TOP 10 PREDICTIONS IDC Predictions 2012: Competing for 2020 ...
Extreme wave predictions around New Zealand from hindcast …
Transcript of Extreme wave predictions around New Zealand from hindcast …
399Stephens & Gorman—Extreme wave predictions around New Zealand
Extreme wave predictions around New Zealand from hindcast data
Scott A. StEphENSRichARd M. GoRMAN
National institute of Water and Atmospheric Research Limitedp.o. Box 11 115hamilton, New Zealandemail: [email protected]
Abstract A recently implemented wave hindcast for the New Zealand region was used in conjunction with wave-buoy data to evaluate extreme significant wave height at multiple sites around New Zealand, for the first time. hindcast storm wave heights were under-predicted compared with wave-buoy measurements at three inshore sites, and a method for scaling the hindcast data to improve the com-parison of predicted extreme wave heights was explored. different statistical methods for predicting extreme wave heights were also compared. offshore, extreme wave heights displayed a north–south and an east–west gradient that is in keeping with the mean wave climate, with larger waves in the south and in the west. however, the variation of extreme wave heights between sites was less than the mean wave climate would suggest, because mid-latitude depressions generate comparatively large waves on the generally more sheltered northeast coast. At the most energetic site to the southwest of the South Island, a 1 in 100-year return significant wave height Hs(100) of 19.3 m and maximum wave height Hmax(100) of 45 m were predicted. At the least energetic site to the northeast of the North island, estimates of Hs(100) = 13.9 m and Hmax(100) = 33 m were obtained.
Keywords extreme wave height; wave hindcast; wave climate; New Zealand
INTRODUCTION
Estimates of the most energetic wave conditions to be expected over various time scales are fundamental to navigation, the design of offshore structures and ships, and broadly applicable to many aspects of coastal management and engineering, e.g., wave overtopping hazards and appropriate mitigation (e.g., clauss 2002; Wang & Swail 2002; Alves & Young 2003; Stansell 2004). this information is most commonly presented as occurrence statistics for extreme values of the significant wave height Hs, which describes the average of the highest 1/3 of the waves in a measured burst. The extreme significant wave height, denoted Hs(R), can be described as the threshold Hs value exceeded once during a lifetime interval, or return period, R. New Zealand is an island nation exposed to a considerable range in wave climate (Laing 2000), but little is known about the surrounding extreme wave climate. the recent implementation of the wave evolution model WAM (WAve Model) to provide a 20-year hindcast of wave conditions for the New Zealand region (Gorman et al. 2003a,b) has provided a new tool for the evaluation of Hs(R). determination of Hs(R) traditionally involved the statistical analysis of a historical time series of wave heights measured by wave-buoys. Although wave-buoys may underestimate the extreme individual wave heights occurring in their vicinity (Magnusson et al. 1999), they provide adequate temporal reso-lution to capture the peak significant wave heights produced during storm events (e.g., Alves & Young 2003). Therefore, extreme significant wave heights can be reliably predicted from buoy data, providing the buoy records are of sufficient duration (capture enough storms) to reliably fit a statistical distribution and to account for variability in the wave climate (e.g., Mathiesen et al. 1994). Unlike some well-studied areas in the northern Atlantic and Pacific oceans, wave-buoy records around New Zealand are sparse and typically of short duration, and generally do not provide adequate historical coverage of wave data for the purpose of estimating Hs(R). Furthermore,
M05073; Online publication date 7 July 2006 Received 23 November 2005; accepted 21 February 2006
New Zealand Journal of Marine and Freshwater Research, 2006, Vol. 40: 399–4110028–8330/06/4003–0399 © the Royal Society of New Zealand 2006
400 New Zealand Journal of Marine and Freshwater Research, 2006, Vol. 40
those buoy records that do exist are often located relatively close to shore, so the measured wave records tend to be location-specific and not easily transferred to other sections of coast (Gorman et al. 2003a). Methods for describing wave climatologies over wide areas have become available more recently. Satellite altimeter data have been used to provide a wave climatology for the New Zealand region (Laing 2000). In addition to requirements for verification and bias correction, altimeter data may be under-sampled in both space and time so that storm peaks are under-represented in the record (e.g., Laing 2000). Altimeter data can be used in characterising extreme wave statistics, but this under-sampling presents difficulties that must be treated with care (e.g., cooper & Forristall 1997; Alves & Young 2003). Similar reservations apply to wave measurements from satellite-borne Synthetic Aperture Radar, although the radar offers promise in detecting individual extreme wave events (Schulz-Stellenfleth & Lehner 2004). Numerical simulation of the wave spectrum using advanced third-generation wave models now represents the main source of data for wave climate studies (Lopatoukhin et al. 2000). When driven by accurate wind fields, accurate simulations of the principal scale and shape properties of the
gravity wave field are produced (Laing et al. 1997; Lopatoukhin et al. 2000; Swail & cox 2000; Wang & Swail 2002). however, to accurately specify storm events often requires some form of detailed re-analysis of the input wind fields to add the necessary fine-scale high-energy wind gusts (Cardone et al. 1996; Wang & Swail 2002). Without this labour-intensive re-analysis, wave hindcasts tend to under-predict Hs during storms (e.g., Laing et al. 1997; Sterl et al. 1998; Gorman et al. 2003a). here the hindcast model was used to calculate extreme wave heights around New Zealand. We initially compared hindcast Hs(R) with those derived from buoy data. to improve the accuracy of hindcast Hs(R) we tried different methods of analysing hindcast data and tested a simple method for scaling the hindcast data. We then used the hindcast to characterise Hs(R) at six deep-water sites located off different sectors of the New Zealand coast, and compared the trends with those from the mean wave climate (Gorman et al. 2003a).
mATeRIAls AND meTHODs
Wave records were taken from four deployments around the New Zealand coast (Fig. 1, table 1). these sites are subject to a wide range of wave conditions
Fig. 1 New Zealand landmass and locations of wave-buoys (+) and offshore hindcast sites (o) for which extreme wave height statis-tics were derived.
