snssde1d()
Assume that we want to describe the following SDE:
Ito form3:
\[\begin{equation}\label{eq:05} dX_{t} = \frac{1}{2}\theta^{2} X_{t} dt + \theta X_{t} dW_{t},\qquad X_{0}=x_{0} > 0 \end{equation}\]
Stratonovich form: \[\begin{equation}\label{eq:06} dX_{t} = \frac{1}{2}\theta^{2} X_{t} dt +\theta X_{t} \circ dW_{t},\qquad X_{0}=x_{0} > 0 \end{equation}\]
In the above \(f(t,x)=\frac{1}{2}\theta^{2}
x\) and \(g(t,x)= \theta x\)
(\(\theta > 0\)), \(W_{t}\) is a standard Wiener process. To
simulate this models using snssde1d()
function we need to
specify:
drift
and diffusion
coefficients as R
expressions that depend on the state variable x
and time
variable t
.N=1000
(by default:
N=1000
).M=1000
(by default: M=1
).t0=0
, x0=10
and end
time T=1
(by default: t0=0
, x0=0
and T=1
).Dt=0.001
(by default:
Dt=(T-t0)/N
).type="ito"
for Ito or type="str"
for Stratonovich (by default
type="ito"
).method
(by default
method="euler"
).R> set.seed(1234, kind = "L'Ecuyer-CMRG")
R> theta = 0.5
R> f <- expression( (0.5*theta^2*x) )
R> g <- expression( theta*x )
R> mod1 <- snssde1d(drift=f,diffusion=g,x0=10,M=1000,type="ito") # Using Ito
R> mod2 <- snssde1d(drift=f,diffusion=g,x0=10,M=1000,type="str") # Using Stratonovich
R> mod1
Itô Sde 1D:
| dX(t) = (0.5 * theta^2 * X(t)) * dt + theta * X(t) * dW(t)
Method:
| Euler scheme with order 0.5
Summary:
| Size of process | N = 1001.
| Number of simulation | M = 1000.
| Initial value | x0 = 10.
| Time of process | t in [0,1].
| Discretization | Dt = 0.001.
Stratonovich Sde 1D:
| dX(t) = (0.5 * theta^2 * X(t)) * dt + theta * X(t) o dW(t)
Method:
| Euler scheme with order 0.5
Summary:
| Size of process | N = 1001.
| Number of simulation | M = 1000.
| Initial value | x0 = 10.
| Time of process | t in [0,1].
| Discretization | Dt = 0.001.
Using Monte-Carlo simulations, the following statistical measures
(S3 method
) for class snssde1d()
can be
approximated for the \(X_{t}\) process
at any time \(t\):
mean
.moment
with order=2
and
center=TRUE
.Median
.Mode
.quantile
.min
and
max
.skewness
and kurtosis
.cv
.moment
.bconfint
.summary
.The summary of the results of mod1
and mod2
at time \(t=1\) of class
snssde1d()
is given by:
Monte-Carlo Statistics for X(t) at time t = 1
Mean 11.21041
Variance 37.34360
Median 9.95235
Mode 8.03077
First quartile 7.00050
Third quartile 13.84224
Minimum 2.24849
Maximum 47.23754
Skewness 1.78370
Kurtosis 8.23099
Coef-variation 0.54511
3th-order moment 407.04925
4th-order moment 11478.47403
5th-order moment 299393.26186
6th-order moment 9011343.65855
Monte-Carlo Statistics for X(t) at time t = 1
Mean 12.8797
Variance 54.2186
Median 11.3893
Mode 9.8106
First quartile 8.0782
Third quartile 15.3722
Minimum 2.0887
Maximum 72.4702
Skewness 2.2451
Kurtosis 11.6921
Coef-variation 0.5717
3th-order moment 896.3033
4th-order moment 34370.6613
5th-order moment 1387912.1394
6th-order moment 65677123.6792
Hence we can just make use of the rsde1d()
function to
build our random number generator for the conditional density of the
\(X_{t}|X_{0}\) (\(X_{t}^{\text{mod1}}| X_{0}\) and \(X_{t}^{\text{mod2}}|X_{0}\)) at time \(t = 1\).
