DocumentCode :
124636
Title :
Assessing solar potential of commercial and residential buildings in Indianapolis using LiDAR and GIS modeling
Author :
Yuanfan Zheng ; Qihao Weng
Author_Institution :
Center for Urban & Environ. Change, Indiana State Univ., Terre Haute, IN, USA
fYear :
2014
fDate :
11-14 June 2014
Firstpage :
398
Lastpage :
402
Abstract :
Renewable energy systems (RES) have become a vital part of energy use due to the fact that fossil energy declines and demand for energy keeps growing. Among all types of renewable energies, solar energy is the most important resource for the urban areas, since it is easy to obtain, renewable, and produces very little waste. In dense urban areas, building roofs have been utilized or are considered as the locations for Photovoltaic system (PV) or solar panel installation. This research aimed at extracting building roofs from LiDAR data using an object-based segmentation method in City of Indianapolis, USA, and calculating annual solar energy yield for each extracted roof. LiDAR Digital Elevation Model (DEM) was subtracted from LiDAR Digital Surface Model (DSM) to produce the Normalized Height Model (NHM), which represented the absolute heights of objects on the ground. The building extraction was implemented by using a fuzzy rule-based classification method to filter out commonly seen features in the urban environment such as trees, lawns, and roads. Annual solar radiation yield for each roof plane was calculated based on a hemispherical viewed algorithm. Shadowing effect caused by surrounding trees and solid objects were also taken into account to obtain more accurate solar energy values. Finally, suitability of PV installation for individual roofs was rated based on their annual solar energy output. All extracted roof planes were saved as polygons containing the information of size, azimuth, slope, and exposure for future use.
Keywords :
buildings (structures); digital elevation models; geographic information systems; optical radar; renewable energy sources; solar radiation; vegetation; GIS modeling; Indianapolis city; LiDAR DEM; LiDAR DSM; LiDAR data; LiDAR digital elevation model; LiDAR digital surface model; LiDAR modeling; NHM; PV installation; PV location; RES; USA; absolute object height; accurate solar energy value; annual solar energy output; annual solar energy yield calculation; annual solar radiation yield; building extraction; building roof; commercial building solar potential assessment; dense urban area; energy demand; extracted roof; fossil energy decline; fuzzy rule-based classification method; hemispherical viewed algorithm; normalized height model; object-based segmentation method; photovoltaic system location; polygon azimuth information; polygon exposure information; polygon size information; polygon slope information; renewable energy system; renewable energy type; residential building solar potential assessment; roof plane; solar energy; solar panel installation; solid object shadowing effect; tree shadowing effect; urban area resource; urban environment lawn; urban environment road; urban environment tree; vital energy use part; Buildings; Data mining; Feature extraction; Laser radar; Remote sensing; Solar energy; Vegetation; Building Roof Detection; GIS Modeling; LiDAR; Shadowing Effect; Solar Energy Potential;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Earth Observation and Remote Sensing Applications (EORSA), 2014 3rd International Workshop on
Conference_Location :
Changsha
Print_ISBN :
978-1-4799-5757-6
Type :
conf
DOI :
10.1109/EORSA.2014.6927921
Filename :
6927921
Link To Document :
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