Identifying land use land cover dynamics using machine learning method and GIS approach in Karaivetti, Tamil Nadu

Thylashri Sivasubramaniyan, Rajalakshmi Nagarnaidu Rajaperumal
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Abstract

An important analytical tool for tracking, mapping, and quantifying changes in land use and land cover (LULC) across time serves as the use of machine learning techniques. The environment and human activities both have the potential to change how land is used and covered. Classifying LULC types at different spatial scales has been effectively achieved by models like classification and regression trees (CART), support vector machines (SVM), extreme gradient boosting (XGBoost), and random forests (RF). To prepare images from Landsat before sending and analysis for an aspect of our research, we employed the Google Earth Engine. High-resolution imagery from Google Earth images were used to assess each kind of method and field data collection. Utilizing Geographic Information System (GIS) techniques, LULC fluctuations between 2015 and 2020 were assessed. According to our results, XGBoost, SVM, and CART models proved superior by the RF model regarding categorization precision. Considering the data, we collected between 2015 and 2020, from 11.57 hectares (1.74%) in 2015 to 184.19 hectares (27.65%) in 2020, the barren land experienced the greatest variation, that made an immense effect. Utilizing the support of satellite imagery from the Karaivetti Wetland, our work combines novel GIS techniques and machine learning strategies to LULC monitoring. The created land cover maps provide a vital benchmark that will be useful to authorities in formulating policies, managing for sustainability, and keeping track of degradation.
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利用机器学习方法和地理信息系统识别泰米尔纳德邦 Karaivetti 的土地利用和土地覆被动态
使用机器学习技术是跟踪、绘制和量化土地利用和土地覆被 (LULC) 随时间发生的变化的一个重要分析工具。环境和人类活动都有可能改变土地的使用和覆盖方式。通过分类和回归树(CART)、支持向量机(SVM)、极梯度提升(XGBoost)和随机森林(RF)等模型,可以有效地对不同空间尺度的 LULC 类型进行分类。为了在发送和分析之前准备好大地遥感卫星的图像,以用于我们研究的一个方面,我们使用了谷歌地球引擎。谷歌地球图像中的高分辨率图像被用于评估每种方法和实地数据收集。利用地理信息系统(GIS)技术,评估了 2015 年至 2020 年间土地利用、土地利用变化和土地利用变化的波动情况。结果表明,XGBoost、SVM 和 CART 模型在分类精度方面优于 RF 模型。考虑到我们收集的 2015 年至 2020 年的数据,从 2015 年的 11.57 公顷(1.74%)到 2020 年的 184.19 公顷(27.65%),贫瘠土地经历了最大的变化,产生了巨大的影响。我们的工作利用卡拉韦蒂湿地的卫星图像,将新型地理信息系统技术和机器学习策略结合到土地覆被监测中。绘制的土地覆被图为当局制定政策、进行可持续管理和跟踪退化情况提供了重要基准。
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