401Stephens & Gorman—Extreme wave predictions around New Zealand
experienced on the New Zealand coast. two of the deployments (Mokohinau island and Katikati), were on the northeast coast of the North island and sheltered from the energetic Southern ocean, the Maui site was affected by wave conditions in the tasman Sea to the west as well as from Southern ocean swell, and the Baring head site in eastern cook Strait was exposed to the south and southeast. other buoy records around New Zealand (e.g., Gorman et al. 2003a) are not suitable for extreme wave comparison with the hindcast model, owing to limited duration or sheltering effects. the wave generation model WAM (Wave Model) was implemented over a domain covering the southwest pacific and Southern oceans with a rectangular grid of 1.125° resolution latitude/longitude (Gorman et al. 2003a). the model was used to hindcast the generation and propagation of deep-water waves incident on the New Zealand coast over a 20-year period (1979–98), using winds from the European centre for Medium-Range Weather Forecasts (EcMWF) supplied at 1.125° horizontal resolution and at 10 m elevation. the wind data are supplied at 6-h intervals, between which the WAM model uses linear interpolation of wind speed and direction. Gorman et al. (2003a) compared the hindcast with data from wave-buoy deployments at eight representative sites around the New Zealand coast and found it to provide a satisfactory simulation of wave conditions at sites on exposed coasts (notwithstanding under-prediction of Hs during storms). An interpolation routine that included correction for the effects of limited fetch and sheltering by land (Gorman et al. 2003a) was used to extract hindcast wave spectra and statistics at the buoy sites at 3-h intervals. Wave statistics from the buoy records and the matching hindcasts, discussed above, apply to specific nearshore locations that may not fully characterise the wave climate in New Zealand offshore waters at a broader scale. We therefore used the hindcast to predict Hs(R) at six sites off the New Zealand coast (Fig. 1) to examine the spatial distribution of extreme waves in relation to the general wave climate presented in Gorman et al. (2003a,b). the lower South island, particularly the west coast, is exposed to long wind fetches and storms often arise from elongated trough depressions (Steve Reid, NiWA pers. comm.). conversely, storm waves on the east coast of the North island tend to be generated over comparatively short fetches by mid-latitude depressions, which often originate in the tasman Sea before moving across to the east coast (Steve Ta
ble
1 B
uoy
depl
oym
ents
refe
rred
to in
the
com
paris
on w
ith w
ave
hind
cast
resu
lts. c
olum
ns d
escr
ibe
the
loca
tion,
the
depl
oym
ent p
erio
d fo
r whi
ch th
e da
ta
wer
e av
aila
ble
(not
with
stan
ding
any
gap
s in
the
reco
rds)
, the
dep
th o
f dep
loym
ent,
and
the
fund
er/o
pera
tors
of t
he b
uoy
(NiW
A, N
atio
nal i
nstit
ute
of W
ater
and
A
tmos
pher
ic R
esea
rch
Lim
ited)
.
Site
Lo
ngitu
de
Latit
ude
dat
a av
aila
ble
dep
th (m
) Fu
nded
/ope
rate
d by
Bar
ing
hea
d, W
ellin
gton
17
4.84
67
–41.
4022
21
Apr
199
5–pr
esen
t 45
tr
anzR
ail,
Wel
lingt
on R
egio
nal c
ounc
il, N
iWA
Kat
ikat
i, B
ay o
f ple
nty
176.
0539
7 –3
7.41
95
1 M
ar 1
991–
31 d
ec 1
995
34
NiW
AM
aui p
latfo
rm, t
aran
aki
173.
45
–39.
55
1 Se
p 19
76–3
0 A
pr 1
987
120
Shel
l, B
p, t
odd
petro
leum
, Uni
vers
ity o
f Auc
klan
dM
okoh
inau
isla
nd, h
aura
ki G
ulf
175.
0833
–3
5.88
333
15 M
ay 1
998–
pres
ent
100
Auc
klan
d R
egio
nal c
ounc
il
402 New Zealand Journal of Marine and Freshwater Research, 2006, Vol. 40
Reid, NiWA pers. comm.).
