Stochastic modelling of dynamic properties of nonlinear water waves
Stochastic modelling of dynamic properties of nonlinear water waves N.C.G.
Markatos*
Department of Chemical Engineering, Imperial College of Science...
Stochastic modelling of dynamic properties of nonlinear water waves N.C.G.
Markatos*
Department of Chemical Engineering, Imperial College of Science and Technology, London SW7, UK (Received 29 October 1976; revised 10 March 1978)
This paper describes the stochastic modelling of water waves and presents predictions of their structure. The work is based on the analysis of more than 10~ data points, obtained in the form of wave records during experiments in a channeP. Both turbulent wind-driven waves and artificially generated waves superimposed on the former, were studied. The wave records were considered as random time series of events; and amplitudes, surface elevations and other characteristics were considered as stochastic processes, characterisable by their moments which were calculated from the wave records by means of a computer program. Despite the twodimensional character of the flow, the suggested distributions are not inconsistent with oceanic data, provided that the latter are treated as two-dimensional.
Introduction The results of the analysis of the experimental data are summarized below. More details and a complete analysis of a wave record may be found elsewhere 1. (1) The wave series is stationary, where stationarity is defined in terms of the number of events (waves) up to time t, {Nt}. (2) The wave process is not a Poisson process, i.e. it is not completely random. There are trends in the series of waves, which are functions of the time parameter t, and not functions of the serial number j of the wave. (3) There is a strong correlation between time intervals {X j}. Thus, the process is not a renewal process either. (4) Despite the lack of stationarity in the interval process {Xj}, the estimated spectra and correlograms indicate the existence of at least one cyclic trend. The same harmonic term was found at the same frequency, in the spectra of the counting process {N,}. Investigations of the underlying mechanism included * Present address: CHAM Ltd., Bakery House, 40 High Street, London SW19 5AU, UK
the consideration of various models, e.g. semi-Markov models, Wold's Markov chains, pooled outputs, and simple series onto which a completely random series was super imposed. The best representation was achieved through a model generated by the superimposition of a regular series, B cos(co0t + 0o), and a completely random, stationary one, t/(t), which can be Gaussian.
Statistical distributions for surface elevation of a random non linear wavy interface In the linear theory of wind-generated water waves, the distribution of the surface elevation ~(t), is Gaussian. Analysis of the present channel flows proved that for air velocities greater than 0.75 m/s or for artificial waves superimposed on wind-driven waves, a considerable skewness exists so that the above distribution is no longer Gaussian. The Fourier transform of the characteristic function, in terms of the correlation functions, cannot be calculated directly, and we used the so-called quasimoment functions2; then, the n-dimensional probability densities, W., are given by:
Appl. Math. Modelling, 1978, Vol 2, December
227
Stochastic modelling of nonlinear water waves. N. C. G. Markatos Wn(C1 .....
~n'] t l .....
{£1
=
1 +
For n = 1 the polynomials (equation 5) become the ordinary Hermite polynomials, Hi, leading to:
t,,)
S--~.
b~(t . . . . . .
