Journal Pre-proofs Influence of the seagrass Thalassia hemprichii on coral reef mesocosms exposed to ocean acidification and experimentally elevated temperatures Pi-Jen Liu, Shin-Jing Ang, Anderson B. Mayfield, Hsing-Juh Lin PII: DOI: Reference:
S0048-9697(19)34455-9 https://doi.org/10.1016/j.scitotenv.2019.134464 STOTEN 134464
To appear in:
Science of the Total Environment
Received Date: Revised Date: Accepted Date:
8 April 2019 25 July 2019 13 September 2019
Please cite this article as: P-J. Liu, S-J. Ang, A.B. Mayfield, H-J. Lin, Influence of the seagrass Thalassia hemprichii on coral reef mesocosms exposed to ocean acidification and experimentally elevated temperatures, Science of the Total Environment (2019), doi: https://doi.org/10.1016/j.scitotenv.2019.134464
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Title: Influence of the seagrass Thalassia hemprichii on coral reef mesocosms exposed to ocean acidification and experimentally elevated temperatures Running head: Seagrass influence on climate change-challenged coral reefs List of authors: Pi-Jen Liu1,2, Shin-Jing Ang3, Anderson B. Mayfield2,^, Hsing-Juh Lin3* Affiliation 1Graduate
Institute of Marine Biology, National Dong-Hwa University, Pingtung
94450, Taiwan 2National
Museum of Marine Biology and Aquarium, Pingtung 94450, Taiwan
3Department
of Life Sciences and Innovation and Development Center of Sustainable
Agriculture, National Chung Hsing University, Taichung 40227, Taiwan *Corresponding author, tel: +886-4-22840416, email:
[email protected] ^present address: Atlantic Oceanographic and Meteorological Laboratory, National Oceanic and Atmospheric Association, Miami, FL 33149 USA *Corresponding author, tel: +886-4-22840416, email:
[email protected] Keywords: climate change, coral reefs, ecosystem metabolism, ecosystem production, ocean acidification, seagrass Paper type: Primary research article
1
1 2
Abstract Ocean acidification (OA) and warming currently threaten coastal ecosystems
3
across the globe. However, it is possible that the former process could actually benefit
4
marine plants, such as seagrasses. The purpose of this study was to examine whether
5
the effects of the seagrass Thalassia hemprichii can increase the resilience of
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OA-challenged coral reef mesocosms whose temperatures were gradually elevated. It
7
was found that shoot density, photosynthetic efficiency, and leaf growth rate of the
8
seagrass actually increased with rising temperatures under OA. Macroalgal growth
9
rates were higher in the seagrass-free mesocosms, but the calcification rate of the
10
model reef coral Pocillopora damicornis was higher in coral reef mesocosms
11
featuring seagrasses under OA condition at 25 and 28°C. Both the macroalgal growth
12
rate and the coral calcification rate decreased in all mesocosms when the temperature
13
was raised to 31°C under OA conditions. However, the variation in gross primary
14
production, ecosystem respiration, and net ecosystem production in the seagrass
15
mesocosms was lower than in seagrass-free controls, suggesting that the presence of
16
seagrass in the mesocosms helped to stabilize the metabolism of the system in
17
response to simulated climate change.
2
18 19
1. Introduction The CO2 partial pressure (pCO2) in the atmosphere reached 411 μatm in the spring
20
of 2019 (https://www.esrl.noaa.gov/gmd/ccgg/trends/global.html), and representative
21
concentration pathway (RCP) scenarios 2.6 (“controlled warming”) and 8.5 (“business
22
as usual”) predict it to rise to 490 and 1370 μatm, respectively, by 2100 (van Vuuren
23
et al., 2011). According to the IPCC’s “Coupled Model Intercomparison Project”
24
(phase 5), the sea surface temperature (SST) will increase by 0.3-1.7°C (RCP2.6) to
25
2.6-4.8°C (RCP8.5) by 2081-2100 (Stocker et al., 2013). These temperature and pCO2
26
increases will cause the ocean’s pH to decline by 0.13-0.42, resulting in ocean
27
acidification (OA).
28
Since 1970, the ocean has absorbed approximately 93% of the additional heat due
29
to global warming (Flato et al., 2013), leading to rising seawater temperatures. In
30
general, when seawater temperatures rise above certain thermotolerance thresholds,
31
species richness declines (Katsikatsou et al., 2012) and corals bleach (Diaz-Pulido et
32
al., 2012). The differential responses of organisms to rising temperatures is expected
33
to affect their interspecific interactions (Poloczanska et al., 2013). However, prior
34
studies have tended to focus more on climate change-mediated effects on the
35
distribution (Shalders et al., 2018) or physiology of individual species (Helmuth et al.,
36
2013); the effect of rising temperatures on interspecific interactions is less commonly 3
37
addressed (but see Lord et al., 2017, García et al., 2018).
38
With increasing pCO2 (and declining pH), the concentration of HCO3- will
39
increase relative to that of CO32-, the latter being vital for the calcification of many
40
marine organisms. The increase in HCO3- concentration, in contrast, is expected to
41
stimulate the photosynthetic output of seagrasses and algae, which can use carbonic
42
anhydrase to convert HCO3- to CO2. Indeed, the productivity, shoot density,
43
belowground biomass and carbon reserves of seagrasses have all been reported to
44
increase in response to increased seawater pCO2 (Palacios and Zimmerman, 2007,
45
Andersson et al., 2011, Egea et al., 2018). The productivity and growth rate of
46
non-calcareous algae also increased at pCO2 levels ranging from 700 to 900 μatm
47
(Porzio et al., 2011, Kroeker et al., 2013). However, the calcification rate of corals
48
(Hoegh-Guldberg et al., 2007, Albright et al., 2016), sea urchins (Kurihara and
49
Shirayama, 2004), shelled molluscs (Gazeau et al., 2013), and spider crabs (Walther
50
et al., 2009) all decrease with increasing pCO2, leading to weakened calcified
51
structures.
52
Coral reefs are among the most biodiverse ecosystems on Earth and offer valuable
53
ecosystem services to a plethora of organisms (as well as humankind; Knowlton, 2001;
54
Costanza et al., 2014). However, over the past 20 years, phase shifts from coral- to
55
macroalgal-dominated communities have occurred (Bellwood et al., 2004; Bruno and 4
56
Valdivia, 2016). In 1980-1983, coral cover ranged from 20 to 50%, even reaching
57
100% on some reefs in the Indo-Pacific. However, it is uncommon to find reefs with
58
>70% live coral cover today, with most less than 30% even 15 years ago (Bruno and
59
Selig, 2007). Commensurate decreases in coral cover in the Caribbean have also been
60
documented over the past 30 years: 50% in 1977 to 10% in 2002 (Gardner et al.,
61
2003). Disease, overfishing, eutrophication, rising temperatures, and OA have all
62
contributed to the demise of corals (Bruno and Valdivia, 2016), and the latter has been
63
hypothesized to result in a shift from net calcium carbonate (CaCO3) precipitating
64
states to net dissolving ones (Baker et al., 2008). Furthermore, elevated temperatures
65
are hypothesized to elicit bleaching events on an annual basis, which will result in
66
dramatic community shifts given the wide variation in bleaching sensitivity across
67
coral species (Donner et al., 2017).
68
Seagrasses are marine flowering plants that are widely distributed in shallow
69
waters except in the Antarctic Ocean (den Hartog and Kuo, 2007). Seagrass beds are
70
“blue carbon” sinks (Gillanders, 2007; Huang et al., 2015) that provide a number of
71
ecosystem services such as serving as food sources for mega-herbivores and as
72
nursery grounds for a plethora of fish and invertebrates (Lee et al., 2015, 2016).
73
Seagrasses are ecosystem engineers that can change the physical and chemical
74
properties of seawater in a way that may affect nearby organisms, such as corals (van 5
75
de Koppel et al., 2015). For example, the rhizomes of seagrasses can stabilize the
76
sediments and filter seawater (Nordlund et al., 2017); the improved seawater clarity
77
resulting from the latter process can lead to higher irradiance, which benefits the
78
growth of corals and other photosynthetic organisms (Christianen et al., 2013).
