LBan-II: Difference between revisions
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using de Parseval theorem for the Fourier series | using de Parseval theorem for the Fourier series | ||
<center> <math> | <center> <math> | ||
w_2(t) = \sum_{q\ne 0} |\hat h_q(t)|^2 =\sum_{q\ne 0} (\hat h_q(t) \hat h_{-q}(t)) ^2 | w_2(t) = \sum_{q\ne 0} |\hat h_q(t)|^2 =\sum_{q\ne 0} \left(\hat h_q(t) \hat h_{-q}(t)\right) ^2 | ||
</math></center> | </math></center> | ||
In the last step we used that <math> | In the last step we used that <math> | ||
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\hat h_q(t)= \hat h_q(0) e^{-\nu q^2 t} +\int_0^t d s e^{- \nu q^2 (t-s)} \eta_q(s) | \hat h_q(t)= \hat h_q(0) e^{-\nu q^2 t} +\int_0^t d s e^{- \nu q^2 (t-s)} \eta_q(s) | ||
</math></center> | </math></center> | ||
Assume that the interface is initially flat, namely <math> \hat h_q(0) =0 </math>. Show that | * Assume that the interface is initially flat, namely <math> \hat h_q(0) =0 </math>. Show that | ||
<center> <math> | <center> <math> | ||
\langle \hat h_q(t) \hat h_{-q}(t) \rangle =\begin{cases} | \langle \hat h_q(t) \hat h_{-q}(t) \rangle =\begin{cases} | ||
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\end{cases} | \end{cases} | ||
</math></center> | </math></center> | ||
* the width square is a random variable and we can compute its mean: | * the width square is a random variable and we can compute its mean: | ||
<center> <math> | <center> <math> | ||
w_2(t) = \sum_{q\ne 0} | \langle w_2(t)\rangle = \sum_{q\ne 0} \dfrac{T(1 - e^{-2\nu q^{2}t})}{L \nu q^{2}} | ||
</math></center> | </math></center> | ||
and the displacement of a point of the interface that we tagg | and the displacement of a point of the interface that we tagg | ||
<math> \langle h(r,t)^2\rangle = \sum_q \langle \hat h_q(t) \hat h_{-q}(t) \rangle </math>. Comment about the roughness and the short times growth. | <math> \langle h(r,t)^2\rangle = \sum_q \langle \hat h_q(t) \hat h_{-q}(t) \rangle </math>. Comment about the roughness and the short times growth. |
Revision as of 18:40, 25 August 2025
Introduction: Interfaces and Directed Polymers
The physical properties of many materials are governed by manifolds embedded in them. Examples include: dislocations in crystals, domain walls in ferromagnets or vortex lines in superconductors. We fix the following notation: - : spatial dimension of the embedding medium – : internal dimension of the manifold – : dimension of the displacement (or height) field
These satisfy the relation:
We focus on two important cases:
Directed Polymers (d = 1)
The configuration is described by a vector function: , where is the internal coordinate. The polymer lives in dimensions.
Examples: vortex lines, DNA strands, fronts.
Although polymers may form loops, we restrict to directed polymers, i.e., configurations without overhangs or backward turns.
Interfaces (N = 1)
The interface is described by a scalar height field: , where is the internal coordinate and represents time.
Examples: domain walls and propagating fronts
Again we neglect overhangs or pinch-off: is single-valued
Note that using our notation the 1D front is both an interface and a directed polymer
Thermal Interfaces
- The dynamics is overdamped, so that we can neglect the inertial term.
The Langevin equation of motion is
The first term is the elastic force trying to smooth the interface, the mobility is the inverse of the viscosity. The second term is the Langevin noise. It is Guassian and defined by
The symbol indicates the average over the thermal noise and the diffusion constant is fixed by the Einstein relation . We set
The potential energy of surface tension ( is the stiffness) can be expanded at the lowest order in the gradient:
Hence, we have the Edwards Wilkinson equation:
Scaling Invariance
The equation enjoys of a continuous symmetry because and cannot be distinguished. This is a condition of scale invariance:
Here are the dynamic and the roughness exponent respectively. From dimensional analysis
From which you get in any dimension and a rough interface below with .
Width of the interface
Consider a 1-dimensional line of size L with periodic boundary conditions. We consider the width square of the interface
It is useful to introduce the Fourier modes:
Here and recall . using de Parseval theorem for the Fourier series
In the last step we used that .
Solution in the Fourier space
show that the EW equation writes
The solution of this first order linear equation writes
- Assume that the interface is initially flat, namely . Show that
- the width square is a random variable and we can compute its mean:
and the displacement of a point of the interface that we tagg
. Comment about the roughness and the short times growth.