Photovoltaic Maximum Power Point Tracking Technology Based on Improved Perturbation Observation Method and Backstepping Algorithm
Abstract
:1. Introduction
- (1)
- The algorithm introduces the concept of a boundary point, initially moving the operating point to the intersection of the I-U curve and the load line. Then, it can continue tracking with the P&O algorithm, which gives the algorithm the ability to escape local extrema, compared to traditional MPPT methods.
- (2)
- The backstepping algorithm is introduced to overcome the drawbacks of the P&O method where the step is fixed and the power fluctuates significantly after reaching the maximum power point.
- (3)
- The algorithm uses a large-step P&O method for initial tracking, which has a speed advantage.
2. Modeling of Photovoltaic Power Generation Systems and Analysis of Photovoltaic Array Output Characteristics
3. Design of IP&O-Backstepping
3.1. Introduction to Perturbation Observation Method
3.2. The Design Process of IP&O-Backstepping
4. Simulation Setup and Results
4.1. Simulation Setting
4.2. Simulation Result
- Under case 1, all eight algorithms successfully track the maximum power point. The tracking time of the P&O algorithm is as short as 0.005 s, but the step size of the algorithm is too large, leading to excessive power oscillation and instability in the algorithm. The IP&O-backstepping algorithm proposed in this article has a very short tracking time of only 0.013 s, and the algorithm maintains stable power with no oscillations after tracking to the maximum power point. Among the remaining six algorithms, the GWO-P&O algorithm has the highest tracking accuracy at 99.998%. The CS-INC algorithm performs well overall, but the tracking time is also 0.205 s. The CS algorithm, SSA algorithm and PSO algorithm also have good tracking accuracy, but their tracking times all exceed 0.5 s. The tracking time of the GWO algorithm is relatively short compared to other intelligent optimization algorithms, and the algorithm tracking time is 0.151 s.
- Under case 2, all eight algorithms successfully track the maximum power point. Respectively, the shortest tracking times for both the P&O algorithm and the IP&O-backstepping method proposed in this paper are 0.006 s and 0.015 s. The P&O algorithm exhibits oscillations while the method proposed in this paper remains stable. Among the other six algorithms, the GWO algorithm has the shortest tracking time at 0.151 s. The tracking times for the PSO, SSA, CS and GWO-P&O algorithms are all over 0.5 s, but their tracking accuracy exceeds 99%. The overall performance of the CS-INC algorithm is quite good, and its tracking accuracy is 99.944% while its tracking time is 0.154 s.
- Under case 3, six algorithms track the maximum power point. The P&O algorithm and the PSO algorithm fall into local extremum points. The IP&O-backstepping algorithm proposed in this paper has the shortest time among the six other algorithms for tracking the maximum power point. The tracking time of the GWO algorithm is 0.113 s, making it the fastest among other intelligent optimization algorithms. The tracking times for the CS-INC algorithm, GWO-P&O algorithm, SSA algorithm and CS algorithm are all over 0.5 s.
5. Conclusions
- The speed advantage of traditional MPPT algorithms.
- The ability of intelligent optimization algorithms to avoid getting stuck in local extremum points.