Hs(R) predictions using the IAHR recommended practicethe statistical analysis of extreme waves can be undertaken following several approaches (see Muir & El-Shaarawi 1986 for an early review). in analysing both buoy and hindcast data we followed the methods recommended by the international Association for hydraulic Research (iAhR) for the statistical analysis of extreme waves (Mathiesen et al. 1994). We also trialled the use of the total-sample method (tSM—also known as the initial distribution method, Mathiesen et al. 1994) for predicting Hs(R) from hindcast data, following Alves & Young (2003). the iAhR recommended practice can be summarised as follows (e.g., Alves & Young 2003): (1) select a subset of Hs using the peaks-over-threshold (pot) method; (2) separate the subset of Hs maxima into new subsets with data from different storm populations; (3) fit the three-parameter Weibull (3pW) cumulative distribution function (cdF) to the data from each subset; (4) compute the Hs(R) values associated with a chosen return-period, for each storm population; and (5) compute confidence intervals for the predicted Hs(R). the accuracy of the extreme wave predictions depends on (e.g., Mathiesen et al. 1994; Alves & Young 2003): (1) the quality of the input data, including: (a) the accuracy of the measured or hindcast wave maxima—this is fundamental; accurate extreme values rely on high-quality storm data; (b) suitable historic coverage—the longer the available record the more reliable the estimates. increased reliability results from improved statistical precision of the estimates and from decreased error associated with climate variability; and (2) the degree of fit between the “true” distribution of the storm heights, and the fitted statistical distribution (e.g., 3pW) used to extrapolate to the extreme values. Although buoy records provide adequate storm resolution, they are location specific and very few buoy deployments around New Zealand have sufficient historical coverage for reliable Hs(R) predictions. As the model hindcast systematically under-predicts peak wave heights during storms, Hs(R) predictions based on hindcast data are likely to be under-predicted also. however, the hindcast has a relatively long record (20 years) compared with available buoy data, so the extreme values predicted from the hindcast have a higher degree
of statistical precision, and uncertainty owing to climate variability is minimised. An attempt to scale the hindcast data to improve the accuracy of extreme value predictions is described below. Separation of the data into storm populations that reflect the different forcing mechanisms allows the fitting of the chosen statistical model (e.g., 3PW) to the data and provides confidence that the extrapolation to a chosen return period will be a reliable estimate of Hs(R) (Mathiesen et al. 1994). Fitting a statistical model to all Hs maxima may lead to unreliable extreme-wave estimates, since the probability distribution does not necessarily fit all values of Hs (e.g., Muir & El-Shaarawi 1986; teng 1998). the hindcast extreme value predictions were made from six sites around New Zealand that experience considerable natural sorting of wave conditions (Gorman et al. 2003a). Based on this natural sorting, and given the aforementioned uncertainty in hindcast storm heights, we chose to forego the considerable effort involved in separating storm origins. the wave-buoy deployment at the Maui platform (table 1) is the only buoy record of sufficient duration to warrant the separation of storm populations, but it cannot provide an extreme wave climatology by itself. the wave hindcast records consisted of time series of wave statistics at 3-h intervals, including significant wave height, calculated from output energy spectra. the buoy records consisted of wave statistics calculated from 20-min measurement bursts spaced 1–3 h apart depending on the site. the pot method was used to select peak Hs values from the wave records and to separate them into individual storm events. First, all values of Hs more than one standard deviation above the mean were selected from the record. Second, the local Hs maxima were selected from this group, such that the minimum time-interval between local maxima was 3 days (e.g., Mathiesen et al. 1994; teng 1998). the 3-day separation ensured that the maxima were from separate storms; wave observations at synoptic time-scales are correlated, on average, for 1.5–3 days (Lopatoukhin et al. 2000). At most sites this resulted in one storm every 12–14 days, or a rate of λ = 27–30 storms per year. this storm rate is similar to other studies that have used partial-duration maxima to predict extreme waves (e.g., cooper & Forristall 1997, λ = 30.11; Goda et al. 2000, λ = 11.2–38.6; Alves & Young 2003, λ = 10.9–21.6). The 3PW distribution was fitted to each of the storm peak distributions using the method of least-squares (Mathiesen et al. 1994). The goodness of fit
403Stephens & Gorman—Extreme wave predictions around New Zealand
was assessed using both the cramér-von Mises and the Anderson-Darling statistics at 95% confidence (Stephens 1974). Generally speaking the Anderson-darling statistic is effective at detecting departures in the middle of the distribution, whereas the cramér-von Mises statistic is more effective at the tail of the distribution and is in general more powerful (Muir & El-Shaarawi 1986). Return values were then calculated based on the fitted 3PW distributions following Mathiesen et al. (1994). 2500 Monte Carlo simulations were undertaken for each fitted distribution, yielding mean and standard deviation statistics for the calculated return values (e.g., Goda 1988). the Monte carlo technique provides a better representation of the asymmetry of the confidence intervals about the mean value than standard error techniques (Mathiesen et al. 1994), and provides confidence estimates for those distributions that have no available formulae for return value confidence intervals (Goda 1988). hindcasts based on spectral wave models simulate significant wave heights for a certain time interval, but do not directly provide estimates of the maximum height Hmax of individual waves for the corresponding time. Also, the available buoy records do not always include such data. the maximum wave height can, however, be estimated if the distribution of wave heights within a recording interval are assumed to satisfy the Rayleigh distribution, which can be demonstrated to apply for a stationary Gaussian process (cartwright & Longuet-higgins 1956). With this assumption, the maximum expected wave height can be estimated as:
H H Ns R
Rmax ( )
ln( )=2
(1)
where NR = number of storm waves during return period R and Hs(R) is the mean significant wave height with return period R, obtained from the Monte carlo analyses. We note, however, that return height maxima calculated in this way may be exceeded by “rogue” or “freak” waves, such as described by clauss (2002) and Stansell (2004). however the concept of a rogue wave applies to situations in which the Rayleigh distribution as assumed above does not apply (haver 2000).
Hs(R) predictions using Tsm dataAlves & Young (2003) used satellite altimeter observations of Hs to estimate Hs(R). the satellite sampling density means that not all extreme events are sampled, hence methods such as pot will result
in an underestimation of Hs(R) (Alves & Young 2003). to overcome this limitation, Alves & Young (2003) used the tSM to select Hs, in conjunction with the Fisher-tippett 1 (Ft1) distribution for extrapolating Hs to Hs(R), following carter (1993). the tSM uses all available data (e.g., Goda 1988; Mathiesen et al. 1994), i.e., a statistical distribution is fitted to the whole data set. Alves & Young (2003) observed that although the Ft1 distribution did not necessarily provide a good statistical fit, when combined with tSM data it provided a better match to Hs(R) predicted from buoy records than when the iAhR method was followed. they suggested that the tSM method combined with the Ft1 (or another suitable) distribution, might also be useful for estimating Hs(R) from wave hindcast data, which also commonly under-samples storms. We therefore compared the use of both tSM and pot data for the prediction of Hs(R) from hindcast Hs, and comment on the comparison between different statistical distributions for the representation of the tSM data. The 3PW, FT1, and lognormal CDFs were fitted to the tSM data from each site, using the method of least-squares (Mathiesen et al. 1994). these three statistical distributions have been commonly applied for extreme wave prediction (e.g., Muir & El-Shaarawi 1986; Goda 1988). the Generalised pareto distribution is suited for the extrapolation of heavily censored data (e.g., van Gelder et al. 2000; Stansell 2004) but did not fit the TSM data well. The goodness of fit was assessed using both the Cramér-von Mises and the Anderson-darling statistics at 95% confidence (Stephens 1974, 1977). Return values were then calculated based on the fitted distributions following Goda (1988) and Mathiesen et al. (1994).
