首页> 外文会议>International Symposium on Remote Sensing of Environment >CAN SINGLE EMPIRICAL ALGORITHMS ACCURATELY PREDICT INLAND SHALLOW WATER QUALITY STATUS FROM HIGH RESOLUTION, MULTI-SENSOR, MULTI-TEMPORAL SATELLITE DATA?
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CAN SINGLE EMPIRICAL ALGORITHMS ACCURATELY PREDICT INLAND SHALLOW WATER QUALITY STATUS FROM HIGH RESOLUTION, MULTI-SENSOR, MULTI-TEMPORAL SATELLITE DATA?

机译:单一经验算法能否从高分辨率,多传感器,多时间卫星数据中准确预测内陆浅水水质状态?

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摘要

Assessing and monitoring water quality status through timely, cost effective and accurate manner is of fundamental importance for numerous environmental management and policy making purposes. Therefore, there is a current need for validated methodologies which can effectively exploit, in an unsupervised way, the enormous amount of earth observation imaging datasets from various high-resolution satellite multispectral sensors. To this end, many research efforts are based on building concrete relationships and empirical algorithms from concurrent satellite and in-situ data collection campaigns. We have experimented with Landsat 7 and Landsat 8 multi-temporal satellite data, coupled with hyperspectral data from a field spectroradiometer and in-situ ground truth data with several physico-chemical and other key monitoring indicators. All available datasets, covering a 4 years period, in our case study Lake Karla in Greece, were processed and fused under a quantitative evaluation framework. The performed comprehensive analysis posed certain questions regarding the applicability of single empirical models across multi-temporal, multi-sensor datasets towards the accurate prediction of key water quality indicators for shallow inland systems. Single linear regression models didn't establish concrete relations across multi-temporal, multi-sensor observations. Moreover, the shallower parts of the inland system followed, in accordance with the literature, different regression patterns. Landsat 7 and 8 resulted in quite promising results indicating that from the recreation of the lake and onward consistent per-sensor, per-depth prediction models can be successfully established. The highest rates were for chl-a (r~2=89.80%), dissolved oxygen (r~2=88.53%), conductivity (r~2=88.18%), ammonium (r~2=87.2%) and pH (r~2=86.35%), while the total phosphorus (r~2=70.55%) and nitrates (r~2=55.50%) resulted in lower correlation rates.
机译:对于许多环境管理和政策制定目的而言,通过及时,经济有效和准确的方式评估和监控水质状况至关重要。因此,当前需要一种经过验证的方法,该方法可以以无监督的方式有效地利用来自各种高分辨率卫星多光谱传感器的大量地球观测成像数据集。为此,许多研究工作都基于同时进行的卫星和现场数据收集活动中建立具体的关系和经验算法。我们已经对Landsat 7和Landsat 8多时相卫星数据进行了实验,并结合了来自现场光谱辐射仪的高光谱数据以及具有几种物理化学和其他关键监测指标的原地地面真相数据。在我们的案例研究希腊的卡拉湖中,涵盖了4年时间段的所有可用数据集均在定量评估框架下进行了处理和融合。进行的综合分析提出了一些问题,这些问题涉及单个经验模型在多时间,多传感器数据集中对浅水内陆系统关键水质指标的准确预测的适用性。单一线性回归模型无法在多时间,多传感器的观测结果之间建立具体的关系。此外,根据文献,内陆系统的较浅部分遵循不同的回归模式。 Landsat 7和Landsat 8取得了令人鼓舞的结果,表明从湖泊的恢复和向前一致的每个传感器开始,可以成功建立每个深度的预测模型。对于chl-a(r〜2 = 89.80%),溶解氧(r〜2 = 88.53%),电导率(r〜2 = 88.18%),铵(r〜2 = 87.2%)和pH( r〜2 = 86.35%),而总磷(r〜2 = 70.55%)和硝酸盐(r〜2 = 55.50%)导致相关率较低。

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