Evaluation of Rooftop Photovoltaic Power Generation Potential Based on Deep Learning and High-Definition Map Image
Abstract
:1. Introduction
1.1. Fixed-Value Methods
1.2. Radar Method
1.3. Deep Learning Method Based on HD Map
- This paper presents a system for estimating the potential of large-scale photovoltaics in rural China.
- Based on high-definition map images, the technical potential was obtained through the “photovoltaic Power Station Design Code” (GB50797-2012).
- The improved SegNeXt model was used for roof identification with high accuracy.
- We used the Bass Diffusion Model to forecast installed capacity and derive the trend of installed capacity over the next 35 years, which is in line with China’s trend of “peak carbon and carbon neutrality”.
2. The Framework of the Proposed Methodology
3. Methodology
3.1. Assessment of the Geographical Potential of Rooftop Photovoltaics
- Areas with the richest solar resources: average solar radiation greater than 1750 kWh/m2.
- Areas with very rich solar resources: solar radiation between 1400 kWh/m2 and approximately 1750 kWh/m2.
- Areas with abundant solar resources: the radiation ranges from 1050 kWh/m2 to approximately 1400 kWh/m2.
- Areas with average solar energy resources, with radiation values less than 1050 kWh/m2.
3.2. Evaluation of the Physical Potential
3.2.1. Improved SegNeXt
3.2.2. Monte Carlo Algorithm
3.2.3. Area Correction
- Equipment coefficient (B1): excluding the area proportion of HVAC equipment, water tank, chimney;
- Solar thermal energy coefficient (B2): the area proportion of the surface occupied by the solar hot water system is excluded;
- The effective area coefficient of the photovoltaic module (B3): the ratio of the surface area of the photovoltaic module to the surface area of the roof, taking into account the gap between the photovoltaic modules to avoid mutual occlusion and reflection.
3.3. Evaluation of the Technological Potential
3.3.1. Power Generation Potential of Photovoltaic System
3.3.2. Bass Diffusion Model
3.4. Error Analysis
- True Positive (TP): instances of the positive class are predicted to be positive; the roof of the building is correctly identified as the roof of the building;
- False Negative (FN): instances of the positive class are predicted to be negative; the roof of the building is incorrectly identified as the background;
- False Positive (FP): instances of the negative class are predicted to be positive; the background is incorrectly identified as the roof of a building;
- True Negative (TN): an instance of a negative class is predicted to be a negative class; the background is correctly identified as the background.
4. Results and Discussion
4.1. Physical Potential of Rooftop Photovoltaics
4.1.1. Data Acquisition
4.1.2. Training Dataset Construction and Data Enhancement
4.1.3. Model Verification
4.1.4. Calculation Results of Leizhou City
4.2. Potential Calculation of Rooftop PV Installed Capacity
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Predicted Value | True | Negative | |
---|---|---|---|
True Value | |||
True | TP | FN | |
Negative | FP | TN |
Equipment | Disposition |
---|---|
GPU | NVIDIA GeForce RTX 3080×8 |
CPU | Intel(R) Core(TM) i7-7700HQ 2.80 GHz |
Internal memory | 32 G |
Hard disk | 500 G |
Hyperparameter Type | Parameter Value |
---|---|
Batch_size | 64 |
Learning rate | 0.0005 |
Optimizer_type | adam |
Epoch | 100 |
Momentum | 0.9 |
Minimum image size | 256 × 256 |
Loss function | Cross Entropy Loss |
OA | PR | RE | F1 | mIoU | |
---|---|---|---|---|---|
ImprovedSegNeXt | 96.21% | 88.33% | 90.68% | 91.6% | 87.03% |
SegNeXt | 95.4% | 87.03% | 89.14% | 89.91% | 85.95% |
Pixel | Area | |
---|---|---|
backdrop | 48,931,405,824 | 3,733,466,264.37 |
roof | 988,601,751 | 75,430,313.60 |
Year | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | 2020 | 2021 | 2022 |
---|---|---|---|---|---|---|---|---|---|---|
t | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 |
Installed capacity (GW) | 3.1 | 4.67 | 6.06 | 10.32 | 29.66 | 50.62 | 62.63 | 78.23 | 107.51 | 158.61 |
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Cui, W.; Peng, X.; Yang, J.; Yuan, H.; Lai, L.L. Evaluation of Rooftop Photovoltaic Power Generation Potential Based on Deep Learning and High-Definition Map Image. Energies 2023, 16, 6563. https://doi.org/10.3390/en16186563
Cui W, Peng X, Yang J, Yuan H, Lai LL. Evaluation of Rooftop Photovoltaic Power Generation Potential Based on Deep Learning and High-Definition Map Image. Energies. 2023; 16(18):6563. https://doi.org/10.3390/en16186563
Chicago/Turabian StyleCui, Wenbo, Xiangang Peng, Jinhao Yang, Haoliang Yuan, and Loi Lei Lai. 2023. "Evaluation of Rooftop Photovoltaic Power Generation Potential Based on Deep Learning and High-Definition Map Image" Energies 16, no. 18: 6563. https://doi.org/10.3390/en16186563
APA StyleCui, W., Peng, X., Yang, J., Yuan, H., & Lai, L. L. (2023). Evaluation of Rooftop Photovoltaic Power Generation Potential Based on Deep Learning and High-Definition Map Image. Energies, 16(18), 6563. https://doi.org/10.3390/en16186563