A Process for the Implementation of New Renewable Energy Systems in a Building by Considering Environmental and Economic Effect
Abstract
:1. Introduction
2. Process for the Implementation of New Renewable Energy Systems in a Building
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- Step 1: Establishing the basic information database for each system installation. The study defines the region, the facility type, and the power supply system type to be implemented. In addition, the study collects the basic information about the central and local government’s support systems and any regulations when NRE systems are to be implemented (i.e., budget limit, area limit and size limit).
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- Step 2: Selecting key factors affecting system performances. Based on the data collected from Step 1, the study selects key factors to the production of NRE system and establishes the database. In other words, the study establishes the information of regional factors, design factors, and key factors of each NRE system by the use of each energy source in the target building.
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- Step 3: Making possible alternatives of the system installation. Based on the database established in Step 2, the study produces possible alternatives of the system installation. First, it establishes a process with which to analyze the energy source and energy profile of the target building, based on which it establishes the scenario per NRE and embodied the system design through simulations.
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- Step 4: Selecting optimal system by considering environmental and economic effects. From the NRE system scenarios established in Step 3, the study establishes the optimal selection process based on the life cycle cost (LCC) and life cycle CO2 (LCCO2). First, through the simulation results, the study calculates the energy production per scenario and evaluates whether it achieved the target energy production for the target building. By performing the LCC and LCCO2 of the scenarios selected above, the study selects the optimal NRE system implementation scenario.
2.1. Step 1: Establishing the Basic Information for the Each System Installation
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- Certification of NRE system: This certification scheme was designed to guarantee the quality of systems manufactured or imported to enhance user reliability. Certification of NRE system focuses on promoting the commercialization of NRE system (i.e., PV, STE, FC, and GSHP system) in buildings;
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- NRE system mandatory use for public buildings: Under this mandatory scheme, new buildings of public institutions (i.e., administrative bodies, local autonomous entities, and state-run companies), the floor area of which exceeds 1000 square meters, are obliged to use more than 10% of their total expected energy consumptions from installed NRE system;
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- The standard of energy cost calculation: for the purpose of acceleration of NRE system deployment, the government provides a special fuel unit price (i.e., a special unit price for gas only used for FC system) and a system marginal price (SMP) electricity market price applied in transactions involving electricity generated from non-fossil fuels, for NRE system users to participate in the utility market; and
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- The standard of government subsidy: the government provides subsidies for NRE system users to promote NRE system deployment. Those government subsidy schemes are classified into two categories which are the test-period deployment subsidy program and the general deployment subsidy program. The test-period deployment subsidy program aims to support the newly developed technologies and systems to advance into the market. On the other hand, the general deployment subsidy program aims to activate the market for NRE systems, which already have been commercialized.
2.2. Step 2: Selecting Key Factors Affecting System Performances
2.2.1. Selecting Key Factors Affecting System Performances of the PV System
2.2.2. Selecting Key Factors Affecting System Performances of the STE System
2.2.3. Selecting Key Factors Affecting System Performances of the FC System
Key Factor | Note |
---|---|
The type of the fuel cell system (ToFC) | PEMFC 1, PAFC 2, MCFC 3, SOFC 4 |
The minimum operating rate (MOR) | % |
The operating scheme (OSc) | FPCO 5, PLF 6, HLF 7 |
The operating size (OSi) | kW |
2.2.4. Selecting Key Factors Affecting System Performances of the GSHP System
2.3. Step 3: Making Possible Alternatives of the System Installation
2.3.1. Making Possible Alternatives of PV System
2.3.2. Making Possible Alternatives of STE System
2.3.3. Making Possible Alternatives of FC System
2.3.4. Making Possible Alternatives of GSHP System
2.3.5. Selection of the Scenario that Achieves Target Production with Constraints
2.4. Step 4: Selecting Optimal System through Life Cycle Cost and Life Cycle CO2 Analysis
3. Case Study for the Validation of the Proposed Process (Focused on Fuel Cell System)
3.1. Step 1: Establishing the Basic Information for the FC System Installation
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- Part 1: Region/facility/energy supply system type: This study aimed to develop process for the implementation of new renewable energy systems in a building. Therefore, “J” multi-family housing complex, which was closest to the average CO2 emissions per unit area of all multi-family housing complex in Seoul, South Korea, was selected for the case study. Table 2 shows the basic information on the characteristics of “J” multi-family housing, as well as energy usage data.
