通过机器学习与谷歌地球引擎的整合增强实时洪水影响评估能力:一种综合方法。

IF 5.8 3区 环境科学与生态学 0 ENVIRONMENTAL SCIENCES Environmental Science and Pollution Research Pub Date : 2024-04-03 DOI:10.1007/s11356-024-33090-7
Nafis Sadik Khan, Sujit Kumar Roy, Swapan Talukdar, Mostaim Billah, Ashik Iqbal, Rashed Uz Zzaman, Arif Chowdhury, Sania B. Mahtab, Javed Mallick
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引用次数: 0

摘要

洪水造成了巨大的生命和财产损失,特别是在孟加拉国西北部这样的洪水易发地区。及时准确地评价洪水影响对有效的洪水管理和决策至关重要。本研究展示了一种利用机器学习和谷歌Earth Engine实现实时洪水评估的综合方法。利用Sentinel-1和谷歌Earth Engine平台的合成孔径雷达(SAR)数据,生成了2020年Kurigram和Lalmonirhat洪水的近实时洪水图。一种自动阈值技术对洪水面积进行量化。在土地利用/土地覆盖(LULC)分析中,利用了Sentinel-2的高分辨率和机器学习模型,如人工神经网络(ANN)、随机森林(RF)和支持向量机(SVM)。基于准确率、kappa、平均F1评分、平均灵敏度、平均特异性、平均阳性预测值、平均负值、平均精密度、平均召回率、平均检出率和平均平衡准确率等指标,ANN提供了最佳的LULC映射,准确率为0.94。结果显示,在7月份的洪水高峰期,超过60万人暴露在洪水中,约占人口的17%。支持机器学习的LULC地图可靠地识别出易受影响的地区,以优先考虑洪水管理。7月,一半以上的农田被淹。这项研究展示了整合SAR、机器学习和云计算的潜力,通过实时监测和准确的LULC地图,为当局提供有效的洪水响应。拟议的综合方法可以帮助利益相关者制定数据驱动的洪水管理战略,以减少影响。
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Empowering real-time flood impact assessment through the integration of machine learning and Google Earth Engine: a comprehensive approach

Floods cause substantial losses to life and property, especially in flood-prone regions like northwestern Bangladesh. Timely and precise evaluation of flood impacts is critical for effective flood management and decision-making. This research demonstrates an integrated approach utilizing machine learning and Google Earth Engine to enable real-time flood assessment. Synthetic aperture radar (SAR) data from Sentinel-1 and the Google Earth Engine platform were employed to generate near real-time flood maps of the 2020 flood in Kurigram and Lalmonirhat. An automatic thresholding technique quantified flooded areas. For land use/land cover (LULC) analysis, Sentinel-2’s high resolution and machine learning models like artificial neural networks (ANN), random forests (RF) and support vector machines (SVM) were leveraged. ANN delivered the best LULC mapping with 0.94 accuracy based on metrics like accuracy, kappa, mean F1 score, mean sensitivity, mean specificity, mean positive predictive value, mean negative value, mean precision, mean recall, mean detection rate and mean balanced accuracy. Results showed over 600,000 people exposed at peak inundation in July—about 17% of the population. The machine learning-enabled LULC maps reliably identified vulnerable areas to prioritize flood management. Over half of croplands flooded in July. This research demonstrates the potential of integrating SAR, machine learning and cloud computing to empower authorities through real-time monitoring and accurate LULC mapping essential for effective flood response. The proposed comprehensive methodology can assist stakeholders in developing data-driven flood management strategies to reduce impacts.

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来源期刊
CiteScore
8.70
自引率
17.20%
发文量
6549
审稿时长
3.8 months
期刊介绍: Environmental Science and Pollution Research (ESPR) serves the international community in all areas of Environmental Science and related subjects with emphasis on chemical compounds. This includes: - Terrestrial Biology and Ecology - Aquatic Biology and Ecology - Atmospheric Chemistry - Environmental Microbiology/Biobased Energy Sources - Phytoremediation and Ecosystem Restoration - Environmental Analyses and Monitoring - Assessment of Risks and Interactions of Pollutants in the Environment - Conservation Biology and Sustainable Agriculture - Impact of Chemicals/Pollutants on Human and Animal Health It reports from a broad interdisciplinary outlook.
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