Abstract
Bedrock erosion in rivers sets the pace of landscape evolution, influences the evolution of orogens and determines the size, shape and relief of mountains1,2. A variety of models link fluid flow and sediment transport processes to bedrock incision in canyons. The model components that represent sediment transport processes are increasingly well developed3,4,5. In contrast, the model components being used to represent fluid flow are largely untested because there are no observations of the flow structure in bedrock canyons. Here we present a 524-kilometre, continuous centreline, acoustic Doppler current profiler survey of the Fraser Canyon in western Canada, which includes 42 individual bedrock canyons. Our observations of three-dimensional flow structure reveal that, as water enters the canyons, a high-velocity core follows the bed surface, causing a velocity inversion (high velocities near the bed and low velocities at the surface). The plunging water then upwells along the canyon walls, resulting in counter-rotating, along-stream coherent flow structures that diverge near the bed. The resulting flow structure promotes deep scour in the bedrock channel floor and undercutting of the canyon walls. This provides a mechanism for channel widening and ensures that the base of the walls is swept clear of the debris that is often deposited there, keeping the walls nearly vertical. These observations reveal that the flow structure in bedrock canyons is more complex than assumed in the models presently used. Fluid flow models that capture the essence of the three-dimensional flow field, using simple phenomenological rules that are computationally tractable, are required to capture the dynamic coupling between flow, bedrock erosion and solid-Earth dynamics.
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The linkages between the uplift of mountains, tectonics and climate are critical for understanding how surface processes affect solid-Earth dynamics and remain one of the primary open questions in Earth science. To understand these linkages we must examine the large-scale drivers of bedrock incision by rivers2,6,7,8. Large-scale bedrock canyons in actively uplifting terrain link tectonics, climate and topography. Bedrock incision in canyons at the local scale happens through a combination of plucking (removal of blocks of rock from the river bed or banks) and various types of abrasion by sediment particles. Although there is some uncertainty about their relative importance2, there are models for abrasion by bedload3, suspended load4 and plucking5. The flow parameterization most often used in bedrock erosion models is based on stream power6,8,9,10,11,12. Although this approach allows for computationally tractable landscape-scale modelling over long periods and at large scales6,8, flow and sediment transport dynamics are not considered, making the approach of limited value for the prediction of bedrock channel morphology and dynamics. Moreover, the stream power approach masks the fluid processes that drive the sediment movements that cause bedrock erosion. Mechanistic parameterizations of the flow use simplifying assumptions of steady, uniform flow13,14,15,16 and empirical frictional relations17,18, because full representations of coupled fluid and sediment dynamics are not currently computationally tractable at large scale. More advanced models of boundary shear stress in channel cross-sections have recently been incorporated into bedrock river models that allow modelling of channel shape16,19,20. However, none of these flow models has been tested because there are no field observations of the flow structure in bedrock canyons. Access to these rivers is difficult and the instrumentation necessary for observations has only relatively recently been adapted from oceanographic research for use in rivers.
To address this gap in our understanding of bedrock rivers, we undertook a 524-km-long continuous centerline acoustic Doppler current profiler (ADCP) survey of the Fraser Canyon, British Columbia, Canada (see Methods). An ADCP provides profiles of three-dimensional velocity measured in Earth coordinates (Easting, Northing, vertical) and bed elevation at discrete intervals. From this we calculate the downstream horizontal velocity magnitude (Ue2 + Un2)0.5 (where Ue and Un are the Easting and Northing velocities) and the vertical velocity, which is orthogonal to the horizontal plane. The Fraser Canyon is a geographical region along the Fraser River characterized by a series of 42 individual canyons where the river crosses the Interior Plateau of British Columbia and flows along a fault between the Coast and Cascade mountain ranges (Extended Data Fig. 1). The channel alternates between alluvial and bedrock-bound reaches, the latter of which comprise about 18% of the river length. About 10% of the total length is ‘canyons’—that is, rock-bound, conspicuously narrow reaches. The along-stream profiles of the canyons all show a drop in bed elevation, forming a deeply scoured pool as the channel is constricted (Fig. 1a), with deeper pools formed where the channel constriction is greater. The channel width to mean depth ratios (w/h) of the canyons vary between 2.3 and 17.3 (mean of 6.9; ratios of >20 are common for alluvial channels21; in unconfined reaches of Fraser River the average is 52). Canyon width to maximum depth ratios (w/hmax) varied from 1.5 to 10.1 during our surveys (at higher flows, these values will decline because the channel is laterally constricted).
