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RESTORING LOST WATER LEVEL MODELING DATA

机译:恢复丢失的水位建模数据

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Extensive time series of measurements are often essential to evaluate and model long term changes and averages such as tidal datums and sea level rises. As such, gaps, due to data acquisition loses, in time series data restrict the type and extent of modeling and research which may be accomplished. The Texas A&M University Corpus Christi Division of Nearshore Research (A&M-CC-DNR) has developed and compared various methods based on forward and backward linear regression to interpolate gaps in time series of water level data. Our time series consist of water level data collected at six-minute intervals for about 60 stations along the coast of Texas for up to 15 years depending on the station. A&M-CC-DNR collects, archives and makes available through the World Wide Web such time series. Our program retrieves actual and harmonic water level data based upon user provided parameters. The actual water level data is searched for missing data points and the location of these gaps are recorded. The difference between the corresponding actual water level data and the harmonic water level data is then calculated. The harmonic component of the water level data has been calculated using several years of time series and is available for most of the stations. Forward and backward linear regression are applied in relation to the location of the gaps in the remaining data. After this process is complete, one of three combinations of the forward and backward regression is used to fit the results. The methods of combination are convex linear combination, convex trigonometric combination and combination by intersection. Finally, the harmonic component is added back into the newly supplemented time series and the results are graphed. The software system created to implement this process of linear regression is written in Perl along with a Perl module called PDL (Perl Data Language). Perl was chosen as the data language due to its ease and power of data extraction, manipulation and formatting. In addition, the PDL module allows the user to store and manipulate large amounts of data in a time and memory efficient manner. The computational efficiency of these algorithms will allow for a real-time web based implementation where the gaps are filled at the time of request. Generally, this process has demonstrated excellent results in filling gaps in our water level time series. The program was tested on existing data under three types of typical weather conditions: calm summers, frontal passages and extreme weather conditions, such as hurricanes. The parameters varied in order to test the accuracy of the methodology included the number of coefficients utilized in the linear regression processes as well as the size of the gaps to be filled. United States National Ocean Service (NOS) standards such as the Root Mean Square Error and the Central Frequency are used to assess the quality of the interpolation. Results will be presented for the different weather conditions and the different gap size and coefficient combinations.
机译:广泛的时间序列测量通常对于评估和建模长期变化和平均值(如潮汐基准和海平面上升)是必不可少的。这样,由于数据采集的丢失,时间序列中的数据限制了可以完成的建模和研究的类型和程度。德州农工大学近岸研究科珀斯克里斯蒂分院(A&M-CC-DNR)已开发并比较了基于前向和后向线性回归的各种方法,以对水位数据的时间序列进行插值。我们的时间序列包含每6分钟间隔一次的水位数据,这些数据是在得克萨斯州沿海地区大约60个站点长达15年的时间而定的,具体取决于站点。 A&M-CC-DNR收集,存档并通过万维网提供这样的时间序列。我们的程序根据用户提供的参数检索实际和谐波水位数据。在实际的水位数据中搜索丢失的数据点,并记录这些间隙的位置。然后计算相应的实际水位数据与谐波水位数据之间的差。水位数据的谐波分量已使用几年的时间序列进行了计算,并且可用于大多数站点。相对于剩余数据中间隙的位置,应用前向和后向线性回归。完成此过程后,将使用正向和反向回归的三种组合之一来拟合结果。组合的方法有凸线性组合,凸三角组合和交点组合。最后,将谐波分量添加回新补充的时间序列中,并对结果进行图形化。为实现此线性回归过程而创建的软件系统是用Perl以及称为PDL(Perl数据语言)的Perl模块编写的。 Perl之所以被选作数据语言,是因为其数据提取,处理和格式化的简便性和强大功能。此外,PDL模块允许用户以节省时间和内存的方式存储和处理大量数据。这些算法的计算效率将允许基于实时Web的实现,其中在请求时填补了空白。通常,此过程在填补我们的水位时间序列中的空白方面已显示出极好的结果。该程序在三种典型的天气条件下对现有数据进行了测试:夏天平静,额叶过道和极端天气条件(例如飓风)。为了测试方法的准确性而改变了参数,包括在线性回归过程中使用的系数的数量以及要填补的空白的大小。美国国家海洋服务(NOS)标准(例如均方根误差和中心频率)用于评估插值的质量。将针对不同的天气条件以及不同的间隙大小和系数组合显示结果。

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