System Parameter Based Performance Optimization of Solar PV Systems with Perturbation Based MPPT Algorithms
Abstract
:1. Introduction
- To study the effect of input capacitance on the system time constant and determine system time constant using a simple step test (Step test 01).
- To study the digital filter’s impact on the system time constant as seen by the controller (Step test 02).
- To address the choice of the sampling frequency of PV voltage and current based on the estimated system time constant for optimal energy extraction using perturbation techniques.
2. Solar PV Fed Boost Converter
2.1. Input Capacitance and Its Effect on the System Time Constant
2.2. Digital Filter Design and Its Effect on System Time Constant
2.3. Effect of Sampling time on System Performance
2.4. Mathematical Model
3. Proposed Tests and Guidelines for System Parameter Based Performance Optimization
3.1. Step Test 01—Determination of Optimum Value of Input Capacitance
- Configure an experimental setup consisting of Solar PV array, and the power converter under test (setup is shown in Figure 1 for this study)
- Choose appropriate value of and vary the duty ratio from minimum to maximum value and capture the responses of . (In this study, is chosen and D is varied from 0.1 to 0.7 in steps of 0.05)
- Repeat step 2 for different values of , to see the effect of input capacitance on . (In this study, responses are investigated for , 440 ).
- The value of depends on the switching frequency of the power converter, ripple in PV voltage and PV current and is calculated using (11).
- The value of is directly proportional to the settling time of responses of PV voltage and current.
- The of the system is 0.2 s for .
3.2. Step Test 02—Determination of Optimum Value of Digital Filter Cut-Off Frequency
- Configure experiment set-up with chosen value of in step test-01. ( )
- Configure digital filter to eliminate/reduce the noise due to ADC. (First order filter with cut-off frequency of 157 rad/s, 314 rad/sec and 628 rad/s are used in this study, first cut-off frequency (100 Hz = 628 rad/s) is empirically chosen as 0.01 times switching frequency (10 kHz))
- Introduce a step change in D (from 0.5 to 0.6) of S and record the response of digital filter output () for different cut-off frequencies.(During experimentation, the response of was observed to be slightly slower compared to , hence was chosen as criteria over )
3.3. Proposed Guidelines for the Choice of Sampling Time
- For a given switching frequency , obtain at value of using Equation (11) ().
- Conduct step test for system under test using control variable (D, in this case) and determine the of the system under test ( s).
- Determine of the experimental setup as seen from the controller, for chosen cut-off frequency of low pass digital filter, as discussed in Section 2.2. ( s).
- Select sample time for perturbation based algorithm () more than (), () approximately.
- (a)
- Experiments are conducted for four different (0.5 s, 0.4 s, 0.3 s, 0.2 s)
- (b)
- Behaviour of and are presented for () and ().
- (c)
- Average PV power extraction is discussed for all four sampling times.
- (d)
- Scaling factor of 1.5 in is chosen empirically.
- Energize the system under test with suitable perturbation based algorithm and chosen sample time (), and observe the behavior of control variable (D) and system variables () to exhibit sustained three-step-waveform around their respective steady-state values.
- The sample time can further be optimized based on the required tracking speed and the energy extraction.
- Check the behaviour of control variable and the system variables for step-change in irradiances to ensure three-step waveform or quasi three-step waveform.
4. Results and Discussions
4.1. Simulation Results
4.2. Experimental Results
4.3. Discussions
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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System Parameter | Value (Unit) |
---|---|
Open circuit Voltage, | 21.47 V |
Short circuit current, | 3.11 A |
Voltage at Maximum Power, | 17.21 V |
Current at Maximum Power, | 2.91 A |
Module maximum power, | 50 W |
Temperature coefficient of Current , | 0.0154 C/V) |
Temperature coefficient of Voltage, | −0.2775 C/mA) |
PV array power (5 modules in series) | 250 W |
G (W/) | (V) | (A) | () | (W) | |
---|---|---|---|---|---|
800 | 86.14 | 2.331 | 36.95 | 200 | 0.45 |
1000 | 85.63 | 2.91 | 29.42 | 250 | 0.5 |
Component | Type/Value |
---|---|
IGBT Module | SKM 200 GB12E4 (Semikron, Nuremberg, Germany) |
IGBT drivers | SKYPER 32 Pro (Semikron, Nuremberg, Germany) |
Input capacitor | 220 |
DC link Capacitor | 2350 |
Load resistor | 120 |
Switching Frequency | 10 kHz |
Inductor | 3.5 mH |
Current Sensor | LA 25-P |
Voltage sensor | LV 25-P |
250 W Solar PV Array | Magna SL 300-5 Emulator |
Controller | TMS320F28069M |
Parameters | G (W/m) | (V) | (A) | () | (W) | |
---|---|---|---|---|---|---|
Theoretical results | 800 1000 | 86.14 85.63 | 2.331 2.91 | 36.95 29.42 | 200 250 | 0.45 0.5 |
Simulation results | 800 1000 | 82.7 87.5 | 2.35 2.81 | 35.19 31.13 | 194 245.875 | 0.5 0.54 |
Experimental results | 800 1000 | 82.15 83.46 | 2.27 2.843 | 35.24 30.12 | 186.48 237.27 | 0.58 0.62 |
Parameters\Ref | [12,13] | [14,15] | [16,18] | [19] | Proposed |
---|---|---|---|---|---|
System time constant | SSM | SSM | SSM | DCD-RLS | Step test -01 |
Digital Filter delay | Neglected | 100 Hz (0.01 s) | Neglected | Neglected | Step-test - 02 |
Sampling time | 1.1* | Trial and error | 1.5 | ||
Comprehensiveness | No | No | No | No | Yes |
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Angadi, S.; Yaragatti, U.R.; Suresh, Y.; Raju, A.B. System Parameter Based Performance Optimization of Solar PV Systems with Perturbation Based MPPT Algorithms. Energies 2021, 14, 2007. https://doi.org/10.3390/en14072007
Angadi S, Yaragatti UR, Suresh Y, Raju AB. System Parameter Based Performance Optimization of Solar PV Systems with Perturbation Based MPPT Algorithms. Energies. 2021; 14(7):2007. https://doi.org/10.3390/en14072007
Chicago/Turabian StyleAngadi, Sachin, Udaykumar R. Yaragatti, Yellasiri Suresh, and A. B. Raju. 2021. "System Parameter Based Performance Optimization of Solar PV Systems with Perturbation Based MPPT Algorithms" Energies 14, no. 7: 2007. https://doi.org/10.3390/en14072007
APA StyleAngadi, S., Yaragatti, U. R., Suresh, Y., & Raju, A. B. (2021). System Parameter Based Performance Optimization of Solar PV Systems with Perturbation Based MPPT Algorithms. Energies, 14(7), 2007. https://doi.org/10.3390/en14072007