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首页> 外文期刊>Journal of Water Resources Planning and Management >Linking GIS, Hydraulic Modeling, and Tabu Search for Optimizing a Water Level-Monitoring Network in South Florida
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Linking GIS, Hydraulic Modeling, and Tabu Search for Optimizing a Water Level-Monitoring Network in South Florida

机译:链接GIS,水力模型和禁忌搜索以优化南佛罗里达州的水位监测网络

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摘要

The South Florida Water Management District (SFWMD) has a large and expanding surface water level-monitoring network for various water bodies including lakes and streams. SFWMD seeks to optimize the existing network of monitoring stations to collect the data from the least number of monitoring stations in the best possible locations without compromising information. Tabu combinatorial search algorithm is used to optimize water level-monitoring stations in lakes and streams within the SFWMD. Given a network of n stations, the methodology involves searching for the best spatial combination of r (where r < n) monitoring stations within the existing network to estimate water surface levels in lakes and streams within a given tolerance. Separate techniques are used to compute water levels in lakes and streams to compare possible solutions from Tabu search with observed daily data. Results from application of proposed techniques to Kissimmee River basin show that implementation of Tabu search within geographic information system (GIS) provides a computationally efficient way of optimizing a water level-monitoring network. It is also found that factors such as length of data records, slope of hydraulic profiles, and data at control structures play a significant role in the overall optimization process. The proposed methodology can also be used in the design of new monitoring networks and other water resources applications that involve GIS, computational modeling, and optimization.
机译:南佛罗里达水管理区(SFWMD)拥有一个庞大且不断扩展的地表水位监测网络,可用于包括湖泊和溪流在内的各种水体。 SFWMD试图优化现有的监控站网络,以在不影响信息的前提下,从位于最佳位置的最少数量的监控站收集数据。禁忌组合搜索算法用于优化SFWMD内湖泊和溪流中的水位监测站。给定一个由n个站点组成的网络,该方法包括在现有网络内搜索r个(其中r

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