The measurement data outlined and analyzed in this section were selected from the set gathered during several measurement sessions held on the Silm Lake, near Iława, Poland, in the period 2019–2022. They were registered using methods stated in
Section 2 and measurement equipment described in
Section 3. The presented results concern analyzes of five chunks of data collected for wind forces according to the Beaufort wind scale (BFT), ranging from 4 to 9 BFT in the ship scale model. The samples were selected in order to reduce processed data to the cases when the nature of the wind corresponds, for a sufficiently long time, to the conditions distinctive for the particular BFT value. Data for each wind BFT force were examined according to the following scheme:
Consecutive stages of data examination are discussed in the following subsections. Furthermore, to keep the reference to the corresponding open sea phenomena, measured wind speed in all experiments was converted to the force in the BFT, adjusted to the dimensions of the ship model according to the equation:
where scl = 1:24 is the ship model scale, and
is the measured wind speed. This conversion is described in more detail in [
2]. Similarly, all linear dimensions, particularly wave amplitudes, ought to be scaled up by the factor
.
4.1. Wind Force and Wave Height Correlation
In order to assess to what extent the waves were caused by the wind, the correlation analysis was carried out for both phenomena. The average wind speed and wave height are presented together in
Figure 4a,
Figure 5a,
Figure 6a,
Figure 7a and
Figure 8a. The signals are represented by the red and blue lines, respectively. Qualitative convergence of data is observed in all five analyzed cases. Therefore, the waves may be considered as the wind-induced waves.
In order to show the quantitative relationship between wind and waves, normalized correlation between these pairs of recorded time courses was computed according to the formula:
The normalized correlation function for zero shift takes values equal to: 0.93, 0.92, 0.90, 0.91 and 0.95 for wind-generated waves of 4, 5, 6, 7 and 9 BFT, respectively. Graphs of correlation functions presented in
Figure 4b,
Figure 5b,
Figure 6b,
Figure 7b and
Figure 8b are qualitatively similar to equilateral triangles. This indicates the high dependency of the wind speed and WF component of the waves, to the order of 90%.
The obtained results show that the examined waves are wind-induced waves. Therefore, significant ’lake’ wave analysis was conducted using the same methods as for ’sea’ wind-induced waves. Scaled to the training ship dimensions, the significant waves in the lake are presented in
Section 4.2.
4.2. Significant Height Analysis of the Wind Induced Waves
Significant wave height may be computed on the basis of the wave height measurement, as a mean value from the
highest registered wave amplitudes. It can also be estimated based on the formula:
where
—measured wave height variance. Measured and estimated significant wave heights are compared in
Table 4. They are supplemented with their relative estimation error. This error does not exceed
and reaches its maximum value for the lowest waves.
The results obtained for the convergence of significant wave height estimations and measurements indicate that it is reasonable to conduct further wave analysis using standard formulas of wave heights, energy and spectra.
Table 1 presents sea state codes (SSCs) and the relevant wave heights for the fully developed sea. These figures were augmented in
Table 5 with corresponding lake wave heights and wind force indicators, scaled to the ship dimensions. The lines marked in bold correspond to the values confirmed in the performed experiments, whereas the wave heights in regular font are the direct estimates.
As one can be seen in the last column of
Table 5, rescaled lake winds covering the full range of BFT are able to generate waves with heights corresponding to SSC 5–6 only, while in the measurements, maximal wave heights corresponding to SSC of 3 (slight) were recorded (marked in bold in
Table 5). Sea states equal to or above SSC 6 require winds of extremely high speeds comparable to hurricanes, so they remain outside the scope of this research.
Figure 9 demonstrates this relationship between the wind speed and significant wave height. The ‘open sea’ data refer to significant theoretical wave heights (
Table 5) generated by the wind, and ’scaled lake’ data illustrate real measurements presented numerically in
Table 4. Sea states, according to the SSC, are indicated by the horizontal red lines. Silm Lake wind speed and wave significant height measurements were scaled by the respective
and
factors to obtain the wind–wave characteristics in a ship scale comparable to open sea quantities. Lake wave height measurements were retrieved for the ship scale model for sea states ranging from SSC 1 to 4. Due to the size of the lake area and thus inability to register fully developed waves, the wind–wave curve is more flat than corresponding open sea one. In the lake conditions, a rescaled wind speed of 20 m/s corresponds to the SSC 4 sea state, whereas in the open sea environment the same wind force raises SSC 7 waves.
