Mapping solar array location, size, and capacity using deep learning and overhead imagery
Jordan M. Malof, Boning Li, Bohao Huang, Kyle Bradbury, Artem Stretslov
The effective integration of distributed solar photovoltaic (PV) arrays into existing power grids
will
require access to high quality data; the location, power capacity, and energy generation of
individual
solar PV installations. Unfortunately, existing methods for obtaining this data are limited in their
spatial resolution and completeness. We propose a general framework for accurately and cheaply
mapping
individual PV arrays, and their capacities, over large geographic areas. At the core of this
approach is
a deep learning algorithm called SolarMapper - which we make publicly available - that can
automatically
map PV arrays in high resolution overhead imagery. We estimate the performance of SolarMapper on a
large
dataset of overhead imagery across three US cities in California. We also describe a procedure for
deploying SolarMapper to new geographic regions, so that it can be utilized by others. We
demonstrate
the effectiveness of the proposed deployment procedure by using it to map solar arrays across the
entire
US state of Connecticut (CT). Using these results, we demonstrate that we achieve highly accurate
estimates of total installed PV capacity within each of CT's 168 municipal regions.
[Full text on arXiv]
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