Author/Authors :
Luca Bergamasco، نويسنده , , Pietro Asinari، نويسنده ,
Abstract :
The ongoing rush of the UE member states to the 2020 overall targets on the national renewable energy share (see Directive 2009/28/
EC), is propelling the large exploitation of the solar resource for the electricity production. However, the incentives to the large employment
of PV solar modules and the relative perspective profits, are often cause of massive ground-mounted installations. These kind of
installations are obviously the preferred solution by the investors for their high economic yields, but their social impact should be also
considered. Over the Piedmont Region for instance, the large proliferation of PV farms is jeopardising wide agricultural terrains and
turistic areas, therefore the policy of the actual administration is to encourage the use of integrated systems in place of massive installations.
For these reasons, an effort to demonstrate that the distributed residential generation can play a primary role in the market is
mandatory. In our previous work “Scalable methodology for the photovoltaic solar energy potential assessment based on available roof
surface area: application to Piedmont Region (Italy)”, we already proposed a basic methodology for the evaluation of the roof-top PV
system potential. However, despite the total roof surface has been computed on a given cartographical dataset, the real roof surface
available for PV installations has been evaluated through the assumption of representative roofing typologies and empirical coefficients
found via visual inspection of satellite images. In order to overcome this arbitrariness and refine our methodology, in the present paper
we present a brand new algorithm to compute the available roof surface, based on the systematical analysis and processing of aerial
georeferenced images (ortho-images). The algorithm, fully developed in MATLAB , accounts for shadow, roof surface available (bright
and not), roof features (i.e. chimneys or walls) and azimuthal angle of the eventual installation. Here we apply the algorithm to the whole
city of Turin, and process more than 60,000 buildings. The results achieved are finally compared with our previous work and the updated
PV potential assessment is consequently discussed.
2011 Elsevier Ltd. All rights reserved
Keywords :
Renewable energy , GIS , Roof-top PV systems , Photovoltaic , Ortho-image analysis