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Characterization of Natural and Affected Environments
Accumulation of terrestrial dissolved organic matter potentially enhances dissolved methane levels in eutrophic Lake Taihu, China Yongqiang Zhou, Qitao Xiao, Xiaolong Yao, Yunlin Zhang, Mi Zhang, Kun Shi, Xuhui Lee, David C Podgorski, Boqiang Qin, Robert G. M. Spencer, and Erik Jeppesen Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b02163 • Publication Date (Web): 24 Aug 2018 Downloaded from http://pubs.acs.org on August 27, 2018
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Environmental Science & Technology
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Accumulation of terrestrial dissolved organic matter potentially enhances dissolved methane levels in
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eutrophic Lake Taihu, China
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Yongqiang Zhoua, b, c, 1, Qitao Xiaoa, 1, Xiaolong Yaoa, b, Yunlin Zhanga, b, *, Mi Zhangd, Kun Shia, b, Xuhui
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Leed, David C. Podgorskie, Boqiang Qina, b, Robert G.M. Spencerf, Erik Jeppesenc, g
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a
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of Sciences, Nanjing 210008, China
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b
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c
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d
State Key Laboratory of Lake Science and Environment, Nanjing Institute of Geography and Limnology, Chinese Academy
University of Chinese Academy of Sciences, Beijing 100049, China
Sino-Danish Centre for Education and Research, Beijing 100190, China
Yale-NUIST Center on Atmospheric Environment, International Joint Laboratory on Climate and Environment Change
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(ILCEC), Nanjing University of Information Science and Technology, Nanjing 210044, China
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e
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70148, Louisiana, USA
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f
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g
Pontchartrain Institute for Environmental Sciences, Department of Chemistry, University of New Orleans, New Orleans
Department of Earth, Ocean and Atmospheric Science, Florida State University, Tallahassee, FL 32306, USA
Department of Bioscience and Arctic Research Centre, Aarhus University, Vejlsøvej 25, DK-8600 Silkeborg, Denmark
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*
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of Sciences, 73 East Beijing Road, Nanjing 210008, P. R. China, Tel: +86-25-86882198, Fax:
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+86-25-57714759. Email address:
[email protected].
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1
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This manuscript has not been published or accepted elsewhere. We have not submitted it to any other
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journals. The manuscript is organized according to the format and structure of your journal.
Corresponding author: Yunlin Zhang, Nanjing Institute of Geography and Limnology, Chinese Academy
These authors contributed equally to this manuscript.
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Abstract: Inland waters play an important role for the storage of chromophoric dissolved organic matter
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(CDOM) and outgassing of methane (CH4). However, to date, linkages between the optical dynamics of
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CDOM and dissolved CH4 levels remain largely unknown. We used multi-year seasonal data series
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(2012–2014) collected from Lake Taihu and 51 connecting channels to investigate how CDOM optical
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dynamics may impact dissolved CH4 levels in the lake. High dissolved CH4 in the northwestern inflowing
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river mouths coincided with high underwater UV-Vis light availability, dissolved organic carbon (DOC),
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chemical oxygen demand (COD), DOM aromaticity, terrestrial humic-rich fluorescence, in situ measured
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terrestrial CDOM, and depleted dissolved oxygen (DO), stable isotopic δ2H and δ18O compared with other
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lake regions. Our results further revealed positive relationships between dissolved CH4 and CDOM
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absorption at 350 nm, i.e. a(350), COD, DOC, terrestrial humic-rich fluorophores, and DOM
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aromaticity, and negative relationships between dissolved CH4 and DO, δ2H, and δ18O. The central lake
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samples showed a major contribution of terrestrial-sourced molecular formulas to the ultrahigh resolution
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mass spectrometry data, suggesting presence of allochthonous DOM sources even here. We conclude that
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an elevated terrestrial CDOM input likely enhances dissolved CH4 levels in Lake Taihu.
