| Literature DB >> 35459055 |
Mostafa Ahmed1,2, Ibrahim Harbi1,3, Ralph Kennel1, José Rodríguez4, Mohamed Abdelrahem1,2.
Abstract
In this paper, a comparative review for maximum power point tracking (MPPT) techniques based on model predictive control (MPC) is presented in the first part. Generally, the implementation methods of MPPT-based MPC can be categorized into the fixed switching technique and the variable switching one. On one side, the fixed switching method uses a digital observer for the photovoltaic (PV) model to predict the optimal control parameter (voltage or current). Later, this parameter is compared with the measured value, and a proportional-integral (PI) controller is employed to get the duty cycle command. On the other side, the variable switching algorithm relies on the discrete-time model of the utilized converter to generate the switching signal without the need for modulators. In this regard, new perspectives are inspired by the MPC technique to implement both methods (fixed and variable switching), where a simple procedure is used to eliminate the PI controller in the fixed switching method. Furthermore, a direct realization technique for the variable switching method is suggested, in which the discretization of the converter's model is not required. This, in turn, simplifies the application of MPPT-based MPC to other converters. Furthermore, a reduced sensor count is accomplished. All conventional and proposed methods are compared using experimental results under different static and dynamic operating conditions.Entities:
Keywords: MPC; MPPT; PV systems; direct MPPT; fixed switching frequency; review; sensor reduction
Year: 2022 PMID: 35459055 PMCID: PMC9030575 DOI: 10.3390/s22083069
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Previous works on MPPT-based MPC.
| Cited Reference | Converter Topology | Number of Sensors | Implementation | Remarks |
|---|---|---|---|---|
| [ | Boost converter | 2 | Experimental | A digital observer for the PV model is used to predict the optimal voltage and achieve a fixed switching frequency. Furthermore, the duty cycle command is obtained by a PI controller. |
| [ | Z-source inverter | 2 | Experimental | Similar to the above mentioned technique, i.e., [ |
| [ | Boost converter | 3 | Simulation | INC method is used to provide the reference current for the FS-MPC loop with two-step prediction. |
| [ | Boost converter | 4 | Experimental | Modified P&O algorithm is implemented for reference generation with various voltage and current-based FS-MPC techniques. |
| [ | Flyback converter | 3 | Simulation | FS-MPC is combined with the INC method to improve its transient behavior. |
| [ | Buck converter | 3 | Experimental | Technique for dynamic atmospheric conditions is implemented, where a model for the PV source is combined with the FS-MPC to improve the system’s performance. |
| [ | Boost converter | 3 | Experimental | Revised version of the P&O method with one-step prediction is executed and integrated with the FS-MPC approach. |
| [ | Boost converter | 3 | Simulation | P&O method is utilized as a reference generator for the FS-MPC. |
| [ | Boost converter | 3 | Simulation | INC method-based reference current tracking is combined with the FS-MPC algorithm. |
Sensor reduction approaches for MPPT-based FS-MPC.
| Cited Reference | Converter Topology | Number of Sensors | Implementation | Remarks |
|---|---|---|---|---|
| [ | Flyback converter | 2 | Experimental | INC is utilized to generate the reference for the FS-MPC. The current sensor is eliminated based on the MPC approach. Furthermore, a simple load observer is included. |
| [ | Multilevel boost converter | 2 | Experimental | INC method is employed for the FS-MPC technique. Sensor reduction is accomplished using a simplified model for a multilevel converter. |
| [ | High gain DC-DC converter | 2 | Experimental | INC method is used with the FS-MPC method. The output voltage sensor is removed using the voltage gain equation of the utilized converter. |
| [ | Boost converter | 2 | Simulation | P&O method is used as a reference generator for the FS-MPC. The required sensors are reduced by employing an extended Kalman filter. |
Figure 1The configuration of the PV system with boost converter.
Figure 2The simplified equivalent circuit of the PV generator.
Figure 3Predictive fixed switching frequency MPPT based digital observer without PI controller.
Figure 4MPPT-based FS-MPC: (a) Reference voltage calculation using P&O method. (b) Optimal switching state selection-based FS-MPC.
Figure 5The proposed MPPT techniques: (a) MPPT-based direct P&O. (b) MPPT-based indirect P&O.
Figure 6The experimental configuration of the PV system and HIL.
The parameters of the experimental set-up.
| Parameter | Value |
|---|---|
| Boost inductor | |
| Output capacitance |
|
| Power switch | IGBT-Module FF50R12RT4 |
| Diode | fast recovery diode BYW77PI200 |
| Load |
|
| PV emulator resistors | |
| Sampling time |
|
Figure 7The performance of the MPPT techniques under step response of the PV power: (a) Fixed switching MPPT-based digital observer. (b) MPPT-based FS-MPC. (c) The first proposed DMPPT technique-based direct P&O. (d) The second proposed DMPPT technique-based indirect P&O.
Tracking speed and average efficiency of the studied MPPT methods.
| Method | Tracking Speed | |
|---|---|---|
| MPPT based DO | 13 | 97.57 |
| MPPT based FS-MPC | 4 | 97.52 |
| DMPPT1 | 5 | 97.10 |
| DMPPT2 | 4 | 97.55 |
Execution time and average switching frequency for the MPPT algorithms.
| Method | Execution Time (μs) | Avg. |
|---|---|---|
| MPPT-based DO | 5.67 | 3.33 (fixed) |
| MPPT-based FS-MPC | 5.25 | 3.67 |
| DMPPT1 | 4.87 | 2.42 |
| DMPPT2 | 4.90 | 3.66 |
Figure 8The performance of the MPPT techniques under dynamic weather conditions: (a) Fixed switching MPPT-based digital observer. (b) MPPT-based FS-MPC. (c) The first proposed DMPPT technique-based direct P&O. (d) The second proposed DMPPT technique-based indirect P&O.
Figure 9The power–voltage curves of the MPPT techniques under dynamic weather conditions: (a) Fixed switching MPPT-based digital observer. (b) MPPT-based FS-MPC. (c) The first proposed DMPPT technique-based direct P&O. (d) The second proposed DMPPT technique-based indirect P&O.
The average efficiency and average switching frequency for the MPPT algorithms at dynamic radiation conditions.
| Method | Avg. | |
|---|---|---|
| MPPT-based DO | 99.58 | 3.33 (fixed) |
| MPPT-based FS-MPC | 99.66 | 2.41 |
| DMPPT1 | 99.28 | 2.48 |
| DMPPT2 | 99.67 | 2.46 |
Comparative assessment of the MPPT techniques.
| Parameter | MPPT-Based DO | MPPT-Based FS-MPC | DMPPT1 | DMPPT2 |
|---|---|---|---|---|
| Number of utilized sensors | 2 | 3 | 2 | 2 |
| Switching frequency | Fixed | Variable | Variable | Variable |
| Computation burden | Very High | High | Low | Low |
| Tracking speed | Slow | Very fast | Fast | Very fast |
| Cost function evaluation | Required | Required | Not required | Not required |
| Steady-state behavior | Excellent | Very good | Good | Very good |
| Dynamic behavior | Drift occurs | Drift occurs | Drift occurrence is significant | Drift occurs |
| System model’s dependency | Exists (DO) | Exists (discrete model) | No | No |
| Efficiency | Very high | Very high | High | Very High |