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Article

A Practical Framework for Developing Net-Zero Electricity Mix Scenarios: A Case Study of South Korea

1
Department of Electrical and Electronic Engineering, Joongbu University, 305 Dongheon-ro, Deogyang-gu, Goyang-si 10279, Gyeonggi-do, Republic of Korea
2
Research and Development Department, Pion Electric Co., Ltd., 50 Yonsei-ro, Seodaemun-gu, Seoul 03722, Republic of Korea
*
Author to whom correspondence should be addressed.
Energies 2024, 17(4), 926; https://doi.org/10.3390/en17040926
Submission received: 28 December 2023 / Revised: 6 February 2024 / Accepted: 12 February 2024 / Published: 16 February 2024
(This article belongs to the Special Issue Energy Transitions: Low-Carbon Pathways for Sustainability)

Abstract

:
This paper proposes a practical framework for developing a net-zero electricity mix scenario (NEMS), which considers detailed conditions for supply of each energy. NEMS means a path scenario for power generation amount by year of each generation resource required to achieve carbon neutrality in 2050. NEMS framework refers to a methodological framework that contains procedures and requirements to continuously update the NEMS by comprehensively reflecting policy changes. For evaluation of NEMS, indicators such as a system inertia resource ratio (SIRR) and a fuel conversion rate (FCR) are proposed. The proposed framework and indicators are applied for the 2050 NEMS in Korea’s electricity sector. The SIRR, indicating the ratio of inertial resources to total resources, projects values of 49% and 15% for the years 2030 and 2050, respectively. Furthermore, the FCR, reflecting the ratio of fuel conversion for resources undergoing this process, predicts that all targeted resources will have completed conversion by the year 2043.

1. Introduction

South Korea’s electricity mix (EM) has been greatly influenced by government-led policy decisions. A representative policy is the Basic Plan for Long-Term Electricity Supply and Demand (BPE), which has been established every 2 years since 2002 under the Electricity Business Act [1]. The plan includes generation and capacity forecasts for each power source for the next 15 years. In particular, the target quantities of nuclear power and new and renewable energies (NRE), referred to as “policy power sources,” are reflected in a separate procedure. In September 2021, the government established a policy decision aimed at heavily influencing the long-term energy mix in South Korea for the next 30 years. It legislated the Framework Act on Carbon Neutrality and Green Growth for coping with climate crisis (Carbon Neutrality Act) and devised energy mix plans, namely the 2030 Nationally Determined Contribution (NDC) Enhancement Plan and 2050 Carbon Neutrality Scenario Plan, based on the bill [2,3]. Both plans include the EM forecasts for 2030 (the first target year) and 2050 (the final target year), with the goal of achieving carbon neutrality by 2050. Accordingly, to gauge the future changes in the electricity supply environment and forecast the EM, a preliminary review of these major plans is essential.

1.1. Review of the 2050 Carbon Neutrality Scenario and 2030 Nationally Determined Contribution (NDC) Enhancement Plans

In October 2020, the South Korean government announced its goal to achieve carbon neutrality by 2050. Following this announcement, from January 2021 to June 2021, a technical working group of 10 sub-sectors developed a draft of the carbon neutrality scenario. In August 2021, the Presidential Carbon Neutrality Committee deliberated on the draft. The public’s opinion was collected through the Carbon Neutrality Citizens’ Assembly until September 2021 and through the second plenary meeting of the Carbon Neutrality Committee conducted in October 2021, and the 2050 Carbon Neutrality Scenario Plan and 2030 NDC Enhancement Plan were finally, deliberated on and resolved.
According to the 2030 NDC Enhancement Plan, the target reduction in carbon emissions from 2018 to 2030 is set at 40%, in which the electricity sector has a higher target reduction (44.4%). This is high, relative to the targets set for other high-emitting sectors, such as the industrial (14.5%), building (32.8%), and transportation (37.8%) sectors. The aim of the plan is to reduce indirect emissions (from electricity usage), based on the decarbonization of the electricity sector and the electrification of various sectors. This direction was adopted by not only South Korea, but also several other countries worldwide. The International Energy Agency cites electrification as a key pillar of the decarbonization strategy in a net-zero scenario, along with energy efficiency and behavioral changes. Notably, the agency states that the electricity sector must reach carbon neutrality by 2040, to achieve carbon neutrality by 2050 [4].
The forecasted electricity consumption for 2030 is 612.4 TWh (transmission end); the EM to meet this is nuclear energy (23.9%), coal (21.8%), liquefied natural gas (LNG) (19.5%), NRE (30.2%), ammonia-fueled energy (3.6%), and energy from other resources (1.0%). Note that a blend of coal fuel is planned to be used for ammonia power generation in 2030 [5]. Compared to the 9th BPE established in 2020, the proportions of nuclear energy, coal, and LNG are reduced by 1.1%, 8.1% and 3.8%, respectively, whereas those of NRE and ammonia-fueled energy have been increased by 9.4% and 3.6%, respectively. Hence, the share of coal power has been reduced greatly, whereas that of NRE has been increased. The share of renewable energy (wind, solar, hydro, marine energy, and bioenergy) is approximately 27%, up 8 percentage points from that considered in the 9th BPE. Notably, major revisions to the existing power plans are unavoidable, to keep up with the ever-changing energy trends and demands of the country.
In the 2050 Carbon Neutrality Scenario, the renewable energy target for 2050 is approximately 890 TWh (based on sales consumption), nearly 31 times higher than the consumption in 2020 (29 TWh). Based on a simple estimate, renewable energy must be expanded by ~20 GW/year to achieve this goal. However, if the expansion of renewable energy accelerates, the proportion of synchronous generators in the power system will decrease, resulting in instability problems, such as reduced system inertia. The European Union (EU)-funded project called Massive InteGRATion of power Electronic devices (MIGRATE) has already reported a related issue [6]. Building a net-zero power grid in the future requires managing the problem of reduced system inertia.
The 2050 electricity consumption forecast is 1257.7 TWh (end-user), and the 2050 net-zero EM target required meet this is consumption is 6.1% nuclear energy, 0% coal, 0% LNG, 70.8% renewable energy, 1.4% fuel cells, 21.5% carbon-free turbines, and 0.3% byproduct gas. Note that in this mix, all sources, except for nuclear energy and byproduct gas, are classified as NRE, with NRE comprising of approximately 94% of the total EM in 2050. Carbon-free turbines use hydrogen or ammonia, rather than conventional fossil fuels, for power generation. Fuel conversion through carbon-free turbines is important to not only simply the use of carbon-free fuels, but also minimize the formation of stranded assets from existing power facilities. Overall, to establish a net-zero power grid in the future, it is necessary to manage the fuel conversion for each power source.

1.2. Review of 9th Basic Plan for Long-Term Electricity Supply and Demand (BPE)

To forecast the mid- to long-term electricity demand and expand the electricity facilities in South Korea accordingly, the BPE is established every 2 years, in accordance with Article 25 of the Electricity Business Act and Article 15 of the Enforcement Decree. The 1st BPE was established in 2002. The establishment process is as follows: A working group first creates a draft and then performs a strategic environmental impact assessment, after which a government draft is finally prepared through ministry consultation. The Standing Committee of the National Assembly then prepares a report and holds a public hearing; the report is finalized through deliberations with the Electricity Policy Deliberation Council. The plan is established based on the letters of intent regarding the investment in new facilities (submitted by power producers); coal, nuclear, and NRE, which are policy power sources, can be counted toward the target without additional evaluation.
Figure 1 shows the share of NRE generation from 2021 to 2034, as per the 9th BPE. According to the future growth of NREs above the 20% baseline in 2021, the share of bioenergy will decrease from ~25% in 2021 to ~9% in 2024, whereas the combined share of PV (photovoltaic) and wind, which are volatile resources, will increase from ~52% to ~73%. The forecasts for wind and PV resources in each version of BPE vary greatly. Wind power forecasts declined from the 8th to the 9th plans, by ~41% in 2021 and by ~6% in 2030. PV power forecasts increased from the 8th to the 9th plans, by ~59% in 2021 and by ~36% in 2030. Note that even though the forecasts indicate an increase in the energy derived from PV resources, PV power has surpassed the annual supply target for the past 4 years (2019–2022).
Among all the resources having a small share, hydropower and marine energy remained at their current levels, or increased slightly, but their relative shares were forecasted to decline after 2021. In general, hydropower is classified into conventional hydro (large and medium) and small hydro. The latter can be installed at small scales; thus, site selection and approval are easier in small hydro, compared to conventional hydropower. Therefore, the generation and capacity of hydropower is increasing every year. There are no plans to install additional integrated gasification combined cycle (IGCC) capacity until 2034. Note that IGCC generates less pollutants and carbon dioxide emissions than coal but is not a carbon-free power source. The BPE considers such resource-specific characteristics when developing novel plans.