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Keywords: dissolved methane (CH4); chromophoric dissolved organic matter (CDOM); Lake Taihu;
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carbon cycling; parallel factor analysis (PARAFAC)
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Introduction Inland waters (rivers, lakes, ponds, etc.) play an important role for the storage and outgassing of 1, 2
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greenhouse gases
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organic carbon transformation and methane (CH4) emission 3. Globally, lakes cover 3.7% of the Earth’s
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ice-free land surface area and contribute approximately 20% of the CH4 outgassing from all natural
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ecosystems 4. Eutrophication and climate warming have together fueled the outgassing of CH4 from lake
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ecosystems
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methanogenesis and oxidation of CH4
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(acetoclastic methanogenesis) in carbon-rich environments serving as the terminal step in the
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decomposition of dissolved organic matter (DOM) has traditionally been considered as the primary
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pathway of biological CH4 production 6, 7. However, recent studies have highlighted that a large fraction of
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CH4 oversaturation in aquatic environments can be produced in oxygenated surface waters
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paradoxical supersaturation of CH4 in oxygenated surface waters has been suggested to be a result of
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microbial transformation of DOM
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may be more important than microbial degradation in controlling the decomposition of newly exposed
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terrestrial DOM, further stimulating the outgassing of greenhouse gases in Arctic waters
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experiments revealed significant photochemical CH4 production in the anoxic water column 12, especially
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in the inflowing river mouths in this case.
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3, 5
. Lake ecosystems, especially the most common shallow lake types, are hotspots of
. The net outgassing of CH4 from lakes to the atmosphere is the difference between
8, 9
6, 7
. Anaerobic fermentation of acetate by certain archaea
8, 9
. The
. Recent studies have also suggested that photochemical degradation
10, 11
. Irradiation
DOM plays a vital role in biogeochemical processes in inland waters and the composition of lake 13, 14
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DOM is highly variable, depending on its source, biological reactivity, and time of processing
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Terrestrial humic-rich substances usually contribute primarily to the DOM pool in lakes in the monsoon
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region, while autochthonous inputs from algae and macrophytes can also be important substrates for
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microbial loop 13-15. Both terrestrial and autochthonous DOM can be utilized and transformed by microbial
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and photochemical degradation and are important sources of carbon in lake ecosystems
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of terrestrial and autochthonous algal-derived CDOM in inflowing river mouths can further result in
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enhanced degradation of carbon and nitrogen in lakes, known as the priming effect
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humic-rich substances including polycyclic aromatics and vascular plant-derived polyphenols are
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photoreactive and photochemical degradation augments the lability of CDOM to the subsequent biological
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degradation 14, with CH4 being released as byproduct 8, 9. Urbanization, industrialization, and conversion of
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land to agriculture have led to increased discharge of domestic sewage and agricultural and industrial
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effluents to lakes, which likely enhances microbial- and photochemical-induced oxygen depletion of the
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river mouth water column
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aquatic ecosystems depends largely on its sources and chemical composition 19. Oxygen depletion in river
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mouths resulting from an augmented terrestrial DOM input has, however, lowered bacterial and archaea
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oxidation of CH4 (aerobic and anaerobic, respectively) to CO2, a major pathway of biological CH4
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oxidation, consequently reducing the levels of dissolved CH4
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composition of DOM for the levels of dissolved CH4 in lake ecosystems remains to be elucidated.
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16, 17
. The mixing
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. Terrestrial
. The susceptibility of DOM to microbial and photochemical degradation in
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. To date, however, the role of the optical
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Lake Taihu is well-suited for the undertaking of studies to reveal the linkage between CDOM optical
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dynamics and dissolved CH4 levels as it has high inputs of both allochthonous and autochthonous DOM.
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The Lake Taihu watershed is located in the Yangtze River Delta, the most urbanized area in China with a
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high population density and extensive economic development. Excessive input of nutrients has led to the
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occurrence and persistence of nuisance blooms of cyanobacteria and high heterogeneity of DOM
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molecular weight and dissolved CH4 concentrations in the lake 21. The direction of the water flow of the
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channels connecting Lake Taihu with the fluvial plain is primarily controlled by meteorological and
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anthropogenic disturbance (e.g. floodgates) 22. However, to date, the relative importance of allochthonous
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and autochthonous CDOM, regulated by the inflow and backflow discharge (Qnet, net inflow discharge),
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for the dissolved CH4 levels has not been assessed.