As flow is confined in a canyon, the cross-sectional area decreases and mass-balance dictates that the flow must accelerate. But if canyon floor elevation declines rapidly downstream, increasing the depth, the flow will decelerate. The deceleration should be more pronounced in narrow bedrock canyons where additional drag from the walls may be of the same magnitude as the drag exerted from the channel bed16. In the widest canyons of the Fraser, flow decelerates uniformly with depth as flow enters the canyons and accelerates as flow exits the canyons. In the narrower canyons, a high-velocity core appears to plunge below the water surface and follow the bed topography down into the pool (Fig. 1a). The high-velocity core dissipates with distance downstream, but with each narrowing of the canyons, the plunging velocity core reappears. The pattern of multiple plunging high-velocity cores observed in Iron Canyon (Fig. 1a) is typical of the narrow bedrock canyons of the Fraser River.
What could cause a plunging high-velocity core? The structure of flow along the centreline is a manifestation of the three-dimensional flow field. Cross-sections through three-dimensional grids of measured spatially distributed velocity fields in the canyons (Fig. 2 and Supplementary Videos 1 and 2; see Methods for details of data processing) show there is a clear velocity inversion (low-velocity fluid at the top of the water column and high-velocity fluid at the bottom; Fig. 1b) that corresponds to negative vertical velocities along the channel centreline. To compensate for this downward flow, upwelling along the canyon walls brings highly turbulent, low-velocity fluid up from near the bed, causing the inversion. Our observations suggest that these upwellings take the form of large and powerful, intermittent coherent flow structures that form boils at the water surface22. These structures represent deviations from the mean flow, and are advected towards the channel centre, dissipating into the mean flow as the channel expands downstream.
We hypothesize that the observed flow structure is caused by convective deceleration as flow exits the channel constriction and enters the scour hole. Experiments on flow into pools23 with a morphology similar to our bedrock canyons revealed downward-directed mean velocity as flow expanded into the pool. Furthermore, the same pattern of secondary circulation was observed. This included lateral convergence at the water surface during deceleration in the pool. In pool experiments, downwelling in the centre of the channel and upwelling along the channel walls also occurred, which has been demonstrated to take the form of intermittent coherent flow structures in similar experiments24. This pattern of secondary flow is typical in narrow channels25 and has been attributed to anisotropy of turbulence at channel boundaries and the free surface. We suspect that a similar process occurs in the bedrock canyons of the Fraser River, whereby upwelling along the channel walls and flow convergence at the surface leads to relatively low-speed, highly turbulent fluid at the water surface in the channel centre downstream of the constriction. The upwelling reduces near-bed dynamic pressure26, which will encourage the higher-speed flow entering the canyons to advect along the floor, and a positive feedback whereby the high-speed fluid near the bed contributes to intense upwelling along the walls. The initiation of this flow structure in a bedrock channel is probably caused by the lateral constriction, forcing a canyon to deepen until it reaches morphodynamic equilibrium with the near-bed flow (and the sediment transport responsible for incision).
We expect the three-dimensional flow processes observed in the canyons of the Fraser River to be applicable to many canyon-bound rivers worldwide. This is because significant changes in channel width, which we argue here drive convective deceleration and flow inversion, are common. This suggests a model of flow in narrow bedrock canyons (Fig. 3) that is very different from what is currently accepted. Velocity inversions and the associated plunging high-velocity cores (Fig. 3a) cause steeper near-bed velocity gradients than would occur if the flow decelerated uniformly into canyons. This would tend to increase vertical incision and formation of scour holes because shear stress, which drives the sediment transport processes responsible for incision, scales as (where u is the velocity at height z above the bed).
