\documentclass[reqno]{amsart}
\usepackage{hyperref}

\AtBeginDocument{{\noindent\small
Eighth Mississippi State - UAB Conference on Differential Equations and
Computational Simulations.
{\em Electronic Journal of Differential Equations},
Conf. 19 (2010),  pp. 221--233.\newline
ISSN: 1072-6691. URL: http://ejde.math.txstate.edu or http://ejde.math.unt.edu
\newline ftp ejde.math.txstate.edu}
\thanks{\copyright 2010 Texas State University - San Marcos.}
\vspace{9mm}}

\begin{document} \setcounter{page}{221}
\title[\hfilneg EJDE-2010/Conf/19/\hfil Nonlinear stochastic heat equations]
{Nonlinear stochastic heat equations with cubic nonlinearities
and additive Q-regular noise in $\mathbb{R}^1$}

\author[H. Schurz\hfil EJDE/Conf/19 \hfilneg]
{Henri Schurz}

\address{Henri Schurz \newline
Department of Mathematics\\
Southern Illinois University, Carbondale (SIUC) \\
Carbondale, IL 62901-4408, USA}
\email{hschurz@math.siu.edu}

\thanks{Published September 25, 2010.}
\subjclass[2000]{34F05, 35R60, 37H10, 37L55,  60H10, 60H15, 65C30}
\keywords{Semilinear stochastic heat equations; cubic nonlinearities; 
\hfill\break\indent 
additive noise;  homogeneous boundary conditions; approximate strong solution; 
\hfill\break\indent
Fourier expansion; SPDE; existence; uniqueness; energy; Lyapunov functionals; 
\hfill\break\indent 
numerical methods; consistency; stability}

\begin{abstract}
 Semilinear stochastic heat equations perturbed by cubic-type
 nonlinearities and additive space-time noise with homogeneous
 boundary conditions are discussed in $\mathbb{R}^1$.
 The space-time noise is supposed to be Gaussian in time and
 possesses a Fourier expansion in space along the eigenfunctions of
 underlying Lapace operators.
 We follow the concept of approximate strong (classical) Fourier
 solutions.  The existence of unique continuous $L^2$-bounded
 solutions is proved. Furthermore, we present a procedure for
 its numerical approximation  based on nonstandard methods
 (linear-implicit) and justify  their stability and consistency.
 The behavior of related total energy  functional turns out to be
 crucial in the presented analysis.
\end{abstract}

\maketitle
\numberwithin{equation}{section}
\newtheorem{theorem}{Theorem}[section]
\newtheorem{lemma}[theorem]{Lemma}
\newtheorem{remark}[theorem]{Remark}

\section{Introduction}\label{sec1}

Consider semilinear stochastic heat equations with cubic-type
nonlinearities
\begin{equation} \label{eqn1}
\begin{gathered}
\frac{du}{dt}  =  \sigma^2 \Delta u + B(u) + G(u)
\frac{dW(t,x)}{dt}\\
u=u(t,x),\quad  0 < x < L,\; t \ge 0
\end{gathered}
\end{equation} perturbed by additive space-time random noise $W$ which is
supposed to be Gaussian in time and possesses a Fourier expansion
in terms of the eigenfunctions of the Laplace operator $\Delta$
in $\mathbb{R}^1$. The objective of this paper is to discuss
properties of its strong Fourier-type solutions $u=u(t,x)$ and its
numerical approximations by appropriate truncation of its Fourier
series and nonstandard methods to integrate them numerically in
time.

Analytical aspects of solvability of  equations \eqref{eqn1} with
Lipschitz-continuous $B$ and $G$ are discussed by several authors.
For example, see  Bensoussan \& Temam (1972), Pardoux (1975/79),
Walsh (1984/86), DaPrato \& Zabzcyk (1992), Greksch \& Tudor
(1996), among
many others.
Moreover, equations with monotone $B$ are treated in Pardoux
(1979), Bessaih \& S. (2005, JCAM), S. (2007, JMAA). Not so much
known is for equations with cubic-type $B(u)=u (a_1 - a_2
\|u\|_{L^2}^2)$ with real parameters $a_2>0$ and $a_1$. Such
equations occur in neurophysiological modeling of large nerve cell
systems with action potential $B$ in mathematical biology (see
also remarks in Walsh (1984/86)). For example, there are
biochemical models of the form \eqref{eqn1} to calculate the flow
of the electric current and voltage along active neuronal fibres
(neurites) in computational neurosciences (Recall that neuronal
fibres are composed of segments with dendritic membranes with
voltage-dependent capacitances and resistance, equipped with
voltage-gated ion channels). For more details, see Hodgkin and
Rushton (1946), Koch (1999), Koch and Segev (1998), Stuart and
Sakmann (1994), Tuckwell and Walsh (1983). Especially, we shall
treat here the most biologically relevant one-dimensional special
case
\begin{equation}\label{eqnSHeat}
du =  [\sigma^2 \frac{\partial^2 u}{\partial x^2} + u \Big(a_1 - a_2
\|u\|_{L^2}^2\Big)]dt
+ b \,dW(t,x)
\end{equation}
where the norm $\|u\|_{L^2}$ is taken with respect to the $L^2$-space
$L^2(0,L)$ and $b \in \mathbb{R}^1$ is an overall noise
intensity parameter. Homogenous
boundary conditions (BC)
\begin{equation} \label{BC}
 u(t,0) = u(t,L) = 0 \quad \forall t \ge 0
\end{equation}
and $L^2(0,L)$-integrable initial conditions (IC)
\begin{equation} \label{IC}
 u(0,x)=u_0(x) \quad \forall x \in (0,L)
\end{equation}
are opposed on the solutions $u$ throughout the paper. Moreover,
the equation \eqref{eqnSHeat} is driven by space-time $Q$-regular
noise
\begin{equation} \label{NoiseCondition}
W(t,x)  =  \sum^{+\infty}_{n=1} \alpha_n W_n (t)
\underbrace{\sqrt{\frac{2}{L}} \sin\big(\frac{n \pi
x}{L}\big)}_{=  e_n (x)}
\end{equation}
with i.i.d. Wiener processes $W_n$ with $W_n(t) \in {\mathcal N}(0,t)$,
where
\begin{equation} \label{TraceCondition}
\operatorname{trace} (Q)  =  \sum^{+\infty}_{n=1} \alpha_n^2 < + \infty .
\end{equation}
Note that
\begin{equation} \label{en}
e_n(x)  =  \sqrt{\frac{2}{L}} \sin \big(\frac{n \pi x}{L}\big),
\quad n \ge 1
\end{equation}
are the eigenfunctions of the Laplace operator $\Delta$ in
$\mathbb{R}^1$, $\Delta e_n = - (n^2 \pi^2 / L^2) e_n$, and they form
an orthonormal system in $L^2(0,L)$; i.e.,
$$
\langle e_n,e_k\rangle_{L^2(0,L)}  =
\int^L_0 e_n (x) e_k (x) dx = \delta_{n,k}= \begin{cases}
  1 &\text{if }n = k \\
  0 &\text{if }n \neq k
\end{cases}
$$
where $\delta_{n,k}$ is the Kronecker symbol.
 Moreover, it is not too restrictive that the noise $W$ has
an eigenfunction expansion \eqref{NoiseCondition} in the separable
Hilbert space $L^2([0,+\infty)\times [0,L])$ with respect to the
same eigenfunctions as the underlying Laplace operator with
homogeneous boundary conditions \eqref{BC}. This is due to the
perturbations by additive space-time noise (Gaussian in time), the
specific Dirichlet boundary conditions \eqref{BC} and the other
part of the eigenbasis determined by $\cos ( n \pi x / L)$ and
spanning the space $L^2(0,L)$ is orthogonal to $e_n, n \ge 1$
(while forming together a complete orthonormal system in
$L^2(0,L)$).