Having estimated the significant wave heights, the wave statistics, including deviations, amplitudes and their distributions, were collected. They are presented and described in
Section 4.3.
4.3. Measurements and Wave Statistics
Wave data statistics were determined based on the raw data measurements for all data batches related to wind forces ranging from 4 to 9 BFT. They are presented as the time-dependent functions of wave height deviations from the slow-changing component in
Figure 10a,
Figure 11a,
Figure 12a,
Figure 13a and
Figure 14a. The slow-changing component was estimated as an average water level every 120 s. Peak-to-peak wave height in these figures corresponds to averaged wave amplitudes computed every 120 s. In order to extract wave statistics and recorded amplitudes, the slow-changing component was filtered out from the raw data before further analysis.
Figure 10c,
Figure 11c,
Figure 12c,
Figure 13c and
Figure 14c illustrate the processed raw data for computing wave amplitudes using the wave zero-crossing method.
Figure 10b,
Figure 11b,
Figure 12b,
Figure 13b and
Figure 14b and
Figure 10d,
Figure 11d,
Figure 12d,
Figure 13d and
Figure 14d present normalized wave height deviations from mean value and subsequent distributions of amplitudes. They both are compared to estimated probability density functions, which are appropriately described by Gaussian and Rayleigh distribution functions [
30]. These probability distribution functions are indicated by the red lines and compared with normalized histograms representing raw data statistical attributes.
Figure 10 illustrates the statistical analysis of waves generated by the wind of 4 BFT force in ship scale. The black dashed line in
Figure 10a shows that very slow lake level changes generated by the wind are observed. These fluctuations are similar in shape to a sine wave with an amplitude of approx. 4 mm. Between 450 and 500 s, an increase in wave height is observed in
Figure 10a,c. This manifests as additional height of almost
units for the bar in the histogram plot, presented in
Figure 10d, which should not appear when comparing to the Rayleigh distribution function. In
Figure 10b, the highest bar of the histogram is shifted to the higher amplitude waves, to the right of relative zero value. The histogram shape is similar to that expected for Gaussian distribution. This shift is related to the increase of water level in the lake at the measurement site, due to long-lasting wind speed increase, which can be observed in
Figure 10a.
Figure 11 presents the statistical analysis of waves generated by the wind of 5 BFT force in ship scale. The slow-changing wave component is indicated by the dashed black line in
Figure 11a. This slow-changing component is sinusoidal with an amplitude of 3 mm. Peak-to-peak mean wave height (indicated by yellow solid line) is increasing, due to long-lasting wind of a 5 BFT force. See
Figure 5a. Both histograms presented in
Figure 11b,d show convergence with appropriate probability distributions marked by red lines.
Figure 12 presents statistics of the waves generated by the wind of 6 BFT force in ship scale. During this measurement waves slow-changing component was increasing monotonically and sinusoidal change similar to these presented in
Figure 10c and
Figure 11c, was not observed. Data drawn in
Figure 12 were registered during experiment lasting more than 4000 s, in which wind force and direction were stable. Due to water level increase in the measurement area, in the graph of probability distribution of the deviations from mean value (
Figure 12b), a shift in the histogram toward higher wave amplitudes was observed. This is a result of the nonlinear mean water level increase.
Figure 12c presents the wave development process over time induced also by the significant average wind speed increase depicted in
Figure 6a. The Silm Lake waves have developed from the level of 10 mm to the highest amplitudes reaching 60 mm for about 80 min.
