1. Introduction
Globally, coastal areas are vulnerable to a variety of natural hazards that include floods, cyclones, hurricanes, tsunami, saltwater intrusion, and coastal erosion. These hazards are responsible for extensive human, financial, social, and ecological disturbances [
1]. Climate change and sea-level rise are projected to increase the vulnerability of the people living in the coastal regions and global mega deltas [
2,
3]. Coastal erosion is one of the most prominent problems in the coastal areas including global mega deltas [
4]. According to IPCC, sea level has risen 10–20 cm during the 20th century, possibly exacerbating coastal erosion globally [
5]. In coastal areas, land reclamation and shoreline protection are mitigative strategies to save the coastal lands and infrastructure [
6,
7]. Quantification of erosion/accretion and the effects of shoreline protection is particularly important to manage coastal land and formulate policies and plans to mitigate coastal erosion. Time-series remote sensing approaches have emerged as an effective approach for analysis of shoreline change detection drawing from 30+ years of satellite images available via Google Earth engine [
8,
9]. Other platforms delivering higher resolution imagery have become increasingly available for coastal analysis. Additionally, geospatial softwares such as the Digital Shoreline Analysis System (DSAS) [
10] exist to enable robust quantification of shoreline change rates. Several hundred peer-reviewed articles have used DSAS (described below) in empirical studies.
This research investigates the spatio-temporal variation in shoreline change and the erosion mitigation effects of newly introduced concrete revetments along the east bank of the Lower Meghna estuary of Bangladesh, located at the coastal outlet of the Ganges-Brahmaputra-Meghna (GBM) delta. The GBM drainage basin covers all of Bangladesh and encompasses all or part of India, China, Bhutan, and Myanmar. Over 90% of GBM discharge flows through Bangladesh to the Bay of Bengal with a large majority flowing out of the Lower Meghna estuary. The GBM delta is the largest among the highly populated Asian mega deltas covering an estimated area of more than 100,000 km
2 [
4]. This delta is among the world’s most dynamic due to coastal processes and annual monsoon rainfall that yields tremendous discharge driving erosion and accretion processes [
11,
12,
13]. Discharge is heavily influenced by seasonality, with 80% of the annual discharge occurring during the four months of the southwestern monsoon season [
14].
Coastal Bangladesh experiences erosion and accretion rates that are among the highest in the world [
15,
16,
17]. Coastal erosion in Bangladesh is a recurring problem, causing thousands of people to be displaced annually. Economically challenged populations experience significant vulnerability and chronic erosion-induced displacement. The magnitude and severity of affected peoples have negative consequences for national economic vitality and growth [
18]. Erosion causes population displacement and associated loss of economically productive land area, infrastructure, communication systems, and household livelihoods. As a developing country with limited internal resources, Bangladesh is particularly at a challenge to cope with coastal shoreline erosion and its negative consequences [
19].
To protect coastal agricultural land and communities, the government of Bangladesh initiated construction of coastal embankments in the 1960s as part of the Coastal Embankment Plan (CEP) [
20,
21]. The CEP established a system of polders where the land is surrounded by earthen embankments for flood protection and with drainage weirs to manage water levels enhancing agricultural activities [
22]. In the decades since the initiation of the CEP, concrete revetments have been constructed along many of Bangladesh’s coastal shorelines [
23]. These revetment structures are commonly constructed of concrete blocks at a sloped angle as opposed to vertical concrete seawalls. The sloped nature of revetments act to more effectively protect shorelines and interior land by absorbing and dissipating more energy compared to vertical seawalls (
Figure 1). Both revetments and seawalls are prone to scour at the base of the structure due to reflected wave energy and turbulence, though revetments suffer less of this structural weakening effect compared to vertical seawalls due to their better ability to dissipate hydrodynamic energy [
24,
25]. Additionally, both revetments and seawalls can experience flanking erosion at their terminal ends [
26,
27] whereby reflected water flow and wave energy causes erosion for unprotected shorelines adjacent to the structures. Further, downdrift sites can experience heightened erosion due to sediment deficit caused by coastal protective defenses [
28,
29,
30].
