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Knowledge Transfer for Large-Scale Urban Growth Modeling Based on Formal Concept Analysis

机译:基于形式概念分析的大规模城市增长建模知识转移

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摘要

Cellular automata (CA) are useful for studies on urban growth and land-use changes. Although various methods have been developed to define transition rules, modeling urban growth of large areas remains a tough challenge owing to heterogeneous geographical features. To address the problem, we present a novel method based on the combination of Formal Concept Analysis (FCA) and knowledge transfer techniques. FCA is used to solicit association rules among cities within a large area. This method can provide a theoretical basis for the knowledge transfer process. A cutting-edge algorithm called TrAdaBoost is then integrated with the commonly-used Logistic-CA as the modeling framework. The proposed method is applied to the urban growth modeling of Guangdong Province, a large region with 21 cities in China, from 2005 to 2008. Compared with traditional methods, this method can achieve better results at the provincial and local levels, according to the experiments. The combination of FCA and knowledge transfer is expected to provide a useful tool for calibrating large-scale urban CA models.
机译:元胞自动机(CA)可用于研究城市增长和土地利用变化。尽管已经开发出各种方法来定义过渡规则,但是由于地理特征的多样性,对大面积城市增长进行建模仍然是一个艰巨的挑战。为了解决这个问题,我们提出了一种基于形式概念分析(FCA)和知识转移技术相结合的新颖方法。 FCA用于征集大面积城市之间的关联规则。该方法可以为知识转移过程提供理论依据。然后将称为TrAdaBoost的尖端算法与常用的Logistic-CA集成为建模框架。将该方法应用于2005年至2008年中国21个城市的大区域广东省的城市增长模型。实验结果表明,与传统方法相比,该方法在省级和地方级均能取得较好的效果。 。 FCA和知识转移的结合有望为校准大型城市CA模型提供有用的工具。

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