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We studied how the optical compositional dynamics of CDOM mediated by net inflow discharge
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quantitatively drives the levels of dissolved CH4. A total of 700 CDOM samples and 552 headspace CH4
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samples were collected in Lake Taihu and the connecting channels in the watershed from February 2012 to
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November 2014. We expected to find large variations in dissolved CH4 levels among lake regions and
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hydrological seasons due to different net inflow of terrestrial CDOM.
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Materials and methods
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Study sites
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Lake Taihu has an area of 2,338.1 km2 and a water retention time of ~ 309 d
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, and the lake
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watershed covers 36,500 km2. A total of 172 channels are connected with the lake and the elevation of the
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water surface of the connecting channels is mostly lower than 5 meters 24. The water exchange between the
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lake and the connecting channels is complex and similar to that of lagoons. This leads to large variations in
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the amount and composition of DOM in different areas of the lake. Information about hydraulic
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sub-watersheds and hydrological data collection, multi-year variations of daily δ2H and δ18O (Fig. S2), and
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monthly Qnet (inflow – backflow runoff) in each hydraulic sub-watershed (Fig. S3; Table S1) can be found
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in the Supporting Information.
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Light availability, Secchi disk depth (SDD), dissolved oxygen (DO), and CDOM optical sampling
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collection
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Water depth (WD) was measured in situ using a scaled straight stick, while Secchi disk depth (SDD)
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was determined in situ using a 30 cm diameter black and white Secchi disk. The dissolved oxygen (DO)
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concentration was determined in situ at 0.5 m depth using a YSI 6600 V2 multi-sensor sonde. WD, SDD,
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and DO data were only available from the seasonal campaign conducted in Lake Taihu from February
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2012 to November 2014 (Table S2).
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CDOM absorption and fluorescence measurements were conducted to trace the sources and optical
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properties of CDOM and to investigate the impacts of CDOM optical compositional dynamics on the
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levels of dissolved CH4. Detailed information about the seasonal CDOM sampling collection in the lake
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and the connecting channels from 2012 to 2014 can be found in the Supporting Information (Table S2).
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Previous studies have revealed that relatively high concentrations of dissolved organic carbon (DOC) 25, 26
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are exported to Lake Taihu from the northwestern sub-watershed via Zhushan Bay
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sampling campaign (n = 61) was therefore carried out in Zhushan Bay, located in northwestern Lake Taihu,
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in April 2014 with the aim to trace the sources of CDOM and assess light availability (Fig. 1). Detailed
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information about the measurement of CDOM fluorescence using an in situ CDOM fluorescence sensor,
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light availability indices including the diffuse attenuation coefficient, Kd, of light in the UV region and the
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photosynthetically active radiation (PAR, 400-700 nm), as well as measurements of total suspended matter
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(TSM) and inorganic suspended matter (ISM), can be found in the Supporting Information (Table S2).
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Stable isotopic δ2H and δ18O sampling collection and measurements
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Stable isotopic composition of surface water provides information on hydrological and meteorological
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processes as evaporation fuels the accumulation of the heavier isotopic water molecules (H2HO and H218O)
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in the liquid water
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evaporation in Lake Taihu. We assumed that the source of riverine CDOM in Lake Taihu is consistent with
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the depletion of δ2H and δ18O. Detailed information about the stable isotopic δ2H and δ18O sampling
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collection in the lake and the connecting channels can be found in the Supporting Information (Table S2).
