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Importantly, Florida Bay has undergone major changes over the |
past century as a result of anthropogenic impacts associated with |
the construction of the railroad across the Florida Keys and |
drainage and impoundment of freshwater wetlands upstream |
(Fourqurean and Robblee, 1999), resulting in increased salinity, |
decreased water exchange, and changes in benthic macrophyte |
communities (Rudnick et al., 2005; Madden et al., 2009). |
Today, a large portion of Florida Bay functions as a reverse |
estuary with chronic hypersalinity conditions prevailing in the |
north-central part of the bay during the low precipitation and |
freshwater inflow periods of the dry season (December–May; |
Kelble et al., 2007). Relative to historical conditions, freshwater |
flows have been reduced by 60%, with nearshore present-day |
salinities being 5–20 ppt higher than pre-drainage (Marshall et al., |
2009). These conditions make the bay vulnerable to drought |
events, which in 1987 and 2015 resulted in massive seagrass |
die-off events, affecting approximately 30% of the bay (Zieman |
et al., 1999; Hall et al., 2016). Two basins, Johnson and Rankin, |
were chosen as focal basins for this study because they are |
located in the north-central part of the bay affected by the 2015 |
die-off, and because long long-term seagrass cover monitoring |
data exists, which are useful to examine recovery trends (Hall |
et al., 2016; Figure 2). Additionally, the basins were affected by |
Hurricane Irma, which passed through Florida Bay as a category |
4 hurricane in September 2017, disturbing benthic communities |
and significantly altering the circulation of water in the bay |
(Liu et al., 2020). |
Satellite Imagery Processing |
LandSat imagery from three LandSat missions (LandSat 5, |
LandSat 7, and LandSat 8)1 were used to map the sediment plume. |
LandSat satellites are a very popular tool in coastal mapping |
due to a relatively short revisit rate (2 weeks), high resolution |
(30 m), long time series (LandSat 5 was launched in 1985), and |
availability. LandSat satellites collect data in 7 bands across the |
visible and infrared spectrums. Two LandSat images per year |
1https://landsat.gsfc.nasa.gov |
Frontiers in Marine Science | www.frontiersin.org 3 July 2021 | Volume 8 | Article 633240 |
Rodemann et al. Sediment Plume and Seagrass Resilience |
FIGURE 2 | (A) Map of Florida Bay showing the location of our two study basins (Rankin and Johnson), the extent of the 2015 seagrass die-off, and the track of |
Hurricane Irma in 2017. Everglades National Park is denoted by green shading. Extent of the sediment plume overlaid over satellite imagery shows the (B) smallest |
(119.6 km2 |
; 10/03/2009), and (C) largest plume areas (249.2 km2 |
; 11/29/2018) observed in the study. |
from 2008 to 2020 were used to map the plume expansion |
for a total of 24 images. 2008 was chosen as the early cutoff |
since it matches the time series of total seagrass cover data |
provided by the Florida Fish and Wildlife Commission Fish and |
Wildlife Research Institute (FWC-FWRI). Google Earth Engine, |
an online coding platform, was used to process each satellite |
image (Gorelick et al., 2017). Google Earth Engine is a popular |
tool for seagrass mapping at regional scales due to its availability, |
ease of use, and batch processing that allows multiple satellite |
images to be analyzed at once (Lyons et al., 2012; Zhang et al., |
2019; Wang et al., 2020). |
Atmospherically and geometrically corrected LandSat images |
(courtesy of the U.S. Geological Survey) were loaded into Google |
Earth Engine to mask clouds, land, and shallow banks. Masking |
each image removes the areas of the satellite image that are not |
the focus of the study. Images were chosen based on a visual |
inspection of cloud cover, where images needed to have less |
than 10% cloud cover to be considered. Clouds were masked via |
the U.S. Geological Survey (USGS) quality assessment algorithm, |
which uses the CFMask algorithm (Foga et al., 2017) to calculate |
pixels with cloud cover and shadow. Land and shallow banks |
were masked using a Florida Bay Basin shapefile provided by |
FWC-FWRI (Figure 3A). Banks were masked due to the lack |
of seagrass data and difficulty of differentiating sediment plume |
from bottom. Masked LandSat images were downloaded from |
Google Earth Engine, keeping the bands in the visible and nearinfrared spectrums. |
Sediment Plume Delineation |
The areal extent of the sediment plume was delineated using |
manual digitalization. Manual digitization, also known as photo |
interpretation, has been used in coastal mapping for many |
decades (Roelfsema et al., 2009) and continues to be a popular |
method of coastal ecosystem mapping (Sherwood et al., 2017). |
Manual delineation was used in this study due to a lack of field |
training data as well as the presence of optically similar areas |
(i.e., sandy bottom vs. sediment plume). Two image interpreters |
were trained to delineate two classes: sediment plume with no |
light penetration (i.e., the bottom was not visible) and sediment |
plume with some light penetration (i.e., the bottom was visible; |
Figure 3B). Algal blooms within our area of study were not |
delineated. Accuracy assessment was performed by comparing |
delineations from 2017 to 2020 with turbidity measured from |
grab samples taken within the area of the plume by ENP. |
A turbidity measurement of >8 NTU was considered turbid, |
corresponding to an average Secchi depth of less than 1 m (Effler, |
1988). |
To aid in delineation, approximate suspended sediment |
concentration (SSC) was mapped using the algorithm developed |
in Islam et al. (2001). This algorithm assumes a linear relationship |
Frontiers in Marine Science | www.frontiersin.org 4 July 2021 | Volume 8 | Article 633240 |
Rodemann et al. Sediment Plume and Seagrass Resilience |
FIGURE 3 | Illustration of the methods employed in this study. LandSat images were loaded into Google Earth Engine and (A) masked to remove clouds, land, and |
shallow banks. (B) The masked satellite images and an approximate suspended sediment concentration (SSC) map were downloaded used for sediment plume |
delineation. (C) A total of 24 images were delineated from 2008 to 2020, GAMs were used to model the expansion of the plume, breakpoint analysis was used to |
determine a significant change in sediment plume size while ANOVAs and correlation analysis were used to determine the impact of the sediment plume on seagrass |
recovery. |
between the red band and the sediment concentration and was |
chosen because it best visually represented the sediment plume in |
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