79
Seagrasses and macroalgae can also absorb nutrients, which may suppress the
80
growth of other macroalgae and/or seagrass in the near vicinity (Alexandre et al.,
81
2017); however, others (Moreno-Marín et al., 2016) have shown that macroalgae can
82
actually benefit the growth of seagrasses. As a specific example, both seagrasses and
83
macroalgae can remove CO2 and increase local pH and ΩAr of the surrounding
84
seawater via their high photosynthetic rates (Lai et al., 2013); this East Asia finding
85
has been observed elsewhere in the Pacific Ocean (Anthony et al., 2013), as well as in
86
the Mediterranean (Hendriks et al., 2014) and the Caribbean (Manzello et al., 2012).
87
Seagrass beds may consequently reduce the potential impact of OA on calcareous
88
organisms (Keppel and Wardell‐Johnson, 2012).
89
However, if both pCO2 and temperature were to rise, it is less clear how seagrass
90
beds may respond, nor do we know how coral reef+seagrass bed “mosaic habitats,” in
91
which corals and seagrass-based communities overlap (prevalent in Southern Taiwan,
92
as well as in the South China Sea; Lee et al., 2019) would be affected. Rising
93
temperatures might impose detrimental impacts on seagrasses, and shallow intertidal 6
94
seagrass beds are considered to be at the greatest risk (George et al., 2018); their
95
relatively high respiration demands are expected to exceed their capacity for
96
synthesizing organic carbon through photosynthesis upon prolonged exposure to
97
elevated temperatures. Short-term high-temperature exposures, however, can actually
98
stimulate seagrass autotrophy (Egea et al., 2019).
99
In this multi-factorial study, coral reef mesocosms in Southern Taiwan were
100
cultured with and without seagrasses and exposed to both OA and gradually elevated
101
temperatures. There were four questions aimed to be answered/addressed in this
102
integrated mesocosm study: 1. Can seagrass increase the resilience of coral reef
103
mesocosms under OA alone, as well as OA plus elevated seawater temperatures?
104
2. How are net ecosystem calcification and production influenced by OA and
105
elevated seawater temperatures? 3. Can seagrasses help calcifying macroalgae and
106
corals resist elevated seawater temperatures under OA? 4. How do phytoplankton and
107
benthic microalgae respond to elevated seawater temperatures under OA? Given the
108
aforementioned ability of seagrasses to modify local pH, it was hypothesized that reef
109
corals co-cultured with seagrasses would maintain higher growth rates under OA
110
conditions than those corals cultured in the absence of seagrasses. We also
111
hypothesized that elevated pCO2 exposure, but not elevated temperatures, would
112
enhance seagrass performance. 7
113
114
2. Materials and methods
115
2.1 Coral reef mesocosm facility
116
The coral reef mesocosm facility, which is located at the National Museum of
117
Marine Biology and Aquarium (NMMBA), is approximately 10 km northwest of
118
Taiwan’s Nanwan Bay (21°57’N, 120°45’E). Six tanks (5.14 m2 x 1 m depth; Fig. 1A)
119
were designed to serve as models of the reefs of Nanwan Bay (Liu et al., 2009). The
120
bottom of each tank was covered by a 3-cm layer of sand, and a few rocks were
121
distributed across the benthos. A plastic plate (180 x 120 cm) was placed on the rocks,
122
and two square baskets (81.5 x 81.5 x 6.5 cm [height]) covered with coral sand were
123
placed on the sand to simulate a reef flat. There were two pumps in each tank: one
124
was set up in the front side at 15 cm deep to produce wave simulations (1 Hz, 2–3 cm
125
wave height, SE200, Wavemaker, Taiwan) and another was set up along the back side
126
to produce a disturbance current of flow-through seawater (250 W, 7200 L h-1,
127
Trundean, Taiwan). Sand-filtered seawater pumped directly from adjacent Houwan
128
Bay (22°02’N, 120°41’E) was added to each tank at an exchange rate of 10% d-1 of
129
the total volume.
130
Seawater temperature in each tank was initially maintained at 25.0°C (±0.3°C [SD
131
for this and all other error terms in this section]) using a heat-exchanger (Great Helper 8
132
System & XT130C, Dixell, Italy) to simulate the field temperature in the spring (Liu
133
et al., 2009, 2015). During the experimental period, the photosynthetically active
134
radiation (PAR) at 0.5-m tank depth was maintained at 258±16.7 μmol photons m-2 s-1
135
from 0700 to 1700 hr (a 10:14-h light: dark photoperiod) by LED lamps (XLamp
136
XT-E LEDs, Cree, Taiwan).
9
137
138 139
A
B
C
140 141
Fig. 1. (A) The coral reef mesocosm facility. (B) The front side of the mesocosm, which
142
featured corals and giant clams and (C) the rear side of the mesocosm, which housed the
143
seagrasses. The black plastic mesh screen evident (~1 m2) in (B)-(C) (between the front
144
and rear sides) prevented seagrass grazing by sea urchins and served, additionally, as
145
settlement material for macroalgae (see below for details).
10
146
The biological components of these mesocosms were cultured at NMMBA for
147
several years prior to the experiment, and a detailed list of the organisms added can be
148
found in Table 1. There were some coral reef organisms already living in the tanks,
149
including soft corals, sea anemones, hydroids, sponges, polychaetes, isopods,
150
amphipods, symbiotic coral crabs, and macroalgae. At the location at which the wave
151
maker was set up to simulate the reef crest, the corals Montipora sp., Turbinaria sp.,
152
Fungia sp., and Millepora sp. were deposited (Fig. 1B). On the front side of the “reef
153
flat,” the giant clam Tridacna maxima and the corals Turbinaria sp. and Pavona cactus
154
were placed. The corals Porites sp., Favia sp., and Heliopora coerulea (blue coral) were
155
deposited on the sand of each mesocosm, whereas nubbins were made from multiple
156
colonies of the coral Pocillopora damicornis several weeks prior to experimentation
157
(see timeline in Table 2.) and suspended on fishing line (9/mesocosm). Plants of the
158
dominant seagrass species of Southern Taiwan, Thalassia hemprichii, were collected
159
with a shovel (along with the sediment into which their roots permeated) from seagrass
160
beds of Nanwan Bay. Approximately 3-4 seagrass shoots were transplanted to each of
161
324 flower pots (8.1 cm diameter x 6.7 cm depth), and each seagrass mesocosm (n=3)
162
received a total of 108 pots (equivalent to 681±7 shoots m-2) positioned within a 1.08 m2
163
fenced-in enclosure to prevent grazing by sea urchins (Fig. 1C).
11
164
Table 1. The number and total fresh weight (g) of the fish, mollusks, echinoderms, and corals present in the six mesocosms. Taxon
Common name
Scientific name
Fish
Bowtie damselfish
Control mesocosms (without seagrass)
Seagrass mesocosms
T2
T4
T6
T1
T3
T5
Neoglyphidodon melas
2
1
2
2
2
2
Blackspot sergeant
Abudefduf sordidus
0
1
0
0
0
0
Silver moony
Monodactylus argenteus
8(15.7)
8(18.7)
8(21.7)
8(15.4)
8(13.2)
8(22.3)
1(550.8)
1(270.4)
1(394.6)
1(270.4)
1(349.9)
1(270.4)
Eyestripe surgeonfish Acanthurus dussumieri Two-tone tang
Zebrasoma scopas
1(8.5)
1(8.5)
1(8.5)
1(15.8)
1(13.0)
1(10.6)
Jeweled blenny
Salarias fasciatus
3(24.0)
3(16.3)
3(27.6)
3(21.4)
3(20.1)
2(17.8)
Decorated goby
Istigobius decoratus
1
1
1
1
1
1
Giant clam (large)
Tridacna maxima
2
2
1
2
1
1
Giant clam (small)
Tridacna maxima
12
12
17
12
16
17
Black-spotted topshell Trochus hanleyanus
20(276)
20(284)
20(277)
20(285)
20(284)
20(274)
Hawaiian sea urchin
Tripneustes gratilla
2(340)
2(339)
2(363)
2(358)
2(358)
2(335)
Black sea cucumber
Holothuria leucospilota
5(1048)
5(1005)
5(1044)
5(1069)
5(1035)
4(1006)
Hydrozoans
Fire coral
Millepora sp.
1
1
1
1
1
1
Zoantharians
Cup coral
Turbinaria spp.
8
7
8
9
8
9
Mushroom coral
Fungiidae
1
2
1
1
1
1
Faviid coral
Faviid spp.