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and these can therefore be used to trace the sources of riverine CDOM and
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Chlorophyll-a (Chl-a), chemical oxygen demand (COD), DOC and CDOM optical measurements
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Previous studies have indicated that the degradation of algal mats can impact the levels of dissolved 1, 3, 21
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CH4
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and dissolved CH4 concentrations in Lake Taihu was investigated. DOC, COD, and optical measurements
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of CDOM were used to trace the sources and optical composition of CDOM (for information about Chl-a,
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DOC, COD, and CDOM optical measurements see Supporting Information, Table S2).
. In this study, Chl-a was used as a surrogate for algal biomass, and the linkage between Chl-a
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CDOM absorption indices included the absorption coefficient at 350 nm, a(350), the ratio of
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a(250)/a(365), the spectral slope (S275–295), and the slope ratio (SR), which can be used to trace the amount
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of CDOM
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about the measurement and calculation of CDOM absorption indices is given in the Supporting
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Information (Table S2).
17, 19, 28
and the relative molecular size and aromaticity of CDOM
29, 30
. Detailed information
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CDOM fluorescence (excitation-emission matrices, EEMs) measurements and the calibration
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processes including corrections of Raman and Rayleigh peaks, inner-filter effects, and normalization of
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Raman units (R.U.) can be found in the Supporting Information. PARAFAC is a three-way multi-variable
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data analysis technique that statistically decomposes the complex mixture of CDOM fluorophores into
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trilinear components with a single emission maximum and corresponding to a group of highly covarying
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analytes 31, 32. Using PARAFAC modeling, a six-component model was well validated (Fig. 2; Fig. S4; Fig.
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S5) (see details about the modeling and validation in the Supporting Information, Table S2).
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Dissolved CH4 sampling collection and measurements
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In total, dissolved CH4 concentrations were determined in 552 headspace samples (29 lake sites × 4
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seasons × 3 years and 51 river sites × 4 seasons) (Fig. 1; Table S2). Direct measurement of dissolved CH4
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was performed by headspace equilibration following the method detailed in Xiao et al.
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Information, Table S2). We determined only the levels of dissolved CH4 but not CH4 emission as wind
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speed and flow velocity data for the river samples were not available. Although the relationship between
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the levels of dissolved CH4 and CH4 emissions is not 1:1, in this study we used dissolved CH4
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concentrations as a proxy for the potential CH4 emission flux in different areas of Lake Taihu since the
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levels of dissolved CH4 largely control the emission from the lake 21 (Fig. S1).
21
(see Supporting
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Fourier transform ion cyclotron resonance mass spectrometry (FT-ICR MS) analyses
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Details on the pretreatment of the FT-ICR MS samples can be found in the Supporting Information.
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Briefly, in November 2016, FT-ICR MS samples collected from central Lake Taihu and headwater streams
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of the lake basin as well as algal-derived samples to determine degradation were solid-phase extracted with
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PPL Bond Elut (Agilent) resins before analysis by negative-ion electrospray FT-ICR MS
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to trace the
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sources of DOM in the lake. Different sources of CDOM exhibit distinct molecular signatures
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FT-ICR MS can be a useful tool in tracing the sources of CDOM in Lake Taihu.
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and
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The assigned molecular formulas were categorized according to Ohno et al. 36. Briefly, the chemical
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classes classified by the van Krevelen diagrams include: (i) lipids (O/C = 0 – 0.3, H/C = 1.5 – 2.0), (ii)
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proteins and amino sugars (O/C = 0.3 – 0.67, H/C = 1.5 – 2.2), (iii) lignins (O/C = 0.1 – 0.67, H/C = 0.7 –
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1.5), (iv) carbohydrates (O/C = 0.67 – 1.2, H/C = 1.5 – 2.2), (v) unsaturated hydrocarbons (O/C = 0 – 0.1,
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H/C = 0.7 – 1.5), (vi) condensed aromatics (O/C =0 – 0.67, H/C = 0.2 – 0.7), and (vii) tannins (O/C = 0.67
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– 1.2, H/C = 0.5 – 1.5) 36.
