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First published online October 5, 2006
Journal of Experimental Biology 209, 3953-3963 (2006)
Published by The Company of Biologists 2006
doi: 10.1242/jeb.02455
The advantages of a rolling foot in human walking
Department of Mechanical Engineering, University of Michigan, Ann Arbor, MI 48109-2125, USA
* Author for correspondence (e-mail: padamczy{at}umich.edu)
Accepted 24 July 2006
| Summary |
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Key words: metabolic energy, locomotion, biomechanics, rocker bottom
| Introduction |
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Empirical evidence indicates that humans normally produce a particular
effective foot curvature. The forward progression of the center of pressure is
similar to that of a rolling wheel with radius equal to 30% of leg length
(McGeer, 1990a
). Hansen et al.
proposed another method for evaluating the effective `roll-over shape' of the
knee-ankle-foot complex (Hansen et al.,
2004
), by transforming successive center-of-pressure locations
during a step into a limb-fixed coordinate system and fitting a curve to these
locations. They found that a simple circular shape matched empirical data
well, with a radius of curvature agreeing closely with McGeer's 30% of leg
length (McGeer, 1990a
). They
also found human effective roll-over shape to be remarkably invariant to
factors such as walking speed, shoe height and carried load
(Hansen and Childress, 2004
;
Hansen and Childress, 2005
;
Hansen et al., 2004
).
Curvature of the foot bottom has long been exploited in rehabilitation
applications. Therapeutic shoes are designed with curved, rocker-bottom
surfaces for patients with peripheral neuropathy, diabetic ulcers or
transmetatarsal amputation. These shoes reduce plantar pressure under the
forefoot and improve walking performance (e.g.
Schaff and Cavanagh, 1990
).
For persons wearing a rigid lower limb cast that immobilizes the ankle, cast
shoes provide a rocker bottom shape, promoting a more natural gait
(Dhalla et al., 2003
;
Wu et al., 2004
). However,
despite the clear benefits provided by these aids, there is little
understanding of how rolling foot curvature affects the mechanics and
energetics of walking.
The rolling foot may be studied with dynamic walking models. These models
liken the stance leg to an inverted pendulum and the swing leg to a swinging
pendulum (Mochon and McMahon,
1980
). McGeer showed that the coupled pendulums, with a
collisional ground contact for the stance foot, can produce a passive dynamic
walking gait (McGeer, 1990a
).
Modeling the feet with circular arcs rigidly attached to the legs, McGeer
found that the cost of transport decreased as the arc's radius of curvature
increased. One might expect the curved foot's advantage to arise from a
greater distance traveled during the stance phase. However, a radius of
curvature of 30% of leg length (McGeer,
1990a
) confers negligible distance advantage compared to a point
foot. Nor is there an advantage in the pendulum motion of either leg, which is
conservative of mechanical energy for either curved or point feet. This
suggests little advantage to the rolling itself.
The advantage of curved feet may be from their effect on step-to-step
transitions. Step-to-step transitions refer to the work performed to redirect
the body's center of mass (COM) velocity from one step to the next
(Donelan et al., 2002b
). The
leading leg performs negative work and the trailing leg positive work as the
COM velocity is redirected from the pendular arc prescribed by the stance leg
to the corresponding arc for the next step
(Kuo, 2002
). In normal human
walking, much of this work occurs simultaneously during double support
(Donelan et al., 2002b
), with
an approximately proportional metabolic cost
(Donelan et al., 2002a
). In
dynamic walking models, curved feet reduce the directional change that the COM
velocity must undergo (McGeer,
1990a
; Ruina et al.,
2005
), reducing step-to-step transition work. The magnitude of
step-to-step transition work theoretically will decrease with increasing
radius of curvature of the feet, potentially leading to decreases in metabolic
cost with the amount of work.
The purpose of this study was to quantify the effects of an imposed rolling
foot curvature on the work performed on the COM during human walking, and on
the associated metabolic cost. We imposed a rigid, curved foot surface on
human subjects, manipulating the radius of curvature experimentally. We
counteracted the human tendency to preserve a single effective roll-over shape
by rigidly constraining the ankles. Subjects therefore rolled forward on the
foot surface much like dynamic walking models (e.g.
Kuo, 1999
;
McGeer, 1990a
). We
hypothesized that curved feet of small radius would result in high
step-to-step transition costs, in terms of both work performed on the COM and
metabolic energy consumption. We expected these costs to decrease with
increasing radius of curvature. However, the theoretical dependency cannot
apply to all radii, because it predicts the lowest cost at an impractically
large radius of curvature equal to leg length. We therefore sought to test the
hypothesis of step-to-step transitions, and to evaluate the limitations of the
theory as applied to actual humans.
| Materials and methods |
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Model
A simple walking model illustrates the influence of foot curvature on
step-to-step transitions (Fig.