1
1
1
1
1
1
Cactus coral
Pavona cactus
1
1
1
2
1
1
Plating coral
Montipora sp.
1
3
3
1
1
1
Massive coral
Porites spp.
1
1
1
2
1
1
Cauliflower coral
Pocillopora damicornis
9
9
9
9
9
9
Blue coral
Heliopora coerulea
1
1
1
1
2
1
Mollusks
Echinoderms
Alcyonarians
165
12
166 167 168 169 170
Table 2. The experimental design, including dates, duration, temperature, and pCO2 of each experimental stage. Readers are referred to prior works for details on annual temperature variation in Nanwan Bay’s coral reefs (Mayfield et al., 2012) and seagrass beds (Liu et al., 2012, Lin et al., 2018). Stage
Duration
# days
I II III IV
27 March-9 April 2017 10 April-7 May 2017 8 May-4 June 2017 16 June-28 June 2017
14 28 28 13
Temperatur e (°C) 25 25 28 31
pCO2 (μatm) 400 800 800 800
171 172
An Apex AquaController (USA) system (Supplementary fig. 1) featuring the Apex
173
base, the Energy Bar 8, the Apex display, a thermometer, a pH meter, and an ORP
174
probe was used to control seawater temperature and pH; the latter was achieved by
175
opening and closing a CO2 tank (100%) connected to four tubes with free air stones at
176
the end. The tubes were evenly distributed across each mesocosm to release CO2, which
177
quickly dissolved into the water. During OA treatments (described below), the release
178
of CO2 was initiated when the pH meter sensed a pH value >7.90 (10-min logging
179
interval) and stopped when the pH value was <7.80; the target value sought to match the
180
RCP6.0-projected pH of 7.85 (by the end of the 21st century). The total alkalinity (TA)
181
remained relatively constant (2207±45 μmol kg-1) over the duration of the OA
182
experiment (Supplementary table 1), resulting in a pCO2 of ~800 μatm at a pH of 7.85.
183
Three tanks featured seagrasses, while the other three were seagrass-free controls.
184
The maximum, dark-adapted yield of photosystem II (Fv/Fm) of random seagrass
185
shoots was assessed periodically (described in more detail below) after the shoots were
186
transported from the ocean into the mesocosms in order to determine whether they had
187
acclimated to their new environments (Supplementary table 1). After 10 days of
188
acclimation, the experiment began on 27 March 2017 (Table 2). Stage I was conducted
189
for 14 days under a constant seawater temperature of 25°C (the mean seawater 13
190
temperature of Nanwan Bay in the spring); all tanks were maintained at ambient pCO2
191
(~400 μatm), and we sought to document the effects of seagrass only in this stage. It
192
was hypothesized that a 2-week duration would be sufficient to observe seagrass effects
193
on corals given 1) prior work on coral+seagrass mosaic habitats in Southern Taiwan
194
(Lin et al., 2018) and the South China Sea (Lee et al., 2019) and 2) the close proximity
195
in which these fauna were cultured.
196
Stage II was conducted to examine the effect of OA (800 μatm) and seagrass
197
presence for 28 days at 25°C. A longer duration was chosen for this stage because the
198
effects of OA on reef corals in particular have been found to be subtle (Comeau et al.,
199
2014), or else not documented at all (Putnam et al., 2013) and so we hypothesized that
200
more time would be required to elicit a detectable physiological response. Similarly,
201
Stage III examined the combined effect of rising temperature (28°C; the mean
202
temperature of Nanwan Bay in the summer) and OA (800 μatm) for 28 days; since this
203
“high” temperature is still well under the maximum experienced by coral reefs in
204
Southern Taiwan (~30-30.5°C in the summer; Mayfield et al., 2013), a longer duration
205
was hypothesized to be needed to detect a shift in coral and/or seagrass behavior. Given
206
that the SST is predicted to increase by 1.4-3.1°C by the end of 21st century (RCP 6.0,
207
Stocker et al., 2013), the seawater temperature was increased to 31°C for 13 days at 800
208
μatm during Stage IV of the experiment. In contrast to Stages II and III, exposure to OA
209
at 31°C was hypothesized to elicit a stress response in the coral after only several days
210
of treatment; therefore, the duration of this experimental stage was relatively short.
211 212 213
2.2 Biological response The shoot density (shoots m-2) of T. hemprichii was determined every two weeks by
14
214
counting the number of shoots in each tank and dividing by the seagrass area (0.507 m2).
215
The leaf growth rate was also determined biweekly in each tank using the leaf marking
216
method (Short and Duarte, 2001). Briefly, approximately five plants were randomly
217
selected and marked in each tank at each measurement time. A small hole was punched
218
through all of the leaves at the base of each shoot to provide a reference level.
219
Approximately seven days after initial marking, the new growth increments of the
220
leaves were measured. Using these measurements, the leaf growth rate was then
221
expressed as mm shoot−1 day−1.
222
A submersible pulse amplitude-modulated (Diving-PAM) fluorometer (Waltz) was
223
used to measure three fluorescence parameters from both coral nubbins (P. damicornis)
224
and seagrass shoots (mentioned above): Fo (initial chlorophyll fluorescence after
225
acclimating samples in darkness for 20 min when all reaction centers were open), Fm
226
(maximum chlorophyll fluorescence after dark acclimation for 20 min when all reaction
227
centers were closed following a saturating flash of light), and Fv/Fm (maximum
228
quantum yield of photosystem II, where Fv=Fm-Fo). The calcification rate (mg CaCO3
229
d-1) of the coral P. damicornis was determined by the buoyant weighing technique
230
(Davies, 1989), and mass increase per day was normalized to nubbin surface area using
231
the modified wax dipping method of Mayfield et al. (2013).
232
Macroalgae began to proliferate rapidly in Stage II (OA). To assess algal growth, we
233
scraped all algae off the plastic urchin exclusion screen (Fig. 1B-C; one side of the
234
fence only) located close to the wave pump of each tank (size: 120 cm x 50 cm, but only
235
0.42 m2 surface area under the water) with a toothbrush. The plastic mesh was only
236
briefly removed from each mesocosm before being returned to ensure that urchins did
237
not graze seagrass blades during that time. The collected macroalgae were then weighed
15
238
(wet weight), and the growth rate was determined by collecting all macroalgae that had
239
accumulated each week in each tank, then normalizing to day (g wet weight d-1).
240
Assessment of ecosystem metabolism can aid in understanding the interactions
241
between organisms and their environments (Thorp and Delong, 2002; Marcarelli et al.,
242
2011). Diel variation in dissolved oxygen (DO) concentration was used to determine the
243
gross primary production (GPP), ecosystem respiration (ER), and net ecosystem
244
metabolism (NEP) of each mesocosm herein (sensu Odum, 1956). A DO data logger
245
(HOBO U-26, Onset, USA) was used to measure the changes in DO concentration
246
(ΔDO; g O2 m-2) in each tank at a 30-minute logging interval over the duration of the
247
experiment. In general, the ΔDO was driven by oxygen produced via photosynthesis
248
during the day, the oxygen respired, and the air-seawater exchange of oxygen (Kemp
249
and Boynton, 1980; see details below.). The ΔDO during the night was assumed to be
250
driven by 1) respiration and 2) the air-seawater exchange of oxygen. Therefore, the
251
hourly oxygen respiration rate during the night was calculated by correcting for the
252
air-seawater exchange of oxygen and dividing by the time (hr). The air-sea exchange
253
calculation followed Kemp and Boynton (1980): (1-(DO sat, t2 + DO sat, t1)/200)*k*dt,
254
where DO sat, t1 and DO sat, t2 are the relative percent oxygen saturations (%) at times t1
255
and t2, respectively, k is the air-sea exchange coefficient, and dt is the time difference
256
(in hours) between t2 and t1. DOTABLES
257
(http://water.usgs.gov/software/DOTABLES/) was used to calculate oxygen saturations
258
given the measured conditions in the tank. The wind and tide account for about the 50%
259
of the total DO; therefore, when DO is 0, k is assumed to be 0.5 g O2 m-2 hr-1 when
260
estimating the sea-air exchange.
