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Modeling Urban Land Cover Growth Dynamics Using Multi‑Temporal Satellite Images: A Case Study of Dhaka, Bangladesh

机译:利用多时相卫星图像模拟城市土地覆盖的增长动态:以孟加拉国达卡为例

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The primary objective of this research is to predict and analyze the future urban growth of Dhaka City using the Landsat satellite images of 1989, 1999 and 2009. Dhaka City Corporation (DCC) and its surrounding impact areas have been selected as the study area. At the beginning, a fisher supervised classification method has been applied to prepare the base maps with five land cover classes. In the next stage, three different models have been implemented to simulate the land cover map of Dhaka city of 2009. These have been named as “Stochastic Markov (St_Markov)” Model, “Cellular Automata Markov (CA_Markov)” Model and “Multi Layer Perceptron Markov (MLP_Markov)” Model. Then the best-fitted model has been selected by implementing a method to compare land cover categories in three maps: a reference map of time 1, a reference map of time 2 and a simulation map of time 2. This is how the “Multi Layer Perceptron Markov (MLP_Markov)” Model has been qualified as the most appropriate model for this research. Later, using the MLP_Markov model, the land cover map of 2019 has been predicted. The MLP_Markov model extrapolates that built-up area increases from 46% to 58% of the total study area during 2009–2019.
机译:这项研究的主要目的是使用1989年,1999年和2009年的Landsat卫星图像来预测和分析达卡市的未来城市发展。已选择达卡市公司(DCC)及其周围的影响区域作为研究区域。最初,采用了费希尔监督的分类方法来准备具有五个土地覆被类别的底图。在下一阶段,已经实现了三种不同的模型来模拟2009年达卡市的土地覆盖图。这些模型分别被命名为“随机马尔可夫(St_Markov)”模型,“元胞自动机马尔可夫(CA_Markov)”模型和“多层” Perceptron Markov(MLP_Markov)”模型。然后,通过实施一种在三种地图中比较土地覆被类别的方法,来选择最适合的模型:时间1的参考图,时间2的参考图和时间2的模拟图。这就是“多层” Perceptron Markov(MLP_Markov)模型已被证明是该研究最合适的模型。后来,使用MLP_Markov模型预测了2019年的土地覆盖图。 MLP_Markov模型推断出,在2009–2019年期间,建筑面积从总研究面积的46%增加到58%。

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