基于机器学习技术的半干旱区沙漠化监测模型验证

IF 1.5 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
José Francisco da Cruz Neto , Francisco Charles dos Santos Silva , Carlos André Alves de Souza , Alexandre Maniçoba da Rosa Ferraz Jardim , Wilma Roberta dos Santos , Lady Daiane Costa de Sousa Martins , Wagner Martins dos Santos , Alan Mario Zuffo , Thieres George Freire da Silva
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引用次数: 0

摘要

荒漠化是气候因素、人类活动不足和自然资源的不可持续利用相互作用的结果,是一个全球性的令人关切的现象。它的历史根源与集约化农业、森林砍伐和土地利用变化有关,因此数学模型的开发对于可持续地识别和管理这些地区至关重要。这些模型纳入了气候模式、土地利用和退化指标等变量,从而能够准确评估特定区域荒漠化的风险和程度。本研究的目的是评价RisDes_Index模型在确定受荒漠化影响地区和评估环境退化严重程度方面的有效性。该模型是基于从Caatinga环境、湿地和荒漠化地区收集的轨道信息和现场数据开发的。这项研究是在巴西中部塞特奥地区进行的,包括弗洛雷斯塔、Cabrobó、贝尔萨姆·斯弗朗西斯科、卡纳贝拉·达佩尼亚、伊塔库鲁巴和Orocó-an已知受沙漠化影响的地区。该模型对荒漠化环境的识别具有较高的有效性。RisDes_Index模型能够应用于全球各个地区的一个关键特征是其低计算能力要求,不像机器学习和随机森林,尽管它们具有高识别能力,但需要大量的计算资源。然而,RisDes_Index模型对研究人员的操作能力要求更高,这可能会使某些研究由于缺乏必要的数据而无法实现。RisDes_Index模型与植被指数(NDVI、SAVI、LAI、反照率、TGSI和TSoil)之间没有相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validation of a desertification monitoring model in a semiarid region with the support of machine learning techniques
Desertification is a global and concerning phenomenon resulting from the interplay of climatic factors, inadequate human activities, and unsustainable use of natural resources. Its historical roots are linked to intensive agriculture, deforestation, and land-use changes, making the development of mathematical models crucial to sustainably identify and manage these areas. These models incorporate variables such as climatic patterns, land use, and degradation indicators, enabling an accurate assessment of the risk and extent of desertification in specific regions. The objective of this study was to evaluate the effectiveness of the RisDes_Index model in identifying areas affected by desertification and assessing the severity of environmental degradation. The model was developed based on orbital information and in situ data collected from Caatinga environments, wetlands, and areas undergoing desertification. The study was conducted in the Sertão Central region of Brazil, covering the municipalities of Floresta, Cabrobó, Belém do São Francisco, Carnaubeira da Penha, Itacuruba, and Orocó—an area known to be affected by desertification. The model demonstrated high efficacy in identifying desertified environments. One key feature that allows the RisDes_Index model to be applied to various global regions is its low computational power requirement, unlike machine learning and random forests, which, despite their high identification capacity, demand significant computational resources. However, the RisDes_Index model requires a higher operational capacity from researchers, which may render certain studies unfeasible due to a lack of necessary data. No correlations were found between the RisDes_Index model and vegetation indices (NDVI, SAVI, LAI, albedo, TGSI, and TSoil).
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来源期刊
Journal of South American Earth Sciences
Journal of South American Earth Sciences 地学-地球科学综合
CiteScore
3.70
自引率
22.20%
发文量
364
审稿时长
6-12 weeks
期刊介绍: Papers must have a regional appeal and should present work of more than local significance. Research papers dealing with the regional geology of South American cratons and mobile belts, within the following research fields: -Economic geology, metallogenesis and hydrocarbon genesis and reservoirs. -Geophysics, geochemistry, volcanology, igneous and metamorphic petrology. -Tectonics, neo- and seismotectonics and geodynamic modeling. -Geomorphology, geological hazards, environmental geology, climate change in America and Antarctica, and soil research. -Stratigraphy, sedimentology, structure and basin evolution. -Paleontology, paleoecology, paleoclimatology and Quaternary geology. New developments in already established regional projects and new initiatives dealing with the geology of the continent will be summarized and presented on a regular basis. Short notes, discussions, book reviews and conference and workshop reports will also be included when relevant.
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