1). This model is based on the Simplest Model of walking on level
ground (Kuo, 2001
), with the
addition of arc-shaped feet. The model has a point mass at the pelvis, with
infinitesimally small point masses at the bases of the feet
(Fig. 1A). The model can be
powered by an instantaneous push-off impulse applied under the stance foot
just before contralateral heelstrike (Kuo,
2001
). This push-off impulse performs positive work on the COM, of
magnitude W+. Immediately thereafter, the collision of
swing leg with ground performs negative work, of magnitude
W. For a periodic gait at steady speed,
W+=W.
|
. Push-off and heelstrike impulses are directed from
the ground contact points to the COM. These impulses successively redirect the
COM velocity. The push-off impulse redirects the COM from its pre-transition
velocity vpre to a mid-transition velocity
vmid; then the heelstrike impulse redirects the COM to a
post-transition velocity vpost. A curved foot reduces the
directional change in COM velocity, and the work performed to redirect the COM
(see Fig. 1B). For a leg at
angle
with respect to vertical at the step-to-step transition, and a
positive radius of curvature
, the pre-to-post angular direction change
in COM velocity is less than the angle between the legs 2
. A
periodic gait is produced (Kuo,
2002
![]() | (1) |
yields:
![]() | (2) |
![]() | (3) |
![]() | (4) |
![]() | (5) |
The model therefore predicts the trends in COM velocity change and
step-to-step transition work as a function of foot radius of curvature
.
Keeping step length fixed, the step-to-step transition leg angle
is
nearly constant (varying only by a few percent over the range of
applied
in our experiment). Keeping walking speed fixed, the post-transition velocity
vpost is also approximately constant. Again assuming small
angles, the angular direction change
in COM velocity then decreases
approximately linearly with foot radius of curvature
:
![]() | (6) |
![]() | (7) |
We used numerical simulations to verify the analytical prediction of Eqn 7,
and to quantify how well it holds for more realistic models
(Fig. 2). The `Simplest Model'
(SM) analyzed above neglects leg mass and inertia to allow our closed-form
energetic analysis. An `Anthropomorphic Model' (AM) introduces more human-like
mass distribution, but retains straight legs and curved feet that extend fore
and aft from the legs (Kuo,
2001
; McGeer,
1990a
). A `Forward-foot Model' (FM) moves the anthropomorphic
model's feet forward from the leg axis, more like human feet [similar to
(McGeer, 1990b
), but without
knees]. Finally, a `Kneed Model' (KM) introduces a hinged knee joint to the
forward-foot model, with a stop to prevent hyperextension
(McGeer, 1990b
). The
Anthropomorphic and Kneed Models (AM and KM) both resemble physical machines
constructed by McGeer (McGeer,
1990a
; McGeer,
1990b
). All of these models include springs about the joints in
order to produce human-like step frequencies
(Dean and Kuo, 2005
;
Kuo, 2001
). We examined the
gaits of all of these models as a function of
, keeping speed, step
length and other parameters fixed.
|
explored in our human
experiment (Fig. 2). However,
the decrease is monotonic only for SM and AM. Simulations show that SM closely
follows the curve of Eqn 7 to a minimum of zero cost at
=1. AM follows
the same trend remarkably well, despite the different mass distribution of the
legs. The other models, FM and KM, exhibit a U-shaped curve, where
step-to-step transition costs increase beyond a certain radius of curvature.
FM has a minimum cost at approximately
=0.52, with an increasing cost due
to the unfavorable mass distribution of the leg relative to the point of
collision with ground. KM has a minimum at
=0.38 for the same reason, but
with even higher costs due to increasing energy lost during knee lock. These
latter models also do not yield walking gaits at larger radii (
>0.61
and
>0.51, respectively, marked with asterisks in
Fig. 2), without a change in
other parameters. Despite these significant differences in actual behavior,
the simple trend of Eqn 7 applies remarkably well to all models over the
experimental range of
(up to 0.45), with an r2 value
of at least 0.94. For this reason, we compared experimental data against the
same single trend, predicting a general decrease in step-to-step transition
work proportional to (1
)2.
We hypothesized that the mechanical work of step-to-step transitions would
be accompanied by an approximately proportional metabolic cost. Work performed
actively by muscle would be expected to exact a proportional metabolic cost.
Indeed, both step-to-step transition work and metabolic cost measured in
humans undergo changes proportional to the work predicted by models as a
function of step length and step width
(Donelan et al., 2001
;
Donelan et al., 2002a
;
Kuo et al., 2005
).
There are, of course, many other factors likely to contribute to overall
cost. Muscles incur metabolic cost due to their use in supporting body weight,
controlling posture and stability, moving the legs, and moving other parts of
the body such as the arms and trunk (Doke
et al., 2005
; Kuo,
2001
). We assume that these other costs are relatively constant
when only radius of curvature
is varied, and step length and frequency
are fixed. Any relatively constant costs would contribute to an offset in
mechanical work rate or metabolic rate, but would not affect the general trend
of Eqn 7.
