A Hybrid Energy Storage System Integrated with a Wave Energy Converter: Data-Driven Stochastic Power Management for Output Power Smoothing
Abstract
:1. Introduction
2. Methodology
2.1. Statistical Analysis on Input Data
- Site 1 (France): 143 sea states;
- Site 2 (England): 144 sea states;
- Site 3 (Norway): 132 sea states.
- The prime mover, which absorbs wave power and transfers forces and motions to the reaction and power take-off subsystems through suitable connections.
- The power take-off (PTO) subsystem converting the wave energy extracted by the prime mover into electricity.
- The reaction subsystem that anchors the WEC to the seabed, providing a reaction point for the PTO and/or support for the hydrodynamic subsystem(s).
- The control and monitoring subsystem, dedicated to the WEC’s control and management. It is composed of control software, sensors, and devices for data transferring.
- Day 1, the day with the maximum power bandwidth (i.e., defined as the difference between the maximum and minimum power value over the day).
- Day 2, the day with the maximum mean power.
- Day 3, the day with the maximum bandwidth-to-mean-power ratio (i.e., the difference between the maximum bandwidth as defined above and the mean power over the day).
- Day 4, the day with the minimum bandwidth-to-mean-power ratio.
- Day 5, the day with the maximum mean power ramp.
2.2. Stochastic Power Management Strategy: Theory and Implementation
- Smooth the grid power profile by means of the ratio between the power delivered to the grid at timestep t and the power delivered at the previous instant (t − 1), as described by (8).
- Smooth the Li-ion battery-managed power profile by means of the ratio between the battery power at timestep t and the one at the previous instant (t − 1), as expressed by (9).
2.3. Dynamic Modeling of the System
- -
- The instantaneous daily power profile generated by the WEC, used as the input for computing the optimal power shares in the power management section.
- -
- The power management strategy, based on the SPSA algorithm, which instantaneously controls the power shares among the components and the grid, taking into account the power ramp values at the previous step and the HESS technical features and states of charge.
- -
- The HESS module composed of two subsystems related to the Li-ion battery pack and supercapacitor pack, respectively. The battery and supercapacitor implementation in the model are described in the following paragraphs.
- -
- The grid.
- -
- Li-Ion Battery
- -
- Supercapacitor
- -
- The SC state of charge current value (SOCcap), obtained as the ratio between the integral of the current isc and the charge nominal value (Qnom).
- -
- The actual instantaneous power managed by the SC.
2.4. Sizing Procedure of the Hybrid Energy Storage System
- With respect to the fluctuation at the WEC terminals, an average instantaneous percentage reduction in the power rate sent to the grid of at least −70% among all the considered days for the specific site, as expressed by Equation (23):
- With respect to the SC’s absence, an average instantaneous percentage reduction in the power ramp managed by the battery was targeted thanks to the SC smoothing effect. Specifically, the power ramp managed by the SC was fixed to be equal to at least 25% of the total power ramp managed by the HESS among all the considered days for the specific site, as expressed by Equation (24):
3. Results and Discussion
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Site 1 | Site 2 | Site 3 | ||||
---|---|---|---|---|---|---|
μ | σ | μ | σ | μ | σ | |
Bandwidth (kW) | 399 | 5 | 397 | 10 | 400 | 0.5 |
Maximum bandwidth-to-mean-power ratio (-) | 13.2 | 1.8 | 18 | 2.7 | 12.6 | 2.2 |
μ | min/max | μ | min/max | μ | min/max | |
Power ramp (kW/s) | 2.8 | 0–7.5 | 2.1 | 0–6.3 | 3 | 0–8 |
Power (kW) | 31 | 0–81 | 22 | 0–66 | 32 | 0–86 |
SC Equivalent Parameters | |
---|---|
2.33 mΩ | |
380 F | |
262 F V−1 | |
0.8126 Ω | |
117 F | |
2.7 V | |
2.85 V | |
650 F | |
1 kW | |
Cell weight | 0.16 kg |
Site 1–Site 2–Site 3 | |||
---|---|---|---|
Total Cell Number | Power [kw] | Capacity [kWh] | |
Supercapacitor | 60 parallel | 65.3 | 0.026 |
Li-ion battery | 100 series | 72 | 24 |
PRbatt (W/s) | PRsc (W/s) | PRWEC (W/s) | PRgrid (W/s) | |
---|---|---|---|---|
Day 1 | 1788 | 640 | 2487 | 739 |
Day 2 | 1941 | 681 | 2732 | 840 |
Day 3 | 1022 | 378 | 1404 | 345 |
Day 4 | 1338 | 476 | 1839 | 480 |
Day 5 | 1941 | 681 | 2732 | 840 |
PRbatt (W/s) | PRsc (W/s) | PRWEC (W/s) | PRgrid (W/s) | |
---|---|---|---|---|
Day 1 | 1493 | 546 | 2104 | 573 |
Day 2 | 1650 | 590 | 2314 | 609 |
Day 3 | 835 | 320 | 1153 | 267 |
Day 4 | 1280 | 468 | 1767 | 439 |
Day 5 | 1650 | 590 | 2314 | 609 |
PRbatt (W/s) | PRsc (W/s) | PRWEC (W/s) | PRgrid (W/s) | |
---|---|---|---|---|
Day 1 | 1640 | 594 | 2278 | 678 |
Day 2 | 2300 | 818 | 3292 | 1063 |
Day 3 | 1048 | 391 | 1451 | 337 |
Day 4 | 1633 | 592 | 2256 | 642 |
Day 5 | 2300 | 818 | 3292 | 1063 |
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Pelosi, D.; Gallorini, F.; Alessandri, G.; Barelli, L. A Hybrid Energy Storage System Integrated with a Wave Energy Converter: Data-Driven Stochastic Power Management for Output Power Smoothing. Energies 2024, 17, 1167. https://doi.org/10.3390/en17051167
Pelosi D, Gallorini F, Alessandri G, Barelli L. A Hybrid Energy Storage System Integrated with a Wave Energy Converter: Data-Driven Stochastic Power Management for Output Power Smoothing. Energies. 2024; 17(5):1167. https://doi.org/10.3390/en17051167
Chicago/Turabian StylePelosi, Dario, Federico Gallorini, Giacomo Alessandri, and Linda Barelli. 2024. "A Hybrid Energy Storage System Integrated with a Wave Energy Converter: Data-Driven Stochastic Power Management for Output Power Smoothing" Energies 17, no. 5: 1167. https://doi.org/10.3390/en17051167
APA StylePelosi, D., Gallorini, F., Alessandri, G., & Barelli, L. (2024). A Hybrid Energy Storage System Integrated with a Wave Energy Converter: Data-Driven Stochastic Power Management for Output Power Smoothing. Energies, 17(5), 1167. https://doi.org/10.3390/en17051167