Introduction
Current climate change is particularly evident and amplified in the high latitudes of the Northern Hemisphere. The system change is characterized by an increase in the average annual temperature and atmospheric circulation intensity, a reduction in sea ice coverage and thickness, accelerated degradation of permafrost, and an increase in coastal and bottom erosion and river flows (IPCC, 2013). Unlike other oceans, the Arctic Ocean is completely surrounded by permafrost. The Arctic region contains an abundance of organic carbon (OC) buried inland and within the sedimentary basin of the Arctic Ocean, which might become a part of the current marine biogeochemical cycle due to thawing of on-land and sub-sea permafrost, increased coastal and bottom erosion, accelerated river discharge, and soil-based carbon losses (Günther et al., 2013; Shakhova et al., 2009, 2017; Semiletov, 1999; Vonk and Gustafsson, 2013; Vonk et al., 2012, 2014). The recent studies accomplished within the framework of the International Siberian Shelf Study project (Semiletov and Gustafsson, 2009; Semiletov et al., 2011; Tesi et al., 2014; Bröder et al., 2016; Charkin et al., 2011) demonstrate that coastal erosion is the main source of particulate OC (POC) to the East Siberian Arctic Shelf (ESAS), the broadest and shallowest shelf in the world. Oxidation of POC exported from thawing coastal (and bottom) permafrost and freshening due to growing Siberian river runoff from extensive permafrost-underlain watersheds play a major role in the severe ESAS acidification that has been reported (Semiletov et al., 2016). At the same time, river discharge to shelf waters supplies terrestrial carbon in the form of dissolved OC (DOC) and waters enriched by carbon dioxide (CO) (Alling et al., 2010; Amon et al., 2012; Anderson et al., 2009, 2011; Semiletov et al., 2011, 2012; Pipko et al., 2010).
Annually, the Arctic rivers transport 25–36 Tg of DOC to the Arctic Ocean, which is 10 % of the global riverine DOC discharge (Raymond et al., 2007). Siberian rivers are high in DOC, with a mean concentration of more than 500 M (Gordeev et al., 1996; McClelland et al., 2012; Amon et al., 2012). These concentrations are an order of magnitude higher than in the inflowing Atlantic (60 M) and Pacific (70 M) waters, but the volume flux of the two oceans is about 60 times larger than that of continental runoff (Anderson and Amon, 2015). Furthermore, Arctic and subarctic regions contain approximately 50 % of the global terrestrial OC in their frozen soils (Hugelius et al., 2011). Warming and intensification of the hydrologic cycle is leading to an increased rate of water and dissolved organic matter (DOM) discharge from the Siberian rivers (Savelieva et al., 2000; Semiletov et al., 2000; Stein and Macdonald, 2004).
The absorbance and fluorescence properties of the chromophoric fraction of DOM (CDOM) are “optical markers”, comparable to traditional biomarkers used in geochemistry (e.g., lignin) (Stedmon and Nelson, 2015). According to Coble (2007), up to 70 % of DOM in shelf waters is represented by CDOM, which is critical in a number of biochemical and photochemical processes and which defines the optical properties of natural waters, thus affecting the depth of the photic layer (Granskog et al., 2007; Hill, 2008). Quantitative descriptions of the dynamics and variability in CDOM optical properties are often required, particularly in coastal waters, in order to accurately predict light penetration and primary production (Matsuoka et al., 2007). It should be noted that reliable estimation of coastal water optical characteristics is crucial for validating and calibrating remote sensing data processing results (Vantrepotte et al., 2012; Bondur and Vorobev, 2015). High CDOM values are typical for the eastern Laptev Sea; in the western East Siberian Sea they result from the large discharge of the Lena River, which is characterized by high CDOM concentrations (Semiletov et al., 2013; Pugach and Pipko, 2013). Most likely, the color that indicates the presence of CDOM in this water, when seen from space, is due to the presence of chlorophyll (Heim et al., 2014). This may explain the recently proposed increase in the net primary production rates reported for these ESAS areas based on satellite data interpretation (Arrigo and van Dijken, 2011).
Empirical relationships between the optical properties of DOM and DOC have already been the subject of investigation in the Arctic Ocean (Stedmon et al., 2011; Guéguen et al., 2005, 2007; Fichot and Benner, 2011; Gonçalves-Araujo et al., 2015; Kaiser et al., 2017). The present study synthesizes the authors' multiyear observations on the remote ESAS with the focus on exploring the extent and dynamics of riverine DOC, using CDOM as a proxy.
This paper aims (1) to study the spatial and interannual dynamics of DOM optical characteristics in shelf waters of the eastern Arctic seas on the basis of multiyear summertime (August –September) expedition data (2003, 2004, 2005, 2008, 2011); (2) to examine the relationship between CDOM fluorescence and DOC in order to validate a useful method for accurately predicting DOC concentration from CDOM properties in the ESAS; and (3) to demonstrate the feasibility, using DOM optical characteristics, of determining the terrigenous DOM distribution and identifying different biogeochemical provinces in the shelf water.
Study area: location of oceanographic stations at which measurements were taken in August–October 2003, 2004, 2005, 2008, and 2011. Location of selected stations on the ESAS in September 2004 is shown in color.
