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A heuristic cellular automata approach for modelling urban land-use change based on simulated annealing

机译:基于模拟退火的启发式元胞自动机方法用于城市土地利用变化建模

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This article presents a novel cellular automata (CA) approach to simulate the spatio-temporal process of urban land-use change based on the simulated annealing (SA) algorithm. The SA algorithm enables dynamic optimisation of the CA's transition rules that would otherwise be difficult to configure using conventional mathematical methods. In this heuristic approach, an objective function is constructed based on a theoretical accumulative disagreement between the simulated land-use pattern and the actual land-use pattern derived from remotely sensed imagery. The function value that measures the mismatch between the actual and the simulated land-use patterns would be minimised randomly through the SA process. Hence, a set of attribution parameters that can be used in the CA model is achieved. An SA optimisation tool was developed using Matlab and incorporated into the cellular simulation in GIS to form an integrated SACA model. An application of the SACA model to simulate the spatio-temporal process of land-use change in Jinshan District of Shanghai Municipality, PR China, from 1992 to 2008 shows that this modelling approach is efficient and robust and can be used to reconstruct historical urban land-use patterns to assist with urban planning policy-making and actions. Comparison of the SACA model with a typical CA model based on a logistic regression method without the SA optimisation (also known as LogCA) shows that the SACA model generates better simulation results than the LogCA model, and the improvement of the SACA over the LogCA model is largely attributed to higher loca-tional accuracy, a feature desirable in most spatially explicit simulations of geographical processes.
机译:本文提出了一种新的元胞自动机(CA)方法,以基于模拟退火(SA)算法来模拟城市土地利用变化的时空过程。 SA算法可以动态优化CA的转换规则,否则将很难使用常规数学方法进行配置。在这种启发式方法中,基于模拟的土地利用模式与从遥感影像得出的实际土地利用模式之间的理论累积分歧,构建了目标函数。通过SA过程将随机地最小化用于测量实际土地使用方式与模拟土地使用方式之间的不匹配的函数值。因此,获得了可以在CA模型中使用的一组归因参数。使用Matlab开发了SA优化工具,并将其并入GIS的蜂窝仿真中以形成集成的SACA模型。 SACA模型在模拟上海市金山区1992年至2008年土地利用变化的时空过程中的应用表明,该建模方法是有效且鲁棒的,可用于重建历史城市土地使用模式来协助城市规划决策和行动。 SACA模型与基于Logistic回归方法且没有SA优化的典型CA模型(也称为LogCA)的比较表明,SACA模型比LogCA模型产生更好的仿真结果,并且SACA优于LogCA模型很大程度上归因于较高的位置精度,这是地理过程的大多数空间显式模拟所需要的功能。

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