| Literature DB >> 27922592 |
Kyle Bradbury1, Raghav Saboo2, Timothy L Johnson3, Jordan M Malof4, Arjun Devarajan5, Wuming Zhang5, Leslie M Collins4, Richard G Newell3.
Abstract
Earth-observing remote sensing data, including aerial photography and satellite imagery, offer a snapshot of the world from which we can learn about the state of natural resources and the built environment. The components of energy systems that are visible from above can be automatically assessed with these remote sensing data when processed with machine learning methods. Here, we focus on the information gap in distributed solar photovoltaic (PV) arrays, of which there is limited public data on solar PV deployments at small geographic scales. We created a dataset of solar PV arrays to initiate and develop the process of automatically identifying solar PV locations using remote sensing imagery. This dataset contains the geospatial coordinates and border vertices for over 19,000 solar panels across 601 high-resolution images from four cities in California. Dataset applications include training object detection and other machine learning algorithms that use remote sensing imagery, developing specific algorithms for predictive detection of distributed PV systems, estimating installed PV capacity, and analysis of the socioeconomic correlates of PV deployment.Entities:
Year: 2016 PMID: 27922592 PMCID: PMC5148580 DOI: 10.1038/sdata.2016.106
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444
Figure 1Flowchart showing the dataset generation process.
This includes (1) selecting imagery from four cities, (2) manually annotating solar array polygons, (3) merging the polygons identified by multiple annotators, and (4) compiling the resulting dataset.
Figure 2Location and area (m2) of the manually annotated solar arrays for the Fresno, Oxnard, Stockton, and Modesto regions.
Data field descriptions.
|
|
|
|
|
|
|---|---|---|---|---|
| Polygon ID | polygon_id | Unique identifier for each polygon | Integer | N/A |
| Centroid Latitude | centroid_latitude | Latitude of the centroid of the polygon bordering the solar array given | Double | Decimal Latitude |
| Centroid Longitude | centroid_longitude | Longitude of the centroid of the polygon bordering the solar array given | Double | Decimal Longitude |
| Centroid Pixel y-coordinate | centroid_latitude_pixels | Pixel y-coordinate of the centroid of the polygon bordering the solar array with respect the image file containing the solar array (origin is 0,0) | Double | Pixels |
| Centroid Pixel x-coordinate | centroid_longitude_pixels | Pixel x-coordinate of the centroid of the polygon bordering the solar array with respect the image file containing the solar array (origin is 0,0) | Double | Pixels |
| City | city | Name of the city the solar array is located in | String | N/A |
| Area of Polygon (pixels) | area_pixels | Area of the solar array in square pixels | Double | Pixels2 |
| Area of Polygon (meters) | area_meters | Area of the solar array in square meters | Double | Meters2 |
| Image Name | image_name | Name of the image file containing this solar array | String | N/A |
| Latitude Northwest Corner of Image Coordinates | nw_corner_of_image_latitude | Latitude of the northwest corner of Image containing this solar array | Double | Decimal Latitude |
| Longitude Northwest Corner of Image Coordinates | nw_corner_of_image_longitude | Longitude of the northwest corner of Image containing this solar array | Double | Decimal Longitude |
| Latitude Southeast Corner of Image Coordinates | se_corner_of_image_latitude | Latitude of the southeast corner of Image containing this solar array | Double | Decimal Latitude |
| Longitude Southeast Corner of Image Coordinates | se_corner_of_image_longitude | Longitude of the southeast corner of Image containing this solar array | Double | Decimal Longitude |
| Datum | datum | Datum of Image | String | N/A |
| Projection | projection_zone | Projection Zone of Image | String | N/A |
| Resolution | resolution | Resolution of Image | Integer | Meters2/Pixel |
| Jaccard Index | jaccard_index | Jaccard Similarity Index of the merged polygons | Double | N/A |
| Polygon Vertices (Pixels y,x) | polygon_vertices_lat_lon | Array Vertices of the Polygon in Pixels | Array of [2×1] vectors of doubles | Latitude, Longitude |
| Polygon Vertices (Lat,Lon) | polygon_vertices_pixels | Array Vertices of the Polygon in Latitude, Longitude | Array of [2×1] vectors of doubles | Pixels |
Figure 3Analysis of manual solar array polygon annotations.
(a) Shows the percent of identified solar arrays in each city identified by only one annotator (on average this was 30%, so 70% were identified by two annotators). Of those solar arrays identified by more than one annotator (b) shows the histogram of Jaccard Indices and (c) shows the cumulative percent of annotated arrays with a Jaccard index less than or equal to a given value, J. 99.4% have a Jaccard Index greater than 0.5, and 95% have a Jaccard Index greater than 0.69.