Model Predictive Control-Based Coordinated Control Algorithm with a Hybrid Energy Storage System to Smooth Wind Power Fluctuations
Abstract
:1. Introduction
2. Fluctuation Mitigation Requirements for Wind Power Integration
2.1. Composition of Wind Power Signals
2.2. Fluctuation Mitigation Requirements
2.2.1. One-Minute Fluctuation Mitigation Requirements
2.2.2. Thirty-Minute Fluctuation Mitigation Requirements
3. MPC-Based Coordination Control Model
3.1. Flow Chart of MPC-Based Coordination and Optimization Control
3.2. Flexible First-Delay-Filter with Variable Time Constant
3.3. Capacity Calculation
3.4. MPC-Based Coordination Control Model
3.4.1. MPC-Based Coordination Control Model for the HESS
3.4.2. MPC-based control model for the LB bank
3.5. Transformation of the FMR Constraints
3.6. Model Solution
3.7. Feasibility and Constraints Handling
3.8. State-of-Charge Feedback Control
3.8.1. State-of-Charge Feedback Control of the UC
3.8.2. State-of-Charge Feedback Control of the LB
4. Simulation and Analysis
4.1. HESS Capacity and Power Configurations
4.2. Comparison of MPCCC and Conventional Algorithms
4.2.1. Maximum Absolute Value of the Energy Storage Power Output
4.2.2. Energy Storage Capacity Consumed
4.2.3. Battery Health Index
4.2.4. Equivalent Full Cycle
4.3. Verification of the Proposed Control Strategy
5. Conclusions
- A novel MPC-based coordinated control strategy consisting of HESS-computing and LB-computing periods is developed. At each time step, we solve a QCP problem using IPOPT in MATLAB. In the HESS-computing periods, the goal is to minimize the cost of HESS in the next prediction horizon, the optimal power output of LB is obtained, as well as the optimal time constant of first-delay filter for obtaining the power output of UC. In the LB-computing period, the optimal time constant in the last HESS-computing period is kept to directly obtain the power output of UC, the goal of this stage is simplified to minimize the cost of LB utilization in the subsequent control horizon. This control strategy effectively mitigates wind power fluctuations in multiple time scales;
- Adopted a flexible FDF with an optimization of the time constant to obtain the reference value of the UC bank, which can take the full advantage of the high power density of the UC bank;
- Allocated the charge/discharge instruction value of the HESS based on frequency distribution by employing the flexible FDF. This improves the lifetime of both storage devices;
- Deployed a relaxation technique when the MPCCC problem is unsolvable. Thus, the FMR is fulfilled with a large probability even in extreme conditions; and
- Presented a novel SOCFB control scheme that effectively restores the SOCs of the HESS to its proper safety range.
Author Contributions
Funding
Conflicts of Interest
References
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Case | F1max (%) | ρ1 | F30max (%) | ρ30 | ||
---|---|---|---|---|---|---|
Case 1 | 4.16 | 57.73 | 0.0279 | 17.43 | 72.83 | 0.1060 |
Case 2 | 2.61 | 65.07 | 0.0216 | 16.79 | 65.07 | 0.0880 |
Case 3 | 2.35 | 65.87 | 0.0183 | 18.12 | 70.18 |
Methods | Power Rating of LB (MW) | Capacity Rating of LB (MWh) | Power Rating of UC (MW) | Capacity Rating of UC (MWh) |
---|---|---|---|---|
FDF | 3.2 | 10 | 1.5 | 0.2 |
Rate limiter | 3.0 | 7 | 1.5 | 0.2 |
