Estimation of Wave-Breaking Index by Learning Nonlinear Relation Using Multilayer Neural Network
Abstract
:1. Introduction
2. Related Works
3. Methodology
3.1. Data
3.2. Multilayer Neural Network for Estimating Wave-Breaking Index
3.3. Evaluation Metrics
4. Results
5. Discussion and Conclusions
Contribution Points
- The accuracy of estimating the breaking-wave height and water depth was improved by fully incorporating the nonlinear relationship between deep water wave condition, bottom slope, and wave-breaker index.
- Furthermore, a single model was proposed for simultaneously estimating the breaking-wave height and water depth by setting the input variable as deep-water wave data. This gave invaluable usability to the proposed model in this study.
- The performance of the proposed model is robustly applicable to laboratory experiment conditions, such as wave condition, bottom slope, and experimental scale.
- The newly proposed model directly utilizes breaking-wave height and water depth without nondimensionalization; thus, applicability can be significantly improved and excludes errors from the secondary transformation of raw wave data.
Author Contributions
Funding
Conflicts of Interest
References
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No. | Source | Bottom Slope (m) | Period (T [s]) | Deep-Water Wave Height (H0 [cm]) | H0/L0 | No. of Cases |
---|---|---|---|---|---|---|
1 | Munk (1949) * | 0.01–0.07 | 0.86–1.98 | 4.2–11.6 | 0.007–0.092 | 16 |
2 | Iversen (1952) ** | 0.02–0.10 | 0.74–2.67 | 2.7–12.4 | 0.003–0.091 | 68 |
3 | Morison and Crooke (1953) * | 0.02–0.10 | 0.78–2.62 | 3.5–12.4 | 0.004–0.080 | 6 |
4 | Singamsetti and Wind (1967) ** | 0.03–0.20 | 1.03–1.73 | 6.6–16.0 | 0.017–0.080 | 95 |
5 | Horikawa and Kuo (1967) ** | 0.01–0.05 | 1.20–2.30 | 4.7–17.3 | 0.006–0.073 | 97 |
6 | Bowen et al. (1968) | 0.08 | 0.82–2.37 | 3.6–9.0 | 0.007–0.049 | 11 |
7 | Komar and Simmons (1968) * | 0.04–0.11 | 0.81–2.37 | 2.8–14.4 | 0.003–0.071 | 44 |
8 | Galvin (1969) ** | 0.05–0.20 | 1.00–6.00 | 2.7–9.8 | 0.001–0.050 | 19 |
9 | Weggel and Maxwell (1970) | 0.05 | 1.26–2.05 | 4.6–12.6 | 0.013–0.055 | 9 |
10 | Saeki and Sasaki (1973) ** | 0.02 | 1.30–2.50 | 5.3–10.3 | 0.005–0.039 | 2 |
11 | Iwagaki et al. (1974) ** | 0.03–0.10 | 1.00–2.00 | 3.1–11.4 | 0.005–0.073 | 23 |
12 | Walker (1974) ** | 0.03 | 1.17–2.33 | 1.0–8.0 | 0.001–0.038 | 15 |
13 | Ozaki et al. (1977) | 0.10 | 0.79–1.40 | 0.9–5.8 | 0.006–0.060 | 20 |
14 | Van Dorn (1978) | 0.02–0.08 | 1.65–4.80 | 3.7–13.2 | 0.001–0.031 | 12 |
15 | Mizuguchi (1981) ** | 0.10 | 1.20 | 10.0 | 0.045 | 1 |
16 | Kirgoz (1982) | 0.07–0.23 | 0.78–2.03 | 2.2–7.3 | 0.003–0.061 | 16 |
