Results from the study of the sensitivity of the low and highly energetic circulation processes to Manning’s n coefficient, as well as a comparison between the modeled data and observed data in the CB are presented in the following sections.
3.1.1. Astronomical Tide
The sensitivity of the amplitude of the major constituent (M
2) is analyzed by quantifying range of the modeled M
2 amplitudes, i.e., the modeled amplitude by using a low Manning’s
n coefficient minus modeled amplitude by using a high Manning’s
n coefficient.
Figure 6 displays the amplitude and phase of the M
2 simulated by using each level of roughness (low, moderate, and high). Furthermore,
Table 6 summarizes the information provided by
Figure 6 for this constituent. At the lower bay, the analysis of the simulations performed on the three meshes showed that the range was around 0.00–0.01 m for all stations, except JRA station that lies on the region “a”, and it varied between 0.12 and 0.16 m. At the middle bay, all meshes performed similarity, showing a minimum degree of sensitivity in all stations for this tidal constituent. BH was the station presenting the largest sensitivity; the range of the modeled amplitudes was 0.04 m. At the upper bay, the range of those stations located in the region “b” varied between 0.02 and 0.03 m for the simulations performed on the three numerical meshes. Conversely, the modeled amplitudes were more sensitive in the region “a”, i.e., a larger range was found for PRC, W, and PRW stations. Here the differences between M
2 modeled amplitudes by using high and low friction varied up to 0.20 m.
Table 6 also shows that there is no effect of resolution on the sensitivity of the M
2 amplitude to Manning’s
n coefficient since three numerical meshes provided similar ranges in each region.
Authors such as Kerr et al. (2013) [
41] have studied the tide amplitude sensitivity to bottom friction formulation (with and without a lower limit on the bottom drag coefficient). They observed that both formulations performed relatively similar, concluding that tidal model is not sensitive to these formulations. Additionally, the control stations were divided into three regions: open, protected and inland. The MAEs obtained from the simulations using the limit and without lower limit formulations are fairly similar in each region. Passeri et al. (2011) [
28] studied the astronomical tide response to bottom roughness by the assigning three different levels of roughness in rivers, bays, and marshes in a study case in Florida. They found differences in the modeled M
2 and K
1 amplitudes ranging between 0.00 and 0.04 m by using a high and low friction. However, those values were found in rivers and bays areas indistinctly, i.e., both areas exhibited the same sensitivity. The values found here are consisted with those values reported by Passari et al. (2011) [
28] although none of these previous works observed different sensitivity in rivers and bays. The reason of this larger sensitivity in rivers could be explained by the fact that region “a” (river) is shallower (between 1 and 12 m) in comparison with the rest of the bay, region “b”, which reaches up to 30 m. According the Equation (1), the bottom stress is inversely related to the water depth, being more significant in shallow areas. Thus, Manning’s
n coefficient is more relevant in shallow areas; bottom stress and water elevation is more sensitivity to this coefficient in the region “a” than region “b”. Previous authors did not provide any information about the morphology or bathymetry of their study areas, therefore authors´ hypothesis cannot be confirmed with their works.
Figure 6 and
Table 7 were used to analyze the model performance by comparing against observed data. The results provided by the three meshes present a noteworthy similarity; overall, the simulations underestimated the amplitude of the M
2 tidal constituents. Note that the results from MP, PRW, A, and CC stations were excluded of the calculation of the MAE,
Table 7. In the region “b” of the lower bay, this metric showed that all friction simulations performed relatively similar, counting errors between 0.01 and 0.02 m. However, in the region “a”, the moderate friction simulation provided the lower MAE, 0.01 m, against 0.07 m or 0.04 m obtained for high and low friction respectively (high resolution mesh). The MAE of the middle bay stations showed that all frictions performed correctly (the maximum MAE was 0.06 m), but the moderate and low friction simulations produced a slightly lower error (0.03 m). Similarly as the lower bay, an increase of resolution did not lead to a lower error. In the region “b” of the upper bay, according to the MAE, the low and moderate frictions simulations performed similar with a minimum error (MAE equal to 0.01 m). However,
Figure 6 clearly displayed that the model did not properly simulate the propagation of the tidal wave throughout one of the CB tributaries, region “a”. This is undoubtedly seen on PRC, W, and PRW stations, where the model highly under predicted the observed data. This region produced the largest errors, and the lower MAE, 0.19 m and 0.16 m, was produced by the low friction simulations.