We also considered an alternative explanation that the metabolic cost of
walking reflects work performed by muscles to raise the COM during each step
(Saunders et al., 1953
).
Following this hypothesis, metabolic cost should be proportional to vertical
displacement of the COM, with a muscular efficiency of approximately 25%
relative to work against gravity
(Margaria, 1976
). The
application of different radii
is predicted to cause small changes in
vertical COM displacement, yet large changes in COM velocity direction. If
raising the COM, rather than redirecting its velocity, is a more important
contributor to metabolic cost, we would therefore expect much smaller changes
in metabolic rate than predicted by Eqn 7. We therefore compared metabolic
cost measured in subjects against their measured vertical COM
displacement.
Experimental procedure
We measured mechanical work performed on the COM and metabolic rate while
10 adult human subjects walked in rigid boots with soles of different
curvature. Walking speed was fixed at 1.3 m s1 and step
frequency was fixed across conditions for each subject. All subjects (5 male,
5 female; body mass 67.5±9.6 kg, mean ± s.d.; leg length
0.94±0.07 m, floor to greater trochanter) were healthy and had no known
gait abnormalities. The study was approved by the local Institutional Review
Board and subjects gave their informed consent to participate prior to the
experiment.
The experimental apparatus consisted of a pair of rigid walking boots modified to accept circular foot surfaces in place of their standard soles (see Fig. 3). The boots were Aircast Pneumatic Walkers (Aircast, Inc., Summit, NJ, USA), with the bottom surface replaced by an aluminum plate with a pyramidal prosthesis adapter. These adapters allowed attachment of foot surfaces (referred to as `arcs'), circular segments as viewed in the sagittal profile, cut from pine wood 0.086 m wide. Pairs of arcs were constructed with seven different radii of curvature (0.02, 0.05, 0.10, 0.15, 0.225, 0.30 and 0.40 m; see Fig. 3B). All arcs had sufficient foreaft extent to ensure rolling contact with the ground throughout a normal stance phase. Arcs were matched in weight (1.1±0.1 kg each) and standing height (0.11 m), although moment of inertia could not be matched over this range of sizes. All arcs were attached to the same boots (0.85 kg medium, 1.05 kg large). Subjects walked with each pair of arcs and in normal street shoes (`normal walking'), with the order of arc conditions randomized for each subject.
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Arcs were positioned relative to the leg so that the arc center was 0.076 m anterior to the tibial axis (Fig. 3A). Through trial and error experimentation we determined that the offset could affect walking comfort and metabolic cost. A zero offset (aligning the arc center directly with the tibial axis) caused the ground reaction force to pass behind the knee early in the stance phase. To prevent the knee from buckling, subjects counteracted this flexion moment with high quadriceps activity. A forward offset reduced the buckling moment, but larger offsets led to increasing discomfort due to a knee extension moment late in the stance phase. The offset of 0.076 m was found to provide reasonable compromise between these two factors.
Walking speed was held constant at 1.3 m s1 for all
trials, with a subject-specific fixed step frequency. Step frequency was fixed
to control for the cost of moving the legs, which increases with step
frequency (Doke et al., 2005
),
and to match our constant step frequency simulations. The particular value
chosen was dependent on each subject's preferred step frequency for large
arcs. Subjects briefly practiced walking over ground and on a treadmill
(Star-Trac, Irvine, CA, USA) with each arc until they felt comfortable with
their gait. Prior to experimental trials, we measured each subject's preferred
step frequency while they walked with the largest arcs, which were expected to
be the most difficult to move quickly due to their inertia. We then tested
whether subjects could comfortably maintain this same frequency on the
smallest arcs. If not, we measured the lowest frequency they could achieve and
used that as the enforced frequency. The mean step frequency thus chosen was
1.74±0.09 Hz (mean ± s.d.), slightly slower than the typical
normal walking step frequency of about 1.8 Hz
(Donelan et al., 2002a
).
Trials were performed both over ground and on a treadmill for the same conditions. We measured ground reaction forces (GRFs, see Fig. 4) in the over-ground walking trials. Subjects walked across two sequential force plates (AMTI, Watertown, MA, USA) at the same speed and step frequency used in treadmill walking. Speed was measured using two photogates, positioned 2.5 m apart around the force plates, and the chosen step frequency was regulated by a metronome. Trials were discarded if speed was not within 5% of the nominal 1.3 m s1 speed. We assessed the net change in speed per trial to be +0.012±0.050 m s1 (mean ± s.d.) for normal walking and +0.017±0.052 m s1 for arc foot conditions. Both were statistically insignificantly different from zero (P>0.05), indicating that subjects walked at relatively steady speed. We recorded ten successful trials for each subject on each pair of arcs, and averaged the GRF from all ten trials. A step was defined as beginning with heelstrike and ending with opposite heelstrike.