[Figure omitted. See PDF]
Study area
This study is focused on the Laptev and East Siberian seas, where the influence of river discharge and the biogeochemical signal of permafrost degradation are the most prominent (Alling et al., 2010; Nicolsky and Shakhova, 2010; Sánchez-Garcia et al., 2011; Shakhova et al., 2015, 2017; Vonk et al., 2012). The shelf area of these seas covers 40 % of the Arctic shelf and 20 % of the entire Arctic Ocean area (Stein and Macdonald, 2004). Annually, 767 km of fresh water flows into the Laptev Sea with discharges of the Lena, Khatanga, Anabar, Olenek, and Yana rivers; this amounts to over 30 % of the total river discharge into all Arctic seas in Russia. The Lena River, which is the largest river in the ESAS region, accounts for more than 70 % of the total discharge to the Laptev Sea (Semiletov et al., 2000; Cooper et al., 2008). Over 85 % of its discharge flows into the sea through channels of the eastern Lena delta. Therefore, the hydrological and biogeochemical regime of the Laptev Sea, and its southeast part in particular, is mainly controlled by discharge fluctuations of the Lena River (Pipko et al., 2010; Semiletov et al., 2011, 2012; Bröder et al., 2016). Moreover, it has been found that in the past the Lena River played a dominant role in sediment discharge, flushing out soil OM from its vast watershed (Tesi et al., 2016); a significant fraction of “fresh” terrestrial OM contributes to the DOM pool (Vonk et al., 2013; Karlsson et al., 2016).
The East Siberian Sea is one of the least-studied seas; this lack of attention is mainly attributed to severe icebound conditions. The Kolyma and Indigirka are the main rivers for which the East Siberian Sea serves as a receiving basin; however, their total average annual discharge does not exceed 180 km. According to Nikiforov and Shpaikher (1980) a major part of the Lena River freshwater plume usually transits the East Siberian Sea eastward within the coastal zone. Depending on hydrometeorological conditions, this plume reaches 165 E (typical under anticyclonic circulation conditions) and as far as Long Strait at 180 E (typical under cyclonic circulation conditions) (Semiletov et al., 2005).
Materials and methods
Field work
This paper presents data from research expeditions conducted during the summer–fall seasons of 2003 and 2004 (HV Ivan Kireev), 2005 (MV Auga), 2008 (HV Yakob Smirnitsky), and 2011 (RV Academician M. A. Lavrentyev) on ice-free regions of the Laptev and East Siberian seas (Fig. 1).
The study was carried out using a hydrological
conductivity–temperature–depth (CTD) SBE 19plus SeaCAT Profiler probe
(
Dates, number of stations, samples collected, and parameters measured in the surface layer during cruises.
Dates of cruises | Region | Number of | Parameters measured |
---|---|---|---|
stations | |||
HV Ivan Kireev, | East Siberian Sea | 41 | CTD with CDOM ( 41) |
7–21 Sep 2003 | |||
HV Ivan Kireev, | Southeastern Laptev Sea, | 92 | CTD with CDOM ( 92), |
31 Aug–15 Sep 2004 | East Siberian Sea | ( 46), DOC ( 20) | |
MV Auga | Southeastern Laptev Sea, | 64 | CTD with CDOM ( 64), |
14–25 Sep 2005 | southwestern East Siberian Sea | ( 32) | |
HV Yakob Smirnitsky, | Eastern Laptev Sea, | 1766 | CTD with CDOM ( 1766), |
8 Aug–18 Sep 2008 | East Siberian Sea | (SWI) | DOC ( 12) |
RV Academician M. A. Lavrentyev, | Eastern Laptev Sea, | 89 | CTD with CDOM ( 89), |
15 Sep–4 Oct 2011 | East Siberian Sea | ( 21) |
is the number of measurements.
In 2003, 2004, 2005, and 2011 the measurements were carried out at 286 oceanographic stations and in 2008 along the ship's track using a seawater intake (SWI) system. Water was pumped from 4 m depth at 30 L min through stainless steel and silicon tubes into an on-deck 300 L barrel and then through a distribution network, from which samples were collected. Temperature, salinity, and CDOM in the surface water were measured continuously using sensors installed on the CTD Seabird 19 deployed in the barrel; measurements were averaged every 10 min. Table 1 shows detailed information on cruises, including dates, number of stations, and parameters measured.
Methods for determining dissolved organic carbon
In 2004, DOC concentration was measured in an International Arctic Research Center laboratory at the University of Alaska (Fairbanks, Alaska, USA); in 2008, DOC concentration was measured onboard the RV Yakob Smirnitsky (Table 1). All samples were analyzed using the Shimadzu TOC-V system (Alling et al., 2010). The 1–3 L seawater samples were vacuum-filtered onboard with 25 mm diameter pre-combusted borosilicate glass fiber filters (Whatman GF/F, nominally 0.7 m cutoff) within an all-glass filtration system. The samples were stored in 60 mL Nalgene high-density polyethylene bottles. DOC was analyzed via high-temperature catalytic oxidation. Inorganic carbon was removed by acidifying the samples to pH 2 with 2 M HCl and sparging for 8 min prior to analysis. All procedures for calibration and data analysis followed Sharp et al. (1995). Certified reference materials (CRMs, from the University of Miami) of low carbon content (1–2 M C) and deep-sea reference water (41–44 M C) were run prior to each analysis batch (Alling et al., 2010).
Absorbance and fluorescence analysis
Absorbance of CDOM was measured using a UNICO 2804 spectrophotometer with a 1 cm quartz cuvette over the spectral range from 200 to 600 nm at 1 nm intervals (Table 1). Milli-Q (Millipore) water was used as the reference for all samples. Water samples underwent filtration through acid-washed Whatman glass fiber filters (GF/F, nominal pore size 0.7 m).
The absorption coefficient (, m) was calculated as follows: where is optical density at wavelength , and is the cell path length in meters.
The absorption coefficients at 350 nm () were chosen to quantify the concentrations of CDOM because of their correlations to DOC and to permit comparison with other results (Spencer et al., 2009; Stedmon et al., 2011; Walker et al., 2013; Gonçalves-Araujo et al., 2015; Mann et al., 2016).
The dependence of on is described using Eq. (2): where is the absorption coefficient at reference wavelength , and is a spectral slope defining the spectral dependence of the absorption coefficient resulting from CDOM presence (Blough and Del Vecchio, 2002).