For example, reach-averaged shear stress in Iron Canyon, calculated from the one-dimensional momentum balance for steady, uniform flow (see Methods), was 115 Pa, roughly half of which is applied to the walls because it is narrow relative to its depth16. Velocity profiles through the whole water column predict shear stress to increase slightly and then decline moving into Iron Canyon (Fig. 1c), but this also requires steady, uniform flow. On the other hand, using the linear portion of near-bed velocity gradients, below the inversion inflection point, produces the most accurate representations of local shear stress (see Methods). This approximation indicates that shear stress was 47 Pa at the canyon entrance, rose to 208 Pa along the entrance slope, and then declined to nearly zero in the bottom of the scour hole where the flow changes from convectively decelerating to accelerating (Fig. 1c).
The larger shear stress along the entrance slope to a canyon would tend to focus erosion there, resulting in an upstream migrating scour hole that resembles a submerged knickpoint. Where the plunging high-velocity core extends beyond the entrance slope, a canyon will deepen until it reaches morphodynamic equilibrium. The counter-rotating secondary flow structure (Fig. 3b) causes decelerated surface flow along a channel centreline (Fig. 3c). The vertical upwelling along canyon walls (Fig. 3b) and divergent flow at the bed (Fig. 3d) can cause centreline ridges along a canyon floor, which we observed in some of the Fraser canyons. Divergent flow at the bed also provides a mechanism for undercutting canyon walls (as has been observed experimentally27,28). Failure of undercut rock could promote channel widening over long timescales if upstream knickpoint migration occurred over a lesser time frame. The general pattern of fluid motion would also tend to keep the base of canyon walls swept clean of wasted debris, maintaining near-vertical walls.
The observed patterns of flow in the Fraser canyons suggest that modelling canyon morphodynamics and evolution requires more detailed understanding of the flow dynamics that drive sediment transport in canyons. The steep near-bed velocity gradients along plunging velocity cores cause correspondingly higher and lower local shear stresses than would be predicted from reach-averaged shear stress for steady uniform flow, calculated using mean velocity and a flow resistance equation, or log-normal velocity profiles that extend from the bed to the water surface. These locally higher and lower shear stresses may average out over the length of canyons, but the morphology of a canyon and patterns of incision are driven by the spatial variations in the shear stress. Erosion rates tend to scale with bed shear stress to a power greater than unity3,4,5, so even if local bed shear stresses average out over the length of a canyon, local erosion rates will not average out, leading to larger canyon erosion rates even when averaged over long timescales. Further observations, along with hydrodynamic modelling that captures both the secondary circulation and the dynamics of the upwelling coherent flow structures, are required to determine how best to abstract these insights on the complexity of flow in bedrock canyons over the temporal and spatial scales of drainage basin organization8 and orogen development1.
Methods
Observations
The Fraser River drains 228,000 km2 of southwestern British Columbia. It is a snowmelt-dominated system with high flows between May and July. We undertook a 524-km continuous centreline transect using a four-beam 1,200-kHz acoustic Doppler current profiler (ADCP; RD Instruments) between 15 and 22 September 2009, on the falling limb of the annual hydrograph. Discharge varied between 861 m3 s−1 (at Marguerite) and 1,760 m3 s−1 (at Hope); nearly all the difference being due to tributary inflows. We extracted velocity profiles in 39 of the 42 bedrock canyons between Quesnel and Chilliwack (Extended Data Fig. 1). We present vertical velocity profiles from the centreline transect in Iron Canyon, where distance between profiles was typically less than 5 m. In Black Canyon (Extended Data Fig. 2a) we measured three-dimensional velocity profiles in a zigzag pattern, which produces data ideal for interpolation by kriging29. The distance along the right or left banks that separated the location at which the boat was turned to cross the river again was typically less than 5 m. Each velocity profile was measured using the broadband ‘Water Mode 1’ ADCP instrument setting, with a vertical resolution of 0.25 m.