ResUlTs
We derived extreme wave statistics from wave-buoy records obtained at four sites, and compared these with corresponding estimates from hindcast wave records for the same locations. First we compared methods of analysis for determining Hs(R) from hindcast Hs and then tested a method for scaling the hindcast extreme wave distributions. We then predicted Hs(R), to investigate spatial variations in extreme wave climate around New Zealand.
Comparison of methods for predicting extreme waves from hindcast dataA number of wave records are available from instruments deployed around the New Zealand coast
404 New Zealand Journal of Marine and Freshwater Research, 2006, Vol. 40
Fig. 2 Scatter plots of matching storm peak Hs from the buoy records and from hindcast data extracted at the four buoy sites (Table 1). Lines of best linear fit and of equivalence are shown by black and grey lines, respectively.
Table 2 predicted Hs(100) (m) from buoy and hindcast Hs data. combinations of data treatment (peaks-over-threshold (POT) and total-sample method (TSM)) and CDF fit (three-parameter Weibull (3PW), lognormal, and Fisher-Tippett 1 (Ft1)) were compared for hindcast data. Values in parentheses show the difference between hindcast and buoy predictions as a percentage of the buoy prediction. Goodness of fit to the Anderson-Darling (left) and Cramer-Von Mises statistics (right) are indicated by ✓ or ✗ (following Stephens 1974, 1977). Statistical distributions were fitted using least-squares and Hs(100) calculated directly (i.e., not from Monte carlo analyses, c.f. table 3).
Buoy Model pot/3pW pot/3pW (iAhR) (iAhR) tSM/Lognormal tSM/3pW tSM/Ft1
Baring head 9.91 ✓✓ 8.41 (–15%) ✓✓ 10.45 (5%) ✗✗ 7.34 (–26%) ✓✗ 7.34 (–26%) ✗✗Katikati 5.47 ✓✓ 7.66 (40%) ✓✗ 11.71 (114%) ✗✗ 7.72 (41%) ✓✗ 6.29 (15%) ✗✗Maui 10.27 ✓✓ 9.69 (–6%) ✓✓ 11.34 (10%) ✗✗ 8.53 (–17%) ✗✗ 9.61 (–6%) ✗✗Mokohinau island 10.29 ✓✓ 8.42 (–18%) ✓✓ 9.90 (–4%) ✗✗ 8.65 (–16%) ✓✗ 6.97 (–32%) ✗✗
405Stephens & Gorman—Extreme wave predictions around New Zealand
during the hindcast period. We have selected four deployments where the buoy record contained a sufficient number of storms to reasonably fit CDFs (table 1, Fig. 1). Fig. 2 shows the scatter between matched storm peak Hs from the buoy records and from hindcast data extracted at the buoy sites. the hindcast generally under-predicted Hs during storms. table 2 shows a comparison of Hs(R) predicted from both buoy and hindcast data. the iAhR recommended practice was followed for the analysis of the buoy data, but several analysis methods were compared for the hindcast data, including the iAhR recommended practice and the fitting of the 3PW, Ft1, and lognormal distributions to hindcast tSM data. in making these comparisons we assumed that the iAhR recommended practice gives the best estimate of Hs(R) for buoy data, as recommended by Mathiesen et al. (1994) and implemented by Alves & Young (2003). this seems reasonable given the good fit of the 3PW distribution to the POT data (table 2). the predicted Hs(100) values from the buoy record generally exceeded those predicted by the hindcast. the exception was the Katikati site, where the hindcast Hs(100) was considerably higher than that from the buoy. the relatively small value of Hs(100) obtained from the Katikati buoy data does not appear to relate to the scatter in storm Hs for this site (Fig. 2), which would lead us to expect higher return heights predicted from the buoy record than from the hindcast. however, comparison of the 20-year Hs time series with the 4-year buoy time series revealed that the buoy deployment (1991–95) coincided with a period of relatively low wave energy on this coast. therefore, the buoy record missed some of the largest events occurring at the site since 1979, i.e., the buoy record does not provide a sufficient historical record to accurately extrapolate return wave heights. thus, the use of short-term records can lead to substantial errors in predicted return values, by not accounting for climate variability. the same constraint was expected to apply to the other buoy records, particularly at the Mokohinau island site where the record is shortest. however, the timing (and location) of the other buoy deployments meant that they captured some storms of comparable size to the largest storm predicted by the hindcast. We thus omitted the Katikati site from the comparisons that follow. Not considering the Katikati site, the methods can be ranked according to the best to worst match with buoy Hs(100) values as follows—tSM/lognormal, Ta
ble
3 c
ompa
rison
bet
wee
n H
s(10
0) s
tatis
tics
pred
icte
d fr
om b
uoy
reco
rds
(tab
le 1
) and
from
hin
dcas
t dat
a ex
tract
ed a
t the
buo
y si
tes.
col
umns
des
crib
e th
e nu
mbe
r (n)
of s
torm
s and
the m
ean
and
stan
dard
dev
iatio
n (σ
) of t
he H
s(10
0) (m
), ca
lcul
ated
from
a po
pula
tion
of 2
500
Mon
te c
arlo
sim
ulat
ions
. ∆m
is th
e diff
eren
ce
(hin
dcas
t – b
uoy)
bet
wee
n th
e pr
edic
tions
of m
ean
Hs(
100)
from
buo
y an
d hi
ndca
st d
ata,
as a
per
cent
age
of th
e hi
ndca
st p
redi
ctio
n. D
istri
butio
n fit
s wer
e ap
plie
d to
al
l ava
ilabl
e st
orm
dat
a an
d di
d no
t acc
ount
for o
verla
p be
twee
n th
e bu
oy a
nd h
indc
ast r
ecor
ds.
