Robust Predictive Current Control of PMSG Wind Turbines with Sensor Noise Suppression
Abstract
:1. Introduction
- Ultralocal model-based model-free predictive control of PMSGs is proposed using the hybrid parallel cascade extended state observer (PCESO). The PCESO has stronger parameter robustness than conventional linear ESO and can more effectively suppress measurement noise.
- A PCESO is applied to improve the disturbance rejection and measurement noise suppression performance of a three-level NPC converter-driven PMSG through an MFPCC-PCESO framework. By observing the stator and grid current, predicted values of these states are obtained to ensure the robust control performance.
- The effectiveness of the proposed method is verified by several scenario tests on a real-time hardware-in-the-loop laboratory test bench.
2. System and Modeling
3. Classical Predictive Control and Ultralocal Framework
3.1. Classical Sequential Optimization Hybrid MPC Framework
- (1)
- Stator current. The PMSG needs to adjust its output power within the rated wind speed range in real-time so that the speed and torque follow the reference. Current is obtained through the speed PI outer loop, where is proportional to the torque. By controlling to follow , the speed and torque can be controlled. Set to 0 to improve current efficiency. ESO is used to obtain the observed values of the stator current , and F at the next moment instead of (5). The cost function of the stator current is shown in (8).
- (2)
- Switching frequency of the machine-side converter. To reduce switching losses and meet the limits of heat dissipation conditions and system efficiency, the converter must operate at a low switching frequency of 1–3 kHz. The cost function is as follows:
- (1)
- Grid current. The PMSG requires fast and accurate power and current tracking to reduce DC bus voltage fluctuations caused by wind speed changes. By obtaining through the PI outer loop of the DC bus voltage, controlling to follow can maintain a constant . Set to 0 to increase the power factor. The ESO is used to obtain the observed values of the grid current , and F at the next moment instead of (6). Then, the cost function of the grid-side current is as follows:
- (2)
- Neutral-point voltage balance. Under normal working conditions, the voltage of and should be equal, the maximum voltage of the upper and lower bridge arms is and the output voltage is the sinusoidal AC voltage. If the neutral point voltage shifts, the maximum and minimum values of the output voltage are not equal. Therefore, it is necessary to ensure that the voltage between and is equal. The cost function of the neutral point voltage difference is shown in (2).
- (3)
- Switching frequency of the grid-side converter. The importance of controlling the grid-side switching frequency is the same as the machine side. Therefore, the cost function of the grid-side switching frequency is as follows:
3.2. Classical Linear ESO
4. Proposed Hybrid MFPCC-PCESO Framework
Proposed MFPCC-PCESO Framework
5. Validation and Discussion
5.1. Performance under Nominal Conditions
5.2. Robustness to Parameter Mismatch and Measurement Noise
5.3. Robustness to Parameter Mismatch and Measurement Noise
5.4. Robustness to Parameter Mismatch and Measurement Noise
5.5. Overall Performance Evaluation
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Parameter | Value | Parameter | Value |
---|---|---|---|
Generator stator resistance [] | 0.054 [] | Grid-side resistance [] | 0.00156 [] |
Generator stator inductance [] | 17.4 [mH] | Grid-side inductance [] | 1.55 [mH] |
Permanent-magnet flux linkage [] | 42 [Wb] | DC-link capacitance [ ()] | 8.4 [mF] |
Generator rotor inertia [J] | 4000 [kgm] | DC-link voltage [] | 5200 [V] |
number of pairs [] | 42 | Sample time [] | 100 [s] |
Grid (phase) voltage [] | 3300 [V] | Number of levels [M] | 3 |
Grid frequency [] | 100 [rad/s] | Bandwidth [] | 3 [kHz] |
Parameter | Classical MPC | MPC-ESO | MFPCC-PCESO |
---|---|---|---|
Max. deviation of (nominal) | 104.52 A | 176.61 A | 102.11 A |
Max. (nominal) | 14.04 V | 17.74 V | 14.43 V |
Max. deviation of (nominal) | 50.45 A | 94.91 A | 57.66 A |
Max. deviation of at | 364.02 A | 186.21 A | 73.28 A |
Max. at | 43.42 V | 16.38 V | 12.41 V |
Max. deviation of at | 200.63 A | 160.98 A | 78.09 A |
Max. at | 33.73 V | 21.58 V | 14.69 V |
Max. deviation of at | 977.93 A | 352.01 A | 92.50 A |
Max. at | 12.09 V | 11.51 V | 10.06 V |
Max. deviation of at | 985.14 A | 255.89 A | 102.11 A |
Max. at | 12.15 V | 11.57 V | 11.50 V |
Max. deviation of at | - | 175.40 A | 97.31 A |
Max. at | - | 11.51 V | 10.92 V |
Max. deviation of at | - | 290.73 A | 67.27 A |
Max. at | - | 13.32 V | 13.13 V |
Grid-side THD at nominal | |||
Grid-side THD at | |||
Grid-side THD at | |||
Mach.-side THD at nominal | |||
Mach.-side THD at | |||
Mach.-side THD at | |||
Avg. switch. freq. (machine-/grid-side) | 1.37/1.33 kHz | 1.30/1.29 kHz | 1.27/1.25 kHz |
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Li, J.; Babayomi, O.; Zhang, Z.; Li, Z. Robust Predictive Current Control of PMSG Wind Turbines with Sensor Noise Suppression. Energies 2023, 16, 6255. https://doi.org/10.3390/en16176255
Li J, Babayomi O, Zhang Z, Li Z. Robust Predictive Current Control of PMSG Wind Turbines with Sensor Noise Suppression. Energies. 2023; 16(17):6255. https://doi.org/10.3390/en16176255
Chicago/Turabian StyleLi, Junda, Oluleke Babayomi, Zhenbin Zhang, and Zhen Li. 2023. "Robust Predictive Current Control of PMSG Wind Turbines with Sensor Noise Suppression" Energies 16, no. 17: 6255. https://doi.org/10.3390/en16176255
APA StyleLi, J., Babayomi, O., Zhang, Z., & Li, Z. (2023). Robust Predictive Current Control of PMSG Wind Turbines with Sensor Noise Suppression. Energies, 16(17), 6255. https://doi.org/10.3390/en16176255