A Study on the Power Generation Prediction Model Considering Environmental Characteristics of Floating Photovoltaic System
Abstract
:1. Introduction
2. Floating PV Power Generation Characteristics
2.1. Power Generation Characteristics Comparison System (PGCCS)
2.2. Operating Characteristics
3. Data Analysis Algorithm
3.1. Correlation Analysis
3.2. Regression Analysis
3.3. Neural Network Analysis
4. Analysis Results
4.1. Influence Factors
4.2. Prediction Model Based on Linear Regression Analysis
4.3. Prediction Model Based on Neural Network Analysis
4.4. Prediction Model Comparison
5. Conclusions
- The existing knowledge that the cooling effect and efficiency of the floating PV system increased with the evaporation of water from the surface was supplemented by more objective and concrete analyses. Based on the operation of two 2.5 kW land-based and floating PV systems installed near and on the water surface of the Boryeong Dam, Korea, respectively, the results were analyzed comparatively by applying a statistical probability method.
- During the period of analysis, the amount of solar irradiation for the land-based PV system was approximately 1.1% higher than that of the floating PV system; however, the average module temperature of the floating PV system was 4.9% lower than that of the land-based PV system.
- To analyze the reason behind the module temperature of the floating PV system being lower than that of the land-based PV system, the correlation between the module temperature difference and the air–water temperature, as well as the module temperature and wind speed, were analyzed. From the results, it was shown that there was a positive correlation between the module temperature difference and the land and water temperature difference, with a correlation coefficient of 0.6451. On the other hand, there was no correlation between the module temperature difference and the wind speed, with a correlation coefficient of 0.0032. Based on the operational data, the regression analysis method suggested a characteristic function that could predict the power generation, even considering solar radiation and module temperature.
- This study proved that the efficiency of a floating PV system was higher than that of a land-based PV system, owing to the cooling effect of water, although there are some differences, according to the environmental factors of the area. Using the water temperature characteristics, it was possible to predict the amount of electricity generated more accurately.
- In addition, the accuracy of the power generation prediction model using neural networks was approximately 2.91% higher than that of the regression analysis method. As a result of adjusting the hidden nodes in the neural network algorithm, it was confirmed that a neural network algorithm with ten hidden nodes was most suitable for calculating the amount of power generation.
- This paper is the result of utilizing 2.5 kW research equipment installed in the dams and nearby areas of South Korea. Therefore, as a result of this study, it is possible to more accurately predict the power generation of the floating PV system in an environment similar to these study conditions, such as installation locations, system scales and configurations, etc.
Author Contributions
Funding
Conflicts of Interest
References
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PV Module and Array | PCS | ||||
---|---|---|---|---|---|
Cell | Array Configuration | Rated Output | Operating Voltage | Control Method | |
315 W | Polycrystal72 | 4 × 2 | 3.1 kW | : 100∼500 V : 220 V, 60 Hz | Pulse–Width Modulation (PWM) |
Index | Array Output | Irradiation | Temperature | Wind Speed | ||||
---|---|---|---|---|---|---|---|---|
Horizontal | Slope | Air | Water | PV Module | ||||
Unit |
Correlation Coefficient | Relationship Degree |
---|---|
0~0.2 | Almost no correlation |
0.2~0.4 | Some correlation |
0.4~0.7 | Significant correlation |
0.7~1.0 | Strong correlation |
Correlation | Power Generation | Module Temperature | Ambient Temperature | Horizontal Irradiation | Slope Irradiation | Wind Speed | Wind Direction |
---|---|---|---|---|---|---|---|
Power Generation | 1 | — | — | — | — | — | — |
Module Temperature | 0.64 | 1 | — | — | — | — | — |
Ambient Temperature | 0.25 | 0.89 | 1 | — | — | — | — |
Horizontal Irradiation | 0.97 | 0.69 | 0.34 | 1 | — | — | — |
Slope Irradiation | 0.98 | 0.61 | 0.21 | 0.97 | 1 | — | — |
Wind Speed | −0.06 | −0.09 | −0.05 | −0.07 | −0.06 | 1 | — |
Wind Direction | −0.16 | −0.17 | −0.10 | −0.15 | −0.15 | 0.32 | 1 |
Division | Coefficient | Standard Error | t-Statistics | p-Value |
---|---|---|---|---|
Module Temperature | 0.0024851 | 0.00 | 9.88 | 0 |
Irradiation | 0.0019761 | 0.00 | 178.63 | 0 |
y-Intercept | −0.0141039 | 0.01 | −2.75 | 0.01 |
Multiple Correlation Coefficient | 0.9859 |
MAPE | Linear Regression | Number of Hidden Nodes of Neural Network | |||
---|---|---|---|---|---|
1 | 5 | 10 | 20 | ||
Training | 9.61% | 10.25% | 8.78% | 6.98% | 7.54% |
Test | 11.35% | 12.17% | 10.36% | 8.8% | 11.35% |
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Jeong, H.S.; Choi, J.; Lee, H.H.; Jo, H.S. A Study on the Power Generation Prediction Model Considering Environmental Characteristics of Floating Photovoltaic System. Appl. Sci. 2020, 10, 4526. https://doi.org/10.3390/app10134526
Jeong HS, Choi J, Lee HH, Jo HS. A Study on the Power Generation Prediction Model Considering Environmental Characteristics of Floating Photovoltaic System. Applied Sciences. 2020; 10(13):4526. https://doi.org/10.3390/app10134526
Chicago/Turabian StyleJeong, Han Sang, Jaeho Choi, Ho Hyun Lee, and Hyun Sik Jo. 2020. "A Study on the Power Generation Prediction Model Considering Environmental Characteristics of Floating Photovoltaic System" Applied Sciences 10, no. 13: 4526. https://doi.org/10.3390/app10134526
APA StyleJeong, H. S., Choi, J., Lee, H. H., & Jo, H. S. (2020). A Study on the Power Generation Prediction Model Considering Environmental Characteristics of Floating Photovoltaic System. Applied Sciences, 10(13), 4526. https://doi.org/10.3390/app10134526