3.1. General Mathematical Analysis
Consider an initial profile H0(X). We assume that this function has a continuous slope and obeys the boundary conditions (6). The slope may become minus infinity at the outlet X = 1 to be consistent with the boundary condition the zero-height boundary condition and a finite or infinite outflow rate Q, given by (7).
By Equation (7), Q is finite if the slope of the squared profile is finite at X = 1. The Polubarinova early-time recession solution [
4], reviewed in some detail in
Appendix A, is a solution consistent with a uniform initial profile for all X < 1. This means that the square profile has an effectively infinite slope for this solution. This is why Q starts with a singularity in time: Q is proportional to 1/√t.
If the initial profile is, for example, a steady state, or any profile with finite Q before a recession starts, there is no such initial singularity in the flow rate. On the other hand, Equations (5) and (6) say that the outlet boundary condition implies dynamically that the square profile must have a vanishing second derivative at X = 1. This is certainly not a feature of the steady state, or of any generic initial profile with a finite Q. That means that the Boussinesq equation will transform the initial profile into something with this property through a sudden but finite change in ∂H/∂T. That means the second, time derivative of the profile must be infinite for T = 0+. That in turn means that dQ/dT will be infinite for T = 0+. We show here that this is realized by a (smaller than 1) power law departure from the initial value of the outflow rate.
Consider small perturbations δH(Χ,Τ), that is,
Given that the initial profile obeys the boundary conditions, the perturbation must also obey them:
with initial condition δH (Χ,0) = 0.
The perturbation is governed by the linear equation
which is obtained by substituting (8) in (5) and dropping the quadratic term. The second term on the right hand side does not depend on the field δH, and hence acts as a source/forcing term.
Aiming at an expansion in orthogonal functions, we look for solutions of the form
where κ is a constant, to be determined by the boundary conditions. Substituting into (10) without the source term, we obtain
This is an eigenvalue equation, where the eigenfunctions φ
κ(Χ) obey the boundary conditions
Define the functions Φ
κ(Χ) = H
0(Χ) φ
κ(Χ). These functions clearly obey the boundary conditions (13) and the equation
Due to the linearity of the eigenvalue Equation (14) the normalization of Φ
κ(Χ) is left unspecified. We impose the simple condition Φ
κ(0) = 1.
Equation (14) defines a Sturm–Liouville eigenvalue problem with weight 1/H
0(X): The solution of (14) with the given boundary conditions leads to a discrete set of functions Φ
κ(Χ), labeled by a discrete set of constant rates of decay (eigenvalues) κ
2, which form a complete and orthogonal set of functions in space of weighted square integrable functions, which obey the given boundary conditions. The orthogonality relation explicitly reads
for any two values of eigenvalues κ and κ′. In terms of the original functions the orthogonality reads
Expand now the general solution of (10) in these orthogonal functions
where the function c
κ(Τ) are determined by (10) and the initial condition δH(Χ,0) = 0. This sum is inverted by the orthogonality relation (16):
Multiplying (10) with H
0(X)φ
κ(Χ) and integrating over the interval 0 < X < 1, using also the orthogonality relation (16) and Equation (18), we obtain a dynamical equation for c
κ(Τ):
where d
κ are given by
with the initial condition c
κ(0) = 0. We immediately obtain
Hence, as long as one is able to solve (14), the solution of the problem is
The storage associated with this solution reads
Therefore, the outflow rate reads
Let us now focus on a specific initial condition of this kind, i.e., the steady-state solution. This result is further analyzed below.
Regarding the range of times where the solution (35) is expected to be a reasonably good approximation, one may note that the solution holds well as long as the time-dependent exponentials are small. That is, it is expected to be a good approximation for times t << 1/κMIN2 where κΜΙΝ2 is the smallest eigenvalue.
Without loss of generality, we may write
Indeed, the most general steady state is of the form h
0(X) = h
o√(1 − X
2), for some constant h
o, in terms of the original (dimensionful variable). We may then set the height scale [h] = h
o, which fixes the scale of time by Equation (3):
That of course means that the scales of storage and outflow rate are also fixed
3.2. Numerical Treatment of the Problem
It is useful first to solve numerically the eigenvalue problem (14) for large enough eigenvalues κ. (In the next section we shall calculate analytically the critical quantities). By Equation (24), the early-time behavior of the flow rate is dominated by the asymptotic behavior of the various quantities of large eigenvalues. The numerical solution of the eigenvalue Equation (14) is facilitated by the observation that the boundary condition Φ′
κ(0) = 0, and normalizing so that Φ
κ(0) = 1, the first two terms in a power series expansion of the eigenfunctions read
Therefore, Equation (14) can then be solved with initial conditions Φ
κ(ε) = 1 − (1/2)κ
2ε
2 and Φ′κ(ε)= −κ
2ε, with ε is a small number and the eigenvalues κ
2 are determined by the condition that Φ
κ(1) is zero (within tolerance). We use ε = 10
−9 and |Φ
κ(1)| < 10
−8. We obtain results for the (root) eigenvalues κ, and the constants d
κ and e
κ defined in Equations (20) and (23), respectively, for the first 100 modes.