Data processing
Raw velocity profile data were processed with software developed by Rennie and collaborators29,30. Only four-beam velocity solutions were used, reducing the potential for calculation of velocity using a beam that impinged upon the canyon walls. The redundant fourth ADCP beam provides an additional velocity component, from which a horizontal ‘error velocity’ is calculated. The error velocity accounts for both acoustic noise and heterogeneity of flow between the four acoustic beams.
In Iron Canyon we present the primary downstream velocity because it represents the local streamwise velocity with the cross-stream component of the integrated velocity profile minimized31, which is ideal for calculation of the shear stress from individual profiles. The alongstream, centreline transect profiles of primary downstream velocity (Fig. 1) were processed with an 11-point moving average to reduce variability caused by local turbulence and measurement error. The plunging flow structure is visible without the running average.
In Black Canyon (Fig. 2 and Supplementary Videos 1 and 2), no moving average was applied to the data. Lateral separation between velocity profiles was about 1 m, producing 3,470 profiles through the entrance to the canyon (Extended Data Fig. 2b). The single-ping, single-bin mean absolute error velocity in the Black Canyon spatial survey was 0.44 m s−1, which was less than the mean and standard deviation of the horizontal velocity magnitude of 2.02 m s−1 and 0.81 m s−1, respectively. Relative errors (error velocity magnitude normalized by horizontal velocity magnitude) did not exceed 17%, and were less than 5% on average in Black Canyon. Relative errors did not show any spatial trend other than increased values near locations of variable bathymetry.
In Black Canyon we calculated the position at which each of the ADCP’s four acoustic beams sensed the canyon boundary and corrected for the beam angle, which produced 14,709 bathymetry measurements (Extended Data Fig. 2c) to produce canyon bed topography (Extended Data Fig. 3). The velocity data were interpolated by kriging onto a regular 2-m horizontal and 0.25-m vertical three-dimensional grid (see Extended Data Fig. 4 for an example) that was then sliced to produce cross-sections like those in Fig. 2 and Supplementary Videos 1 and 2. The spatial interpolation reduced variability due to turbulence and measurement error30, and allowed for identification of the flow structure. We also interpolated the data at higher densities (1 m and 0.5 m) and found it had little effect on the flow structure we observe.
Animations of the cross-stream slices of the horizontal velocity magnitude (Supplementary Video 1) and vertical velocity (Supplementary Video 2) grids in Black Canyon are available in the Supplementary Information. Supplementary Video 1 shows that after the initial channel constriction, a velocity inversion forms and persists through the entire canyon. The velocity inversion becomes more pronounced when it passes through the channel constriction halfway along the canyon, forming a high-velocity core near the bed. Supplementary Video 2 shows downward-directed velocity through most of the canyon. Immediately downstream of the channel constriction, halfway along the canyon, we observe downward-directed flow in the channel centre and vertical flow up the channel walls.
Calculation of shear stresses
Reach-averaged shear stresses are derived from the one-dimensional momentum balance for steady uniform flow, calculated as:
where is water density, g is gravitational acceleration, S is the water surface slope in the canyon, and h is the mean flow depth in the canyon. This form of the momentum equation assumes that the flow is not changing through time or space. The latter assumption is clearly violated because the bed and water surface must be parallel for uniform flow (Fig. 1), which is why we use reach-averaged mean depth and water surface slope in the canyon. The reach-averaged shear stress is the total stress applied to the boundary. There is no wall-correction method for narrow channels where the roughness is the same on the walls and the bed. However, DiBiase and Whipple16 explored the ratio of shear stresses applied to the bed and the walls using an isoray model19,32. They found that the bed shear stress is about half of the total shear stress in canyons with a width to depth ratio of approximately 2.5. They also found that using the hydraulic radius to account for the shear stresses on the walls, as is often done in lowland rivers, overpredicts the bed shear stress in narrow canyons (R. Dibiase, personal communication, 17 February 2014). So the shear stress calculated from equation (1) is corrected by dividing it by 2.