Table 2. Overview of Target facility. Category Multi-Family Housing Complex Location Seoul Type Residential Electricity system On-grid Heating system Centralized Government subsidy Yes (technically) No (practically) Progressive tax Yes Occupants of the building 457 Residents Major energy consumption Elec > Gas Total amount of Energy (TOE) 1872 Total Energy Cost (US$) $ 780,117 - •
- Part 2: Energy policies and scheme: First, the FC system is a combined heat and power (CHP) system that can simultaneously produce electricity and heat energy. Thus, the electricity and gas cost should be calculated simultaneously. In South Korea, the standard of energy cost calculation can be generally divided into that for residential buildings and that for non-residential buildings. Especially, a progressive tax should be considered to calculate the electricity cost for residential buildings. In a progressive tax, as the energy consumption of residential building increases, a higher unit price of electricity is applied for the electricity end-user in the calculation of electricity costs of the month (i.e., $0.055/kWh is applied until the first use of 100 kWh, $0.094/kWh is applied from 100 kWh to 200 kWh, and $0.139/kWh is applied from 200 kWh to 300 kWh). Therefore, as mentioned above, it is necessary to consider the type of building in calculating the building’s energy cost. The information can be gathered from the electricity service providers of South Korea (i.e., “Korea Electricity Power Corporation”) and the information can be gathered from the gas service provider of South Korea (i.e., “Korea Gas Corporation”). Second, the FC system has a higher initial construction cost per unit capacity than other NRE systems. Thus, government subsidies should be considered to ensure the economic feasibility of the FC system. Residential buildings can receive government subsidies through the “One Million Green Homes Program”. On the other hand, non-residential building can receive government subsidies through a Building Support Program (refer to Table 3).
Table 3. The standard of the government subsidy. Category Target Facility Application Range Amount of Grant ($/kW) One Million Green Homes Seoul <1 kW 31,246 Building Support Program Residential <20 kW 31,246
3.2. Step 2: Selecting Key Factors Affecting System Performances
3.3. Step 3: Making Possible Alternatives of the System Installation
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- Phase 1: Calculation of the hourly operating rate (HOR): Above all things, the hourly operating rate of the FC system (HOR) should be calculated first in accordance with the OSc, the OSi, and the hourly energy demand of a given building (HED) (refer to Table 4). In the case of FPCO, the HOR should be always 100% (refer to Equations (1)–(2)). On the other hand, HOR should be followed based on the hourly electricity demand of a given building (HEDE) in PLF (refer to Equation (4)) and HOR should be followed based on the hourly heat energy demand of a given building (HEDH) in HLF (refer to Equation (6)).
Table 4. Equations for calculation of the hourly operating rate of the FC system. Category HED > OSI No. HED < OSI No. In the case of FPCO (1) (2) In the case of PLF (3) (4) In the case of HLF (5) (6) where, HORFPCO is the hourly operating rate of the FC system at full power capacity output scheme; HORPLF is the hourly operating rate of the FC system at power load following scheme; HORHLF is the hourly operating rate of the FC system at heat load following scheme; HEDE is the hourly energy demand of electricity of a given building; HEDH is the hourly energy demand of heat of a given building; HE100% is the heat efficiency of the FC system at 100% operating rate; EE100% is the electricity efficiency of the FC system at 100% operating rate; Ω is the NRE system pipe loss coefficient (0.95). - •
- Phase 2: Check for the MOR standard: the calculated HOR should observe the MOR standard as mentioned above. Therefore the HOR should be always above than MOR. If the HOR is below than MOR, HOR should be HOR standard (refer to Table 5).
Table 5. Equations for observing the minimum operating rate (MOR) standard. Category HOR > MOR No. HOR < MOR No. HOR modification HOR accepted (7) HOR = MOR (8) - •
- Phase 3: Check for the ERR standard: also the FC system has ERR constraint. Therefore, hourly fluctuation rate of HOR should be less than ERR. If the hourly fluctuation rate of HOR excesses the ERR, the HOR should be modified refer to Table 6.
Table 6. Equations for modification the hourly operating rate in accordance with the ERR. Category HORT2 > HORT1 × (1 + ERR) No. HORT2 < HORT1× (1 − ERR) No. HOR modification (9) (10) where, HORT1 is the hourly operating rate of the FC system at some point; HORT2 is the hourly operating rate of the FC system at one-hour after than T1. - •
- Phase 4: Calculation of the electricity/heat efficiency on the hourly basis: the FC system energy performance (i.e., electricity and heat energy efficiency of the FC system) can be differ based on the HOR as mentioned above. The New and Renewable Energy Laboratory (NREL) of U.S. developed Fuel Cell Power Model (FCP Model) which provides the electricity and heat energy efficiency information of the FC system by HOR [66].