a..,to=l
S=3
t~,)
W(n)=
(1)
x w,,G (~, ..... ~,,)
where:
W,G (Ca,-.., ~,,) = (2rc)-"/2[IA I-
l +s~3~.-~.s[
((n) and a are the mean value and the standard deviation of n(t), respectively) which is simply an Edgeworth 3 series. Keeping cumulants, ki, up to the fourth, the a i r water elevations probability density becomes:
1/2]
W(n) = . 2/~_--~exp = 1 ~*"(~* - m , ) ( ~ - mm)
x exp - ~ , ,
(2) x
is the probability density of a Gaussian process with the same correlation functions as the non-Gaussian process, b~ are the quasi-moment functions, ~ are random variables, m~ are their mean values, [A[ is the determinant of the correlation matrix and ~t~mis its inverse, so that:
~ a4,mK2(tm, t~) = 6¢~ = S1 m
=
X
L
~
0
for for
tk=2 4) 4:2
~= =,.=1
(3)
_
H4(C) = C4 - 6C2 + 3,
10~3 + 15~
n6(~ )
=
~ 6 __ 1 5 C 4
n = CiCi + CuCiCi + CukCiCjCk + "'"
el,m : A - 1
~X-~) e -y[~I
-F " "
-t- 4 5 ~ 2 - - 15 formula derived for ocean waves by Longuet-Higgins 4 in a different way. In the second approximation, where the skewness (SK) is appreciable, but its square and the kurtosis (kurt) can be neglected, the mean value of the elevations n is proved to be shifted by an amount ( n ) = kl. If:
Then with the coefficient matrix ~t¢. we can associate the generalized Hermite polynomials defined as:
H,p...,,[x] = eY[=I(- ~ - ~ ) . . - ( -
n6(~)
(8)
H3(C) = C3 - 3~, Hs(~) = ¢5
where: Xm : Cm -- mm
[ 1 + ~SKH3(~) 1 , + ~g~r,n~(~)
where:
OldpraXdPxm
X , = CO -- m ,
Ca
+ -~SK
where 6,~a is the Dirac function and K2 are the correlation functions. Suppose we are given the quadratic form, in n variables X,:
y[x] = ~
W6(n) (7)
(4)
where the C's are constants and the C~ are independent random variables, symmetrically distributed about 0 with variance a 2, then we have (assuming that the C's are symmetric in their suffices): ( n ) = Cija 2 q- 3Clijjal2 ffj2
If we now write,
Longuet-Higgins 4 showed that kl = C,a2; therefore the shift is due to the quadratic terms involved. In this case the probability density is multiplied by the factor:
F, = F~,[x] = --aY[X] = ~ ~ , . x . we obtain: //,[x-I = &
(5) H4,m[x] = FeFm -- o:,,~ HC,,,,~[x] = feFmFv - ot~,,,fv -- c%vFm- o~moF, etc. so that equation (1) becomes: Wn(~l . . . . . =
C., tl,---,
{ 1 + s~=3 ~.w 1 . . . . .f~,
t.)
1 bs(t~,'",t,~)
H [~(t)-Kl(t)]} .....
x W~(¢, . . . . . ¢,,)
The analysis of the experimental results proved that only the first few terms in the above expansion are required for an adequate representation; thus, the calculation of the matrix ate., becomes relatively easy.
One-dimensional probability density and its various moments
228
Appl. Math. Modelling, 1978, Vol 2, December
(6)
and skewness is introduced. In the third approximation, the mean is unshifted, but a non-zero kurtosis appears given by: k4/k 2. The four first central moments, calculated through the defining integrals are 0, a 2, a 3 SK 3a 4 + K.,t °', respectively. The first four moments about the origin are similarly calculated. The above results are in good agreement with those of Kinsman s over short fetches. The present expression differs from Kinsman's by the term (2//0.2)- s/2{exp( --½ n2/tr2)} 1/72SK2H6 which becomes negligible, when SK is small.
Two-dimensional probability density and its various moments Using equation (6) and the polynomials (equation 5) for n = 2, we conclude after some algebra that:
Stochastic modelling of nonlinear water waves: N. C. G. Markatos W2(nl,n2)
=
{
1
bom)H.m )
1 + S=3
• l+ra=S
)
x WG2(nl,nz)
(9)
where: b0,, ) = b, +,. (t, ..... t , , t2 . . . . . t2) l times m times
Therefore:
which is an expansion in orthogonal polynomials. In the second approximation, the mean of the distribution is shifted to: (<~1),(~2))
#,o=#ox,
(~)
=~
,ff
F(iu)F(iu 0 < exp{i(u~ + u,¢,)} > dudu,
L L
(klo,k01), k,o=ko,
= (#10,U01)
where ~(t) is the signal and nl(t) is the output. We can simply apply Rice's method by considering the transformation ndt) = g(¢) = ¢(t) for 141 < Z. Then since g(¢) vanishes for ~ less than some fixed number, we can choose equation (11) to be the Fourier transform, and we have to consider only real values of u.