The paper is organized as follows. After this introduction, we
begin with the verification of the unique existence of strong
global solutions with not more than exponentially increasing
second moments in time in Section 2. Section 3 provides a
truncation procedure of Fourier series solutions approximating
those strong solutions. There a finite-dimensional system of
nonlinear stochastic ODEs determining its Fourier coefficients
$c_k(t)$ is derived. The unique existence of strong solutions of
those systems is justified by estimating the truncated total
energy. Section 4 reports on the total expected energy of the
original infinite-dimensional stochastic system \eqref{eqnSHeat}.
We are going to show that the energy functional is linearly
bounded in time in the mean sense, provided that the initial
Fourier coefficients $c_k(0)$ are mean square summable. In the
final Section 5 we suggest $3$ numerical methods (explicit and
implicit difference methods) to find those Fourier coefficients.

\section{Existence of Unique Approximate Strong Solutions}\label{sec2}

Indeed we may verify the existence of a.s. unique, approximately
strong global solution with finite second moments. For this purpose,
we exploit the technique of monotonicity of semilinearities.
Recall the concept of approximate strong solution from \cite{schurz07d}.

To be more self-explanatory, we consider the following definition
of strong solution concepts. Let
$(\Omega, {\mathcal F}, ({\mathcal F}_t)_{0 \le t \le
T},
\mathbb{P})$ be a complete probability space equipped with a nondecreasing
filtration
$({\mathcal F}_t)_{0 \le t \le T})$. Suppose that $H$ is a Hilbert space
and $A$ a linear operator of $H$ with domain $D(A)$.
Then, an $H$-valued stochastic process
$u=(u(t))_{0 \le t \le T}$ is said to be a {\bf strong solution}
of the SPDE
\begin{equation} \label{eqSPDE}
du  =  [A(t) u + B(u)]dt + G(u) dW
\end{equation}
on $([0,T]\times H \times \Omega, {\mathcal F},
({\mathcal F}_t)_{0 \le t \le T}, \mathbb{P})$ if and only if
\begin{itemize}
\item[(a)] $u$ is an element of the class of progressively measurable
processes with values in $H$ (which is also closed with respect to
progressively measurable versions),

\item[(b)] $u(t) \in D(A(t)) \cap D(B(t,\cdot)) \cap D(G(t,\cdot))$
($\mathbb{P}$-almost surely)
for all $t \in [0,T]$ (almost
everywhere) and $A(.)u(.) \in L^1_{\rm loc} ([0,T],H)$,

\item[(c)] and, for every $0 \le s \le t \le T$, we have ($\mathbb{P}$-almost
surely)
$$ u(t) = u(s) + \int^t_s \Big[ A(r) u(r) + B(r,u) \Big] dr + \int^t_s
G(r,u) dW(r) .
$$
\end{itemize}
Moreover, an $H$-valued stochastic process
$u=(u(t))_{0 \le t \le T}$ is called an {\bf approximate strong
solution} of \eqref{eqSPDE} on
$([0,T]\times H \times \Omega, {\mathcal F},
({\mathcal F}_t)_{0 \le t \le T}, \mathbb{P})$ if there is a sequence of
stopping times $\tau_r(t)$ with $\lim_{r \to +\infty} \tau_r(t)=t$
($\mathbb{P}$-almost surely) such that $u_r=(u(\tau_r(t)))_{0 \le t \le
T}$ is a strong solution of \eqref{eqSPDE} on
$([0,\tau_r(T)]\times H \times \Omega, {\mathcal F}, ({\mathcal
F}_t)_{0 \le t \le T}, \mathbb{P})$ for all $r > 0$ and $u = \lim_{r \to
+ \infty} u_r \in H$ ($\mathbb{P}$-almost surely). Besides, the process
$u_r=(u_r(t))_{0 \le t \le T}$ is said to be a {\bf localized}
(strong) solution of \eqref{eqSPDE}. There are other solution
concepts such as mild, weak and evolution solutions. For more
details and relations between those concepts, see Grecksch and
Tudor \cite{greksch&tudor95}. We shall devote our studies to the
concept of approximate strong solutions here.

The existence and uniqueness of strong solutions of \eqref{eqSPDE}
is well-known when all operators are globally Lipschitz-continuous
on $H$. In this case, a stochastic localization procedure is not
needed. For example, see Bensoussan and Temam
\cite{bensoussan&temam72}, Da Prato and Zabzcyk
\cite{daprato&zabzcyk92,daprato&zabzcyk96},
Grecksch and Tudor \cite{greksch&tudor95}, %%Kotelenez \cite{kotelenez82},
Rozovski{i} \cite{rozovski90} or Pardoux \cite{pardoux75,pardoux79}. %%or Tudor \cite{tudor88}.
Their main results imply the existence of local pathwise unique
continuous (strong) solutions $u_r \in H$ of \eqref{eqSPDE} on
balls
\begin{equation}
\label{ball}
K_r  =  \{ u \in H : \|u\|_H < r \} .
\end{equation}
Thus, the remaining important question is how we can guarantee
that $u$ cannot explode as $r$ tends to $+\infty$ and stays in
$H$, i.e. our aim is to establish an existence and uniqueness
result of global pathwise unique continuous (strong) solutions $u$
of \eqref{eqn1} under conditions weaker than global
Lipschitz-continuity such as local Lipschitz-continuity of
nonlinearities $B$ on the Hilbert-space $H=L^2([0,T]\times[0,L])$.