R> x1 <- rsde1d(object = mod1, at = 1) # X(t=1) | X(0)=x0 (Ito SDE)
R> x2 <- rsde1d(object = mod2, at = 1) # X(t=1) | X(0)=x0 (Stratonovich SDE)
R> head(data.frame(x1,x2),n=5)
x1 x2
1 8.7078 9.3026
2 7.8980 7.9105
3 10.7227 15.5981
4 10.4143 12.2105
5 4.5190 4.7178
The function dsde1d()
can be used to show the
Approximate transitional density for \(X_{t}|X_{0}\) at time \(t-s=1\) with log-normal curves:
R> mu1 = log(10); sigma1= sqrt(theta^2) # log mean and log variance for mod1
R> mu2 = log(10)-0.5*theta^2 ; sigma2 = sqrt(theta^2) # log mean and log variance for mod2
R> AppdensI <- dsde1d(mod1, at = 1)
R> AppdensS <- dsde1d(mod2, at = 1)
R> plot(AppdensI , dens = function(x) dlnorm(x,meanlog=mu1,sdlog = sigma1))
R> plot(AppdensS , dens = function(x) dlnorm(x,meanlog=mu2,sdlog = sigma2))
Approximate transitional density for \(X_{t}|X_{0}\) at time \(t-s=1\) with log-normal curves. mod1: Ito and mod2: Stratonovich
In Figure 2, we present the flow of trajectories, the mean path (red lines) of solution of \(\eqref{eq:05}\) and \(\eqref{eq:06}\), with their empirical \(95\%\) confidence bands, that is to say from the \(2.5th\) to the \(97.5th\) percentile for each observation at time \(t\) (blue lines):
R> ## Ito
R> plot(mod1,ylab=expression(X^mod1))
R> lines(time(mod1),apply(mod1$X,1,mean),col=2,lwd=2)
R> lines(time(mod1),apply(mod1$X,1,bconfint,level=0.95)[1,],col=4,lwd=2)
R> lines(time(mod1),apply(mod1$X,1,bconfint,level=0.95)[2,],col=4,lwd=2)
R> legend("topleft",c("mean path",paste("bound of", 95,"% confidence")),inset = .01,col=c(2,4),lwd=2,cex=0.8)
R> ## Stratonovich
R> plot(mod2,ylab=expression(X^mod2))
R> lines(time(mod2),apply(mod2$X,1,mean),col=2,lwd=2)
R> lines(time(mod2),apply(mod2$X,1,bconfint,level=0.95)[1,],col=4,lwd=2)
R> lines(time(mod2),apply(mod2$X,1,bconfint,level=0.95)[2,],col=4,lwd=2)
R> legend("topleft",c("mean path",paste("bound of",95,"% confidence")),col=c(2,4),inset =.01,lwd=2,cex=0.8)
mod1: Ito and mod2: Stratonovich
snssde2d()
The following \(2\)-dimensional SDE’s with a vector of drift and matrix of diffusion coefficients:
Ito form: \[\begin{equation}\label{eq:09} \begin{cases} dX_t = f_{x}(t,X_{t},Y_{t}) dt + g_{x}(t,X_{t},Y_{t}) dW_{1,t}\\ dY_t = f_{y}(t,X_{t},Y_{t}) dt + g_{y}(t,X_{t},Y_{t}) dW_{2,t} \end{cases} \end{equation}\]
Stratonovich form: \[\begin{equation}\label{eq:10}
\begin{cases}
dX_t = f_{x}(t,X_{t},Y_{t}) dt + g_{x}(t,X_{t},Y_{t}) \circ dW_{1,t}\\
dY_t = f_{y}(t,X_{t},Y_{t}) dt + g_{y}(t,X_{t},Y_{t}) \circ dW_{2,t}
\end{cases}
\end{equation}\] where \((W_{1,t},
W_{2,t})\) are a two independent standard Wiener process if
corr = NULL
. To simulate \(2d\) models using snssde2d()
function we need to specify:
drift
(2d) and diffusion
(2d)
coefficients as R expressions that depend on the state variable
x
, y
and time variable t
.corr
the correlation structure of two standard Wiener
