4.1. Catchment Geomorphology
The 30-meter resolution DEMs and river network applicable to the four climatological regions are shown in
Figure 2a–d.
The hydrologically corrected DEMs (cf.
Figure 2a–d) provided accurate raster information to estimate the catchment area and all the other catchment characteristics as listed in
Table A1,
Table A2,
Table A3 and
Table A4 in
Appendix A. It is also evident from these tables that catchment area influences both the volume of runoff and catchment response time, i.e., an increase in catchment area is associated with increases in both the volume of runoff and response time.
Catchment shape also proved to have an influence on both the catchment response time and runoff generation at a catchment level. In general, the wide, fan-shaped catchments characterized by lower shape factors (
FS, Equation (1)) and
LC:
LH ratios < 0.5, combined with steeper upper catchment slopes and flatter valleys, were characterized by shorter catchment response times and higher peak flows compared to those from the long, narrow, similar-sized catchments defined by larger
FS factors. The centroid distance (
LC) values listed in
Table A1,
Table A2,
Table A3 and
Table A4 in
Appendix A not only confirm that
LC is influenced by the size and shape of a catchment, but also that
LC is influenced by the average catchment slope, especially in catchments with heterogeneous upper and lower catchment slope distributions. The average
LC:
LH ratio of 0.48 obtained confirms that the recommended
LC:
LH ratio of between 0.4 and 0.6 times the distance along the main river [
7,
42] is sufficiently accurate to be used in the various event-based design flood estimation methods. This is also a more definite guideline than the eyeball estimate as proposed by Alexander [
6]. However, practitioners must assess each catchment individually using the tools available in ArcGIS
TM, before just using the proposed
LC:
LH ratios. For example, in many of the SWCR catchments (e.g., G1H008, H2H003, H4H006 and H6H003;
Table A3) and ESCR catchments (e.g., T3H002, T5H004 and V6H002;
Table A4), due to the steeper average catchment slopes (
S2, Equation (5)) between 14 and 37%, combined with heterogeneous catchment slopes, i.e., large differences between the average catchment slope and main river slopes (
S2:
SCH2 ratios > 25), the
LC:
LH ratios were much lower and varied between 0.21 and 0.38. In addition, it could also be argued that the extensive meandering of the main rivers in the SWCR and ESCR catchments also contributed to larger
LH values, hence, the lower
LC:
LH ratios observed.
In using Equation (2), completely circular catchments are defined by
RC ratios = 1. As shown in
Table A1,
Table A2,
Table A3 and
Table A4 in
Appendix A, the
RC ratios varied between 1.26 and 2.10 at a catchment level in the four regions. In some of the partially ‘circular catchments’ (1 ≤
RC < 1.5) with a homogeneous slope distribution in the NR and CR, the runoff from various parts in a catchment tend to reach the catchment outlet simultaneously. The catchments in the CR, and to a lesser extent the NR catchments, are also generally flatter with some surface depressions; hence, the longer catchment response times and lower peaks.
In different catchment area (
A) ranges, the catchment response time from similar-sized elliptical catchments differed from those times witnessed in circular catchments with
RC ratios between 1 and 1.5. In elliptical catchments defined by
RC ratios > 1.5 and elongation ratios (
RE, Equation (3)) less than 0.45, the runoff proved to be more distributed over time, thus resulting in longer catchment response times. Examples thereof, as extracted from
Table A1,
Table A2,
Table A3 and
Table A4 in
Appendix A, are listed in
Table 2.
The average catchment slope results estimated using the Empirical method (Equation (4)) and Average Maximum Technique (Equation (5)) applicable to each catchment are listed in
Table A1,
Table A2,
Table A3 and
Table A4 in
Appendix A and a scatter plot is shown in
Figure 3.
