4.5 Article

A Simplified Simulation Model for Predicting Radiative Transfer in Long Street Canyons under High Solar Radiation Conditions

期刊

ENERGIES
卷 8, 期 12, 页码 13540-13558

出版社

MDPI AG
DOI: 10.3390/en81212383

关键词

solar radiation; computer simulation; configuration factors; street canyon; solar availability

资金

  1. General Urban Development Plan Office of Cadiz
  2. Grupo de investigacion en formacion Grupo de Arquitectura y Construccion Sustentable of the Universidad del Bio-Bio [150203/EF]

向作者/读者索取更多资源

Modeling solar radiation in street canyons is crucial to understanding the solar availability of building facades. This article describes the implementation of a simulation routine, developed in the Matlab((R)) computer language, which is aimed at predicting solar access for building facades located in dense urban conglomerates comprising deep long street canyons, under high solar radiation conditions, typical in southern countries of Europe. Methodology is primarily based on the configuration factor theory, also aided by computer simulation, which enables to assess the interplay between the surfaces that compose the so-called street canyon. The results of the theoretical model have been cross-checked and verified by on-site measurements in two real case studies, two streets in Cadiz and Seville. The simplified simulation reproduces the shape of the curve for on-site measured values and weighted errors for the whole model do not surpass 10%, with a maximum of 9.32% and a mean values of 6.31%. As a result, a simplified predictive model that takes into account direct, diffuse and reflected solar radiation from the surfaces that enclose the canyon, has been devised. The authors consider that this research provides further improvement, as well as a handy alternative approach, to usual methods used for the calculation of available solar radiation in urban canyons, such as the Sky View Factor or the ray tracing.

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