Let $\mathcal{B}(S)$ be the $\sigma$-algebra of all Borel sets of inscribed
set $S$ and $\mathcal{F}_t = \sigma (W_j(s) : s \le t, j \in \mathbb{N})$ the
naturally generated $\sigma$-algebra belonging to the Wiener
processes $W_j$ and forming the underlying filtration.

\begin{theorem}\label{thm1}
Assume that the assumptions in Section \ref{sec1} are satisfied
together with
$$
\mathbb{E} \|u(0,\cdot)\|_H^2 < +\infty
$$
for $\mathcal{B} (0,L) \times \mathcal{F}_0$-measurable initial data
$u(0,\cdot) \in H$,
where $H=L^2([0,L])$.
Then the approximate strong, global solution of \eqref{eqnSHeat}
exist and has uniformly bounded second moments on any finite-time
interval $t \in [0,T]$. More precisely,
$$
 \forall T < +\infty \; \exists K_0, K_1 \ge 0 \; \forall
0 \le t \le T \; :
\; \mathbb{E} \|u(t,\cdot)\|_H^2 \le (\mathbb{E} \|u(0,\cdot)\|_H^2 + K_0)
\exp (K_1 T) .
$$
\end{theorem}

\begin{remark}\label{rem1} \rm
In fact, if $\sigma^2 \pi^2 > L^2 a_1$, we shall be able to improve
qualitatively these estimates of second moments to linearly bounded
ones (in time)
$$
\forall T < +\infty \; \exists c \ge 0 \; \forall
0 \le t \le T \; : \;
\mathbb{E} \|u(t,\cdot)\|_H^2 \le \mathbb{E} \|u(0,\cdot)\|_H^2 + c t
$$
with universal constant $c$ (depending on diverse parameters)
by using the energy estimates from Section \ref{sec4}.
\end{remark}

\begin{proof}
 First, note that the unique localized (strong) solution $u_r$ of SPDE
\eqref{eqnSHeat} with local Lipschitzian coefficients exists. This
fact we know from \cite{daprato&zabzcyk92}, \cite{bensoussan90} or
\cite{greksch&tudor95}. Now, apply Lemma \ref{lem1} from below and
check that the conditions of Theorem 3 from \cite{schurz07d} (p.
339) are fulfilled. Thus, the unique, approximate strong,
continuous solution $u$ to SPDE \eqref{eqnSHeat} exists and its
second moments $\mathbb{E} \|u(t,\cdot )\|_H^2$ are exponentially bounded
in time. This confirms the conclusion.
\end{proof}

\begin{lemma} \label{lem1}
Let $H$ be a Hilbert space equipped with the real-valued scalar
 product
$\langle .,.\rangle_H$ and naturally induced norm
$\|u\|_H = \sqrt{\langle u,u\rangle_H}$.
Then, for all $a_2 \ge  0$,
the mapping $u \in H \longmapsto B(u) = (a_1-a_2 \|u\|_H^2 ) u$
satisfies the angle condition on $H$, i.e., for all $ \gamma \ge 0$
and all $u,v \in H$, we have
\begin{align*}
F(u,v)&:= \langle B(u)-B(v),u-v\rangle_H \\
& \le  \Big(a_1 - a_2 \frac{\|u\|_H^2+\|v\|_H^2}{2}
\Big) \|u-v\|_H^2 \le a_1 \|u-v\|_H^2
\end{align*}
and
\[
\langle B(u),u\rangle_H  \le  \Big(a_1 - a_2 \frac{\|u\|_H^2}{2} \Big)
\|u\|_H^2 \le a_1 \|u\|_H^2 .
\]
\end{lemma}

\begin{proof} For $u, v \in H$, define $f(u):=\|u\|^2_H u$ and
$$
g(u,v):= <f(u)-f(v),u-v\rangle_H \ge \frac{\|u\|_H^2+\|v\|_H^2}{2} \|u-v\|_H^2 .$$
First, note that the above defined $g$ is symmetric, i.e. $g(u,v)=g(v,u)$
for all $u,v \in H$. Thus, $2 g(u,v) = g(u,v) + g(v,u)$. Second, we find
that
\begin{align*}
g(u,v) &=  \langle \|u\|_H^2 u - \|u\|_H^2 v + \|u\|_H^2 v
- \|v\|_H^2 v, u-v \rangle_H\\
&=  \|u\|^2_H \langle u-v,u-v\rangle_H
+ \Big( \|u\|_H^2 - \|v\|_H^2 \Big) \langle v,u-v\rangle_H .
\end{align*}
for all $u , v \in H$. Third, both findings imply that
\[
2 g(u,v) = \Big( \|u\|_H^2 + \|v\|_H^2 \Big) \|u-v\|_H^2
 + \Big( \|u\|_H^2 -
\|v\|_H^2 \Big) \cdot \Big( \|u\|_H^2 - \|v\|_H^2 \Big) .
\]
Note that the last product term is always positive-definite. Consequently,
we have %%may conclude that
\begin{equation} \label{est-g}
g(u,v)  \ge  \frac{\|u\|_H^2+\|v\|_H^2}{2} \|u-v\|_H^2
\end{equation}
for all $u, v \in H$. Hence, $f$ is increasing (In fact, $g(u,v) = 0$
or $g(u,v)$ is equal to the right side of last inequality if and only if
 $u = v$ in $H$).
Now, we find that
$$ B(u) = a_1 u - a_2 f(u) .$$
Hence, we have
$$
F(u,v)=\langle B(u)-B(v),u-v\rangle_H = a_1 \|u-v\|^2_H - a_2 g(u,v) .
$$
Finally, applying the estimate \eqref{est-g} to the above
expression of $F$ confirms that
\begin{gather}
\label{angle-F}
F(u,v)  \le  \Big(a_1 - a_2 \frac{\|u\|_H^2+\|v\|_H^2}{2}
\Big) \|u-v\|_H^2 \le a_1 \|u-v\|_H^2,\\
\label{angle-B}
\langle B(u),u\rangle_H  \le  \Big(a_1 - a_2 \frac{\|u\|_H^2}{2} \Big) \|u\|_H^2
\le a_1 \|u\|_H^2
\end{gather}
since $a_2 \ge 0$. In passing, we note that the relation
\eqref{angle-B} is obtained directly from \eqref{angle-F} by
setting $v=0$. Thus, the proof of Lemma \ref{lem1} is complete.
\end{proof}

\section{Fourier-Series Solutions}\label{sec3}

By the principle of linear superposition (LSP), it is clear that
the Fourier series
\begin{eqnarray}
\label{FourierSeries}
u(t,x) =  \sum^{+\infty}_{n=1} c_n(t) e_n(x), \quad
t \ge 0, \;0 \le x \le L
\end{eqnarray}
forms a strong solution of \eqref{eqnSHeat}, provided that this
series converges and $c_n(0)$ are chosen such that the initial
conditions (IC) are satisfied. This series is truncated as
\begin{equation} \label{TruncatedFourierSeries}
u_N(t,x) =  \sum^{N}_{n=1} c_n(t) e_n(x),\quad t \ge 0,\;
 0 \le x \le L
\end{equation}
which also form strong solutions of \eqref{eqnSHeat}.