1.3. Proposal

A net-zero electricity mix scenario (NEMS) refers to the yearly forecasts of power generation (by source) required to achieve carbon neutrality by 2050. Based on the previous review, the following are three major considerations required when establishing a practical NEMS.
  • A framework that continuously reflects the changes in EM-related energy plans must be established.
  • Domestic characteristics regarding the supply of each energy source must be considered.
  • Management of the scale of system inertia and fuel-conversion levels is necessary.
To effectively consider the first and second points, a practical framework is required to identify and reflect the different energy-specific policy/practical changes, when devising a domestic NEMS through a pragmatic approach. Additionally, it is important to continuously update the framework in the future. The literature on the NEMS framework contains case studies on several countries, including Portugal, Iran, Chile, and the United Kingdom [7,8,9,10,11,12,13]. They focus mainly on “evaluating and analyzing” the policy effects, scenario-specific costs, and macro-environmental impacts. Among these studies, Pina et al. [8] and Gaete-Morales et al. [9] cover the NEMS establishment framework. Pina et al. [8] carried out a case study of Portugal by applying an NRE investment planning framework while considering fossil-fuel and technology prices and NRE characteristics. To analyze the NEMS for Chile, Gaete-Morales et al. [9] applied an NRE supply planning framework, based on an integrated model that could optimize generation expansion planning and economic dispatch planning. Additionally, in previous studies, authors applied NEMS-related evaluation methodologies and analyses methods to forecast the EM of South Korea [14,15,16]. Most of these studies focused on evaluating the policies and scenarios related to sustainability and emission reduction effects. Min et al. [16] applied an advanced framework for calculating the EM of South Korea and evaluating its flexibility and reliability, based on the operational generation plan. However, they focused on a scenario analysis and did not consider the characteristics of each power source and the type NRE, which is important given South Korea’s policymaking approach.
In this study, we propose a practical framework for developing a practical NEMS framework for South Korea. The NEMS calculation process for the proposed framework comprised three steps. First, we forecasted the total electricity consumption and demand patterns by year; second, we projected the generation and capacity by NRE type and region; and third, we estimated the generation and capacity of all the resources subject to fuel conversion and nuclear power. Moreover, to reflect the third consideration when establishing a viable NEMS, we propose using the system inertia resource ratio (SIRR) and fuel conversion rate (FCR) as evaluation and management indicators. In this study, these indicators were applied to the NEMS results for South Korea.
The structure of this paper is as follows. Section 2 outlines the proposed practical framework for the NEMS developed for South Korea. Section 3 explains the forecast of the total electricity consumption and demand patterns for the country by year, based on the proposed framework. In Section 4, we explain the forecast for the generation and capacity of all the resources by NRE type and region. In Section 5, we provide the forecasts of the generation and capacity of all the resources, subject to fuel conversion and nuclear power while calculating the SIRR and FCR for the base year. Section 6 explains the major conclusions of this study.

2. Overview of the Proposed Practical Net-Zero Electricity Mix Scenario (NEMS) Framework for South Korea

Figure 2 shows the step-by-step methodology applied for developing the NEMS for South Korea proposed in this study. Further details of each step are explained below.
First, we forecasted the total electricity consumption and demand patterns of South Korea. A compound annual growth rate (CAGR) based on the base-year forecast was applied, to calculate the total electricity consumption for each year. The CAGR is a measure used to represent the annualized rate of return for an investment or business over a specified period, assuming that the growth occurs steadily and consistently throughout that time frame. To forecast the demand pattern, the demand pattern forecast algorithm (DPFA) method was applied to the most recent annual demand pattern.
Second, we forecasted the NRE generation and capacity for South Korea. The total NRE generation was calculated by applying the CAGR based on the base-year forecasts. To calculate the NRE generation by type and region, we used the share of generation of all the NRE types estimated using a forecasting technique that was based on weighted moving average (WMA) and the share of generation for all the regions calculated from the most recent data. Furthermore, the capacity of each NRE type and region was calculated using the capacity factor estimated by the WMA-based forecasting technique. However, the capacity forecasts excluded the generation of NREs for fuel conversion used in the form of mixed or full combustion. This is because no additional facilities are needed for these types of power generation.
Finally, we forecasted the generation and capacity of all the resources, subject to fuel conversion and nuclear power. The NRE generation pattern (estimated separately) was subtracted from the demand pattern obtained in Step 1, to obtain the net load pattern. Based on this net load pattern, the annual operational generation schedule was established, to obtain the annual generation of resources subject to fuel conversion and nuclear power. The annual capacities of these resources were generally determined based on the commissioning and decommissioning dates, based on the generation source specified in the BPE. However, these estimations may be adjusted according to the rate of fuel conversion. Finally, based on the proposed SIRR and FCR indicators, the scale of system inertia and the fuel conversion level of the NEMS were evaluated.

3. Step 1: Total Electricity Consumption and Demand Pattern Forecast

3.1. Forecast of the Total Electricity Consumption for South Korea

Figure 3 shows the procedure used for estimating the total electricity consumption forecast. Note that Equation (1) can be used to convert the total electricity consumption forecast from the end user-based value to the transmission end-based value.
C t = C e ( 1 T L )
where Ct, Ce, and TL denote the total electricity consumption at the transmission end, total electricity consumption of the end user, and total loss rate, respectively. The Ct forecast for 2021 was estimated to be 517,756,000 MWh [1]. By applying the combined TL (transmission, distribution, and transformation) of 3.54%, The Ct forecast for 2021 was estimated to be 536,757,205 MWh [17]. The Ct forecasts for 2030 and 2050 are 612,400,000 MWh and 1,303,856,521 MWh, respectively [2,3]. Based on the Ct forecasts for 2021, 2030 and 2050, the base years, we obtained the CAGR for the intervening years and used this CAGR value to determine the Ct for each year from 2021 to 2050. Notably, CAGR was used because in general, electricity consumption is closely related to the gross domestic product (GDP), and GDP growth is typically expressed as the CAGR. In this study, the estimated CAGR from 2021 to 2030 and from 2030 to 2050 was 1.476% and 3.851%, respectively. These values were used to estimate the Ct forecast for each year, as shown in Figure 4.

3.2. Demand Pattern Forecast Algorithm (DPFA)

In this study, the DPFA was used to forecast the annual demand patterns, using the total electricity consumption forecast and the most recent annual demand pattern (baseline pattern) [18]. The details are shown in Figure 5.
Steps 1–3 were applied because domestic demand exhibited similar patterns for the days of the week, including Saturdays, and the national holidays. The following is an example of this approach. We applied the pattern observed on 3 January 2021 (Sunday) to 2 January 2022 (Sunday); and the pattern observed on 11 February 2021 (Thursday) through 13 February 2021 (Saturday) was applied for the Lunar New Year holiday period of 31 January 2022 (Monday) through 2 February 2022 (Wednesday). Applying the above principles, we derived nationwide demand pattern forecasts from 2021 to 2050, as shown in Figure 6.
In this study, South Korea was divided into the Seoul capital area (SCA; Seoul, Gyeonggi, Incheon), non-SCA regions, and Jeju, and the demand patterns were obtained for each region. Assuming that the electricity consumption growth rate by region was the same as the CAGR of the national electricity consumption, we estimated the demand pattern for each region (Figure 7, Figure 8 and Figure 9).

4. Step 2: Forecasting the Generation and Capacity of New and Renewable Energies (NRE)

4.1. Total New and Renewable Energies (NRE) Generation Forecast

Figure 10 shows the procedure used for forecasting the total NRE generation. In this study, the base years were 2021, 2030, and 2050. The total NRE generation forecasts (transmission end) for 2030 and 2050 were based on official reports (206.9 TWh and 1221.7 TWh, respectively) [2,3]. Based on these values, we calculated the CAGRs: 17.8% (2021–2030) and 9.3% (2030–2050). Figure 11 shows the annual forecasts of the total NRE generation based on these CAGR values. However, to calculate the capacity, the generation of energy used for fuel conversion must be subtracted from the total NRE generation because the annual generation of resources subject to fuel conversion was determined the annual operational generation schedule. The results are shown in Figure 12.

