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Wave hindcasting by coupling numerical model and artificial neural networks
Authors:I Malekmohamadi  R Ghiassi  MJ Yazdanpanah
Institution:aHydro Structure Department, Faculty of Civil Engineering, University College of Engineering, University of Tehran, P.O. Box 11155/4563, Tehran, Iran;bSchool of ECE, University of Tehran, Control and Intelligent Processing Center of Excellence, P.O. Box 14395/515, Tehran, Iran
Abstract:By coupling numerical wave model (NWM) and artificial neural networks (ANNs), a new procedure for wave prediction is proposed. In many situations, numerical wave modeling is not justified due to economical consideration. Although incorporation of an ANN model is inexpensive, such a model needs a long time period of wave data for training, which is generally inconvenient to achieve. A proper combination of these two methods could carry the potentials of both. Based on the proposed approach, wave data are generated by a NWM by means of a short period of assumed winds at a concerned point. Then, an ANN is designed and trained using the above-mentioned generated wind-wave data. This ANN model is capable of mapping wind-velocity time series to wave height and period time series with low cost and acceptable accuracy. The method was applied for wave hindcasting to two different sites; Lake Superior and the Pacific Ocean. Simulation results show the superiority of the proposed approach.
Keywords:Wind waves prediction  Artificial intelligence  Numerical wave model  Lake Superior
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