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Spatiotemporal Variability of Lake Water Quality in the Context of Remote Sensing Models

机译:遥感模式下湖泊水质的时空变化

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This study demonstrates a number of methods for using field sampling and observed lake characteristics and patterns to improve techniques for development of algae remote sensing models and applications. As satellite and airborne sensors improve and their data are more readily available, applications of models to estimate water quality via remote sensing are becoming more practical for local water quality monitoring, particularly of surface algal conditions. Despite the increasing number of applications, there are significant concerns associated with remote sensing model development and application, several of which are addressed in this study. These concerns include: (1) selecting sensors which are suitable for the spatial and temporal variability in the water body; (2) determining appropriate uses of near-coincident data in empirical model calibration; and (3) recognizing potential limitations of remote sensing measurements which are biased toward surface and near-surface conditions. We address these issues in three lakes in the Great Salt Lake surface water system (namely the Great Salt Lake, Farmington Bay, and Utah Lake) through sampling at scales that are representative of commonly used sensors, repeated sampling, and sampling at both near-surface depths and throughout the water column. The variability across distances representative of the spatial resolutions of Landsat, SENTINEL-2 and MODIS sensors suggests that these sensors are appropriate for this lake system. We also use observed temporal variability in the system to evaluate sensors. These relationships proved to be complex, and observed temporal variability indicates the revisit time of Landsat may be problematic for detecting short events in some lakes, while it may be sufficient for other areas of the system with lower short-term variability. Temporal variability patterns in these lakes are also used to assess near-coincident data in empirical model development. Finally, relationships between the surface and water column conditions illustrate potential issues with near-surface remote sensing, particularly when there are events that cause mixing in the water column.
机译:这项研究演示了许多使用现场采样以及观察到的湖泊特征和模式来改进藻类遥感模型和应用开发技术的方法。随着卫星和机载传感器的改进以及它们的数据越来越容易获得,通过遥感估计水质的模型的应用对于本地水质监测(尤其是地表藻类状况)的监测变得越来越实用。尽管应用程序的数量不断增加,但是与遥感模型的开发和应用仍存在重大关联,本研究解决了其中的几个问题。这些问题包括:(1)选择适合水体时空变化的传感器; (2)确定经验模型校准中对重合数据的适当使用; (3)认识到偏向地面和近地面条件的遥感测量的潜在局限性。我们通过以代表常用传感器的规模进行采样,重复采样以及在附近两个地区进行采样,来解决大盐湖地表水系统中的三个湖泊(即大盐湖,法明顿湾和犹他湖)中的这些问题。地表深度以及整个水柱。代表Landsat,SENTINEL-2和MODIS传感器空间分辨率的跨距离变异性表明,这些传感器适用于该湖泊系统。我们还使用系统中观察到的时间变化来评估传感器。这些关系被证明是复杂的,并且观察到的时间变异性表明Landsat的重访时间对于检测某些湖泊中的短时事件可能是有问题的,而对于系统中其他具有较低短期变异性的区域可能就足够了。这些湖泊的时间变异性模式也用于评估经验模型开发中的近一致数据。最后,地表水柱条件之间的关系说明了近地表遥感的潜在问题,特别是当有事件导致水柱混合时。

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