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Statistical analyses
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Statistical analyses, including mean values, standard deviations (SD), and t-tests, were performed
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applying R-studio 0.97.551 (R i386 2.15.2) software. Linear regressions and van Krevelen diagrams were
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made using MATLAB R2016b. Results with p < 0.05 for t-tests and linear regressions were reported as
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significant. Means were shown ± SD.
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Results
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PARAFAC modeling results
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Fluorescent DOM (FDOM) is composed of humic substances and amino-acids, both free and bound
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in proteins, and alterations in PARAFAC-derived FDOM components are sometimes used as a surrogate
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for changes in the composition of the wider DOM pool
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explains > 99.9% of the variables of the whole EEMs dataset. The spectral characteristics of the six
32
. The six-component PARAFAC model
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components (C1-C6, Fig. 2; Fig. S4) were compared with PARAFAC results for samples collected from
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other aquatic ecosystems using an online spectral library called Openfluor 37. C1 had two Ex maxima at ≤
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230 and 285 nm and an Em maximum (340 nm) as have amino acid-associated tryptophan-like
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components 38, 39. C2 displayed two Ex maxima at 240 and 350 nm and an Em maximum (468 nm) and is
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categorized as a typical terrestrial humic-like substance
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230/420 nm, similar to those of agricultural-soil-derived humic-like or fulvic-like materials
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peaked at 380 nm and is categorized as a microbial humic-like substance
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(275)/316 nm) and C6 (Ex/Em: ≤ 230 (270)/ ≤ 300 nm) had spectral characteristics similar to those of
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red-shifted tyrosine and typical tyrosine substances, respectively
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Fmax ranged from 0.24 ± 0.09 R.U. (microbial humic-like C4) to 5.04 ± 2.04 R.U. (tryptophan-like C1) for
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the PARAFAC-derived C1-C6 in Lake Taihu with the relative contribution percentages for the six
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components ranging from 2.2 ± 0.8% (C4) to 46.9 ± 19.0% (C1) (Table S3).
13, 38, 40-42
. C3 exhibited Ex/Em maxima at ≤
38, 46
38, 44, 45
40, 42-44
. C4
. C5 (Ex/Em: ≤ 230
. The multi-year (2012-2014) mean
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Spatial variability of light availability, stable isotopic δ2H and δ18O, CDOM-related indices, COD, DO,
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dissolved CH4, and Chl-a
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SDD in the lake ranged from 0.0 to 1.7 m with a mean of 0.4 ± 0.3 m, high values being observed in
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the northern and northwestern bays for the campaigns conducted seasonally from February 2012 to
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November 2014 (Fig. S6). The ratio of SDD to WD ranged from 0.06 to 0.61 with a mean of 0.19 ± 0.12
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and, similarly, high values of the ratio of SDD to WD were recorded in the northern and northwestern bays
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of the lake (Fig. S6).
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As evaporation enhances the accumulation of heavier water isotopic molecules of δ2H and δ18O in the
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liquid water, more depleted δ2H and δ18O imply a strong riverine signal, while enriched δ2H and δ18O
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indicate evaporation induced by prolonged water retention time in the lake
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from 2012 to 2014, δ2H and δ18O ranged from -63.4‰ to -16.5‰ (-33.9‰ ± 8.2‰) and from -8.9‰ to
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0.4‰ (-4.6‰ ± 1.3‰), respectively. Multi-year mean δ2H and δ18O increased notably from the
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northwestern bays to the southeastern bays in all seasons (Fig. 3; Fig. S7). δ2H and δ18O in the samples
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collected from the inflowing rivers, i.e. in the northwestern sub-watersheds (e.g. Huxi and Wuchengxiyu)
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were generally lower than in the corresponding bays and coastal lake regions.
27
. For all samples collected
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In all samples collected from 2012 to 2014, DOC and a(350) ranged from 1.0 to 17.2 mg L-1 (4.4 ±
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1.3 mg L-1) and from 0.4 to 16.0 m-1 (4.0 ± 1.6 m -1), respectively. Multi-year (February 2012 to November
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2014) mean concentrations of DOC and a(350) and the Fmax of C1-C4 and C6 decreased markedly from
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the northwestern part of the lake, especially Zhushan Bay, to the southeastern lake regions (Fig. 3; Fig. S7).