Remote sensing and GIS techniques are useful and widely used by coastal researchers in detecting coastal erosion and accretion throughout the world [
16,
23,
31]. In Bangladesh, a substantial literature has quantified riverbank erosion patterns for non-coastal, interior regions (e.g., Jamuna and Padma rivers) [
32,
33] as well as for the exterior coastal region facing the Bay of Bengal [
23,
34] using remotely sensed imagery. Though much of the shoreline change research uses Landsat imagery, this research has used much finer resolution data from Planet Labs to quantify rates of shoreline change.
Table 1 summarizes selected literature on shoreline change research on delta and coastal regions in Bangladesh and other parts of the world. These studies reveal that coastal Bangladesh has among the highest erosion rates in the world.
This study investigates shoreline erosion patterns for the southern portion of Lakshmipur District in Kamalnagar and Ramgati Upazilas, which prior research has identified as having high erosion rates [
17]. These sites had no presence of concrete revetment protection until recent years when three revetments were constructed in protecting a relatively small portion of the shoreline (
Figure 2). A northern revetment, Revetment A, was initiated in 2017 in Kamalnagar with a length of approximately 0.9 km completed in 2018. A centrally located revetment, Revetment B, was initiated in 2015 in Ramgati with about 3.2 km in length completed in 2017. A third revetment, Revetment C, was initiated in the far southern reach of Ramgati in 2018 and is not included in the analysis due to its newness with respect to imagery available for meaningful change analysis. The combined 4.2 km length of Revetments A and B used for analysis protects approximately 11% of the total 38 km shoreline length of the combined Kamalnagar and Ramgati shoreline.
A goal of this research is to quantify the effects of two of these new revetments on mitigating erosion as well as to assess erosion patterns for non-protected proximal shorelines. We also introduce human dimension perspectives by assessment, for a region containing Revetment B, household perceptions regarding revetment construction and efficacy. We analyzed data from a household survey in Ramgati conducted in April–May of 2018 following the 2015–2017 construction period of Revetment B. GPS household location points were collected for each household. The spatial nature of our household data relative to the location of Revetment B offers opportunities to assess household perceptions of revetment protection depending on if households are in locations that are protected or unprotected by this new revetment. The timing of the survey is such that results reveal perceptions for a period very soon after the revetment was completed. We specify the following research questions.
Research Objectives and Questions:
Q1. How do rates of shoreline change vary over the period 2011–2019 for Kamalnagar and Ramgati Upazilas?
Q2. Did new revetments effectively halt erosion, and what were the magnitudes of erosion change?
Q3. For each of the two new revetments, how have erosion rates changed for shorelines proximal to the terminal ends of the revetments for the periods after the revetments were completed?
Q4. Are there differences in how households perceive the desirability and efficacy of engineered revetments depending on if they are located in regions that are protected or unprotected by new revetments?
2. Materials and Methods
2.1. Study Area
The study area is located in Ramgati and Kamalnagar Upazilas within Lakshmipur District (
Figure 3). According to the most recent 2011 Bangladesh census, the combined population of these two upazilas was 483,917. Using the WorldPop 100 m resolution gridded population dataset [
47], we estimate that 135,362 of the Upazilas’ population (28.0%) lived within 3 km of the 2011 Lower Meghna estuary shoreline. In Bangladesh, of the highest body of the local government administration is a district containing Upazilas, which is composed of Unions comprising approximately ten villages. For census enumeration and government elections, the Union is the smallest administrative unit, though population refers colloquially to a home village. For presentation, we divide our focal shoreline that fronts Kamalnagar and Ramgati into North and South regions respectively, which we refer to later. Our household survey contains data predominantly from the South region in Ramgati Upazila. A small number of sampled households were located in Kamalnagar Upazila located slightly north of the South region.
2.2. Satellite Imagery
Satellite imagery used in this study (
Table 2) was obtained from Planet Lab, a US commercial imaging company [
48]. Planet Lab’s RapidEye and PlanetScope image data with a resolution of 6.5 m and 3.7 m respectively were processed to generate representative annual dry-season shorelines from 2011 to 2019. In other regions, this spatial resolution would not be sufficient to resolve annual change. However, the high rate of change in this study area enables appropriate use of the Planet Lab imagery. For our purposes, shorelines would ideally be derived from January or February anniversary dates situated temporally in the middle of the monsoonal dry season. Based on the availability of cloud-free and dry season imagery, we selected the best available images representing dry season anniversary dates. It is noted that these dates are not real anniversaries so that, for example, a November 2011 image was used that represented the 2012 dry-season shoreline. In one case, a late October 2010 image was used that represented the 2011 dry-season shoreline. This approach is justified because the majority of erosion occurs during the June–September monsoon period. It is important to note that the method of describing the erosion rate uses exact image dates to calculate shoreline change by normalizing actual inter-image duration to yield rates in units of meters per year. We refer to erosion rates even though accretion can occur. We do so because erosion is the overwhelming shoreline response in the study area [
17]. Shoreline change rates were estimated using both the End Point Rate (EPR) and Linear Regression Rate (LRR) and described below.