17 | Visser (1982) ** | 0.05–0.10 | 0.70–2.01 | 6.0–10.2 | 0.014–0.079 | 7 |
18 | Ishida and Yamaguchi (1983) | 0.10 | 0.68–1.50 | 2.7–7.6 | 0.008–0.095 | 6 |
19 | Maruyama (1983) ** | 0.03 | 3.10 | 137.0 | 0.091 | 1 |
20 | Stive (1985) ** | 0.03 | 1.80–5.00 | 16.0–121.0 | 0.031–0.032 | 2 |
21 | Sakai et al. (1986) | 0.02–0.03 | 1.78–2.21 | 12.2–23.7 | 0.016–0.048 | 19 |
22 | Smith and Kraus (1990) ** | 0.03 | 1.02–2.49 | 8.5–15.8 | 0.009–0.092 | 5 |
23 | Ting and Kirby (1994) | 0.03 | 2.00–5.00 | 8.9–12.7 | 0.002–0.020 | 2 |
24 | Kakuno et al. (1996) | 0.03–0.10 | 0.88–2.00 | 2.2–13.2 | 0.008–0.092 | 55 |
25 | Yüksel et al. (1999) | 0.10 | 1.10–2.05 | 10.0–19.1 | 0.022–0.065 | 10 |
26 | Hoque (2002) | 0.11 | 1.12–1.80 | 11.0–16.6 | 0.024–0.076 | 6 |
27 | Shin and Cox(2003) | 0.03 | 1.50–3.00 | 7.8–12.7 | 0.006–0.036 | 3 |
28 | Deo and Jagdale (2003) | 0.03–0.10 | 0.74–1.20 | 7.3–13.0 | 0.042–0.127 | 20 |
29 | Lara et al. (2006) | 0.05 | 1.20–4.00 | 5.0–15.0 | 0.006–0.073 | 12 |
30 | Mori and Kakuno (2008) | 0.03 | 1.60–3.80 | 11.6–16.3 | 0.012–0.046 | 3 |
31 | Xie et al. (2019) | 0.10 | 1.75–2.05 | 3.0–5.0 | 0.005–0.010 | 25 |
Total No. of Samples | 0.01–0.23 | 0.68–6.00 | 0.9–137.0 | 0.001–0.127 | 630 |
Target | Authors | Modified Formulas | Abbreviation |
---|---|---|---|
Le Mehaute and Koh (1967) | CA_Hb_1 | ||
Rattanapitikon and Shibayama (2006) | CA_Hb_2 | ||
Lee and Cho (2021) | CA_Hb_3 | ||
Rattanapitikon and Shibayama (2006) | CA_hb_2 | ||
Xie et al. (2019) | , | CA_hb_1 | |
Lee and Cho (2021) | CA_hb_3 |
Target | Relationship | B | RMSE | R |
---|---|---|---|---|
Proposed Model | 0.004 | 0.019 | 0.894 | |
NonAF | 0.000 | 0.017 | 0.912 | |
Proposed Model | 0.005 | 0.021 | 0.921 | |
NonAF | 0.000 | 0.021 | 0.916 |
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Yun, M.; Kim, J.; Do, K. Estimation of Wave-Breaking Index by Learning Nonlinear Relation Using Multilayer Neural Network. J. Mar. Sci. Eng. 2022, 10, 50. https://doi.org/10.3390/jmse10010050
Yun M, Kim J, Do K. Estimation of Wave-Breaking Index by Learning Nonlinear Relation Using Multilayer Neural Network. Journal of Marine Science and Engineering. 2022; 10(1):50. https://doi.org/10.3390/jmse10010050
Chicago/Turabian StyleYun, Miyoung, Jinah Kim, and Kideok Do. 2022. "Estimation of Wave-Breaking Index by Learning Nonlinear Relation Using Multilayer Neural Network" Journal of Marine Science and Engineering 10, no. 1: 50. https://doi.org/10.3390/jmse10010050
APA StyleYun, M., Kim, J., & Do, K. (2022). Estimation of Wave-Breaking Index by Learning Nonlinear Relation Using Multilayer Neural Network. Journal of Marine Science and Engineering, 10(1), 50. https://doi.org/10.3390/jmse10010050