261
Assuming the hourly respiration rate during the night was similar to that of the day,
16
262
the 24-hr (daily) respiration rate (also known as the ER rate) was calculated by
263
multiplying the hourly night respiration rate by 24 hr. The GPP rate was then calculated
264
by adding the ΔDO rate to the respiration rate during the day, and the NEP rate was
265
calculated by deducting the ER rate from the GPP rate. These DO data were also used to
266
calculate a GPP:ER (i.e., photosynthesis [P]:respiration [R]) ratio to serve as a system
267
trophic index (sensu Odum, 1956).
268 269 270
2.3 Seawater quality data The AquaController system automatically monitored water temperature and pH
271
every 10 min. DO (mg L-1) and salinity were monitored daily at 9:30 am in each tank
272
using a portable “Professional Plus” meter from YSI (USA). A HOBO® Pendant data
273
logger (UA-002-64) was placed on the reef flat area of each mesocosm to measure
274
underwater light and temperature at 30-min intervals during the experimental period.
275
Light intensity (Lux) was transformed to photosynthetic photon flux density (PPFD)
276
and expressed as µmol m-2 s-1 (Riddle, 2013).
277
Every week, seawater samples were collected from the middle layer (~0.5 m depth)
278
of each tank for determination of total alkalinity (TA; sensu Strickland and Parsons,
279
1972). TA, pH, seawater temperature, and salinity were then used to determine the
280
pCO2 and aragonite saturation state (ΩAr; sensu Lewis et al., 1998). Seawater samples
281
were also collected from each tank at 10:00 am on a randomly selected day every week.
282
These water samples were filtered through 0.45-μm filters (Pall Corporation) and then
283
analyzed colorimetrically for phosphate (Hach, USA), ammonium (Hach), nitrite (Pai
284
and Riley, 1994), and nitrate (Pai and Riley, 1994).
285
17
286
2.4 Statistical analyses
287
Before statistical analyses, data were examined to determine whether residuals
288
conformed to assumptions of normality and homogeneity of variance. If not, they were
289
transformed (Clarke and Warwick, 2001) or analyzed using non-parametric statistical
290
methods. After the mean value of each change was compared with the standard
291
deviation, the slope (β) between the two was obtained by linear regression. When β
292
=0, no transformation was needed; when β≧0.5 and ≧0.75, data were square and
293
fourth root- transformed, respectively. If β≧1, the data were log transformed. If the
294
transformed data still did not meet the assumptions for parametrical statistical analyses,
295
the appropriate non-parametric analysis was chosen according to the independence of
296
the data. The four-stage experiment was separated into three parts (Table 2): Stage 1)
297
effect of seagrass alone (25°C and ambient pCO2), Stage 2) the effect of seagrass
298
presence under OA only, and Stages 3 and 4) the effect of seagrass presence under the
299
combined effects of OA and warming to 28°C and 31°C, respectively. One-way
300
repeated measures ANOVAs were used to determine the effect of OA (from Stage 1 to
301
2) or combined effects of OA and warming (from Stage 2 to 4) on seagrass responses.
302
Two-way repeated-measures ANOVAs were applied to determine the effect of seagrass
303
presence and OA only (from Stage 1 to 2) on seawater quality, other biological response
304
variables (coral Fv/Fm, coral calcification rate, and macroalgal growth rate), and system
305
metabolism. Two-way repeated-measure ANOVAs were also carried out to determine
306
the effect of seagrass presence and the combined effects of OA and warming (from
307
Stage 2 to 4) on seawater quality, biological responses, and system metabolism.
308
SigmaPlot 12.5 (SigmaStat, Systat Software GmbH, Germany) was used for the
309
statistical analyses described above. Unless stated otherwise, all error terms presented 18
310
below represent standard error (SE) of the mean, and an alpha level of 0.05 was
311
established a priori.
312 313
3. Results
314
3.1 Seawater quality response to OA and rising temperatures
315
In Stages I and II, the effect of OA alone on seawater quality was more pronounced
316
than the effect of seagrass presence (Table 3). For all mesocosms, the pH was
317
effectively dropped to its target value of ~7.85, and DO concentration decreased in
318
concert (Supplementary table 2). There were no significant differences in pCO2, DIC
319
concentration, ΩAr, and TA between the seagrass mesocosms and the controls; upon OA
320
alone in Stage II, pCO2 and DIC concentration in all mesocosms increased 91 and 6%,
321
respectively (Table 3). However, ΩAr decreased 37% upon acidifying the seawater. OA
322
did not affect TA, but it did result in significant changes in concentrations of various
323
seawater carbon species in all mesocosms (Supplementary table 2). The concentrations
324
of HCO3- and CO2 increased 10 and 85%, respectively, in response to OA alone in
325
Stage II, whereas the concentration of CO32- decreased by 37%.
326
All mesocosms were oligotrophic in Stage I (Table 3). After OA alone (Stage II),
327
the phosphate concentration increased 18% in the seagrass mesocosms though
328
decreased 73% in the controls. The concentrations of ammonium, nitrite, and nitrate
329
increased 95, 55, and 61%, respectively, after OA alone (Supplementary table 2). While
330
seawater temperature was programmed to increase from stage II (25°C) to stage IV
331
(31°C), DO decreased only 4% over this period (Table 3). There were significant
332
differences in seawater carbon species concentrations in response to the combined effect
333
of OA and warming for all mesocosms (Supplementary table 3). The concentrations of
19
334
both pCO2 and CO2 were slightly higher (7 and 8%, respectively) in all mesocosms at
335
28°C than at 25°C and 31°C (Table 3). Rising temperatures slightly reduced TA and
336
ΩAr, as well as the concentrations of DIC, HCO3-, and CO32- for all mesocosms. TA, ΩAr,
337
DIC, and concentrations of HCO3- and CO32- decreased 3, 8, 2, 2, and 9%, respectively,
338
from 25°C to 31°C.
339
The combined effect of OA and warming resulted in a significantly higher
340
phosphate concentration in the seagrass mesocosms than in the controls (Supplementary
341
table 3). The concentrations of nitrite and nitrate in all mesocosms at 31°C were 1.22
342
and 3.49-fold higher, respectively, than at 25°C and 28°C (Table 3). The concentrations
343
of nitrite and nitrate in the seagrass mesocosms tended to be higher (35 and 72%,
344
respectively) than in the controls at higher temperatures under OA, though the
345
differences were only marginally significant (Supplementary table 3).
346 347 348
3.2 Seagrass response to OA and rising temperatures OA led to a significant increase in both T. hemprichii shoot density (Fig. 2A) and
349
leaf growth rate (Fig. 2B) at 25°C (Stage II): increasing 4 and 25%, respectively
350
(Supplementary table 4). In contrast, Fv/Fm decreased slightly from 0.813±0.003 (Stage
351
I) to 0.799±0.005 upon OA treatment (Stage II), though later recovered (even as
352
temperatures rose; Fig. 2C). Further rising of the temperature (Stage II to Stages III and
353
IV) also led to significant increases in shoot density (18%) and leaf growth rate (35%)
354
at 31°C (Supplementary table 5). Fv/Fm also increased to 0.822±0.004 at 31°C.