The spectral slope, , indicates the rate at which the CDOM absorption coefficient decreases with wavelength increase (Carder et al., 1989). The value of varies with the source, aromatic content, and molecular weight of the CDOM (Blough and Del Vecchio, 2002; Helms et al., 2008; Granskog et al., 2012). In nearshore regions, which are under the influence of terrestrial sources with high concentrations of CDOM, values increase due to the conservative mixing of terrestrial CDOM (high , low ) with oceanic CDOM (low , high ) (Stedmon and Markager, 2003). Therefore, it is also widely accepted that the spectral slope can be used as a proxy for CDOM composition. However, its usefulness is limited by the fact that depends on the wavelength interval over which it is calculated (Carder et al., 1989; Stedmon et al., 2000). Following recommendations by Helms et al. (2008), a wavelength interval of 275–295 nm was chosen for detailed spectral analysis because it demonstrates the biggest variability in optical parameters when mixing waters with contrasting optical characteristics. The ratio of values from the shorter (275–295 nm) and the longer wavelength region (350–400 nm), termed the slope ratio, , was calculated as described by Helms et al. (2008). values for terrestrial CDOM are typically 1 whereas oceanic CDOM and extensively photodegraded terrestrial CDOM are typically 1.5 (Stedmon and Nelson, 2015).
Specific UV absorbance (SUVA), defined as the UV absorbance of a water sample at 254 nm normalized for DOC concentration, is used to estimate the degree of aromaticity in bulk CDOM (Weishaar et al., 2003): where is the percentage of total carbon existing as aromatic carbon.
This equation is applicable for a wide range of aquatic environments (seas, bogs, lakes) since the authors used humic substances that have different chemical characteristics and demonstrated a strong correlation ( 0.98) between the SUVA and aromatic carbon content (Weishaar et al., 2003).
Dissolved lignin is a well-established biomarker of terrigenous DOM in the ocean and has been successfully applied as a tracer of riverine inputs in the Arctic Ocean (Fichot et al., 2016). To assess its content in coastal waters, two empirical models for the retrieval of the sum of nine lignin phenols (TDLP, nmol L) from were applied (Fichot et al., 2016). For 4 m, a “low-CDOM” sub-model based on a simple linear regression was used, For 4 m, a “high-CDOM” sub-model based on a multiple linear regression was used, CDOM fluorescence was measured with a WETStar DOM fluorometer (Table 1), which is suitable for in situ measurements without prior filtration of water (Belzile et al., 2006). The raw voltage from the fluorometer was converted to quinine sulfate units (QSU) (Belzile et al., 2006).
Statistical treatment and graphical representation of the data
Data were tested statistically using an empirical distribution function test in the Statistics 7.0 software package. Descriptive statistics were calculated for the 95 % confidence interval of the mean ( 0.95, 0.05). Most of the plots and maps in this study were created with the Ocean Data View software (Schlitzer, 2017).
Results and discussion
Hydrometeorological situation and CDOM spatial variability
The spatial distribution of sea surface salinity obtained in September 2003, 2004, 2005, 2008, and 2011 is shown in Fig. 2a. During summertime, the coastal currents transport a large part of the Lena River water eastward into the East Siberian Sea. The overall hydrological conditions in the nearshore zone were mainly determined by the interaction of river and marine water (Fig. 2a). The sea surface salinity showed a general eastward increasing trend. The salinity values varied between 3.1 (2004) and 32.34 (2011), with the lowest values associated with freshwater input from the Lena River and the higher values attributed to the presence of Pacific water. The maximum eastward spreading of river water was detected in September 2004 when the freshwater signal was found in the vicinity of Long Strait.
Comparative analysis of 2003, 2004, 2005, 2008, and 2011 data showed that, in general, CDOM concentration in ESAS surface waters varies depending upon distance from the river water source: the maximum CDOM was recorded near river mouths, and the minimum was recorded in regions remote from direct river discharge. However, the spatial distribution of waters with high CDOM values on the ESAS differed significantly in different years (Fig. 2b). The CDOM isoline equal to 15 QSU in Fig. 2b can be used to compare the distribution of river water in different years. Location of this CDOM isoline correlates spatially with isohaline 24.5, which has been suggested as a marker for the boundary of surface shelf waters diluted by riverine runoff in the Siberian seas (Nikiforov and Shpaikher, 1980; Semiletov et al., 2000, 2005).
Comparison of the discharge of the main rivers flowing into the Laptev and
East Siberian seas (the Lena and Kolyma rivers), which was based on Tiksi
Hydromet data and the
Following Proshutinsky et al. (2015), dominant atmospheric processes and differences in ice-coverage area mainly determine surface hydrology in the wind-driven ESAS. Therefore, we assume that interannual variability in the sea surface CDOM distribution on the ESAS is also determined by atmospheric processes.
National Centers for Environmental Prediction (NCEP) sea level pressure (SLP)
data were employed to describe the atmospheric circulation over the
Arctic Ocean (
Distributions of surface salinity (a) and CDOM (b) in September 2003, 2004, 2005, 2008, and 2011, and (c) sea level pressure fields (mbar) averaged over the summer season (July–September) from NCEP data. – total annual river discharge.
[Figure omitted. See PDF]
During the 2003 summer season, cyclonic atmospheric circulation
dominated over the central Arctic Ocean. SLP as low as 1005 mbar extended
over the Laptev and the East Siberian seas (Fig. 2c). The development of a
deep atmospheric depression caused onshore winds on the western periphery of
the cyclone and transferred freshened shelf waters to the east (Pipko et
al., 2008; Savel'eva et al., 2008). Waters with high CDOM concentrations
spread to 165 E, although river discharge was at a minimum in 2003
(Fig. 2b). The September 2003 sea ice extent was at a maximum from 2003
to 2011 in the Arctic Ocean (6.1 10 km,
In 2004 the summer low pressure north of the East Siberian Sea was weaker while an anticyclone formed above the Canadian Arctic Archipelago (Fig. 2c). High river discharge, ice conditions, and offshore winds determined the maximum distribution of river waters in the ice-free East Siberian Sea (Fig. 2b).