Figure 13 illustrates statistical analysis of the waves height induced by the wind of 7 BFT force in ship scale. The Slow-changing component presented in
Figure 13a is monotonically decreasing from 7 mm in 500 s of the experiment to values oscillating around 0 mm after 5000 s of the trial. Recorded oscillations are of sinusoidal shape, similar to the results presented in
Figure 10a and
Figure 11a. Their amplitude reaches to 3 mm. Frequency of the wave height deviations from mean value (
Figure 13b) is Gaussian distributed and fits into estimated probability density curve, whereas the distribution of wave amplitudes has a shape similar to the Rayleigh distribution, except the amplitudes of the highest bars of the histogram, which exceed the estimated probability distribution by 10% points. This means that up to 10% more waves with amplitudes exceeding the theoretically expected values by 10 to 25 mm were observed. Similar phenomena were noticed in the case of lower waves generated by the winds of 4–5 BFT in the ship scale. In these cases, however, only 8% and 2% more waves had higher amplitudes than expected.
Figure 14 displays the statistical evaluation of the wave heights generated by the wind of 9 BFT force in ship scale. The low-frequency component in the lake level measurements was very weak (
Figure 13a). This signal oscillates only about 1–2 mm from zero level. During measurement lasting about 2.5 h, an average amplitude change from 20 to 40 mm was observed in the first phase of the experiment, while after 50 min, the wave amplitude has stabilized (
Figure 14c). The probability distribution of the deviations from the slow-changing wave component value, presented in
Figure 14b, has a Gaussian character and fits the estimated probability density distribution. However, the density distribution of wave amplitudes is characterized by higher values than expected. This disproportion is, however, relatively small and only 1% more waves have amplitudes higher by about 15 to 25 mm than expected.
The results of the measured data processing summarized in this subsection show that wave height deviations from mean value and wave amplitude distributions are analogous to the probability distributions, described in the reference literature. Wave height correlation with the wind force is also observed. Thus, the wave amplitude grows together with the wind speed increase.
According to the results presented in
Section 4.3 of wave height distributions and statistics, the ‘lake’ wave is similar in nature to the ‘sea’ wave. Therefore a ‘sea’ wave spectra modeling method was adopted for the ‘lake’ case. The results of this research are presented in
Section 4.4.
4.4. Measured Wave Spectra Modeling
According to the results presented in
Section 4.1 and
Section 4.3, phenomena on the Silm Lake represent undeveloped wind-induced waves. Therefore, taking into account the literature review, an attempt was made to match the empirically developed wave spectra with the standard spectra.
Figure 15 presents elaborated wave spectra for all data chunks in the one graph. A shift of the spectrum maxima toward lower frequencies can be observed as the wind speed increases. Furthermore, increase of the wave spectrum values together with the wind speed increase is observed. Qualitatively, this wave empirical spectra chart is comparable to the graph of the ITTC spectrum [
23]. Based on the observed similarities, an attempt was made to rescale the ITTC spectrum to match the measured spectra.
Due to the way in which measurement data was analyzed in
Section 4.3, the natural wave parameters that are described are significant wave height and the period. Thus, it was decided to conduct a comparison with the ITTC spectrum parameterized by mean significant wave height and period given by Equations (
12) and (
13). Finally, it was established that parameters
A and
B are to be scaled by
and
, respectively.
Hence, the values of parameters
A and
B calculated using Equations (
21) and (
22) were used for modified ITTC spectrum computation and plotting.
Figure 16,
Figure 17,
Figure 18,
Figure 19 and
Figure 20 illustrate the qualitative wave spectrum fit to the modified ITTC spectrum.
In
Figure 16, the spectrum for the lowest measured waves is presented. This function is tightly frayed and has two peaks located at 0.5 and 1.2 rad/s. In other cases, shown in
Figure 17,
Figure 18,
Figure 19 and
Figure 20 obviously better matching is observed, and the characteristics are smoother.
To estimate quantitative similarity between measured and modified ITTC spectrum their root mean square error (
RMSE) was calculated according to the formula:
where
—observed wave spectrum;
—estimated wave spectrum.
Table 6 summarizes measured spectrum fit to the modified ITTC spectrum. The
RMSEs are presented for all analyzed wind forces in the ship scale. Moreover, comparison of the peak frequencies of both measured and estimated spectra are presented together with their modal values. Quantitative analysis shows an increase in the
RMSE with the rise of wind force and wave height increase. However, it does not exceed
of the spectrum modal value. Differences in the estimated and measured peak frequencies do not exceed
rad.