\begin{theorem} \label{thm2}
 The Fourier coefficients of \eqref{FourierSeries}
satisfy ($\mathbb{P}$-a.s.) the infinite-di\-mensional system of ordinary
SDEs
\begin{equation} \label{Fourier-ck}
dc_k =  \Big[ - \sigma^2 \frac{k^2\pi^2}{L^2}
+ a_1 - a_2 \sum^{+\infty}_{n=1} c^2_n \Big] c_k dt + b_k dW_k
\end{equation}
for $k = 1, 2, \dots$, where $b_k = b \alpha_k$.
\end{theorem}

\begin{proof}
First, plug the Fourier series \eqref{FourierSeries} into the SPDE
\eqref{eqnSHeat}. So, one arrives at
$$
du(t,x) = \sum^\infty_{n=1} c_n(t) e_n(x) \Big[- \sigma^2 \frac{n^2\pi^2}{L^2}
+ a_1 - a_2 \sum^\infty_{k=1}
[c_k(t)]^2\Big] dt + b \sum^\infty_{n=1}
\alpha_n e_n(x) dW_n(t)
$$
for $0 \le t \le T$, $0 \le x \le L$. Second, multiply this
differential identity by the eigenfunctions $e_k(x)$. Third,
integrate the obtained identity with respect to the
space-coordinate $x$ over $[0,L]$. Thus, for all $k \in \mathbb{N}$, we
encounter
\begin{align*}
&\int^L_0 du(t,x) e_k(x) dx \\
& =  \sum^\infty_{n=1} dc_n(t) \int^L_0 e_n (x) e_k(x) dx \\
&= \sum^\infty_{n=1} dc_n(t) \delta_{n,k}
 =  dc_k(t)\\
&=  \sum^\infty_{n=1} c_n(t) \int^L_0 e_n(x) e_k(x) dx
  \Big[-\sigma^2 \frac{n^2\pi^2}{L^2}
+ a_1 - a_2 \sum^\infty_{k=1} [c_k(t)]^2\Big] dt \\
&  \quad + b \sum^\infty_{n=1} \int^L_0 e_n(x) e_k(x) dx
 \alpha_n dW_n(t) \\
&=  c_k \Big[ -\sigma^2 \frac{n^2\pi^2}{L^2} + a_1
 - a_2 \sum^\infty_{k=1}
[c_k(t)]^2\Big] dt + b \alpha_k dW_k(t)
\end{align*}
for $0 \le t \le T$. Note that we may exchange differentiation and
integration in the above computations since we know that the
unique strong solution $u$ of \eqref{eqnSHeat} with
$$
\|u(t,\cdot)\|_H^2 = \sum^\infty_{k=1} [c_k(t)]^2 < + \infty
$$
and continuous Fourier coefficients $c_k(t)$ exists
for all $0 \le t \le T$ (which implies that all terms are finite
and mean square summable). Consequently, Theorem \ref{thm2} is proven.
\end{proof}

\begin{remark}\label{rem2} \rm
The truncated Fourier solutions $u_N$ have Fourier coefficients $c_k$
which can be approximated by the truncated finite-dimensional system of
ordinary SDEs
\begin{equation} \label{TruncatedFourier-ck}
dc_k =  \Big[- \sigma^2 \frac{k^2\pi^2}{L^2}
 + a_1 - a_2 \sum^{N}_{n=1} c^2_n  \Big] c_k dt + b_k dW_k
\end{equation}
for $k = 1, 2, \dots$, where $b_k = b \alpha_k$. Notice also that, for
stochastic systems with additive noise, the stochastic integration
leads to the same type of stochastic integral
(i.e. It\^o, Stratonovich, $\alpha$--
and quadrature-integrals are all the same, see \cite{schurz06b},
\cite{schurz09a}).
That is why we have not mentioned earlier in which sense we
interpret the
stochastic integration (as it does not matter in our calculations).
\end{remark}

\section{Total Energy Evolution}\label{sec4}

For the case of sufficiently strong diffusion with
$\sigma^2 \pi^2 > L^2 a_1$, we investigate the behavior of related
energy functional. The total energy $\mathcal{E}$ of system \eqref{eqnSHeat}
at time $t\ge 0$ is defined
\begin{equation} \label{TotalEnergy}
\mathcal{E} (t) =  \frac{\sigma^2}{2} \|u_x(t,\cdot)\|^2_{L^2} -
\frac{a_1}{2} \|u(t,\cdot)\|^2_{L^2} + \frac{a_2
}{4} \|u(t,\cdot)\|^4_{L^2} .
\end{equation}
This energy functional is indeed nonnegative and finite (a.s.) as
one can see from the following theorem. For its proof, we express
this functional in terms of its Fourier coefficients $c_k$ by
\begin{equation} \label{Vck}
V(t) := V(c_k(t):k \in \mathbb{N}) =   \frac{1}{2} \sum^{+\infty}_{n=1}
[\sigma^2 \frac{n^2\pi^2}{L^2}-a_1]c_n^2(t) + \frac{a_2}{4}
\Big(\sum^{+\infty}_{n=1} c_n^2(t)\Big)^{2}
\end{equation}
for $t \ge 0$. Note that $V \ge 0$ for all sequences
$(c_k(t))_{k \in \mathbb{N}}$ under $\sigma^2 \pi^2 > L^2 a_1$.
Moreover, under $\sigma^2 \pi^2 > a_1 L^2$
and $a_2 \ge 0$, $V$ acts as a Lyapunov functional. Besides,
$\mathcal{E} (t) = V(t)$ for all $t \ge 0$.
Furthermore, this energy functional directly relates to the total
temperature distribution absorbed (and stored) by the underlying
physical system over time $t \in [0,T]$.

\begin{theorem} \label{thm3}
Assume that $e(0) = \mathbb{E} V(c_k(0):k \in \mathbb{N}) < + \infty$,
$\sigma^2 \pi^2 \ge L^2 a_1$ and
$\operatorname{trace}(Q)=\sum^\infty_{n=1} \alpha_n^2 < +\infty$.
Then, the total expected energy of the original system
\eqref{eqnSHeat} is linearly bounded in time by
\begin{align*}
e(t) &= \mathbb{E} V(c_k(t):k \in \mathbb{N}) \\
& \le  e(0) + \Big[b^2 \sum^\infty_{n=1} \alpha_n^2
\Big(\frac{\sigma^2n^2\pi^2}{L^2}-a_1\Big)+a_2
(b^2\beta^2)^{3/2}
\Big(\frac{1}{12a_2}\Big)^{1/2}
\frac{5}{6} \Big] t
\end{align*}
where
$$
\beta^2 = \sum^\infty_{n=1} \alpha_n^2 + 2 \max_{n \in \mathbb{N}} \alpha_n^2.
$$
\end{theorem}

\begin{remark}\label{rem3} \rm
Therefore, the quadratic magnitude of the temperature $u$ averaged
in space cannot grow faster than a linear curve in time $t$.
\end{remark}