2.3. Shoreline Extraction
Alternative remote sensing indices exist to aid shoreline extraction. The Normalized Difference Water Index (NDWI) is one of the most widely used indices [
49,
50,
51]. Other indices such exist such as the Modified Normalized Difference Water Index (MNDWI) and Automated Water Extraction Index (AWEI) required MIR and SWIR bands. The Planet Lab imagery used here did not contain MIR/SWIR bands so that use of MNDWI or AWEI was not possible. To enhance extraction of annual shorelines, we calculated the Normalized Difference Water Index (NDWI), which makes use of the green and near-infrared (NIR) bands [
52]. NDWI values can range from −1 to 1, with water pixels typically being greater than zero and approaching 1 for clear open water.
Planet Lab imagery and the derived NDWI band were used as input to define shorelines. The task of separating water from land in this setting with discrete shorelines on the mainland is justified. Much other research extracts shorelines via visual digitization. We believe our approach is suitable and enables replication. The ISODATA unsupervised classification method using NDWI and Red, Green, Blue, and NIR (near infrared) bands was employed in ArcGIS to classify this bandset into ten output classes that were then reclassified into two classes, water and non-water. Geospatial processing methods converted this output into preliminary vector GIS shorelines. Vector GIS editing methods including visual inspection and treatment of small tributary gaps transformed the preliminary shorelines into final annual shorelines used for analysis.
Shoreline uncertainty was assessed and accounts for four uncertainty terms: Ug georeferencing uncertainty, Up pixel uncertainty, Ud digitizing uncertainty, and Ut uncertainty associated with tidal variation [
53]. Georeferencing uncertainty (Ug) of the Planet Labs imagery is stated as <10 m RMSE by Planet Labs. We use the 10 m RMSE as the maximum digitizing uncertainty for all shorelines. Pixel uncertainty (Up) is defined by the pixel resolution of the respective imagery. Digitizing uncertainty (Ud) is typically associated with manual digitizing of shorelines from visual inspection of source imagery (e.g., heads up digitizing). With this method, multiple analysts digitize the same shoreline, and uncertainty is quantified. With our method of automated shoreline digitization, the same shorelines will result with multiple shoreline generation so that Ud = 0. Uncertainty due to tidal variation (Ut) was assessed in the following manner. We used six Landsat images during the representative dry season of 2000 and applied our automated methodology to derive six shorelines. While the use of higher resolution Planet Lab imagery for the same years of analysis is desirable, their use was not feasible due to cost consideration. This approach of using Landsat-derived shorelines provides a justifiable estimate of tidal uncertainty. Tidal levels ranged from 0.8 m to 2.8 m for the dates/times of the analyzed images at a nearby tidal station. All inter-shoreline distances for the 15 combinations of shorelines for each transect were quantified to measure how shoreline position differs depending on the tidal level. The mean tidal difference was 0.97 m across all combinations. Regression analysis revealed that shoreline uncertainty exhibits a relationship of 7 m shoreline shift per 1 m tidal difference. We assume that the mean tidal difference is 1 m so that we apply a tidal uncertainty of Ut = 7.0 m. The total uncertainty for each shoreline position (Utotal) is stated by the following equation and specific shoreline uncertainties are stated in
Table 3. Uncertainties are generally on par with though slightly larger than the ~10 m horizontal accuracy associated with the CoastSat toolkit [
8] which draws from a 30-year times series of publicly available imagery. The high rates of erosion (revealed below) relative to spatial uncertainty justify our use of the Planet Lab imagery.
