| ชื่อเรื่อง | : | Empirical estimation of nearshore waves from a global deep-water wave model |
| นักวิจัย | : | Browne, Matthew. , Strauss, Darrell. , Castelle, Bruno. , Blumenstein, Michael. , Tomlinson, Rodger. , Lane, Christopher. |
| คำค้น | : | LIBRARY OF CONGRESS NEEDED , 960503 Ecosystem Assessment and Management of Coastal and Estuarine Environments. , 080199 Artificial Intelligence and Image Processing not elsewhere classified. , Artificial Neural Networks (ANNs) -- National Oceanic And Atmospheric Administration (NOAA) WW3 (NWW3) -- Nearshore -- Waves -- WaveWatch 3 (WW3) , Journal Article. Refereed, Scholarly Journal |
| หน่วยงาน | : | Central Queensland University, Australia |
| ผู้ร่วมงาน | : | - |
| ปีพิมพ์ | : | 2549 |
| อ้างอิง | : | http://hdl.cqu.edu.au/10018/938882 |
| ที่มา | : | Browne, M, Strauss, D, Castelle, B, Blumenstein, M, Tomlinson, R & Lane, C 2006, 'Empirical Estimation of Nearshore Waves From a Global Deep-Water Wave Model', IEEE Geoscience and Remote Sensing Letters, vol. 3, no. 4, pp. 462-466, http://dx.doi.org/10.1109/LGRS.2006.876225 |
| ความเชี่ยวชาญ | : | - |
| ความสัมพันธ์ | : | IEEE geoscience and remote sensing letters. United States : IEEE, 2006. Vol. 3, no. 4 (October 2006), p. 462-466 5 pages Refereed 1545-598X , ACQUIRE [electronic resource] : Central Queensland University Institutional Repository. |
| ขอบเขตของเนื้อหา | : | - |
| บทคัดย่อ/คำอธิบาย | : | Global wind-wave models such as the National Oceanic and Atmospheric Administration Wave Watch 3 (NWW3) play an important role in monitoring the world’s oceans. However, untransformed data at grid points in deep water provide a poor estimate of swell characteristics at nearshore locations, which are often of significant scientific, engineering, and public interest. Explicit wave modeling, such as the Simulating Waves Nearshore (SWAN), is one method for resolving the complex wave transformations affected by bathymetry, winds, and other local factors. However, obtaining accurate bathymetry and determining parameters for such models is often difficult. When target data is available (i.e., from in situ buoys or human observers, empirical alternatives such artificial neural networks (ANNs) and linear regression may be considered for inferring nearshore conditions from offshore model output. Using a sixfold cross-validation scheme, significant wave height Hs and period were estimated at one onshore and two nearshore locations. In estimating Hs at the shoreline, the validation performance of the best ANN was r = 0.91, as compared to those of linear regression (0.82), SWAN (0.78), and the NWW3 Hs baseline (0.54). |
| บรรณานุกรม | : |
Browne, Matthew. , Strauss, Darrell. , Castelle, Bruno. , Blumenstein, Michael. , Tomlinson, Rodger. , Lane, Christopher. . (2549). Empirical estimation of nearshore waves from a global deep-water wave model.
กรุงเทพมหานคร : Central Queensland University, Australia. Browne, Matthew. , Strauss, Darrell. , Castelle, Bruno. , Blumenstein, Michael. , Tomlinson, Rodger. , Lane, Christopher. . 2549. "Empirical estimation of nearshore waves from a global deep-water wave model".
กรุงเทพมหานคร : Central Queensland University, Australia. Browne, Matthew. , Strauss, Darrell. , Castelle, Bruno. , Blumenstein, Michael. , Tomlinson, Rodger. , Lane, Christopher. . "Empirical estimation of nearshore waves from a global deep-water wave model."
กรุงเทพมหานคร : Central Queensland University, Australia, 2549. Print. Browne, Matthew. , Strauss, Darrell. , Castelle, Bruno. , Blumenstein, Michael. , Tomlinson, Rodger. , Lane, Christopher. . Empirical estimation of nearshore waves from a global deep-water wave model. กรุงเทพมหานคร : Central Queensland University, Australia; 2549.
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