=
=41 f :4
'
Ju-~u2eXp~-~o',(u
where/z,, are the bivariant moments, and the abscissa is multiplied by the factor:
+ 2R,(z)uu, +
L L
x Jo(B.x/u 2 + u~2 + 2uu~cosogoZ) dudu,
(12)
1
{1 + g[bt30)Ht30) + 3b(21)Ht21) + 3b(12)H(12) + b(03)H(o3~ } introducing various kinds of skewness, specified by the parameters b,j} above. For a process of mean ( n ) and variance a 2 the modification of the derived distribution is achieved simply by using the Gaussian bivariant distribution for an unnormalized variable and by calculating the Hermite polynomials H{.,). The above results can be applied to evaluate the joint distribution of two random variables other than the elevations as, for example, the two components of slope of a random air-water surface. It is proved that in the joint distribution of surface slopes, the third-order cumulants are, at least, of order a 6, proving that the distribution of slopes is not symmetrical about the mean. This symmetry would certainly follow if, for example, it were possible to reverse the direction of time (so that forward slopes become rear slopes and vice versa). In fact this cannot happen, even for free undamped waves, as it has been shown that there exists a flow transfer of energy from one part of the spectrum to another 6'7. The third-order quasi-moments bok and the Hermite polynomials are easily calculated through known relationships.
Correlation functions and power spectra of the wavy surface elevations The model, which explains the data reasonably, and has a sound theoretical justification, represents the air-water interface as an oscillator, under the influence of a regular force Bcos(co0t + 0o)* and a stationary random force n(t). Therefore: ~(t) = n(t) + Bcos(coot + 0o)
if F(iu)ei"~du L
* B is an amplitudeand mo a characteristicfrequency
L
x
__ 2
exp/__fu~/
L
x J o ( B J u 2 + U~2 + 2uu~ cos tOoZ) -~
~.[-~
fdUJk(BU)exp( ( - 1 ) .+k n!
a2
× - - e k R '
'
-12
~ coskcooZ
(13)
The correlation function k.(z) for ~(0 is obtained from equation (13) after subtracting the term corresponding to n = 0, k = 0 (the d.c. component). Calculating the integrals involved in equation (13) (taking care of two of those which have a pole at the origin) we obtain: 2
with n(t) being a Gaussian process with correlation function a2Rl(z), and initial phase, 00, being completely random and statistically independent of ~(t). To find the correlation function of ~(t) we used the characteristic function method given by Rice s'9. The basic idea is to represent the transfer characteristics of a nonlinear device by a contour integral:
ql = g(O = ~
where Jr(x) is the Bessel function of the first kind and order K, and i the imaginary unit. Extending the addition theorem for Bessel functions to the modified Bessel functions (see Appendix), and expanding the exponentials we obtain:
ek=2
0 h~. =
for
for
k/>l K odd and n even k, n either both odd (15)
2Qk.(B)
or both even 0
for
k even and n odd
+ n - - 1)
(11)
Qk.(B) =
F( k 2 /a2~,_2/2 BI2 /
°xP(-5) F(k + l)
Appl. Math. Modelling, 1978, Vol 2, December
229
Stochastic modelling of nonlinear water waves."N. C. G. Markatos (16)
X M 1 / 2 ( n_ 2),k/2
F(Z) is the G a m m a function and M~,u{Z } is one form of the Whittaker function (reference 10), which is directly related to the degenerate hypergeometric function ~b(a; b;~). The amplitude of the ko~o/2n component of ¢ is calculated to be:
B2kF(k _ ½)
2tk- 5/2)~0"(12k + 3)F(2k
7961
"~
5.985
-~
to 4"00~
+ 1)
¢ k-
2033
1.