process \((W_{1,t},W_{2,t})\); must be
a real symmetric positive-definite square matrix of dimension \(2\) (default: corr=NULL
).N
(default:
N=1000
).M
(default: M=1
).t0
, x0
and end time
T
(default: t0=0
, x0=c(0,0)
and
T=1
).Dt
(default:
Dt=(T-t0)/N
).type="ito"
for Ito or type="str"
for Stratonovich (default
type="ito"
).method
(default
method="euler"
).The Ornstein-Uhlenbeck (OU) process has a long history in physics. Introduced in essence by Langevin in his famous 1908 paper on Brownian motion, the process received a more thorough mathematical examination several decades later by Uhlenbeck and Ornstein (1930). The OU process is understood here to be the univariate continuous Markov process \(X_t\). In mathematical terms, the equation is written as an Ito equation: \[\begin{equation}\label{eq016} dX_t = -\frac{1}{\mu} X_t dt + \sqrt{\sigma} dW_t,\quad X_{0}=x_{0} \end{equation}\] In these equations, \(\mu\) and \(\sigma\) are positive constants called, respectively, the relaxation time and the diffusion constant. The time integral of the OU process \(X_t\) (or indeed of any process \(X_t\)) is defined to be the process \(Y_t\) that satisfies: \[\begin{equation}\label{eq017} Y_{t} = Y_{0}+\int X_{t} dt \Leftrightarrow dY_t = X_{t} dt ,\quad Y_{0}=y_{0} \end{equation}\] \(Y_t\) is not itself a Markov process; however, \(X_t\) and \(Y_t\) together comprise a bivariate continuous Markov process. We wish to find the solutions \(X_t\) and \(Y_t\) to the coupled time-evolution equations: \[\begin{equation}\label{eq018} \begin{cases} dX_t = -\frac{1}{\mu} X_t dt + \sqrt{\sigma} dW_t\\ dY_t = X_{t} dt \end{cases} \end{equation}\]
We simulate a flow of \(1000\) trajectories of \((X_{t},Y_{t})\), with integration step size \(\Delta t = 0.01\), and using second Milstein method.
R> set.seed(1234, kind = "L'Ecuyer-CMRG")
R> x0=5;y0=0
R> mu=3;sigma=0.5
R> fx <- expression(-(x/mu),x)
R> gx <- expression(sqrt(sigma),0)
R> mod2d <- snssde2d(drift=fx,diffusion=gx,Dt=0.01,M=1000,x0=c(x0,y0),method="smilstein")
R> mod2d
Itô Sde 2D:
| dX(t) = -(X(t)/mu) * dt + sqrt(sigma) * dW1(t)
| dY(t) = X(t) * dt + 0 * dW2(t)
Method:
| Second-order Milstein scheme
Summary:
| Size of process | N = 1001.
| Number of simulation | M = 1000.
| Initial values | (x0,y0) = (5,0).
| Time of process | t in [0,10].
| Discretization | Dt = 0.01.
The summary of the results of mod2d
at time \(t=10\) of class snssde2d()
is
given by:
For plotting in time (or in plane) using the command
plot
(plot2d
), the results of the simulation
are shown in Figure 3.
R> ## in time
R> plot(mod2d)
R> ## in plane (O,X,Y)
R> plot2d(mod2d,type="n")
R> points2d(mod2d,col=rgb(0,100,0,50,maxColorValue=255), pch=16)
Ornstein-Uhlenbeck process and its integral
Hence we can just make use of the rsde2d()
function to
build our random number for \((X_{t},Y_{t})\) at time \(t = 10\).