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- Phase 5: Calculation of the electricity/heat energy supply: Based on the established electricity/heat energy efficiency, the electricity/heat supply of the FC system can be calculated using energy simulation “RETScreen” or the “proposed simplified equations” (refer to Table 7).
Table 7. Equations for calculation of the electricity/heat supply of the FC system. Category Electricity No. Heat energy No. In the case of FPCO (11) (12) In the case of PLF (13) (14) In the case of HLF (15) (16) where, HFESE is the hourly FC system energy supply of electricity; HFESH is the hourly FC system energy supply of heat; HORFPCO is the hourly operating rate of the FC system at full power capacity output scheme; HORPLF is the hourly operating rate of the FC system at power load following scheme; HORHLF is the hourly operating rate of the FC system at heat load following scheme; EE is the electricity efficiency of the FC system; HE is the heat efficiency of the FC system; is the NRE system pipe loss coefficient (0.95).
3.4. Step 4: Selecting Optimal System through Life Cycle Cost and Life Cycle CO2 Analysis
- •
- In terms of NPV20, BEP20, SIR20, the optimal size is 100 kW (i.e., scenarios #1–#3) (reached BEP20 in 7th and 11th year). If the energy surplus of the fuel cell system is higher than the energy demand of a given building (more than 200 kW), the FPCO scheme could not recover the increase in the initial construction cost due to the increase of its capacity, as the SMP is low and the gas cost is high. On the other hand, the PLF scheme and the HLF scheme did not offer additional economic benefits due to the properties of their operating schemes. In other words, as the operating size of the fuel cell system increases, it cannot produce surplus electricity or heat energy but the initial construction cost and the operating and maintenance costs do increase. Therefore, the optimal operating size of the fuel cell system was shown to 100 kW, at which the energy supply of the fuel cell system came closest to the energy demand of a given building. Monthly minimum operating rate and operating schemes are different, because the monthly minimum operating rate and operating schemes have changed up to the building energy consumption.
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- In terms of APES20, the optimal scheme is PLF scheme and the optimal size is 300 kW (i.e., scenario #4). In the case of the PLF scheme, there was no exported-to-the-grid sales due to the properties of its operating scheme; and like the FPCO scheme, it produced large surplus heat energy in summer. Therefore, in case of only considering APES20, PLF is the optimal scheme.
Optimal Scenario | Scenario # 1 (In terms of NPV20) | Scenario # 2 (In terms of BEP20) | Scenario # 3 (In terms of SIR20) | Scenario # 4 (In terms of APES20) |
---|---|---|---|---|
APES20: Annual Primary Energy Saving (TOE) | 437.35 | 437.35 | 408.54 | 1071.24 |
NPV20: Net Present Value (US $) | 1,080,549 | 1,080,549 | 903,945 | −1,147,030 |
SIR20: Saving-to Investment Ratio | 1.964 | 1.964 | 2.058 | 0.649 |
BEP20: Break-Even-Point (Year) | 7 | 7 | 11 | 20 |
Type of Fuel Cell | MCFC | MCFC | PAFC | MCFC |
Operating Size | 100 kW | 100 kW | 100 kW | 300 kW |
Minimum Operating Rate_Jan. (5%–50%, 5%) | 10 | 35 | 25 | 10 |
Minimum Operating Rate_Feb. (5%–50%, 5%) | 15 | 15 | 15 | 10 |
Minimum Operating Rate_Mar. (5%–50%, 5%) | 30 | 40 | 30 | 30 |
Minimum Operating Rate_Apr. (5%–50%, 5%) | 10 | 50 | 10 | 30 |
Minimum Operating Rate_May (5%–50%, 5%) | 5 | 10 | 10 | 25 |
Minimum Operating Rate_Jun. (5%–50%, 5%) | 25 | 50 | 40 | 20 |
