Variability of Kuroshio Surface Axis Northeast of Taiwan Island Derived from Satellite Altimeter Data
"> Figure 1
<p>Topographic map (unit: m) in the East China Sea (ECS) with climatological geostrophic current vectors (value > 0.15 m/s; red arrows), which are derived from the multi-year averaged altimeter data from 1993 to 2016, superimposed.</p> "> Figure 2
<p>Schematic diagram showing the method how to detect the Kuroshio axis by tracking the maximum speed of the surface velocity. <span class="html-italic">V</span><sub>0</sub> denote the local maximum velocity, Δr is the distance between two adjacent subsidiary line (before the new subsidiary line being adjusted), <span class="html-italic">l</span> is the length of the subsidiary line, Δ<span class="html-italic">l</span> is the interval between two adjacent points.</p> "> Figure 3
<p>Long-term (1993-2016) mean ADT (color-filled contours) overlaid with Kuroshio mean axis (solid black curve), standard deviation (STD, dashed blue curves), envelopes (dashed cyan curves), 90 percentile (dashed green curve), and 10 percentile (dashed purple curve). Transect A (solid green line perpendicular to the Kuroshio mean axis), B, and C (dotted yellow lines in zonal and meridional direction) are used to analyze the variation of the axis location. Gray contours are isobaths of 100, 200, 1000, and 1200 m.</p> "> Figure 4
<p>IMF components and the residue (unit: km) obtained from the time series of the distance away from the mean axis location along Transect A using empirical mode decomposition (EMD) method. (<b>a</b>) The time series of the distance and IMF1-IMF6, (<b>b</b>) IMF7-IMF12 and the residue.</p> "> Figure 5
<p>(<b>a</b>) Mean frequency (red circles) and amplitude (blue circles) for all IMFs shown in <a href="#remotesensing-12-01059-f004" class="html-fig">Figure 4</a>. Error bars are the standard deviation. (<b>b</b>) Mean period of the IMFs (blue circles) and the signal energy (red histograms).</p> "> Figure 6
<p>24-year averaged daily series of IMF4-IMF9 along Transect A, with shoreward direction (northwestward) positive (red), seaward (southeastward) negative (blue). The series are divided into four seasons by the green dashed lines: winter (December, January and February), spring (March to May), summer (June to August), and autumn (September to November).</p> "> Figure 7
<p>Scatter diagram of the longitudes of the intersections along Transect B versus latitudes of the intersections along Transect C for the long-term day-to-day detection of the Kuroshio axis from 1993 to 2016, Transects B and C are shown in <a href="#remotesensing-12-01059-f003" class="html-fig">Figure 3</a>, the color codes represent the numbers of intersections, i.e., the data density. Black pentagram corresponds to the mean axis at (25.43°N, 122.59°E). Two black dashed lines are zonal and meridional extension lines. Latitudes along Transect C within the red ellipse represent the Kuroshio intrusion events.</p> "> Figure 8
<p>Coefficient variation of intra-class sum of the squared errors (CV<sub>SSIntra</sub>) with different self-organizing map (SOM) array sizes.</p> "> Figure 9
<p>Self-organizing map analysis of the Kuroshio axis northeast of Taiwan Island. BMU<sub>S</sub>, BMU<sub>M</sub>, BMU<sub>T1</sub>, and BMU<sub>T2</sub> represent the derived four patterns. The numbers are corresponding index of the occurrence frequency for each pattern. The mean, STD, and envelope axes are indicated by purple, blue, and orange dashed curves, respectively. The color-filled contours indicate the bathymetry.</p> "> Figure 10
<p>Temporal evolution of the winning element errors (unit: km) for different best matching units identified from the SOM analysis. The winning element error at every time must correspond to only one best matching unit (BMU) pattern, so it is vacant for the other three BMU patterns (white areas).</p> "> Figure 11
<p>(<b>a</b>) Monthly IOFs of the four BMU patterns shown in <a href="#remotesensing-12-01059-f008" class="html-fig">Figure 8</a>. (<b>b</b>) Comparison of surface current transport along Transect B, <span class="html-italic">T<sub>C</sub></span>, and IOFs of BMU<sub>S</sub> at the monthly scale. Correlation coefficient is 0.78.</p> "> Figure 12
<p>The BMU time series from November 26, 2012 to January 27, 2013.</p> "> Figure 13
<p>Color filled contours represent ADT in m from November 26, 2012 to January 27, 2013 in the northeast of Taiwan Island. The period is divided into four parts: from November 26 to December 11, 2012 (<b>a</b>), from December 12, 2012 to January 1, 2013 (<b>b</b>), from January 2 to January 20, 2013 (<b>c</b>) from January 21 to January 27, 2013 (<b>d</b>). The vectors represent the geostrophic currents in m/s. White curves denote the Kuroshio surface axis corresponding to the four patterns.</p> "> Figure 14
<p>Same as <a href="#remotesensing-12-01059-f013" class="html-fig">Figure 13</a>, but for AVHRR multi-day mean SST.</p> "> Figure 15
<p>Same as <a href="#remotesensing-12-01059-f013" class="html-fig">Figure 13</a>, but for the SLA and the geostrophic velocity anomaly.</p> "> Figure 16
<p>The geostrophic velocity anomaly (vectors) and relative vorticity (color shading) during January (<b>a</b>) and July (<b>b</b>), 2009. Black squares delineates the region where the interaction between the eddies and Kuroshio often occurs on the northeast of Taiwan Island.</p> "> Figure 17
<p>Comparisons of the mean relative viscosity in the region shown as the black square in <a href="#remotesensing-12-01059-f016" class="html-fig">Figure 16</a> and IOFs of BMU<sub>S</sub> (<b>a</b>) and BMU<sub>M</sub> (<b>b</b>) at the monthly scale. Correlation coefficients are 0.82 (<b>a</b>) and −0.84 (<b>b</b>).</p> "> Figure A1
<p>The detected Kuroshio surface axis results from 1993 to 2016 and winning neurons projection on the first two principal components.</p> ">
Abstract
:1. Introduction
2. Data and Methods
2.1. Data
2.2. Methods
2.2.1. Extraction Method for Kuroshio Surface Axis
2.2.2. Empirical Mode Decomposition
2.2.3. Self-Organizing Map Analysis
3. Results and Discussion
3.1. General Features of the Kuroshio Mean Axis
3.2. Variation of the Kuroshio Surface Axis
3.3. Self-Organizing Map Analysis
3.4. Impact of Mesoscale Eddies on the Kuroshio Surface Axis Variability
4. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
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Zhuang, Z.; Zheng, Q.; Zhang, X.; Yang, G.; Zhao, X.; Cao, L.; Zhang, T.; Yuan, Y. Variability of Kuroshio Surface Axis Northeast of Taiwan Island Derived from Satellite Altimeter Data. Remote Sens. 2020, 12, 1059. https://doi.org/10.3390/rs12071059
Zhuang Z, Zheng Q, Zhang X, Yang G, Zhao X, Cao L, Zhang T, Yuan Y. Variability of Kuroshio Surface Axis Northeast of Taiwan Island Derived from Satellite Altimeter Data. Remote Sensing. 2020; 12(7):1059. https://doi.org/10.3390/rs12071059
Chicago/Turabian StyleZhuang, Zhanpeng, Quanan Zheng, Xi Zhang, Guangbing Yang, Xinhua Zhao, Lei Cao, Ting Zhang, and Yeli Yuan. 2020. "Variability of Kuroshio Surface Axis Northeast of Taiwan Island Derived from Satellite Altimeter Data" Remote Sensing 12, no. 7: 1059. https://doi.org/10.3390/rs12071059