LAND USE/LAND COVER CHANGE PREDICTION USING MULTI-TEMPORAL SATELLITE IMAGERY AND MULTI-LAYER PERCEPTRON MARKOV MODEL

H. Nguyen, T. Pham, M. T. Doan, P. T. Tran
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引用次数: 5

Abstract

Abstract. This paper aims to predict the trend of land use land cover (LULC) changes in Dak Nong province over time. Data from Landsat images captured in 2009, 2015, and 2018 was employed to analyze and predict the spatial distributions of LULC categories. The Random Forest (RF) was adopted to classify the images into ten different LULC classes. Besides, integration of Multi-Layer Perceptron Markov Neural Network (MLP-NN) with Markov Chain (MC) was applied to predict the future LULC changes in the region based on the change detection over the previous years. For all classified images, overall accuracy (OA) ranged from 77.35% to 84.55% with kappa (K) coefficient index ranging from 0.75 to 0.8. The results revealed that the annual population growth together with social-economic development was regarded as major drives for land conversion in the area. The predicted map showed a significant decrease trend inthe forest classes by 2025, accounting for 23 thousand ha. However, residential areas, rubber, and agricultural land classes are predicted to rise to 460 ha, 3,000 ha, and 20,000 ha, respectively. The simulated model and calibrated area data may be a vital contribution to sustainable development efforts of the local based on the dynamics of LULC and future LULC change scenarios. Overall, ascertaining the complex interface related to changes in land use and its major drivers over time provides useful information predict to explore the future trend of LULC changes, establish alternative land-use schemes and serve as guidelines for urban planning policymakers.
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基于多时相卫星影像和多层感知器马尔可夫模型的土地利用/土地覆盖变化预测
摘要本文旨在预测大农省土地利用土地覆被(LULC)随时间的变化趋势。利用2009年、2015年和2018年的Landsat图像数据,分析和预测了LULC类别的空间分布。采用随机森林(Random Forest, RF)将图像分为10个不同的LULC类。此外,基于前几年的变化检测,将多层感知器马尔可夫神经网络(MLP-NN)与马尔可夫链(MC)相结合,预测区域未来的LULC变化。所有分类图像的总体准确率(OA)在77.35% ~ 84.55%之间,kappa (K)系数指数在0.75 ~ 0.8之间。结果表明,人口年增长和社会经济发展是该地区土地非农化的主要驱动力。预测图显示,到2025年,森林种类有明显减少的趋势,约为2.3万公顷。但是,住宅用地、橡胶用地、农用地将分别增加到460公顷、3000公顷、2万公顷。模拟模型和校准面积数据可能对基于土地利用碳储量动态和未来土地利用碳储量变化情景的地方可持续发展努力作出重要贡献。总体而言,确定与土地利用变化及其主要驱动因素相关的复杂界面,可以提供有用的信息来预测土地利用成本变化的未来趋势,建立替代土地利用方案,并为城市规划决策者提供指导。
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