4.2. Generation Forecasts by New and Renewable Energy (NRE) Type

The forecast of the generation of NRE, by the type of NRE, was carried out by allocating the NRE generation values according to the NRE type while excluding the energy for fuel conversion. In this study, renewable energy included hydropower, PV, wind, marine energy, and bioenergy, whereas new energy included fuel cells, IGCC, and ammonia and hydrogen turbines. Note that waste energy was included as renewable energy in the Statistics of Electric Power in Korea (SEPK) until 2019, but after the NRE Act was revised in 2020, it was classified under “other power generation resources” [17]. In our study, the hydro, PV, and wind generation forecasts were obtained by applying the WMA-based forecasting technique, as shown in Figure 13.
In this study, “resources for share-based estimation” are the resources considered for estimating the share of generation until the net-zero target year, based on the shares of generation forecasts for those resources in the BPE. The “share” of generation was used to meet the forecasts of the 2030 NDC and 2050 Carbon Neutrality Scenario plans while ensuring consistency with the most recent BPE. The generation forecasts of NREs other than the “resources for share-based estimation” can be estimated according to the characteristics of each resource while considering the external factors. Note that WMA is used to reflect the inherent trend and recency of the generation of resources.

4.2.1. Renewable Energy: Hydro, PV, and Wind

Unlike conventional hydropower, small hydro is easy to install not only in rivers, but also other places such as aquaculture farms and sewage treatment plants. The increase in the 9th BPE’s yearly generation forecasts for hydropower, despite the absence of conventional hydropower to be newly installed, is due to the increase in the small hydro forecasts. The small hydro generation can be calculated by subtracting the conventional hydropower generation from the total hydropower generation. Figure 14, Figure 15, Figure 16, Figure 17, Figure 18 and Figure 19 present the shares of generation from small hydro, PV, and wind in the 9th BPE, along with the corresponding generation forecasts, using the WMA-based forecasting technique. Note that as per our forecast, the shares of PV and wind generation nearly converge after 2034.

4.2.2. Renewable Energy: Conventional Hydropower, Marine Energy, and Bioenergy

In terms of site selection and environmental impact assessment, the construction of additional conventional hydropower facilities is challenging. According to the generation facility construction plans in the 9th BPE, there is no new capacity for conventional hydropower. Therefore, we assumed that in the future, conventional hydropower generation would remain at the current level. The generation forecast for conventional hydropower from 2021 to 2050 is based on the 2020 value in the SEPK (3,205,979 MWh).
Marine energy includes ocean thermal difference, tidal, wave, and tidal current generation. The marine energy generation facilities in South Korea include the Sihwa Lake Tidal Power Station (254 MW), Uldolmok Tidal Current Power Station [19] (scaled down to 80 kW, as of January 2023), and Jeju Yongsoo Wave Power Plant (0.5 MW). Their total installed capacity is 255.5 MW. The 9th BPE contains no plans to increase the generation capacity of the pants until 2034. As with conventional hydropower, due to environmental impact assessments, there are practical limitations in constructing marine energy facilities. According to the 2020 New and Renewable Energy White Paper in South Korea, the market potential of each marine energy type is estimated to be zero (for the current conditions) [20]. From an economic perspective, this is not yet a suitable resource in the domestic environment. As both 8th and 9th BPEs indicate that the energy from these resources will be the same as the current production, in our forecast, we also considered that these plants will generate 496,000 MWh till 2050.
According to the 9th BPE forecast, the capacity factor of bioenergy is estimated to be approximately 138%. This percentage is calculated by dividing the forecasted total generation capacity for the year 2020 by the product of the forecasted generation capacity and 8760 h. In this case, the predicted generation capacity is 1 GW, and the forecasted total generation is 12,095 GWh. However, this value has been identified as an error. Consequently, using the forecasts from the 9th BPE, we extracted only the annual generation growth rates and applied them to the 2020 values, to obtain the forecasts for 2021–2050. The annual generation growth rates from 2021 to 2034 can be calculated as “(generation of current year—generation of previous year) ÷ generation of previous year,” based on the 9th BPE. The annual generation growth rates for 2035–2050 were estimated using the WMA-based forecasting technique, as shown in Figure 20.
Figure 21 shows the generation growth forecasts developed using the abovementioned optimal weights. By applying this growth rate to the 2020 value, we estimated the annual bioenergy generation forecasts, as shown in Figure 22.
Bioenergy is an energy source for fuel conversion. According to the 2020 values, full- and mixed-combustion generation totaled 4,991,180 MWh and 1,593,050 MWh, respectively. Assuming that the capacity factor of bioenergy full-combustion facilities will remain constant in the future, in this study, the annual forecasts of the total electricity generation until 2050 were identical to those for 2020. Furthermore, in general, fuel conversion occurs when the mixed-combustion generation of bioenergy exceeds the generation of the resources subject to fuel conversion. Accordingly, to obtain the annual mixed-combustion generation forecasts, we subtracted the annual full-combustion generation forecasts from the total annual generation forecasts. The results are shown in Figure 23.

4.2.3. New Energy: Fuel Cells, Integrated Gasification Combined Cycle (IGCC), and Ammonia and Hydrogen Turbines

We suggest that based on the fuel cell generation forecasts for 2050 in the 2050 Carbon Neutrality Scenario Plan, the existing forecasts must be updated. Based on the 9th BPE, we estimated the share of fuel cell generation from the shares of PV, wind, small hydro, and fuel cells in 2021, and multiplied this by the combined generation from PV, wind, small hydro, and fuel cells in 2021, to obtain the generation from fuel cells in 2021. This method was used to exclude the NREs, whose forecasts were predetermined by other factors, and maintain the forecast share for each NRE type, according to the 9th BPE (as much as possible). Based on the generation in 2021 and the fuel cell forecast in 2050, the annual CAGR was approximately 4.42%. Figure 24 shows the fuel cell generation forecasts estimated by applying this method.
The Taean IGCC Power Plant is the only IGCC generation facility in South Korea. Note that that carbon emissions of IGCC’s are 78% that of coal power, which is considerably high. Therefore, this resource is unsuitable to achieve the goal of carbon neutrality. In the 9th BPE, the annual generation forecasts for IGCC are the same until 2034. From 2034 to 2050, the generation decreases linearly, as shown in Figure 25.
Along with hydropower generation, a recent International Energy Agency (IEA) report cites ammonia power generation as a key alternative, to minimize the formation of stranded assets from the existing power facilities and provide flexibility against the volatility of renewable energy sources. Ammonia turbines can be constructed by retrofitting or replacing parts of coal/LNG generation facilities. Japan has completed basic demonstrations of ammonia combustion technology in various power generation fields (coal, LNG, and fuel cells) and is also, planning the demonstration of 1-GW mixed-combustion coal generation by 2024 [21]. Domestically, The Korea Southern Power Company has taken the lead (among all the Korean power generation companies) and announced plans to commercialize 20-% ammonia mixed-combustion in 2024. In a policy briefing in November 2021, the government also mentioned a plan to commercialize 20-% ammonia mixed-combustion generation by 2030. For commercialization, it is important to establish a demonstration of mixed combustion, along with an effective distribution and supply system for ammonia, to promote inter-industry collaboration and policy support.
According to the 2030 plan of the government to commercialize 20% ammonia mixed-combustion generation, the operation of power production from ammonia mixed-combustion is set for 2030. The generation in 2030 is estimated to be 22 TWh, the same as that estimated in the NDC forecast. The carbon-free turbine generation forecast in 2050 is estimated to be 270 TWh, which includes hydrogen turbine generation in 2050. We divided this into half and considered a generation forecast of 135 TWh in 2050. Assuming that the growth rate from 2030 to 2050 would remain consistent, the CAGR would be approximately 9.45%. Figure 26 shows the generation forecast developed by applying this method.
Most policies suggest that the hydrogen turbine facilities will be built by retrofitting, or replacing, the parts of the existing LNG generation facilities. In a policy briefing in November 2021, the government officially announced a plan to commercialize 30% hydrogen mixed-combustion generation by 2035; however, the generation forecast for 2035 has not been confirmed. Accordingly, in this study, we assume that hydrogen turbine use will begin in 2035, with the generation forecast being 22 TWh (as per the 2030 ammonia generation forecast). As for ammonia turbines, the 2050 generation target is estimated to be 135 TWh, half of the total carbon-free turbine generation in 2050. Assuming that the growth rate from 2030 to 2050 will remain constant, the CAGR would be ~12.85%. Figure 27 shows the generation forecast developed by applying this method.

