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Enhancing the calibration of an urban growth model using a memetic algorithm

机译:使用模因算法增强城市增长模型的校准

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摘要

At present, many approaches and models have been developed to perform spatially explicit simulations that mimic observed land use and land cover changes (LULC) for a given area. Calibration of such models is often performed using comparatively standard 'off-the-shelf machine-learning algorithms that are not necessarily suited to perform effectively within the model's implementation. This method becomes problematic when the computational costs of applying an evaluation function to determine the goodness-of-fit are high; calibration using 'standard' algorithms often requires many iterations to achieve satisfactory outcomes. Furthermore, in some cases, future LULC projections manifest significant changes in trends, particularly when increasing the number of LULC classes in the simulation and the number of associated transition rules. This study presents an adapted machine-learning algorithm to optimize a parameter set applied in a Dinamica-EGO-based LULC change model. A sequentially applied memetic algorithm is applied to optimize a vast parameter set by extending a genetic algorithm with a local search function. To achieve consistent long-term projections, a 2-stage approach is applied in which the expansion of the urban extent and diversification of urban LULC classes are calculated sequentially. The outcomes repeatedly show a much faster convergence toward a high goodness-of-fit; significantly fewer iterations and a smaller population size can be used to attain a similar performance level than when using a standard GA-enhanced calibration. Furthermore, the observed spatial trends are maintained for long-term projections using 5-year intervals. In the current application, the model is applied to the rapidly growing metropolitan area of Beijing, China.
机译:目前,已经开发出许多方法和模型来执行空间明确的模拟,以模拟给定区域的观察到的土地利用和土地覆被变化(LULC)。通常使用比较标准的“现成的机器学习算法”来执行此类模型的校准,这些算法不一定适合在模型的实现中有效执行。当应用评估函数来确定拟合优度的计算成本很高时,该方法就会出现问题。使用“标准”算法进行校准通常需要多次迭代才能获得满意的结果。此外,在某些情况下,未来的LULC预测会显示出趋势上的重大变化,尤其是在模拟中增加LULC类的数量以及相关转换规则的数量时。这项研究提出了一种自适应的机器学习算法,以优化在基于Dinamica-EGO的LULC变化模型中应用的参数集。通过扩展具有局部搜索功能的遗传算法,可以应用顺序应用的模因算法来优化庞大的参数集。为了实现一致的长期预测,应用了一种两阶段方法,其中依次计算了城市范围的扩展和城市LULC类的多样性。结果反复显示出更快地趋向于高拟合优度;与使用标准GA增强校准相比,可以使用明显更少的迭代和更小的总体大小来达到相似的性能水平。此外,使用5年的时间间隔可以长期观察到观测到的空间趋势。在当前的应用中,该模型已应用于中国北京快速发展的大都市地区。

著录项

  • 来源
    《Computers,environment and urban systems》 |2015年第3期|53-65|共13页
  • 作者单位

    Flood Resilience Group, Dep. Water Science and Engineering, UNESCO-IHE Institute for Water Education, Westvest 7,2611 AX Delft, Netherlands,Hydraulic Engineering, Faculty of Civil Engineering and Geosciences, Delft University of Technology, Stevinweg 1, 2628 CN Delft, Netherlands;

    Flood Resilience Group, Dep. Water Science and Engineering, UNESCO-IHE Institute for Water Education, Westvest 7,2611 AX Delft, Netherlands;

    Flood Resilience Group, Dep. Water Science and Engineering, UNESCO-IHE Institute for Water Education, Westvest 7,2611 AX Delft, Netherlands,Pennine Water Group, Department of Civil and Structural Engineering, University of Sheffield, Sir Frederick Mappin Building, Mappin Street, Sheffield S1 3JD, United Kingdom;

    Flood Resilience Group, Dep. Water Science and Engineering, UNESCO-IHE Institute for Water Education, Westvest 7,2611 AX Delft, Netherlands,Hydraulic Engineering, Faculty of Civil Engineering and Geosciences, Delft University of Technology, Stevinweg 1, 2628 CN Delft, Netherlands;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Urban growth; Calibration; Optimization; Memetic algorithm; Beijing; Cellular automata;

    机译:城市发展;校准;优化;模因算法;北京;细胞自动机;

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