Abstract

Understanding the temporal characteristics of sea surface chlorophyll (SSC) is helpful for marine environmental management. This study chose 10 time series of remote daily sea surface chlorophyll products from the European Space Agency during the period from July 29, 1998 to December 31, 2020. A generalized Cauchy model was employed to capture the local and global behaviors of sea surface chlorophyll from a fractal perspective; the fractal dimension D measures the local similarity while the Hurst parameter H measures the global long-range dependence. The generalized Cauchy model was fitted to the empirical autocorrelation function values of each SSC series. The results showed that the sea surface chlorophyll was multi-fractal in both space and time with the D values ranging from 1.0000 to 1.7964 and H values ranging from 0.6757 to 0.8431. Specifically, regarding the local behavior, 9 of the 10 series had low D values (<1.5), representing weak self-similarity; on the other hand, regarding the global behavior, high H values represent strong long-range dependence that may be a general phenomenon of daily sea surface chlorophyll.

Highlights

  • Sea surface chlorophyll (SSC) is an important bio-indicator, representing the biomass of the phytoplankton in the surface layer of the ocean [1,2,3]

  • The statistical results indicate that the SSC has the highest range in the location with ID 10103 during the studied period; while the values of SSC at the other six locations around the Mexico offshore regions range from 0.0753 to 8.8930 mg/m3

  • A rather different case was found in a lake study, i.e., the chlorophyll-a was autocorrelated over lags of five or 6 days [43], indicating short-range dependence (SRD)

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Summary

Introduction

Sea surface chlorophyll (SSC) is an important bio-indicator, representing the biomass of the phytoplankton in the surface layer of the ocean [1,2,3]. With the development of remote sensing technology, the sensors equipped on satellites can provide long-term SSC products at a global scale, which is conducive to the studies of SSC. The regional SSC variations were studied using remote sensing data. Yamada et al [13] employed the Ocean Color and Temperature Scanner (OCTS) and the Sea-Viewing Wide Field of View Sensor (SeaWiFS) remote sensing data to study the SSC variation in the East China Sea and the Sea of Japan and found the interannual variability of the spring bloom and the weak temporal. Front Mar Sci (2017) 4: 386. doi:10.3389/fmars.2017.00386

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