4.3. Generation Forecasts by New and Renewable Energy (NRE) Type and Region

For convenience, we divided South Korea into three regions: SCA, non-SCA, and Jeju. The annual forecast of generation by NRE type and region was calculated by multiplying the percentage of generation by NRE type and region in 2020 by the annual forecast of the generation by each NRE type.
For wind, PV, and bioenergy (mixed combustion), the 2020 generation values by region are provided in the 2020 SEPK. For conventional hydropower and small hydro, we were unable to obtain generation data by region; however, the conventional hydropower and small hydro generation nationwide were 3,205,979 MWh and 671,251 MWh, respectively. Excluding Jeju, the ratio between these two figures was applied to the 2020 hydropower generation by region, to estimate the conventional hydropower and small hydro generation in the SCA and non-SCA regions in 2020. Note that Jeju has no conventional hydropower. To obtain the small hydro generation, we subtract the conventional hydropower generation of the SCA, non-SCA, and Jeju regions from the 2020 hydropower by region (conventional hydropower and small hydro). In the 2020 SEPK, marine energy, fuel cells, and IGCC are combined under the category “other”; therefore, the generation from “other” resources by region in 2020 can be confirmed. In terms of marine energy, the Sihwa Lake Tidal Power Station is currently operating in the SCA region, Uldolmok Tidal Current Power Station is currently operating in the non-SCA region and Jeju Yongsoo Wave Power Plant is currently operating in Jeju. Marine energy is the only “other” source of power generation in Jeju; the 6 MWh of “other” generation in Jeju is entirely from the Jeju Yongsoo Wave Power Plant. As the performance data of the Sihwa Lake Tidal Power Station and Uldolmok Tidal Current Power Station are unavailable, we assumed the same capacity factor for both facilities and allocated the total generation to each capacity level. For fuel cells, we calculated the share of fuel cell generation nationwide among the generation from “other” resources in the 2020 SEPK, multiplied the share by the “other” generation in the SCA, to obtain the fuel cell generation in the SCA region. Finally, we subtracted the SCA fuel cell generation from the nationwide fuel cell generation, to obtain the non-SCA fuel cell generation. Note that Jeju had no fuel cells. As IGCC was applied only in the non-SCA regions, the IGCC generation in both SCA and Jeju regions was considered as 0 MWh. Furthermore, as ammonia and hydrogen turbines have not yet been commercialized, there was no generation data for these types. However, the generation from ammonia and hydrogen turbines can be estimated by calculating the percentages of generation between all the regions for their respective resources subject to fuel conversion in the 2020 SEPK. In South Korea, the resources subject to fuel conversion are coal and LNG. Table 1 summarizes the 2020 generation by the NRE type and region, along with their percentages.
Notably, we assumed that in the future, conventional hydropower and marine energy would remain at the same generation levels as those in 2020. Hence, the generation by region (SCA, non-SCA and Jeju regions) for conventional hydropower in 2021–2050 was estimated to be 569,739, 2,636,240, and 0 MWh, respectively, whereas that for marine energy was estimated to be 457,125, 131 and 0 MWh, respectively. For IGCC, the Taean IGCC is the only facility nationwide, located in the non-SCA region. Figure 28 shows the results based on the 2020 generation of 2,377,374 MWh, according to the 9th BPE; as per the forecast, the IGCC generation remains the same until 2034 and then, declines linearly thereafter.
The yearly generation forecasts of small hydro, PV, wind, bioenergy (mixed combustion), fuel cells, ammonia turbines, and hydrogen turbines by region and type can be estimated by multiplying the 2020 generation percentages by region and type by the respective generation forecasts. The results are shown in Figure 29, Figure 30, Figure 31, Figure 32, Figure 33, Figure 34 and Figure 35.

4.4. Capacity Forecasts by New and Renewable Energy (NRE) Type and Region

The installed capacity by NRE type and region was calculated using Equation (2), as follows:
I C i , r = T G i , r C F i , r × 8760   h r
where ICi,r, TGi,r, and CFi,r represent the installed capacity, total generation, and capacity factor of the NRE type i in region r, respectively. Excluding the NREs whose forecasts were determined by other factors beforehand, the installed capacities of small hydro, fuel cells, PV, and wind were estimated using the WMA-based forecasting technique. Figure 36 shows the process in detail. We used the “growth rate” of the capacity factor to forecast the region-specific capacity factors, based on the given nationwide capacity factor forecast, as there were no region-specific capacity factor forecasts.
Figure 37, Figure 38, Figure 39 and Figure 40 show the results of applying the WMA-based region-specific installed-capacity-estimation process for small hydro, PV, wind, and fuel cells.
According to the Korean Statistics Information Service (KOSIS) [22], the 2020 capacity of conventional hydropower generation in the SCA, non-SCA, and Jeju regions was 260, 1322 and 0 MW, respectively. As there are no known plans to construct additional conventional hydropower facilities, in this study, we applied the same figures for each region until 2050. For the same reason, the capacities of marine energy in the SCA and non-SCA regions and Jeju were maintained at 254, 1 and 0.5 MW, respectively. Additionally, there are also no plans to construct additional IGCC facilities; therefore, we assumed that the capacity of the Taean IGCC in the non-SCA region would remain the same, at 346 MW, until 2049, and then, reduce to 0 MW in 2050, when it will be decommissioned. For bioenergy, ammonia, and hydrogen turbines, the capacities of the resources subject to fuel conversion were included as the installed capacities of the resources at the respective time of fuel conversion. Note that the time of fuel conversion for each resource subject to fuel conversion was determined according to the long-term operational generation plan.

5. Step 3: Generation Forecasts of Resources Subject to Fuel Conversion and Nuclear Power

For the resources subject to fuel conversion and nuclear power, the commissioning and decommissioning periods for each generator were determined, according to the generation facility construction plans in the most recent BPE. We applied the timelines specified in the most recent BPE, though they may change depending on future government policies. We assume that there was only NRE construction after the last forecasted year of the latest BPE. If the resource was not confirmed for decommissioning, we assumed that it could be repowered at the end of its design life (to continue use). Of course, any remaining resources subject to fuel conversion that were not converted were assumed to be decommissioned.
We established an optimal operational generation plan, using M-CORE (Korean electricity market simulator), to estimate the generation of resources subject to fuel conversion and nuclear power [23]. This method was applied to derive the most feasible generation values. We input the generator data (maximum/minimum capacity, maximum/minimum downtime, generation cost function, etc.) for each source into the program. For the new generation facilities according to each resource, we used the most recent generator data (as of December 2020). For example, data from the nuclear power generator Shin Hanul Unit 6 was applied for Shin Hanul Unit 1.
The following concerns were considered when conducting the simulation. First, we install additional batteries, in case of oversupply, resulting from the expansion of renewable energy. Second, the battery operation strategy followed the “economic pumping” approach. This involved pumping when the marginal price was low and generating electricity when the marginal price was high. Operating the batteries through this method could add charging load, which could change the electricity consumption and demand pattern. Third, we only performed simulations for 2030 and 2050. This was because a long period, i.e., 29 years, requires a considerable computation time as well, which was not feasible for this study. These considerations help to clarify the focus of this study.
Figure 41 and Figure 42 show the optimal operational generation plan for 2030 and 2050, respectively, based on these assumptions. The results shown in the figures are derived by applying the following constraints: minimum operational/downtime, maximum/minimum output, and Jeju high-voltage direct current (HVDC) constraints. The results indicate that the generation and capacity of renewable energy will increase overwhelmingly by 2050, compared to that in 2030. In most cases, oversupply occurs due to the volatility of PV output. To solve this problem, a large quantity of energy storage systems is essential.

