Machine learning approach to detect Land Use Land Cover (LULC) change in Chure region of Sarlahi district, Nepal

Samit Kafle, Sandeep K.C., Beeju Poudyal, S. Devkota
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引用次数: 1

Abstract

Land Use and Land Cover (LULC) changes are major global environmental issues, affecting ecological systems, climate change, and biodiversity. The Chure region of the Sarlahi district in Nepal is a critical ecological zone that has experienced significant LULC changes in recent years. In this study, our aim was to apply a machine learning approach to detect LULC changes in the Chure region using Google Earth Engine (GEE) and the Random Forest classifier. We utilized Landsat imagery of 2007 and 2022 to generate land cover maps for each year, which were then compared to identify changes over time. The major findings of this study indicate that the forest cover in the region has increased by approximately 16% over the past 15 years, while the agriculture and built-up areas have also shown a significant increase. Conversely, the barren land and water areas have decreased. The classifier obtained an overall accuracy of 85.7% and a kappa coefficient of 81.2% for the year 2022, and an overall accuracy of 82.2% and a kappa coefficient of 76.8% for the year 2007, which demonstrates the high accuracy of the proposed approach. The use of GEE and random forest classifiers provided a cost-effective and efficient method for analysing large datasets and producing accurate LULC maps. Our findings can inform policymakers and conservationists about the need for sustainable land management practices to preserve the ecological integrity of the Chure region. The approach can be applied to other regions to monitor and manage LULC changes and support effective conservation efforts.
尼泊尔Sarlahi地区Chure地区土地利用土地覆盖(LULC)变化的机器学习检测方法
土地利用和土地覆盖变化是影响生态系统、气候变化和生物多样性的重大全球性环境问题。尼泊尔Sarlahi地区的Chure地区是一个重要的生态区,近年来LULC发生了重大变化。在本研究中,我们的目标是使用谷歌地球引擎(GEE)和随机森林分类器应用机器学习方法来检测Chure地区的LULC变化。我们利用2007年和2022年的陆地卫星图像生成每年的土地覆盖地图,然后将其进行比较,以确定随时间的变化。本研究的主要结果表明,在过去的15年中,该地区的森林覆盖面积增加了约16%,而农业和建成区也显示出显著的增加。相反,贫瘠的土地和水域减少了。该分类器在2022年的总体准确率为85.7%,kappa系数为81.2%,2007年的总体准确率为82.2%,kappa系数为76.8%,表明该方法具有较高的准确率。GEE和随机森林分类器的使用为分析大型数据集和生成准确的LULC地图提供了一种经济有效的方法。我们的研究结果可以让决策者和自然资源保护者了解可持续土地管理实践的必要性,以保护Chure地区的生态完整性。该方法可应用于其他地区,以监测和管理LULC的变化,并支持有效的保护工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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