region
was processed by the formula (4). We assessed the degree of regional electricity need satisfaction (regardless of energy generation source) with the local energy production. Since both solar and wind energy can meet the territory’s energy needs, the coefficient was assumed to be the same for both considered RE sources (
). According to [
67], the electricity release in the Sumy region in 2020 amounted to 160 thousand MWh, and the annual volume of consumed electricity was 1196.9 thousand MWh. That year the average regional electricity release in the country amounted to 5487.88 thousand MWh, and the yearly average electricity volume used in the regions was 3355.54 thousand MWh. Therefore,
12.23. The large value of the indicator is due to the high energy deficit in the Sumy region compared to other Ukraine’s regions since the average region in the country generates 1.64 times more electricity than it consumes. Thus, financial support for RE technologies in the household sector is essential for improving the territory’s energy supply.
The formula (5) was used to process the coefficients of environmental load in the Sumy region () considering operation of home solar and wind power plants. The numerator and denominator of the fractions were determined by dividing the total amount of relevant environmental losses by the volume of, respectively, green and total electricity generated in the region.
The open statistical data on environmental load indicators in Ukrainian regions is characterized by the lack of detailed information on cost estimates of losses from environmental pollution caused by different businesses and population activities. Economic losses are occasionally studied by Ukrainian scientists and reported. However, there are no systematic official assessments published in open sources. Therefore, based on available information, we have estimated the averted losses from the CO2 emissions reduction due to the RE projects implementation. Carbon dioxide emissions are one of the main components of environmental pollution in the energy sector. Their volumes are used worldwide to assess the environmental performance of energy-saving measures and green power plants, as well as to determine international and national commitments to improve environmental quality.
Ukraine is among the TOP-30 countries globally that are the largest CO
2 emitters due to fossil fuel use [
68]. Regarding environmental contamination, the energy industry ranks first among other sectors of the Ukrainian national economy; its contribution is about 76% of the total carbon dioxide emissions in recent years [
69].
In line with the updated nationally determined contribution to Paris Climate Agreement, Ukraine has committed itself to reduce greenhouse gas emissions to 35% compared to 1990 [
69]. The list of measures to achieve this indicator includes, in particular, the modernization of energy companies [
69]. The government will replace most existing coal-fired power plants to cut emissions to the level set by Directive 2010/75/EU of the European Parliament and the Council on Industrial Emissions (integrated pollution prevention and control) [
70]. According to [
69], green energy facilities are considered to be a cost-effective replacement for old coal-fired power plants. Therefore, in this study, we have focused on estimating the CO
2 emissions reduction due to replacing electricity generated by coal-fired thermal power plants with electricity from household solar and wind energy installations.
To facilitate calculations, it was assumed that specific (per 1 ton of CO
2) economic losses caused by CO
2 emissions and averted because of a particular RE technology introduction and specific economic losses from CO
2 emissions due to the operation of the Sumy region energy sector are equal. Therefore, the environmental load coefficients
can be determined as the ratio of CO
2 emission reductions per 1 MWh of green electricity due to the introduction of a particular RE technology in the residential sector and total CO
2 emissions per 1 MWh of total electricity generated by the region’s energy industry. Unfortunately, official statistics have no territorial data on carbon dioxide emissions by type of economic activity. Therefore, the indicator of CO
2 emissions from stationary pollution sources in the Sumy region was used for calculation. It amounted to 1295.3 thousand tons in 2020. To ensure data comparison, the amount of electricity consumed in the region (1196.9 thousand MWh) was used instead of the amount of electricity generated [
67,
71].
According to “ACM0002 methodology: Large-scale consolidated methodology for grid-connected electricity generation from renewable sources” described in
Section 2, the project emissions
(PEt) from solar and wind power generation are zero. Specific CO
2 emissions from electricity generation by thermal power plants replaced with the green ones are 1.063 tons of CO
2-equivalent/MWh [
72]. Thus, this indicator reflects the CO
2 emissions reduction per 1 MWh of green electricity generated by solar and wind installations of households. Given the above,
0.98.
The values of the coefficients are less than one. On the one hand, this may indicate that measures to reduce energy consumption are more effective than transition to green electricity generation. Therefore, preferential funding for RE projects is less important. On the other hand, the obtained results may be ambiguous due to assumptions since we considered CO2 emissions from stationary sources and electricity consumed in the whole region, not precisely in the energy sector.