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In comparison, a(250)/a(365), S275-295, and SR increased notably from the northwestern part of the lake to
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the southeastern bays (Fig. S7). COD concentrations in the samples collected from the lake from 2012 to
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2014 ranged from 2.43 to 15.56 mg L-1 with a mean of 4.27 ± 1.28 mg L-1, and COD decreased gradually
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from the northwestern regions to the southeastern bays in all seasons (Fig. S6). DO concentrations in the
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samples collected from the lake ranged from 2.47 to 12.28 mg L-1 with a mean of 8.86 ± 1.69 mg L-1, and
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depleted DO was observed in the northwestern inflowing river mouths (Fig. S6).
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Zhushan Bay located in northwestern Lake Taihu has relatively high concentrations of terrestrial,
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agricultural, and microbial humic-like fluorophores as well as depleted DO (Fig. 3; Fig. S6), and the
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sources of CDOM in the bay were investigated based on more comprehensive samplings
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exclusively terrestrial humic-like C2 decreased from the northwestern Zhushan Bay and the northeastern
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coastal lines to the southeastern bays in all seasons from 2012 to 2014 (Fig. 3; Fig. 4), coinciding with the
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higher inflow runoff from the tributaries in the Huxi and Wuchengxiyu sub-watersheds than in the
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remaining sub-watersheds. During the Zhushan Bay sampling campaign in April 2014, DOC ranged from
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3.7 to 7.1 mg L-1 with a mean of 5.3 ± 0.8 mg L-1 (Fig. 4). In comparison, Fmax of terrestrial humic-like C2
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and in situ measured fluorescence intensity (370/460 nm) ranged from 0.1 to 2.7 R.U. (0.8 ± 0.6 R.U.) and
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from 21.5 to 200.0 µg L-1 (90.8 ± 54.2 µg L-1), respectively (Fig. 4). DOC concentrations, Fmax of terrestrial
250
humic-like C2, and measured in situ fluorescence intensity (370/460 nm) all decreased notably from the
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northwestern inner Zhushan Bay towards the south entrance of the bay (Fig. 4). The sampling in Zhushan
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Bay therefore indicated that high concentrations of terrestrial humic-like and anthropogenic
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tryptophan-like fluorophores were discharged into the lake via the bay, potentially enhancing the levels of
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dissolved CH4. Kd of light in the UV region and the PAR regions was fairly low, corresponding to a
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relatively low TSM and high SDD at the inflowing river mouth compared with the open water region (Fig.
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4; Fig. S6; Fig. S8). Correspondingly, a significant negative relationship was found between the Kd of light
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in the UV region and the PAR regions and SDD (r2 = 0.89, p < 0.001) and with in situ measured
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fluorescence intensity (370/460 nm) (r2 = 0.32, p < 0.001) (Fig. 4; Fig. S8).
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Dissolved CH4 samples collected from the macrophyte-dominated lake regions (Fig. 1) were excluded
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in our analyses since macrophytes influence the dynamics of the greenhouse gas exchange 1, 3. Submerged
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macrophytes affect biological and chemical processes in shallow lakes, including the biomass of organisms
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across trophic levels, and can therefore affect the dynamics of greenhouse gas 1. Submerged macrophytes
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fuel the transport of dissolved and ebullitive CH4 from the sediment to the water column and can thus
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increase dissolved CH4 concentrations in the water 3. This is supported by a recent study showing that
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organic sediments in macrophyte-dominated lake areas strongly enhanced the levels of dissolved CH4 21. In
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this study, the boundaries of macrophyte-dominated lake regions were delineated following the results
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detailed in Dong et al.
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showed that East Lake Taihu Bay, Xukou Bay, and Guangfu Bay in the southeastern part of the lake were
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macrophyte-dominated, which was well validated by the remote sensing results obtained by Liu et al.
