{"title":"1995-2006年佛罗里达州Loxahatchee国家野生动物保护区的水位、比电导和总磷动态分析与模拟","authors":"P. Conrads, E. Roehl","doi":"10.3133/SIR20105244","DOIUrl":null,"url":null,"abstract":"The Arthur R. Marshall Loxahatchee Wildlife Refuge (Refuge) was established in 1951 through a license agreement between the South Florida Water Management District and the U.S. Fish and Wildlife Service (USFWS) as part of the Migratory Bird Conservation Act. Under the license agreement, the State of Florida owns the land of the Refuge and the USFWS manages the land. Fifty-seven miles of levees and borrow canals surround the Refuge. Water in the canals surrounding the marsh is controlled by inflows and outflows through control structures. The transport of canal water with higher specific conductance and nutrient concentrations to the interior marsh has the potential to alter critical ecosystem functions of the marsh. Data-mining techniques were applied to 12 years (1995–2006) of historical data to systematically synthesize and analyze the dataset to enhance the understanding of the hydrology and water quality of the Refuge. From the analysis, empirical models, including artificial neural network (ANN) models, were developed to answer critical questions related to the relative effects of controlled releases, precipitation, and meteorological forcing on water levels, specific conductance, and phosphorous concentrations of the interior marsh. Data mining is a powerful tool for converting large databases into information to solve complex problems resulting from large numbers of explanatory variables or poorly understood process physics. For the application of the linear regression and ANN models to the Refuge, data-mining methods were applied to maximize the information content in the raw data. Signal processing techniques used in the data analysis and model development included signal decomposition, digital filtering, time derivatives, time delays, and running averages. Inputs to the empirical models included time series, or signals, of inflows and outflows from the control structures, precipitation, and evapotranspiration. For a complex hydrologic system like the Refuge, the statistical accuracy of the models and predictive capability were good. The water-level models have coefficient of determination (R 2 ) values ranging from 0.90 to 0.98.","PeriodicalId":343946,"journal":{"name":"Scientific Investigations Report","volume":"83 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1900-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":"{\"title\":\"Analysis and simulation of water-level, specific conductance, and total phosphorus dynamics of the Loxahatchee National Wildlife Refuge, Florida, 1995-2006\",\"authors\":\"P. Conrads, E. Roehl\",\"doi\":\"10.3133/SIR20105244\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"The Arthur R. Marshall Loxahatchee Wildlife Refuge (Refuge) was established in 1951 through a license agreement between the South Florida Water Management District and the U.S. Fish and Wildlife Service (USFWS) as part of the Migratory Bird Conservation Act. 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Data mining is a powerful tool for converting large databases into information to solve complex problems resulting from large numbers of explanatory variables or poorly understood process physics. For the application of the linear regression and ANN models to the Refuge, data-mining methods were applied to maximize the information content in the raw data. Signal processing techniques used in the data analysis and model development included signal decomposition, digital filtering, time derivatives, time delays, and running averages. Inputs to the empirical models included time series, or signals, of inflows and outflows from the control structures, precipitation, and evapotranspiration. For a complex hydrologic system like the Refuge, the statistical accuracy of the models and predictive capability were good. 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引用次数: 1
摘要
作为候鸟保护法的一部分,Arthur R. Marshall Loxahatchee野生动物保护区(Refuge)于1951年通过南佛罗里达水管理区和美国鱼类和野生动物管理局(USFWS)之间的许可协议建立。根据许可协议,佛罗里达州拥有保护区的土地,而USFWS管理这片土地。57英里长的堤坝和运河环绕着避难所。沼泽周围运河中的水通过控制结构由流入和流出来控制。具有较高比电导和营养物质浓度的运河水向沼泽内部的输送有可能改变沼泽的关键生态系统功能。利用数据挖掘技术对1995-2006年12年的历史数据进行系统的综合和分析,以提高对保护区水文和水质的认识。从分析中,开发了包括人工神经网络(ANN)模型在内的经验模型,以回答与控制释放、降水和气象强迫对水位、比电导和内陆沼泽磷浓度的相对影响有关的关键问题。数据挖掘是一种强大的工具,用于将大型数据库转换为信息,以解决由于大量解释变量或对过程物理知之甚少而导致的复杂问题。为了将线性回归和人工神经网络模型应用于保护区,采用数据挖掘方法,使原始数据中的信息含量最大化。数据分析和模型开发中使用的信号处理技术包括信号分解、数字滤波、时间导数、时间延迟和运行平均。经验模型的输入包括控制结构的流入和流出、降水和蒸散发的时间序列或信号。对于像Refuge这样复杂的水文系统,模型的统计精度和预测能力都很好。水位模型的决定系数(r2)值在0.90 ~ 0.98之间。
Analysis and simulation of water-level, specific conductance, and total phosphorus dynamics of the Loxahatchee National Wildlife Refuge, Florida, 1995-2006
The Arthur R. Marshall Loxahatchee Wildlife Refuge (Refuge) was established in 1951 through a license agreement between the South Florida Water Management District and the U.S. Fish and Wildlife Service (USFWS) as part of the Migratory Bird Conservation Act. Under the license agreement, the State of Florida owns the land of the Refuge and the USFWS manages the land. Fifty-seven miles of levees and borrow canals surround the Refuge. Water in the canals surrounding the marsh is controlled by inflows and outflows through control structures. The transport of canal water with higher specific conductance and nutrient concentrations to the interior marsh has the potential to alter critical ecosystem functions of the marsh. Data-mining techniques were applied to 12 years (1995–2006) of historical data to systematically synthesize and analyze the dataset to enhance the understanding of the hydrology and water quality of the Refuge. From the analysis, empirical models, including artificial neural network (ANN) models, were developed to answer critical questions related to the relative effects of controlled releases, precipitation, and meteorological forcing on water levels, specific conductance, and phosphorous concentrations of the interior marsh. Data mining is a powerful tool for converting large databases into information to solve complex problems resulting from large numbers of explanatory variables or poorly understood process physics. For the application of the linear regression and ANN models to the Refuge, data-mining methods were applied to maximize the information content in the raw data. Signal processing techniques used in the data analysis and model development included signal decomposition, digital filtering, time derivatives, time delays, and running averages. Inputs to the empirical models included time series, or signals, of inflows and outflows from the control structures, precipitation, and evapotranspiration. For a complex hydrologic system like the Refuge, the statistical accuracy of the models and predictive capability were good. The water-level models have coefficient of determination (R 2 ) values ranging from 0.90 to 0.98.