B
uoy
(iA
hR
– p
ot
/ 3pW
) h
indc
ast (
iAh
R –
po
t / 3
pW)
hin
dcas
t (tS
M /
logn
orm
al)
Site
n
Mea
n H
s(10
0)
σ H
s(10
0)
n M
ean
Hs(
100)
σ
Hs(
100)
∆m
(%)
n M
ean
Hs(
100)
σ
Hs(
100)
∆m
(%)
Bar
ing
hea
d 13
3 10
.08
0.52
50
0 8.
25
0.18
–2
2 58
440
10.4
5 0.
11
3K
atik
ati
107
5.56
0.
29
433
7.64
0.
17
27
5844
0 11
.7
0.15
52
Mau
i 33
2 10
.34
0.2
537
9.9
0.25
–4
58
440
11.3
4 0.
11
9M
okoh
inau
is.
48
10.7
1 1.
29
475
8.34
0.
17
–28
5844
0 9.
9 0.
11
–8
406 New Zealand Journal of Marine and Freshwater Research, 2006, Vol. 40
pot/3pW (iAhR), tSM/3pW, tSM/Ft1. thus, the lognormal distribution fitted to TSM data provided a better match to the buoy predictions than the iAhR method, but the latter provided the next-best match. the tSM/Ft1 combination used to analyse satellite altimeter data by carter (1993) and Alves & Young (2003) provided the worst match. table 3 shows the comparison of the mean and standard deviation of Hs(100) predicted from Monte carlo analyses of both
buoy and hindcast data for the two most accurate analysis methods. comparing mean Hs(100) values obtained from buoy and hindcast data through the relative bias∆m = (Hs(100) (hindcast) – Hs(100) (buoy))/Hs(100) (hindcast) (2)
we found that hindcast Hs(100) under-predicted buoy Hs(100) by mean(∆m) = 18% when using the iAhR
Fig. 3 Scatter plots of Hs for 24 matching storm peaks at the Mokohinau island buoy site. Black lines represent lines of best fit from linear regression, grey line represents the line of equivalence. Hindcast values adjusted by linear scaling Hs′ = mHs + c: A, raw data (m = 1, c = 0); B, model data scaled by adjusting m and c; C, model data scaled by adjusting m only (fit constrained through (0,0)); D, model data scaled by adjusting c upward by 0.80 m, so that the mean storm Hs values are equal between model and buoy.
407Stephens & Gorman—Extreme wave predictions around New Zealand
extrapolation method (averaging ∆m across all sites except Katikati owing to the under-sampling of storms by the buoy at this site). the standard deviation of the absolute value of ∆m across the three sites was 12%. Following the same procedure using the tSM/lognormal method, we found that hindcast Hs(100) agreed with buoy Hs(100) to mean(∆m) = 1% with standard deviation 3%. the various statistical distributions were also assessed against the quality of their fit to the underlying data. The IAHR method provided a good statistical representation of the hindcast data, but the chosen CDFs did not fit the tSM data well. thus, although the tSM/lognormal method provided the best match to buoy Hs(100), there remains some doubt as to the validity of the approach. it may be possible to use the iAhR recommended practice to predict Hs(R) from both buoy and hindcast data, and scale the hindcast predictions according to their relationship with buoy predictions. Fig. 3 shows the effects of linear scalingHs′ = mHs + c (3)adjusting either the multiplicative factor m, the offset c, or both. A multiplicative factor is required to align the line-of-best-fit with the line of equivalence (Fig. 3B,c). however, applying a multiplicative factor caused the data to be stretched along the line-of-best-fit and this caused a stretching of the distribution (compare Fig. 3A and B), effectively lengthening the distribution tail. therefore, when the 3pW distribution (or another statistical distribution) was fitted to the data and used to predict return wave heights, there was a disproportionately large increase in return height relative to the original scaling. the problem is manifest through a change to the scale parameter of the Weibull distribution. We rated the percentage difference in Hs(100) predicted from buoy and model data, both before and after the linear offset was applied. comparing data from all sites but Katikati, the best scaling technique was to apply an additive offset (+c) only, adjustments to m generally caused considerable over-prediction of model-derived Hs(100) relative to buoy-derived Hs(100) values. Applying an 18% additive scaling factor to hindcast Hs(100) led to a mean difference of 0%, or 1% (as a percentage of model- or buoy-derived Hs(100), respectively) across the three comparison sites. thus, the linear scaling method shows some potential for improving the match between Hs(100) predicted from the hindcast data and buoy data, notwithstanding the remaining scatter between the two sets of storm data.
predictions of extreme wave heights require some form of error analysis to be useful for engineering applications. Fig. 4 indicates the spread of the predicted Hs(100) values calculated from Monte carlo simulations for the four buoy sites, whereas the standard deviations presented in table 3 indicate the measure of statistical precision. the effect of sample size can be clearly seen in Fig. 4; the buoy at the Maui site measured 332 storms, whereas only 48 storms were measured at Mokohinau island. Hs(100) values predicted from Maui buoy data show a relatively narrow spread, the standard deviation is only 2% of the mean value. conversely, Hs(100) values predicted from the Mokohinau buoy show a relatively wide spread, with a standard deviation of 12% of the mean value. Likewise, the return heights predicted from the hindcast data generally have substantially less spread than the shorter buoy records.