Predominance of cyclonic atmospheric circulation over the western Laptev Sea and anticyclonic circulation over the Beaufort Sea created significant SLP gradients and thus strong winds in 2005 (average wind speed of up to 11.2 m s, Fig. 2c). Strong southeastern winds prior to the expedition hampered the spread of river waters north and east of the river delta (Fig. 2b), intensified the processes of thermal abrasion (Günther et al., 2013), and facilitated the release of eroded carbon into the water. The volume of river discharge was the second largest in the period of research. This is the year when the maximum absolute CDOM value (over 100 QSU, compared to an average of 25 QSU during the study period) was recorded in Buor-Khaya Bay surface water.
In 2008, the summer atmospheric pressure field was conditioned
by the dominant anticyclone over the Beaufort Sea and a weak cyclone over
Siberia, which caused southeastern winds over the ESAS (Fig. 2c). Thus,
although the river discharge was great (the Lena River maximum discharge
occurred during the investigated period), freshened waters were located in
the southeastern Laptev Sea and the western East Siberian Sea and did not
penetrate into the eastern part of the sea. It should be noted that the ice
extent was less in September 2008 compared with the previous study periods.
The whole shelf was ice-free that year and the ice boundary moved north of
80 N in some areas (
An area of high SLP over the Arctic Basin and low SLP above the continent
occurred in the summer season (July–August) of 2011 (Fig. 2c).
The averaged meridian wind speed was 1.5 m s and the averaged area
wind speed was 3.5 m s (
The relationship between the salinity and CDOM (QSU) in the inner and middle ESAS surface water in August–September 2003, 2004, 2005, 2008, and 2011 (blue circles: salinity 24.5; red: 24.5).
[Figure omitted. See PDF]
Taken together, field data analyses showed that the prevailing type of atmospheric circulation and the position of action centers relative to each other were the dominant factors controlling the ESAS surface CDOM spatial distribution, while interannual variabilities in river discharge and ice extent were also significant. The greatest offshore propagation of waters with high CDOM content was recorded in 2004 when a cyclone was located above the central region of the Arctic Ocean basin and a high atmospheric pressure field formed over the Beaufort Sea. In September 2004 the East Siberian Sea surface salinity from Kolyma Bay (near 160 E) to Long Strait (roughly near 178 E) varied from 20 to 24, much lower than in other years (Semiletov et al., 2005), which is reflected in high CDOM values. Note that the prevailing type of atmospheric circulation and the position of atmospheric action centers are also dominant factors controlling variability in Siberian river discharge (Semiletov et al., 2000; Savelieva et al., 2000). Thus, this interplay between atmospheric forcing factors, riverine discharge, and redistribution of fresh water traced by CDOM values across the Arctic seas should be studied further to achieve a better understanding of Arctic system complexity.
Depth profiles of salinity (a) and CDOM (QSU) (b) measured at two stations on the ESAS and (c) relationship between CDOM and salinity, September 2004; see Fig. 1 for location of stations.
[Figure omitted. See PDF]
A significant negative correlation between CDOM and salinity in surface ESAS water ( 0.88, Fig. 3) in the salinity range from 3 to 24.5 indicates a terrigenous source for CDOM and somewhat conservative mixing of CDOM between fresh water and seawater. Deviations of CDOM values from the trend line are determined by the presence of both meltwater depleted in CDOM (Anderson and Amon, 2015) and multiple riverine sources with varying DOM properties. At higher salinities ( 24.5) correlation in the surface layer between these parameters is practically absent (Fig. 3), and the distribution of CDOM throughout the water column is completely different in different ESAS areas (Fig. 4). Figure 4 illustrates two examples of representative salinity and CDOM profiles measured on the ESAS in September 2004 at station No. 118 located near the Lena River mouth and at station No. 97 located in Long Strait, farther away from direct riverine influence. Note that a significant negative correlation between CDOM fluorescence and salinity was found for all water column data in the 2004 survey ( 0.84, 8920), indicating a predominantly riverine origin of CDOM. Inspection of these individual profiles shows a more complex situation (Fig. 4c). Each of the two profiles collected in the relatively shallow shelf water of the Laptev and East Siberian seas showed a significant correlation between CDOM and salinity, but these correlations had opposite signs. At the western station No. 118 CDOM values decreased with higher salinity ( 0.99), while at the eastern station No. 97 CDOM values were positively correlated with the salinity ( 0.84). Thus, at higher salinity on the eastern ESAS, the presence of water masses with distinctive optical properties was responsible for the different behavior of CDOM.
Spatial variability in CDOM spectral characteristics
Spectral characteristics (, , ) that provided both quantitative and qualitative information about CDOM were determined during field work in 2004, 2005, and 2011.
CDOM absorption spectra for September 2004 surface waters at two stations (stations 118 and 97) located in contrasting shelf zones (Fig. 1) are shown in Fig. 5. Spectrum for station 60 located in the East Siberian Sea (in a moderate zone of mixing river and ocean waters) is also presented. CDOM absorption spectra measured for different waters have substantially different levels of absorption. Despite CDOM dominating the absorption spectra in the blue and UV wavebands, the absorption coefficient for these stations demonstrated considerable spatial variability, from 0.7 m (station 97) to 11.1 m (station 118). Values obtained in the area of maximal Lena River influence coincided well with data given in Walker et al. (2013) for a mid-flow regime of the Lena River (about 13.1 m). It was shown that during all flow regimes was highest in the Lena River relative to other large Arctic rivers (Walker et al., 2013).