|
COM in the direction of COM velocity in the sagittal plane
(see Fig. 5). The instantaneous
rate of mechanical work performed by each leg on the COM was calculated
according to the `individual limbs method'
(Donelan et al., 2002b
(J)
performed during one step. Finally, we multiplied this work by step frequency
(Hz) to yield the average rate of negative mechanical work
(in
W) performed by the subject on the COM. For comparison purposes, we also
calculated the average rate of negative COM work performed during double
support alone,
.
|
|
We estimated metabolic energy expenditure rate from respiratory gas
exchange data collected during treadmill trials. Subjects walked on the
treadmill for at least 7 min while we collected data. Steps were again
regulated by a metronome set to the chosen step frequency. We used an
open-circuit respirometry system (Physio-Dyne Instrument Corp., Quogue, NY,
USA) to measure the volume rates of oxygen consumption and carbon dioxide
production (
O2 and
CO2, ml
s1). Following a 3.5-min transient period to allow subjects
to reach steady state, we collected and averaged volume rates over at least 3
min of each trial. Metabolic energy expenditure rate
met (W) was estimated using the formula:
![]() | (8) |
Data analysis
We used angular change in COM velocity, average COM work rate, and
metabolic rate to test the simple model's predictions for changes in arc
radius. First, we performed a least-squares fit to the model of Eqn 6,
regressing velocity direction change
COM against arc radius
according to:
![]() | (9) |
COM.
We regressed subjects' mechanical and metabolic costs against arc radius
according to:
![]() | (10) |
,
and
met, applying subscripts `mech', `DS' and `met',
respectively, to C and D to distinguish the various
coefficients.
We also performed a more general quadratic fit for metabolic rate
met. To allow for a minimum cost not occurring at
=1, we performed a least-squares fit to a general quadratic,
![]() | (11) |
value of the curve
minimum. Unlike Eqn 10, which is based on the dynamic walking model of Eqn 7,
the Empirical Fit is a purely mathematical curve fit.
We also tested the hypothesis that metabolic cost will increase in
proportion to step-to-step transition work. We predicted the metabolic cost of
step-to-step transitions by scaling the Simplest Model Fit to COM work rate
according to the 25% maximum expected efficiency of muscle work
(Margaria, 1976
) with an
arbitrary offset. We then compared this prediction against the observed
Empirical Fit, using the difference between the two as an indication of
residual costs not predicted by the simple model.
We compared our results against the idea that metabolic cost arises from
work performed against gravity in raising the COM. We calculated the vertical
displacement of the COM as the difference between its highest and lowest
positions during the step. We multiplied vertical displacement by body weight
(Mg) to determine the work performed against gravity during
each step, and multiplied this work by step frequency to estimate the average
rate of work ostensibly performed to raise the COM,
raise. We then formed a
predicted metabolic cost due to COM raising. We computed a best-fit line to
the
raise versus
data, and divided this by the expected 25% efficiency to obtain a
prediction of metabolic rate according to the COM raising explanation.
To account for differences in subjects' body size, we performed all
analyses with non-dimensionalized variables. We used base units of total mass
M (body plus apparatus), gravitational acceleration
g, and total standing leg length L (including boots
and arc feet). Work rate and energy rate were therefore made dimensionless by
the divisor Mg1.5L0.5, work and
energy by MgL, and force by Mg. Arc radius was
non-dimensionalized by L. Work rate and energy rate graphs and model
fits are presented in both dimensionless units and in the more common units of
W kg1. Conversion between these units was performed with the
mean factor g1.5L0.5
29.8 W
kg1. We also accounted for inter-subject kinematic and
energetic variations by computing offsets dCOM, D
and DEF separately for each subject and then averaging
them.
| Results |
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. The average
rate of negative mechanical work performed on the COM also decreased
significantly with increasing
. Net metabolic rate decreased with small
increasing values of
, but increased again after reaching a minimum.
Results for ground reaction forces, COM velocity direction change, COM work
rate, and metabolic rate during normal walking and walking with arcs are
compared below.
We first verified that the measured mechanical work rate and metabolic rate
of normal walking were comparable to values found in previous literature. In
normal walking at 1.3 m s1 with preferred step frequency,
the angular direction change
COM in COM velocity was
19.7°. Subjects performed negative COM work at an average rate of 0.595 W
kg1 (non-dimensional value, 0.020). This is equivalent to
0.343 J kg1 per step, comparable to estimates of 0.33 and
0.38 J kg1 per step from two previous studies
(Donelan et al., 2002a
;
Donelan et al., 2002b
). Average
net metabolic rate for normal walking was 2.71 W kg1
(non-dimensional value, 0.091), also comparable to previously published
results (Donelan et al.,
2002a
).
Measured ground reaction forces changed with arc radius, and differed from those of normal walking. Vertical forces (Fig. 4) exhibited greater overlap with higher radius, expanding the duration of double support from about 6.5% of the stride (two steps) for 0.02 m arcs to 10% for 0.40 m arcs. The early force peak, about 1.4 BW (body weight) for small arcs, decreased to about 1.0 BW for large arcs, possibly because the opposite leg contributed higher forces throughout double support. The second peak's magnitude was about 1.1 BW for all experimental conditions and for normal walking, but its duration was longer for larger arcs. Reflecting the relative rigidity of the boot-arc apparatus compared to a normal foot and ankle, loading of each new stance limb occurred very quickly. Peak load was reached in as little as 8.5% of a stride, compared with about 15% for normal walking.
