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首页> 外文期刊>Intelligence: A Multidisciplinary Journal >Modelling multi-regional urban growth with multilevel logistic cellular automata
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Modelling multi-regional urban growth with multilevel logistic cellular automata

机译:用多级物流蜂窝自动机建模多区域城市成长

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Simulation models based on cellular automata (CA) are useful for revealing the complex mechanisms and processes involved in urban growth and have become supplementary tools for urban land use planning and management. Although the urban growth mechanism is characterized by multilevel and spatiotemporal heterogeneity, most existing studies focus only on simulating the urban growth of singular regions without considering the heterogeneity of the urban growth process and the multilevel factors driving urban growth within regions that consist of multiple subregions. Thus, urban growth models have limited performance when simulating the urban growth of multi-regional areas. To address this issue, we propose a multilevel logistic CA model (MLCA) by incorporating a multilevel logistic regression model into the traditional logistic CA model (LCA). In the MLCA, multilevel driving factors are considered, and the multilevel logistic model allows the transition rules to not only vary in space, but also change when the subregional level factors change. To verify the MLCA's validity, it was applied to simulate the urban growth of Tongshan County, located in China's Xuzhou Prefecture. The results were compared with three comparative models, LCA1, which only considered grid cell-level factors; LCA2, which considered both grid cell- and subregional-level factors; and artificial neural network CA. Urban growth data for the periods 2000-2009 and 2009-2017 were used. The results show that the MLCA performs better on both visual comparison and indicators for accuracy verification. The Kappa of the results increased by < 5%, but the improvement was significant, while increases for the accuracy of urban land and figure of merit were much higher than 5%. In addition, the results of MLCA had the smallest mean absolute percentage error when allocating new urban land areas to the various subregions. The results reveal that higher-level (e.g., town level) factors either strengthened or weakened the effects of grid cell-level factors on urban growth, which indirectly affected the spatial allocation of new urban land. The MLCA model is an effective step towards simulating nonstationary urban growth of multi-regional areas, using the comprehensive effects of multilevel driving factors.
机译:基于蜂窝自动机(CA)的仿真模型对于揭示城市增长中涉及的复杂机制和流程是有用的,并成为城市土地利用规划和管理的补充工具。虽然城市增长机制的特点是多级和时空异质性,但大多数现有研究只关注模拟奇异地区的城市生长,而不考虑城市成长过程的异质性和促进包括多个次区域的地区内城市增长的多级因素。因此,在模拟多区域地区的城市增长时,城市增长模式具有有限的性能。为了解决这个问题,我们通过将多级Logistic回归模型结合到传统的Logistic CA型号(LCA)中提出了多级物流CA模型(MLCA)。在MLCA中,考虑多级驱动因子,多级物流模型允许过渡规则不仅在空间内变化,而且在次区域级别因素变化时也会发生变化。为了验证MLCA的有效性,它应用于模拟桐山县城市成长,位于中国徐州县。将结果与三种比较模型LCA1进行比较,仅考虑网格细胞级别因素; LCA2,其考虑网格细胞和次区域级别因素;和人工神经网络CA。使用了2000-2009和2009-2017期间的城市成长数据。结果表明,MLCA对视觉比较和指标进行更好的准确验证。结果的Kappa增加了<5%,但改善是显着的,而城市土地准确性的增加和优异的数字远高于5%。此外,在将新的城市土地区域分配给各个次区域时,MLCA的结果具有最小的平均绝对百分比误差。结果表明,更高级别(例如,城镇水平)因素要么加强或削弱网格细胞级别因素对城市成长的影响,间接影响了新城市土地的空间分配。 MLCA模型是模拟多区域地区的非间断城市成长的有效步骤,利用多级驱动因素的综合影响。

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