Previous works using the ADCIRC model to simulate astronomical tide in CB [
42] also observed that the model consistently underestimated the recorded data. This analysis was carried out for three stations located throughout the bay: CBB, BH, and TB. Shen et al. (2006) [
4] simulated water levels by using the Unstructured, Tidal, Residual Intertidal, and Mudflat model (UnTRIM), and carried out a tidal harmonic analysis. This model, in general, slightly overestimated the observed data, and M
2 amplitude was more accurate predicted in the lower than the upper bay. Unfortunately, these studies excluded some stations such as JRA, PRC, W, or PRW where ADCIRC provided less accurate results. This study demonstrated that large tributaries may need to use different Manning’s
n values. For instance, Manning’s
n coefficient of 0.035 along James River performed properly, but a value of 0.02 overestimated the M
2 amplitude. Potomac River exhibited a different pattern, and a value of 0.02 widely underestimated this amplitude. Conversely, Manning’s
n coefficients of 0.02 or 0.012 were seen to perform similarly and to reduce the error in region “b”. Another significant point is that three meshes displayed same errors, indicating that (1) this level of resolution did have not impact on the results, and (2) the M
2 amplitude was not sensitive to the location of the open boundary.
Figure 6 depicting the modeled and observed phases and
Table 8 displaying the range of the modeled M
2 phase, showed that the phase was not sensitive to Manning’s
n coefficient in region “b”, independently of the level of resolution or portion of the bay. However, similarly to the modeled amplitude in the region “a”, the phase was more sensitive to Manning’s
n coefficient at JRA, PRC, W, and PRW stations. The modeled phase varied around 12–14 degrees in the lower bay, and 30–40 degrees at the upper bay. As Kerr et al. (2013) [
41] work argues, we found that the harmonic analysis displayed that the astronomical tide phase is less sensitive to mesh resolution and roughness.
Similarly to the amplitude, the accuracy of the modeled phase is significantly fair for those stations located in the region “b”, and a greater phase lag is observed at the stations located at the region “a”,
Figure 6 and
Table 9. Thus, at the lower bay, low friction simulations showed the lower gap (63–66 degrees). The model did not either appropriately capture the phase of the M
2 tidal constituents at PRC, W, and PRC stations (upper bay). These stations located on region “a” exhibited a phase lag up to 44° by using a low friction value. The low friction simulations provided better performances in the region “a” in the lower and upper bay.
A noteworthy point is that there was an improvement in the tidal phase lag of this semidiurnal tidal component as the tidal wave propagates throughout the CB for all simulations. For instance, the MAE for high resolution mesh showed that M2 phase lag at the lower bay is 21 degrees, against the 8 degrees at the middle bay and 5 degrees at the upper bay (region “a”). It is not clear why the model reduced the error simulating tidal phase in the upper bay, and therefore future analysis should be carried out to explore this phenomenon. Another remarkable fact is that the low resolution mesh produced the lower MAE than high resolution mesh.
3.1.2. Storm Surge in Waterways
The sensitivity of the peak of the storm surge is analyzed by quantifying the peak of the storm surge simulated by using a low Manning’s
n coefficient minus the peak simulated by using a high Manning’s
n coefficient (range),
Table 10. Besides NOAA stations, US Geological Survey rapid deployment data and High Water Marks (HWM) were included in this study, and they were also categorized as lower, middle and upper bay. In order to preserve the reliability of the results, a validation of the model performance against observed data is shown in
Figure 7. Note that Hurricane Irene and Sandy were validated by using high and moderate resolution meshes and the three levels of roughness.
Hurricane Irene hindcast in the lower bay exhibited a range between 0.05 and 0.11 m in the region “b”. Meanwhile, the range in the region “a” increased up to 0.29 m. Note that this range was larger than the range observed in amplitude of M2 sensitivity analysis (0.12–0.16 m). In the region “b”, the model performed similarly in the middle bay as the lower bay; the range was around 0.11 and 0.06 m. In the upper bay, the range counted for 0.10 and 0.08 m in the region “b”, and 0.33–0.35 m in the region “a”. The range in this region was also larger than the M2 amplitude (0.18–0.20 m).
