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Critical role of temporal contexts in evaluating urban cellular automata models
GIScience & Remote Sensing ( IF 6.0 ) Pub Date : 2021-07-05 , DOI: 10.1080/15481603.2021.1946261
Xuecao Li 1, 2 , Jie Zhang 3 , Zhouyuan Li 4 , Tengyun Hu 5 , Qiusheng Wu 6 , Jun Yang 7 , Jianxi Huang 1, 2 , Wei Su 1, 2 , Yuanyuan Zhao 1, 2 , Yuyu Zhou 8 , Xiaoping Liu 9 , Peng Gong 7 , Xi Wang 10
Affiliation  

ABSTRACT

Cellular automata (CA)-based models have been extensively used in urban expansion modeling because of their simplicity, flexibility and intuitiveness. Previous studies on CA-based urban growth modeling have mainly focused on the process of spatial allocation of increased urban lands; however, the temporal contexts during the simulation have not been properly explored. In this study, we examined the influence of temporal contexts of initial seeds (i.e. urban extent maps), transition rules, and urban demands (i.e. urban areas) on the CA-based urban growth modeling in Beijing, China, over a long period of 1984–2013. Comparison of the annual model outputs with the time series data of annual urban extent maps from satellite observations revealed that the overall accuracy of urban growth modeling decreased by approximately 12%, with an increase in iterations from 1984–2013. By contrast, the value of the figure of merit (FoM) increased to 26.57%. The continuous change of FoM during the modeling suggests a “spin-up” effect, a rapid increase in FoM at the beginning of modeling, of CA-based urban growth models, and this effect is primarily attributed to the neighborhood component in CA. The effect of temporal contexts reflected by components of initial seeds and urban demands in CA-based urban growth models have considerable impacts on the model performance, i.e. the FoM increased by 7% when using actual urban demands during each iteration instead of the commonly used linear growth during the modeling period. Hence, we suggest that more efforts regarding the temporal contexts in CA-based modeling are required, to better understand error propagation and uncertainty assessment.

更新日期:2021-07-05
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