The observed angular direction change
COM in COM velocity
decreased with increasing arc foot radius
(P<0.05,
Fig. 5). These data were fit
well (r2=0.89) by the linear prediction of Eqn 9, with
coefficients cCOM=19.6±3.0° (mean ± 95%
Confidence Interval, CI), dCOM=6.0±2.8°. The
COM direction change for normal walking intersected with the observed trend at
an arc radius of about 0.3.
The relative distribution of COM work throughout the step also changed with
arc radius (Fig. 6). We define
the collision as the first phase of negative COM work in a step, and push-off
as the first phase of positive work starting near the end of the preceding
step and extending until the end of double support
(Kuo et al., 2005
). There was
a dramatic increase in collision negative work with decreasing
,
occurring over a relatively fixed duration of about 0.13 s. But the duration
of double support decreased with smaller arcs, so that the collision tended to
extend beyond double support in those conditions. The amount of push-off COM
work remained relatively fixed, but tended to occur earlier before heelstrike
with smaller arcs. Subjects performed less work during push-off than during
collision, making up for the deficit with more positive work in the
single-support leading leg prior to mid-stance.
In relation to normal walking, walking on arc feet resulted in a roughly
comparable average COM work rate but a considerably higher metabolic rate. COM
work rate with arcs at 1.3 m s1 ranged from a high of 0.774
W kg1 (dimensionless 0.026) for the smallest arcs to a low
of 0.327 W kg1 (0.011) for the largest arcs
(Fig. 7). Arcs of radius 0.225
m and greater actually resulted in lower average negative COM work rates than
normal walking. However, the Empirical Fit to metabolic rate for walking on
arcs was always at least 45% higher than the rate for normal walking
(Fig. 8). Net metabolic rate
ranged from 6.25 W kg1 (0.210) for the smallest arcs to 3.93
W kg1 (0.132) for the second-largest arcs, and demonstrated
a minimum near
=0.300.
|
|
The amount of negative COM work performed
(
)
agreed well with the decreasing trend predicted by the Simplest Model
(Fig. 7). Overall negative work
rate decreased with increasing
(P<0.05), fitting the
Simplest Model fit of Eqn 10 with an r2 value of 0.95. The
model fit showed a decline in overall negative COM work rate from 0.774 to
0.327 W kg1 (dimensionless 0.0260.011) as arc radius
increased from 0.02 to 0.42 (Fig.
7). The coefficients are Cmech=0.700±
0.050 W kg1 and Dmech=0.110±0.047
W kg1 (mean ± CI, dimensionless 0.024±0.001
and 0.004±0.001, respectively). A similar trend was observed for
double-support work rate
(r2=0.92), with coefficients
CDS=0.617±0.059 W kg1 and
DDS=0.093±0.055 W kg1
(dimensionless 0.0207±0.0020 and 0.0031±0.0019,
respectively).
Metabolic rate
met also fell with increasing
radius of curvature (P<0.05), although with a U-shaped rather than
a monotonically decreasing curve (Fig.
8). The Simplest Model (Eqn 10) predicted a decreasing curve with
minimum at
=1, but the resulting fit to data for
met gave a relatively poor
r2=0.77. Metabolic rate was matched better by the purely
Empirical Fit of Eqn 11, r2=0.86. The coefficients are
BEF=0.300±0.108 (mean ± CI),
CEF=32.02±9.40 W kg1
(dimensionless 1.074±0.316), and
DEF=3.81±1.65 W kg1
(0.128±0.055).
The predicted metabolic cost for the COM raising hypothesis was far below
the observed metabolic cost. Vertical COM displacement decreased approximately
linearly from 0.045 m (dimensionless 0.048) for
=0.02 to 0.035 m (0.037)
for
=0.42. The rate of work
raise needed to raise the
COM through these displacements therefore ranged from 0.831 W
kg1 (dimensionless rate 0.028) to 0.614 W
kg1 (0.021). This yields expected metabolic rates of 3.3 W
kg1 (0.111) to 2.5 W kg1 (0.083), a range
far smaller than observed (Fig.
8). The change in vertical COM displacement could only account for
about 24% of the observed change in metabolic rate.
| Discussion |
|---|
|
|
|---|
on the mechanical and
metabolic costs of walking. Our model of walking with arc-shaped feet
predicted an energetic cost based on the work performed on the center of mass
(COM) in each step-to-step transition. We predicted that the average rate of
COM work would fall with increasing arc radius according to Eqn 7. We also
predicted that metabolic cost would change in proportion to mechanical
work.