x y
1 0.32480 12.2224
2 0.91370 9.3092
3 0.49834 14.4406
The density of \(X_t\) and \(Y_t\) at time \(t=10\) are reported using
dsde2d()
function, see e.g. Figure 4: the marginal density
of \(X_t\) and \(Y_t\) at time \(t=10\). For plotted in (x, y)-space with
dim = 2
. A contour
and image
plot
of density obtained from a realization of system \((X_{t},Y_{t})\) at time t=10
,
see:
R> ## the marginal density
R> denM <- dsde2d(mod2d,pdf="M",at =10)
R> plot(denM, main="Marginal Density")
R> ## the Joint density
R> denJ <- dsde2d(mod2d, pdf="J", n=100,at =10)
R> plot(denJ,display="contour",main="Bivariate Transition Density at time t=10")
Marginal and Joint density at time t=10
A \(3\)D plot of the transition density at \(t=10\) obtained with:
Marginal and Joint density at time t=10
We approximate the bivariate transition density over the set transition horizons \(t\in [1,10]\) by \(\Delta t = 0.005\) using the code:
The Van der Pol (1922) equation is an ordinary differential equation that can be derived from the Rayleigh differential equation by differentiating and setting \(\dot{x}=y\), see Naess and Hegstad (1994); Leung (1995) and for more complex dynamics in Van-der-Pol equation see Jing et al. (2006). It is an equation describing self-sustaining oscillations in which energy is fed into small oscillations and removed from large oscillations. This equation arises in the study of circuits containing vacuum tubes and is given by: \[\begin{equation}\label{eq:12} \ddot{X}-\mu (1-X^{2}) \dot{X} + X = 0 \end{equation}\] where \(x\) is the position coordinate (which is a function of the time \(t\)), and \(\mu\) is a scalar parameter indicating the nonlinearity and the strength of the damping, to simulate the deterministic equation see Grayling (2014) for more details. Consider stochastic perturbations of the Van-der-Pol equation, and random excitation force of such systems by White noise \(\xi_{t}\), with delta-type correlation function \(\text{E}(\xi_{t}\xi_{t+h})=2\sigma \delta (h)\) \[\begin{equation}\label{eq:13} \ddot{X}-\mu (1-X^{2}) \dot{X} + X = \xi_{t}, \end{equation}\] where \(\mu > 0\) . It’s solution cannot be obtained in terms of elementary functions, even in the phase plane. The White noise \(\xi_{t}\) is formally derivative of the Wiener process \(W_{t}\). The representation of a system of two first order equations follows the same idea as in the deterministic case by letting \(\dot{x}=y\), from physical equation we get the above system: \[\begin{equation}\label{eq:14} \begin{cases} \dot{X} = Y \\ \dot{Y} = \mu \left(1-X^{2}\right) Y - X + \xi_{t} \end{cases} \end{equation}\] The system can mathematically explain by a Stratonovitch equations: \[\begin{equation}\label{eq:15} \begin{cases} dX_{t} = Y_{t} dt \\ dY_{t} = \left(\mu (1-X^{2}_{t}) Y_{t} - X_{t}\right) dt + 2 \sigma \circ dW_{2,t} \end{cases} \end{equation}\]
Implemente in R as follows, with integration step size \(\Delta t = 0.01\) and using stochastic Runge-Kutta methods 1-stage.
R> set.seed(1234, kind = "L'Ecuyer-CMRG")
R> mu = 4; sigma=0.1
R> fx <- expression( y , (mu*( 1-x^2 )* y - x))
R> gx <- expression( 0 ,2*sigma)
R> mod2d <- snssde2d(drift=fx,diffusion=gx,N=10000,Dt=0.01,type="str",method="rk1")
For plotting (back in time) using the command plot
, and
plot2d
in plane the results of the simulation are shown in
Figure 6.
The stochastic Van-der-Pol equation
Consider a system of stochastic differential equations:
\[\begin{equation}\label{eq:115} \begin{cases} dX_{t} = \mu X_{t} dt + X_{t}\sqrt{Y_{t}} dB_{1,t}\\ dY_{t} = \nu (\theta-Y_{t}) dt + \sigma \sqrt{Y_{t}} dB_{2,t} \end{cases} \end{equation}\]
Conditions to ensure positiveness of the volatility process are that \(2\nu \theta > \sigma^2\), and the two Brownian motions \((B_{1,t},B_{2,t})\) are correlated. \(\Sigma\) to describe the correlation structure, for example: \[ \Sigma= \begin{pmatrix} 1 & 0.3 \\ 0.3 & 2 \end{pmatrix} \]
R> set.seed(1234, kind = "L'Ecuyer-CMRG")
R> mu = 1.2; sigma=0.1;nu=2;theta=0.5
R> fx <- expression( mu*x ,nu*(theta-y))
R> gx <- expression( x*sqrt(y) ,sigma*sqrt(y))
R> Sigma <- matrix(c(1,0.3,0.3,2),nrow=2,ncol=2) # correlation matrix
R> HM <- snssde2d(drift=fx,diffusion=gx,Dt=0.001,x0=c(100,1),corr=Sigma,M=1000)
R> HM
Itô Sde 2D:
| dX(t) = mu * X(t) * dt + X(t) * sqrt(Y(t)) * dB1(t)
| dY(t) = nu * (theta - Y(t)) * dt + sigma * sqrt(Y(t)) * dB2(t)
| Correlation structure:
1.0 0.3
0.3 2.0
Method:
| Euler scheme with order 0.5
Summary:
| Size of process | N = 1001.
| Number of simulation | M = 1000.
| Initial values | (x0,y0) = (100,1).
| Time of process | t in [0,1].
| Discretization | Dt = 0.001.
