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CALIBRATING CELLULAR AUTOMATA OF LAND USE/COVER CHANGE MODELS USING A GENETIC ALGORITHM

机译:使用遗传算法校准土地使用/覆盖改变模型的蜂窝自动机

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摘要

Spatially explicit land use / land cover (LUCC) models aim at simulating the patterns of change on the landscape. In order to simulate landscape structure, the simulation procedures of most computational LUCC models use a cellular automata to replicate the land use / cover patches. Generally, model evaluation is based on assessing the location of the simulated changes in comparison to the true locations but landscapes metrics can also be used to assess landscape structure. As model complexity increases, the need to improve calibration and assessment techniques also increases. In this study, we applied a genetic algorithm tool to optimize cellular automata's parameters to simulate deforestation in a region of the Brazilian Amazon. We found that the genetic algorithm was able to calibrate the model to simulate more realistic landscape in term of connectivity. Results show also that more realistic simulated landscapes are often obtained at the expense of the location coincidence. However, when considering processes such as the fragmentation impacts on biodiversity, the simulation of more realistic landscape structure should be preferred to spatial coincidence performance.
机译:空间明确的土地使用/陆地覆盖(LUCC)模型旨在模拟景观变化模式。为了模拟景观结构,大多数计算LUCC模型的仿真过程使用蜂窝自动机来复制土地使用/覆盖补丁。通常,模型评估基于评估与真实位置相比的模拟变化的位置,但是景观度量也可用于评估景观结构。随着模型复杂性的增加,改善校准和评估技术的需要也增加。在这项研究中,我们应用了一种遗传算法工具,优化蜂窝自动机的参数,以模拟巴西亚马逊区域的砍伐森林。我们发现遗传算法能够校准模型,以模拟连接方期的更现实的景观。结果表明,通常以符合符合的符合巧合的牺牲更具现实的模拟景观。但是,在考虑诸如对生物多样性的碎片影响之类的过程中,更现实的景观结构的模拟应该是最优选的空间符合性能。

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