\begin{proof}[Proof of Theorem \ref{thm3}]
Consider the energy of the truncated system
\eqref{TruncatedFourier-ck} given by
\begin{equation} \label{VNck}
V_N(t) := V_N(c_k(t):k=0,1,\dots,N)
=  \frac{1}{2} \sum^{N}_{n=1} [\sigma^2
\frac{n^2\pi^2}{L^2}-a_1]c_n^2(t) + \frac{a_2}{4} \Big(\sum^{N}_{n=1}
c_n^2(t)\Big)^{2}
\end{equation}
for $t \ge 0$. Now, apply Dynkin formula (see \cite{dynkin65},
\cite{hasminskii69}, cf. also It\^o Formula in \cite{arnold74}) to
the functional $e_N(t) = \mathbb{E} [V_N(t)]$ with coefficients $c_k$
satisfying \eqref{TruncatedFourier-ck}. For this purpose, compute
its infinitesimal generator
$$
\mathcal{L} V_N = \Big( \sum^N_{n=1} \Big[-\frac{\sigma^2 n^2 \pi^2}{L^2} + a_1 - a_2
\sum^N_{n=1} c_k^2 \Big] c_n \frac{\partial}{\partial c_n}
+ \frac{b^2}{2} \sum^N_{n=1} \alpha_n^2
\frac{\partial^2}{\partial c_n^2} \Big) V_N .
$$
Thus, one arrives at the estimate
\begin{eqnarray*}
\mathcal{L} V_N &\le & b^2 \sum^\infty_{n=1} \alpha_n^2
\Big(\frac{\sigma^2n^2\pi^2}{L^2}-a_1\Big)+a_2
(b^2\beta_N^2)^{3/2}
\big(\frac{1}{12a_2}\big)^{1/2}
\frac{5}{6}
\end{eqnarray*}
where
$$
\beta_N^2 = \sum^N_{n=1} \alpha_n^2
+ 2 \max_{n=1,2,\dots,N} \alpha_n^2.
$$
Consequently, Dynkin formula says that
\begin{align*}
e_N(t)
&=  \mathbb{E} [V_N(c_k(t):k=1,2,\dots,N)] \\
&=  \mathbb{E} [V_N(c_k(0):k=1,2,\dots,N)]
+ \mathbb{E} \Big[ \int^t_0 \mathcal{L} V_N(c_k(s):k=1,2,\dots,N) ds \Big]\\
& \le  e(0) + \Big[b^2 \sum^N_{n=1} \alpha_n^2
\Big(\frac{\sigma^2n^2\pi^2}{L^2}-a_1\Big)+a_2
(b^2\beta_N^2)^{3/2}
\left(\frac{1}{12a_2}\right)^{1/2} \frac{5}{6} \Big] t
\end{align*}
for $t \ge 0$. Since $e_N \ge 0$ is increasing in $N$ and uniformly
bounded in time $t$ for any $t \in [0,T]$, we know that the limit
$\lim_{N \to +\infty} e_N(t)$ exists,
$e(t)=\lim_{N \to +\infty} e_N(t)$ and
\[
0 \le e(t) \le  e(0) + \Big[b^2 \sum^\infty_{n=1} \alpha_n^2
\Big(\frac{\sigma^2n^2\pi^2}{L^2}-a_1\Big)+a_2
(b^2\beta^2)^{3/2}
\big(\frac{1}{12a_2}\big)^{1/2}
\frac{5}{6} \Big] t
\]
for $t \in [0,T]$, as long as $e(0)<+\infty$,
$\sigma^2 \pi^2 \ge L^2 a_1$, and
$\operatorname{trace}(Q)=\sum^\infty_{n=1} \alpha_n^2 < +\infty$.
This completes the proof of Theorem \ref{thm3}.
\end{proof}

\section{Numerical Methods for Fourier Coefficients $c_k$}\label{sec5}

Recall the form of Fourier solutions $u$ and its approximate Fourier
solutions $u_N$ given by
$$
u_N(t,x) = \sum^N_{k=1} c_k(t) \sqrt{\frac{2}{L}}
\sin \big(\frac{k \pi x}{L}\big)
$$
with its coefficients $c_k$ satisfying
\eqref{TruncatedFourier-ck} (see Remark \ref{rem2}). An explicit
solution of the system of nonlinear equations for $c_k$ is not
known under the presence of nonlinearities with $a_2>0$. Thus, one
has to resort to numerical approximations. For $k \in \mathbb{N}$, set
$$ b_k = b \alpha_k .$$
Along partitions
$$
t_0 = 0 < t_1 < t_2 < \dots < t_{n_T} = T
$$
of time-intervals $[0,T]$
with current step sizes $h_n = t_{n+1} - t_n > 0$, consider the
forward Euler method (FEM) for $c_k$,
\begin{equation} \label{FEM}
c_k (n+1) =  c_k(n) + h_n c_k(n) \Big(-\sigma^2\frac{k^2\pi^2}{L^2}
+ a_1 - a_2\sum^N_{l=1}[c_l(n)]^2\Big) + b_k \Delta W_n^k
\end{equation}
where
$$
\Delta W_n^k = W_k (t_{n+1}) - W_k(t_n) \in {\mathcal N}(0,h_n), \quad
h_n = t_{n+1}-t_n .
$$
An alternative to is given by the backward Euler method (BEM)
\begin{equation} \label{BEM}
c_k (n+1) =  c_k(n) + h_n c_k(n+1)\Big(-\sigma^2 \frac{k^2\pi^2}{L^2}
+ a_1 - a_2 \sum^N_{l=1}[c_l(n+1)]^2\Big)
+ b_k \Delta W_n^k
\end{equation}
where
$$
\Delta W_n^k = W_k (t_{n+1}) - W_k(t_n) \in {\mathcal N}(0,h_n), \quad
h_n = t_{n+1}-t_n .
$$
Our favorite choice is the linear-implicit Euler-type method (LIM)
\begin{equation} \label{LIM}
c_k (n+1) =  c_k(n) + h_n c_k(n+1)\Big(-\sigma^2 \frac{k^2\pi^2}{L^2}
+ a_1 - a_2 \sum^N_{l=1}[c_l(n)]^2\Big) + b_k \Delta W_n^k
\end{equation}
where
$$
\Delta W_n^k = W_k (t_{n+1}) - W_k(t_n) \in {\mathcal N}(0,h_n), \quad
h_n = t_{n+1}-t_n .
$$
The disadvantage of FEM \eqref{FEM} is their
lack of stability (in fact substability) (see
\cite{schurz96a,schurz97,schurz99a,schurz99b,schurz02}) and
monotonicity deficits. Moreover, global convergence and its rates
have not been shown for nonlinear equations with nonLipschitzian
coefficients. The advantage of methods \eqref{BEM} and \eqref{LIM}
is seen with respect to their good stability and moment
dissipativity behavior, and they keep some monotonicity properties
(see \cite{schurz96a,schurz97,schurz99a,schurz99b,schurz02}).
Besides, convergence has been shown for some nonlinear equations
with nonLipschitzian coefficients
(e.g. see \cite{hu88,schurz06a}). A slight disadvantage of
methods \eqref{BEM} is
given by their superstable behavior and by the necessity to solve
locally implicit algebraic equations at each iteration step $n$.
The latter problem is more computationally efficiently solved by
our methods \eqref{LIM} where no implicit algebraic equations need
to be solved due to their linear-implicit character which can be
naturally managed in explicit representation form. Note that the
local solvability of those implicit algebraic equations exhibited
by methods \eqref{BEM} needs to be discussed and it would lead to
additional computational errors which could impact significantly
the accuracy of approximations in the course of numerical
integration.

