Robust MILP Optimization of Renewable Power Plants: The Role of BESS Sizing in Uncertainty Mitigation
Abstract
1. Introduction
- How the uncertainty of load and price can be modeled and measured in an HRES?
- How does it impact the economics of an industrial case study?
- Knowing that a BESS is capable of increasing the economics of a plant [35], how does it affect the uncertainty of other input data?
- How should BESS be sized under uncertainty?
2. Methodology
2.1. Deterministic Mathematical Formulation
2.2. Robust Mathematical Formulation
3. Study Case and Methods
3.1. Study Case
3.2. Methods
4. Results and Discussion
4.1. Deterministic Optimization Results
4.2. Uncertainty Sensitivity Analysis
4.3. Uncertainty and EPR Sensitivity Analysis
4.4. Results Comparison with the Literature
5. Conclusions and Future Developments
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
| AARO | Affinely Adjustable Robust Optimization |
| ARO | Adaptive Robust Optimization |
| BESS | Battery Energy Storage System |
| ENS | Energy Not Served |
| ES | Energy Served |
| EPR | Energy-to-Power Ratio |
| HRES | Hybrid Renewable Energy System |
| KPI | Key Parameter Index |
| LOLP | Loss Of Load Probability |
| MILP | Mixed-Integer Linear Programming |
| NPC | Net Present Cost |
| NPV | Net Present Value |
| PV | Photovoltaic Panels |
| PZ | Zonal Price |
| RES | Renewable Energy Sources |
| RO | Robust Optimization |
| SOC | State Of Charge |
| WT | Wind Turbine |
Nomenclature
| Sets: | |
| /t | Set and index for time steps |
| /y | Set and index for years |
| Design Variables: | |
| Number of WT | |
| Capacity of PV [MW] | |
| Capacity of BESS [MWh] | |
| Control Variables: | |
| Combined power WT e PV [MW] | |
| Charging power [MW] | |
| Discharging power [MW] | |
| Power sell to the grid [MW] | |
| Power buy from the grid [MW] | |
| Over-generation curtailed power [MW] | |
| State of charge [MWh] | |
| Binary for BESS | |
| Binary for grid sell | |
| Binary for grid buy | |
| Dual variable load 1 [MW] | |
| Dual variable load 2 [MW] | |
| Dual variable price 1 [€] | |
| Dual variable 2 [€] | |
| Parameters: | |
| Production of 1 WT [MW] | |
| Production of 1 MW of PV [MW] | |
| Load demand [MW] | |
| Zonal price [€/MWh] | |
| CAPEX of WT [€/MW] | |
| CAPEX of PV [€/MW] | |
| CAPEX of BESS [€/MWh] | |
| OPEX of WT [€/MW] | |
| OPEX of PV [€/MW] | |
| r | Discount rate [%] |
| Maximum power at the grid [MW] | |
| Maximum curtailment allowed [%] | |
| Efficiency of the BESS [%] | |
| Energy to power ratio of BESS [h] | |
| Maximum number of WT | |
| Maximum capacity of PV [MW] | |
| Maximum capacity of BESS [MWh] | |
| Max deviation of load demand [MW] | |
| Max deviation of PZ [€/MWh] | |
| Uncertainty budget of load [%] | |
| Uncertainty budget of price [h] |
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| Parameter | Unit | Value | Source |
|---|---|---|---|
| years | - | 25 | assumption |
| €/MW | 1,325,000 | [45] | |
| €/MW | 700,000 | [46] | |
| €/MWh | [47] | ||
| €/MW | 14,575 | [45] | |
| €/MW | 6100 | [46] | |
| €/MWh | 2.5% of CAPEX | [47] | |
| €/MWh | 200 | assumption | |
| r | % | 5 | assumption |
| MW | 150 | assumption | |
| % | 3 | assumption | |
| % | 95 | assumption | |
| h | 3 or 4 | computed |
| Scenario | WT | PV | BESS | BESS to Grid |
|---|---|---|---|---|
| 1 | ✓ | |||
| 2 | ✓ | |||
| 3 | ✓ | ✓ | ||
| 4 | ✓ | ✓ | ✓ | |
| 5 | ✓ | ✓ | ✓ | ✓ |
| Scenario | WT [MW] | PV [MW] | BESS [MWh] | NPC [M€] | ENS [%] |
|---|---|---|---|---|---|
| 1 | 237.5 | - | - | 621.61 | 36.69 |
| 2 | - | 284.64 | - | 782.61 | 56.23 |
| 3 | 192.5 | 170.32 | - | 397.38 | 22.29 |
| 4 | 205 | 210.15 | 193.75 | 320.57 | 8.3 |
| 5 | 225 | 222.43 | 269.98 | 296.76 | 5.49 |
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Dieci, T.; Caminiti, C.M.; Spiller, M.; Merlo, M. Robust MILP Optimization of Renewable Power Plants: The Role of BESS Sizing in Uncertainty Mitigation. Energies 2026, 19, 2467. https://doi.org/10.3390/en19102467
Dieci T, Caminiti CM, Spiller M, Merlo M. Robust MILP Optimization of Renewable Power Plants: The Role of BESS Sizing in Uncertainty Mitigation. Energies. 2026; 19(10):2467. https://doi.org/10.3390/en19102467
Chicago/Turabian StyleDieci, Tommaso, Corrado Maria Caminiti, Matteo Spiller, and Marco Merlo. 2026. "Robust MILP Optimization of Renewable Power Plants: The Role of BESS Sizing in Uncertainty Mitigation" Energies 19, no. 10: 2467. https://doi.org/10.3390/en19102467
APA StyleDieci, T., Caminiti, C. M., Spiller, M., & Merlo, M. (2026). Robust MILP Optimization of Renewable Power Plants: The Role of BESS Sizing in Uncertainty Mitigation. Energies, 19(10), 2467. https://doi.org/10.3390/en19102467