2,2k + 1;
(17)
Using
0057
Pl(f) =
t
S[_~____
0
2"136
5":272 7.c)09
10"545
13:181
to
and (18)
+ oo
Figure 1 S p e c t r u m of w a v y surface elevations. ~ = 0.3; coo = 4.60c/s; a~= = 3.89; z = 0.5
[p.(f) =1 f SEn;f_ x]P.-,(x)dx 4"397
- oo
where S(X; g) is the spectral density, we calculate the continuous portion of the spectrum to be: oo 2a~ ~ ~ ~k = 7_.., Z_, --7 h2K,, Sd¢;f] --~-,,=~ ~=on!
3382
n+k> 1
2"366
x [P,,(f - k¢oo) +
P.(f + kmo)]
(19)
(k, n both either even or odd). The terms (2, 0) and (1, 1) give the greatest contribution to the series, and the remaining terms contribute less and less as n and k increase. Assuming that n(t) has the very frequently occurring correlation function al2 exp( - blz]) cos ~OoZ. Then:
sd¢: q = V-/,.o2
n3
+
L
/~2+(f
1 2(-°o)2 )
2~0o)2
aul
-04 1 12re3 16ct2 + ( f -- 2(.00)2 +
x
~10/,,2 O(u 1 t~04
48rc 3
o-1~h22 _
4090)2
+
2re---W-
4c(2 + ( f _ 4¢Oo)2 + ...
(20)
where:
h,, - B --x/~e-(82/4"P[I°( L , -~
x//~ -
h22=
e-
~ - ~ ¢[ 3, he, = ~
230
(92/4a2) [
5
0
~
0-335 - 0680
0
I
0210
0421
0632
0"843
1054
where l,(x) is the modified Bessel function of the first kind, of order n with imaginary argument. Typical correlation and spectral functions for wavy surface elevations are given in Figures 1 and 2. Their analysis proves that:
)
~I0/~2
( 16C(2 ( f,
3
Correlation function of wavy surface, c( = 0.3; (% = 4.60 c/s; a~ = 3.89; z = 05; time scaled with respect to period
a41ah21 try°r1 i. 2 [ 1 } + ha(a2 + f2) + 8--~-"o4/16a2 + f 2 /
x
-
Figure2
+ a~ / 2
+
1
%
=]
a4ah2'[
0c
- 'l( -ffff~ ) ]
B2
B2
I~" 1; -2--~a12)
A p p l . M a t h . M o d e l l i n g , 1 9 7 8 , V o l 2, D e c e m b e r
(21)
(1) The correlation and spectral functions for the Gaussian component are independent of z (z = (B2)/(2a2)), all the other parameters being the same. (2) For different variances (a2), the correlation and spectral functions for the Gaussian component have identical shapes, and magnitudes directly proportional to the variances, all the other parameters being the same. (3) For different variances (a~), the correlation and spectral functions tor the wavy surface elevations have identical shapes, and magnitudes directly proportional to the square of the variances, all the other parameters being the same. (4) The correlation and spectral functions for the wavy surface elevations have the same shapes, but different magnitudes for different z, all the other parameters being the same. The shapes of the various functions vary with the damping factor ~. With ~ as a free parameter, we can easily fit any correlation and spectral functions observed during the experiments.
Stochastic modelling of nonlinear water waves: N. C. G. Markatos D e s c r i p t i o n o f wave profile
0733
The Fourier series representation of wavy interfaces is not the best representation. Not only do we need several Fourier components for an accurate representation, thus making the functional form of the surface inconvenient for further investigation, but also, this representation is not unique, in the sense that the different Fourier components have different importance under varying measuring conditions. Further, the series associated with a sequence of disturbances occurring at random 9:
~044C E
0293 o.,
a0
l(t) = ~- + ° =Z,
[
2rent
ta"c°s-- -÷
27rot b, sin ~ - - )
(22)
regards the coefficients a, and b, as independent random variables, distributed about zero according to a normal law. Einstein and Hope 11 have discussed the normal distribution of the above coefficients, when equation (22) is used to represent black-body radiation. They concluded that these coefficients are independent. However, it can be proved that they are not independent in the general case of a random stationary process, with the only exception being that of the 'chaos function'. The alternative to the Fourier series representation, which is theoretically more sound, and has the same accuracy with the great advantage of using fewer terms, is the Edgeworth expansion in terms of the orthogonal Hermite polynomials, of order r in y, H,,
~(y) = ~, hiH,(y)a(y)
(23)
i=0
where y is measured in a coordinate system travelling at the wave propagation velocity: 1
a(y) = ~ e x p (
x/2z
- ½x2)
(24)
and
i-2. i! Hi(y)= Z (-½)" .yi-2, ,,= o n !(i - 2n) !