spatial distribution of extreme wave climate estimated from hindcast stormsBased on the above comparisons, we chose to use the tSM/lognormal method to obtain Hs(R) estimates around New Zealand from hindcast data. the rationale for this choice is discussed further below, but relates to the under-prediction of Hs(R) when applying the iAhR method to hindcast data. in general, the predicted Hs(R) followed the trend shown by mean Hs, with smaller values in the upper North island and larger values in the lower South island, with the smallest (Hs(100) = 13.9 m) occurring on the northeast coast of the North island (Ni NE) and largest values (Hs(100) = 19.3 m) on the southwest coast of the South island (Si SW) (table 4). however, the Hs(R) showed less spatial variation relative to the mean waves. For example, the mean Hs of Ni NE was 55% of Si SW, but the mean Hs(100) of Ni NE was 72% of Si SW. therefore, although the Si SW environment is considerably more energetic on average than the Ni NE environment, mid-latitude depressions are capable of generating storm waves on Ni NE that are larger than the mean wave climate would suggest. Engineering design often requires knowledge of the highest force that will be placed on a ship or structure. For example, rogue waves have been known to disable ships and are implicated in the occasional unexplained disappearance of ships in the deep ocean (e.g., clauss 2002). table 4 shows the maximum return wave heights (Hmax(50), Hmax(100)) calculated using Equation 1. the predicted Hmax(R) are > 2Hs(R), which is the expected minimum threshold to
408 New Zealand Journal of Marine and Freshwater Research, 2006, Vol. 40
Fig. 4 Box and whisker plot of Hs(100), obtained from a population of 2500 Monte carlo simulations. plots correspond-ing to the storm data presented in table 3, from buoy data analysed using the iAhR method and from hindcast data analysed using the tSM/lognormal method. Box lines at the lower quartile (25%), median (50%), and upper quartile values (75%). Whisker lines extending from each end of box mark data within range [q75–1.5 × (q75–q25) : q75 + 1.5 × (q75–q25)], where q25 and q75 are the lower and upper quartiles respectively. (+, outlying data.)
meet the definition of a rogue wave given by Stansell (2004). Although large, the reported Hmax could still under-represent the true rogue wave heights associated with the Hs(R) distribution, because the Rayleigh distribution under-predicts the occurrence of extreme waves (Stansell 2004). Nonetheless, the predicted Hmax provide a conservative estimate of maximum return wave heights, in keeping with the Hs(R) values.
DIsCUssION
We have used a 20-year wave hindcast (Gorman et al. 2003a,b) to predict extreme wave heights around New Zealand. the hindcast under-predicted peak Hs during storms, similar to other wave hindcasts where kinematically re-analysed wind fields were not included
(e.g., cardone et al. 1996; Sterl et al. 1998; Swail & cox 2000). this leads to under-prediction of Hs(R) using hindcast data, when compared to predictions from buoy data. considerable effort is required to re-analyse wind fields for all major storms across the hindcast model domain (e.g., Laing et al. 1997; Wang & Swail 2002) and is beyond the scope of the present paper. one advantage of the hindcast is that the Hs(R) estimates were predicted with a high degree of precision compared with those available from shorter buoy records, and the extended historical coverage may also provide more accurate predictions if buoy records are of insufficient duration. For example, use of the 4-year Katikati buoy record resulted in a considerable under-prediction of return heights, because the buoy was deployed during a relatively calm period. the 20-year hindcast accounts for considerable short-term climatic variability such
409Stephens & Gorman—Extreme wave predictions around New Zealand
as that associated with the Southern oscillation (Gorman et al. 2003a). Around New Zealand there is a paucity of buoy data adequate for extreme wave prediction; available buoy records tend to be of short duration and often located close to shore so that the recorded waves are specific to that location. This paucity of data also makes it difficult to assess the hindcast performance for predicting extreme waves; there is limited data for comparison and the hindcast is affected by nearshore topographic and wave-shoaling effects close to land (a nested wave refraction model can be used to improve the predictions close to land for specific areas (e.g., Macky et al. 2000; Gorman et al. 2003b), but at considerable effort). Given the paucity of buoy data, the predictions based on hindcast data provide a useful guide to extreme wave heights around New Zealand. our analysis suggests that when the iAhR method was applied to hindcast data, Hs(R) values were initially underestimated relative to the buoy data by c. 18% (before scaling), based on comparisons at the Mokohinau, Maui, and Baring head sites (Fig. 1). this underestimation is directly related to the quality of the hindcast storm Hs. Applying an 18% additive factor showed some potential for improving the match between Hs(100) predicted from the hindcast and buoy data, but a major limitation to the method’s general applicability is the requirement for buoy records to obtain the scaling factors. only three suitable buoy records were available, and this led to considerable uncertainty (standard deviation 12%) in the applied scaling factor. one reason for this uncertainty is that the mean bias includes some geographic variability. it is recommended to separate Hs data into separate storm populations before extrapolating Hs(R) because the different populations are likely to have different distribution shapes that will affect the fitting of extrapolation CDFs (Mathiesen et al. 1994). the geographical separation between sites does this naturally to an extent because the sites have different wave exposures. thus, strictly speaking, buoy/model comparisons should be made on a site-by-site basis, and the application of an 18% mean between-site bias as a scaling factor is in violation. this violation, combined with the apparent continual under-estimation of Hs(R) following scaling, led us to choose the tSM/lognormal method to obtain the key results. Alternatively, and had the data supported it, the location of the three sites on different coastlines could be seen as an advantage, in that it produces a scaling factor that more generally applies to all areas around the New Zealand coast. Ta
ble
4 M
ean,
stan
dard
dev
iatio
n (σ
) and
max
imum
val
ues o
f hin
dcas
t sig
nific
ant w
ave
heig
ht H
s (m
) hin
dcas
t ext
rem
e si
gnifi
cant
(Hs(
50),
Hs(
100)
), an
d ex
trem
e m
axim
um (H
max
(50)
, Hm
ax(1
00))
wav
e he
ight
val
ues a
t six
sele
cted
grid
cel
ls in
New
Zea
land
: nor
thea
st o
f the
Nor
th is
land
(Ni N
E), n
orth
wes
t of t
he N
orth
isla
nd
(Ni N
W),
sout
heas
t of t
he N
orth
isla
nd (N
i SE)
, wes
t of t
he S
outh
isla
nd (S
i W),
sout
heas
t of t
he S
outh
isla
nd (S
i SE)
, and
sout
hwes
t of t
he S
outh
isla
nd (S
i SW
) (s
ee F
ig. 1
). M
axim
um H
s val
ues a
re th
e m
axim
um v
alue
out
put i
n th
e 20
-yea
r hin
dcas
t, w
here
as m
axim
um re
turn
hei
ghts
Hm
ax(R
) are
thos
e pr
edic
ted
from
Hs(
R)
assu
min
g th
at w
ave
heig
hts
with
in a
reco
rdin
g in
terv
al fo
llow
a R
ayle
igh
dist
ribut
ion
(e.g
., Eq
uatio
n 1)
. Exc
ept f
or th
e rig
ht-m
ost c
olum
n, re
turn
val
ues
wer
e ca
lcul
ated
usi
ng th
e tS
M/lo
gnor
mal
met
hod.