The formula (8) was applied to process the coefficients of energy infrastructure development in the Sumy region
. According to the World Bank [
73] and World Energy Council [
50], the access to electricity in Ukraine is 100%, i.e.,
AElSumy = 1. As our study is based on RE deployment indicators, set out in state program documents, the industry advancement is planned regarding the provision of sufficient electricity grids capacity. Otherwise, it threatens systemic blackouts in the power sector. Therefore,
CSRsol Sumy = CSRwin Sumy = 1. The reliable calculation of the energy sources decentralization coefficient
is impossible due to the lack of official statistic data on the actual levels of energy sources decentralization in Ukraine and the lack of these targets in state and regional program documents. Thus,
was excluded from the calculations. Therefore,
.
Determination of the coefficients of RE technology influence on balancing energy capacities in the region () was carried out according to the formula (9). The open statistical sources in Ukraine do not contain data on the regional distribution of maneuvering capacities and their impact on balancing the UESU. In addition, there is a lack of information about regional needs for maneuvering and energy storage capacities depending on different RE technologies development. Considering the available data for calculating the components of the formula (9) and the UESU as an integral object, the balancing of which is carried out regardless of the territorial principle, we assumed that actual and required maneuvering and energy storage capacities were used for maneuvering both solar and wind power plants of households. Therefore, the calculation of CIbij, CIbj act is the same for two studied RE technologies.
As of the end of 2020, the installed capacity of Ukrainian power plants was 54,773 MW, with a predominance of more maneuvering thermal power plants (
Table 6). In 2020, only 15 power plants had passed the certification of available maneuvering capacity and could provide ancillary services for balancing the UESU. They include hydro power plants (HPP)—Dnipro HPP-1, Serednyodniprovska HPP, Kaniv HPP, Kakhovka HPP, Dnipro HPP-2, Kremenchuk HPP, Kyiv HPP, Dniester HPP; thermal power plants (TPP)—Kurakhiv TPP, Zaporizhzhya TPP, Prydniprovska TPP, Kryvyi Rih TPP, Ladyzhyn TPP, Burshtyn TPP and a combined heat and power plant (CHP)—Kharkiv CHP-5 [
74].
The mentioned energy capacities can provide the following services [
74]:
Regulation of frequency and active capacity of the UESU, namely the provision of (1) frequency support reserves (primary regulation-FSR); (2) frequency recovery reserves (secondary control (FRS), FRS may consist of reserves activated in automatic (aFRS) and manual (mFRS) modes; replacement reserves-RR).
Maintenance of reliability and electricity quality parameters in the UESU, namely: (1) services for voltage and reactive power regulation; (2) services to ensure the restoration of the UESU operation after system accidents.
As of the end of 2020, the total volume of certified FSR was ±157 MW, aFRS was 1629 MW (±904.5 MW), mFRS was 3960 MW (−3909 MW) and RR was 4658 MW [
75]. Thus, the actual capacity of maneuvering power generating facilities in the country was 10,404 MW.
In 2020, Ukraine had no energy storage capacities. The system operator NEC “Ukrenergo” together with the European Bank for Reconstruction and Development and the International Finance Corporation, is planning to implement the first projects of constructing a network of energy storage facilities with a capacity of 220 MW in the nearest future within the signed memorandum [
76]. According to NEC “Ukrenergo,” the effective integration of green electricity into the UESU and the system safe operation require the following additional maneuvering and energy storage capacities: for 2021—1.6 GW, for 2025—1.8 GW, and for 2030—2 GW [
77].
Given the above,
Table 7 shows the initial data for calculating
. Due to the lack of regional information, the data correspond to the whole country. The value of installed power generating capacity for August 2021 [
78] is conditionally accepted as the total installed energy capacity in the country under implementing the economically feasible potential of RE technologies. According to the calculation results,
0.88, i.e., the deployment of solar and wind energy in households will add problems with balancing the UESU. Thus, additional preferential funding for green energy projects is not appropriate regarding this issue.
To assess the coefficients of financial resources available for investing in RE projects
the existing state program of “warm” loans. It provides partial funding for households united in condominiums or housing cooperatives to purchase heat pumps and solar collectors for improving homes’ heating and hot water supply [
79,
80]. However, this program does not support investments in residential solar photovoltaic and wind power plants. The reason is high feed-in tariffs for green energy generated by households. According to legislators, these tariff rates are sufficient to develop the sector. Moreover, Ukraine’s local authorities do not provide investment support for small RE projects. The only opportunity for the population is two loan programs of state banks such as “Eco Energy” of Ukrgasbank [
81] and “Green Energy” of Oschadbank [
82]. Since these programs are commercial proposals formed in partnership with engineering companies operating in the domestic RE market, they cannot be considered as state support for green energy deployment. Given the above, it is impossible to calculate the coefficients
in the absence of current state RE investment support for homes.
