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URBAN GROWTH MODELING USING AN ARTIFICIAL NEURAL NETWORK A CASE STUDY OF SANANDAJ CITY, IRAN

机译:城市成长模型采用人工神经网络建模,伊朗桑达省城市案例研究

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Land use activity is a major issue and challenge for town and country planners. Modelling and managing urban growth is a complex problem. Cities are now recognized as complex, non-linear and dynamic process systems. The design of a system that can handle these complexities is a challenging prospect. Local governments that implement urban growth models need to estimate the amount of urban land required in the future given anticipated growth of housing, business, recreation and other urban uses within the boundary. There are so many negative implications related with the type of inappropriate urban development such as increased traffic and demand for mobility, reduced landscape attractively, land use fragmentation, loss of biodiversity and alterations of the hydrological cycle. The aim of this study is to use the Artificial Neural Network (ANN) to make a powerful tool for simulating urban growth patterns. Our study area is Sanandaj city located in the west of Iran. Landsat imageries acquired at 2000 and 2006 are used. Dataset were used include distance to principle roads, distance to residential areas, elevation, slope, distance to green spaces and distance to region centers. In this study an appropriate methodology for urban growth modelling using satellite remotely sensed data is presented and evaluated. Percent Correct Match (PCM) and Figure of Merit were used to evaluate ANN results.
机译:土地利用活动是城镇和国家规划者的主要问题和挑战。建模和管理城市增长是一个复杂的问题。城市现在被认为是复杂的非线性和动态的过程系统。可以处理这些复杂性的系统的设计是一个具有挑战性的前景。实施城市增长模型的地方政府需要估计未来所需的城市土地金额,在边界内预期的住房,商业,娱乐和其他城市用途。有如此多的负面影响与不适当的城市发展的类型,例如流动性和对流动性的需求增加,景观减少,土地利用碎片,生物多样性丧失和水文循环的改变。本研究的目的是使用人工神经网络(ANN)来制定用于模拟城市增长模式的强大工具。我们的学习区位于伊朗西部的Sanandaj City。使用2000年和2006年收购的Landsat成像。使用数据集包括与原理道路的距离,与住宅区的距离,海拔,坡度,与绿色空间的距离和到地区中心的距离。在本研究中,提出和评估了使用卫星远程感测数据的城市生长建模的适当方法。百分比正确匹配(PCM)和优点的数字用于评估ANN结果。

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