The relationship between river water values and river discharge volume (Walker et al., 2013) could also be traced in the ESAS surface waters. According to our data, the values also increased in the shelf waters with an increase in riverine runoff (Figs. 2b and 6).
The multiyear surface water distribution showed the same feature for each year: the highest values were observed in the Laptev Sea waters under direct Lena River influence, with a decrease in toward the saltier waters of the Chukchi Sea (Fig. 6).
Surface CDOM absorption coefficient spectra (m) for stations (St.) 118, 60, and 97, September 2004; see Fig. 1 for location of stations.
[Figure omitted. See PDF]
The values and spectral slope ratio correlated well with both DOM molecular weight and source (Helms et al., 2008). The lowest 14.7 m in September 2004 was found near the river delta in the Laptev Sea (Fig. 5). This value is in the same range as previously reported values characterizing the surface waters of the eastern Arctic seas, which are dominated by allochthonous DOM during the late summer season (Stedmon et al., 2011; Walker et al., 2013; Gonçalves-Araujo et al., 2015). This value is also comparable to values found in other rivers studied in the Pacific sector of the Arctic. For example, reaches 12 m in the Yukon River during the peak flood periods when the concentrations of DOM and its colored fraction are the greatest (Spencer et al., 2009). increases to 18.9 m in the western East Siberian Sea where river influence decreases. further increases to 21 m (Fig. 5) in Long Strait where primary production is high (Walsh et al., 1989) and the main portion of DOM is produced in situ. Overall, this value was significantly lower than values observed for open ocean waters, which are typically 25–30 m (Blough and Del Vecchio, 2002). The values characteristic for open seawater (28–29 m) were found in the east of the East Siberian Sea in September 2011, when a weak spreading of the riverine waters was detected.
The relationship between CDOM absorption coefficient at the 350 nm wavelength (, m), , the aromatic carbon content (, %), and salinity in the ESAS surface waters for September 2004 (a), 2005 (b), and 2011 (c).
[Figure omitted. See PDF]
was calculated for the shallow ESAS characterized by different intensities of terrigenous influence. The lowest values were obtained in the southeastern Laptev Sea (0.78) and the maximum (4.0) was found in the area influenced by the highly productive Pacific-origin waters in Long Strait where the optical properties are determined by phytoplankton-derived autochthonous CDOM with low molecular weight and lower numbers of aromatic functional groups (Fig. 6). High values of in the surface waters of the eastern East Siberian Sea confirm conclusions about weak spreading of riverine waters on the ESAS in 2011 and point to effective transport of Pacific-origin water on the ESAS under the anticyclonic type of atmospheric circulation (Fig. 2).
Figure 6a demonstrates the spatial distribution of aromatic carbon () in ESAS surface water in September 2004. The corresponding calculations show that the content of aromatic carbon within DOM remains almost constant in the region of substantial river impact to 165 E (Fig. 6a). In the eastern part, a gradual decrease in aromaticity percentage was observed, indicating the contribution of Pacific-origin waters, where allochthonous DOM with predominantly aliphatic character and much weaker absorption capabilities predominates.
Optical characteristics of the ESAS biogeochemical provinces
As was shown in previous studies, the concentrations of CDOM vary significantly within the ESAS (Belzile et al., 2006; Gonçalves-Araujo et al., 2015; Stedmon et al., 2011; Walker et al., 2013), mainly because of variations in the sources of DOM. The current multiyear investigations of the ESAS extend previous studies showing not only the inhomogeneity of spatial DOM variability but also temporal DOM variability and its spectral characteristics distribution in the shallow shelf waters.
The relationship between the dissolved lignin concentrations (TDLP, nmol L) and salinity in the ESAS surface waters, September 2004 (a), 2005 (b), and 2011 (c), where and represent correlation coefficients between TDLP and salinity for western and eastern parts of the ESAS, respectively, for these three years combined.
[Figure omitted. See PDF]
We found a stable tendency to a reduction in the concentrations of CDOM and aromaticity and an increase in and values in the eastern (and northern) direction from the delta of the Lena River, which is the main supplier of dissolved OM to the eastern Arctic shelf. Our comprehensive data set made it possible to distinguish two ESAS provinces with contrasting biogeochemical regimes based on their spectral characteristics (Table 2). We used an approach described by Semiletov et al. (2005) and Pipko et al. (2005), which shows that, based on the hydrological and hydrochemical data distribution, two biogeochemical provinces (areas) could be identified in the shallow ESAS: a western area (heterotrophic biogeochemical province) that is influenced strongly by freshwater flux and transport of coastally eroded particulate material enriched by OC and an eastern area (autotrophic biogeochemical province) that is under the influence of highly productive Pacific-derived waters. A salinity of 24.5 was the conventional boundary of the western area. The spectral characteristics of CDOM were significantly correlated with salinity in this part of the ESAS; the correlation coefficient between and salinity for three years combined was 0.81. The relationship indicates that the conservative mixing of riverine and ocean waters plays a dominant role in regulating the variability in their values in this area. A similar pattern was established for the distribution of CDOM fluorescence values (Fig. 3). There was no relationship between optical parameters and salinity for the eastern part of the ESAS (Fig. 3); correlation between spectral indices and salinity was also absent in the eastern part, with a correlation coefficient between and salinity at 0.16 and between and salinity at 0.02. From year to year, depending on the dominant wind regime, the longitudinal boundary between western and eastern areas may shift by 10 longitude and more.
Correlation between CDOM (QSU) and the absorption coefficient at 350 nm (, m) in ESAS surface water (a) and the relationship between CDOM (QSU) and absorption coefficient at 370 nm (, m) in the water column (b) in September 2004. Grey is our data in the Laptev Sea ( 23); green is our data in the East Siberian Sea ( 69), and red is data from Belzile et al. (2006) ( 23).
