Title :
Merging Multiple-Partial-Depth Data Time Series Using Objective Empirical Orthogonal Function Fitting
Author :
Lin, Ying-Tsong ; Newhall, Arthur E. ; Duda, Timothy F. ; Lermusiaux, Pierre F J ; Haley, Patrick J.
Author_Institution :
Appl. Ocean Phys. & Eng. Dept., Woods Hole Oceanogr. Instn., Woods Hole, MA, USA
Abstract :
In this paper, a method for merging partial overlapping time series of ocean profiles into a single time series of profiles using empirical orthogonal function (EOF) decomposition with the objective analysis is presented. The method is used to handle internal waves passing two or more mooring locations from multiple directions, a situation where patterns of variability cannot be accounted for with a simple time lag. Data from one mooring are decomposed into linear combination of EOFs. Objective analysis using data from another mooring and these patterns is then used to build the necessary profile for merging the data, which is a linear combination of the EOFs. This method is applied to temperature data collected at a two vertical moorings in the 2006 New Jersey Shelf Shallow Water Experiment (SW06). Resulting profiles specify conditions for 35 days from sea surface to seafloor at a primary site and allow for reliable acoustic propagation modeling, mode decomposition, and beamforming.
Keywords :
data analysis; merging; ocean waves; oceanographic regions; oceanographic techniques; time series; underwater sound; AD 2006; New Jersey Shelf Shallow Water Experiment; acoustic propagation modeling; beamforming; data merging; empirical orthogonal function decomposition; internal waves; mode decomposition; mooring location; multiple-partial-depth data time series; objective analysis; objective empirical orthogonal function fitting; ocean profile; partial overlapping time series merging; sea surface; seafloor; temperature data; variability pattern; Data models; Merging; Ocean temperature; Temperature distribution; Temperature measurement; Temperature sensors; Time series analysis; 2006 Shallow Water Experiment (SW06); Empirical orthogonal functions (EOFs); Massachusetts Institute of Technology Multidisciplinary Simulation, Estimation, and Assimilation System (MIT-MSEAS) ocean modeling system; Mid-Atlantic Bight; objective function fitting; oceanographic data merging;
Journal_Title :
Oceanic Engineering, IEEE Journal of
DOI :
10.1109/JOE.2010.2052875