Wavelet-based | 2.5 | 5 | 1.5 | 0.2 |
MPCCC | 2.5 | 3 | 1.5 | 0.2 |
Case | Methods | D (e−4) | Expected life (y) | EFC (DOD = 60%) | EFC (DOD = 80%) |
---|---|---|---|---|---|
Case 1 | First-delay-filter | 9.2887 | 2.9495 | 2.7884 | 2.2183 |
Rate limiter | 7.1713 | 3.8204 | 2.1528 | 1.7127 | |
wavelet-based control | 4.2491 | 6.4477 | 1.2756 | 1.0148 | |
MPC-based control | 3.7222 | 7.3606 | 1.1174 | 0.8889 | |
Case 2 | First-delay-filter | 8.7497 | 3.1312 | 2.6266 | 2.0896 |
Rate limiter | 6.8732 | 3.9861 | 2.0633 | 1.6415 | |
wavelet-based control | 3.9616 | 6.9157 | 1.1892 | 0.9461 | |
MPC-based control | 3.6579 | 7.4899 | 1.0981 | 0.8736 | |
Case 3 | First-delay-filter | 11.1701 | 2.4527 | 3.3532 | 2.6677 |
Rate limiter | 9.7787 | 2.8017 | 2.9355 | 2.3354 | |
wavelet-based control | 7.9426 | 3.4494 | 2.3843 | 1.8969 | |
MPC-based control | 6.7711 | 4.0462 | 2.0326 | 1.6172 |
Case | Methods | Maximum Power of LB (MW) | Capacity Consumed of LB (MWh) | Maximum Power of UC (MW) | Capacity Consumed of UC (MWh) | BHI of LB (%) | BHI of UC (%) |
---|---|---|---|---|---|---|---|
Case 1 | First-delay-filter | 2.7266 | 8.9740 | 0.4235 | 0.1401 | 35.14 | 100 |
Rate limiter | 2.2373 | 4.9405 | 0.4235 | 0.1401 | 45.46 | 100 | |
wavelet-based control | 1.9220 | 2.9545 | 0.7741 | 0.1276 | 100 | 99.10 | |
MPC-based control | 2.0476 | 2.2035 | 1.0659 | 0.1501 | 100 | 100 | |
Case 2 | First-delay-filter | 3.0210 | 7.9200 | 0.5012 | 0.1278 | 56.64 | 100 |
Rate limiter | 2.6475 | 4.9956 | 0.5012 | 0.1278 | 100 | 100 | |
wavelet-based control | 2.4580 | 2.9680 | 0.8641 | 0.1200 | 100 | 100 | |
MPC-based control | 2.4479 | 2.6903 | 1.4594 | 0.1500 | 100 | 100 | |
Case 3 | First-delay-filter | 2.5284 | 6.8001 | 0.9771 | 0.1312 | 62.51 | 100 |
Rate limiter | 2.5065 | 5.2008 | 0.9771 | 0.1312 | 98.39 | 100 | |
wavelet-based control | 2.3564 | 4.1451 | 1.2088 | 0.1226 | 100 | 100 | |
MPC-based control | 2.3308 | 3.7573 | 1.4899 | 0.1541 | 100 | 100 |
Methods | Maximum Power of LB(MW) | Capacity Consumed of LB (MWh) | Maximum Power of UC (MW) | Capacity Consumed of UC (MWh) | BHI of LB (%) | BHI of UC (%) |
---|---|---|---|---|---|---|
MPCCC-BA (without the state-of-charge feedback) | 2.0644 | 2.2555 | 1.1594 | 0.1552 | 43.73 | 80.62 |
MPCCC (with the state-of-charge feedback) | 2.0522 | 2.3225 | 1.0784 | 0.1523 | 80.37 | 92.95 |
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Hong, H.; Jiang, Q. Model Predictive Control-Based Coordinated Control Algorithm with a Hybrid Energy Storage System to Smooth Wind Power Fluctuations. Energies 2019, 12, 4591. https://doi.org/10.3390/en12234591
Hong H, Jiang Q. Model Predictive Control-Based Coordinated Control Algorithm with a Hybrid Energy Storage System to Smooth Wind Power Fluctuations. Energies. 2019; 12(23):4591. https://doi.org/10.3390/en12234591
Chicago/Turabian StyleHong, Haisheng, and Quanyuan Jiang. 2019. "Model Predictive Control-Based Coordinated Control Algorithm with a Hybrid Energy Storage System to Smooth Wind Power Fluctuations" Energies 12, no. 23: 4591. https://doi.org/10.3390/en12234591
APA StyleHong, H., & Jiang, Q. (2019). Model Predictive Control-Based Coordinated Control Algorithm with a Hybrid Energy Storage System to Smooth Wind Power Fluctuations. Energies, 12(23), 4591. https://doi.org/10.3390/en12234591