[Figure omitted. See PDF]
The data obtained allowed us to calculate the lignin content in surface waters of the inner and middle ESAS based on CDOM spectral characteristics (Fig. 7) and to estimate the average values in each of the provinces. The most significant difference in the average values that characterize the western and eastern shelf regimes were found for the dissolved lignin concentration (Table 2). Lignin is a well-established biomarker of terrigenous OM in the ocean (Hedges et al., 1997; Fichot and Benner, 2014; Fichot et al., 2016). It is exclusively produced on land by vascular plants. As a result, lignin extracted from seawater and marine sediments has long been used to derive qualitative and quantitative information about the origins, transformations, and fates of terrigenous OM in the ocean (Amon et al., 2012; Fichot and Benner, 2014; Tesi et al., 2014; Fichot et al., 2016). The three large Siberian rivers, Lena, Yenisey, and Ob, which also have the highest proportion of forests within their watersheds among the six largest Arctic rivers, contribute about 90 % of the total lignin discharge to the Arctic Ocean; the Lena River alone contributes about 48 % of the total annual lignin discharge into the Arctic Ocean (Amon et al., 2012). The calculated dissolved lignin concentration on the west ESAS in the late summer–fall season ranged from 11.9 to 263.2 nmol L with a mean of 89.5 nmol L, indicating a strong influence of continental runoff on the shelf waters. The values obtained were much higher than lignin concentrations in the surface waters of the outer shelf and the continental slope of the Laptev and East Siberian seas (Fichot et al., 2016; Kaiser et al., 2017), where the influence of river flow is much weaker. The maximum concentrations of dissolved lignin were found in the shelf waters near the mouth of the Lena, Indigirka, and Kolyma rivers (263, 101, and 96 nmol L, respectively) (Fig. 7); the observed values were significantly lower than the concentrations measured in the main streams of these rivers in the late summer–fall seasons (Mann et al., 2016). According to the obtained data, the concentrations of dissolved lignin decreased from the mouth of the Lena River to the mouths of the Indigirka and Kolyma rivers; thus, we can trace the signature of each river on the shelf from the measured spectral characteristics, as well as from the parameters calculated on the basis of those characteristics. Thus, at salinities equal to 10, in the shelf waters near the river deltas, concentrations of dissolved lignin decrease in the eastern direction, from 180 nmol L near the Lena delta to 101 and 85 nmol L near the mouths of the Indigirka and Kolyma, respectively. This tendency agrees well with the distribution of lignin phenol concentrations in Siberian river waters (Mann et al., 2016).
In eastern ESAS surface waters (Pacific-influenced province) the average dissolved lignin concentration decreased by more than an order of magnitude compared to the western part (from 89.5 to 5.1 nmol L, Table 2). This indicates a minor effect of the terrigenous OM source on the biogeochemical regime of eastern ESAS waters. Together with the distribution of other optical parameters, the dynamics of lignin content indicate the marine DOM origin in the eastern ESAS and a transition from a heterotrophic to an autotrophic water regime over this part of the shelf. Note that the obtained values were slightly lower than the concentrations of dissolved lignin calculated for the surface water of the deep parts of the Laptev and East Siberian seas, where river water penetration is only possible under certain atmospheric circulation conditions (Bauch et al., 2011; Pipko et al., 2015, 2017; Kaiser et al., 2017).
The presented values of CDOM spectral parameters are comparable to findings from other studies previously conducted in this region (Stedmon et al., 2011; Walker et al., 2013; Gonçalves-Araujo et al., 2015; Mann et al., 2012, 2016). However, our data allow us to trace the dynamics of CDOM spectral characteristics in a highly dynamic shallow region of the Arctic shelf, between heterotrophic riverine waters (Stedmon et al., 2011; Walker et al., 2013; Gonçalves-Araujo et al., 2015; Mann et al., 2012, 2016) and autochthonous seawater (Fichot et al., 2016; Kaiser et al., 2017).
Rapid assessment of dissolved organic carbon based on optical characteristics of dissolved organic matter
Conventional methods for the analysis of DOC are restricted to measurements of discrete samples and are limited to providing synoptic coverage on relatively small spatial scales. Estimating DOC concentrations via measuring optical DOM properties (absorption and fluorescence) therefore represents a compelling alternative (Fichot and Benner, 2011).
Methods to predict DOC concentrations from absorbance characteristics have been attempted since the early 1970s (Banoub, 1973; Lewis and Tyburczy, 1974). However, a prerequisite for successfully predicting DOC concentration is that the nonabsorbent DOC is at a constant or low level (Ferrari and Dowell, 1998). The processes responsible for DOC and CDOM distribution in the open ocean are typically independent, and the two pools usually demonstrate a negative rather than a positive correlation (Coble, 2007). The situation is different in shelf areas where terrestrial discharge is strong and distribution of river water and seawater controls the distribution of both DOC and CDOM. A novel method to accurately retrieve DOC concentrations from CDOM absorption coefficients for the salinity range of 0–37, typically encountered in river-dominated ocean margins, was successfully developed by Fichot and Benner (2011).
DOC concentration (M) versus CDOM (QSU) in the ESAS surface water, September 2004 (a), 2008 (b), and combined for two years (c); (d) estimated DOC concentration against measured DOC concentration with 10 % error bars.
[Figure omitted. See PDF]
DOC distribution (M) in the ESAS surface waters in September 2004: (a) measured DOC concentrations and (b) concentrations of DOC estimated from CDOM.
[Figure omitted. See PDF]
Here we present a method to estimate DOC concentration from in situ CDOM fluorescence using data collected in September 2004 and 2008 in surface waters of the shallow ESAS, where the Lena River is the main riverine source.
DOC and CDOM concentrations were measured simultaneously in the surface shelf waters of the Laptev and East Siberian seas during the 2004 and 2008 surveys to determine relationships between the two parameters.
