利用人工神经网络和遥感技术建立德黑兰城市热岛模型

IF 0.3
Zahra Azizi, Navid Zoghi, Saeed Behzadi
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引用次数: 0

摘要

城市热岛现象的产生是由于城市和农村地区的热行为存在差异,而植被区、水域、不透水区和建筑区等多种因素都会对这一现象产生影响。城市热岛包括三种类型:树冠热岛、边界热岛和地表热岛。本研究分析的是地表类型的城市热岛。本文获取了 1990 年至 2015 年的 13 幅 TM/ETM+ 图像(每两年获取一幅图像)。城市热岛的影响在夏季更为严重,因此所有图像都是在夏季拍摄的。NDVI、IBI、反照率和地表温度都是从图像中得出的。为确定预测城市热岛强度的最佳模型,使用了各种神经网络拓扑结构。2016 年的地表温度被视为验证数据,因此拟合结构的最佳结果来自 Cascade,其训练算法为贝叶斯正则化(R 平方=0.62,RMSE=1.839 K)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of Urban Heat Island using Artificial Neural Network and Remote Sensing in Tehran
The Urban Heat Island phenomenon happens due to the differences in the thermal behavior between urban and rural areas which many factors such as vegetated, water, impervious and built-up areas could affect this phenomenon. Urban Heat Island consists of three types: Canopy heat island, Boundary heat island, and surface heat island. In this study, the surface type of urban heat island is analyzed. In this paper, 13 TM/ETM+ images have been obtained from 1990 to 2015(an image biennially). Urban Heat Islands effects are much more severe in summer; therefore, all images have been taken in summer. NDVI, IBI, albedo, and also land surface temperature were derived from images. Various neural network topologies have been used to identify the best model for predicting the urban heat island intensity. The LST of 2016 has been considered as validation data, thus the best result from fitting structures was obtained from Cascade which the Bayesian Regularization was its training algorithm (R-squared=0.62, RMSE=1.839 K).
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
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66.70%
发文量
60
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