We find that the smallest root eigenvalue is κ1 = 1.50. That is, the longest mode decay time is 1/κ12 = 0.44. That means that the solution should make sense for times T << 0.44. On the other hand, for a given time T, the series adequately represents the solution of (10) when we include modes such that κ2T >> 1, that is, when we include decay times such that 1/κ2 << Τ. We have included modes up to decay times of order 10−5; hence, we may safely represent times nearly as small as 0.0001.
We may also utilize these results to deduce the behavior of the outflow rate given by Equation (24) for small times, looking for a more explicit expression than Equation (24). To this end, we shall also make explicit certain properties of the eigenvalue and eigenfunctions which define the solution to the problem at hand. First of all, at T = 0
+, the flow rate reads
Although the time derivative of the profile and hence of the storage is discontinuous at T = 0, the flow rate, defined by (24), is continuous: Q(0
+)= Q(0
−) = 1, using the fact that the steady state (25) produces unit flow rate from the results of the 100 modes we obtain [that is, the error appears to be of order O(100
−2)]. In order to determine the behavior of (37) for small T, we need the asymptotic behavior of (square root) eigenvalues κ and of the product e
κd
κ. As we shall explicitly see below, the behavior of these quantities is needed to deduce the asymptotic early-time behavior of the outflow rate (25).
Indeed, we find that
where i is the integer index of the eigenfunction corresponding to the number of its nodes. This is obtained by calculating the slope and the intercept of the line κ(i) calculated in a moving window of 10 eigenvalues. The results are plotted in
Figure 1 where the slope of the line κ(i) is shown in a dotted line (primary axes) and its intercept is shown dashed line (secondary axes). As we shall see, what matters is the linearity of the relationship between the eigenvalue κ and the integer index i.
The behavior of the product eκdκ is best described by the logarithmic derivative with respect to κ as a function of the node number i, which illustrates a power law dependence of the product on κ.
Figure 2 illustrates this dependence for up to node number 100. The result suggests that the product eκdκ exhibits a power law dependence on large κ:
Such an estimate allows us to quantify analytically the early-time behavior of the flow rate Q in this problem. Indeed, the small time T behavior of Q given by Equation (24) is dominated by the large κ behavior of the summand. In this limit, the discrete index i, or equivalently via Equation (30), the index κ, is regarded as a continuous variable:
where α denotes an (undeterminable) lower-end point of order 1. We have
for the small times T. We know that the constant term must be 1. We also observe that the dominant term in the expansion of small times is a non-analytic power law. The reason is that the exponent ν ≈ 7/3 does not allow expanding the exponential to obtain even just one term (as the sum does not converge), or equivalently, the sum is not differentiable even once near T = 0, as we expected from our discussion previously. Explicitly, we have
where the c is a constant of order 1, which is not determined analytically in this work. Equation (34) encodes explicitly the dynamical response of the aquifer to the initial state, which respects the boundary conditions but it is not consistent with its dynamical preservation.
It is clear that Equation (34) applies to even earlier times than the complete result in Equation (24). Upon comparing it with the result of Equation (24), we may determine the numerical constant c. Indeed, for c = 1.414, the result (34) fits very well with the earliest time behavior of (24). The resulting curves are shown in
Figure 3. Indeed, for the smallest times of order 0.0001, the relative difference is of order 1:105 while at time 0.05 is 0.5%. It is also worth quoting the result (34) in dimensionful form, using the scales (26) and (27), and the fact that h
0 = √(r/k)L for the steady state with uniform and constant recharge rate r. We then have
This solution holds well for dimensionful times t up to 0.01 nL
3/2k
−1/2Q
0−1/2. For example, if we consider a porosity of 30%, aquifer length of 1 km, mean hydraulic conductivity 10
−4 m/sec and discharge rate of 10
−4 m
3/sec, the solution holds very accurately for 11 days since the recharge switch-off.