The observed downward trend in negative COM work
(Fig. 7) indicates that arc
radius influences step-to-step transition mechanics much as predicted (Eqn 7).
Even with no change in walking speed or step length, less work is needed to
walk on larger-radius arcs. This is due to the smaller angular direction
change in COM velocity for step-to-step transitions associated with larger
radii (Fig. 5). Small radii
result in larger directional changes, greater impact forces and more negative
work. Subjects compensated for collisions with more positive work, not during
double support but during single support (see
Fig. 6), perhaps by performing
positive work with the hips. Regardless of when work was performed, overall
work rate decreased in proportion to the predicted (1
)2
trend.
Curiously, larger-radius arcs actually resulted in less step-to-step
transition work than occurred in normal walking. COM work rate was lower for
all radii greater than about
=0.2; the trend exhibited the greatest
difference of about 45% at the upper limit of radius,
=0.42. By the
criterion of center of pressure progression, human walking may appear to have
an effective roll-over radius of
=0.3, but by the criterion of
step-to-step transition work, normal walking is closer to
=0.2. The
actions of the human ankle-foot complex appear not to perfectly mimic a static
arc. Some of the difference reflects active motion in the normal ankle and
foot articulations, performed with mechanical work. Passive deformation of
soft tissues may also contribute to normal COM work, with inelastic
deformations dissipating energy. Passive elastic deformation, for example in
the Achilles tendon, may also contribute to normal COM work
(Donelan et al., 2002b
;
Kuo et al., 2005
) without
dissipating energy. These ankle and foot motions, whether active or passive,
elastic or inelastic, are reduced considerably by the arc foot apparatus used
in this experiment.
Metabolic rate generally decreased with increasing arc radius, but only to
about
=0.3 (Fig. 8). For
larger radii,
met increased with
. The measured
metabolic rate exceeded that predicted by COM work (assuming 25% muscle
efficiency) for both low and high values of
(Fig. 9). It appears that
changes in metabolic cost were largely proportional to COM work rate, but with
additional costs that are not captured by the step-to-step transition model.
These unmodeled factors affect the cost of walking on unusually large and
small arcs. Subjective observations suggest that there may be separate
explanations for the increased metabolic cost measured for small or large
arcs.
|
We consider two possible explanations for the unexpectedly high metabolic
cost of walking on small-radius arc feet
(Fig. 9, region a). First,
subjects found it difficult to balance while walking with all arcs, especially
the smallest ones. The small radius afforded a small ground contact patch and
resulted in short impact durations with little time spent in double support
(see Fig. 4). More effort may
have been expended to maintain balance, with an added metabolic cost. Second,
small arcs resulted in greater collisions at heelstrike, which subjects found
jarring and uncomfortable. Their preference would have been to walk at faster
step frequencies, had frequency not been controlled. Faster and shorter steps
would have reduced the collisions, trading high step-to-step transition costs
for forced motion of the legs (Kuo,
2002
). Instead, subjects appeared to expend effort to maintain
joint stability, particularly for the knee, through the greater collisions.
The additional muscle activity for co-contraction or other stabilizing actions
may have incurred a metabolic cost.
Other explanations may apply to the high cost of walking on large-radius arc feet (Fig. 9, region b). Late in stance, larger arcs produced a longer moment arm between the knee joint axis and the ground reaction force's line of action, resulting in an extension moment tending to hyperextend the knee during late stance. Subjects reported high activity in knee flexors, presumably to counteract hyperextension. Some subjects also reported high activity in plantarflexor muscles, which may have been used to counteract the bending moment the boot applied to the shank, as well as to stabilize the foot within the boot. Stabilization of the knee and ankle may have contributed to the higher metabolic cost on large arcs.
We also consider the higher rotational moments of inertia of larger arcs. Larger arcs might theoretically require greater effort to swing through a step, depending on their contribution to overall moment of inertia about the medio-lateral axis. The arcs had central moments of inertia of about 0.0020.013 kg m2 (despite all being matched in mass), compared to a total inertia of about 0.90 kg m2 for the entire lower leg and boot-arc apparatus about an axis passing through the knee. Even the largest arcs therefore contributed less than 2% to overall rotational inertia. This difference cannot explain the cost of walking with large arcs.
Higher step-to-step transition costs for walking with large arcs were also observed indirectly in models with knees. Forward-facing feet (FM and KM of Fig. 2) and a passive knee joint (KM) alter the collision geometry, resulting in higher step-to-step transition costs for larger foot radii. These costs are a function of joint spring stiffnesses in the models. If KM were given infinite knee stiffness, its step-to-step transition work would be identical to that of FM. For a human to stiffen a joint in the same manner, muscle activity would presumably incur some metabolic cost. KM also loses more energy at heelstrike for larger arcs. These phenomena may have affected the human subjects metabolically without appearing in COM work rate estimates.
