“The utilization of the U-net model for solar energy systems detection provides a data-driven and automated solution with enhanced complexity, enabling precise detection,” it added. “Its accurate segmentation and identification of solar energy systems from aerial images hold substantial practical value, facilitating efficient assessment of panel performance, maintenance requirements, and energy production estimation.”
The new model was trained and tested on two databases – one from Germany and another one from Sweden – and a mixture of the two was used for higher ground-mounted solar generation capacity of its abilities. When compared to other CNN architectures, the researchers said, the U-Net model stood out, especially in image segmentation tasks.
Also according to the research, the U-net model can be trained on aerial images with a resolution of 128 x 128 pixels, and achieve accuracy that is not significantly poorer than it does with a higher 256 x 256 pixel resolution. Its ability to use lower resolution, in turn, results in lower computer hardware usage.
“This study has proven that a U-net model can assess the area of solar energy systems in aerial imagery with high accuracy,” the article concluded. “However, the tilt of the modules is also needed for a correct area estimation. Calculating the tilt can be done either from 3D building data or high/low-resolution LiDAR data. Combining the latter with the method of this study is the planned next step.”