(25)
o J -4", )18
. -2-673
.
.
-1"328
. 0-017
1'362
2-708
X
Figure 3 Typical wave profile and its representations. (1), representation by a six term Fourier series; (2), representation by a 3 term Fourier series; (3), exoerimental profile; (4), representation by a 3 term Edgeworth series
Statistical distributions for the w a v e amplitudes
The amplitude distribution of a non-Gaussian narrowband process is a modification of the Rayleigh one, given by: ( A2+B2 ) f(A) = A/tr 2 exp 20.2 Io(AB/0. 2) (27) where f(A) is the probability density function of the amplitude, A, a is the standard deviation and B may be considered as a fictitious 'additional' contribution to the amplitude. Fitting the experimental data by equation (27) proved very satisfactory and it is from this that equation (10) was devised to represent the air-water interface; because equation (10) leads to equation (27) for the amplitudes. It may be shown that the amplitude function can be replaced by a onedimensional Markov process. Figures 4 and 5 present, as functions of Z = BA/0. 2, the wave amplitude probability density and distribution functions. The numbers on the curves correspond (increasing magnitude) to the values z - 0.10, 0.50, 1.00, 2.00, 3.00 and 4.00. 0291
+~
h, = -~.
0
~(y)H,(y) dy = r! 0233
-oo
x I /#1_
r[2] z r[4] 1 .... 1 2~.T#,_ z + ~,2.v/~,-4 (26)
where #,~ is the moment of order r about the point a. The 0th term of equation (23) is a Gaussian and successive terms represent modifications to this shape. With the above expansion, we fitted all the experimental profiles by using only two and three terms. Figure 3 presents an experimental wave profile and its theoretical approximation by Fourier and Edgeworth series. The advantages of the latter are obvious.
0-175 0"116 0058
0
r 30
3- 61
s-1'92 6. ;23
8- ,54
Figure 4 Probability density of wave amplitudes for various Z(a 2 = 3.89)
Appl. Math. Modelling, 1978, Vol 2, December
231
Stochastic modelling of nonlinear water waves." N. C. G. Markatos
800 I'000
particularly for the cases of waves generated by the simultaneous action of wind and of a mechanical wavemaker. The mean value for a Rayleigh distribution, proposed by Longuet-Higgins 4 and used by several other authors to describe the amplitude distribution of the sea surface is: {A> = ,,f-~0.. Thus, the deviation of the present distributioffs mean from the above is the factor e- =~b(3; 1; z), and is increasing with z. According to Rice s, for the Rayleigh distribution (A)/0.o = 0.886, a0 being the r.m.s, amplitude (a0 = (A 2) = 2a 2 + B2). Figure 6 presents the present experimental data (least-square fitted to (A>/ao = 0.926), together with Longuet-Higgins predictions #, and our theoretical values averaged:
. . . . . .
080C
/
0-600
iiii 0850
2"550
4"350
5c)50
7"650
9"350
Figure 5 Distribution function of wave amplitudes for various Z(o2 = 3.89)
Moments of one-dimensional probability density function The mean wave height ( A ) is given by: oo
( A ) = f Af(A) dA tl 0
B2 iF(1 +½) ,/3
= x/~aexp - - ~ 2 ] ~ # [ ~ ;
B2)
1;f~G2
( A 2 ) -- 20"24 -- 1 ; 1 ; -
(29)
(Aa> = 2a/Ee34~
(30)
2' 1" -
and in general: n
q~ --~; 1;
- ~-~-~2
(31)
The nth central moment of the distribution is easily calculated from its defining integral; for example: < ( A - )~> = 2 a ~ ~