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Analysis of trends and variability of toxic concentrations in the Niagara River using the Hilbert-Huang transform method

机译:利伯特 - 黄变换方法分析尼亚加拉河尼亚加拉河毒性浓度的变异性

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摘要

This study introduces a more recent data analysis method, Hilbert Huang Transform method (HHT), to describe contaminant concentration data of a non-stationary and non-linear nature. In order to improve the modeling of the contaminant concentrations, it is proposed to first process the data using the Empirical mode decomposition (EMD) method from HI-IT to obtain a collection of intrinsic mode functions (IMFs) which can then be modeled separately using either autoregressive moving average (ARMA) models expanded with a seasonal term, or linear regression analysis, depending on the nature of the IMF. Three priority contaminants measured at Niagara-on-the-Lakes are selected for this study. It is found that the trend of fluoranthene concentrations from April of 1986 to March of 1997 is decreasing and then beginning to increase; the 1,2,4-trichlorobenzene concentrations are decreasing; while the dieldrin concentrations are decreasing. With HHT, appropriate time series models can be identified and constructed for the studied contaminant concentrations to better illustrate the variability of each IMF (and thus the contaminant concentrations) for the studied period. For all data sets modeled in this study, pre-processing the data with HHT allowed for higher R-2 values, correlation coefficients and lower sum of squared errors when compared to modeling without HHT. It is thus confirmed that pre-processing the data with HHT and modeling with time series analysis will provide a more effective means of the studied data sets when identifying and analyzing the trends and variability of studied contaminant concentrations in the Niagara River.
机译:本研究介绍了更新的数据分析方法,Hilbert黄变换方法(HHT),描述了非静止和非线性性质的污染物浓度数据。为了改善污染浓度的建模,建议首先使用来自HI-IT的经验模式分解(EMD)方法来处理数据,以获得内部模式功能(IMF)的集合,然后可以单独建模自动增加移动平均(ARMA)模型以季节性术语扩展,或线性回归分析,取决于IMF的性质。选择在尼亚加拉在湖泊中测量的三种优先污染物用于本研究。结果发现,1986年4月至1997年3月的氟蒽浓度的趋势正在减少,然后开始增加; 1,2,4-三氯苯浓度降低;虽然狄德兰浓度是下降的。利用HHT,可以识别和构建适当的时间序列模型,为所研究的污染浓度构建,以更好地说明所研究期间每个IMF(以及污染物浓度)的可变性。对于本研究中建模的所有数据集,与HHT的预处理数据允许更高的R-2值,相关系数和与在没有HHT的建模的情况下的相关系数和平方误差的较低和。因此,确认使用HHT和时间序列分析建模预处理数据将在识别和分析尼亚加拉河中研究污染浓度的趋势和变异时,提供研究数据集的更有效手段。

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