Simulating urban growth by coupling macro-processes and micro-dynamics: a case study on Wuhan, China

IF 6 2区 地球科学 Q1 GEOGRAPHY, PHYSICAL GIScience & Remote Sensing Pub Date : 2023-10-05 DOI:10.1080/15481603.2023.2264582
Yunqi Guo, Limin Jiao, Xianzeng Yang, Jia Li, Gang Xu
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Abstract

The urban form influences the quality of urban functions and is strongly correlated with the sustaining capabilities of urban development. However, in the context of rapid urbanization, unreasonable land expansion as a universal phenomenon poses a great challenge for urban management. Notably, the urban expansion process is self-organizing, and the evolving macroscopic pattern can be used to predict microscopic behavioral characteristics. Therefore, the analysis of macro- and micro-interactions can provide new ideas for urban modeling. Traditional geographic cellular automata (CA) models often have poor morphological reproducibility, and the few models that combine top-down and bottom-up CA use strict coupling constraints, resulting in inadequate self-organizing natural expressions and poor precision performances. In this study, we proposed a new land growth simulation model based on a soft constraint mechanism that couples micro-dynamics with macro-processes. Specifically, a geographic micro-process model (GMP) based on the meta-process accumulation concept was applied to capture the evolution characteristics of the macro-urban form and spatially deduce the future urban intensity gradient. The soft coupling between the macro and micro levels of the model was supported by a punishment mechanism that was developed for this study. A specially designed index, the morphology similarity (MS) index, was developed to evaluate and understand the heterogeneity of the simulated and real urban forms from a micro-perspective. The model was applied to Wuhan, the largest city in central China, to demonstrate that the proposed model has a high simulation accuracy [with a Kappa value of 0.8506 and a figure-of-merit (FoM) value of 0.3034 in the optimal parameter combination] and imitative ability [maximum sensitivity (MS) value of 0.01341 in the optimal parameter combination vs. MS value of 0.01336 in the true scenario]. The evaluation system developed in this study also demonstrated the high robustness and reliability of the future multi-scenario simulation conducted in this work.
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宏观过程与微观动力学耦合模拟城市增长——以武汉市为例
城市形态影响着城市功能的质量,并与城市发展的持续能力密切相关。然而,在快速城市化的背景下,不合理的土地扩张作为一种普遍现象,对城市管理提出了巨大的挑战。值得注意的是,城市扩张过程是自组织的,宏观格局的演变可以用来预测微观行为特征。因此,宏观和微观相互作用的分析可以为城市建模提供新的思路。传统的地理元胞自动机(CA)模型往往具有较差的形态再现性,少数结合自顶向下和自底向上CA的模型使用了严格的耦合约束,导致自组织自然表达式不足,精度性能较差。本文提出了一种基于微观动力学与宏观动力学耦合的软约束机制的土地生长模拟模型。具体而言,基于元过程积累概念的地理微过程模型(GMP)捕捉了宏观城市形态的演化特征,并在空间上推断了未来城市强度梯度。该模型的宏观和微观层面之间的软耦合得到了为本研究开发的惩罚机制的支持。为了从微观角度评价和理解模拟城市形态与真实城市形态的异质性,我们设计了一个特别的指数——形态相似性指数(MS)。将该模型应用于中部最大城市武汉,结果表明,该模型具有较高的模拟精度[在最优参数组合下Kappa值为0.8506,FoM值为0.3034]和模仿能力[在最优参数组合下最大灵敏度(MS)值为0.01341,而真实情景的MS值为0.01336]。本研究开发的评估系统也证明了本工作所进行的未来多场景模拟的高鲁棒性和可靠性。
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来源期刊
CiteScore
11.20
自引率
9.00%
发文量
84
审稿时长
6 months
期刊介绍: GIScience & Remote Sensing publishes original, peer-reviewed articles associated with geographic information systems (GIS), remote sensing of the environment (including digital image processing), geocomputation, spatial data mining, and geographic environmental modelling. Papers reflecting both basic and applied research are published.
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