5.1. Forecasts of Generation and Capacity of Resources Subject to Fuel Conversion and Nuclear Power for 2030 and 2050

Oil-fired power generation in South Korea includes steam turbine cycles, combined cycles, and internal combustion power generation. In oil-fired power generation, mixed combustion (with bioenergy) can be applied; bio-heavy oil can be applied to steam turbine cycle generation, bio-diesel can be applied to internal combustion power, and bio-kerosene or bio-diesel can be applied to combined cycle generation. According to the 2020 SEPK, 601,195 MWh of electricity was produced by blending bio-heavy oil with heavy-oil power generation (steam turbine cycle), with no other cases of mixed combustion. However, considering the bioenergy forecasts, in the future, the total capacity of heavy oil power generation (steam turbine cycle) would be insufficient, if considering only mixed combustion between bio-heavy oil and heavy oil power generation (steam turbine cycle). Accordingly, for bioenergy, we considered all oil-fired power generation facilities as resources that were subject to fuel conversion. Note that Ulsan #4, #5 and #6 generation units are planned to convert to LNG/hydrogen mixed-combustion power generation facilities, and Daejeon/Cheongju/Daegu/Suwon combined heat and power (CHP) #1 are scheduled to convert to LNG power generation facilities. Excluding these power generation facilities, we were left with only the Daesan Combined Cycle 1CC (for the non-SCA regions), Jeju Internal Combustion #1 and #2 (for Jeju), and Moorim Powertech CHP (for the non-SCA regions), with a combined capacity of 572 MW. As there are no plans to build additional oil-fired power plants, we assumed that 572 MW will be the maximum capacity applicable for bioenergy fuel conversion. Table 2 presents the data on the commissioning and decommissioning dates and the capacity of each oil-fired generator applied to the simulation. The total capacity, as of December 2020, was 2008 MW. Assuming that their lifetimes were extended if the decommissioning date was after 2034, we arbitrarily set the decommissioning year to 2100.
We determined the capacities specified in Table 2, based on the NEMS simulation results for 2030 and 2050. In 2030, the combined annual generation of the Daesan Combined Cycle 1CC, Jeju Internal Combustion #1 and #2 and Murim Powertech CHP generators was 1,117,740 MWh, significantly less than the 2030 bioenergy mixed-combustion forecast of 2,270,249 MWh. Therefore, we considered both oil-fired generation and installed capacity to be zero from 2030 to 2050. For reference, the Daesan Combined Cycle 1CC, Jeju Internal Combustion #1 and #2 and Murim Powertech CHP generators, which were converted to full-combustion bioenergy, generated 1,410,901 MWh in 2050.
South Korea uses two types of LNG power generation: steam-turbined and combined cycles. As of 2020, the capacity of LNG power generation through combined and steam-turbined cycles were 32,401 MW and 1400 MW, respectively, excluding the district energy use. Thus, the capacity of the combined cycle exceeded that of the steam turbine cycle. The data on the commissioning and decommissioning dates and the capacity of the LNG generators used in the simulation were extensive and have been provided in Appendix A, Table A1. The LNG generation forecasts for 2030 and 2050 were 119,418 and 0 GWh, respectively. According to the 2030 and 2050 simulation results, the generation capacities were 101.1 TWh (37,348.7 MW) and 355.7 TWh (41,448.7 MW), respectively. All these figures for 2030 and 2050 corresponded to the LNG and hydrogen power generation, respectively, i.e., all LNG generation was converted to hydrogen generation. The estimated hydrogen power generation for 2050 was more than three times the LNG power generation for 2030. We could attribute this to two causes. First, increased electrification may cause a surge in electricity demand. Second, as volatility due to renewable energies, such as PV and wind, becomes more severe, more LNG or hydrogen generation resources, which have relatively large ramping capability, will be input to meet the generation demand.
The only type of coal power generation in South Korea is steam-turbined generation. The capacity of coal power generation in South Korea in 2020 was 186,344 MW. Coal power generation (steam turbine cycle) is a resource subject to fuel conversion (for ammonia and bioenergy). The data on the commissioning and decommissioning dates and the capacity of the coal generators used in the simulation are provided in Appendix A, Table A2. The generation forecasts of coal power in 2030 and 2050 are 133,503 and 0 GWh, respectively. The capacity forecast is 30,420.6 MW, and the 2030 simulation results indicate that the total coal generation will be 185,692,198 MWh. By subtracting 1,152,509 MWh of bioenergy and 22,046,400 MWh of ammonia, for oil-fired mixed-combustion, we could deduce that in 2030, the capacity of coal generation would be 162,493,289 MWh. Assuming that mixed combustion would be equally distributed among all the generators, there would be no converted coal generation facilities in 2030. According to the 2050 simulation results, the generation would be 114.7 TWh, comprising 6.5 TWh of bioenergy and 107.9 TWh of ammonia generation.
The capacity of nuclear power in South Korea in 2020 was 160,184 MW. The data on the commissioning and decommissioning dates and the capacity of nuclear power can be found in Appendix A, Table A3. In this study, the generation forecasts of nuclear power for 2030 and 2050 are 146,364 GWh and 79,535 GWh, respectively. According to the simulation results, the generation (capacity) of nuclear power in 2030 and 2050 would be 146,842,450 MWh (20,506 MW) and 53,975,783 MWh (19,506 MW), respectively. Notably, the generation in 2050 would be less than that estimated in the 2050 Carbon Neutrality Scenario A (79,535 MWh). This could be attributed to challenges arising from the operational characteristics of nuclear power plants, which make it difficult to respond to the increasing volatility and frequent oversupply expected in the future.

5.2. Net-Zero Electricity Mix Scenario (NEMS) Results

Figure 43 presents the combined generation forecasts for all sources to represent the NEMS. The energy (generation) forecast trends up to 2050 for all power generation sources are shown. For the resources subject to fuel conversion, the power generation from “conventional fuels” naturally decreased; however, it has been confirmed that, with the introduction of NRE fuels for fuel conversion, there are cases where the power generation more than doubles compared to the 2020 levels, as seen in LNG power generation facilities. Renewable energy facilities, excluding certain facilities such as IGCC, emit no carbon dioxide during the power generation process. Most renewable energy facilities, except for specific facilities such as marine energy, show an increasing trend until 2050. The generation forecast in the net-zero target year for nuclear power and resources subject to fuel conversion differed from the base year forecast. According to a simulation of the operational generation plan, the difference in generation was due to operational scheduling constraints and energy storage systems. This was derived based on the assumption of the current operational generation scheduling method. The results may vary if new operation methods are introduced in the future. However, given that merit order criteria and technical constraints specific to each resource are likely to persist in the future, these findings are deemed significant.
In accordance with the proposed framework for developing NEMS, the comprehensive outlook for the year-wise installed capacity of the resources subject to fuel conversion and nuclear power plants is depicted in Figure 44. The timeline for fuel conversion for each resource was identified. Facilities were considered to have completed fuel conversion when the projected generation from alternative fuels surpassed the forecasted generation from the respective fuel conversion target resources. The fuel conversion timelines for oil-based power generation, LNG power generation, and coal power generation were projected to be in 2026, 2040, and 2043, respectively.

5.3. Evaluation of Net-Zero Electricity Mix Scenario (NEMS) Characteristics

Based on the NEMS developed in this study, we propose the use of SIRR and FCR indicators to evaluate and manage the scale of system inertia and fuel conversion level, respectively.

5.3.1. System Inertia Resource Ratio (SIRR)

The system inertia resource ratio (SIRR) is the ratio of inertial resources to the total resources, which can be expressed as follows:
S I R R t = I R C t T R C t × 100 %
where IRCt and TRCt indicate the inertial resource and total resource capacities at year t, respectively. The existing synchronous machine-based power sources were classified as inertial resources, whereas converter-based NREs without control strategies, such as the use of grid-forming controls, were classified as non-inertial resources. In this study, we considered wind, PV, small hydro, and fuel cells as non-inertial resources. Figure 45 shows the year-wise SIRR of the NEMS result. The SIRRs in 2030 and 2050 were 49% and 15%, respectively. As the NEMS developed in this study will be updated in the future, this indicator can be used to secure and manage the adequacy of inertial resources in the system.

5.3.2. Fuel Conversion Rate (FCR)

Fuel conversion rate (FCR) is the extent of fuel conversion among the resources subject to fuel conversion and can be expressed as follows:
F C R i , t = M C G i , t T G i , t × 100 %
where MCGi,t and TGi,t indicate the mixed-combustion generation of resources i at year t and total generation of the resources subject to fuel conversion of resources i at year t, respectively. This indicator can be used as a management indicator, to mitigate the formation of stranded assets from the existing power facilities. In this study, coal, LNG, and oil were considered as the resources subject to fuel conversion. In general, as per our forecasts, hydrogen and ammonia will be applied to LNG power generation, bioenergy and ammonia will be applied to coal power generation, and bioenergy will be applied to oil power generation. The year-wise FCR for each resource subject to fuel conversion from 2021 to 2050 was illustrated in Figure 46. It was confirmed that the fuel conversion for coal, LNG, and oil will all be completed by the year 2043.

