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An automated algorithm for river ice monitoring over the Susquehanna River using the MODIS data

机译:使用MODIS数据的萨斯奎哈那河上河冰监测的自动化算法

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Reliable and prompt information on river ice condition and extent is needed to make accurate hydrological forecasts to predict ice jams breakups and issue timely flood warnings. This study presents a technique to detect and monitor river ice using observations from the MODIS instrument onboard the Terra satellite. The technique incorporates a threshold-based decision tree image classification algorithm to process MODIS data and to determine the extent of ice. To differentiate between ice-covered and ice-free pixels within the riverbed, the algorithm combines observations in the visible and near-infrared spectral bands. The developed technique presents the core of the MODIS-based river ice mapping system, which has been developed to support National Oceanic and Atmospheric Administration NWS's operations. The system has been tested over the Susquehanna River in northeastern USA, where ice jam events leading to spring floods are a frequent occurrence. The automated algorithm generates three products: daily ice maps, weekly composite ice maps and running cloud-free composite ice maps. The performance of the system was evaluated over nine winter seasons. The analysis of the derived products has revealed their good agreement with the aerial photography and with observations-based ice charts. The probability of ice detection determined from the comparison of the product with the high-resolution Landsat imagery was equal to 91%. A consistent inverse relationship was found between the river discharge and the ice extent. The correlation between the discharge and the ice extent as determined from the weekly composite product reached 0.75. The developed CREST River Ice Observation System has been implemented at National Oceanic and Atmospheric Administration–Cooperative Remote Sensing Science and Technology Center as an operational Web tool allowing end users and forecasters to assess ice conditions on the river. Copyright © 2012 John Wiley & Sons, Ltd.
机译:需要有关河冰状况和范围的可靠且及时的信息,以进行准确的水文预报,以预测结冰破裂和及时发出洪水预警。这项研究提出了一种使用Terra卫星上的MODIS仪器的观测值来检测和监测河冰的技术。该技术结合了基于阈值的决策树图像分类算法,以处理MODIS数据并确定结冰程度。为了区分河床内被冰覆盖的像素和无冰像素,该算法将可见光和近红外光谱带中的观测结果结合起来。这项开发的技术展示了基于MODIS的河冰制图系统的核心,该系统的开发旨在支持国家海洋与大气管理局NWS的运营。该系统已经在美国东北部的萨斯奎哈纳河上进行了测试,那里经常发生导致春季洪水的冰堵事件。自动化算法生成三种产品:每日冰图,每周复合冰图和运行无云的复合冰图。在九个冬季中评估了该系统的性能。对衍生产品的分析表明,它们与航空摄影以及基于观测的冰图非常吻合。从产品与高分辨率Landsat影像的比较中确定的结冰概率为91%。在河流流量和冰范围之间发现了一致的反比关系。由每周的复合产品确定的排放量与结冰程度之间的相关性达到0.75。国家海洋和大气管理局合作遥感科学技术中心已实施了已开发的CREST河冰观测系统,该系统是一种可操作的网络工具,允许最终用户和预报员评估河上的冰况。版权所有©2012 John Wiley&Sons,Ltd.

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