20
355 356
Table 3. Seawater quality (mean±SE; n=3) in the four stages of the experiment in both seagrass and control (i.e., seagrass-free) mesocosms. 25˚C (ambient pCO2)
25˚C (acidification)
28˚C (acidification)
31˚C (acidification)
Control
Seagrass
Control
Seagrass
Control
Seagrass
Control
Seagrass
pH
8.06±0.01
8.10±0.04
7.86±0.00
7.86±0.01
7.85±0.00
7.86±0.01
7.85±0.00
7.86±0.00
Temperature (˚C) Photosynthetically active radiation (PAR, µmol m-2 s-1) DO (mg L-1)
25.0±0.0
25.0±0.1
25.1±0.0
25.1±0.1
27.9±0.0
27.9±0.0
30.8±0.1
30.8±0.0
274.0±2.4
267.7±10.8
242.0±20.4
281.4±9.5
256.1±13.6
248.7±20.0
251.2±14.1
247.4±33.3
6.84±0.00
6.84±0.01
6.78±0.00
6.79±0.01
6.49±0.00
6.49±0.00
6.24±0.00
6.24±0.00
Salinity
35.07±0.06
35.09±0.04
34.99±0.01
35.03±0.01
34.67±0.07
34.77±0.04
33.80±0.10
33.86±0.06
449±4
418±20
818±7
837±19
891±12
906±13
853±21
825±10
TA (μmol kg-1)
2093±10
2157±25
2114±22
2148±42
2090±2
2096±32
2073±15
2066±19
ΩAr
2.72±0.02
2.99±0.15
1.78±0.02
1.80±0.05
1.61±0.02
1.60±0.03
1.64±0.03
1.67±0.04
1849±9
1889±13
1971±21
2004±39
1963±3
1971±30
1945±15
1934±15
1665±8
1689±8
1836±19
1867±36
1837±4
1844±28
1819±15
1807±12
CO32- (μmol kg-1)
171±1
188±9
112±2
113±3
101±1
101±2
102±2
104±3
CO2 (μmol kg-1)
13±0
12±1
23±0
24±1
25±0
26±0
24±1
23±0
PO43- (μmol L-1)
0.085±0.027
0.117±0.045
0.034±0.010
0.142±0.067
0.058±0.016
0.082±0.018
0.079±0.042
0.158±0.073
NH4+ (μmol L-1)
0.520±0.044
0.621±0.120
0.958±0.035
1.215±0.113
0.757±0.054
0.879±0.015
0.924±0.136
1.007±0.170
NO2- (μmol L-1)
0.086±0.012
0.099±0.023
0.125±0.012
0.172±0.007
0.141±0.015
0.154±0.019
0.246±0.044
0.402±0.044
NO3- (μmol L-1)
0.262±0.040
0.576±0.287
0.466±0.029
0.889±0.256
0.229±0.094
1.142±0.269
1.204±0.190
4.922±1.765
pCO2 (μatm)
DIC (μmol HCO3
kg-1)
- (μmol
kg-1)
357
21
358
359 360 361 362
363 364 365 366 367 368 369 370 371 372 373
A
B
C
Fig. 2. Seagrass (A) shoot density, (B) leaf growth rate, and (C) maximum quantum yield of photosystem II (Fv/Fm) across the four stages (denoted by shading) of the experiment (mean±SE; n=3). Lowercase letters adjacent to experimental stage at the top of each panel signify significant differences (Tukey’s p<0.05) between the means for each experimental stage, as repeated measures ANOVAs detected significant overall effects of ocean acidification [OA] (from Stage I to II) and combined effects of OA and warming (from Stage II to IV) for each response variable (Supplementary tables 4 and 5). In all cases, the group labeled “a” possessed the lowest value of the respective response variable.
22
374 375
3.3 Macroalgae response to OA and rising temperatures OA and rising temperatures stimulated the growth of macroalgae (Fig. 3); after OA,
376
the macroalga Dictyota bartayresiana started to grow rapidly in all mesocosms
377
(Supplementary fig. 2), and its growth rate was 2-fold higher in the controls than in the
378
seagrass mesocosms at 25°C and 28°C. However, its growth slowed at 31°C in all
379
mesocosms (Fig. 3).
380 381 382
3.4 Coral response to OA and rising temperatures OA did not significantly affect coral Fv/Fm, which ranged from 0.737 to 0.750 (Fig.
383
4A). However, coral Fv/Fm decreased gradually with rising temperatures under OA
384
conditions for all mesocosms. There was no significant difference in coral Fv/Fm
385
between the seagrass mesocosms and the controls (Supplementary tables 6 and 7). The
386
coral calcification rate was significantly higher in the seagrass mesocosms than in the
387
controls at 25°C and 28°C under OA (Fig. 4B). However, the coral calcification rate
388
was significantly lower at 31°C+OA for all mesocosms (Supplementary table 7).
389 390 391
3.5 System metabolic response to OA and rising temperatures In Stages I and II, there were no significant differences in the ER rates between the
392
control and seagrass mesocosms (Supplementary table 6). For all mesocosms, the ER
393
increased gradually with rising temperatures from Stage II to IV under OA conditions
394
(Fig. 5A). Moreover, the ER was significantly higher in the controls than in the seagrass
395
mesocosms at 28°C and 31°C under OA (Supplementary table 7). In Stages I and II,
396
there was no significant difference in the GPP between the control and seagrass
397
mesocosms, nor did OA affect GPP (Supplementary table 6). However, the GPP in all
23
398
mesocosms increased from the lowest values at 25°C to the highest values at 28°C (Fig.
399
5B). GPP was similar at 28°C and 31°C. The GPP was also significantly higher in the
400
controls than in the seagrass mesocosms when pooling the data across all sampling
401
times from Stage II to IV (Supplementary table 7).
402
In Stage II, OA did not affect the NEP in the seagrass mesocosms (Fig. 5C).
403
However, the NEP in the controls increased significantly after OA (Supplementary table
404
6). The NEP in all mesocosms decreased significantly with rising temperatures and
405
reached the lowest value at 31°C under OA (Supplementary table 7). The NEP in the
406
seagrass mesocosms tended to be lower than in the controls for all temperature
407
treatments (Fig. 5C), though no significant difference was detected.
408
In Stage II, the P:R ratio was not affected by OA alone (Fig. 5D). However, rising
409
temperatures significantly decreased the P:R ratio in all mesocosms, and lowest values
410
were measured at 31°C under OA (Supplementary tables 6 and 7). No significant
411
difference in the P:R ratio was detected between the control and seagrass mesocosms.
24
412 413 414 415 416 417 418
Fig. 3. The growth rate of macroalgae in control and seagrass mesocosms (mean±SE; n=3) for the latter three stages of the experiment. No macroalgae were observed during Stage I (prior to ocean acidification [OA]). Lowercase letters at the top of the figure signify significant differences (Tukey’s p<0.05) across stages.
25
419
420 421
422 423 424 425 426 427 428 429 430
A
B
Fig. 4. (A) Maximum, dark-adapted yield of photosystem II (Fv/Fm) and (B) calcification rates of corals in response to ocean acidification (OA) and warming (mean±SE; n=3) in all four and the latter three experimental stages, respectively. Lowercase letters adjacent to experimental stage or treatment names at the top of each panel signify significant differences (Tukey’s p<0.05) between experimental stages and seagrass (Sg) and control (Con) mesocosms when the repeated measures ANOVAs (Supplemental tables 6 and 7) detected a significant overall effect of stage alone (a) or 26
431 432
stage x treatment (b), respectively. In all cases, the group labeled “a” possessed the lowest value of the respective response variable.
27
433
A
B
434 435 436
C
D
437 438 439 440 441 442 443 444 445 446 447
Fig. 5. Community metabolism parameters in control (Con) and seagrass (Sg) mesocosms (n=3) at each of four experimental stages (mean±SE). (A) ecosystem respiration (ER), (B) gross primary production (GPP), (C) net ecosystem metabolism (NEP), and (D) P/R ratio. Lowercase letters adjacent to experimental stage or treatment names at the top of each panel signify significant differences (Tukey’s p<0.05) between experimental stages (b-d), treatment (b), and/or the interaction of stage and treatment (a, c) when the repeated measures ANOVAs (Supplemental tables 6 and 7) detected significant overall effects in the respective comparisons. In all cases, the group labeled “a” possessed the lowest value of the respective response variable.
28
448
4. Discussion
449
Effects of OA on different primary producers. Upon pumping CO2 into the seawater,
450
all mesocosms underwent increases in the concentrations of H2CO3, HCO3-, and H+; the
451
CO32- concentration and pH both decreased, as was hypothesized. Importantly, the
452
concentration of HCO3- was higher than CO2. Since the K0.5 of CO2 is 2-3 times lower
453
than that of HCO3-, CO2 is the preferred carbon source for seagrasses and macroalgae
454
(Sand-Jensen and Gordon, 1984). However, due to the slow dispersion rate and low
455
concentration of CO2 in seawater, most marine producers are C3 plants and use HCO3-
456
as their primary carbon source (Koch et al., 2013). Particularly, the lower utilization
457
efficiency of HCO3- by seagrasses than by macroalgae (Beer, 1989) suggests that
458
seagrasses are often limited by DIC in marine ecosystems (Invers et al., 2001). Some
459
seagrass species have been reported to demonstrate higher photosynthetic efficiency
460
(Fv/Fm), elevated leaf productivity, higher belowground biomass, and lower leaf
461
nitrogen and chl-a content in response to the higher DIC concentrations associated with
462
OA (Jiang et al., 2010, Repolho et al., 2017). Herein, although the Fv/Fm of T.