\begin{theorem}[Explicit Representation + Stability of Methods (LIM)]
\label{thm4}
Suppose\\ that
$$
a_2 \ge 0, \quad \forall n \in \mathbb{N} : (a_1 - \sigma^2 \pi^2 / L^2 )
h_n < 1 .
$$
Then the method (LIM) governed by \eqref{LIM} has the nonexploding
explicit representation
\begin{equation} \label{explicitLIM}
c_k (n+1) =  \frac{c_k(n) + b_k \Delta W_n^k}{
1+h_n \Big(\sigma^2 \frac{k^2\pi^2}{L^2} - a_1 + a_2
\sum^N_{l=1}[c_l(n)]^2\Big)}
\end{equation}
where $n \in \mathbb{N}$, $b_k = b \alpha_k$ and
$\Delta W_n^k \in \mathcal{N} (0,h_n)$.
Moreover, if $\sigma^2 \pi^2 \ge a_1 L^2$, their second moments
 are linearly bounded in time $t$; i.e.,
\begin{equation}
\label{2ndMoments}
\mathbb{E} [c_k(n+1)]^2  \le  \mathbb{E} [c_k(n)]^2 + (b_k)^2 h_n
\le \mathbb{E} [c_k(0)]^2 + (b_k)^2 \; t_{n+1}
\end{equation}
for all $k = 1, 2, \dots, N$, where $n \in \mathbb{N}$. Hence, we have
in the limit (as both $N \to +\infty$ and $h_n \to 0+$)
\begin{equation} \label{sum2ndMoments}
\mathbb{E} [\|u(t_n,\cdot)\|^2_H]  =  \sum^\infty_{k=1}  \mathbb{E} [c_k(n)]^2
 \le  \sum^\infty_{k=1} \mathbb{E}
[c_k(0)]^2 + b^2 \sum^\infty_{k=1} \alpha_k^2 \; t_n
\end{equation}
which replicates the consistent estimate of second moments of
underlying exact solution $u$ in the course of integration, provided
that
$$
\frac{\sigma^2\pi^2}{L^2} \ge a_1, \quad
\mathbb{E} [\|u(0,\cdot)\|_H^2] = \sum^\infty_{k=1} \mathbb{E} [c_k(0)]^2 < +\infty, \quad
\sum^\infty_{k=1} \alpha_k^2 < +\infty.
$$
\end{theorem}

\begin{proof}
Suppose that $1 + h_n (\sigma^2 \pi^2 / L^2 - a_1) > 0$.
The explicit representation \eqref{explicitLIM} is finite and a
rather obvious result due to the linear-implicit character of
method \eqref{LIM}. It remains to consider the second moments
\begin{align*}
\mathbb{E} [c_k(n+1)]^2 &=
\mathbb{E} \Big[
\frac{c_k(n) + b_k \Delta W_n^k}{
1+h_n \Big(\sigma^2 \frac{k^2\pi^2}{L^2} - a_1 + a_2
\sum^N_{l=1}[c_l(n)]^2\Big)}
\Big]^2 \\
&=  \mathbb{E} \Big[\frac{[c_k(n)]^2 + 2 c_k(n) \Delta W_n^k + b_k^2 (\Delta
W_n^k)^2}{
\Big[1+h_n \Big(\sigma^2 \frac{k^2\pi^2}{L^2} - a_1 + a_2
\sum^N_{l=1}[c_l(n)]^2\Big)\Big]^2}
\Big]\\
&=  \mathbb{E} \Big[\frac{[c_k(n)]^2 + b_k^2 h_n}{
\Big[1+h_n \Big(\sigma^2 \frac{k^2\pi^2}{L^2} - a_1 + a_2
\sum^N_{l=1}[c_l(n)]^2\Big)\Big]^2}
\Big]
\end{align*}
since the increments $\Delta W_n^k = W_k(t_{n+1})-W_k(t_n) \in \mathcal{N}
(0,h_n)$ are independent (Here, note that we exploited a tower
property of conditional expectations). Now, suppose that $\sigma^2
\pi^2 \ge L^2 a_1 $ . In this case one can estimate these second
moments as stated by \eqref{2ndMoments}. Finally, the relation
\eqref{2ndMoments} is summed over $k$ to verify the claim
\eqref{sum2ndMoments} of Theorem \ref{thm4}.
\end{proof}

Recall the following definition (e.g. see
 \cite{schurz02,schurz06a}). Let $c_k^h$
denote the numerical approximation of the $k$-th Fourier coefficients $c_k$ along
partitions of fixed time-intervals $[0,T]$ of the form
$$ 0 = t_0 < t_1 < t_2 < \dots < t_n < \dots < t_{n_T} = T .$$
Then the numerical approximation $c^h=(c_k^h)_{k = 1,2,\dots,N}$ is said to be
{\bf mean consistent} with {\bf rate} $r_0$ iff there are a constant $C_0=C_0(T)$
and a positive continuous function $V$ (or functional) such that
$$
\forall n = 0, 1, 2, \dots, n_T-1 : \| \mathbb{E} [c(n+1)]
- \mathbb{E} [c^h(n+1)] \|_N \le
C_0 V(c(n)) h_n^{r_0}
$$
along any (nonrandom) partitions with sufficiently small step sizes
$h_n \le \delta \le 1$,
where $\|\cdot \|_N$ is the Euclidean vector norm in $\mathbb{R}^N$,
provided that one has nonrandom data
$c(n)=c^h(n)$. Moreover, the numerical approximation
$(c_k^h)_{k = 1,2,\dots,N}$ is said to be
{\bf $p$-th mean consistent} with {\bf rate} $r_p$ if and only if
there are a constant $C_p=C_p(T)$ and
a positive continuous function $V$ (or functional) such that
$$
\forall n = 0, 1, 2, \dots, n_T-1 : \left(\mathbb{E} \Big[\|c(t_{n+1})
 - c^h(n+1) \|_N^p\Big]\right)^{1/p}
\le C_p V(c(t_n)) h_n^{r_p}
$$
along any (nonrandom) partitions with sufficiently small step
sizes $h_n \le \delta \le 1$, where $\|\cdot \|_N$ is the
Euclidean vector norm in $\mathbb{R}^N$, provided that one has
nonrandom data $c(t_n)=c^h(n)$. Note that the choice of vector
norm $\|\cdot\|_N$ in $\mathbb{R}^N$ is not so essential for the
qualitative property of consistency due to the equivalence of all
vector norms in $\mathbb{R}^N$ (only the constants $C_p$ and
functional $V$ could differ for different norms).