Further assessment of shoreline accuracy was performed by comparing the shorelines derived from Planet Lab imagery with shoreline positions obtained from reference images in Google Earth Pro. Reference image dates were determined using this application’s historical imagery tool. Only reference images within two months of images used for shoreline mapping were deemed acceptable. For some years, there were no reference images meeting this criterion so that assessment is possible only for the years shown in
Table 4. For each year, every 10th DSAS transect was overlaid in Google Earth and transect-shoreline points were obtained via heads up digitizing. Resulting reference x,y coordinates were integrated with x,y coordinates of assessed shorelines to calculate RMSE. The number of observations varies by year due to local scale image availability at appropriate dates along with cloud cover, which made it impossible to obtain reference points for every sample transect. Results indicate reference accuracies on par with shoreline uncertainties in
Table 3 and that the derived shorelines are suitable to assess shoreline change in this study area, which has erosion rates at much higher magnitudes.
2.4. Shoreline Change Estimation
Shoreline change rates were estimated using the Digital Shoreline Analysis System (DSAS) [
10]. The DSAS software is widely used in research and consists of three key components (
Figure 4): (1) a user-defined baseline running parallel to the shoreline and located either offshore or onshore, (2) a set of digital transects cast orthogonal from the baseline, and (3) transect-specific quantification of shoreline movement rates based on inter-shoreline distances of shoreline positions obtained from transect-shoreline intersection points. A total of 633 transects were created at 50 m increments (
Table 5).
We initially used both End Point Rate (EPR) and Linear Regression Rate (LRR) within DSAS. Both are commonly used in the research literature [
23,
54,
55,
56]. The End Point Rate (EPR) is calculated by dividing the distance of shoreline movement by the years elapsed between shoreline dates.
where A = the start image data and B = the terminal image date. Erosion is reported as positive valued EPR throughout.
The Linear Regression Rate (LRR) is estimated by fitting a least-squares regression line for each transect where y = distance along a transect from the baseline to observed transect-shoreline intersections, and x = shoreline date. LRR is the regression slope obtained for each transect and is an estimated rate of shoreline movement (erosion or accretion) along the transect in meters per year. By using annual shorelines for the period 2011 to 2019, each transect had eight (x,y) observations input into LRR regression estimation. For clarity of presentation, we present results only from EPR due to the high Pearson’s correlation between EPR and LRR of 0.996.
As stated above, we organized our transect data into two regions, North and South (
Figure 3). It was based on results from the Grouping Analysis tool of ArcGIS [
57]. This method groups spatial observations into clusters using a spatially explicit K-means method based on feature location and a quantitative feature attribute. The features were the 633 transects and the attribute was the transect EPR. Results revealed an optimal grouping (clustering) into the North and South regions indicated by pseudo F-statistics generated from successive groupings of 2 to 15 clusters. This two-cluster result accords well visually and quantitatively with observations of higher erosion rates in Kamalnagar Upazila (North) that differed from rates in Ramgati Upazila (South).
2.5. Social Survey
The combined use of remote sensing data with social survey data allows us to integrate human dimensions with geophysical dimensions of shoreline change in a spatially explicit manner. This approach is consistent with research linking “people and pixels” that investigates landscape change involving both social and biophysical domains [
58,
59,
60]. From April to June of 2018, a household survey was conducted in a set of coastal villages located primarily in the South region within Ramgati Upazila. We selected households using a random spatial sampling design with a higher sampling intensity for near shoreline areas to adequately capture perceptions of population most at risk of shoreline erosion. An initial set of 420 random latitude/longitude points was generated using GIS software and plotted on large format field maps to aid field navigation and household recruitment. Two project leaders coordinated a set of six data enumerators to recruit household respondents (one respondent per household) and to complete a household survey instrument. Enumerators navigated to the random point locations and approached the nearest household for recruitment. If a household declined participation, the next nearest household was invited to participate. All human subject activities were approved by the Institutional Review Board (IRB) of the Virginia Polytechnic Institute and State University (Virginia Tech). The survey contained questions spanning multiple topics with a focus on erosion hazards and took approximately one hour to complete. The present analysis draws on the following Likert-scale questions addressing perceptions of riverbank erosion risk and revetment protection:
Perception of embankment protection:
How do you agree that, “an engineered revetment should be constructed to protect the Meghna River shoreline of my union”?
How you agree that, “an engineered revetment should be constructed to protect the entire Meghna River shoreline from my union all the way to Chandpur approximately 100 km north of here”?
How do you agree that, “I think the revetment construction in recent years near my area is a positive thing”?
How do you agree that, “I think the revetment acts to protect areas near the revetment but acts to make riverbank erosion worse for other areas that are not protected by the revetment”?