463
hemprichii was not greatly affected by OA, shoot density and leaf growth rate both
464
increased, which is consistent with results of prior studies (Palacios and Zimmerman,
465
2007; Andersson et al., 2011). Increasing the temperature to 28°C or 31°C under OA
466
conditions further increased the shoot density, photosynthetic efficiency, and leaf
467
growth rate of T. hemprichii. Higher leaf productivity of the seagrass Zostera marina in
468
response to acidification was also observed (Palacios and Zimmerman, 2007). It is
469
worth noting here that the faster decomposition rates of old and senesced seagrass
470
leaves under higher temperatures (Huang et al., 2015) may have accounted for the
471
higher concentrations of nitrite and nitrate in the seagrass mesocosms at 31°C.
29
472
Upon acidification, the macroalga D. bartayresiana proliferated in all mesocosms.
473
The congeneric Dictyota dichotoma was also dominant in high-pCO2 vents off Castello
474
Aragonese (Ischia Island, Italy) (Porzio et al., 2011). Many macroalgae can dampen the
475
activity of HCO3--based carbon concentrating mechanisms (CCMs) and shift from use
476
of HCO3- to CO2 as their preferred carbon source in response to elevated CO2 levels
477
(Young and Gobler, 2016). Such a shift could explain why D. bartayresiana thrived
478
under OA conditions in our mesocosms. Furthermore, the significantly lower phosphate
479
concentrations in the controls relative to the seagrass mesocosms after increasing the
480
pCO2 and temperature may have been due to uptake by these macroalgae. Although the
481
growth of D. dichotoma was presumably stimulated by OA herein, its growth rate
482
sharply declined at 31 ̊C , and mortality was actually prevalent. Biber (2002) also found
483
that macroalgal biomass decreases at this temperature in South Florida (similar latitude
484
as Southern Taiwan).
485
The Fv/Fm of the coral P. damicornis did not decrease in response to OA, and its
486
calcification rate was similar to that measured in the South China Sea at 29°C (Jiang et
487
al., 2017). P. damicornis is clearly not vulnerable to OA (as observed previously,
488
Comeau et al., 2014), nor are the larvae (Putnam et al., 2013). However, upon
489
increasing the temperature to 28°C under OA conditions, Fv/Fm declined; the
490
calcification rate, however, was unaffected until the temperature was raised to 31°C for
491
13 days. In another mesocosm study carried out at the same facility, P. damicornis was
492
found to actually bleach at 31.5°C (Mayfield et al., 2013); our finding of diminished
493
calcification at 31°C under OA conditions herein is therefore unsurprising.
494
The calcification rate of P. damicornis in the seagrass mesocosms was significantly
495
higher than in the controls at 25°C and 28°C under OA conditions. Prior studies (Lai et
30
496
al., 2013, Hendriks et al., 2014) indicated that seagrasses may regulate local pH values
497
and raise ΩAr, which could thereby enhance the calcification rates of nearby corals.
498
However, pH and ΩAr were similar in the control and seagrass mesocosms. It is
499
nevertheless possible that the seagrasses influenced coral calcification rates by other
500
means, as discussed below.
501
Seagrasses compete with macroalgae for nutrients (Alexandre et al., 2017), which
502
likely accounts for why macroalgal growth was lower in the seagrass mesocosms.
503
Seagrass could also have reduced the degree of nutrient competition between
504
macroalgae and P. damicornis, thereby accounting for (indirectly) the elevated coral
505
calcification rates in the seagrass mesocosms. Corals can survive in oligotrophic
506
systems because they can obtain nutrients from diverse sources, namely via the
507
photosynthetic algae (family Symbiodinaceae) living in their tissues (Yonge, 1931;
508
Jackson & Yellowlees, 1990; Ceh et al., 2013). However, autotrophic corals still rely on
509
exogenous nutrients and therefore compete with primary producers such as macroalgae,
510
periphyton, and seagrasses for nutrients in oligotrophic coral reef ecosystems. Our
511
results showed that macroalgae are likely to bloom and rapidly consume nutrients in the
512
water in response to elevated pCO2 levels; this may account for why phosphate
513
concentrations were barely detectable in the control, algae-enriched mesocosms. We
514
surmise that this lack of phosphate could be another driver of the observed reduction in
515
coral calcification in the seagrass-free control mesocosms given the importance of
516
phosphate in coral photosynthesis (Annis and Cook, 2002). That being said,
517
Symbiodinaceae dinoflagellates can obtain phosphate from dissolved organic sources,
518
as well (Jackson and Yellowlees, 1990), and so this phosphate limitation hypothesis
519
remains speculative.
31
520
The overall effects of seagrass on coral reef mesocosms can be further examined via
521
assessment of the community metabolism data. In general, there is a positive
522
relationship between algal biomass and GPP (Mulholland et al., 2001). Herein the GPP,
523
NEP, and ER were all higher in the high-algal biomass controls under OA conditions,
524
and the differences in GPP, NEP, and ER between the seagrass mesocosms and the
525
controls became greater when the seawater temperature was increased to 28°C. When
526
the temperature reached 31°C, the NEP in all mesocosms declined, although the NEP in
527
the controls was still higher than in the seagrass mesocosms. The decline in NEP at
528
31°C is likely due to reduced macroalgal biomass at this temperature, as has been
529
documented in other studies of subtropical algae (Koch et al., 2013) (including the
530
macroalga Codium edule in Nanwan Bay, Taiwan (Lin et al., 2007). Macroalgal
531
degradation in our controls at 31°C could also account for the increase in ER at this
532
temperature.
533 534 535
5. Conclusions The increase in DIC concentration in the seawater as a combined effect of OA and
536
rising temperatures stimulated the growth of macroalgae, which may have preferentially
537
exploited CO2 as their major carbon source. However, the growth of macroalgae was
538
less in the seagrass mesocosms than in the controls. OA did not have a significant effect
539
on the coral P. damicornis. However, the calcification rates of the corals were higher in
540
the seagrass mesocosms than in the controls, potentially as a result of competitive
541
interactions between the seagrass and macroalgae. Macroalgal and coral growth both
542
suffered at 31°C under OA conditions. In contrast, seagrass shoot density, Fv/Fm, and
543
leaf growth rate all increased with temperature. Consequently, the climate change
32
544
factor-associated decline in NEP and ER in the seagrass mesocosms was less than in the
545
controls, indicating that the presence of seagrass in the mesocosms can help stabilize
546
(i.e., buffer) the system’s metabolism in response to projected climate change stressors.
547 548
Acknowledgments
549
This work was funded by 1) a research grant from the Ministry of Science and
550
Technology (MOST) of Taiwan (MOST 105-2621-B-259-001 to PJL and HJL) and 2)
551
the “Innovation and Development Center of Sustainable Agriculture” project
552
administered by the “Featured Areas Research Center Program” within the framework
553
of Taiwanese Ministry of Education’s “Higher Education Sprout Project.” ABM was
554
supported by a postdoctoral research fellowship from the Khaled bin Sultan Living
555
Oceans Foundation during the time at which the research project was undertaken.
556 557
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Author contributions
43
808
PJL and HJL conceived the ideas and designed the experiments; SJA collected and
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analyzed the data; HJL and ABM drafted the manuscript. All authors read and approved
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the final manuscript.
811 812
Competing interests: The authors declare no competing interests.
