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    <title>DSpace Collection:</title>
    <link>https://repository.kopri.re.kr/handle/201206/12846</link>
    <description />
    <pubDate>Sun, 19 Apr 2026 16:16:27 GMT</pubDate>
    <dc:date>2026-04-19T16:16:27Z</dc:date>
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      <title>Detection method for diel vertical migration pattern using 2D cross-correlation with ADCP backscatter time-series data</title>
      <link>https://repository.kopri.re.kr/handle/201206/13663</link>
      <description>Title: Detection method for diel vertical migration pattern using 2D cross-correlation with ADCP backscatter time-series data
Authors: 천세화; La, Hyoung Sul; Son, Wuju; 김영철; Cho, Kyoung-Ho; Yang, Eun Jin
Abstract: 1. Diel   vertical   migration   (DVM ),   which   refers   to   the global  daily  migra t io n  o f  zooplankton  and  mic ro ne k to n  (hereafter ‘zooplankton’) ,  serves  an  important  function  in  oceanic  ecosystems.  DVM can  be recognized  as a variation  in  the sound scattering  layer  (SSL), but no standard  exists for  identifying   SSLs,  and  no  definition   has  been  proposed  to  describe  the  basic  features  of  DVM.  Hence,  a standardized  DVM detection  method  is  needed  to  report  consistent   results  and  efficiently   compare  the  parameters  over  broad  ocean  areas and lo ng  time  scales. 
2. We  developed  an  automated,  quantitative   method  for  detecting   DVM  and  identifying   the  characteristic  parameters  using  2D cross-correlation.  We  established  the DVM trajectory  model with   line a r   a nd   s inus o id a l  parts featuring  a  specific  height  and  width.  The  2D cross-correlation method  was  applied  to  acoustic  echogram  images  of  the  volume  backscattering  strength  (Sv,  dB  re 1 m-1) with  a synthetic  image  made from the DVM trajectory  model.  From the cross-correlation  coeffic ie nt s,  we  found  the  candidate  lines  exhibit i ng  the  strongest  possibilit y  of  being  DVM trajectories.
3. We tested the DVM detection  method  on the  acoustic  echograms  for  273 days,  of  which   Sv  was ga  thered  by a bottom-moored,  upward-looking   acoustic  Doppler  current  profiler   (ADCP).  For each  identified  DVM trajectory,  4  quantitative   parameters  describing   their  spatial  and  temporal   structures   (the  maximum   and  minimum   depths  and  ascent  and descent  time s )  were determined,  and the existence  of multi- layer was recognized. We confirmed  that  this  method showed better performance  than  the prior method  based on the weighted  mean depth (WMD), and  as  a  result   of  visua l   scrutiny   inspection,  our  method  showed 88% DVM detection performance.
4. O ur  goal  was  to  suggest   a robust,  quantitative,   automated  DVM  detection  method  using  2D cross-correlation.  The method  was successfully  applied  to detect DVM trajectories  and define  the characteristic  parameters  regardless  of  fluc tua t io n  or the mult i- la yer   structure   due  to  its  robustness  and  s imp le   mo d e l.  Analyzing   DVM  behaviors  across  environme nts   with  this  method  could  help  reveal  the  significance   of  these  behaviors   in  ocean  environments.</description>
      <pubDate>Sat, 01 Jan 2022 00:00:00 GMT</pubDate>
      <guid isPermaLink="false">https://repository.kopri.re.kr/handle/201206/13663</guid>
      <dc:date>2022-01-01T00:00:00Z</dc:date>
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