Multitemporal Spectral Analysis for Algae Detection in an Eutrophic Lake using Sentinel 2 Images

G. Alba, Ferral Anabella, S. Marcelo, Shimoni Michal
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引用次数: 4

Abstract

Eutrophication is characterized by excessive plant and algal growth due to the increased of organic matter, carbon dioxide and nutrients in water body. Although eutrophication naturally occurs over centuries as lakes age, human activities have accelerated it processes and caused dramatic changes to the aquatic ecosystems including elevated algae blooms and risk for hypoxia as well as degradation in the quality of drinking water and fisheries. Monitoring eutrophic processes is therefore highly important to human health and to the aquatic environment. However, the spatial and seasonal distribution of the phenomena and its dynamic are difficult to be resolved using conventional methods as water sampling or sparse acquisition of remote sensing data. This research work proposes a methodology that takes advantage of the high temporal resolution of Sentinel-2 (S2) for monitoring eutrophic reservoir. Specifically, it uses large temporal series of S2 images and advanced temporal unmixing model to estimate the abundance of [Chl-a] and algae species in San Roque reservoir, Argentina, in the period August 2016 to August 2019. The spatial patterns and the temporal tendencies of these aquatic indicators, that have a direct link to Eutrophication, were analysed and evaluated using in situ data in order to assess their contribution to the local water management.
利用Sentinel - 2图像进行富营养化湖泊藻类检测的多时相光谱分析
富营养化的特征是水体中有机质、二氧化碳和营养物质的增加导致植物和藻类的过度生长。虽然富营养化在湖泊老化过程中自然发生了几个世纪,但人类活动加速了这一过程,并对水生生态系统造成了巨大变化,包括藻类大量繁殖、缺氧风险增加以及饮用水和渔业质量下降。因此,监测富营养化过程对人类健康和水生环境极为重要。然而,利用传统的水样采集或遥感数据的稀疏采集等方法,难以确定该现象的空间和季节分布及其动态。本研究提出了一种利用Sentinel-2 (S2)高时间分辨率监测富营养化水库的方法。具体而言,利用S2大时间序列图像和先进的时间解混模型估算了阿根廷San Roque水库2016年8月至2019年8月期间[Chl-a]和藻类物种的丰度。利用现场数据对这些与富营养化有直接联系的水生指标的空间格局和时间趋势进行了分析和评价,以评估其对当地水管理的贡献。
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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