44
Figure captions Fig. 1. (A) The coral reef mesocosm facility. (B) The front side of the mesocosm, which featured corals and giant clams and (C) the rear side of the mesocosm, which housed the seagrasses. The black plastic mesh screen evident (~1 m2) in (B)-(C) (between the front and rear sides) prevented seagrass grazing by sea urchins and served, additionally, as settlement material for macroalgae (see below for details). Fig. 2. Seagrass (A) shoot density, (B) leaf growth rate, and (C) maximum quantum yield of photosystem II (Fv/Fm) across the four stages (denoted by shading) of the experiment (mean±SE; n=3). Lowercase letters adjacent to experimental stage at the top of each panel signify significant differences (Tukey’s p<0.05) between the means for each experimental stage, as repeated measures ANOVAs detected significant overall effects of ocean acidification [OA] (from Stage I to II) and combined effects of OA and warming (from Stage II to IV) for each response variable (Supplementary tables 4 and 5). In all cases, the group labeled “a” possessed the lowest value of the respective response variable. Fig. 3. The growth rate of macroalgae in control and seagrass mesocosms (mean±SE; n=3) for the latter three stages of the experiment. No macroalgae were observed during Stage I (prior to ocean acidification [OA]). Lowercase letters at the top of the figure signify significant differences (Tukey’s p<0.05) across stages. Fig. 4. (A) Maximum, dark-adapted yield of photosystem II (Fv/Fm) and (B) calcification rates of corals in response to ocean acidification (OA) and warming (mean±SE; n=3) in all four and the latter three experimental stages, respectively. Lowercase letters adjacent to experimental stage or treatment names at the top of
45
each panel signify significant differences (Tukey’s p<0.05) between experimental stages and seagrass (Sg) and control (Con) mesocosms when the repeated measures ANOVAs (Supplemental tables 6 and 7) detected a significant overall effect of stage alone (a) or stage x treatment (b), respectively. In all cases, the group labeled “a” possessed the lowest value of the respective response variable. Fig. 5. Community metabolism parameters in control (Con ) and seagrass (Sg) mesocosms (n=3) at each of four experimental stages (mean±SE). (A) ecosystem respiration (ER), (B) gross primary production (GPP), (C) net ecosystem metabolism (NEP), and (D) P/R ratio. Lowercase letters adjacent to experimental stage or treatment names at the top of each panel signify significant differences (Tukey’s p<0.05) between experimental stages (b-d), treatment (b), and/or the interaction of stage and treatment (a, c) when the repeated measures ANOVAs (Supplemental tables 6 and 7) detected significant overall effects in the respective comparisons. In all cases, the group labeled “a” possessed the lowest value of the respective response variable.
46
Supplementary information Apex display
Network cable
Apex base
Temperature probe
Energy Bar 8
pH probe
ORP probe
Supplementary fig. 1. The Apex AquaController™ system used to regulate the temperature and pH of the six mesocosms.
47
Supplementary table 1. Physical and chemical characteristics of the seawater in the control (T2, T4, and T6) and seagrass mesocosms (T1, T3, and T5) and the photosynthetic efficiency (Fv/Fm; i.e., maximum, dark-adapted yield of photosystem II) of the seagrass Thalassia hemprichii before the experiment. Values in cell represent means. DIC=dissolved inorganic carbon. DO=dissolved oxygen. NA=not assessed. TA=total alkalinity.
pH Temperature (˚C) DO (mg L-1) Salinity pCO2 (μatm) TA (μmol kg-1) ΩAr DIC (μmol kg-1) HCO3- (μmol kg-1) CO32- (μmol kg-1) CO2 (μmol kg-1) PO43- (μmol L-1) NH4+ (μmol L-1) NO2- (μmol L-1) NO3- (μmol L-1) Seagrass Fv/Fm
T1
T2
T3
T4
T5
T6
7.92 26.1 6.70 35.30 462 2189 2.88 1933 1738 182 13 0.016 0.077 0.011 0.020 0.790
7.92 26.4 6.65 35.30 589 2182 2.43 1972 1802 153 16 0 0.024 0.014 0.004 NA
7.92 26.0 6.70 35.10 450 2189 2.93 1929 1732 184 13 0.030 0.026 0.009 0.056 0.794
7.95 26.0 6.70 35.03 449 2182 2.92 1923 1727 183 13 0.009 0.028 0.005 0.029 NA
7.97 25.9 6.71 35.07 448 2299 3.22 2017 1803 202 12 0.009 0.018 0.007 0.033 0.791
7.91 26.1 6.68 35.15 465 2202 2.90 1946 1750 182 13 0 0.009 0.006 0.012 NA
48
Supplementary table 2. Two-way repeated measures ANOVA results of seagrass presence and ocean acidification (OA) (i.e., from experimental stage I to II) on seawater quality and irradiance. Statistically significant findings (p<0.05) have been highlighted in bold font. DIC=dissolved inorganic carbon. DO=dissolved oxygen. PAR=photosynthetically active radiation. TA=total alkalinity.
pH Temperature (˚C) PAR (µmol m-2 s-1) DO (mg L-1) Salinity pCO2 (μatm) TA (μmol kg-1) ΩAr DIC (μmol kg-1) HCO3- (μmol kg-1) CO32- (μmol kg-1)† CO2 (μmol kg-1)
Seagrass presence F(1, 4)=1.015, p=0.371 F(1, 4)=0.020, p=0.894 F(1, 4)=1.367, p=0.307 F(1, 4)=0.072, p=0.802 F(1, 4)=0.477, p=0.528 F(1, 4)=0.305, p=0.610 F(1, 4)=2.373, p=0.198 F(1, 4)=2.286, p=0.205 F(1, 4)=2.340, p=0.201 F(1, 4)=2.229, p=0.210 F(1, 4)=2.181, p=0.214 F(1, 4)=0.471, p=0.530
OA F(1, 4)=171.202, p<0.001 F(1, 4)=1.780, p=0.253 F(1, 4)=0.716, p=0.445 F(1, 4)=57.316, p=0.002 F(1, 4)=4.863, p=0.092 F(1, 4)=508.342, p<0.001 F(1, 4)=0.092, p=0.777 F(1, 4)=388.042, p<0.001 F(1, 4)=26.830, p=0.007 F(1, 4)=55.032, p=0.002 F(1, 4)=627.699, p<0.001 F(1, 4)=482.845, p<0.001
Interaction F(1, 4)=0.820, p=0.416 F(1, 4)=0.081, p=0.790 F(1, 4)=4.465, p=0.102 F(1, 4)=0.207, p=0.673 F(1, 4)=0.155, p=0.714 F(1, 4)=2.023, p=0.228 F(1, 4)=0.526, p=0.509 F(1, 4)=5.282, p=0.083 F(1, 4)=0.025, p=0.883 F(1, 4)=0.024, p=0.886 F(1, 4)=6.441, p=0.064 F(1, 4)=1.980, p=0.232
PO43- (μmol L-1)
F(1, 4)=1.907, p=0.239
F(1, 4)=0.152, p=0.716
F(1, 4)=1.273, p=0.322
NH4+ (μmol L-1)
F(1, 4)=2.688, p=0.176
F(1, 4)=80.646, p<0.001
F(1, 4)=1.837, p=0.247
F(1, 4)=2.522, p=0.187
F(1, 4)=40.752, p=0.003
F(1, 4)=3.625, p=0.130
F(1, 4)=1.954, p=0.235
F(1, 4)=11.659, p=0.027
F(1, 4)=0.515, p=0.513
-
NO2 (μmol
L-1)
NO3- (μmol L-1) †square-root transformed data.
49
Supplementary table 3. Two-way repeated measures ANOVA results of seagrass (Sg) presence and the combined treatment of ocean acidification (OA) and warming (i.e., from experimental stage II to IV) on seawater quality and irradiance; statistically significant findings (p<0.05) have been highlighted in bold, and lowercase letters in the “Tukey’s test” column signify significant differences (p<0.05) across combined treatment of OA and warming. In all cases, the group labeled “a” possessed the lowest value of the respective response variable. Con=control. DIC=dissolved inorganic carbon. DO=dissolved oxygen. PAR=photosynthetically active radiation. TA=total alkalinity.