Equation (5), as applied to the DEMs, was regarded as the most accurate method; hence, it was used as the baseline in the analysis. As shown in
Figure 3, the
r2 value of 0.99 confirms the high degree of association between the results estimated using Equations (4) and (5). The Empirical method’s (Equation (4)) relatively low positive
y-intercept value (0.41) and a slope value (1.18) that is larger than unity highlight that this method, despite being based on GIS-based input, has an overall tendency to overestimate the average catchment slope. On average, Equation (4) overestimated the average catchment slope with 18% in all the catchments under consideration when compared to Equation (5). In contrast, Gericke and Du Plessis [
7] demonstrated that Equation (4) tends to underestimate the average catchment slopes with between 9 and 43% when compared to Equation (5) applied to the 90-m SRTM DEM data set. However, the latter results were only based on six mutually considered catchments, namely, C5H003, C5H012, 15, 16, 18 and C5H054, located in the Central Region. Differences of up to 46% are evident when the results based on the two versions of Equation (5), i.e., the 30-m (this study) versus 90-m [
7] resolutions, are compared, while the two versions of Equation (4) only differ by up to 6%. The latter lower difference of only 6% could be ascribed to the fact that the 90-m and 30-m DEMs are well aligned in terms of horizontal offset; hence, resulting in a comparable catchment area (
A) and length, e.g., contour length (
M) computations. Hence, in considering the individual
M:
A ratios (expressed in km·km
−2), it is evident that there is a direct relationship between the
M:
A ratios and average catchment slopes steeper than 3%, since steeper slopes will result in a higher contour density and associated
M values. In considering the reclassified slope raster classes, it was evident that the prediction accuracy of the Empirical method increases with higher
M:
A ratios, i.e., the average percentage differences between Equations (4) and (5) are less significant. For example, 30% difference (slope class 0–3%), 23% difference (slope class 3–10%), 22% difference (slope class 10–30%), and 19% difference for average catchment slopes > 30%.
4.2. Channel Geomorphology
The average main river slopes estimated using Equations (6) to (8) are listed in
Table A1,
Table A2,
Table A3 and
Table A4 in
Appendix A and a scatter plot is shown in
Figure 4. Overall, the degree of association between these three methods is high, with the coefficient of determination (
r2 values) varying between 0.85 and 0.97. In South Africa, preference is given to the 10-85 method [
41], since practitioners regard the Equal-area method largely as a graphical procedure, while the Taylor-Schwarz method is not widely used in South Africa [
7]. However, the DWS locally [
42] and the National Environmental Research Council internationally [
45] recommend the use of the Taylor-Schwarz method (Equation (8)).
Catchment and river slopes have an influence on the catchment response time, which in turn impacts on the temporal distribution of rainfall and runoff processes. The correlation between the average catchment slopes (S2, Equation (5)) and main river slopes (SCH2, Equation (7)) is similar in the NR and CR, i.e., the average ratios of the slope descriptors (S2:SCH2) vary between 12 and 15. However, in the SWCR and ESCR, the average S2:SCH2 ratios are almost double that, with the average S2:SCH2 ratios equal to 27 and 32, respectively.
Such differences by a factor of 2 or more not only highlight the heterogeneous nature of the slope distributions in these catchments, but the impact of slope on catchment response time as well. Typically, in catchments characterized by high S2:SCH2 ratios (> 25) and low LC:LH ratios (< 0.4), the overall catchment response time proved to be shorter. In other words, runoff volumes reach and concentrate at the catchment centroid much quicker (due to the steeper catchment slope in the upper reaches), and in conjunction with the shorter LC distances to follow to the catchment outlet, the resulting response time is shorter. Such results are typically evident in catchments H4H006 (S2:SCH2 = 63, LC:LH = 0.25) and T3H002 (S2:SCH2 = 106, LC:LH = 0.21).
The drainage density (
DD), expressed as the ratio of the total length of rivers within a catchment to the catchment area, determines the distance water travels down catchment slopes before reaching the main river reach and is therefore regarded as a key indicator of catchment response time and the resulting runoff due to the differences in velocity and residence time of water between the hill slopes and main rivers. As shown in
Table A1,
Table A3 and
Table A4 in
Appendix A, in the well-drained (
DD ≈ 0.3) catchments, e.g., A9H002 (NR), H1H018 (SWCR) and U2H006 (ESCR), more rainfall contributed effectively to direct runoff, while the response times were relatively shorter. All the catchments in the NR and CR, with the exception of A2H007 and C5H003, respectively, are characterized by a relatively low drainage density (
DD ≤ 0.20), hence, the longer catchment response times and lower peak flows (cf.
Table A1 and
Table A2).
4.4. Conceptual Catchment Response Time Framework
In order to elaborate on above discussion related to the combination of geomorphological catchment characteristics and the influence thereof on catchment response time, examples of hydrographs representative of the ‘average conditions’ (cf.
