Spatio-temporal change and driving mechanisms of land use/cover in Qarhan Salt Lake area during from 2000 to 2020, based on machine learning

IF 0.7 4区 地球科学 Q4 GEOGRAPHY, PHYSICAL
Chao Yue , ZiTao Wang , JianPing Wang
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Abstract

The significance of land use classification has garnered attention due to its implications for climate and ecosystems. This paper establishes a connection by introducing and applying automatic machine learning (Auto ML) techniques to salt lake landscape, with a specific focus on the Qarhan Salt Lake area. Utilizing Landsat-5 Thematic Mappe (TM) and Landsat-8 Operational Land Imager (OLI) imagery, six machine learning algorithms were employed to classify eight land use types from 2000 to 2020. Results show that XGBLD performed optimally with 77% accuracy. Over two decades, salt fields, construction land, and water areas increased due to transformations in saline land and salt flats. The exposed lakes area exhibited a rise followed by a decline, mainly transforming into salt flats. Agricultural land areas slightly increased, influenced by both human activities and climate. Our analysis reveals a strong correlation between salt fields and precipitation, while exposed lakes demonstrate a significant negative correlation with evaporation and temperature, highlighting their vulnerability to climate change. Additionally, human water usage was identified as a significant factor impacting land use change, emphasizing the dual influence of anthropogenic activities and natural factors. This paper addresses the void in the application of Auto ML in salt lake environments and provides valuable insights into the dynamic evolution of land use types in the Qarhan Salt Lake region.
基于机器学习的2000 - 2020年察尔汗盐湖地区土地利用/覆被时空变化及驱动机制
土地利用分类的重要性因其对气候和生态系统的影响而受到关注。本文将自动机器学习(Auto ML)技术引入并应用于盐湖景观,并以察尔汗盐湖地区为研究对象,建立了两者之间的联系。利用Landsat-5主题地图(TM)和Landsat-8操作土地成像仪(OLI)图像,采用6种机器学习算法对2000 - 2020年的8种土地利用类型进行了分类。结果表明,XGBLD的最佳准确率为77%。20多年来,盐田、建设用地和水域因盐碱地和盐滩的改造而增加。露湖面积呈先上升后下降的趋势,主要转变为盐滩。受人类活动和气候的影响,农业用地面积略有增加。我们的分析表明,盐田与降水之间存在很强的相关性,而暴露的湖泊与蒸发和温度之间存在显著的负相关,突出了它们对气候变化的脆弱性。此外,人类用水是影响土地利用变化的重要因素,强调了人为活动和自然因素的双重影响。本文解决了Auto ML在盐湖环境中应用的空白,为察尔汗盐湖地区土地利用类型的动态演变提供了有价值的见解。
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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