Distributed Energy IoT-Based Real-Time Virtual Energy Prosumer Business Model for Distributed Power Resource
Abstract
:1. Introduction
1.1. Current Energy Prosumer Problems
- High ROI (first 10 years based on government subsidies): Renewable energy (solar power) facilities and ESS construction have a high ROI because the profits are not large compared to the high installation costs. Thus, they rely on government subsidies.
- Difficulty in market formation: The production price of new and renewable energy is higher than that of the actual grid, and it is difficult to accurately set the sales price. Therefore, the actual market between sellers and consumers is not formed.
1.2. Solutions
- Real-time energy trading: A virtual power bank (VPB)-based real-time virtual prosumer management system uses an existing power grid. It is composed of the virtual infrastructure of the EG (VPB), which does not include an ESS, and does not require a large cost to configure the ESS and its own energy trading grid. Thus, a large profit can be obtained at a low price.
- Flexible cost setting: The prosumer market has a structure that allows both sellers and buyers to obtain profits by setting flexible sales/purchase prices for each situation and to provide the maximum benefit between electricity sellers and consumers rather than setting energy costs based on fixed electricity rates.
2. Related Works
2.1. Analysis of the Existing References
2.2. Novel Points of Proposed System from Existing References
- (1)
- Data-driven Virtual Energy Management: Virtual energy trading is possible only through energy data analysis based on distributed energy IoT using a traditional grid without configuring an ESS-based independent local grid in the community space (apartment complex, etc.).
- (2)
- Real-time energy demand management: Virtual energy trading is possible because of energy status monitoring and real-time energy offset by real-time energy data.
- (3)
- Cost-effective energy trading system: It is possible to establish a cost-effective energy system by not installing the ESS and additional local grid.
- (4)
- Energy cost saving: Prosumers sell higher than the existing solar energy transaction costs, and customers benefit from reducing electricity bills by mitigating the progressive electricity tax at home.
3. System Overview
- Power trading broker: VPP platform server for analysis of energy trading data.
- Virtual power bank: Virtual power storage system for energy trading.
- Distributed energy IoT: IoT based distributed sensor network system.
- Renewable energy source: 325 W solar panel.
- Building and household information: Building management information, building area, scope and gross area, etc.
- Building energy demand and supply status data: Electric energy, etc.
- Real-time generation information of renewable energy sources: Renewable energy sources, capacity, real-time generation, etc.
- Renewable energy surplus energy transaction information, electricity sales volume/profit information
3.1. System Architecture
- Category 1–Net metering (NM) with electric power corporation: The energy prosumer business through NM with a power company is an approach in which the power company purchases the surplus power produced by the consumer through solar power generation and lowers electricity bills. The NM with the power company is performed to reduce the electric charge to be paid by the consumer by calculating the electric charge for the pure electricity quantity obtained by deducting the surplus electric power from the electric power received by the electric power company [28,29,30].
- Category 2—Energy trading of surplus power in local grid (LG): In terms of the sale of surplus power produced by a prosumer, it is the same as the NM of the power company. However, by selling the surplus power to the consumer, sales revenue is obtained separately from the electricity bill. In this case, PT plays the role of a medium to buy and sell surplus power. If the transaction price for surplus power is set rather than the physical flow of surplus power, the focus is on the transaction settlement for the sales profit of the prosumer and payment for the purchase by a net consumer [15,17].
- Category 3—Power trading between prosumers over the Internet: The power trading platform built through the Internet makes it easier to sell surplus power produced by energy prosumers directly between individuals. The amount of surplus electricity and transaction price are set directly on the Internet without going through an intermediary, and the transaction can be concluded if there is a customer. Even in this case, if a transaction is applied, mutual benefits can be obtained through settlement between the parties dealing in the transaction. That is, a transaction price that is lower than the electricity rate and higher than the solar power generation unit price is generated. The prosumer has a profit even after paying the fee, and the customer can make a transaction if the purchase price is lower than the electricity rate even after the fee is paid. Power trading between individuals through the Internet power trading platform is in its early stages, and the number of countries using it through the experimental stage is gradually increasing. It is expected that power trading in this manner will increase in the future [31].
- Category 4—Energy trading of surplus power using a distributed resource broker market: For the sale of surplus power by consumers using the distributed resource brokerage market, the brokerage company collects small-scale distributed resources, trades them in the power wholesale market, and issues a new renewable energy supply certificate. It receives sales profit, which is a business method that consumers share with brokers. In this project, there are variations in profits due to variation in the wholesale market price of electric power and the transaction price of the renewable energy supply certificate. Therefore, it is likely to be selected if the benefits are greater compared to the expected returns of different business model methods [32,33,34].
- PT (Power Trading): Selling surplus power remaining after self-exhaustion among energy produced by renewable energy to a second party
- EG (Existing Grid): Existing grid of electric power institution; KEPCO (Korea Electric Power Corporation)
- LG (Local Grid): Independent grid within the community for energy trading
- PTB (Power Trade Broker): A power broker for energy trading
- (Prosumer): Smallscale power seller
- (Customer): Small-scale personal power buyer
- NM (Net Metering): Sale of offset surplus power to the grid
- VPB (Virtual Power Bank): Store power using EG without building an additional independent grid or ESS within the community for energy trading.