3.3. Analytical Treatment of the Problem by Large Eigenvalue Asymptotics
We may complete our analysis by estimating analytically the important results (30) and (31). We start by determining the asymptotic behavior of the large (square root) asymptotic behavior of the solution of (14). This is a well-known type of problem, treated usually by standard asymptotic methods, such as the WKB approximation [
25]. It is instructive to first obtain some insight into the problem by looking at the behavior of (14) near the boundary points. We first observe that for X~0, the eigenvalue Equation (14) takes the form
applying also the boundary condition Φ′
κ(0) = 0 and normalization condition Φ
κ(0) = 1. Then, the solution of (36) is
Applying the WKB approximation in its first two orders (which are usually adequate) is essentially equivalent to looking for a solution in the form of the following ansatz
for some amplitude function A(X) and phase function
to be specified. Indeed, by substituting (38) into (14), we find (dividing also everything with κ
2):
For large κ, the dominant term with respect to κ implies the following simple equation for the unknown function
:
Hence, we obtain
Thus, we have determined the wave part of the WKB approximation without yet determining the prefactor A(X). This solution allows us immediately to determine the (asymptotic) form of the eigenvalues. Indeed, applying the boundary condition Φ
κ(1) = 0 on the ansatz (38) means that it must be cos(κφ(1)) = 0. Hence, we find
We see that the eigenvalue is indeed a linear function of the integer counting index i. Moreover, let us apply this result to the case of steady-state initial condition (38): H
0(X) = √(1 − X
2). Then
Hence, the slope of κ(i) is
which is the asymptotic slope we estimated numerically (
Figure 1).
Impose now the first subdominant term, of order 1/κ, in (39). We obtain
This implies
Applying this equation specifically for the case of the steady-state initial condition and applying the normalization Φ
κ(0) = 1, we find
In all, the eigenfunction Φ
κ(X) under these approximations reads
Note that, by Equation (40),
This allows us to rewrite (48) in the form
where we have dropped a factor sin(κφ(1)) = ±1. Obtaining (50), we used the condition that defines the eigenvalues, i.e., cos(κφ(1)) = 0.
We may now come to the calculation of d
κe
κ. The quantity d
κ is defined as in Equation (20). It involves the quantity N
κ, which is defined in Equation (15). The quantity e
κ is defined in Equation (23). Working with the steady-state initial condition, we see that we should estimate the following three integrals for large κ:
In particular, we need to estimate their scaling with κ.
There are quick but somewhat handwaving ways to determine this scaling based on Equation (50); hence, we shall refrain from writing them down. The robust way to obtain the desired results is to proceed by a pertinent general asymptotic procedure, such as the steepest descent method [
25]. The cumbersome chain of details of this calculation does not add anything to our main argument and we present it in
Appendix C. Indeed, we find that for large κ
Therefore, using these results in Equations (20) and (23) we find
which is what we estimated numerically above (
Figure 2).
It is instructive to obtain the important result (55) in a less general but more direct way. This can be carried out by looking at the behavior of the eigenvalue Equation (14) near the other end of the interval, X~1. This is a non-trivial point, as the coefficient κ
2/H
0(Χ) diverges there. Usually, such singularities conceal, and with a bit of effort give easily away, a lot of important information about the solution. Moreover, as we learned explicitly through the steepest descent analysis in
Appendix C, the large κ asymptotics rely on the behavior of the solutions in the neighborhood of that singular point. This fact can be understood from the very form of the eigenvalue equation: the coefficient κ
2/H
0(Χ) is large either by κ being large or by X being close to 1.
Indeed for X~1, and focusing specifically on the steady-state initial condition, we may approximate H
0(X) = √(1 − X
2) = √2(1 − X). Then, Equation (14) reads
This equation is solved in terms of the Bessel function of the first kind (Arfken et al. [
26]):
where C is an integration constant. There is also a solution in terms of the Bessel function of order –2/3. But this solution is not zero at X = 1; hence, it is not consistent with the boundary condition Φ
κ(1) = 0, and hence the associated integration constant should vanish. The constant (2/3)2
3/4 = 1.12 appearing in (57) is an approximation of φ(1) in Equation (57), as a result of linearization of H
0(X). We now apply the solution (57) over the whole interval imposing the normalization Φ
κ(0) = 1 to obtain
We apply the boundary condition Φ′
κ(0) = 0. It can only be applied asymptotically for large κ. We obtain
which produces again a linear relationship for κ with respect to the counting index. This linear relationship is an approximate form of the one given in (42).
We now have all the information we need to calculate the asymptotics of d
κe
κ. The three integrals (51) can be easily estimated for large κ. This is carried out in
Appendix D, using the asymptotic forms of the Bessel functions and the condition (59). Hence, the result (55) is obtained through a different method. It is worth noting that the linearity of κ with respect to the counting index guaranteed also by (59) together with (55) is all we need to deduce the outflow rate early-time asymptotic in Equation (34). Hence, the near X~1 analysis is an alternative derivation of (34).