50
pH Temperature (˚C)
Seagrass presence F(1, 4)=1.731, p=0.259 F(1, 4)=0.054, p=0.828
OA and warming F(2, 8)=3.932, p=0.065 F(2, 8)=9132.432, p<0.001
Interaction F(2, 8)=0.433, p=0.663 F(2, 8)=0.331, p=0.728
PAR (µmol m-2 s-1)
F(1, 4)=0.158, p=0.712
F(2, 8)=0.448, p=0.654
F(2, 8)=1.828, p=0.222
DO (mg L-1)
F(1, 4)=0.458, p=0.536
F(2, 8)=9602.524, p<0.001
F(2, 8)=0.354, p=0.712
25a 28b 31c
Salinity
F(1, 4)=1.266, p=0.323
F(2, 8)=341.912, p<0.001
F(2, 8)=0.224, p=0.804
25a 28b 31c
pCO2 (μatm)
F(1, 4)=0.041, p=0.850
F(2, 8)=11.915, p=0.004
F(2, 8)=1.439, p=0.293
28a 25b 31b
TA (μmol kg-1)
F(1, 4)=0.114, p=0.752
F(2, 8)=12.746, p=0.003
F(2, 8)=1.441, p=0.292
25a 28b 31b
ΩAr
F(1, 4)=0.106, p=0.761
F(2, 8)=101.400, p<0.001
F(2, 8)=1.389, p=0.304
25a 31b 28c
DIC (μmol kg-1)
F(1, 4)=0.113, p=0.753
F(2, 8)=6.557, p=0.021
F(2, 8)=1.400, p=0.301
25a 28ab 31b
HCO3- (μmol kg-1)
F(1, 4)=0.111, p=0.755
F(2, 8)=4.760, p=0.043
F(2, 8)=1.373, p=0.307
25a 28ab 31b
CO32- (μmol kg-1)
F(1, 4)=0.111, p=0.755
F(2, 8)=103.039, p<0.001
F(2, 8)=1.416, p=0.298
25a 28b 31b
CO2 (μmol kg-1)
F(1, 4)=0.020, p=0.893
F(2, 8)=13.027, p=0.003
F(2, 8)=1.319, p=0.320
28a 25b 31b
PO43- (μmol L-1)
F(1, 4)=9.363, p=0.038
F(2, 8)=0.148, p=0.865
F(2, 8)=0.304, p=0.746
Sga Conb
NH4+ (μmol L-1)
F(1, 4)=3.716, p=0.126
F(2, 8)=3.182, p=0.096
F(2, 8)=0.367, p=0.704
NO2- (μmol L-1)
F(1, 4)=5.025, p=0.088
F(2, 8)=52.305, p<0.001
F(2, 8)=7.010, p=0.017
NO3- (μmol L-1)
F(1, 4)=4.935, p=0.090
F(2, 8)=9.605, p=0.007
F(2, 8)=4.014, p=0.062
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Tukey’s test 31a 28b 25c
31a 28b 25b
Supplementary table 4. One-way repeated measures ANOVA results of the effect of ocean acidification (OA) on the seagrass Thalassia hemprichii in seagrass mesocosms only from experimental stage I to II. Statistically significant findings (p<0.05) has been highlighted in bold. F(1,2) Shoot density (shoot m-2)
p
75.184 0.013 week-1)
Rate of shoot density increase (% Seagrass leaf Fv/Fm Seagrass leaf growth rate (mm shoot-1 day-1)
1.631 0.330 31.687 0.030 19.494 0.048
Seagrass leaf productivity (mg DW shoot-1 day-1)
5.726
0.139
Aboveground biomass (mg DW shoot-1)
0.942
0.434
Seagrass biomass (mg DW shoot-1) Belowground/aboveground (R/S) ratio
0.502 2.615
0.552 0.247
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Supplementary table 5. One-way repeated measures ANOVA results of the combined treatment of ocean acidification (OA) and warming (i.e., from experimental stage II to IV) on the seagrass Thalassia hemprichii. Statistically significant findings (p<0.05) have been highlighted in bold font. Lowercase letters in the “Tukey’s test” column signify significant differences (p<0.05) across combined treatment of OA and warming. In all cases, the group labeled “a” possessed the lowest value of the respective response variable.
Shoot density (shoot m-2)
63.393
Tukey's test a b c <0.001 31 28 25
Rate of shoot density increase (% week-1) Seagrass leaf Fv/Fm Seagrass leaf growth rate (mm shoot-1 day-1)
5.074 10.786 57.758
0.080 0.024 0.001
Seagrass leaf productivity (mg DW shoot-1 day-1)
3.401
0.137
Aboveground biomass (mg DW shoot-1)
3.975
0.112
Seagrass biomass (mg DW shoot-1) Belowground/aboveground (R/S) ratio
6.841 0.190
0.051 0.834
F(2,4)
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p
31a 28ab 25b 31a 28a 25b
Supplementary table 6. Two-way repeated measures ANOVA results of seagrass presence and ocean acidification (OA) on 1) Fv/Fm of the coral Pocillopora damicornis, 2) system metabolism parameters from Stage I (ambient pCO2 and temperature) to II (OA and ambient temperature). Statistically significant findings (p<0.05) have been highlighted in bold font.
Coral Fv/Fm
Seagrass presence F(1, 4)=0.322 , p=0.601
ER (g O2 m-2 d-1)
F(1, 4)=0.279, p=0.625
GPP (g O2 m-2 d-1)
F(1, 4)=2.037, p=0.227
NEP (g O2 m-2 d-1)
F(1, 4)=4.567, p=0.099
GPP/ ER (P/R) ratio
F(1, 4)=0.0194, p=0.896
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OA Interaction F(1, 4)=3.058 , p=0.155 F(1, 4)=0.030, p=0.871 F(1, 4)=0.0199, F(1, 4)=2.471, p=0.191 p=0.895 F(1, 4)=4.734, p=0.095 F(1, 4)=1.370, p=0.307 F(1, 4)=12.413, F(1, 4)=11.328, p=0.028 p=0.024 F(1, 4)=0.431, p=0.547 F(1, 4)=1.863, p=0.244
Supplementary table 7. Two-way repeated measures ANOVA results of seagrass (Sg) presence and the combined treatment of ocean acidification (OA) and warming (i.e., from experimental Stage II to IV) on the Fv/Fm and calcification rate of the coral Pocillopora damicornis, the macroalgal growth rate, and system metabolism parameters. Statistically significant findings (p<0.05) have been highlighted in bold font, and lowercase letters in the “Tukey’s test” column signify significant differences (p<0.05) across either seagrass (Sg) presence or combined treatment of OA and warming. In all cases, the group labeled “a” possessed the lowest value of the respective response variable. “Con” =control mesocosms.
Seagrass presence
OA and warming
Coral Fv/Fm
F(1, 4)=0.128, p=0.739
Coral calcification rate (mg CaCO3 d-1) Macroalgal growth rate (g d-1) ER (g O2 m-2 d-1) GPP (g O2 m-2 d-1) NEP (g O2 m-2 d-1) GPP/ER (P/R) ratio
F(1, 4)=4.767, p=0.094 F(2, 8)=57.146, p<0.001 F(1, 4)=1.473, p=0.292 F(2, 8)=5.347, p=0.034 F(1, 4)=8.335, p=0.045 F(2, 8)=57.679, p<0.001 F(1, 4)=74.113, p=0.001 F(2, 8)=6.662, p=0.020 F(1, 4)=3.542, p=0.133 F(2, 8)=26.118, p<0.001 F(1, 4)=0.074, p=0.799 F(2, 8)=173.840, p<0.001
Interaction
F(2, 8)=11.233, p=0.005 F(2, 8)=0133, p=0.877
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Tukey’s test 25a 28ab 31b
F(2, 8)=5.414, p=0.033 F(2, 8)=1.488, p=0.282 28a 25ab 31b F(2, 8)=7.503, p=0.015 F(2, 8)=2.712, p=0.126 Sga Conb, 28a 31ab 25b F(2, 8)=0.458, p=0.648 25a 28a 31b F(2, 8)=1.428, p=0.295 25a 28b 31c
Supplementary fig. 2. The growth of the macroalga Dictyota bartayresiana in the seagrass and control mesocosms in the first and second (“acidification”) experimental stages (both at 25°C). Tank No.
Control mesocosms First stage Acidification (stage II)
Tank No.
T2
T1
T4
T3
T6
T5
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Seagrass mesocosms First stage Acidification (stage II)
Conceptual model of climate change (ocean acidification [OA] and seawater warming) effects on coral reef mesocosms that either do (light blue) or do not (blue) feature seagrass beds. Solid lines denote abiotic effects (i.e., OA or OA+warming to 31C), whereas dotted lines depict effects of co-incubation with seagrass. CCM=carbon concentrating mechanism. ER=ecosystem respiration, GPP=gross primary production, NEP=net ecosystem metabolism, and P/R=photosynthesis/respiration ratio.
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Highlights
The combined effect of OA and rising temperatures stimulated the growth of macroalgae.
OA resulted in higher coral calcification rates when corals were co-incubated with seagrass.
Macroalgal growth was lower in seagrass-containing mesocosms.
Coral and macroalgal, but not seagrass, growth suffered at 31°C under OA conditions.
Seagrass helped to stabilize the system’s metabolism in response to projected climate change stressors.
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