- VG (Virtual Grid): A virtual connection chain made virtually based on data for energy trading, not a real grid.
- Virtual Power Plant (VPP) Platform: Energy data-based virtualization that uses energy data based on distributed energy IoT, monitors the storage of surplus power and transaction status between VPB and prosumer, and mediates virtually for transaction based on this power trading platform.
- : The cost when NM (KRW)
- (NM benefit): Prosumer’s NM benefit (KRW)
- (Power trading benefit): Prosumer’s benefit by power trading (KRW)
3.2. System Configuration
3.3. System Flow
4. Business Model
- Prosumer N (PN): Households that sell surplus power with solar panels
- Consumer n (Cn): Households that want to purchase power savings to reduce the progressive tax due to high power consumption
- Rn (Number of solar panels): Number of solar panels installed in the prosumer
- ROI (Return on Investment): Payback period for prosumer with solar power facilities (Year)
4.1. Scenario 1: Small-Scale Energy Trading Model in an Apartment Complex
- It is impossible to install a large-capacity PV in the apartment complex (Figure 7).
- There is no significant benefit to building a local grid in apartment complexes.
- It is dangerous to install ESS in an apartment complex, and ROI cannot be satisfied because it handles a small amount of PV even if it relies on government subsidies.
- Power loss is expected in the apartment complex during power transactions because the local grid is distant from the power trading company (intermediary).
- Therefore, to trade energy between prosumers in an apartment complex, a VPB-based real-time virtual prosumer management system using existing power grids is required.
4.2. Scenario 2: Surplus Electricity Trading Model Caused by Public Institution Closure Due to Pandemic
- Most PVs are installed in buildings, such as public institutions. The energy consumption of public institutions is decreasing due to the increase in the number of telecommuters, and the energy consumption of apartment complexes is increasing.
- Most of the power produced at workplaces is lost because PV produces the most energy from 9:00 to 18:00 h during the daytime.
- The increase in telecommuting also increases the electricity demand for apartments between 9:00 and 18:00 h.
- For this, a plan is needed to mitigate the progressive tax through energy trading.
- VPB-based energy trading is required because it incurs a high cost to build a local grid in an apartment complex.
5. Simulation
- Outgoing households: The household is empty as the entire family is on vacation or overseas business trip.
- Households who are working from home: Family members are unable to go to work owing to a pandemic and are working from home.
- Working households: The entire family is out in the afternoon because of work.
- Nonworking households: Family members stay at home all day owing to holidays and are temporarily not working.
5.1. Typical Home Devices Used in One Household
- Power prosumer: Prosumer 1 (outgoing households): Households that have solar panels installed and have an empty house due to vacation or overseas business trips and generate excess power.
- Electricity customer 1: Customer 1 (households working from home): Households that are not able to go to work due to a pandemic and are working at home. Households are affected by a progressive tax as electricity use increases during the afternoon (working time: 09:00~18:00 h).
- Power purchaser 2: Customer 2 (nonworking households): Households affected by progressive tax due to high power consumption during the afternoon hours (9–18:00) because they do not work and stay at home all day.
5.2. Actual Energy Consumption per Household
5.3. Prosumer’s Optimal Number of Solar Panels for Each Customer
5.4. Benefit and ROI Analysis for Optimal Prosumer Trading
- (NM benefit): Prosumer’s NM benefit (KRW)
- (Power trading benefit): Prosumer’s benefit by power trading (KRW)
- C(x): Electricity charge paid to electric power institution for the power consumption x (KRW)
- : Total amount consumed by the prosumer (kWh)
- : Power received from electric power institution (kWh)
- : The amount of electricity consumed by the prosumer (kWh)
- : Total power used by customer (kWh)
- Z: Power purchased by customer (kWh)
- γ (Transaction ratio index): A coefficient to shorten the payback period of solar installation costs by multiplying the selling price of a certain ratio or higher to a prosumer who has installed solar panels rather than a consumer who does not have solar panels installed
- ε (Transaction profit index): A coefficient for the difference in profit between prosumer and customer
5.5. Guidelines for Small-Scale Power Trading
- The prosumer can sell power only when surplus power is produced by renewable energy.
- The prosumer obtains the maximum profit from self-consumption rather than selling it when the electricity produced by renewable energy is less than the consumed electricity.
- The prosumer can sell the surplus power when the power produced by renewable energy exceeds the consumed power.
- If the prosumer trades based on this proposed model when the electricity produced by renewable energy is more than the consumed electricity, higher profits can be achieved in small-scale electricity transactions than NM for the surplus electricity to EG.
- When the prosumer is not present, surplus power in the residence can be sold.
- The selling price should have a higher sales profit when sold to other customers (than the sales profit at NM with electric power institution), and the purchase price should be less than the electricity bill amount (including progressive tax) reduced by the customer’s electricity transaction. (Equation (11)).
- ESS is practically unnecessary for small power transactions if real-time transactions are possible because there is a capacity limit when installing an ESS.