Ranges along the entire CB for Hurricane Irene are shown in
Figure 8A. Left plot depicts high resolution mesh and right plot moderate resolution mesh. The high friction case reduced maximum water levels up to 0.15 m in the region “b” for both meshes. The differences were minimal in the lower bay, where the higher storm tide levels were observed. Further, as we discussed earlier, the difference in the upper bay showed the same magnitude. However, those ranges increased in the region “a” up to 0.5 m in James River and around 0.40 m in Potomac River. As it was shown in the
Table 10 for certain specific locations, during Hurricane Irene, the level of resolution did have no impact on the storm surge sensitivity.
Hurricane Sandy hindcast displayed a larger range than Hurricane Irene in the regions “a”, (
Figure 8B). Therefore, this range increased up to 0.56 m in the lower bay and 0.43–0.47 m in the upper bay. The performance of the model in the regions “b” was similar and the peaks ranged between 0.04 and 0.07 m.
Along the entire CB, the high friction scenario reduced maximum water levels in region “b” less than 0.10 m (
Figure 8B). Meanwhile, the peak decreased around 0.40–0.60 m along the James River and Potomac River. These results also displayed that rivers exhibited a larger sensitivity to bottom friction than bay and shore adjacent areas. Likewise as Hurricane Irene, no differences were observed between both panels, as it is shown in (B), and therefore, the model displayed the same level of sensitivity of maximum water levels to Manning’s
n coefficient for these two degrees of mesh resolution.
Figure 9A shows the differences between the maximum velocities (low and high friction scenario) simulated on the high and moderate resolution mesh for Hurricane Irene. Overall, both meshes performed moderately similar; the model showed the same level of sensitivity to maximum currents by using different resolutions. Currents were reduced by 0.20–0.30 m/s in the shallower areas of the bay (region “a” and “b”); meanwhile the currents did not decrease along the main axis of the bay. Currents behind the barriers of Delmarva Peninsula were reduced up to 0.80 m/s. No significant current reduction was found at James River and Potomac River.
On the other hand, during Hurricane Sandy high friction attenuated maximum currents up to 0.80–1.00 m/s at the upper bay and marsh areas (high resolution mesh) as it is shown in
Figure 9B. This attenuation extended throughout wider areas on the simulations performed on the moderate resolution mesh, indicating that the results produced by this mesh were more sensitive than high resolution mesh. Currents in Potomac River also were attenuated by 0.50–0.70 m/s, meanwhile in James River the high friction reduced currents by up to 0.40 m/s.
In the same study referred previously, Kerr et al. (2013) [
41] also studied the sensitivity of the storm tide driven by Hurricane Ike to Manning’s
n bottom friction formulation. They reported that a lower limit on the bottom drag coefficient reduced water levels up to 0.75 m in waterways areas respect to the standard quadratic formulation with no limit, which is used in this work as well. Additionally, they estimated that the largest reduction in currents, around 1.00–1.75 m/s, by using the lower limit formulation occurred along the storm track, and away from the storm track this reduction ranged between 0.25 m/s and 1.00 m/s. These reductions in water levels and currents are larger than those that we found in this study. However, it is important to underline that Hurricane Ike was significantly stronger than the storms analyzed here. For example, during Hurricane Ike the maximum water levels and currents simulated reached peaks of 5.00 m and 5.00 m/s. They were considerably larger than the values reached during Hurricane Irene and Sandy in the CB (2.00 m and 1.50–2.00 m/s).
The sensitivity analysis performed by Passeri et al. (2011) [
28] by using Hurricane Denis showed the differences between using a high and low friction scenario ranged from 0.00 m to 0.21 m for 203 stations located in inland and waterway area. The maximum water levels observed during this storm were around 1.80–2.70 m, similar values as we observed in this work. Also, they observed the smallest differences occurred along the coastline. These findings are in concordance with the results obtained here, although stations located in rivers showed a larger sensitivity. The fact that the range of Manning’s
n assignments in region “a” was wider than region “b” did not explain this higher sensitivity only in riverine areas, and it also could be explained by the lower depth in river regions.
