基于模型区划的空间异质专家城市增长模型

D. Triantakonstantis, G. Mountrakis, Jida Wang
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引用次数: 17

摘要

城市化变化已被广泛研究,并提出了许多城市增长模型。本文介绍了一个替代性的城市增长模型,该模型专门设计用于将空间异质性纳入城市增长模型。我们将研究区域划分为不同的区域,并在每个子区域应用有针对性的算法,而不是对整个研究区域应用单一的方法。工作假设是,适当选择的区域特定模型的整合将优于全球应用的模型,因为它将进一步纳入空间异质性。我们研究了科罗拉多州丹佛市的城市土地利用变化。利用1977年和1997年两幅不同时间快照的土地利用图来检测城市土地利用变化,并产生23个解释因子来模拟城市化。提出的基于空间异质专家(SHEB)模型将决策树作为基础建模算法,并将其应用于不同的子区域。本文所测试的分割方法是将整个区域划分为内部和外部城市区域。城市内部地区是位于密集的城市化结构内的地区,而城市外部地区是位于这些结构之外的地区。模型区域化技术的结果表明,目标局部模型在Kappa、正确率和多尺度性能方面都有提高。采用t检验的模型两两比较也证实了模型的优越性。内部/外部选择的分割标准不仅可以捕捉空间和形态特征的特定特征,还可以捕捉隐含在这些空间表征中的社会经济因素。在本研究中使用内部和外部分区域作为概念的证明。其他空间异质性指标,例如景观、社会经济和政治边界,可作为改进地方划分的基础。
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A Spatially Heterogeneous Expert Based (SHEB) Urban Growth Model using Model Regionalization
Urbanization changes have been widely examined and numerous urban growth models have been proposed. We introduce an alternative urban growth model specifically designed to incorporate spatial heterogeneity in urban growth models. Instead of applying a single method to the entire study area, we segment the study area into different regions and apply targeted algorithms in each subregion. The working hypothesis is that the integration of appropriately selected region-specific models will outperform a globally applied model as it will incorporate further spatial heterogeneity. We examine urban land use changes in Denver, Colorado. Two land use maps from different time snapshots (1977 and 1997) are used to detect the urban land use changes, and 23 explanatory factors are produced to model urbanization. The proposed Spatially Heterogeneous Expert Based (SHEB) model tested decision trees as the underlying modeling algorithm, applying them in different subregions. In this paper the segmentation tested is the division of the entire area into interior and exterior urban areas. Interior urban areas are those situated within dense urbanized structures, while exterior urban areas are outside of these structures. Obtained results on this model regionalization technique indicate that targeted local models produce improved results in terms of Kappa, accuracy percentage and multi-scale performance. The model superiority is also confirmed by model pairwise comparisons using t-tests. The segmentation criterion of interior/exterior selection may not only capture specific characteristics on spatial and morphological properties, but also socioeconomic factors which may implicitly be present in these spatial representations. The usage of interior and exterior subregions in the present study acts as a proof of concept. Other spatial heterogeneity indicators, for example landscape, socioeconomic and political boundaries could act as the basis for improved local segmentations.
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