- Minimal power oscillation after the algorithm tracks the maximum power point.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Name of Physical Quantity | Symbol | Numerical Value | Unit |
---|---|---|---|
photovoltaic cell output current | I | A | |
photovoltaic cell output voltage | V | V | |
light intensity | G | W/m2 | |
ambient temperature | Tc | 298.15 | K |
diode saturation current | Is | A | |
diode ideal factor | A | 0.98119 | |
parallel resistance | Rsh | 106.1817 | Ω |
series resistance | Rs | 0.18964 | Ω |
photogenerated current | Iph | 7.9642 | A |
open circuit voltage | Voc | 36.06 | V |
short circuit current | Isc | 7.95 | A |
maximum power point voltage | Vm | 30.12 | V |
maximum power point current | Im | 7.3 | A |
maximum power | P | 219.876 | W |
Symbol | Numerical Value | Unit |
---|---|---|
Cin | 550 | uF |
L | 8 | mH |
Cout | 12 | uF |
CR | 0.1 | Ω |
R | 20 | Ω |
Cases | Irradiance (W/m2) | Power at GMPP (W) | |||
---|---|---|---|---|---|
PV1 | PV2 | PV3 | PV4 | ||
1 | 1000 | 1000 | 1000 | 1000 | 7035.83 |
2 | 1000 | 900 | 1000 | 900 | 6544.13 |
3 | 600 | 900 | 700 | 800 | 4590.75 |
Pattern | Algorithms | Track Power (W) | Track Time (s) | Track Accuracy (%) |
---|---|---|---|---|
Case 1 | IP&O-backstepping | 7005.67 | 0.013 | 99.571 |
GWO | 7002.88 | 0.151 | 99.532 | |
PSO | 7034.66 | 0.688 | 99.983 | |
CS | 7004.75 | 0.471 | 99.249 | |
SSA | 7032.33 | 0.472 | 99.950 | |
P&O | 6799.73 | 0.005 | 96.644 | |
GWO-P&O | 7035.71 | 0.505 | 99.998 | |
CS-INC | 7031.04 | 0.205 | 99.932 | |
Case 2 | IP&O-backstepping | 6475.44 | 0.015 | 98.950 |
GWO | 6420.62 | 0.151 | 98.113 | |
PSO | 6541.39 | 0.726 | 99.958 | |
CS | 6540.05 | 0.590 | 99.938 | |
SSA | 6541.39 | 0.516 | 99.958 | |
P&O | 6279.45 | 0.006 | 95.955 | |
GWO-P&O | 6541.59 | 0.504 | 99.961 | |
CS-INC | 6540.44 | 0.154 | 99.944 | |
Case 3 | IP&O-backstepping | 4530.39 | 0.018 | 98.685 |
GWO | 4590.12 | 0.113 | 99.986 | |
PSO | 3909.25 | 0.625 | 85.155 | |
CS | 4590.05 | 0.815 | 99.985 | |
SSA | 4590.67 | 0.519 | 99.998 | |
P&O | 3752.48 | 0.006 | 81.740 | |
GWO-P&O | 4588.39 | 0.679 | 99.949 | |
CS-INC | 4590.47 | 0.303 | 99.994 |
Pattern | Algorithms | Track Time (s) |
---|---|---|
Case 3 | IP&O-backstepping | 0.013 |
P&O | 0.007 | |
CS-INC | 0.302 | |
GWO | 0.096 | |
Case 2 | IP&O-backstepping | 0.004 |
P&O | 0.002 | |
CS-INC | 0.303 | |
GWO | 0.151 | |
Case 1 | IP&O-backstepping | 0.006 |
P&O | 0.006 | |
CS-INC | 0.232 | |
GWO | 0.163 |
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Wang, Y.; Sun, L. Photovoltaic Maximum Power Point Tracking Technology Based on Improved Perturbation Observation Method and Backstepping Algorithm. Electronics 2024, 13, 3960. https://doi.org/10.3390/electronics13193960
Wang Y, Sun L. Photovoltaic Maximum Power Point Tracking Technology Based on Improved Perturbation Observation Method and Backstepping Algorithm. Electronics. 2024; 13(19):3960. https://doi.org/10.3390/electronics13193960
Chicago/Turabian StyleWang, Yulin, and Liying Sun. 2024. "Photovoltaic Maximum Power Point Tracking Technology Based on Improved Perturbation Observation Method and Backstepping Algorithm" Electronics 13, no. 19: 3960. https://doi.org/10.3390/electronics13193960
APA StyleWang, Y., & Sun, L. (2024). Photovoltaic Maximum Power Point Tracking Technology Based on Improved Perturbation Observation Method and Backstepping Algorithm. Electronics, 13(19), 3960. https://doi.org/10.3390/electronics13193960