For
com
paris
on, t
he ri
ght-m
ost c
olum
n sh
ows H
s(10
0) c
alcu
late
d us
ing
the
iAh
R m
etho
d af
ter s
calin
g up
by
18%
.
M
ean
M
ean
M
ean
Sc
aled
Si
te
Lon
(°E)
La
t (°S
) H
s σ
Hs
Max
Hs
Hs(
50)
σ H
s(50
) H
max
(50)
H
s(10
0)
α H
s(10
0)
Hm
ax(1
00)
iAh
R H
s(10
0)
Ni N
E 17
6.62
5 –3
3.75
0 1.
88
0.81
8.
87
12.8
4 0.
14
30.1
13
.86
0.15
32
.5
11.8
2N
i NW
16
8.75
0 –3
4.87
5 2.
36
0.91
9.
45
12.2
5 0.
11
28.7
13
.04
0.13
30
.5
12.8
1N
i SE
178.
875
–41.
625
2.45
0.
94
10.6
7 13
.07
0.12
30
.6
13.9
5 0.
14
32.7
13
.85
Si W
16
7.62
5 –4
2.75
0 2.
49
1.05
10
.18
14.4
8 0.
14
33.9
15
.46
0.16
36
.2
12.6
5Si
SE
173.
250
–47.
250
2.72
1.
14
10.0
1 16
.5
0.1
38.7
17
.71
0.11
41
.5
14.5
1Si
SW
16
4.25
0 –4
9.50
0 3.
43
1.31
11
.41
18.1
1 0.
1 42
.4
19.3
0.
11
45.2
15
.48
410 New Zealand Journal of Marine and Freshwater Research, 2006, Vol. 40
the hindcast model provides a good description of the mean wave climate, but tends to under-predict Hs during storms (Gorman et al. 2003a). in situations where storms are under-sampled, an extrapolation method that makes use of the body of the data such as the tSM can be applied (e.g., carter, 1993; Mathiesen et al. 1994; Lopatoukhin et al. 2000; Alves & Young 2003). Alves & Young (2003) found that the Ft1 distribution combined with tSM data provided reasonable Hs(R) estimates from altimeter data, despite the Ft1 distribution having a poor statistical fit to the data. Our analyses showed the TSM/FT1 method to provide the poorest estimate of Hs(R), with the best estimate obtained using a tSM/lognormal combination. however, like Alves & Young (2003), we found that the tSM data was not exactly represented by the lognormal distribution as assessed graphically and by EdF statistics (Stephens 1974). Alves & Young (2003) suggest that this may be because the much larger number of data points used in the tSM, relative to pot data, leads to relatively narrower tolerance limits at a given statistical confidence level. Although graphical analysis showed that the three cdFs did not fit the tail of the TSM hindcast data exactly, it also showed that the lognormal distribution provided a reasonable if not an exact match. the tSM/lognormal combination is the method that was originally applied in the early days of extreme wave analysis (Mathiesen et al. 1994). Muir & El-Shaarawi (1986) pointed out that there is no physical reason for preferring one distribution over another and recommended use of the distribution which fits the data best. Here, we have chosen the lognormal distribution because it provided a reasonable match to the data, but mainly because it provided the closest match of Hs(R) when compared to the buoys. there was some scatter between the predicted Hs(R) when different extrapolation cdFs were applied to the tSM data, which leaves doubt as to which cdF should be applied if comparison data were absent, and suggests that further investigation is warranted on a bigger data set. our analysis is far from exhaustive with only three buoy–model comparison sites available and three statistical distributions applied. thus, the suggestion by Alves & Young (2003) that tSM data might provide useful estimates of Hs(R) from wave hindcast data remains to be fully explored. it would be interesting to see if the tSM/lognormal combination or tSM with another statistical distribution performed well on a data set with more comparison sites (e.g., cardone et al. 1996; Swail & cox 2000). the only truly robust method that is currently available for predicting extreme waves from hindcast data is to
accurately hindcast the storm waves through the use of kinematically re-analysed wind fields input to the model (e.g., Wang & Swail 2002). our results show Hs(100) values ranging from 14 m in relatively sheltered waters to the north of New Zealand to >19 m in exposed waters to the south. these values are similar to those predicted using altimeter data by Alves & Young (2003). Examples of maximum Hs(100) predictions from buoy data in the northern Pacific are 16 m (Yamaguchi & Hatada 1997) and 17.9 m (Alves & Young 2003), whereas Hs c. 16 m have been measured (cardone et al. 1996) and >17 m hindcast have been predicted (Wang & Swail 2002) in the northern Atlantic. Goda et al. (2000) provide Hs(100) estimates of 10–15 m along exposed sites of the Japanese coast that have similar extreme wave probability to our northern output sites; the northern Pacific and Atlantic oceans have similar extreme wave probability to our southern output sites (e.g., Alves & Young 2003). these comparisons suggest that our estimates obtained using the tSM/lognormal method are reasonable.
ACKNOWleDGmeNTs
this work was carried out with support from the public Good Science Fund (contract No. c01X0401) of the New Zealand Foundation for Research, Science and technology. thanks to dr Murray Smith of NiWA and two anonymous reviewers for insightful comments that led to improvements in the manuscript.