There was also an overall higher metabolic cost of walking on arc feet
independent of arc radius. The constant offset was such that metabolic rate
was at least 45% higher for arc foot walking than for normal walking (see
Fig. 8), despite the arcs'
advantage in terms of mechanical work. One constant factor is that the
weight-matched arcs and boot apparatus added about 2.0 kg at the end of the
leg in each arc condition. Many studies
(Burse and Pandolf, 1979
;
Inman et al., 1981
;
Martin et al., 1997
;
Miller and Stamford, 1987
;
Skinner and Barrack, 1990
)
have quantified the metabolic impact of adding mass to the ankles, measuring
increases equivalent to 1124% over normal walking per kilogram added.
One study (Royer and Martin,
2005
) incrementally varied the location of the mass, and found
steadily increasing metabolic costs with more distal placement due to changes
in moment of inertia. In our current experiment, the added mass is greater,
and it is placed more distally than in any of these studies. Extrapolating
from these and the results of other studies
(Griffin et al., 2003
), a
hypothetical 2.0 kg mass centered near the bottom of the foot may increase the
net metabolic cost of normal walking by up to 44%.
An additional factor may have been the novelty of walking on arc feet. After brief practice sessions, subjects may not have fully adapted to the added mass, restricted ankle motion, smaller ground contact patch, and rigid arcs. We performed a repeatability test on two subjects, and found roughly a 10% decline in cost from their first arc condition to a post-experiment re-test of the same condition. Practice may help subjects to improve balance and control, reducing metabolic cost. Novelty may therefore have contributed to the overall cost of walking on arcs, but not to the observed trends in cost due to randomized trial order. Factors such as added mass, increased moment of inertia, decreased double-support time, difficulty of balancing on the arcs, the need to compensate for restricted ankle motion, and incomplete adaptation could all contribute to the higher overall cost we measured for walking with arc feet.
The metabolic cost of walking on arc feet is not well explained by the
alternative hypothesis of raising the COM against gravity. Based on the
measured changes in vertical displacement of the COM, work performed against
gravity (at 25% efficiency) would account for only about 24% of the observed
changes in metabolic rate as a function of
. This hypothesis is also at
odds with the inverted pendulum analogy for the stance leg, because a pendulum
can conserve mechanical energy, gaining height by conversion of kinetic energy
to potential energy. Work is therefore not needed to raise a pendulum, which
will have the same energy and speed at the beginning and end of single
support. Even with a conservative pendulum, however, work is needed to restore
energy lost in collisions. We find the explanation based on step-to-step
transitions to be more helpful than that based on raising the COM.
Arc feet allow rolling during single support and reduce step-to-step
transition costs. For rolling, a rigid convex curved shape will dissipate less
energy than one that is deformable, because deformations cause rolling
resistance. Polygonal or concave shapes (e.g. a rigid cast without a cast
shoe) are poor choices because each corner produces a collision as it contacts
the ground (Ruina et al.,
2005
). However, the circular shape we examined is not necessarily
optimal. An inverted pendulum can theoretically roll atop any smooth convex
curve. Longer (foreaft) curves reduce the directional change in COM
velocity and therefore step-to-step transition work (Eqn 6, Eqn 7). For longer
curves, some attention must be paid to alignment with respect to the tibial
axis, and to induced moments about the knee. Such factors would warrant
further study for possible application to rocker bottom shoes, which evidently
already employ them to advantage but without quantitative, energetics-based
design principles.
The human plantigrade gait appears to use the feet to behave approximately
like rigid arcs. The effective roll-over shape (
=0.3 based on center of
pressure progression) appears to take advantage of reduced step-to-step
transition costs compared to a point foot (
=0), subject to the
limitations apparent with larger arc radii. The disadvantages of larger arcs
might stem from side effects such as moments induced about the knee. For
animals that walk exclusively on flat ground, it might be preferable to have
rigid legs with curved feet of radius equal to leg length, and without ankles
or knees. However, animals that wish to sit, stand, climb, or use ankles or
knees for any other purpose must compromise the efficiency of high-radius
rolling gait with the body's structural limits and versatility
constraints.
| List of symbols |
|---|
|
|
|---|
COM curve fit
met
CO2,
O2



raise


COM

| Acknowledgments |
|---|
| References |
|---|
|
|
|---|
Brockway, J. M. (1987). Derivation of formulae used to calculate energy expenditure in man. Hum. Nutr. Clin. Nutr. 41,463 -471.[Medline]
Burse, R. L. and Pandolf, K. B. (1979). Physical conditioning of sedentary young men with ankle weights during working hours. Ergonomics 22,69 -78.[Medline]
Dean, J. C. and Kuo, A. D. (2005). Powering the kneed passive walker with biarticular springs. In Proceedings of the International Society of Biomechanics XXth Congress and the American Society of Biomechanics Annual Meeting, pp. 719. Cleveland, OH. http://www.isb2005.org/proceedings/abstracts/0719.pdf.
Dhalla, R., Johnson, J. E. and Engsberg, J. (2003). Can the use of a terminal device augment plantar pressure reduction with a total contact cast? Foot Ankle Int. 24,500 -505.[Medline]
Doke, J., Donelan, J. M. and Kuo, A. D. (2005).
