An Optimization Framework for Investment Evaluation of Complex Renewable Energy Systems
Abstract
:1. Introduction and Motivation
Contribution and Paper Outline
2. Literature Review
3. Problem Definition
3.1. Problem Notation: Parameters and Variables
3.1.1. Sets
- set of candidate locations where generation plants can be located.
- set of candidate locations where substations or line junctures can be located.
- set of selling points, i.e., sub-stations of the existing power grid where energy is associated with a spot price.
- set of potential lines connecting generation locations from with locations in (i.e., ).
- set of lines connecting locations from with both, other elements from and selling points from O (i.e., ).
3.1.2. Generation Parameters
- maximum generation capacity to be installed, at a single location (MWp).
- available radiation for a given generation location and a given hour t (MW/m).
- nominal power of a PV module under standard test conditions (STC) (MWp/m) of a photovoltaic (PV) module with a surface of a (m)). Hence, a PV generation plant will be comprised by a group (of say Q) of these modules, and its capacity will be given by (MWp).
- performance of the inverter that is planned to be used in the installed PV plants.
- loss factor of the PV modules due to the presence of dust.
- fixed cost of installing a PV power plant (USD).
- variable cost of installing a PV power plant (USD/MW).
- variable cost of installing a sub-station (USD/MW).
- variable cost of ESS installation (USD/MWh).
- sale price in node o at period t (USD/MW).
3.1.3. Transmission Parameters
- transmission loss factor associated with direct current (DC).
- transmission loss factor associated with alternate current (AC).
- maximum extension of a single line segment due regulations (km).
- distance between point i and point j (km).
- loss factor associated with power transmission.
- fixed installation cost of installing one kilometer of transmission line (USD/km).
- variable installation cost of installing, per MW, one kilometer of transmission line (USD/MW/km).
3.1.4. Energy Storage Parameters
- ESS’ charge efficiency.
- ESS’ discharge efficiency.
- minimum level of the state of charge that must be preserved in the ESS.
- maximum ESS’ charge power flow (MW).
- maximum ESS’ discharge power flow (MW).
- maximum storage capacity (MWh).
- variable cost of ESS installation (USD/MWh).
3.1.5. Problem Variables
- binary variable, so that if a generator (i.e., a PV plant) is installed at location , and otherwise.
- installed fraction of of installed generator at a given ().
- installed nominal power (PV) at a given . ().
- generated power from the generator located at in period t.
- dispatched power from the generator located at in period t.
- spilled power in the generator located at in period t.
- binary variable so that if a substation is installed at location , and otherwise.
- capacity of installed substation, at a given .
- binary variable, so that if a line between i and j is built (), and otherwise.
- binary variable, so that if a line between j and k is built (), and otherwise.
- capacity of installed transmission line, between i and j ().
- capacity of installed transmission line, between j and k is built ().
- power flow on line in period t.
- non-transmitted power through the line in period t.
- power losses at line in period t.
- power flow on in period t.
- non-transmitted power through the line in period t.
- power losses on in period t.
- capacity of the ESS installed at .
- installed portion of of installed ESS at ().
- charge status, in period t, of the ESS located at i.
- charging flow, in period t, at the ESS located at i.
- discharging flow, in period t, at the ESS located at i.
- binary variable, so that , if the ESS in i is discharged in period t, and , otherwise.
3.2. An MILP for the GTSELSP
3.2.1. Generation
3.2.2. Transmission Topology
3.2.3. Energy Storage Systems
3.2.4. Power Balance
3.2.5. Transmission and Substation Capacities
3.2.6. Losses and Boundary Conditions
3.2.7. The GTSELSP
4. Results and Discussion
4.1. Case Study: Chilean Central Region
4.2. Estimation and Model Parameters
4.2.1. Solar Radiation Potential
4.2.2. Generation and Transmission Technological Parameters
4.2.3. Generation and Transmission Construction Costs
4.2.4. Energy Storage Parameters
4.2.5. Modeling and Estimation of Spot Prices
4.3. Discussion and Results Analysis
4.3.1. Experimental Setting
4.3.2. Time Resolution
- ‘12 × 1’: One year is characterized by 12 days, so that each day encodes one month. Since every day is comprised of 24 h, this setting yields .
- ‘4 × 7’: One year is characterized by four weeks, so that each week encodes three months. In this case, we have .
- ‘6 × 7’: One year is characterized by six weeks, so that each week encodes two months. In this case, we have .
- ‘12 × 7’: One year is characterized by 12 weeks, so that each week encodes one month. In this case, we have .
4.3.3. Spot Price Scenarios
- The solution obtained for P25 (with a total investment of 4702 MMUSD) is comprised by 20 generation points (orange and blue circles), where an ESS facility is installed in only one of them (blue circle); these generation points inject the generated power through nine existing substations (red squares) and require one additional intermediate substation (orange square).
- The solution obtained for P50 (with a total investment of 5085 MMUSD) is comprised by 20 generation points, where ESS facilities are installed in 14 of them; these generation points inject the generated power through six existing substations and require five additional intermediate substations, and ESS facilities are installed in four of them (blue squares).
- The solution obtained for P75 (with a total investment of 5152 MMUSD) is comprised by 20 generation points, where ESS facilities are installed in 14 of them; these generation points inject the generated power through six existing substations and require eight additional intermediate substations, and ESS facilities are installed in four of them.
4.3.4. Storage Technology
4.3.5. Sensitivity Analysis on Storage Parameters
5. Conclusions and Future Work
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Reference | Storage | Generation | Transmission | ||||||
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Capacity | Location | Others | Capacity | Location | Others | Layout | Capacity | Flow | |
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[13] | ✓ | Op. and Tech. | |||||||
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[15] | ✓ | Tech. | |||||||
[16] | ✓ | ✓ | ✓ | ✓ | |||||
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our work | ✓ | ✓ | Op. and Tech. | ✓ | ✓ | Connect. | ✓ | ✓ | ✓ |
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Share and Cite
Olave-Rojas, D.; Álvarez-Miranda, E.; Rodríguez, A.; Tenreiro, C. An Optimization Framework for Investment Evaluation of Complex Renewable Energy Systems. Energies 2017, 10, 1062. https://doi.org/10.3390/en10071062
Olave-Rojas D, Álvarez-Miranda E, Rodríguez A, Tenreiro C. An Optimization Framework for Investment Evaluation of Complex Renewable Energy Systems. Energies. 2017; 10(7):1062. https://doi.org/10.3390/en10071062
Chicago/Turabian StyleOlave-Rojas, David, Eduardo Álvarez-Miranda, Alejandro Rodríguez, and Claudio Tenreiro. 2017. "An Optimization Framework for Investment Evaluation of Complex Renewable Energy Systems" Energies 10, no. 7: 1062. https://doi.org/10.3390/en10071062
APA StyleOlave-Rojas, D., Álvarez-Miranda, E., Rodríguez, A., & Tenreiro, C. (2017). An Optimization Framework for Investment Evaluation of Complex Renewable Energy Systems. Energies, 10(7), 1062. https://doi.org/10.3390/en10071062