ReFeReNCes
Alves JHGM, Young IR 2000. Extreme significant wave heights from combined satellite altimeter data. in: Edge BL ed. proceedings of the 27th international conference on coastal Engineering. Sydney, iccE. pp. 1064–1077.
Alves JhGM, Young iR 2003. on estimating extreme wave heights using combined Geosat, topex/poseidon and ERS–1 altimeter data. Applied ocean Research 25: 167–186.
cardone VJ, Jensen RE, Resio dt, Swail VR, cox At 1996. Evaluation of contemporary ocean wave models in rare extreme storm events: the halloween storm of october and the storm of the century of March 1993. Journal of Atmospheric and oceanic technology 13: 198–230.
carter dJt 1993. Estimating extreme wave heights in the NE Altlantic from GEoSAt data. offshore technology Report prepared by institute of oceanic Sciences Laboratory for the health and Safety Executive, oth93–396. 28 p.
411Stephens & Gorman—Extreme wave predictions around New Zealand
cartwright dE, Longuet-higgins MS 1956. the statistical distribution of the maxima of a random function. proceedings of the Royal Society of London A237: 212–232.
clauss GF 2002. dramas of the sea: episodic waves and their impact on offshore structures. Applied ocean Research 24: 147–161.
cooper cK, Forristall GZ 1997. the use of satellite altimeter data to estimate the extreme wave climate. Journal of Atmospheric and oceanic technology 14: 254–266.
Goda Y 1988. on the methodology of selecting design wave height. in: Edge BL ed. proceedings of the 21st international conference on coastal Engineering, Malaga, American Society of civil Engineers. pp. 899–913.
Goda Y, Konagaya o, takeshita N, hitomi h, Nagai t 2000. population distribution of extreme wave heights estimated through regional analysis. in: Edge BL ed. proceedings of the 27th international conference on coastal Engineering. Sydney, iccE. pp. 1078–1091.
Gorman RM, Bryan KR, Laing AK 2003a. Wave hindcast for the New Zealand region: deep-water wave climate. New Zealand Journal of Marine and Freshwater Research 37: 589–612.
Gorman RM, Bryan KR, Laing AK 2003b. Wave hindcast for the New Zealand region: nearshore validation and coastal wave climate. New Zealand Journal of Marine and Freshwater Research 37: 567–588.
haver S 2000. Some evidence of the existence of so-called freak waves. Rogue Waves 2000, Brest, France. pp. 129–140.
Laing AK 2000. New Zealand wave climate from satellite observations. New Zealand Journal of Marine and Freshwater Research 34: 727–744.
Laing AK, Reid S, hooper G 1997. Wave conditions in the Karamea Bight, New Zealand from measurements and modelling. Pacific Coasts and Ports 1997 conference. christchurch, centre for Advanced Engineering. pp. 989–994.
Lopatoukhin LJ, Rozhkov VA, Ryabinin VE, Swail VR, Boukhanovsky AV, degtyarev AB 2000. Estimation of extreme wave heights. World Meteorological organisation. intergovernmental oceanographic commission (of UNESco). WMo/td-No. 1041. JcoMM technical Report No. 9. 73 p.
Macky Gh, McKerchar Ai, Laing AK, carter GS, chater AM 2000. Synthesis of extreme wave climate for the canterbury Bight, New Zealand. New Zealand Journal of Marine and Freshwater Research 34: 71–85.
Magnusson AK, donelan MA, drennan WM 1999. on estimating extremes in an evolving wave field. coastal Engineering 36: 147–163.
Mathiesen M, Goda Y, hawkes p, Mansard E, Martin J, peltier E, thompson E, van Vledder G 1994. Recommended practice for extreme wave analysis. Journal of hydraulic Research 32: 803–814.
Muir LR, El-Shaarawi Ah 1986. on the calculation of extreme wave heights: a review. ocean Engineering 13: 93–118.
Schulz-Stellenfleth J, Lehner S 2004. Measurement of 2-D sea surface elevation fields using complex Synthetic Aperture Radar data. iEEE transactions on Geoscience and Remote Sensing 42(6): 1149–1160.
Stansell p 2004. distributions of freak wave heights measured in the North Sea. Applied ocean Research 26: 35–48.
Stephens MA 1974. EDF statistics for goodness of fit and some comparisons. Journal of the American Statistical Association 69: 730–737.
Stephens MA 1977. Goodness of fit for the extreme value distribution. Biometrika 64(3): 583–588.
Sterl A, Komen GJ, cotton pd 1998. Fifteen years of global wave hindcasts using winds from the European centre for Medium-Range Weather Forecasts reanalysis. Journal of Geophysical Research c103: 5477–5492.
Swail VR, cox At 2000. on the use of NcEp-NcAR reanalysis surface marine wind fields for a long-term North Atlantic wave hindcast. Journal of Atmospheric and oceanic technology 17: 532–545.
teng cc 1998. Long-term and extreme waves in the Gulf of Mexico. Wave kinematics, dynamics and loads on structures conference. houston, texas, American Society of civil Engineers. pp. 342–2349.
van Gelder p, de Ronde J, Neykov NM, Neytchev p 2000. Regional frequency analysis of extreme wave heights: trading space for time. in: Edge BL ed. proceedings of the 27th international conference on coastal Engineering. Sydney, iccE. pp. 1099–1112.
Wang XL, Swail VR 2002. trends of Atlantic wave extremes as simulated in a 40–yr wave hindcast using kinematically reanalyzed wind fields. Journal of climate 15: 1020–1035.
Yamaguchi M, hatada Y 1997. Estimation of extremes of typhoon-generated wave height in the northwestern Pacific Ocean and the East China Sea. Pacific Coasts and Ports 1997 Conference. christchurch, centre for Advanced Engineering. pp. 1019–1024.