\begin{theorem} \label{thm5}
The method (LIM) governed by \eqref{LIM} is mean
consistent with rate $r_0 = 1.5$ and $p$-th mean consistent with
rate $r_p = 1.0$, where $p \ge 1$.
\end{theorem}

\begin{proof}
Let $c^h$ be governed by the method \eqref{LIM}.
Suppose that we have nonrandom local initial data satisfying
$$
c(t_n)=c^h(n)
$$
along partitions $(t_n)_{n \in \mathbb{N}}$ of time-intervals $[0,T]$
with current step sizes $h_n =t_{n+1}-t_n \le 1$.
Let $\alpha = diag (\alpha_1, \alpha_2, \dots, \alpha_N)$ be the
diagonal matrix in $\mathbb{R}^{N \times N}$ with diagonal entries
$\alpha_k$ and $W$ the $N$-dimensional vector of the Wiener
processes $W_k$. Furthermore, define
\begin{gather*}
f_h(c^h(n)) =
\operatorname{diag}\bigg(\frac{-\sigma^2 \frac{k^2\pi^2}{L^2}
+ a_1 - a_2 \sum^N_{l=1}[c^h_l(n)]^2}
{1+h_n \Big(\sigma^2 \frac{k^2\pi^2}{L^2} - a_1 + a_2
\sum^N_{l=1}[c^h_l(n)]^2\Big)} \bigg) (c^h(n) + b \Delta W_n), \\
g_h (c(n)) =  b \alpha
\end{gather*}
where $c(n)$ is the vector of Fourier coefficients $c_k(n)$ for
all $n \in \mathbb{N}$. Besides, note that the method \eqref{LIM}
poessesses the explicit one-step representation
$$
c^h(n+1) = c^h(n) + f_h(c^h(n)) h_n + g_h (c^h(n)) \Delta W_n .
$$
Consider the property of mean consistency by estimating
\begin{align*}
&\| \mathbb{E} [c(t_{n+1})-c^h(n+1)] \|_N \\
&=  \big\| \mathbb{E} [c(t_n) + \int^{t_{n+1}}_{t_n}
f(c(s)) ds \\
&\quad + b \alpha \int^{t_{n+1}}_{t_n} dW(s) - c^h(n) - f_h
(c^h(n)) h_n - g_h(c^h(n)) \Delta W_n]\big\|_N\\
&=  \big\| \mathbb{E} [\int^{t_{n+1}}_{t_n} f(c(s)) ds  - f_h (c(t_n)) h_n ]
 \big\|_N
\quad \text{(since $c^h(n)=c(t_n)$)}\\
&=  \| \mathbb{E} \Big[\int^{t_{n+1}}_{t_n} [ f(c(s)) - f_h (c(n)) ] ds \Big]
 \|_N\\
&=  \| \int^{t_{n+1}}_{t_n} \mathbb{E} [ f(c(s)) - f_h (c(t_n)) ] ds  \|_N \quad
\text{(for nonrandom partitions $(t_n)_{n \in \mathbb{N}}$)} \\
& \le \mathbb{E} \Big[\int^{t_{n+1}}_{t_n} \| f(c(s))
 - \bar{f}_h (c(t_n)) \|_N ds \Big]
\quad \text{(due to $\Delta$ -inequality)}\\
& \le \mathbb{E} \Big[\int^{t_{n+1}}_{t_n} \| f(c(s))
 - f(c(t_n)) \|_N ds \Big]
+ \mathbb{E} \Big[\int^{t_{n+1}}_{t_n} \| f(c(t_n))
 - \bar{f}_h (c(t_n)) \|_N ds \Big]\\
& \le  C_0 (1+[V(c(t_n))]^2) h_n^{3/2}
\end{align*}
where $V$ is the Lyapunov functional \eqref{Vck} with appropriate constant $C_0$ and
\[
\bar{f}_h(c(t_n)) =
\operatorname{diag}\bigg(\frac{-\sigma^2 \frac{k^2\pi^2}{L^2} + a_1 - a_2
\sum^N_{l=1}[c_l(t_n)]^2}{1+h_n \Big(\sigma^2 \frac{k^2\pi^2}{L^2} - a_1 + a_2
\sum^N_{l=1}[c_l(t_n)]^2\Big)}
\bigg) c(t_n)
\]
and
\[
f(c(s)) =
\operatorname{diag}\Big(-\sigma^2 \frac{k^2\pi^2}{L^2} + a_1 - a_2
\sum^N_{l=1}[c_l(s)]^2 \Big) c(s) .
\]
Thus, the method \eqref{LIM} has at least a mean consistency rate
$r_0 \ge 1.5$. Similarly, one may establish an estimation of the
rate $r_p = 1.0$ of $p$-th mean consistency for $p \ge 1$.
Consequently, the proof of Theorem \ref{thm5} can be completed.
\end{proof}

Anyway, a detailed simulation study using those methods and comparing
them to others with respect to their performance should follow.
An overview of standard numerical methods for SDEs can be found
in \cite{allen06,bouleau&lepingle93,gard88,kanagawa&ogawa05,
pardoux&talay85,schurz02,schurz07c, talay95} among others.
For SPDEs with Lipschitzian coefficients, direct standard difference methods and
finite element techniques have also been investigated, e.g. see
\cite{gyongy&nualart, hausenblas03, roth02,shardlow99, walsh05,
yoo00}. %
It can be shown that some
nonstandard methods such as the linear-implicit method possess an
expected total energy which is linearly bounded in time (a fact which
shows its dynamical consistency with the estimates from Section
\ref{sec4}). However, this requires much more explanations and space,
 and hence it is beyond of the scope of this paper.

\begin{thebibliography}{99}

\bibitem{allen06} E. Allen;
 Modeling with It\^o Stochastic Differential
Equations, Springer, New York, 2008.

\bibitem{arnold74} L. Arnold;
 Stochastic Differential Equations, John Wiley \& Sons, Inc., New
York, 1974.

\bibitem{BH} B. Belinskiy and H. Schurz;
 Undamped nonlinear beam excited by
additive $L^2$-regular noise, Revised Preprint M-04-004, p.~1-17,
Department of Mathematics, Southern Illinois University, Carbondale, 2006.

\bibitem{bensoussan&temam72}
A. Bensoussan and R. Temam;
 \'{E}quations aux d\'{e}riv\'{e}es partielles
stochastiques non lin\'{e}aires. I. (in French),
Israel J. Math. 11 (1972) 95--129.

\bibitem{bensoussan90} A. Bensoussan;
 Some existence results for stochastic partial differential
equations. {\em Stochastic partial differential equations and applications\/}
(Trento, 1990),  p. 37--53, Pitman Res. Notes Math. Ser., 268,
Longman Sci. Tech., Harlow, 1992.

\bibitem{bouleau&lepingle93} N. Bouleau and D. L\'{e}pingle;
Numerical Methods for Stochastic Processes, John Wiley \& Sons,
Inc., New York, 1993.

\bibitem{daprato&zabzcyk92} G. Da Prato, J. Zabzcyk;
 Stochastic Equations in Infinite Dimensions,
Cambridge University Press, Cambridge, 1992.

\bibitem{daprato&zabzcyk96} G. Da Prato, J. Zabzcyk;
 Ergodicity for Infinite Dimensional Systems,
London Math. Soc. Lect. Note Series 229, Cambridge University
Press, Cambridge, 1996.

\bibitem{dynkin65} E. B. Dynkin;
 Markov Processes I+II, Springer-Verlag, New York, 1965.

\bibitem{gard88} T. C. Gard;
Introduction to Stochastic Differential
Equations, Marcel Dekker, Basel, 1988.

\bibitem{gyongy&nualart} I. Gy\"ongy, I. and D. Nualart;
Implicit schemes for quasi-linear parabolic
partial differential equations perturbed by space-time white noise,
Stochastic Process. Appl. 58 (1995) 57--72.

\bibitem{greksch&tudor95} W. Grecksch, C. Tudor;
Stochastic Evolution Equations: A Hilbert Space Approach,
Akademie-Verlag, Berlin, 1995.