Mechanics and energetics of swinging the human leg. J. Exp.
Biol. 208,439
-445.
Donelan, J. M., Kram, R. and Kuo, A. D. (2001). Mechanical and metabolic determinants of the preferred step width in human walking. Proc. R. Soc. Lond. B Biol. Sci. 268,1985 -1992.[Medline]
Donelan, J. M., Kram, R. and Kuo, A. D.
(2002a). Mechanical work for step-to-step transitions is a major
determinant of the metabolic cost of human walking. J. Exp.
Biol. 205,3717
-3727.
Donelan, J. M., Kram, R. and Kuo, A. D. (2002b). Simultaneous positive and negative external work in human walking. J. Biomech. 35,117 -124.[CrossRef][Medline]
Griffin, T. M., Roberts, T. J. and Kram, R.
(2003). Metabolic cost of generating muscular force in human
walking: insights from load-carrying and speed experiments. J.
Appl. Physiol. 95,172
-183.
Hansen, A. D. and Childress, D. S. (2004). Effects of shoe heel height on biologic rollover characteristics during walking. J. Rehabil. Res. Dev. 41,547 -554.[CrossRef][Medline]
Hansen, A. D. and Childress, D. S. (2005). Effects of adding weight to the torso on roll-over characteristics in walking. J. Rehabil. Res. Dev. 42,381 -390.[CrossRef][Medline]
Hansen, A. D., Childress, D. S. and Knox, E. H. (2004). Roll-over shapes of human locomotor systems: effects of walking speed. Clin. Biomech. 19,407 -414.[CrossRef][Medline]
Inman, V. T., Ralston, H. J. and Todd, F. (1981). Human Walking. Baltimore: Williams and Wilkins.
Kuo, A. D. (1999). Stabilization of lateral motion in passive dynamic walking. Int. J. Robot. Res. 18,917 -930.
Kuo, A. D. (2001). A simple model predicts the speedstep length relationship in human walking. J. Biomech. Eng. 123,264 -269.[CrossRef][Medline]
Kuo, A. D. (2002). Energetics of actively powered locomotion using the simplest walking model. J. Biomech. Eng. 124,113 -120.[CrossRef][Medline]
Kuo, A. D., Donelan, J. M. and Ruina, A. (2005). Energetic consequences of walking like an inverted pendulum: step-to-step transitions. Exerc. Sport Sci. Rev. 33,88 -97.[CrossRef][Medline]
Margaria, R. (1976). Biomechanics and Energetics of Muscular Exercise. Oxford: Clarendon Press.
Martin, P. E., Royer, T. D. and Mattes, S. J. (1997). Effect of symmetrical and asymmetrical lower extremity inertia changes on walking economy. Med. Sci. Sports Exerc. 29,86 .
McGeer, T. (1990a). Passive dynamic walking. Int. J. Robot. Res. 9,68 -82.
McGeer, T. (1990b). Passive walking with knees. In Robotics and Automation. Proceedings of the 1990 IEEE Conference, pp. 1640-1645. Cincinnati, OH: IEEE Computer Society Press.
Miller, J. F. and Stamford, B. A. (1987).
Intensity and energy cost of weighted walking vs. running for men and women.
J. Appl. Physiol. 62,1497
-1501.
Mochon, S. and McMahon, T. (1980). Ballistic walking. J. Biomech. 13,49 -57.[CrossRef][Medline]
Royer, T. D. and Martin, P. E. (2005). Manipulations of leg mass and moment of inertia: effects on energy cost of walking. Med. Sci. Sports Exerc. 37,649 -656.
Ruina, A. J., Bertram, E. A. and Srinivasan, M. (2005). A collisional model of the energetic cost of support work qualitatively explains leg sequencing in walking and galloping, pseudo-elastic leg behavior in running and the walk-to-run transition. J. Theor. Biol. 237,170 -192.[CrossRef][Medline]
Saunders, J. B., Inman, V. T. and Eberhart, H. D.
(1953). The major determinants in normal and pathological gait.
J. Bone Joint Surg. 35A,543
-558.
Schaff, P. S. and Cavanagh, P. R. (1990). Shoes for the insensitive foot: the effect of a "rocker bottom" shoe modification on plantar pressure distribution. Foot Ankle 11,129 -140.[Medline]
Skinner, H. B. and Barrack, R. L. (1990). Ankle weighting effect on gait in able-bodied adults. Arch. Phys. Med. Rehabil. 71,112 -115.[Medline]
Weir, J. B. de V. (1949). New methods for
calculating metabolic rate with special reference to protein metabolism.
J. Physiol. 109,1
-9.
Wu, W. L., Rosenbaum, D. and Su, F. C. (2004). The effects of rocker sole and SACH heel on kinematics in gait. Med. Eng. Phys. 26,639 -646.[CrossRef][Medline]
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