6. Conclusions

In this study, we proposed a practical framework for developing a practical NEMS framework for South Korea, in line with the country’s objective to achieve carbon neutrality by 2050. The framework can be applied to effectively reflect the energy-specific policy changes and continuously update the scenarios, as per future policies and plans. We also proposed the use of SIRR and FCR as indicators of the characteristics of the NEMS forecast. The steps used for establishing the NEMS framework proposed in this study is as follows: first, we forecasted the total electricity consumption and demand patterns by year; then, we forecasted the generation and capacity by NRE type and region; and finally, we forecasted the generation and capacities of the resources that were subject to fuel conversion and nuclear power. This framework was applied to develop a NEMS for South Korea. Notably, the 2050 generation forecasts for nuclear power and the resources subject to fuel conversion differed from the forecasts projected in the 2050 Carbon Neutrality Scenario. This difference could be attributed to the influence of energy storage systems and operational scheduling constraints. As the results were based on the currently applied operational generation planning method, new operational methods would yield different results. Finally, our study findings are significant for two reasons. First, the framework can identify the impacts of government-led, top-down policymaking on NEMS. Second, it can provide a practical approach to achieve carbon neutrality by 2050. In the future, we plan to perform an updated and expanded study, based on the reviews of this study’s findings. It would be interesting to explore the key intrinsic and extrinsic factors influencing the NEMS using sensitivity analysis. For instance, analyzing the long-term impact of climate crises on renewable energy output or examining specific changes resulting from sector coupling, such as H2P (heat-to-power), will be part of our planned analysis. Additionally, we intend to explore various innovative grid operation methods that can be integrated into the framework.

Author Contributions

C.M. carried out the main body of research and H.K. reviewed the work continuously. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by Korea Electric Power Corporation (No. R21XO01-8), and the National Research Foundation of Korea (NRF) grant funded by the Korea government (MSIT) (No. 2020R1F1A1077460).

Data Availability Statement

Data are contained within the article.

Conflicts of Interest

The authors declare no conflicts of interest. Although the author, Heejin Kim, is affiliated with Pion Electric Co., there are no financial conflicts of interest associated with the creation of this paper. The authors have made every effort to describe this paper from a transparent and objective perspective.

Appendix A. Commissioning and Decommissioning Dates and Capacities of Coal, LNG, and Nuclear Power Generators

Table A1. Commissioning and decommissioning dates and capacities of LNG generation for each generator.
Table A1. Commissioning and decommissioning dates and capacities of LNG generation for each generator.
Resource NameCommissioning DateDecommissioning DateCapacity (MW)
Pyeongtaek #11 April 19801 December 2024350
Pyeongtaek #230 June 19801 December 2024350
Pyeongtaek #34 May 19831 December 2024350
Pyeongtaek #41 August 19831 December 2024350
Mokdong CHP #131 December 198716 December 204721
Seoincheon 1CC#117 November 19921 December 2028225
Seoincheon 1CC#217 November 19921 December 2028225
Seoincheon 1CC#317 November 19921 December 2028225
Seoincheon 1CC#417 November 19921 December 2028225
Seoincheon 1CC#517 November 19921 December 2028225
Seoincheon 1CC#617 November 19921 December 2028225
Seoincheon 1CC#717 November 19921 December 2028225
Seoincheon 1CC#817 November 19921 December 2028225
Bucheon CC#11 February 19931 May 2028450
Bundang CC #116 September 19931 September 2053560
Ilsan CC#11 December 199316 November 2053600
Ulsan CC#11 June 199517 May 2055300
Ilsan CC#231 March 199616 March 2056300
Bundang CC #231 March 199716 March 2057340
Incheon CC#11 July 199716 June 2057450
Incheon CC#21 July 199716 June 2057450
Incheon CC#31 July 199716 June 2057450
Incheon CC#41 July 199716 June 2057450
Ulsan CC#21 August 199717 July 2057450
Ulsan CC#31 August 199717 July 2057450
Anyang CC#11 December 20001 December 2021450
POSCO Energy CC#316 March 20011 March 2061450
POSCO Energy CC#416 March 20011 March 2061450
GS Dangjin CC#11 April 200117 March 2061501
Ansan Urban Development CHP1 June 200117 May 206161
Boryeong CC#11 August 200217 July 2062450
Boryeong CC#21 August 200217 July 2062450
Boryeong CC#31 August 200217 July 2062450
Busan CC#11 March 200415 February 2064450
Busan CC#21 March 200415 February 2064450
Busan CC#31 March 200415 February 2064450
Busan CC#41 March 200415 February 2064450
Incheon 1CC1 June 200517 May 2065504
Yulchon CC#15 September 200521 August 2065526
GS Dangjin 2CC1 November 200517 October 2065500.25
Gwangyang 1CC13 February 200629 January 2066495
Gwangyang 2CC15 May 200630 April 2066495
Hwaseong CHP 1CC30 November 200715 November 2067588.3
Incheon 2CC1 June 200917 May 2069508.9
Songdo CHP 1CC30 April 201015 April 2070219.55
Incheon Airport 1CC19 May 20104 May 2070127
Gunsan 1CC31 May 201016 May 2070718.4
Paju CHP 1CC23 August 20108 August 2070515.5
Yeongwol 1CC31 October 201016 October 2070848
Pangyo CHP 1CC30 November 201015 November 2070146.314
Daejeon Southwest CHP31 January 201116 January 207148.3
POSCO Energy CC#528 February 201113 February 2071574.5
POSCO Energy CC#630 June 201115 June 2071574.58
Gwanggyo Heat & Power CC1 November 201217 October 2072144.8
Incheon 3CC1 December 201216 November 2072450
Oseong CC#11 March 201314 February 2073800
Suwan CHP CC1 April 201317 March 2073115.24
Byeolnae Heat CC1 July 201316 June 2073130.4
GS Dangjin CC#31 July 201316 June 2073382
Sejong CHP1 November 201317 October 2073530
Andong CC2 April 201418 March 2074400
Yangju CHP CC9 April 201425 March 2074555.1
Yulchon CC#229 April 201414 April 2074885
Pocheon CC#11 July 201416 June 2074725
Daegu Green Power CC1 July 201416 June 2074415.15
Ulsan CC#429 July 201414 July 2074871.9
POSCO Energy CC#730 July 201415 July 2074382.4
Pocheon CC#29 August 201425 July 2074725
Pyeongtaek CC#229 September 201414 September 2074868.5
POSCO Energy CC#821 October 20146 October 2074382
Asan Bae CHP CC21 October 20146 October 2074101.7
Ansan CC7 November 201423 October 2074751.2
POSCO Energy CC#91 January 201517 December 2074383
Dongducheon 2CC1 January 201517 December 2074858
Dongducheon 1CC1 March 201514 February 2075858
Hanam CHP CC1 October 201516 September 2075399
Luxury Osan CHP 1CC1 March 201615 February 2076436.1
Paju 1CC1 February 201717 January 2077848
Pocheon Natural CC17 March 20172 March 2077874.2
Paju 2CC28 March 201713 March 2077848
GS Dangjin CC#415 April 201731 March 2077846
Wirye New Town15 April 201731 March 2077413
Chuncheon CHP CC1 May 201716 April 2077470