Table A1,
Table A2,
Table A3 and
Table A4,
Appendix A) at a catchment level in two distinctive area ranges (e.g.,
A < 200 km
2 and 2500 km
2 ≤
A < 6500 km
2) in each climatological region are presented in
Figure 5 and
Figure 6a,b, respectively.
The catchment areas which contributed to the resulting hydrographs shown in
Figure 5 are comparable in size and range between 176 and 186 km
2; hence, any differences in the catchment response and runoff generation in these catchments are not directly linked to catchment area intrinsically, but are more likely due to the heterogeneity of a combination of other geomorphological catchment characteristics.
In terms of shape, catchment U2H011 is regarded as the most elongated catchment characterized by the highest
FS factor (6.95) and lowest
RE ratio (0.42), while catchment A6H006 is regarded as the most fan-shaped catchment with the lowest
FS factor (5.16) and highest
RE ratio (0.60), respectively. Catchments C5H023 and G1H002 are very similar in terms of shape and elongation, while the circularity ratios (
RC) of all four catchments are similar and range between 1.3 and 1.4. Thus, based on shape alone, the catchment response time is expected to be the highest in catchment U2H011, followed by catchments C5H023, G1H002 and A6H006. However, this is not the case and it is clearly evident that the influence of shape on catchment response time in these catchments is overruled by the average catchment and river slopes. Typically, the much steeper average catchment and river slopes in catchments U2H011 (
S2 = 14.6% and
SCH2 = 1.3%) and G1H002 (
S2 = 33.5% and
SCH2 = 4.5%), resulted in shorter catchment response times, i.e.,
TPxi = 8.4 h and 6.0 h, respectively, as shown in
Figure 5, while the peak flows (
QPxi) are about five-fold higher than in catchments A6H006 and C5H023.
As highlighted in the Introduction, Klein [
29] regarded 300 km
2 as the upper area limit for ‘small’ catchments and claimed that the more rapid catchment response times are due to overland flow conditions being dominant. However, based on the results shown in
Figure 5 and the discussion above, it is obvious that catchment response time could not be limited and specifically assigned to pre-defined catchment area ranges (
A ≤ 300 km
2) and specific flow regimes without considering the combined influence of different geomorphological catchment characteristics on response time and runoff generation. Hydrological literature (e.g., [
46,
47,
48]) also highlighted that overland flow conditions are limited to the upper reaches of a catchment and depends on the slope and surface roughness.
In contrast to the single-peaked hydrographs associated with ‘small’ catchments as illustrated in
Figure 5, the multi-peaked hydrographs shown in
Figure 6a,b are due to an increasing heterogeneity of geomorphological catchment characteristics and the spatial–temporal rainfall distribution as the catchment scale increases.
The association as established in the ‘small’ catchments between high FS factors, low RE ratios and/or flatter slope (S2 and SCH2) values resulting in longer catchment response times, larger direct runoff volumes and lower peaks, was not that prominent in the ‘medium to large’ catchments. However, the lower drainage densities (DD ≤ 0.20) and differences in catchment size (e.g., A2H019 = 6120 km2; C5H015 = 5939 km2; H4H006 = 2878 km2 and T3H005 = 2565 km2) are more significant than the combined influence of the afore-mentioned catchment characteristics.
Ultimately, it could be argued that the type, spatial and temporal distribution of rainfall govern the overall catchment response time at medium to large catchment scales, as illustrated in
Figure 6a,b, respectively. However, the spatial and temporal distribution of rainfall are not regarded as ‘geomorphological catchment characteristics’ and hence, the quantitative investigation thereof is beyond the scope of this study. However, in terms of rainfall type and spatial distribution, the convective summer rainfall events in the semi-arid catchments A2H019 (NR) and C5H015 (CR) will typically be more non-uniform with an intermittent spatial distribution compared to the orographic or frontal winter rainfall in catchment H4H006 (SWCR) and the all-year rainfall in catchment T3H005 (ESCR), respectively. Although not being analyzed quantitatively, such general conclusions could be drawn from
Figure 6a,b based on the differences evident in the hydrograph shape, i.e., the shorter catchment response times (
TPxi < 25 h), lower direct runoff volumes (
QDxi ≤ 30 × 10
6 m
3) and well-defined peaks (
QPxi ≤ 215 m
3·s
−1) associated with much larger catchment areas (
A > 5900 km
2) in the case of catchments A2H019 and C5H015 (
Figure 6b) as opposed to the much larger direct runoff volumes (
QDxi ≈ 74 × 10
6 m
3) and peak flows (
QPxi > 350 m
3·s
−1) associated with smaller catchment areas less than 2900 km
2 in the case of catchments H4H006 and T3H005 (cf.