Table 8 summarizes the results of calculating
coefficients and the share of the interest-free loan in the total amount of investment costs per 1 MW of installed capacity for domestic 30-kW solar photovoltaic
and wind power
() plants located in the Sumy region, Ukraine. The basic share of the interest-free loan in the total investment costs per 1 MW of installed capacity of the RE generating facility is set at 20%. Its value is analogical to the minimum reimbursement rate for loans given to the population on the “warm” loans state program for implementing energy efficiency measures [
79]. If necessary, the basic share can be reduced or increased depending on preferential funding providers’ (state or local authorities) decisions.
The calculations demonstrate that household solar and wind power plants in the Sumy region received almost the same financial support. However, the projects for constructing home wind power plants in the area should become slightly higher (by 0.014 percentage points) interest-free loan share. The estimated shares are more than 2.8 times higher than the 20% base rate. They indicate the need to strengthen financial support for RE projects in the regional residential sector. The main factor increasing the basic share of funding was the territory’s energy deficit.
The slight difference between and is due to using generalized data for both RE technologies. The lack of detailed statistical information defines the model’s limitations. In fact, only coefficients were calculated separately for two technologies. It somewhat limits the application of obtained results for developing individual policies for solar and wind energy industries but at the same time, can serve as a guide for adjusting the volume and mechanisms of investment support for RE deployment in the residential sector.
4.3. Identifying Priority Home Green Energy Projects for Financing in the Region
Further stimulation of residential green power plants construction should help develop different RE technologies on the territory and implement the RE projects with the best technical and economic characteristics. Considering these criteria, let us calculate the interest-free loan share in the total amount of investment costs per 1 MW of installed capacity () on the example of a home 30-kW solar photovoltaic power plant located in the Sumy region, Ukraine.
As there were no residential wind energy facilities on the territory in 2020, it is impossible to justify the interest-free loan share for funding new wind power plants due to the lack of a comparison base. Therefore, when determining the first projects on constructing small wind energy capacities in the area, it is advisable to use their ranking. The latter may involve well-known approaches to selecting investment projects, for example, discussed in [
83]. As the region’s wind energy develops, the interest-free loan share for further projects can be calculated by the formula (12).
To determine
for a home 30-kW solar photovoltaic power plant (
) according to the formula (12), the same assumptions were applied as those used for
calculation. The initial data for processing the coefficients
by the algorithms of
Table 2 is given below.
As of 31 December 2020, 628 solar power plants’ installed capacity in the Sumy region was 16.58 MW, i.e., 26.4 kW per household on average [
64]. The electricity volume sold by residential solar power plants at the feed-in tariff in 2020 amounted to 19.4 million kWh or 30,891.71 kWh per household on average [
64]. According to [
84], the annual electricity volume generated by a 30-kW solar power plant is 32,523 kWh/year.
The estimated life cycle of solar panels is 25 years [
85,
86]. Thus, we assume that both the project and regional average life cycles of solar batteries are 25 years.
According to [
65,
87,
88,
89,
90,
91], the average regional investments amount per 1 MW of installed capacity for solar power plants in Ukraine is UAH 23,261.131 thousand. The average investment costs for constructing a solar power plant in the Sumy region residential sector per 1 MW of installed capacity are UAH 17,098.667 thousand. This difference in investment costs is because the average regional investment per 1 MW of installed capacity considers both household and industrial energy facilities; the construction cost of the latter is much higher. The indicator’s value for homes in the Sumy region was processed for solar power plants with maximum allowable installed capacity (30 kW) and adjusted to 1 MW.
Table 9 presents the coefficients
calculation for a home 30-kW solar power plant.
Thus, the interest-free loan share for constructing a home 30-kW solar photovoltaic power plant in the Sumy region should be 64.67%, i.e., 7.81 percentage points higher than the base share for residential solar energy projects in the area. The reason is that green energy installations of higher capacity provide lower costs per energy unit and generate larger volumes of electricity. It is in line with the current targets of regional energy development, such as decarbonization and strengthening energy independence. However, regional priorities for project selection can change. They may focus on generating green electricity by households to meet their needs but not sell energy at the feed-in tariff. It will reduce the interest-free loan share for large residential solar power plants as their generation exceeds the household needs. Since we have considered only one option for a green energy facility construction, the verification of the model requires further research based on the analysis of solar power plants with different capacities.
Analyzing only two RE projects makes it impossible to apply the budget funding distribution algorithm to cover the interest-free loan share on projects involving different RE technologies according to the formulas (13)–(15). The application of this approach will be carried out in further research.