\bibitem{hausenblas03} E. Hausenblas;
 Approximation for semilinear stochastic evolution equations,
Potential Anal. 18 (2003), no. 2, 141--186.

\bibitem{hodgkin&rushton} A. L. Hodgkin and W. A. H. Rushton,
The electrical constants of a crustacean nerve fibre,
Proc. Roy. Soc. London. B 133 (1946) 444--479.

\bibitem{hu88} Yaozhong Hu;
 Semi-implicit Euler-Maruyama scheme for stiff stochastic equations,
in {\it Stochastic Analysis and Related Topics, V (Silivri, 1994)},
183--202, in Progr. Probab. 38, Birkh\"auser Boston, Boston, MA, 1996.

\bibitem{ito44} K. It{\^o};
Stochastic integral, Proc. Imp. Acad. Tokyo
20 (1944) 519--524.

\bibitem{kanagawa&ogawa05} S. Kanagawa and S. Ogawa, Numerical solution of
stochastic differential equations and their applications, Sugaku Expositions
18 (2005), no. 1, 75--99.

\bibitem{hasminskii69} %{[35]}
R. Z. Khas'minski\v{i}, Stochastic Stability of Differential Equations,
Sijthoff \& Noordhoff, Alphen aan den Rijn, 1980.

\bibitem{koch} C. Koch;
 Biophysics of Computation: Information Processing in Single Neurons,
Oxford U. Press, Oxford, 1999.

\bibitem{koch&segev} C. Koch and I. Segev;
 Methods in Neuronal Modeling: From Ions to Networks (2-nd edition),
MIT Press, Cambridge, MA, 1998. %687 pages. ISBN 0-262-11231-0

\bibitem{Mao97} X. Mao;
 Stochastic Differential Equations \& Applications,
Horwood Publishing, Chichester, 1997.

\bibitem{pardoux75} E. Pardoux;
 \'{E}quations aux d\'{e}riv\'{e}es partielles stochastiques non
lin\'{e}aires monotones, PhD. Thesis, U. Paris XI, 1975.

\bibitem{pardoux79} E. Pardoux;
 Stochastic partial differential equations and filtering of
diffusion processes, Stochastics  3 (1979),  no. 2, 127--167.

\bibitem{pardoux&talay85} E. Pardoux and D. Talay;
 Discretization and simulation of stochastic
differential equations, Acta Applicandae Math. 3 (1985) 23--47.

\bibitem{Protter90} P. Protter;
 Stochastic Integration and Differential Equations,
Springer-Verlag, New York, 1990.

\bibitem{roth02} Ch. Roth;
 Difference methods for stochastic partial differential equations,
Z. Angew. Math. Mech. 82 (2002), no. 11-12, 821--830.

\bibitem{rozovski90} B. L. Rozovskii, Stochastic Evolution Systems,
Kluwer, Dordrecht, 1990.

\bibitem{schurz96a} H. Schurz;
Asymptotical mean square stability of an equilibrium point of
some linear numerical solutions with multiplicative noise.
Stochastic Anal. Appl. 14 (1996), no. 3, 313--354.

\bibitem{schurz97} H. Schurz;
 Stability, Stationarity, and Boundedness of Some
Implicit Numerical Methods for Stochastic Differential Equations and
Applications, Logos-Verlag, Berlin, 1997.

\bibitem{schurz99a} H. Schurz;
 Preservation of asymptotical laws through
Euler methods for Ornstein-Uhlenbeck process, Stochastic Anal. Appl.
17 (1999), no. 3, 463--486.

\bibitem{schurz99b} H. Schurz;
 The invariance of asymptotic laws of linear stochastic systems
under discretization, Z. Angew. Math. Mech. 79 (1999), no. 6, 375--382.

\bibitem{schurz02} H. Schurz;
 {\it Numerical analysis of SDEs without tears}.
In Handbook of Stochastic Analysis and Applications (Eds. D. Kannan and
V. Lakshmikantham), p. 237-359, Marcel Dekker, Basel, 2002.

\bibitem{schurz05a} H. Schurz;
 Stability of numerical methods for ordinary SDEs along
Lyapunov-type and other functions with variable step sizes,
Electron. Trans. Numer. Anal. 20 (2005) 27-49.

\bibitem{schurz06a} H. Schurz;
 An axiomatic approach to numerical approximations
of stochastic processes,
Int. J. Numer. Anal. Model. 3 (2006), no. 4., 459--480.

\bibitem{schurz06b} H. Schurz;
Stochastic $\alpha$-calculus, a fundamental theorem and
Burkholder-Davis-Gundy-type estimates, Dynam. Syst. Applic. 15 (2) (2006) 241-268.

\bibitem{schurz07c} H. Schurz;
 Applications of numerical methods and its analysis for
systems of stochastic differential equations, Bull. Karela Math. Soc. 4
(1) (2007) 1--85.

\bibitem{schurz07d} H. Schurz;
 Existence and uniqueness of solutions of semilinear
stochastic infinite-dimensional differential systems with H-regular
noise, J. Math. Anal. Appl. 332 (1) (2007) 334--345.

\bibitem{schurz08a} H. Schurz;
 Analysis and discretization of semi-linear stochastic wave
 equations with cubic nonlinearity and additive space-time noise, Discrete
 Cont. Dyn. Syst. Ser. S 1 (2) (2008) 353--363.

\bibitem{schurz09a} H. Schurz;
 New stochastic integrals, oscillation theorems and energy
identities, Commun. Appl. Anal. 13 (2009), No. 2, 181--194.

\bibitem{shardlow99} T. Shardlow;
 Numerical methods for stochastic parabolic PDEs, Numer.
Fund. Anal. Optim. 20 (1999) 121--145.

\bibitem{stuart&sakmann} G. J. Stuart and B. Sakmann;
 Active propagation of somatic action potentials into neocortical
pyramidal cell dendrites, Nature 367 (1994) 69--72.

\bibitem{talay95} D. Talay;
 {\it Simulation of stochastic differential systems}.
In Probabilistic Methods in Applied Physics (Eds. P. Kr{\'e}e and W. Wedig),
Springer Lecture Notes in Physics, Vol. 451, p. 54-96, Springer-Verlag,
Berlin, 1995.

\bibitem{tuckwell&walsh} H.C. Tuckwell and J.B. Walsh;
Random currents through nerve membranes. I. Uniform poisson or white noise
current in one-dimensional cables, Biol. Cybern. 49 (1983), no. 2, 99--110.

\bibitem{walsh86} J. B. Walsh;
 {\it An introduction to stochastic partial differential equations},
\'{E}cole d'\'{e}t\'{e} de probabilit\'{e}s de Saint-Flour, XIV---1984, 265--439,
Lecture Notes in Math. 1180, Springer, Berlin, 1986.

\bibitem{walsh05} J. B. Walsh;
 Finite element methods for parabolic stochastic PDE's,
Potential Anal. 23 (2005), no. 1, 1--43.

\bibitem{yoo00}  H. Yoo;
 Semi-discretization of stochastic partial differential equations on
$\mathbb{R}^1$ by a finite-difference method, Math. Comput. 69 (2000)
653--666.

\end{thebibliography}
\end{document}