Figure 6a).
In estimating the average catchment response time (
TPx values; Equation (9)), least square regression analyses in a power form (
y =
axb) yielded the highest
r2 values in all cases when the various independent predictor variables, i.e., geomorphological catchment characteristics, were included as part of a conceptual catchment response time framework. Only the six geomorphological catchment characteristics demonstrating a moderate degree of association (
r2 value ≥ 0.4) with the observed
TPx values are included in
Table 3. A correlation matrix is used to highlight the various relationships.
It is evident from
Table 3 and
Figure 7 that
LH is the single best independent predictor variable of
TPx in all the catchments, with
r2 = 0.54. However, all the other independent predictor variables could be regarded as equally important, hence, confirming that distinct relationships are not always apparent when individual geomorphological catchment characteristics are considered in isolation to represent the complexities of catchment response time.
The final derived regression applicable to all the catchments is shown in Equation (10):
where
TPy is the estimated time to peak (h),
A is the catchment area (km
2),
LC is the centroid distance (km),
LH is the hydraulic length (km),
P is the catchment perimeter (km),
S2 is the average catchment slope (Equation (5), %), and
SCH2 is the average river slope (Equation (7), %).
In comparing the estimated TPy (Equation (10)) with the observed TPx (Equation (9)) values, an improved coefficient of multiple-correlation (Ri2) = 0.62 and standard error (SEy) = 11.9 h were obtained. However, the SEy results must be clearly understood in the context of the actual response time associated with catchment area, as the impact of such error in the TPy estimates might be critical in a small catchment, while being less significant in a larger catchment.
The high variability of individual-event observed
TPxi and estimated
TPy (Equation (10)) values relative to the average observed catchment
TPx values (Equation (9)) in each catchment is estimated using Equation (11). The latter catchment response time variability at a catchment level in the four climatological regions are shown in
Figure 8.
where Δ
TP is the catchment response time variability (positive = overestimation and negative = underestimation),
TPx is the average observed catchment response time (Equation (9), h),
TPxi is the individual-event observed catchment response time expressed as the net duration of a multi-peaked hydrograph (h), and
TPy is the estimated catchment response time (Equation (10), h).
The high
TPxi variability, as depicted in
Figure 8 and expressed using Equation (11), highlights that the variability in observed catchment response times is not solely related to catchment area, but the increase in variability is most likely associated with an increase in the spatial and temporal distribution and heterogeneity of other geomorphological catchment characteristics and rainfall as the catchment scale increases. Typically, at these catchment scales, the largest
QPxi and
TPxi values are associated with the likelihood of the entire catchment receiving rainfall for the critical storm duration. Smaller
TPxi values could be expected when effective rainfall of high average intensity does not cover the entire catchment, especially when a rainfall event is centered near the catchment outlet. However, these smaller
TPxi values are likely to occur more frequently; hence, having a larger influence on the average value and consequently might result in an underestimated representative catchment
TPx value. On the other hand, the longer
TPxi values have a lower frequency of occurrence and are reasonable at medium to large catchment scales as the contribution of the whole catchment to peak discharge seldom occurs as a result of the non-uniform spatial and temporal distribution of rainfall. Ultimately, it can be concluded that catchment response time variability increases as the magnitude (e.g., AEP) and spatial distribution of rainfall events decrease.
Despite the moderate GOF results achieved in using Equation (10), it is clearly evident from
Figure 8 that the
TPy estimates are well within the bounds of the high individual-event observed
TPxi variability in each catchment. However, since the purpose of this study is not to derive an empirical catchment response time equation, the further refinement of Equation (10) in terms of calibration, verification and possible regionalization is acknowledged. Equation (10) was purposely derived to illustrate that the response of a catchment is most likely to be influenced by a combination of geomorphological catchment characteristics and not by a single catchment characteristic. Furthermore, as in agreement with the findings of [
25], the inclusion of slope predictors (
S2 and
SCH2) is regarded as essential to ensure that both the size (
A) and distance (
LC and
LH) predictors provide a good indication of catchment response times. The distance predictors, in conjunction with the catchment perimeter (
P), also proved to be useful in describing the catchment shape when used in combination with the catchment area.