In 2004, along with the study of filtered seawater sample absorption coefficients, CDOM was measured in situ using a WETStar fluorometer. Strong positive correlation ( 0.98) was observed between measured in the filtered samples and CDOM of the unfiltered samples measured simultaneously in the ESAS surface water at 46 stations (Fig. 8).
This confirms previous results based on data obtained exclusively in the East Siberian Sea (Belzile et al., 2006) showing that the presence of suspended matter in water samples has little impact on CDOM values even in regions of intensive terrigenous discharge. We have now compared the relationship between CDOM and , which quantifies CDOM, using the East Siberian Sea data reported by Belzile et al. (2006) and our data obtained in the Laptev and East Siberian seas. A good agreement was found between Belzile's and our data (Fig. 8b). The correlation coefficients between CDOM and have been found to be the same in the ESAS ( 0.97, 92) and in the Belzile et al. samples from Boothbay Harbor, West Harbor Pond, the Beaufort Sea, and the East Siberian Sea ( 0.98, 74).
The relationship between DOC and CDOM showed a strong positive correlation for the 2004 and 2008 cruises ( 0.99 for each survey, Fig. 9). We combined the two data sets to obtain a general equation connecting these parameters and to explore our capability of predicting DOC concentration from the linear relationship between DOC and CDOM in the studied season.
An important implication of the obtained total relationship between DOC and CDOM (Fig. 9d) is the capability to constrain the DOC concentration for the ESAS surface waters in the late summer season using information about in situ CDOM fluorescence. It allows DOC values to be calculated with a high spatial resolution based on direct fluorescence measurements, avoiding various artifacts induced by filtering and storing samples and, thus, adding to the limited available data on DOC distribution over the ESAS.
Overall, this simple empirical model provides a practical means to derive reasonably accurate estimates of DOC concentrations from CDOM in coastal waters of the Siberian Arctic shelf (Figs. 9 and 10). The model adequately reproduces the most important features of the measured DOC distribution in the shelf waters. A comparison of the measured and calculated DOC indicates that the model restored DOC values within 10 % of the measured values (Fig. 9). The percentage of error was significantly higher than 10 % only for two points in Long Strait, where influence of the Pacific-origin water was significant (Fig. 9d). The model might also slightly overestimate some low DOC concentrations found in water with increased salinity (in the vicinity of Long Strait).
DOM optical characteristics, dissolved lignin, and salinity in two biogeochemical provinces of the inner and middle ESAS surface water (obtained during the 2004, 2005, and 2011 surveys).
Parameter | Absorption coefficient | Dissolved lignin | |||||||||||||||||||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
region | (), m | , m | CDOM, QSU | (TDLP), nmol L | Salinity | ||||||||||||||||||||||||||||||
AVG | Md | SD | Min | Max | AVG | Md | SD | Min | Max | AVG | Md | SD | Min | Max | AVG | Md | SD | Min | Max | AVG | Md | SD | Min | Max | AVG | Md | SD | Min | Max | ||||||
Western | 5.2 | 4.25 | 3.05 | 0.5 | 17.3 | 17.6 | 17.5 | 1.7 | 10.4 | 21.1 | 1.1 | 1.0 | 0.2 | 0.8 | 1.8 | 43.4 | 37.4 | 28.5 | 3.4 | 135.9 | 89.5 | 73.4 | 53.0 | 11.9 | 263.2 | 14.4 | 15.7 | 5.3 | 0.1 | 24 | |||||
province | |||||||||||||||||||||||||||||||||||
90 | |||||||||||||||||||||||||||||||||||
Eastern | 0.6 | 0.6 | 0.4 | 0.1 | 1.4 | 22.6 | 23.3 | 4.7 | 13.1 | 29.0 | 2.9 | 3.2 | 1.5 | 0.8 | 4.8 | 1.6 | 1.1 | 1.4 | 0.4 | 5.1 | 5.1 | 4.6 | 3.0 | 1.6 | 10.8 | 28.0 | 28.1 | 2.7 | 24.7 | 32.1 | |||||
province | |||||||||||||||||||||||||||||||||||
9 |
AVG – average value; Md – median value; SD – standard deviation. is the number of measurements.
Therefore, this rapid assessment of DOC concentrations on the ESAS using a WETStar fluorometer is an effective tool for obtaining information on DOC distribution in summer seasons. This approach is reliable over the salinity range of 3 to 24.5; the lower limit is defined as the lowest conventional salinity level at which all the major marginal filters have already been passed (Lisitsyn, 1994) and the upper limit is a border of riverine water distribution (Nikiforov and Shpaikher, 1980).
Conclusions
A multiyear study of DOM optical parameters and the spectral characteristics of the DOM chromophoric fraction was carried out, repeatedly probing the summer–fall seasons on the broadest and shallowest shelf in the world, the vast ESAS, from the Lena River delta in the Laptev Sea to Long Strait in the East Siberian Sea. For the first time, CDOM and DOC interannual variability in connection with atmospheric pressure fields and wind-driven water circulation was considered. The atmospheric circulation regime is the dominant factor controlling hydrography and spatial expansion of the area of freshwater influence that determines CDOM–DOM spatial distribution on the ESAS.
The dynamics of DOM optical properties provided a new insight into biogeochemical processes in the ESAS. The spectral characteristics of CDOM were applied to identify two clearly distinct biogeochemical provinces in the surveyed area. The analysis of CDOM spectral characteristics has clearly shown that the major part of the Laptev and East Siberian sea shelf is influenced by terrigenous DOM with high aromaticity and high lignin content, transported by riverine discharge.
The content of aromatic carbon within DOC remains almost constant in the western ESAS, which is the region of substantial river impact, while in the eastern ESAS, a gradual decrease in aromaticity percentage was observed, indicating an increasing contribution of Pacific-origin waters, where allochthonous DOM with predominantly aliphatic character and much lesser absorption capabilities prevails.