Yeongnam Power 1CC1 November 201717 October 2077476.1
Dongtan CHP 1CC23 November 20178 November 2077378.4
Dongtan CHP 2CC4 December 201719 November 2077378.4
Busan Jeonggwan Energy CC1 January 201817 December 207750.2
Anyang CHP 2-1CC1 August 201817 July 2078481
Seoul CC#21 July 201916 June 2079400
Shinpyeongtaek CC#11 November 201917 October 2079863.3
Seoul CC#111 November 201927 October 2079400
Jeju CC#118 December 20193 December 2079125
Jeju CC#214 January 202030 December 2079125
Anyang CHP 2-2CC1 December 202116 November 2081467.5
Yeoju CC#11 December 202216 November 20821000
Yangsan collective energy1 April 202317 March 2083118.9
Daejeon CHP (9th)1 October 202316 September 208325
Sejong Happiness CHP1 November 202317 October 2083585
Magok CHP1 November 202317 October 2083285
Yeosu Green Energy1 February 202417 January 2084250
Samcheonpo #3 LNG CC1 December 202416 November 2084560
Samcheonpo #4 LNG CC1 December 202416 November 2084560
Tongyeong CC#11 December 202416 November 2084920
Ulsan GPS CC1 December 202416 November 20841122
Eumseong Green Energy CC1 December 202416 November 20841122
Daegu CHP #11 December 202416 November 2084261
Cheongju CHP #11 December 202416 November 2084261
Bucheon CHP #2-11 May 202516 April 2085498
Taean #1 LNG CC1 December 202516 November 2085500
Taean #2 LNG CC1 December 202516 November 2085500
Boryeong #5 1CC1 December 202516 November 2085500
Boryeong #6 1CC1 December 202516 November 2085500
Hadong #1 CC1 June 202617 May 2086500
Hadong #2 CC1 June 202717 May 2087500
Samcheonpo #5 CC1 July 202716 June 2087500
Samcheonpo #6 CC1 January 202817 December 2087500
Bucheon CHP #2-21 May 202816 April 2088498
Hadong #3 CC1 June 202817 May 2088500
Hadong #4 CC1 December 202816 November 2088500
Taean #3 CC1 December 202816 November 2088500
Dangjin #1_2 CC1 December 202916 November 20891000
New LNG #1CC (9th)1 December 202916 November 2089500
New LNG #2CC (9th)1 December 202916 November 2089500
Taean #4 CC1 December 202916 November 2089500
Dangjin #3_4 CC1 September 203017 August 20901000
Hadong #5 CC1 June 203117 May 2091500
Hadong #6 CC1 December 203116 November 2091500
Taean #5 CC1 December 203216 November 2092500
Taean #6 CC1 December 203216 November 2092500
Yeongheung #1 CC1 June 203417 May 2094800
Yeongheung #2 CC1 December 203416 November 2094800
Total capacity (MW)41,448.7
Note: Combined cycle (CC). Combined heat and power (CHP).
Table A2. Commissioning and decommissioning dates and capacities of coal power generation for each generator.
Table A2. Commissioning and decommissioning dates and capacities of coal power generation for each generator.
Resource NameCommissioning DateDecommissioning DateCapacity (MW)
Honam #11 October 197216 September 2032250
Honam #21 October 197216 September 2032250
Samcheonpo #11 August 198317 July 2043560
Boryeong #11 December 198316 November 2043500
Samcheonpo #21 February 198417 January 2044560
Boryeong #21 September 198417 August 2044500
Samcheonpo #31 April 199317 March 2053560
Boryeong #31 June 199317 May 2053500
Boryeong #41 June 199317 May 2053500
Samcheonpo #41 March 199414 February 2054560
Boryeong #51 September 199417 August 2054500
Boryeong #61 September 199417 August 2054500
Taean #11 June 199517 May 2055500
Taean #21 December 199516 November 2055500
Taean #31 March 199714 February 2057500
Samcheonpo #51 June 199717 May 2057500
Taean #41 September 199717 August 2057500
Samcheonpo #61 January 199817 December 2057500
Dangjin #130 June 199915 June 2059500
Yeosu #21 November 199917 October 2059328.6
Hadong #11 November 199917 October 2059500
Hadong #21 November 199917 October 2059500
Hadong #31 November 199917 October 2059500
Hadong #41 November 199917 October 2059500
Dangjin #231 December 199916 December 2059500
Hadong #530 September 200015 September 2060500
Hadong #630 September 200015 September 2060500
Dangjin #331 December 200016 December 2060500
Dangjin #431 December 200016 December 2060500
Taean #528 May 200213 May 2062500
Taean #628 May 200213 May 2062500
Yeongheung #112 July 200427 June 2064800
Yeongheung #230 November 200415 November 2064800
Dangjin #530 September 200515 September 2065500
Dangjin #61 April 200617 March 2066500
Taean#728 February 200713 February 2067500
Dangjin #730 April 200715 April 2067500
Taean#831 July 200716 July 2067500
Dangjin #830 September 200715 September 2067500
Yeongheung #31 June 200817 May 2068870
Boryeong #719 June 20084 June 2068500
Boryeong #811 December 200826 November 2068500
Yeongheung #415 December 200830 November 2068870
Hadong #731 December 200816 December 2068500
Hadong #828 May 200913 May 2069500
Yeongheung #511 June 201427 May 2074870
Yeongheung #65 November 201421 October 2074870
Dangjin #91 December 201516 November 20751020
Samcheok Green #11 June 201617 May 20761022
Bukpyeong #11 June 201617 May 2076595
Dangjin #101 June 201617 May 20761020
Taean #91 June 201617 May 20761050
Yeosu #11 August 201617 July 2076340
Taean#101 May 201716 April 20771050
Samcheok Green #21 June 201717 May 20771022
Shinboryeong #130 June 201715 June 20771019
Bukpyeong #21 August 201717 July 2077595
Shinboryeong #230 September 201715 September 20771019
Shin Seocheon #11 March 202114 February 20811000
Goseong High #11 April 202117 March 20811040
Goseong High #21 October 202116 September 20811040
Gangneung Anin #11 September 202217 August 20821040
Gangneung Anin #21 March 202314 February 20831040
Samcheok #11 October 202316 September 20831050
Samcheok #21 April 202417 March 20841050
Total capacity (MW)42,160.6
Table A3. Commissioning and decommissioning dates and capacities of nuclear power generation for each generator.
Table A3. Commissioning and decommissioning dates and capacities of nuclear power generation for each generator.
Resource NameCommissioning DateDecommissioning DateCapacity (MW)
Gori #225 July 198311 October 1901650
Gori #330 September 19857 August 1902950
Gori #429 April 19867 August 1902950
Hanbit #125 August 19867 August 1902950
Hanbit #210 June 19877 August 1902950
Hanul #11 September 19887 August 1902950
Hanul #21 September 19897 August 1902950
Hanbit #331 March 199526 September 19021000
Hanbit #41 January 199626 September 19021000
Wolseong #21 July 199730 November 1901700
Wolseong #31 July 199830 November 1901700
Hanul #31 August 199826 September 19021000
Wolseong #41 October 199930 November 1901700
Hanul #431 December 199926 September 19021000
Hanbit #521 May 200226 September 19021000
Hanbit #623 December 200226 September 19021000
Hanul #51 July 200426 September 19021000
Hanul #61 April 200526 September 19021000
Shin-Gori #11 February 201118 November 19021053
Shinwolseong #11 July 201226 September 19021000
Shin-Gori #220 July 201218 November 19021053
Shinwolseong #224 July 201526 September 19021000
Shin-Gori #31 April 201631 October 19031400
Shin-Gori #41 September 201831 October 19031400
Shin Hanul #11 July 202131 October 19031400
Shin Hanul #21 May 202231 October 19031400
Shin-Gori #51 March 202331 October 19031400
Shin-Gori #61 June 202431 October 19031400
Total capacity (MW)28,956