Hence we can just make use of the rsde2d()
function to
build our random number for \((X_{t},Y_{t})\) at time \(t = 1\).
x y
1 181.42 0.56526
2 137.85 0.52612
3 243.57 0.62700
The density of \(X_t\) and \(Y_t\) at time \(t=1\) are reported using
dsde2d()
function. See:
snssde3d()
The following \(3\)-dimensional SDE’s with a vector of drift and matrix of diffusion coefficients:
Ito form: \[\begin{equation}\label{eq17} \begin{cases} dX_t = f_{x}(t,X_{t},Y_{t},Z_{t}) dt + g_{x}(t,X_{t},Y_{t},Z_{t}) dW_{1,t}\\ dY_t = f_{y}(t,X_{t},Y_{t},Z_{t}) dt + g_{y}(t,X_{t},Y_{t},Z_{t}) dW_{2,t}\\ dZ_t = f_{z}(t,X_{t},Y_{t},Z_{t}) dt + g_{z}(t,X_{t},Y_{t},Z_{t}) dW_{3,t} \end{cases} \end{equation}\]
Stratonovich form: \[\begin{equation}\label{eq18}
\begin{cases}
dX_t = f_{x}(t,X_{t},Y_{t},Z_{t}) dt + g_{x}(t,X_{t},Y_{t},Z_{t}) \circ
dW_{1,t}\\
dY_t = f_{y}(t,X_{t},Y_{t},Z_{t}) dt + g_{y}(t,X_{t},Y_{t},Z_{t}) \circ
dW_{2,t}\\
dZ_t = f_{z}(t,X_{t},Y_{t},Z_{t}) dt + g_{z}(t,X_{t},Y_{t},Z_{t}) \circ
dW_{3,t}
\end{cases}
\end{equation}\] \((W_{1,t},W_{2,t},W_{3,t})\) are three
independents standard Wiener process if corr = NULL
. To
simulate this system using snssde3d()
function we need to
specify:
drift
(3d) and diffusion
(3d)
coefficients as R expressions that depend on the state variables
x
, y
, z
and time variable
t
.corr
the correlation structure of three standard Wiener
process \((W_{1,t},W_{2,t},W_{2,t})\);
must be a real symmetric positive-definite square matrix of dimension
\(3\) (default:
corr=NULL
).N
(default:
N=1000
).M
(default: M=1
).t0
, x0
and end time
T
(default: t0=0
, x0=c(0,0,0)
and
T=1
).Dt
(default:
Dt=(T-t0)/N
).type="ito"
for Ito or type="str"
for Stratonovich (default
type="ito"
).method
(default
method="euler"
).Assume that we want to describe the following SDE’s (3D) in Ito form: \[\begin{equation}\label{eq0166} \begin{cases} dX_t = 4 (-1-X_{t}) Y_{t} dt + 0.2 dW_{1,t}\\ dY_t = 4 (1-Y_{t}) X_{t} dt + 0.2 dW_{2,t}\\ dZ_t = 4 (1-Z_{t}) Y_{t} dt + 0.2 dW_{3,t} \end{cases} \end{equation}\] with \((W_{1,t},W_{2,t},W_{3,t})\) are three indpendant standard Wiener process.
We simulate a flow of \(1000\) trajectories, with integration step size \(\Delta t = 0.001\).
R> set.seed(1234, kind = "L'Ecuyer-CMRG")
R> fx <- expression(4*(-1-x)*y , 4*(1-y)*x , 4*(1-z)*y)
R> gx <- rep(expression(0.2),3)
R> mod3d <- snssde3d(x0=c(x=2,y=-2,z=-2),drift=fx,diffusion=gx,M=1000)
R> mod3d
Itô Sde 3D:
| dX(t) = 4 * (-1 - X(t)) * Y(t) * dt + 0.2 * dW1(t)
| dY(t) = 4 * (1 - Y(t)) * X(t) * dt + 0.2 * dW2(t)
| dZ(t) = 4 * (1 - Z(t)) * Y(t) * dt + 0.2 * dW3(t)
Method:
| Euler scheme with order 0.5
Summary:
| Size of process | N = 1001.
| Number of simulation | M = 1000.
| Initial values | (x0,y0,z0) = (2,-2,-2).
| Time of process | t in [0,1].
| Discretization | Dt = 0.001.
