Determination of future land use changes using remote sensing imagery and artificial neural network algorithm: A case study of Davao City, Philippines

Cristina E. Dumdumaya , Jonathan Salar Cabrera
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引用次数: 1

Abstract

Land use and land cover (LULC) changes refer to alterations in land use or physical characteristics. These changes can be caused by human activities, such as urbanization, agriculture, and resource extraction, as well as natural phenomena, for example, erosion and climate change. LULC changes significantly impact ecosystem services, biodiversity, and human welfare. In this study, LULC changes in Davao City, Philippines, were simulated, predicted, and projected using a multilayer perception artificial neural network (MLP-ANN) model. The MLP-ANN model was employed to analyze the impact of elevation and proximity to road networks (i.e., exploratory maps) on changes in LULC from 2017 to 2021. The predicted 2021 LULC map shows a high correlation to the actual LULC map of 2021, with a kappa index of 0.91 and a 96.68% accuracy. The MLP-ANN model was applied to project LULC changes in the future (i.e., 2030 and 2050). The results suggest that in 2030, the built-up area and trees are increasing by 4.50% and 2.31%, respectively. Unfortunately, water will decrease by up to 0.34%, and crops is about to decrease by approximately 3.25%. In the year 2050, the built-up area will continue to increase to 6.89%, while water and crops will decrease by 0.53% and 3.32%, respectively. Overall, the results show that anthropogenic activities influence the land's alterations. Moreover, the study illustrates how machine learning models can generate a reliable future scenario of land usage changes.

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利用遥感影像和人工神经网络算法确定未来土地利用变化——以菲律宾达沃市为例
土地利用和土地覆盖变化是指土地利用或物理特征的变化。这些变化可能是由人类活动造成的,如城市化、农业和资源开采,以及自然现象,如侵蚀和气候变化。LULC的变化对生态系统服务、生物多样性和人类福利产生了重大影响。在本研究中,使用多层感知人工神经网络(MLP-ANN)模型模拟、预测和投影了菲律宾达沃市的LULC变化。MLP-ANN模型用于分析2017年至2021年海拔和接近道路网络(即勘探地图)对LULC变化的影响。预测的2021年LULC图显示出与2021年实际LULC图的高度相关性,kappa指数为0.91,准确率为96.68%。MLP-ANN模型用于预测未来(即2030年和2050年)的LULC变化。结果表明,到2030年,建成区面积和树木分别增长了4.50%和2.31%。不幸的是,水资源将减少0.34%,作物将减少约3.25%。到2050年,建成区面积将继续增加到6.89%,而水资源和作物将分别减少0.53%和3.32%。总体而言,研究结果表明,人类活动会影响土地的变化。此外,该研究还说明了机器学习模型如何生成可靠的未来土地利用变化场景。
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