A 5-point Likert scale was used for these survey questions ranging from strongly agree to strongly disagree. For analysis, responses were aggregated to a 3-point scale of agree, neutral, and disagree.
The 3.2 km Revetment B in Ramgati was constructed starting in 2015 and completed in 2017. Its central location within our social survey area enables analysis and comparison of response differences depending on household locations and their protection status due to the revetment. We defined households into three regions visually by inspecting household locations relative to the revetment and shoreline (
Figure 5). Region 1 households upstream of the Revetment B have no revetment protection. Region 2 households are fronted by the new Revetment B, which offers protection from riverbank erosion. Region 3 households downstream of Revetment B have no revetment protection.
For survey Questions 1–3 (see above), results are presented for all survey respondents. For Question 4 which focuses on the near-revetment effects on erosion, only the n = 88 responses for households located within 1 km of the 2018 shoreline, located (and protected) behind the revetment, and located within 1 km upstream or downstream of the revetment are reported. These 88 households were selected due to their likely heightened perceptions of erosion patterns for shorelines most near the revetment.
Appendix A (
Table A1 and
Table A2) describes selected socio-economic and spatial characteristics of sampled households included in analysis (n = 393). For some measures, the number of total responses is less than 393 due to missing data when respondents did not answer a question.
2.6. Analysis Methods
Q1. How do rates of shoreline change vary over the period 2011–2019 for Kamalnagar and Ramgati Upazilas?
Thematic mapping and descriptive statistics summarized the End Point Rate of shoreline erosion comparing the North (Kamalnagar) and South (Ramgati) regions during the 2011–2019 period. The Student’s t-test was used to determine if there were significant differences in mean EPR between North and South. Erosion rates are also reported for each successive one-year duration of shoreline change from 2011–2019.
Q2. Did new revetments effectively halt erosion and what were the magnitudes of erosion change?
EPR was estimated for shorelines derived for before/after periods of revetment installation (
Table 6). Before/after periods for Revetment A were 2015–2017 and 2017–2019. Before/after periods for Revetment B were 2011–2015 and 2015–2019. These dates were selected in order to have the same time duration for both periods with respect to each revetment. Transects intersecting the revetments were subset for analysis. We hypothesize that revetments effectively halted shoreline change (erosion) for the period after revetment installation. For analytical convenience, this temporal framework identifies a shoreline for a defined year (and associated image dates) as the shoreline for which the revetment was installed. For example, 2015 is treated as the date of installation for Revetment B; however, in reality 2017 was the year when construction was completed. Construction was initiated in 2015. Typically it takes one to two years for full construction and installation.
One sample t-tests were applied separately to EPR for Revetments A and B for the periods after revetment installation and applied to transects intersecting the revetments. Mean EPR for the after periods is hypothesized to be less than 10 m/y and would be interpreted as evidence that revetments halted erosion. Allowing a 10 m/y threshold can be interpreted that revetments effectively halting erosion for the following reasons: (1) shoreline locational uncertainty, (2) the aforementioned one to two year duration of revetment completion, and (3) the source image resolution. For these reasons, it would be unreasonable to expect that mean EPR would be equal to zero (e.g., not differ significantly from zero). Additionally, descriptive statistics on variability of EPR are provided.
Quantifying differences in EPR before and after periods reveals the amounts that erosion changed for the recent before/after periods used in the analysis. A variable difEPR was defined to quantify EPR change for transects intersecting the revetment as difERP = EPR_Before − EPR_After. Mean difERP values with 95% confidence intervals are reported.
Q3. For each of the two new revetments, how have erosion rates changed for areas at the terminal ends of the revetments for the periods after the revetments were completed?
Using difEPR with the same before/after temporal scheme described above (
Table 6), four sets of 20 transects each set representing 1 km of shoreline upstream and downstream of Revetments A and B were subset for analysis. Summary statistics characterize EPR and difEPR, and
t-tests were applied separately to test for differences in EPR and difEPR comparing upstream versus downstream locations. Based on prior research identifying downdrift heightened erosion effects of coastal defenses, we hypothesize that EPR_After will be larger for downstream sites compared to upstream sites.
To assess the relative magnitudes of EPR change as percent change in EPR, %difEPR was defined as follows:
EPR_Before and EPR_After were defined using the same temporal schemes as earlier.