The following statistical measures (S3 method
) for class
snssde3d()
can be approximated for the \((X_{t},Y_{t},Z_{t})\) process at any time
\(t\), for example
at=1
:
R> s = 1
R> mean(mod3d, at = s)
R> moment(mod3d, at = s , center = TRUE , order = 2) ## variance
R> Median(mod3d, at = s)
R> Mode(mod3d, at = s)
R> quantile(mod3d , at = s)
R> kurtosis(mod3d , at = s)
R> skewness(mod3d , at = s)
R> cv(mod3d , at = s )
R> min(mod3d , at = s)
R> max(mod3d , at = s)
R> moment(mod3d, at = s , center= TRUE , order = 4)
R> moment(mod3d, at = s , center= FALSE , order = 4)
The summary of the results of mod3d
at time \(t=1\) of class snssde3d()
is
given by:
For plotting (back in time) using the command plot
, and
plot3D
in space the results of the simulation are shown in
Figure 7.
Flow of \(1000\) trajectories of \((X_t ,Y_t ,Z_t)\)
Hence we can just make use of the rsde3d()
function to
build our random number for \((X_{t},Y_{t},Z_{t})\) at time \(t = 1\).
x y z
1 -0.73929 0.65851 0.64650
2 -0.63795 0.41731 0.79531
3 -0.80249 1.16501 0.83721
For each SDE type and for each numerical scheme, the marginal density
of \(X_t\), \(Y_t\) and \(Z_t\) at time \(t=1\) are reported using
dsde3d()
function, see e.g. Figure 8.
Marginal density of \(X_t\), \(Y_t\) and \(Z_t\) at time \(t=1\)
For an approximate joint transition density for \((X_t,Y_t,Z_t)\) (for more details, see package sm or ks.)
If we assume that \(U_w( x , y , z , t
)\), \(V_w( x , y , z , t )\)
and \(S_w( x , y , z , t )\) are
neglected and the dispersion coefficient \(D(
x , y , z )\) is constant. A system becomes (see
Boukhetala,1996): \[\begin{eqnarray}\label{eq19}
% \nonumber to remove numbering (before each equation)
\begin{cases}
dX_t = \left(\frac{-K X_{t}}{\sqrt{X^{2}_{t} + Y^{2}_{t} +
Z^{2}_{t}}}\right) dt + \sigma dW_{1,t} \nonumber\\
dY_t = \left(\frac{-K Y_{t}}{\sqrt{X^{2}_{t} + Y^{2}_{t} +
Z^{2}_{t}}}\right) dt + \sigma dW_{2,t} \\
dZ_t = \left(\frac{-K Z_{t}}{\sqrt{X^{2}_{t} + Y^{2}_{t} +
Z^{2}_{t}}}\right) dt + \sigma dW_{3,t} \nonumber
\end{cases}
\end{eqnarray}\] with initial conditions \((X_{0},Y_{0},Z_{0})=(1,1,1)\), by
specifying the drift and diffusion coefficients of three processes \(X_{t}\), \(Y_{t}\) and \(Z_{t}\) as R expressions which depends on
the three state variables (x,y,z)
and time variable
t
, with integration step size Dt=0.0001
.
R> set.seed(1234, kind = "L'Ecuyer-CMRG")
R> K = 4; s = 1; sigma = 0.2
R> fx <- expression( (-K*x/sqrt(x^2+y^2+z^2)) , (-K*y/sqrt(x^2+y^2+z^2)) , (-K*z/sqrt(x^2+y^2+z^2)) )
R> gx <- rep(expression(sigma),3)
R> mod3d <- snssde3d(drift=fx,diffusion=gx,N=10000,x0=c(x=1,y=1,z=1))
The results of simulation (3D) are shown in Figure 9:
Attractive model for 3D diffusion processes
Next is an example of one-dimensional SDE driven by three correlated
Wiener process (\(B_{1,t}\),\(B_{2,t}\),\(B_{3,t}\)), as follows: \[\begin{equation}\label{eq20}
dX_{t} = B_{1,t} dt + B_{2,t} dB_{3,t}
\end{equation}\] with: \[
\Sigma=
\begin{pmatrix}
1 & 0.2 &0.5\\
0.2 & 1 & -0.7 \\
0.5 &-0.7&1
\end{pmatrix}
\] To simulate the solution of the process \(X_t\), we make a transformation to a system
of three equations as follows: \[\begin{eqnarray}\label{eq21}
\begin{cases}
% \nonumber to remove numbering (before each equation)
dX_t = Y_{t} dt + Z_{t} dB_{3,t} \nonumber\\
dY_t = dB_{1,t} \\
dZ_t = dB_{2,t} \nonumber
\end{cases}
\end{eqnarray}\] run by calling the function
snssde3d()
to produce a simulation of the solution, with
\(\mu = 1\) and \(\sigma = 1\).