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Figure 1. Share of new and renewable energies (NRE) generation by type from 2021 to 2034; integrated coal gasification combined cycle (IGCC), Photovoltaic (PV).
Figure 1. Share of new and renewable energies (NRE) generation by type from 2021 to 2034; integrated coal gasification combined cycle (IGCC), Photovoltaic (PV).
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Figure 2. Practical framework for net-zero electricity mix scenario (NEMS) for South Korea proposed in this study; compound annual growth rate (CAGR), demand pattern forecast algorithm (DPFA), weighted moving average (WMA), system inertia resource ratio (SIRR), and fuel conversion rate (FCR).
Figure 2. Practical framework for net-zero electricity mix scenario (NEMS) for South Korea proposed in this study; compound annual growth rate (CAGR), demand pattern forecast algorithm (DPFA), weighted moving average (WMA), system inertia resource ratio (SIRR), and fuel conversion rate (FCR).
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Figure 3. Flowchart explaining the procedure for estimating the total electricity consumption forecast.
Figure 3. Flowchart explaining the procedure for estimating the total electricity consumption forecast.
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Figure 4. Total electricity consumption forecast for 2021–2050.
Figure 4. Total electricity consumption forecast for 2021–2050.
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Figure 5. Yearly demand pattern forecasts based on demand pattern forecast algorithm (DPFA).
Figure 5. Yearly demand pattern forecasts based on demand pattern forecast algorithm (DPFA).
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Figure 6. Nationwide demand pattern forecasts.
Figure 6. Nationwide demand pattern forecasts.
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Figure 7. Demand pattern forecast for the Seoul capital area (SCA).
Figure 7. Demand pattern forecast for the Seoul capital area (SCA).
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Figure 8. Demand pattern forecast for the non-Seoul capital area (non-SCA) regions.
Figure 8. Demand pattern forecast for the non-Seoul capital area (non-SCA) regions.
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Figure 9. Demand pattern forecast for Jeju.
Figure 9. Demand pattern forecast for Jeju.
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Figure 10. Procedure used for forecasting the total new and renewable energies (NRE) generation.
Figure 10. Procedure used for forecasting the total new and renewable energies (NRE) generation.
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Figure 11. Forecast of the total new and renewable energies (NRE) generation on an annual basis, for 2021–2050.
Figure 11. Forecast of the total new and renewable energies (NRE) generation on an annual basis, for 2021–2050.
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Figure 12. Total new and renewable energies (NRE) generation, excluding ammonia, hydrogen, and bio generations, on an annual basis, for 2021–2050.
Figure 12. Total new and renewable energies (NRE) generation, excluding ammonia, hydrogen, and bio generations, on an annual basis, for 2021–2050.
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Figure 13. Weighted moving average (WMA)-based forecasting technique of generation of resources for share-based estimation.
Figure 13. Weighted moving average (WMA)-based forecasting technique of generation of resources for share-based estimation.
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Figure 14. Forecast of small hydro generation share for 2021–2050.
Figure 14. Forecast of small hydro generation share for 2021–2050.
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Figure 15. Forecast of small hydro generation for 2021–2050.
Figure 15. Forecast of small hydro generation for 2021–2050.
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Figure 16. Forecast of PV generation share for 2021–2050.
Figure 16. Forecast of PV generation share for 2021–2050.
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Figure 17. Forecast of PV generation for 2021–2050.
Figure 17. Forecast of PV generation for 2021–2050.
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Figure 18. Forecast of wind generation share for 2021–2050.
Figure 18. Forecast of wind generation share for 2021–2050.
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Figure 19. Forecast of wind generation for 2021–2050.
Figure 19. Forecast of wind generation for 2021–2050.
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Figure 20. Weighted moving average (WMA)-based forecasting technique for bioenergy generation growth rate.
Figure 20. Weighted moving average (WMA)-based forecasting technique for bioenergy generation growth rate.
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Figure 21. Forecast of bioenergy generation growth rate for 2021–2050.
Figure 21. Forecast of bioenergy generation growth rate for 2021–2050.
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Figure 22. Forecast of bioenergy generation for 2021–2050.
Figure 22. Forecast of bioenergy generation for 2021–2050.
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Figure 23. Forecast of bioenergy mixed-combustion generation for 2021–2050.
Figure 23. Forecast of bioenergy mixed-combustion generation for 2021–2050.
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Figure 24. Forecast of fuel cells generation for 2021–2050.
Figure 24. Forecast of fuel cells generation for 2021–2050.
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Figure 25. Integrated gasification combined cycle (IGCC) generation forecast for 2021–2050.
Figure 25. Integrated gasification combined cycle (IGCC) generation forecast for 2021–2050.
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Figure 26. Ammonia turbine generation forecast for 2021–2050.
Figure 26. Ammonia turbine generation forecast for 2021–2050.
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Figure 27. Hydrogen turbine generation forecast for 2021–2050.
Figure 27. Hydrogen turbine generation forecast for 2021–2050.
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Figure 28. Integrated gasification combined cycle (IGCC) generation forecast by region for 2021–2050.
Figure 28. Integrated gasification combined cycle (IGCC) generation forecast by region for 2021–2050.
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Figure 29. Forecast of small hydro generation by region for 2021–2050.
Figure 29. Forecast of small hydro generation by region for 2021–2050.
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Figure 30. Forecast of PV generation by region for 2021–2050.
Figure 30. Forecast of PV generation by region for 2021–2050.
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Figure 31. Forecast of wind generation by region for 2021–2050.
Figure 31. Forecast of wind generation by region for 2021–2050.
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Figure 32. Forecast of bioenergy mixed-combustion generation by region for 2021–2050.
Figure 32. Forecast of bioenergy mixed-combustion generation by region for 2021–2050.
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Figure 33. Forecast of fuel cell generation by region for 2021–2050.
Figure 33. Forecast of fuel cell generation by region for 2021–2050.
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Figure 34. Forecast of ammonia turbine generation by region for 2021–2050.
Figure 34. Forecast of ammonia turbine generation by region for 2021–2050.
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Figure 35. Forecast of hydrogen turbine generation by region for 2021–2050.
Figure 35. Forecast of hydrogen turbine generation by region for 2021–2050.
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Figure 36. Procedure used in this study for calculating the capacities of NREs by region, based on weighted moving average (WMA).
Figure 36. Procedure used in this study for calculating the capacities of NREs by region, based on weighted moving average (WMA).
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Figure 37. Forecast of small hydro installed capacity by region for 2021–2050.
Figure 37. Forecast of small hydro installed capacity by region for 2021–2050.
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Figure 38. Forecast of PV installed capacity by region for 2021–2050.
Figure 38. Forecast of PV installed capacity by region for 2021–2050.
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Figure 39. Forecast of wind installed capacity by region for 2021–2050.
Figure 39. Forecast of wind installed capacity by region for 2021–2050.
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Figure 40. Forecast of fuel cell installed capacity by region for 2021–2050.
Figure 40. Forecast of fuel cell installed capacity by region for 2021–2050.
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Figure 41. Results of operational generation schedule for 2030; combined cycle (CC), steam turbine cycle (STC), pumped hydro energy storage (PHES).
Figure 41. Results of operational generation schedule for 2030; combined cycle (CC), steam turbine cycle (STC), pumped hydro energy storage (PHES).
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Figure 42. Results of operational generation schedule for 2050; combined cycle (CC), energy storage system (ESS), steam turbine cycle (STC).
Figure 42. Results of operational generation schedule for 2050; combined cycle (CC), energy storage system (ESS), steam turbine cycle (STC).
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Figure 43. Net-zero electricity mix scenario (NEMS) of South Korea.
Figure 43. Net-zero electricity mix scenario (NEMS) of South Korea.
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Figure 44. Installed capacity forecast for resources subject to fuel conversion and nuclear power.
Figure 44. Installed capacity forecast for resources subject to fuel conversion and nuclear power.
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Figure 45. System inertia resource ratio (SIRR) for NEMS result.
Figure 45. System inertia resource ratio (SIRR) for NEMS result.
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Figure 46. Fuel conversion rate (FCR) for NEMS result.
Figure 46. Fuel conversion rate (FCR) for NEMS result.
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Table 1. Percentages of generation by new and renewable energy (NRE type) and region in 2020.
Table 1. Percentages of generation by new and renewable energy (NRE type) and region in 2020.
CategorySCANon-SCAJeju
Wind1.85%79.79%18.36%
PV6.93%90.58%2.49%
Conventional hydro17.77%82.23%0%
Small hydro17.77%81.76%0.47%
Marine energy99.97%0.03%0%
Bioenergy (mixed combustion)11.04%61.40%27.57%
Fuel cells75.38%24.62%0%
IGCC0%100%0%
Ammonia37.37%62.35%0.27%
Hydrogen65.11%34.25%0.64%
Note: Seoul capital area (SCA). Non-Seoul capital area (non-SCA) regions. Integrated gasification combined cycle (IGCC).
Table 2. Commissioning and decommissioning dates and capacities of oil-fired power generation for each generator and resource type.
Table 2. Commissioning and decommissioning dates and capacities of oil-fired power generation for each generator and resource type.
Resource NameCommissioning DateDecommissioning DateCapacity (MW)
Ulsan #41 February 197710 February 2022400
Ulsan #51 February 197710 February 2022400
Ulsan #61 February 197710 February 2022400
Daesan 1CC1 May 19981 January 2100466
Daejeon CHP1 May 20021 June 202688
Cheongju CHP #11 August 20021 December 202461
Daegu CHP #11 October 20021 December 202444
Suwon CHP #11 October 200231 December 202643
Jeju IC #11 June 200531 December 205040
Jeju IC #21 June 200931 December 205040
Moorim Powertech CHP1 August 201831 December 205026
Total capacity (as of December 2020)2008 MW
Note: Combined cycle (CC). Combined heat and power (CHP). Internal combustion (IC).
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Min, C.; Kim, H. A Practical Framework for Developing Net-Zero Electricity Mix Scenarios: A Case Study of South Korea. Energies 2024, 17, 926. https://doi.org/10.3390/en17040926

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Min C, Kim H. A Practical Framework for Developing Net-Zero Electricity Mix Scenarios: A Case Study of South Korea. Energies. 2024; 17(4):926. https://doi.org/10.3390/en17040926

Chicago/Turabian Style

Min, Changgi, and Heejin Kim. 2024. "A Practical Framework for Developing Net-Zero Electricity Mix Scenarios: A Case Study of South Korea" Energies 17, no. 4: 926. https://doi.org/10.3390/en17040926

APA Style

Min, C., & Kim, H. (2024). A Practical Framework for Developing Net-Zero Electricity Mix Scenarios: A Case Study of South Korea. Energies, 17(4), 926. https://doi.org/10.3390/en17040926

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