Minimum Operating Rate_Jul. (5%–50%, 5%) | 30 | 50 | 50 | 30 |
Minimum Operating Rate_Aug. (5%–50%, 5%) | 10 | 40 | 10 | 10 |
Minimum Operating Rate_Sep. (5%–50%, 5%) | 25 | 50 | 35 | 20 |
Minimum Operating Rate_Oct. (5%–50%, 5%) | 25 | 25 | 25 | 25 |
Minimum Operating Rate_Nov. (5%–50%, 5%) | 50 | 30 | 50 | 25 |
Minimum Operating Rate_Dec. (5%–50%, 5%) | 15 | 15 | 15 | 15 |
Monthly Operating Scheme_Jan. (FPCO = 1, PLF = 2, HLF = 3) | 1 | 2 | 2 | 2 |
Monthly Operating Scheme_Feb. (FPCO = 1, PLF = 2, HLF = 3) | 3 | 2 | 3 | 3 |
Monthly Operating Scheme_Mar. (FPCO = 1, PLF = 2, HLF = 3) | 3 | 3 | 3 | 2 |
Monthly Operating Scheme_Apr. (FPCO = 1, PLF = 2, HLF = 3) | 3 | 3 | 3 | 2 |
Monthly Operating Scheme_May (FPCO = 1, PLF = 2, HLF = 3) | 2 | 1 | 2 | 2 |
Monthly Operating Scheme_Jun. (FPCO = 1, PLF = 2, HLF = 3) | 1 | 1 | 1 | 2 |
Monthly Operating Scheme_Jul. (FPCO = 1, PLF = 2, HLF = 3) | 2 | 3 | 1 | 2 |
Monthly Operating Scheme_Aug. (FPCO = 1, PLF = 2, HLF = 3) | 1 | 1 | 1 | 2 |
Monthly Operating Scheme_Sep. (FPCO = 1, PLF = 2, HLF = 3) | 2 | 1 | 3 | 2 |
Monthly Operating Scheme_Oct. (FPCO = 1, PLF = 2, HLF = 3) | 2 | 3 | 3 | 2 |
Monthly Operating Scheme_Nov. (FPCO = 1, PLF = 2, HLF = 3) | 1 | 3 | 3 | 2 |
Monthly Operating Scheme_Dec. (FPCO = 1, PLF = 2, HLF = 3) | 2 | 2 | 2 | 2 |
4. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Appendix
TYPE | PEMFC 1 | PAFC 2 | MCFC 3 | SOFC 4 | |
---|---|---|---|---|---|
1st Generation | 2nd Generation | 3th Generation | |||
Development | Commercialization phase | Verification phase | |||
Application range | Car-Home | Building | Building-Plant | Home-Building | |
Size (kW) | 1 kW | 100 kW~ | 100 kW~ | 1 kW~ | |
Heat rate (kJ/kWh) | 10,286 | 8571 | 7660 | 6545 | |
Heat recovery efficiency (%) | 50% | 48% | 43% | 35% | |
Operating temperature (°C) | 25–80 | 200 | 650 | 800 | |
Initial cost ($/kW) | 5712 | 4284 | 4284 | 7235 | |
O & M | 1.5%/year | 30%/5 year | 30%/5 year | 30%/5 year | |
External reformers | necessary | necessary | unnecessary | unnecessary | |
Stack | Platinum | Platinum | Perovskites | Nickel | |
High price | Low price | Low price | |||
Life duration(year) | 10 | 20 | 20 | 20 |
Classification | Detailed classification | Detailed description |
---|---|---|
Analysis approach | Present worth method (NPV20, BEP) | |
Realistic discount rate | Interest | 3.30% |
Electricity | 0.66% | |
Gas | 0.11% | |
KCERs | 2.66% | |
Analysis period | 20 years | |
Starting point of analysis | 2013 | |
Significant cost of ownership | Initial construction cost | Initial investment cost |
Initial benefit | Government subsidy (67%) | |
Operation and maintenance cost | Replacement/repair cost | |
Energy consumption cost | ||
Progressive tax | ||
Operation and maintenance benefit | Gas savings, electricity savings | |
Benefit from SMP | ||
Benefit from KCERs |
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Kim, C.-J.; Hong, T.; Kim, J.; Kim, D.; Seo, D.-y. A Process for the Implementation of New Renewable Energy Systems in a Building by Considering Environmental and Economic Effect. Sustainability 2015, 7, 12870-12890. https://doi.org/10.3390/su70912870
Kim C-J, Hong T, Kim J, Kim D, Seo D-y. A Process for the Implementation of New Renewable Energy Systems in a Building by Considering Environmental and Economic Effect. Sustainability. 2015; 7(9):12870-12890. https://doi.org/10.3390/su70912870
Chicago/Turabian StyleKim, Chan-Joong, Taehoon Hong, Jimin Kim, Daeho Kim, and Dong-yeon Seo. 2015. "A Process for the Implementation of New Renewable Energy Systems in a Building by Considering Environmental and Economic Effect" Sustainability 7, no. 9: 12870-12890. https://doi.org/10.3390/su70912870