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Dissolved CH4 in all the remaining lake samples collected from 2012 to 2014 ranged from 4.2 to 618.3
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nmol L-1, with a mean of 64.9 ± 92.3 nmol L-1 (Fig. 3). In the non-macrophyte-dominated lake regions,
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dissolved CH4 decreased notably from the northwestern bays or the western coastal regions to the
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southeastern lake regions in all hydrological seasons from 2012 to 2014 (Fig. 3). Dissolved CH4 in the
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river samples ranged from 7.9 to 1597 nmol L-1, with a mean of 307.8 ± 347.5 nmol L-1 (Fig. 3), and was
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significantly higher than in the lake samples from the Huxi, Wuchengxiyu, Zhexi, and Hangjiahu
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sub-watersheds in all seasons (t-test, p < 0.05; Fig. 3; Table S4).
47
and Liu et al.
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(Fig. 1). The field investigation conducted by Dong et al.
47
48
.
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As the temporal resolution of the sampling campaign was seasonal, we found highly depleted δ2H and
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δ18O, and enhanced input of terrestrial C2, and thereby high concentrations of dissolved CH4, in the
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northwestern lake regions in November compared with August due to drought on hot August days in the
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Lake Taihu watershed (Fig. 3). An increase in the temporal resolution of the sampling campaign can
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probably capture the rainy season enhancement of dissolved CH4, while in the present results the seasonal
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enrichment signal was surpassed by the spatial signal.
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Significantly higher Chl-a concentrations were observed in August (37.8 ± 27.6 µg L-1) and
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November (21.0 ± 18.1 µg L-1) than in February (9.4 ± 3.8 µg L-1; t-test, p < 0.005) and May (12.4 ± 7.1 µg
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L-1; t-test, p < 0.05). Chl-a decreased from the northern regions of the lake to the southeastern bays in all
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seasons except in February from 2012 to 2014 (Fig. 3), coinciding with higher external loading from the
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northwestern sub-watersheds, for instance Huxi and Wuchengxiyu. Chl-a in the river samples ranged from
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0.5 to 770 µg L-1, with a mean of 42.9 ± 74.3 µg L-1, and showed no significant difference from the mean
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Chl-a in the lake samples.
290 291
Relationships between dissolved CH4 and stable isotopic, CDOM-related indices, Chl-a and hydrological
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indices
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Significant positive relationships were found between mean dissolved CH4 and mean a(350) (r2 =
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0.11, p < 0.001), DOC (r2 = 0.36, p < 0.001), Fmax of PARAFAC-derived C1-C3 (r2 = 0.07~0.50, p < 0.01),
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COD (r2 = 0.43, p < 0.001), and monthly net inflow runoff (Qnet) (p < 0.001) (Table S5) for all the samples
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collected in the lake watershed. It should be noted that the coefficients of determination between mean
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dissolved CH4 and mean terrestrial PARAFAC-derived C2 and the products of C2 and Qnet, i.e. Qnet × C2,
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can be as strong as 0.50 and 0.27, respectively (Table S5). In comparison, significant negative
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relationships were found between dissolved CH4 and a(250)/a(365) (r2 = 0.14, p < 0.001), S275-295 (r2 =
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0.31, p < 0.001), SR (r2 = 0.28, p < 0.001), stable isotopic δ2H (r2 = 0.25, p < 0.001) and δ18O (r2 = 0.10, p
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< 0.001), and DO (r2 = 0.11, p < 0.001) for all the samples collected (Table S5; Fig. S9). No significant
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relationship emerged between dissolved CH4 and Chl-a or with C4-C6 if all data were used during linear
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fitting, but exclusion of river samples resulted in significant positive relationships between dissolved CH4
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and Chl-a (r2 = 0.18, p < 0.001; Fig. S9), C4 (r2 = 0.10, p < 0.001), and C6 (r2 = 0.08, p < 0.01). A close
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relationship was found between dissolved CH4 and Chl-a if we include only August samples (r2 = 0.47, p