364 8.4 Reaction, Diffusion, and Flow
8.4.4 FLUID TRANSPORT IN BIOLOGY
Previously in this book, we discussed several examples of fluid dynamics. The core math
ematical model for all fluid dynamics processes is embodied in the Navier–Stokes equation.
The Navier–Stokes equation results from Newton’s second law of motion and conservation
of mass. In a viscous fluid environment under pressure, the total force at a given position in
the fluid is the sum of all external forces, F, and the divergence of the stress tensor σ. For a
velocity of magnitude v in a fluid of density, ρ this leads to
(8.99)
ρ
σ
d
d
v
t
v
v
F
+ ⋅∇
= ∇⋅
+
The left-hand side of this equation is equivalent to the mass multiplied by total acceleration
in Newton’s second law. The stress tensor is given by the grad of the velocity multiplied by
the viscous drag coefficient minus the fluid pressure, which after rearrangement leads to the
traditional form of the Navier–Stokes equation of
(8.100)
d
d
v
t
v
v
p
v
F
= −
⋅∇
(
)⋅−
∇+ ∇
+
1
2
ρ
γ
For many real biological processes involving fluid flow, the result is a complicated system
of nonlinear PDEs. Some processes can be legitimately simplified, however, in terms of the
mathematical model, for example, treating the fluid motion as an intrinsically 1D problem, in
which case the Navier–Stokes equation can be reduced in dimensionality, but often some of
the terms in the equation can be neglected, and the problem reduced to a few linear differ
ential equations, and sometimes even just one, which facilitates a purely analytical solution.
Many real systems, however, need to be modeled as coupled nonlinear PDEs, which makes
an analytical solution difficult or impossible to achieve. These situations are often associated
with the generation of fluid turbulence with additional random stochastic features, which are
not incorporated into the basic Navier–Stokes equation becoming important in the emer
gence of large-scale pattern formation in the fluid over longer time scales. These situations
are better modeled using Monte Carlo–based discrete computational simulations, in essence
similar to the molecular simulation approaches described earlier in this chapter but using the
Navier–Stokes equation as the relevant equation of motion instead of simply F = ma.
In terms of simplifying the mathematical complexity of the problem, it is useful to
understand the physical origin and meaning of the three terms on the right-hand side of
Equation 8.100.
The first of these is −(v·∇)·v. This represents the divergence on the velocity. For example,
if fluid flow is directed to converge through a constriction, then the overall flow velocity will
increase. Similarly, the overall flow velocity will decrease if fluid flow is divergent in the case
of a widening of a flow channel.
The second term is −∇p/ρ. This represents the movement of diffusing molecules with
changes to fluid pressure. For example, molecules will be forced away from areas of high-
pressure changes, specifically, the tendency to move away from areas of higher pressure. If
the local density of molecules is high, then a smaller proportion of molecules will be affected
by changes in the local pressure gradient. Similarly, at low density, there is a greater propor
tion of the molecules that will be affected.
The third term is γ∇2v. This represents the effects of viscosity between neighboring
diffusing molecules. For example, in a high viscosity fluid (e.g., the cell membrane), there
will be a greater correlation between the motions of neighboring biomolecules than in a low
viscosity fluid (e.g., the cell cytoplasm). The fourth term F as discussed is the net sum of all
other external forces.
In addition to reducing mathematical descriptions to a 1D problem where appropriate,
further simplifications can often involve neglecting the velocity divergence and external