Shear stresses are also derived from the velocity gradient m calculated using a least-squares regression between the ln(z) and u, where u is the velocity at elevation z above the bed. The shear velocity is calculated as:
where is the von Karman constant equal to 0.41 and the shear stress is calculated as:
We do this for velocity profiles through the whole water column, as is usually done in rivers because they are depth-limited, and for the lower linear portion of the velocity inversion. Profile groups A and F have no inflection point (Fig. 1b), so we use the whole profile in both calculations of shear stress. Profile groups B, C and E (two of three profiles) have a linear portion of the profile that extends from the inflection point (velocity maximum) to the bed (Fig. 1b). Profile groups D and E (one of three profiles) have linear profiles near the bed only, well below the height of the inflection point (Fig. 1b). The velocity gradient approximation of the shear stress also assumes local steady, uniform flow, but has been shown to accurately predict shear stresses in non-uniform flow, as long as the log-linear portion of the velocity profile is near the bed33, which is why we use the lower portion of the velocity inversion. All regressions exclude data in the lower 6% of the flow where acoustic sidelobe interference affects velocity accuracy. Each data point we present in Fig. 1c is an average of three or four shear stress estimates from the velocity profiles in Fig. 1b at each location shown in Fig. 1a.
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Acknowledgements
This study was supported by Natural Science and Engineering Research Council grants to M.C., J.G.V. and C.D.R. We thank D. Baerg and his crew at Fraser River Raft Expeditions for undertaking the logistics of the river traverse, R. DiBiase for reviewing an early draft of the manuscript, and M. Lin and C. Adderley for assistance with data processing.
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M.C. planned and organized the field campaign and provided guidance through the analysis. J.G.V., C.D.R. and M.C. performed the survey and supervised data processing and analysis by J.B., R.W.B and M.L. J.G.V. analysed the data and wrote the manuscript with input from C.D.R. and M.C.
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Extended data figures and tables
Extended Data Figure 1 Bedrock canyons of the Fraser River, British Columbia.
From Quesnel to Yale, the river crosses the Interior Plateau where the surficial rock is dominantly volcanic, with sedimentary rock along the river. From Lillooet Rapid to Chilliwack, the river flows along a fault between the Coast Mountains to the west and the Cascade Mountains to the east.
Extended Data Figure 2 ADCP measurement survey through the entrance to Black Canyon.
a, Satellite image of Black Canyon with black lines across the channel marking the entrance and exit of the canyon. b, Velocity profile measurement locations (red dots) obtained using the 1,200-kHz ADCP. The surveyed length was 700 m. c, Bed topography measurement locations (blue dots) from the ADCP. The image is from the Ikonos satellite on 11 July 2007, processed by GeoEye/DigitalGlobe and accessed via ESRI ArcGIS software (http://www.esri.com/).
Extended Data Figure 3 Interpolated bed topography at the entrance to Black Canyon.
Interpolated using kriging onto a regular 2 m grid. Canyon walls were assumed to be vertical where there are no other data available. The channel margins are defined by the water level in aerial photos, where discharge is approximately 6,440 m3 s−1 at Hope.
Extended Data Figure 4 Example of an interpolated velocity magnitude grid in Black Canyon.
Velocity magnitude is defined as (Un2 + Ue2 + Uw2)0.5, where Un is the Northing, Ue is the Easting and Uw is the vertical velocity. The interpolation is done in Tecplot (http://www.tecplot.com/) software using kriging on a three-dimensional grid generated using the prism grid function with a vertical resolution of 0.25 m, and a horizontal resolution of 2 m. Interpolated velocities are shown with a 30% transparency so that all data in the three-dimensional grid can be seen.
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Venditti, J., Rennie, C., Bomhof, J. et al. Flow in bedrock canyons. Nature 513, 534–537 (2014). https://doi.org/10.1038/nature13779
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DOI: https://doi.org/10.1038/nature13779
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