6. Conclusions and Future Perspectives
- Data-driven virtual energy management: Virtual energy trading is possible only through energy data analysis based on distributed energy IoT using a traditional grid without configuring an ESS-based independent local grid in the community space (apartment complex, etc.).
- Real-time energy demand management: Virtual energy trading is possible because of energy status monitoring and real-time energy offset by real-time energy data.
- Cost-effective energy trading system: It is possible to establish a cost-effective energy system by not installing the ESS and additional local grid.
- Energy cost saving: Prosumers sell higher than the existing solar energy transaction costs, and customers benefit from reducing electricity bills by mitigating the progressive electricity tax at home.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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1 | “A methodology to find influential prosumers in prosumer community groups” | 2013 | Find influential prosumers by multiple assess system. | Cost-effective energy trading system |
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Classification | Power Consumption | Total Hours Used | Total | |
---|---|---|---|---|
Always Use (W) | Partial Use (W) | Use Time (H) | ||
Rice cooker | - | 122/366 (Keep warm) | 0.5/5 | 1891 |
Highlight | - | 5300 | 0.5 | 2650 |
Washing machine | - | 1840 | 1 | 1840 |
Laundry dryer | - | 1950 | 1 | 1950 |
Computer | - | 50 | 6 | 300 |
Light | - | 100 | 6 | 600 |
Coffee machine | - | 800 | 0.2 | 160 |
Oven | - | 1750 | 0.2 | 350 |
Microwave | - | 1700 | 0.2 | 340 |
Massage chair | - | 200 | 0.5 | 100 |
Home theater | - | 90 | 0.5 | 45 |
Cleaner | - | 15 | 0.1 | 1.5 |
Water purifier | 20 | - | 24 | 480 |
Refrigerator | 23 | - | 24 | 552 |
Router | 15 | - | 24 | 360 |
Bidet | 50 | 1050 | 0 | |
Wall pad | 9.5 | 20 | 24 | 228 |
Classification | Solar Efficiency | Amount | Production Power (Day) | Production Power (Month) | Surplus Power | Sales and Purchases | Remaining after Sale | NM | Total Power Consumption | Electricity Bill | Profit | Transaction Ratio Index (γ) | Transaction Amount | Commission | Actual transaction Amount | Profit from Transactions | Solar Panel Installation | Profit (Year) | ROI |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Prosumer | 0.325 | 3 | 2.944 | 88.305 | 39.170 | 37.721 | 1.448 | 4130 | - | - | - | 1.3 | 5381.68 | 269.08 | 5112.5 | 5112.593 | 600,000 | 61,351.11 | 9.78 |
Customer 1 | - | - | - | - | - | 37.721 | - | - | 291.979 | 42,680 | 8120 | - | - | - | 5112.5 | 3007.407 | - | - | - |
Classification | Solar Efficiency | Amount | Production Power (Day) | Production Power (Month) | Surplus Power | Sales and Purchases | Remaining after Sale | NM | Total Power Consumption | Electricity Bill | Profit | Transaction Ratio Index (γ) | Transaction Amount | Commission | Actual Transaction Amount | Profit from Transactions | Solar Panel Installation | Profit (Year) | ROI |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Prosumer | 0.325 | 5 | 4.906 | 147.176 | 92.745 | 91.931 | 0.814 | 10,990 | - | - | - | 1.19 | 13,169.2 | 658.46 | 12,510 | 12,510.7 | 1,000,000 | 150,129 | 6.661 |
Customer 1 | - | - | - | - | - | 44.465 | - | - | 285.234 | 41,190 | 9610 | - | - | - | 6051.2 | 3558.76 | - | - | - |
Customer 2 | - | - | - | - | - | 47.465 | - | - | 312.234 | 46,950 | 10,260 | - | - | - | 6459.5 | 3800.5 | - | - | - |
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Park, S.; Cho, K.; Kim, S.; Yoon, G.; Choi, M.-I.; Park, S.; Park, S. Distributed Energy IoT-Based Real-Time Virtual Energy Prosumer Business Model for Distributed Power Resource. Sensors 2021, 21, 4533. https://doi.org/10.3390/s21134533
Park S, Cho K, Kim S, Yoon G, Choi M-I, Park S, Park S. Distributed Energy IoT-Based Real-Time Virtual Energy Prosumer Business Model for Distributed Power Resource. Sensors. 2021; 21(13):4533. https://doi.org/10.3390/s21134533
Chicago/Turabian StylePark, Sanguk, Keonhee Cho, Seunghwan Kim, Guwon Yoon, Myeong-In Choi, Sangmin Park, and Sehyun Park. 2021. "Distributed Energy IoT-Based Real-Time Virtual Energy Prosumer Business Model for Distributed Power Resource" Sensors 21, no. 13: 4533. https://doi.org/10.3390/s21134533
APA StylePark, S., Cho, K., Kim, S., Yoon, G., Choi, M. -I., Park, S., & Park, S. (2021). Distributed Energy IoT-Based Real-Time Virtual Energy Prosumer Business Model for Distributed Power Resource. Sensors, 21(13), 4533. https://doi.org/10.3390/s21134533