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首页> 外文期刊>Sensors >Urban Growth Modeling Using Cellular Automata with Multi-Temporal Remote Sensing Images Calibrated by the Artificial Bee Colony Optimization Algorithm
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Urban Growth Modeling Using Cellular Automata with Multi-Temporal Remote Sensing Images Calibrated by the Artificial Bee Colony Optimization Algorithm

机译:人工蜂群优化算法校准的多时相遥感影像基于元胞自动机的城市发展建模

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Cellular Automata (CA) is one of the most common techniques used to simulate the urbanization process. CA-based urban models use transition rules to deliver spatial patterns of urban growth and urban dynamics over time. Determining the optimum transition rules of the CA is a critical step because of the heterogeneity and nonlinearities existing among urban growth driving forces. Recently, new CA models integrated with optimization methods based on swarm intelligence algorithms were proposed to overcome this drawback. The Artificial Bee Colony (ABC) algorithm is an advanced meta-heuristic swarm intelligence-based algorithm. Here, we propose a novel CA-based urban change model that uses the ABC algorithm to extract optimum transition rules. We applied the proposed ABC-CA model to simulate future urban growth in Urmia (Iran) with multi-temporal Landsat images from 1997, 2006 and 2015. Validation of the simulation results was made through statistical methods such as overall accuracy, the figure of merit and total operating characteristics (TOC). Additionally, we calibrated the CA model by ant colony optimization (ACO) to assess the performance of our proposed model versus similar swarm intelligence algorithm methods. We showed that the overall accuracy and the figure of merit of the ABC-CA model are 90.1% and 51.7%, which are 2.9% and 8.8% higher than those of the ACO-CA model, respectively. Moreover, the allocation disagreement of the simulation results for the ABC-CA model is 9.9%, which is 2.9% less than that of the ACO-CA model. Finally, the ABC-CA model also outperforms the ACO-CA model with fewer quantity and allocation errors and slightly more hits.
机译:元胞自动机(Cellular Automata,CA)是用于模拟城市化过程的最常见技术之一。基于CA的城市模型使用过渡规则来提供城市增长和城市动态的空间格局。由于城市增长驱动力之间存在异质性和非线性,因此确定CA的最佳过渡规则是至关重要的一步。最近,提出了新的基于群体智能算法与优化方法集成的CA模型,以克服这一缺陷。人工蜂群(ABC)算法是一种基于元启发式群智能的高级算法。在这里,我们提出了一种新颖的基于CA的城市变化模型,该模型使用ABC算法来提取最佳过渡规则。我们使用拟议的ABC-CA模型通过1997年,2006年和2015年的多时态Landsat图像模拟了乌尔米亚(伊朗)的未来城市增长。通过统计方法(例如总体准确性,优值)对模拟结果进行了验证和总运行特性(TOC)。此外,我们通过蚁群优化(ACO)校准了CA模型,以评估我们提出的模型与类似的群体智能算法方法相比的性能。我们发现,ABC-CA模型的整体准确性和品质因数分别为90.1%和51.7%,分别比ACO-CA模型高2.9%和8.8%。此外,ABC-CA模型的模拟结果分配差异为9.9%,比ACO-CA模型的分配差异少2.9%。最后,ABC-CA模型也比ACO-CA模型表现更好,其数量和分配错误更少,命中率略高。

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