R> set.seed(1234, kind = "L'Ecuyer-CMRG")
R> fx <- expression(y,0,0)
R> gx <- expression(z,1,1)
R> Sigma <-matrix(c(1,0.2,0.5,0.2,1,-0.7,0.5,-0.7,1),nrow=3,ncol=3)
R> modtra <- snssde3d(drift=fx,diffusion=gx,M=1000,corr=Sigma)
R> modtra
Itô Sde 3D:
| dX(t) = Y(t) * dt + Z(t) * dB1(t)
| dY(t) = 0 * dt + 1 * dB2(t)
| dZ(t) = 0 * dt + 1 * dB3(t)
| Correlation structure:
1.0 0.2 0.5
0.2 1.0 -0.7
0.5 -0.7 1.0
Method:
| Euler scheme with order 0.5
Summary:
| Size of process | N = 1001.
| Number of simulation | M = 1000.
| Initial values | (x0,y0,z0) = (0,0,0).
| Time of process | t in [0,1].
| Discretization | Dt = 0.001.
The histogram and kernel density of \(X_t\) at time \(t=1\) are reported using
rsde3d()
function, and we calculate emprical
variance-covariance matrix \(C(s,t)=\text{Cov}(X_{s},X_{t})\), see
e.g. Figure 10.
R> X <- rsde3d(modtra,at=1)$x
R> MASS::truehist(X,xlab = expression(X[t==1]));box()
R> lines(density(X),col="red",lwd=2)
R> legend("topleft",c("Distribution histogram","Kernel Density"),inset =.01,pch=c(15,NA),lty=c(NA,1),col=c("cyan","red"), lwd=2,cex=0.8)
R> ## Cov-Matrix
R> color.palette=colorRampPalette(c('white','green','blue','red'))
R> filled.contour(time(modtra), time(modtra), cov(t(modtra$X)), color.palette=color.palette,plot.title = title(main = expression(paste("Covariance empirique:",cov(X[s],X[t]))),xlab = "time", ylab = "time"),key.title = title(main = ""))
The histogram and kernel density of \(X_t\) at time \(t=1\). Emprical variance-covariance matrix
snssdekd()
&
dsdekd()
& rsdekd()
- Monte-Carlo
Simulation and Analysis of Stochastic Differential Equations.bridgesdekd()
&
dsdekd()
& rsdekd()
- Constructs and
Analysis of Bridges Stochastic Differential Equations.fptsdekd()
&
dfptsdekd()
- Monte-Carlo Simulation and Kernel Density
Estimation of First passage time.MCM.sde()
&
MEM.sde()
- Parallel Monte-Carlo and Moment Equations for
SDEs.TEX.sde()
- Converting
Sim.DiffProc Objects to LaTeX.fitsde()
- Parametric Estimation
of 1-D Stochastic Differential Equation.Boukhetala K (1996). Modelling and Simulation of a Dispersion Pollutant with Attractive Centre, volume 3, pp. 245-252. Computer Methods and Water Resources, Computational Mechanics Publications, Boston, USA.
Guidoum AC, Boukhetala K (2020). “Performing Parallel Monte Carlo and Moment Equations Methods for Itô and Stratonovich Stochastic Differential Systems: R Package Sim.DiffProc”. Journal of Statistical Software, 96(2), 1–82. https://doi.org/10.18637/jss.v096.i02
Department of Mathematics and Computer Science, Faculty of Sciences and Technology, University of Tamanghasset, Algeria, E-mail (acguidoum@univ-tam.dz)↩︎
Faculty of Mathematics, University of Science and Technology Houari Boumediene, BP 32 El-Alia, U.S.T.H.B, Algeria, E-mail (kboukhetala@usthb.dz)↩︎
The equivalently of \(X_{t}^{\text{mod1}}\) the following Stratonovich SDE: \(dX_{t} = \theta X_{t} \circ dW_{t}\).↩︎