Graphical plots are used to visually reveal patterns EPR and %difEPR at the individual transect level where the x-axis represents upstream or downstream distance from revetment terminus points, and the y-axis represents EPR or %difEPR.
Q4. Are there differences in how households perceive erosion risk depending on if they are located in regions that are protected or unprotected by a new revetment?
Cross-tabulations were applied to responses for the four survey questions and interpreted. A general expectation was that revetment installation would be perceived positively by respondents in all regions such that no explicit hypotheses are specified, however it is possible that perceptions may vary by respondent location depending on potentially varying rates of erosion and relative location of respondents with respect to the new embankment. Following an inductive approach, we are curious to discern potential differences.
4. Discussion
This research investigated the problem of coastal erosion and the strategy of engineered shoreline protection as a mitigation tool to reduce erosion risk for economically challenged population in Bangladesh with high vulnerability. In doing so, we implemented a combination of geospatial and social science methods to answer research questions regarding rates and patterns of shoreline erosion, the mitigative effects of newly constructed revetments, and human perceptions of revetment desirability and efficacy. Key summarized results, interpretation, and discussion are presented below.
Two recently constructed revetments effectively halted erosion for the 1.5 km and 3.2 km of shoreline protected by Revetments A and B. This is an expected result; however, it is notable that magnitudes of change (lowered erosion) immediately before and after revetment installation were 333.65 m/y and 201.45 m/y. Clearly, vulnerable households protected by these revetments benefit from reduced erosion risk. Related research using the same social survey data estimates that 24 households lost their homes to erosion [
17] from May 2018 to January 2019. All were located upstream of Ramgati’s Revetment B. In the absence of Revetment B, many households currently protected by the revetment might have been lost to erosion. Along with the clear household benefits of revetment protection for households located directly behind the revetment, revetment failure is a concern that warrants monitoring and remediation. News reports state that the northern revetment (Revetment A) has already experienced damage threatening this region, which has extreme erosion rates.
“The Meghna river protection dam under Kamalnagar Upazila of the district [Revetment A] is now under threat due to its bank erosion, spreading panic among villagers. Locals said it might disappear in the river as some 200 m of the dam have already been washed away due to strong current for the last two days. They alleged that the poorly-built dam collapses frequently as there were widespread irregularities in its construction—from the beginning to the end” [
37].
Results showed erosion to have decreased substantially for upstream and downstream sites within 1 km of the ends of Revetments A and B.
Table 14 summarizes differences and trends for the upstream and downstream locations.
Interestingly and for both revetments, downstream sites initially had higher erosion than upstream sites (Col. 1). After revetment installation, upstream sites had higher erosion (Col. 2). Downstream sites experienced the greatest raw and percentage change reduction in erosion (Cols. 3–4).
The finding that downstream sites experienced lower erosion than upstream sites after revetment installation runs counter to the hypothesis expecting downdrift effects to result in higher erosion for downstream sites as has been found in other research [
28,
29,
30], although we note that both sites experience lower erosion overall. Much of the prior research has been for sandy ocean beaches with prevailing longshore currents driving the downdrift effect. While our estuarine site experiences prevailing currents in the downstream direction, tidal influences operating in the reverse direction from the Bay of Bengal may be acting to attenuate downdrift effects. Further, we wonder if the higher downstream current velocity during the monsoon period [
61] is more attenuated for downstream sites such that upstream sites have relatively higher exposure to hydrodynamic energy and causes these relative differences in erosion patterns. The fact that the North region has higher erosion than the South region is a suggestive pattern where the seasonal monsoon pulse of erosive energy driven by fluvial discharge from the GBM basin is greater with increasing distance from the Bay of Bengal. Further geophysical and processed-based analyses including integrating analysis of wind, wave, and bathymetry data are required to better explain this pattern.
Upstream sites for both revetments initially had a downward spatial trend; e.g., higher erosion closer to the revetment that decreases with distance (Col. 5). This trend switched to an upward trend (Col. 6) indicating lower erosion closer to the revetment that increases with distance. Given that upstream sites experienced lower erosion overall after revetment installation, upstream households located closer to the revetment especially benefitted from the overall reduced erosion. Downstream sites showed no spatial trend before the revetments (Col. 7) while experiencing greater raw and percent erosion reduction (Cols. 3 and 4) compared to upstream sites.