3.1.3. Storm Surge in Overland Areas
The effect of bottom friction on flood extension, maximum water levels and currents is explored on
Figure 10 for Hurricane Irene (A) and Sandy Hindcast (B). It is observed that the low bottom friction simulation produced a larger inundation area during Hurricane Irene; the flooding area increased more than 1100 ha, especially in the central part of the study area, which was not inundated by the high friction scenario. The effect of bottom friction on the peak of the storm, (maximum elevation produced by the low minus high friction runs), was spatially variable, since it is highly dependent on local features and topography [
9], and the largest difference was up 0.30 m. The high friction produced also higher water levels at some wet areas adjacent to the shoreline or channels. A higher friction on inland areas produced that the flood wave did not widely inundate inland areas and the water piled up over the shoreline. The currents were reduced by up to 0.70 m/s for the high friction scenario and no changes were observed in open water areas.
The flood extension also exhibited to be sensitive to Manning’s
n coefficients for Hurricane Sandy. Flooded zones produced by the high friction run were limited to adjacent areas to the shoreline and channels, as it is shown in
Figure 10B; high friction reduced 1500 Ha the flood extension. The largest reduction of the peak of the storm tide produced by the high friction simulation was 0.20 m, and no appreciable accumulation of water is observed in the shoreline as the previous case. Moreover, the high friction simulation led to a maximum reduction of currents around 0.50–0.70 m/s.
Figure 11A shows water levels time series during Hurricane Irene at three stations along Transect A and B displayed in
Figure 10. Points 1 and 4 are found in open water, Points 2 and 5 closely to the shoreline, and Points 3 and 6 are located further inland. These points were spaced between 100 m and 200 m along the each transect. Water levels simulated by the low and high Manning’s
n coefficients runs at Points 1 and 4 exhibited slight differences, but it is noteworthy to point out that they were at wet locations. As it was seen in
Figure 10A, a higher friction on inland areas increased water levels in wet areas by the shoreline. Point 2 and 3 showed the model is highly sensitive to Manning’s
n coefficient. A lower friction resulted in a higher peak of the water levels (0.15 m) and, also this peak was reached about 4–5 h earlier. Point 3 presented a similar behavior, but additionally a higher friction obstructed the receding of the flood wave increasing the flood depth during the low tide.
A higher bottom friction at Point 5 and 6 led to a slower advancing and receding movement of the flood wave; it produced a lower peak and longer flooding duration. The storm surge attenuation observed between Point 2 and 3, and between Point 5 and 6 in the high friction scenario was similar as the storm surge attenuation observed in the low friction scenario.
Figure 11B displays two different time series water levels during Hurricane Sandy. It is readily observed that the flood wave was very sensitive to Manning’s
n coefficients in Point 2 and 3. The low friction run showed a noticeable peak and a gradual receding of the flooding. The high friction simulation, instead, significantly dampened the peak and retarded around 8 h this peak respect to the low friction run. Once the water level reached its maximum, the surface level maintained constant (high friction simulation). Finally, note that the points of Transect B are not analyzed because the simulated flood wave by using high friction did not propagate as far as the previous storm tide, and Point 5 and 6 were not inundated.
Passeri et al. (2011) [
28] also affirmed that water levels are more sensitive to Manning’s
n coefficient in inland areas. Hurricane Irene and Sandy flood wave characteristics (flood extension, wave propagation, maximum water levels, and maximum currents) in inland areas showed to be clearly sensitivity to bottom friction. Manning’s
n coefficient of 0.03 and 0.17 might be associated with pasture or grassland and mixed forest [
31], therefore, the model is very sensitive to the land cover classification. It might confirm what Ferreira et al. (2014) [
43] demonstrated, and an incorrect land cover choice may lead to error in surge of 7.0%. Resio and Westerink (2008) [
9] discussed that an increased frictional resistance slows the rate the flood wave moves inland. It could increase water levels in portions of the system, and attenuates the surge amplitude. These processes were observed on
Figure 11A.
Previous studies and the present work suggest that the election of Manning’s
n coefficient between 0.012 and 0.03 in waterway areas might not have a significant impact on the storm surge propagation in the CB. Conversely, a correct selection in some tributaries is vital to properly simulate storm surge. As Kerr et al. (2013) [
41] suggested, an adequate simulation of tidal physics is important in storm surge model because they contribute to water levels and currents during hurricanes. Therefore, this study supports the idea to use a moderate value of Manning’s
n coefficient in James River and a low value in Potomac River. Additionally, these findings demonstrated that a correct selection of the Manning’s
n coefficient in overland is essential for model accuracy.