We found a stable tendency of CDOM and dissolved lignin concentrations to be reduced and and values to increase in the eastern direction from the delta of the Lena River, which is the main supplier of dissolved OM to the Eastern Arctic shelf.
The strong correlation between DOC and CDOM concentrations in surface shelf waters that are influenced by terrigenous discharge makes it possible to calculate DOC content from CDOM values assessed in situ using the WETStar fluorometer. Moreover, the reliable estimation of optical characteristics of coastal waters is crucial for validating and calibrating remote sensing data processing results. Employing optical techniques can increase the temporal and spatial coverage of DOM measurements across the ESAS and help to more accurately estimate the amount of terrigenous DOM; this estimation is necessary for understanding how carbon budgets and fluxes will be altered under future climate change scenarios.
DOM and related data are publicly and freely available at the
open-access Stockholm University Bolin Centre Database (
The authors declare that they have no conflict of interest.
This article is part of the special issue “Climate–carbon–cryosphere interactions in the East Siberian Arctic Ocean: past, present and future (TC/BG/CP/OS inter-journal SI)”. It is not associated with a conference.
Acknowledgements
This work was supported by the Russian Government (grant 14.Z50.31.0012), the Far Eastern Branch of the Russian Academy of Sciences (FEBRAS); the International Arctic Research Center (IARC) of the University of Alaska Fairbanks through NOAA Cooperative Agreement NA17RJ1224; the US National Science Foundation (nos. OPP-0327664, OPP-0230455, ARC-1023281, ARC-0909546); and the NOAA OAR Climate Program Office (NA08OAR4600758). Svetlana P. Pugach and Irina I. Pipko thank the Russian Foundation for Basic Research (RFBR, no. 18-05-00559a) and Evgeny A. Shirshin and Irina V. Perminova acknowledge RFBR grant nos. 15-05-09284 and 16-04-01753. Natalia E. Shakhova and Alexey S. Ruban acknowledge the Russian Science Foundation (grant no. 15-17-20032). Örjan Gustafsson acknowledges support from the Swedish Research Council, the Knut and Alice Wallenberg Foundation, and an ERC Advanced Grant (ERC-AdG CC-TOP project no. 695331). Igor P. Semiletov and Natalia E. Shakhova acknowledge support from the ICE-ARC EU FP7 project. We thank Ronald Benner for DOC measurements in water samples taken in the ESAS onboard HV Ivan Kireev in 2004 and the two anonymous reviewers for their constructive comments. We thank Candace O'Connor for English editing on a previous version of the paper. Edited by: Leif Anderson Reviewed by: two anonymous referees
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Abstract
The East Siberian Arctic Shelf (ESAS) is the broadest and shallowest continental shelf in the world. It is characterized by both the highest rate of coastal erosion in the world and a large riverine input of terrigenous dissolved organic matter (DOM). DOM plays a significant role in marine aquatic ecosystems. The chromophoric fraction of DOM (CDOM) directly affects the quantity and spectral quality of available light, thereby impacting both primary production and ultraviolet (UV) exposure in aquatic ecosystems.
A multiyear study of CDOM absorption, fluorescence, and spectral characteristics was carried out over the vast ESAS in the summer–fall seasons. The paper describes observations accomplished at 286 stations and 1766 in situ high-resolution optical measurements distributed along the nearshore zone. Spatial and interannual CDOM dynamics over the ESAS were investigated, and driving factors were identified. It was shown that the atmospheric circulation regime is the dominant factor controlling CDOM distribution on the ESAS.
This paper explores the possibility of using CDOM and its spectral parameters to identify the different biogeochemical regimes in the surveyed area. The analysis of CDOM spectral characteristics showed that the major part of the Laptev and East Siberian seas shelf is influenced by terrigenous DOM carried in riverine discharge. Western and eastern provinces of the ESAS with distinctly different DOM optical properties were also identified; a transition between the two provinces at around 165–170
In the western ESAS, a region of substantial river impact, the content of aromatic carbon within DOM remains almost constant. In the eastern ESAS, a gradual decrease in aromaticity percentage was observed, indicating contribution of Pacific-origin waters, where allochthonous DOM with predominantly aliphatic character and much smaller absorption capacity predominates. In addition, we found a stable tendency towards reduced concentrations of CDOM and dissolved lignin and an increase in spectral slope and slope ratio values eastward from the Lena River delta; the Lena is the main supplier of DOM to the eastern Arctic shelf.
The strong positive correlation (
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1 V. I. Il'ichev Pacific Oceanological Institute, Russian Academy of Sciences, Vladivostok, 690041, Russia; National Research Tomsk Polytechnic University, Tomsk, 634050, Russia
2 National Research Tomsk Polytechnic University, Tomsk, 634050, Russia; International Arctic Research Center, University of Alaska Fairbanks, Fairbanks, AK 99775, USA
3 Department of Physics, Lomonosov Moscow State University, Moscow, 119991, Russia
4 Department of Chemistry, Lomonosov Moscow State University, Moscow, 119991, Russia
5 Department of Environmental Science and Analytical Chemistry, Stockholm University, Stockholm, 10691, Sweden; Bolin Centre for Climate Research, Stockholm University, Stockholm, 10691, Sweden
6 Aerocosmos Research Institute of Airspace Monitoring, Moscow, 105064, Russia
7 National Research Tomsk Polytechnic University, Tomsk, 634050, Russia
8 V. I. Il'ichev Pacific Oceanological Institute, Russian Academy of Sciences, Vladivostok, 690041, Russia; National Research Tomsk Polytechnic University, Tomsk, 634050, Russia; International Arctic Research Center, University of Alaska Fairbanks, Fairbanks, AK 99775, USA