Downstream sites of Revetment A (and associated near-shoreline households) experienced the greatest benefits of all sites from reduced erosion after new revetment. They had the greatest mean and percent erosion reduction. Further, the upward spatial trend after the revetment (Col. 8) reveals that downstream households located closer to the revetment benefitted the most from reduced erosion.
After revetment installation, the spatial patterns for all sites except those downstream of Revetment B (Cols. 6 and 8) exhibited an increasing trend of erosion rates with distance from terminal ends suggesting benefits of revetments for these most proximal sites. For the two upstream sites (transects upstream of Revetments and B), this was a trend reversal (see Cols. 5 and 6) from the period before revetment installation where sites closest to terminal ends had highest erosion rates and declining rates with increasing distance from terminal ends.
Results for near-embankment patterns and distance effects are described that warrant further investigation of the process dynamics. Possible explanations include localized offshore bar formation that alters currents differentially depending on location.
Survey results focusing solely on Revetment B in Ramgati showed that virtually all households desired revetment protection regardless of status—protected, upstream, or downstream. However, there were notable differences in perceptions of the revetment’s effects depending on household location. Notably, upstream respondents located within 1 km of the shoreline and 1 km of the revetment terminus strongly perceived that the revetment acted to make erosion worse. This result is interesting because these sites experienced lower erosion rates after revetment installation and within a context where the general trend of erosion rates has declined in the recent years before the survey, as did the entire study area. However, when viewed comparatively, nearby revetment-protected sites experienced a halt of erosion due to new revetment. Further and prior to the revetment, sites downstream from the revetment had comparatively higher erosion rates. This pattern reversed after the revetment such that upstream sites had higher erosion. Thus, and in a relative sense, upstream households became worse off concerning erosion rates compared to downstream households even though, in an absolute sense, erosion rates were reduced for both upstream and downstream sites.
Conversely, downstream respondents had the lowest perception that the revetment acted to make erosion worse. It is intriguing to question if this relative difference caused downstream respondents to perceive their erosion situation to have improved due to the perception of downstream relative erosion in addition to the absolute reduction of erosion rates for their shoreline. However, it is notable that a substantial percent of downstream respondents still perceived that the revetment acts to make erosion worse. A caveat is that the data do not permit direct interpretation of respondent perceptions relative to the other sites (e.g., protected vs. upstream vs. downstream). It is possible and even likely that respondents may have perceptions of erosion rates for other sites that inform responses.
5. Conclusions
The study describes research integrating remote sensing and social science data to answer questions regarding space–time patterns of coastal erosion in a region at high risk and the efficiacy/efficiency and human perception of revetments as a coastal protection strategy. Research that links remote sensing analysis of shoreline change with social data describing population at effected sites is uncommon. This work is innovative because, in addition to the empirial analysis of shoreline change, it analyzes the perceptions of human population located in close proximity to newly constructed embankment which alters erosion patterns. The use of high-resolution Planet Lab imagery with spatial analysis methods was shown to be an effective methodology revealing significant space–time erosion patterns. Revetments were found to halt erosion effectively and to be associated with upstream and downstream effects of nearby unprotected shorelines. Local population overwhelmingly have positive views of the revetment strategy and expressed a desire for continuous “wall-to-wall” protection for the eastern bank of the Lower Meghna estuary. Constructing continuous revetment protection would require a tremendous investment of resources, which makes this prospect unlikely in a developing country like Bangladesh and without significant political will, financial commitment, and international aid. Further, large-scale revetment protection would significantly alter the naturally occurring geophysical processes of this region of the Bangladesh delta, potentially in unforseen ways. While it is true that major protective infrastructure has been constructed throughout other parts of the Bangladesh coast, a new initiative would require a thorough scientific analysis of the costs and benefits. Future work should continue to monitor erosion patterns and revetment effects. It should further evaluate the social drivers (e.g., age, previous experience, education, income, employment sector, gender, etc.) of human perceptions of erosion risk and revetment as a mitigative strategy. The vast majority of shoreline proximal population in the study region will remain unprotected by coastal defenses for the foreseeable future and will continue to engage in livelihood strategies involving the evaluation of risk informing household behaviors, including the potential of erosion-induced migration. Future household disruption, response, and resilience will likely vary depending on the variation in household location/risk coupled with differentials in human, social, economic, and technological capital.